llvm-project/llvm/lib/Transforms/IPO/SampleProfile.cpp

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SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
//===- SampleProfile.cpp - Incorporate sample profiles into the IR --------===//
//
// The LLVM Compiler Infrastructure
//
// This file is distributed under the University of Illinois Open Source
// License. See LICENSE.TXT for details.
//
//===----------------------------------------------------------------------===//
//
// This file implements the SampleProfileLoader transformation. This pass
// reads a profile file generated by a sampling profiler (e.g. Linux Perf -
// http://perf.wiki.kernel.org/) and generates IR metadata to reflect the
// profile information in the given profile.
//
// This pass generates branch weight annotations on the IR:
//
// - prof: Represents branch weights. This annotation is added to branches
// to indicate the weights of each edge coming out of the branch.
// The weight of each edge is the weight of the target block for
// that edge. The weight of a block B is computed as the maximum
// number of samples found in B.
//
//===----------------------------------------------------------------------===//
#include "llvm/ADT/DenseMap.h"
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
#include "llvm/ADT/SmallPtrSet.h"
#include "llvm/ADT/SmallSet.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/ADT/StringRef.h"
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
#include "llvm/Analysis/LoopInfo.h"
#include "llvm/Analysis/PostDominators.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/IR/Constants.h"
#include "llvm/IR/DebugInfo.h"
#include "llvm/IR/DiagnosticInfo.h"
#include "llvm/IR/Dominators.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/IR/Function.h"
#include "llvm/IR/InstIterator.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/IR/Instructions.h"
#include "llvm/IR/LLVMContext.h"
#include "llvm/IR/MDBuilder.h"
#include "llvm/IR/Metadata.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/IR/Module.h"
#include "llvm/Pass.h"
#include "llvm/ProfileData/SampleProfReader.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/Support/CommandLine.h"
#include "llvm/Support/Debug.h"
#include "llvm/Support/ErrorOr.h"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#include "llvm/Support/raw_ostream.h"
#include "llvm/Transforms/IPO.h"
#include "llvm/Transforms/Utils/Cloning.h"
#include <cctype>
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
using namespace llvm;
using namespace sampleprof;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
#define DEBUG_TYPE "sample-profile"
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
// Command line option to specify the file to read samples from. This is
// mainly used for debugging.
static cl::opt<std::string> SampleProfileFile(
"sample-profile-file", cl::init(""), cl::value_desc("filename"),
cl::desc("Profile file loaded by -sample-profile"), cl::Hidden);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
static cl::opt<unsigned> SampleProfileMaxPropagateIterations(
"sample-profile-max-propagate-iterations", cl::init(100),
cl::desc("Maximum number of iterations to go through when propagating "
"sample block/edge weights through the CFG."));
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
namespace {
typedef DenseMap<const BasicBlock *, uint64_t> BlockWeightMap;
typedef DenseMap<const BasicBlock *, const BasicBlock *> EquivalenceClassMap;
typedef std::pair<const BasicBlock *, const BasicBlock *> Edge;
typedef DenseMap<Edge, uint64_t> EdgeWeightMap;
typedef DenseMap<const BasicBlock *, SmallVector<const BasicBlock *, 8>>
BlockEdgeMap;
/// \brief Sample profile pass.
///
/// This pass reads profile data from the file specified by
/// -sample-profile-file and annotates every affected function with the
/// profile information found in that file.
class SampleProfileLoader : public ModulePass {
public:
// Class identification, replacement for typeinfo
static char ID;
SampleProfileLoader(StringRef Name = SampleProfileFile)
: ModulePass(ID), DT(nullptr), PDT(nullptr), LI(nullptr), Reader(),
Samples(nullptr), Filename(Name), ProfileIsValid(false) {
initializeSampleProfileLoaderPass(*PassRegistry::getPassRegistry());
}
bool doInitialization(Module &M) override;
void dump() { Reader->dump(); }
const char *getPassName() const override { return "Sample profile pass"; }
bool runOnModule(Module &M) override;
void getAnalysisUsage(AnalysisUsage &AU) const override {
AU.setPreservesCFG();
}
protected:
bool runOnFunction(Function &F);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
unsigned getFunctionLoc(Function &F);
bool emitAnnotations(Function &F);
ErrorOr<uint64_t> getInstWeight(const Instruction &I) const;
ErrorOr<uint64_t> getBlockWeight(const BasicBlock *BB) const;
const FunctionSamples *findCalleeFunctionSamples(const CallInst &I) const;
const FunctionSamples *findFunctionSamples(const Instruction &I) const;
bool inlineHotFunctions(Function &F);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
void printEdgeWeight(raw_ostream &OS, Edge E);
void printBlockWeight(raw_ostream &OS, const BasicBlock *BB) const;
void printBlockEquivalence(raw_ostream &OS, const BasicBlock *BB);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool computeBlockWeights(Function &F);
void findEquivalenceClasses(Function &F);
void findEquivalencesFor(BasicBlock *BB1,
SmallVector<BasicBlock *, 8> Descendants,
DominatorTreeBase<BasicBlock> *DomTree);
void propagateWeights(Function &F);
uint64_t visitEdge(Edge E, unsigned *NumUnknownEdges, Edge *UnknownEdge);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
void buildEdges(Function &F);
bool propagateThroughEdges(Function &F);
void computeDominanceAndLoopInfo(Function &F);
/// \brief Map basic blocks to their computed weights.
