Commit Graph

125 Commits

Author SHA1 Message Date
Mehdi Amini e75bc5c791 Revert "Separate the Registration from Loading dialects in the Context"
This reverts commit d14cf45735.
The build is broken with GCC-5.
2020-08-19 01:19:03 +00:00
Mehdi Amini d14cf45735 Separate the Registration from Loading dialects in the Context
This changes the behavior of constructing MLIRContext to no longer load globally
registered dialects on construction. Instead Dialects are only loaded explicitly
on demand:
- the Parser is lazily loading Dialects in the context as it encounters them
during parsing. This is the only purpose for registering dialects and not load
them in the context.
- Passes are expected to declare the dialects they will create entity from
(Operations, Attributes, or Types), and the PassManager is loading Dialects into
the Context when starting a pipeline.

This changes simplifies the configuration of the registration: a compiler only
need to load the dialect for the IR it will emit, and the optimizer is
self-contained and load the required Dialects. For example in the Toy tutorial,
the compiler only needs to load the Toy dialect in the Context, all the others
(linalg, affine, std, LLVM, ...) are automatically loaded depending on the
optimization pipeline enabled.

To adjust to this change, stop using the existing dialect registration: the
global registry will be removed soon.

1) For passes, you need to override the method:

virtual void getDependentDialects(DialectRegistry &registry) const {}

and registery on the provided registry any dialect that this pass can produce.
Passes defined in TableGen can provide this list in the dependentDialects list
field.

2) For dialects, on construction you can register dependent dialects using the
provided MLIRContext: `context.getOrLoadDialect<DialectName>()`
This is useful if a dialect may canonicalize or have interfaces involving
another dialect.

3) For loading IR, dialect that can be in the input file must be explicitly
registered with the context. `MlirOptMain()` is taking an explicit registry for
this purpose. See how the standalone-opt.cpp example is setup:

  mlir::DialectRegistry registry;
  registry.insert<mlir::standalone::StandaloneDialect>();
  registry.insert<mlir::StandardOpsDialect>();

Only operations from these two dialects can be in the input file. To include all
of the dialects in MLIR Core, you can populate the registry this way:

  mlir::registerAllDialects(registry);

4) For `mlir-translate` callback, as well as frontend, Dialects can be loaded in
the context before emitting the IR: context.getOrLoadDialect<ToyDialect>()

Differential Revision: https://reviews.llvm.org/D85622
2020-08-18 23:23:56 +00:00
Mehdi Amini d84fe55e0d Revert "Separate the Registration from Loading dialects in the Context"
This reverts commit e1de2b7550.
Broke a build bot.
2020-08-18 22:16:34 +00:00
Mehdi Amini e1de2b7550 Separate the Registration from Loading dialects in the Context
This changes the behavior of constructing MLIRContext to no longer load globally
registered dialects on construction. Instead Dialects are only loaded explicitly
on demand:
- the Parser is lazily loading Dialects in the context as it encounters them
during parsing. This is the only purpose for registering dialects and not load
them in the context.
- Passes are expected to declare the dialects they will create entity from
(Operations, Attributes, or Types), and the PassManager is loading Dialects into
the Context when starting a pipeline.

This changes simplifies the configuration of the registration: a compiler only
need to load the dialect for the IR it will emit, and the optimizer is
self-contained and load the required Dialects. For example in the Toy tutorial,
the compiler only needs to load the Toy dialect in the Context, all the others
(linalg, affine, std, LLVM, ...) are automatically loaded depending on the
optimization pipeline enabled.

To adjust to this change, stop using the existing dialect registration: the
global registry will be removed soon.

1) For passes, you need to override the method:

virtual void getDependentDialects(DialectRegistry &registry) const {}

and registery on the provided registry any dialect that this pass can produce.
Passes defined in TableGen can provide this list in the dependentDialects list
field.