///
/// The weight of a basic block is defined to be the maximum
/// of all the instruction weights in that block.
BlockWeightMap BlockWeights;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Map edges to their computed weights.
///
/// Edge weights are computed by propagating basic block weights in
/// SampleProfile::propagateWeights.
EdgeWeightMap EdgeWeights;
/// \brief Set of visited blocks during propagation.
SmallPtrSet<const BasicBlock *, 128> VisitedBlocks;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Set of visited edges during propagation.
SmallSet<Edge, 128> VisitedEdges;
/// \brief Equivalence classes for block weights.
///
/// Two blocks BB1 and BB2 are in the same equivalence class if they
/// dominate and post-dominate each other, and they are in the same loop
/// nest. When this happens, the two blocks are guaranteed to execute
/// the same number of times.
EquivalenceClassMap EquivalenceClass;
/// \brief Dominance, post-dominance and loop information.
std::unique_ptr<DominatorTree> DT;
std::unique_ptr<DominatorTreeBase<BasicBlock>> PDT;
std::unique_ptr<LoopInfo> LI;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Predecessors for each basic block in the CFG.
BlockEdgeMap Predecessors;
/// \brief Successors for each basic block in the CFG.
BlockEdgeMap Successors;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
/// \brief Profile reader object.
std::unique_ptr<SampleProfileReader> Reader;
/// \brief Samples collected for the body of this function.
FunctionSamples *Samples;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
/// \brief Name of the profile file to load.
StringRef Filename;
/// \brief Flag indicating whether the profile input loaded successfully.
bool ProfileIsValid;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
};
}
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Print the weight of edge \p E on stream \p OS.
///
/// \param OS Stream to emit the output to.
/// \param E Edge to print.
void SampleProfileLoader::printEdgeWeight(raw_ostream &OS, Edge E) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
OS << "weight[" << E.first->getName() << "->" << E.second->getName()
<< "]: " << EdgeWeights[E] << "\n";
}
/// \brief Print the equivalence class of block \p BB on stream \p OS.
///
/// \param OS Stream to emit the output to.
/// \param BB Block to print.
void SampleProfileLoader::printBlockEquivalence(raw_ostream &OS,
const BasicBlock *BB) {
const BasicBlock *Equiv = EquivalenceClass[BB];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
OS << "equivalence[" << BB->getName()
<< "]: " << ((Equiv) ? EquivalenceClass[BB]->getName() : "NONE") << "\n";
}
/// \brief Print the weight of block \p BB on stream \p OS.
///
/// \param OS Stream to emit the output to.
/// \param BB Block to print.
void SampleProfileLoader::printBlockWeight(raw_ostream &OS,
const BasicBlock *BB) const {
const auto &I = BlockWeights.find(BB);
uint64_t W = (I == BlockWeights.end() ? 0 : I->second);
OS << "weight[" << BB->getName() << "]: " << W << "\n";
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
}
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
/// \brief Get the weight for an instruction.
///
/// The "weight" of an instruction \p Inst is the number of samples
/// collected on that instruction at runtime. To retrieve it, we
/// need to compute the line number of \p Inst relative to the start of its
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// function. We use HeaderLineno to compute the offset. We then
/// look up the samples collected for \p Inst using BodySamples.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
/// \param Inst Instruction to query.
///
/// \returns the weight of \p Inst.
ErrorOr<uint64_t>
SampleProfileLoader::getInstWeight(const Instruction &Inst) const {
DebugLoc DLoc = Inst.getDebugLoc();
if (!DLoc)
return std::error_code();
const FunctionSamples *FS = findFunctionSamples(Inst);
if (!FS)
return std::error_code();
const DILocation *DIL = DLoc;
unsigned Lineno = DLoc.getLine();
unsigned HeaderLineno = DIL->getScope()->getSubprogram()->getLine();
if (Lineno < HeaderLineno)
return std::error_code();
ErrorOr<uint64_t> R =
FS->findSamplesAt(Lineno - HeaderLineno, DIL->getDiscriminator());
if (R)
DEBUG(dbgs() << " " << Lineno << "." << DIL->getDiscriminator() << ":"
<< Inst << " (line offset: " << Lineno - HeaderLineno << "."
<< DIL->getDiscriminator() << " - weight: " << R.get()
<< ")\n");
return R;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
}
/// \brief Compute the weight of a basic block.
///
/// The weight of basic block \p BB is the maximum weight of all the
/// instructions in BB.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
/// \param BB The basic block to query.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
/// \returns the weight for \p BB.
ErrorOr<uint64_t>
SampleProfileLoader::getBlockWeight(const BasicBlock *BB) const {
bool Found = false;
uint64_t Weight = 0;
for (auto &I : BB->getInstList()) {
const ErrorOr<uint64_t> &R = getInstWeight(I);
if (R && R.get() >= Weight) {
Weight = R.get();
Found = true;
}
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
}
if (Found)
return Weight;
else
return std::error_code();
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
}
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Compute and store the weights of every basic block.
///
/// This populates the BlockWeights map by computing
/// the weights of every basic block in the CFG.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \param F The function to query.
bool SampleProfileLoader::computeBlockWeights(Function &F) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool Changed = false;
DEBUG(dbgs() << "Block weights\n");
for (const auto &BB : F) {
ErrorOr<uint64_t> Weight = getBlockWeight(&BB);
if (Weight) {
BlockWeights[&BB] = Weight.get();
VisitedBlocks.insert(&BB);
Changed = true;
}
DEBUG(printBlockWeight(dbgs(), &BB));
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
}
return Changed;
}
/// \brief Get the FunctionSamples for a call instruction.
///
/// The FunctionSamples of a call instruction \p Inst is the inlined
/// instance in which that call instruction is calling to. It contains
/// all samples that resides in the inlined instance. We first find the
/// inlined instance in which the call instruction is from, then we
/// traverse its children to find the callsite with the matching
/// location and callee function name.
///
/// \param Inst Call instruction to query.
///
/// \returns The FunctionSamples pointer to the inlined instance.
const FunctionSamples *
SampleProfileLoader::findCalleeFunctionSamples(const CallInst &Inst) const {
const DILocation *DIL = Inst.getDebugLoc();
if (!DIL) {
return nullptr;
}
DISubprogram *SP = DIL->getScope()->getSubprogram();
if (!SP || DIL->getLine() < SP->getLine())
return nullptr;
Function *CalleeFunc = Inst.getCalledFunction();
if (!CalleeFunc) {
return nullptr;
}
StringRef CalleeName = CalleeFunc->getName();
const FunctionSamples *FS = findFunctionSamples(Inst);
if (FS == nullptr)
return nullptr;
return FS->findFunctionSamplesAt(CallsiteLocation(
DIL->getLine() - SP->getLine(), DIL->getDiscriminator(), CalleeName));
}
/// \brief Get the FunctionSamples for an instruction.
///
/// The FunctionSamples of an instruction \p Inst is the inlined instance
/// in which that instruction is coming from. We traverse the inline stack
/// of that instruction, and match it with the tree nodes in the profile.
///
/// \param Inst Instruction to query.
///
/// \returns the FunctionSamples pointer to the inlined instance.
const FunctionSamples *
SampleProfileLoader::findFunctionSamples(const Instruction &Inst) const {
SmallVector<CallsiteLocation, 10> S;
const DILocation *DIL = Inst.getDebugLoc();
if (!DIL) {
return Samples;
}
StringRef CalleeName;
for (const DILocation *DIL = Inst.getDebugLoc(); DIL;
DIL = DIL->getInlinedAt()) {
DISubprogram *SP = DIL->getScope()->getSubprogram();
if (!SP || DIL->getLine() < SP->getLine())
return nullptr;
if (!CalleeName.empty()) {
S.push_back(CallsiteLocation(DIL->getLine() - SP->getLine(),
DIL->getDiscriminator(), CalleeName));
}
CalleeName = SP->getLinkageName();
}
if (S.size() == 0)
return Samples;
const FunctionSamples *FS = Samples;
for (int i = S.size() - 1; i >= 0 && FS != nullptr; i--) {
FS = FS->findFunctionSamplesAt(S[i]);
}
return FS;
}
/// \brief Iteratively inline hot callsites of a function.
///
/// Iteratively traverse all callsites of the function \p F, and find if
/// the corresponding inlined instance exists and is hot in profile. If
/// it is hot enough, inline the callsites and adds new callsites of the
/// callee into the caller.
///
/// TODO: investigate the possibility of not invoking InlineFunction directly.
///
/// \param F function to perform iterative inlining.