2) For dialects, on construction you can register dependent dialects using the
provided MLIRContext: `context.getOrLoadDialect<DialectName>()`
This is useful if a dialect may canonicalize or have interfaces involving
another dialect.

3) For loading IR, dialect that can be in the input file must be explicitly
registered with the context. `MlirOptMain()` is taking an explicit registry for
this purpose. See how the standalone-opt.cpp example is setup:

  mlir::DialectRegistry registry;
  mlir::registerDialect<mlir::standalone::StandaloneDialect>();
  mlir::registerDialect<mlir::StandardOpsDialect>();

Only operations from these two dialects can be in the input file. To include all
of the dialects in MLIR Core, you can populate the registry this way:

  mlir::registerAllDialects(registry);

4) For `mlir-translate` callback, as well as frontend, Dialects can be loaded in
the context before emitting the IR: context.getOrLoadDialect<ToyDialect>()
2020-08-18 21:14:39 +00:00
Mehdi Amini 54ce344314 Refactor mlir-opt setup in a new helper function (NFC)
This will help refactoring some of the tools to prepare for the explicit registration of
Dialects.

Differential Revision: https://reviews.llvm.org/D86023
2020-08-15 20:09:06 +00:00
Mehdi Amini 25ee851746 Revert "Separate the Registration from Loading dialects in the Context"
This reverts commit 2056393387.

Build is broken on a few bots
2020-08-15 09:21:47 +00:00
Mehdi Amini 2056393387 Separate the Registration from Loading dialects in the Context
This changes the behavior of constructing MLIRContext to no longer load globally registered dialects on construction. Instead Dialects are only loaded explicitly on demand:
- the Parser is lazily loading Dialects in the context as it encounters them during parsing. This is the only purpose for registering dialects and not load them in the context.
- Passes are expected to declare the dialects they will create entity from (Operations, Attributes, or Types), and the PassManager is loading Dialects into the Context when starting a pipeline.

This changes simplifies the configuration of the registration: a compiler only need to load the dialect for the IR it will emit, and the optimizer is self-contained and load the required Dialects. For example in the Toy tutorial, the compiler only needs to load the Toy dialect in the Context, all the others (linalg, affine, std, LLVM, ...) are automatically loaded depending on the optimization pipeline enabled.

Differential Revision: https://reviews.llvm.org/D85622
2020-08-15 08:07:31 +00:00
Mehdi Amini ba92dadf05 Revert "Separate the Registration from Loading dialects in the Context"
This was landed by accident, will reland with the right comments
addressed from the reviews.
Also revert dependent build fixes.
2020-08-15 07:35:10 +00:00
Mehdi Amini ebf521e784 Separate the Registration from Loading dialects in the Context
This changes the behavior of constructing MLIRContext to no longer load globally registered dialects on construction. Instead Dialects are only loaded explicitly on demand:
- the Parser is lazily loading Dialects in the context as it encounters them during parsing. This is the only purpose for registering dialects and not load them in the context.
- Passes are expected to declare the dialects they will create entity from (Operations, Attributes, or Types), and the PassManager is loading Dialects into the Context when starting a pipeline.

This changes simplifies the configuration of the registration: a compiler only need to load the dialect for the IR it will emit, and the optimizer is self-contained and load the required Dialects. For example in the Toy tutorial, the compiler only needs to load the Toy dialect in the Context, all the others (linalg, affine, std, LLVM, ...) are automatically loaded depending on the optimization pipeline enabled.
2020-08-14 09:40:27 +00:00
Alexander Belyaev fed9ff5117 [mlir] Test CallOp STD->LLVM conversion.
This exercises the corner case that was fixed in
https://reviews.llvm.org/rG8979a9cdf226066196f1710903d13492e6929563.

The bug can be reproduced when there is a @callee with a custom type argument and @caller has a producer of this argument passed to the @callee.