///
/// \returns True if there is any inline happened.
bool SampleProfileLoader::inlineHotFunctions(Function &F) {
bool Changed = false;
while (true) {
bool LocalChanged = false;
SmallVector<CallInst *, 10> CIS;
for (auto &BB : F) {
for (auto &I : BB.getInstList()) {
CallInst *CI = dyn_cast<CallInst>(&I);
if (CI) {
const FunctionSamples *FS = findCalleeFunctionSamples(*CI);
if (FS && FS->getTotalSamples() > 0) {
CIS.push_back(CI);
}
}
}
}
for (auto CI : CIS) {
InlineFunctionInfo IFI;
if (InlineFunction(CI, IFI))
LocalChanged = true;
}
if (LocalChanged) {
Changed = true;
} else {
break;
}
}
return Changed;
}
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Find equivalence classes for the given block.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// This finds all the blocks that are guaranteed to execute the same
/// number of times as \p BB1. To do this, it traverses all the
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// descendants of \p BB1 in the dominator or post-dominator tree.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// A block BB2 will be in the same equivalence class as \p BB1 if
/// the following holds:
///
/// 1- \p BB1 is a descendant of BB2 in the opposite tree. So, if BB2
/// is a descendant of \p BB1 in the dominator tree, then BB2 should
/// dominate BB1 in the post-dominator tree.
///
/// 2- Both BB2 and \p BB1 must be in the same loop.
///
/// For every block BB2 that meets those two requirements, we set BB2's
/// equivalence class to \p BB1.
///
/// \param BB1 Block to check.
/// \param Descendants Descendants of \p BB1 in either the dom or pdom tree.
/// \param DomTree Opposite dominator tree. If \p Descendants is filled
/// with blocks from \p BB1's dominator tree, then
/// this is the post-dominator tree, and vice versa.
void SampleProfileLoader::findEquivalencesFor(
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
BasicBlock *BB1, SmallVector<BasicBlock *, 8> Descendants,
DominatorTreeBase<BasicBlock> *DomTree) {
const BasicBlock *EC = EquivalenceClass[BB1];
uint64_t Weight = BlockWeights[EC];
for (const auto *BB2 : Descendants) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool IsDomParent = DomTree->dominates(BB2, BB1);
bool IsInSameLoop = LI->getLoopFor(BB1) == LI->getLoopFor(BB2);
if (BB1 != BB2 && IsDomParent && IsInSameLoop) {
EquivalenceClass[BB2] = EC;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// If BB2 is heavier than BB1, make BB2 have the same weight
// as BB1.
//
// Note that we don't worry about the opposite situation here
// (when BB2 is lighter than BB1). We will deal with this
// during the propagation phase. Right now, we just want to
// make sure that BB1 has the largest weight of all the
// members of its equivalence set.
Weight = std::max(Weight, BlockWeights[BB2]);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
}
}
BlockWeights[EC] = Weight;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
}
/// \brief Find equivalence classes.
///
/// Since samples may be missing from blocks, we can fill in the gaps by setting
/// the weights of all the blocks in the same equivalence class to the same
/// weight. To compute the concept of equivalence, we use dominance and loop
/// information. Two blocks B1 and B2 are in the same equivalence class if B1
/// dominates B2, B2 post-dominates B1 and both are in the same loop.
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
///
/// \param F The function to query.
void SampleProfileLoader::findEquivalenceClasses(Function &F) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
SmallVector<BasicBlock *, 8> DominatedBBs;
DEBUG(dbgs() << "\nBlock equivalence classes\n");
// Find equivalence sets based on dominance and post-dominance information.
for (auto &BB : F) {
BasicBlock *BB1 = &BB;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Compute BB1's equivalence class once.
if (EquivalenceClass.count(BB1)) {
DEBUG(printBlockEquivalence(dbgs(), BB1));
continue;
}
// By default, blocks are in their own equivalence class.
EquivalenceClass[BB1] = BB1;
// Traverse all the blocks dominated by BB1. We are looking for
// every basic block BB2 such that:
//
// 1- BB1 dominates BB2.
// 2- BB2 post-dominates BB1.
// 3- BB1 and BB2 are in the same loop nest.
//
// If all those conditions hold, it means that BB2 is executed
// as many times as BB1, so they are placed in the same equivalence
// class by making BB2's equivalence class be BB1.
DominatedBBs.clear();
DT->getDescendants(BB1, DominatedBBs);
findEquivalencesFor(BB1, DominatedBBs, PDT.get());
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
DEBUG(printBlockEquivalence(dbgs(), BB1));
}
// Assign weights to equivalence classes.
//
// All the basic blocks in the same equivalence class will execute
// the same number of times. Since we know that the head block in
// each equivalence class has the largest weight, assign that weight
// to all the blocks in that equivalence class.
DEBUG(dbgs() << "\nAssign the same weight to all blocks in the same class\n");
for (auto &BI : F) {
const BasicBlock *BB = &BI;
const BasicBlock *EquivBB = EquivalenceClass[BB];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
if (BB != EquivBB)
BlockWeights[BB] = BlockWeights[EquivBB];
DEBUG(printBlockWeight(dbgs(), BB));
}
}
/// \brief Visit the given edge to decide if it has a valid weight.
///
/// If \p E has not been visited before, we copy to \p UnknownEdge
/// and increment the count of unknown edges.
///
/// \param E Edge to visit.
/// \param NumUnknownEdges Current number of unknown edges.
/// \param UnknownEdge Set if E has not been visited before.
///
/// \returns E's weight, if known. Otherwise, return 0.
uint64_t SampleProfileLoader::visitEdge(Edge E, unsigned *NumUnknownEdges,
Edge *UnknownEdge) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
if (!VisitedEdges.count(E)) {
(*NumUnknownEdges)++;
*UnknownEdge = E;
return 0;
}
return EdgeWeights[E];
}
/// \brief Propagate weights through incoming/outgoing edges.
///
/// If the weight of a basic block is known, and there is only one edge
/// with an unknown weight, we can calculate the weight of that edge.
///
/// Similarly, if all the edges have a known count, we can calculate the
/// count of the basic block, if needed.
///
/// \param F Function to process.
///
/// \returns True if new weights were assigned to edges or blocks.
bool SampleProfileLoader::propagateThroughEdges(Function &F) {
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
bool Changed = false;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
DEBUG(dbgs() << "\nPropagation through edges\n");
for (const auto &BI : F) {
const BasicBlock *BB = &BI;
const BasicBlock *EC = EquivalenceClass[BB];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Visit all the predecessor and successor edges to determine
// which ones have a weight assigned already. Note that it doesn't
// matter that we only keep track of a single unknown edge. The
// only case we are interested in handling is when only a single
// edge is unknown (see setEdgeOrBlockWeight).
for (unsigned i = 0; i < 2; i++) {
uint64_t TotalWeight = 0;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
unsigned NumUnknownEdges = 0;
Edge UnknownEdge, SelfReferentialEdge;
if (i == 0) {
// First, visit all predecessor edges.
for (auto *Pred : Predecessors[BB]) {
Edge E = std::make_pair(Pred, BB);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
TotalWeight += visitEdge(E, &NumUnknownEdges, &UnknownEdge);
if (E.first == E.second)
SelfReferentialEdge = E;
}
} else {
// On the second round, visit all successor edges.
for (auto *Succ : Successors[BB]) {
Edge E = std::make_pair(BB, Succ);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
TotalWeight += visitEdge(E, &NumUnknownEdges, &UnknownEdge);
}
}
// After visiting all the edges, there are three cases that we
// can handle immediately:
//
// - All the edge weights are known (i.e., NumUnknownEdges == 0).
// In this case, we simply check that the sum of all the edges
// is the same as BB's weight. If not, we change BB's weight
// to match. Additionally, if BB had not been visited before,
// we mark it visited.
//
// - Only one edge is unknown and BB has already been visited.
// In this case, we can compute the weight of the edge by
// subtracting the total block weight from all the known
// edge weights. If the edges weight more than BB, then the
// edge of the last remaining edge is set to zero.
//
// - There exists a self-referential edge and the weight of BB is
// known. In this case, this edge can be based on BB's weight.
// We add up all the other known edges and set the weight on
// the self-referential edge as we did in the previous case.
//
// In any other case, we must continue iterating. Eventually,
// all edges will get a weight, or iteration will stop when
// it reaches SampleProfileMaxPropagateIterations.
if (NumUnknownEdges <= 1) {
uint64_t &BBWeight = BlockWeights[EC];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
if (NumUnknownEdges == 0) {
// If we already know the weight of all edges, the weight of the
// basic block can be computed. It should be no larger than the sum
// of all edge weights.
if (TotalWeight > BBWeight) {
BBWeight = TotalWeight;
Changed = true;
DEBUG(dbgs() << "All edge weights for " << BB->getName()
<< " known. Set weight for block: ";
printBlockWeight(dbgs(), BB););
}
if (VisitedBlocks.insert(EC).second)
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
Changed = true;
} else if (NumUnknownEdges == 1 && VisitedBlocks.count(EC)) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// If there is a single unknown edge and the block has been
// visited, then we can compute E's weight.
if (BBWeight >= TotalWeight)
EdgeWeights[UnknownEdge] = BBWeight - TotalWeight;
else
EdgeWeights[UnknownEdge] = 0;
VisitedEdges.insert(UnknownEdge);
Changed = true;
DEBUG(dbgs() << "Set weight for edge: ";
printEdgeWeight(dbgs(), UnknownEdge));
}
} else if (SelfReferentialEdge.first && VisitedBlocks.count(EC)) {
uint64_t &BBWeight = BlockWeights[BB];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// We have a self-referential edge and the weight of BB is known.
if (BBWeight >= TotalWeight)
EdgeWeights[SelfReferentialEdge] = BBWeight - TotalWeight;
else
EdgeWeights[SelfReferentialEdge] = 0;
VisitedEdges.insert(SelfReferentialEdge);
Changed = true;
DEBUG(dbgs() << "Set self-referential edge weight to: ";
printEdgeWeight(dbgs(), SelfReferentialEdge));
}
}
}
return Changed;
}
/// \brief Build in/out edge lists for each basic block in the CFG.