Example:
func @callee(!test.test_type) -> i32
func @caller() -> i32 {
  %arg = "test.type_producer"() : () -> !test.test_type
  %out = call @callee(%arg) : (!test.test_type) -> i32
  return %out : i32
}

Even though there is a type conversion for !test.test_type, the output IR (before the fix) contained a DialectCastOp:

module {
  llvm.func @callee(!llvm.ptr<i8>) -> !llvm.i32
  llvm.func @caller() -> !llvm.i32 {
    %0 = llvm.mlir.null : !llvm.ptr<i8>
    %1 = llvm.mlir.cast %0 : !llvm.ptr<i8> to !test.test_type
    %2 = llvm.call @callee(%1) : (!test.test_type) -> !llvm.i32
    llvm.return %2 : !llvm.i32
  }
}

instead of

module {
  llvm.func @callee(!llvm.ptr<i8>) -> !llvm.i32
  llvm.func @caller() -> !llvm.i32 {
    %0 = llvm.mlir.null : !llvm.ptr<i8>
    %1 = llvm.call @callee(%0) : (!llvm.ptr<i8>) -> !llvm.i32
    llvm.return %1 : !llvm.i32
  }
}

Differential Revision: https://reviews.llvm.org/D85914
2020-08-13 19:10:21 +02:00
Alex Zinenko 4e491570b5 [mlir] Remove LLVMTypeTestDialect
This dialect was introduced during the bring-up of the new LLVM dialect type
system for testing purposes. The main LLVM dialect now uses the new type system
and the test dialect is no longer necessary, so remove it.

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D85224
2020-08-05 14:39:36 +02:00
Alex Zinenko 0c40af6b59 [mlir] First-party modeling of LLVM types
The current modeling of LLVM IR types in MLIR is based on the LLVMType class
that wraps a raw `llvm::Type *` and delegates uniquing, printing and parsing to
LLVM itself. This model makes thread-safe type manipulation hard and is being
progressively replaced with a cleaner MLIR model that replicates the type
system.  Introduce a set of classes reflecting the LLVM IR type system in MLIR
instead of wrapping the existing types. These are currently introduced as
separate classes without affecting the dialect flow, and are exercised through
a test dialect. Once feature parity is reached, the old implementation will be
gradually substituted with the new one.

Depends On D84171

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D84339
2020-08-03 15:45:29 +02:00
MaheshRavishankar e5608cacfd [mlir][GPUToSPIRV] Add a test pass to set workgroup size for kernel
functions.

This allows using command line flags to lowere from GPU to SPIR-V. The
pass added is only for testing/example purposes. Most uses cases will
need more fine-grained control on setting workgroup sizes for kernel
functions.

Differential Revision: https://reviews.llvm.org/D84619
2020-07-28 12:10:30 -07:00
Alex Zinenko a51829913d [mlir] Support for mutable types
Introduce support for mutable storage in the StorageUniquer infrastructure.
This makes MLIR have key-value storage instead of just uniqued key storage. A
storage instance now contains a unique immutable key and a mutable value, both
stored in the arena allocator that belongs to the context. This is a
preconditio for supporting recursive types that require delayed initialization,
in particular LLVM structure types.  The functionality is exercised in the test
pass with trivial self-recursive type. So far, recursive types can only be
printed in parsed in a closed type system. Removing this restriction is left
for future work.

Differential Revision: https://reviews.llvm.org/D84171
2020-07-27 13:07:44 +02:00
Yash Jain 102828249c [MLIR] Parallelize affine.for op to 1-D affine.parallel op
Introduce pass to convert parallel affine.for op into 1-D affine.parallel op.
Run using --affine-parallelize. Removes test-detect-parallel: pass for checking
parallel affine.for ops.

Signed-off-by: Yash Jain <yash.jain@polymagelabs.com>

Differential Revision: https://reviews.llvm.org/D83193
2020-07-11 21:33:25 +05:30
Mauricio Sifontes 16e9ccb2be Create TestReducer pass
- Create a pass that generates bugs based on trivially defined behavior for the purpose of testing the MLIR Reduce Tool.
- Implement the functionality inside the pass to crash mlir-opt in the presence of an operation with the name "crashOp".
- Register the pass as a test pass in the mlir-opt tool.