///
/// We are interested in unique edges. If a block B1 has multiple
/// edges to another block B2, we only add a single B1->B2 edge.
void SampleProfileLoader::buildEdges(Function &F) {
for (auto &BI : F) {
BasicBlock *B1 = &BI;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Add predecessors for B1.
SmallPtrSet<BasicBlock *, 16> Visited;
if (!Predecessors[B1].empty())
llvm_unreachable("Found a stale predecessors list in a basic block.");
for (pred_iterator PI = pred_begin(B1), PE = pred_end(B1); PI != PE; ++PI) {
BasicBlock *B2 = *PI;
if (Visited.insert(B2).second)
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
Predecessors[B1].push_back(B2);
}
// Add successors for B1.
Visited.clear();
if (!Successors[B1].empty())
llvm_unreachable("Found a stale successors list in a basic block.");
for (succ_iterator SI = succ_begin(B1), SE = succ_end(B1); SI != SE; ++SI) {
BasicBlock *B2 = *SI;
if (Visited.insert(B2).second)
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
Successors[B1].push_back(B2);
}
}
}
/// \brief Propagate weights into edges
///
/// The following rules are applied to every block BB in the CFG:
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
///
/// - If BB has a single predecessor/successor, then the weight
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// of that edge is the weight of the block.
///
/// - If all incoming or outgoing edges are known except one, and the
/// weight of the block is already known, the weight of the unknown
/// edge will be the weight of the block minus the sum of all the known
/// edges. If the sum of all the known edges is larger than BB's weight,
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// we set the unknown edge weight to zero.
///
/// - If there is a self-referential edge, and the weight of the block is
/// known, the weight for that edge is set to the weight of the block
/// minus the weight of the other incoming edges to that block (if
/// known).
void SampleProfileLoader::propagateWeights(Function &F) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool Changed = true;
unsigned I = 0;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
// Add an entry count to the function using the samples gathered
// at the function entry.
F.setEntryCount(Samples->getHeadSamples());
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Before propagation starts, build, for each block, a list of
// unique predecessors and successors. This is necessary to handle
// identical edges in multiway branches. Since we visit all blocks and all
// edges of the CFG, it is cleaner to build these lists once at the start
// of the pass.
buildEdges(F);
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Propagate until we converge or we go past the iteration limit.
while (Changed && I++ < SampleProfileMaxPropagateIterations) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
Changed = propagateThroughEdges(F);
}
// Generate MD_prof metadata for every branch instruction using the
// edge weights computed during propagation.
DEBUG(dbgs() << "\nPropagation complete. Setting branch weights\n");
MDBuilder MDB(F.getContext());
for (auto &BI : F) {
BasicBlock *BB = &BI;
TerminatorInst *TI = BB->getTerminator();
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
if (TI->getNumSuccessors() == 1)
continue;
if (!isa<BranchInst>(TI) && !isa<SwitchInst>(TI))
continue;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
DEBUG(dbgs() << "\nGetting weights for branch at line "
<< TI->getDebugLoc().getLine() << ".\n");
SmallVector<uint32_t, 4> Weights;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool AllWeightsZero = true;
for (unsigned I = 0; I < TI->getNumSuccessors(); ++I) {
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
BasicBlock *Succ = TI->getSuccessor(I);
Edge E = std::make_pair(BB, Succ);
uint64_t Weight = EdgeWeights[E];
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
DEBUG(dbgs() << "\t"; printEdgeWeight(dbgs(), E));
// Use uint32_t saturated arithmetic to adjust the incoming weights,
// if needed. Sample counts in profiles are 64-bit unsigned values,
// but internally branch weights are expressed as 32-bit values.
if (Weight > std::numeric_limits<uint32_t>::max()) {
DEBUG(dbgs() << " (saturated due to uint32_t overflow)");
Weight = std::numeric_limits<uint32_t>::max();
}
Weights.push_back(static_cast<uint32_t>(Weight));
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
if (Weight != 0)
AllWeightsZero = false;
}
// Only set weights if there is at least one non-zero weight.
// In any other case, let the analyzer set weights.
if (!AllWeightsZero) {
DEBUG(dbgs() << "SUCCESS. Found non-zero weights.\n");
TI->setMetadata(llvm::LLVMContext::MD_prof,
MDB.createBranchWeights(Weights));
} else {
DEBUG(dbgs() << "SKIPPED. All branch weights are zero.\n");
}
}
}
/// \brief Get the line number for the function header.
///
/// This looks up function \p F in the current compilation unit and
/// retrieves the line number where the function is defined. This is
/// line 0 for all the samples read from the profile file. Every line
/// number is relative to this line.
///
/// \param F Function object to query.
///
/// \returns the line number where \p F is defined. If it returns 0,
/// it means that there is no debug information available for \p F.
unsigned SampleProfileLoader::getFunctionLoc(Function &F) {
if (DISubprogram *S = getDISubprogram(&F))
return S->getLine();
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// If could not find the start of \p F, emit a diagnostic to inform the user
// about the missed opportunity.
F.getContext().diagnose(DiagnosticInfoSampleProfile(
"No debug information found in function " + F.getName() +
": Function profile not used",
DS_Warning));
return 0;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
}
void SampleProfileLoader::computeDominanceAndLoopInfo(Function &F) {
DT.reset(new DominatorTree);
DT->recalculate(F);
PDT.reset(new DominatorTreeBase<BasicBlock>(true));
PDT->recalculate(F);
LI.reset(new LoopInfo);
LI->analyze(*DT);
}
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// \brief Generate branch weight metadata for all branches in \p F.
///
/// Branch weights are computed out of instruction samples using a
/// propagation heuristic. Propagation proceeds in 3 phases:
///
/// 1- Assignment of block weights. All the basic blocks in the function
/// are initial assigned the same weight as their most frequently
/// executed instruction.
///
/// 2- Creation of equivalence classes. Since samples may be missing from
/// blocks, we can fill in the gaps by setting the weights of all the
/// blocks in the same equivalence class to the same weight. To compute
/// the concept of equivalence, we use dominance and loop information.
/// Two blocks B1 and B2 are in the same equivalence class if B1
/// dominates B2, B2 post-dominates B1 and both are in the same loop.
///
/// 3- Propagation of block weights into edges. This uses a simple
/// propagation heuristic. The following rules are applied to every
/// block BB in the CFG:
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
///
/// - If BB has a single predecessor/successor, then the weight
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// of that edge is the weight of the block.
///
/// - If all the edges are known except one, and the weight of the
/// block is already known, the weight of the unknown edge will
/// be the weight of the block minus the sum of all the known
/// edges. If the sum of all the known edges is larger than BB's weight,
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
/// we set the unknown edge weight to zero.
///
/// - If there is a self-referential edge, and the weight of the block is
/// known, the weight for that edge is set to the weight of the block
/// minus the weight of the other incoming edges to that block (if
/// known).
///
/// Since this propagation is not guaranteed to finalize for every CFG, we
/// only allow it to proceed for a limited number of iterations (controlled
/// by -sample-profile-max-propagate-iterations).
///
/// FIXME: Try to replace this propagation heuristic with a scheme
/// that is guaranteed to finalize. A work-list approach similar to
/// the standard value propagation algorithm used by SSA-CCP might
/// work here.
///
/// Once all the branch weights are computed, we emit the MD_prof
/// metadata on BB using the computed values for each of its branches.
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
///
/// \param F The function to query.
///
/// \returns true if \p F was modified. Returns false, otherwise.
bool SampleProfileLoader::emitAnnotations(Function &F) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
bool Changed = false;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
if (getFunctionLoc(F) == 0)
return false;
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
DEBUG(dbgs() << "Line number for the first instruction in " << F.getName()
<< ": " << getFunctionLoc(F) << "\n");
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
Changed |= inlineHotFunctions(F);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Compute basic block weights.
Changed |= computeBlockWeights(F);
if (Changed) {
// Compute dominance and loop info needed for propagation.
computeDominanceAndLoopInfo(F);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
// Find equivalence classes.
findEquivalenceClasses(F);
// Propagate weights to all edges.
propagateWeights(F);
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
}
return Changed;
}
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
char SampleProfileLoader::ID = 0;
INITIALIZE_PASS_BEGIN(SampleProfileLoader, "sample-profile",
"Sample Profile loader", false, false)
INITIALIZE_PASS_DEPENDENCY(AddDiscriminators)
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
INITIALIZE_PASS_END(SampleProfileLoader, "sample-profile",
"Sample Profile loader", false, false)
bool SampleProfileLoader::doInitialization(Module &M) {
auto &Ctx = M.getContext();
auto ReaderOrErr = SampleProfileReader::create(Filename, Ctx);
if (std::error_code EC = ReaderOrErr.getError()) {
std::string Msg = "Could not open profile: " + EC.message();
Ctx.diagnose(DiagnosticInfoSampleProfile(Filename.data(), Msg));
return false;
}
Reader = std::move(ReaderOrErr.get());
ProfileIsValid = (Reader->read() == sampleprof_error::success);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
return true;
}
ModulePass *llvm::createSampleProfileLoaderPass() {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
return new SampleProfileLoader(SampleProfileFile);
}
ModulePass *llvm::createSampleProfileLoaderPass(StringRef Name) {
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
return new SampleProfileLoader(Name);
}
bool SampleProfileLoader::runOnModule(Module &M) {
bool retval = false;
for (auto &F : M)
if (!F.isDeclaration())
retval |= runOnFunction(F);
return retval;
}
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
bool SampleProfileLoader::runOnFunction(Function &F) {
if (!ProfileIsValid)
return false;
Samples = Reader->getSamplesFor(F);
if (!Samples->empty())
return emitAnnotations(F);
Propagation of profile samples through the CFG. This adds a propagation heuristic to convert instruction samples into branch weights. It implements a similar heuristic to the one implemented by Dehao Chen on GCC. The propagation proceeds in 3 phases: 1- Assignment of block weights. All the basic blocks in the function are initial assigned the same weight as their most frequently executed instruction. 2- Creation of equivalence classes. Since samples may be missing from blocks, we can fill in the gaps by setting the weights of all the blocks in the same equivalence class to the same weight. To compute the concept of equivalence, we use dominance and loop information. Two blocks B1 and B2 are in the same equivalence class if B1 dominates B2, B2 post-dominates B1 and both are in the same loop. 3- Propagation of block weights into edges. This uses a simple propagation heuristic. The following rules are applied to every block B in the CFG: - If B has a single predecessor/successor, then the weight of that edge is the weight of the block. - If all the edges are known except one, and the weight of the block is already known, the weight of the unknown edge will be the weight of the block minus the sum of all the known edges. If the sum of all the known edges is larger than B's weight, we set the unknown edge weight to zero. - If there is a self-referential edge, and the weight of the block is known, the weight for that edge is set to the weight of the block minus the weight of the other incoming edges to that block (if known). Since this propagation is not guaranteed to finalize for every CFG, we only allow it to proceed for a limited number of iterations (controlled by -sample-profile-max-propagate-iterations). It currently uses the same GCC default of 100. Before propagation starts, the pass builds (for each block) a list of unique predecessors and successors. This is necessary to handle identical edges in multiway branches. Since we visit all blocks and all edges of the CFG, it is cleaner to build these lists once at the start of the pass. Finally, the patch fixes the computation of relative line locations. The profiler emits lines relative to the function header. To discover it, we traverse the compilation unit looking for the subprogram corresponding to the function. The line number of that subprogram is the line where the function begins. That becomes line zero for all the relative locations. llvm-svn: 198972
2014-01-11 07:23:46 +08:00
return false;
SampleProfileLoader pass. Initial setup. This adds a new scalar pass that reads a file with samples generated by 'perf' during runtime. The samples read from the profile are incorporated and emmited as IR metadata reflecting that profile. The profile file is assumed to have been generated by an external profile source. The profile information is converted into IR metadata, which is later used by the analysis routines to estimate block frequencies, edge weights and other related data. External profile information files have no fixed format, each profiler is free to define its own. This includes both the on-disk representation of the profile and the kind of profile information stored in the file. A common kind of profile is based on sampling (e.g., perf), which essentially counts how many times each line of the program has been executed during the run. The SampleProfileLoader pass is organized as a scalar transformation. On startup, it reads the file given in -sample-profile-file to determine what kind of profile it contains. This file is assumed to contain profile information for the whole application. The profile data in the file is read and incorporated into the internal state of the corresponding profiler. To facilitate testing, I've organized the profilers to support two file formats: text and native. The native format is whatever on-disk representation the profiler wants to support, I think this will mostly be bitcode files, but it could be anything the profiler wants to support. To do this, every profiler must implement the SampleProfile::loadNative() function. The text format is mostly meant for debugging. Records are separated by newlines, but each profiler is free to interpret records as it sees fit. Profilers must implement the SampleProfile::loadText() function. Finally, the pass will call SampleProfile::emitAnnotations() for each function in the current translation unit. This function needs to translate the loaded profile into IR metadata, which the analyzer will later be able to use. This patch implements the first steps towards the above design. I've implemented a sample-based flat profiler. The format of the profile is fairly simplistic. Each sampled function contains a list of relative line locations (from the start of the function) together with a count representing how many samples were collected at that line during execution. I generate this profile using perf and a separate converter tool. Currently, I have only implemented a text format for these profiles. I am interested in initial feedback to the whole approach before I send the other parts of the implementation for review. This patch implements: - The SampleProfileLoader pass. - The base ExternalProfile class with the core interface. - A SampleProfile sub-class using the above interface. The profiler generates branch weight metadata on every branch instructions that matches the profiles. - A text loader class to assist the implementation of SampleProfile::loadText(). - Basic unit tests for the pass. Additionally, the patch uses profile information to compute branch weights based on instruction samples. This patch converts instruction samples into branch weights. It does a fairly simplistic conversion: Given a multi-way branch instruction, it calculates the weight of each branch based on the maximum sample count gathered from each target basic block. Note that this assignment of branch weights is somewhat lossy and can be misleading. If a basic block has more than one incoming branch, all the incoming branches will get the same weight. In reality, it may be that only one of them is the most heavily taken branch. I will adjust this assignment in subsequent patches. llvm-svn: 194566
2013-11-13 20:22:21 +08:00
}