Reviewed by: jpienaar

Differential Revision: https://reviews.llvm.org/D83422
2020-07-11 00:46:57 +00:00
Mehdi Amini fbc06b2280 Revert "[MLIR] Parallelize affine.for op to 1-D affine.parallel op"
This reverts commit 5f2843857f.
This broke the build when -DDBUILD_SHARED_LIBS=ON is used.
2020-07-04 20:55:47 +00:00
Yash Jain 5f2843857f [MLIR] Parallelize affine.for op to 1-D affine.parallel op
Introduce pass to convert parallel affine.for op into 1-D
affine.parallel op. Run using --affine-parallelize. Removes
test-detect-parallel: pass for checking parallel affine.for ops.

Differential Revision: https://reviews.llvm.org/D82672
2020-07-04 19:09:23 +05:30
River Riddle 2e2cdd0a52 [mlir] Refactor InterfaceGen to support generating interfaces for Attributes and Types.
This revision adds support to ODS for generating interfaces for attributes and types, in addition to operations. These interfaces can be specified using `AttrInterface` and `TypeInterface` in place of `OpInterface`. All of the features of `OpInterface` are supported except for the `verify` method, which does not have a matching representation in the Attribute/Type world. Generating these interface can be done using `gen-(attr|type)-interface-(defs|decls|docs)`.

Differential Revision: https://reviews.llvm.org/D81884
2020-06-30 15:52:33 -07:00
Hanhan Wang 9cb10296ec [mlir] Add support for lowering tanh to LLVMIR.
Summary:
Fixed build of D81618

Add a pattern for expanding tanh op into exp form.
A `tanh` is expanded into:
   1) 1-exp^{-2x} / 1+exp^{-2x}, if x => 0
   2) exp^{2x}-1 / exp^{2x}+1  , if x < 0.

Differential Revision: https://reviews.llvm.org/D82040
2020-06-18 10:42:13 -07:00
Mehdi Amini a9a21bb4b6 Revert "[mlir] Add support for lowering tanh to LLVMIR."
This reverts commit 32c757e4f8.

Broke the build bot:

******************** TEST 'MLIR :: Examples/standalone/test.toy' FAILED ********************
[...]
/tmp/ci-KIMiRFcVZt/lib/libMLIRLinalgToLLVM.a(LinalgToLLVM.cpp.o): In function `(anonymous namespace)::ConvertLinalgToLLVMPass::runOnOperation()':
LinalgToLLVM.cpp:(.text._ZN12_GLOBAL__N_123ConvertLinalgToLLVMPass14runOnOperationEv+0x100): undefined reference to `mlir::populateExpandTanhPattern(mlir::OwningRewritePatternList&, mlir::MLIRContext*)'
2020-06-15 18:46:57 +00:00
Hanhan Wang 32c757e4f8 [mlir] Add support for lowering tanh to LLVMIR.
Summary:
Add a pattern for expanding tanh op into exp form.
A `tanh` is expanded into:
   1) 1-exp^{-2x} / 1+exp^{-2x}, if x => 0
   2) exp^{2x}-1 / exp^{2x}+1  , if x < 0.

Differential Revision: https://reviews.llvm.org/D81618
2020-06-15 10:29:31 -07:00
Ehsan Toosi 4214031d43 [mlir] Introduce allowMemrefFunctionResults for the helper operation converters of buffer placement
This parameter gives the developers the freedom to choose their desired function
signature conversion for preparing their functions for buffer placement. It is
introduced for BufferAssignmentFuncOpConverter, and also for
BufferAssignmentReturnOpConverter, and BufferAssignmentCallOpConverter to adapt
the return and call operations with the selected function signature conversion.
If the parameter is set, buffer placement won't also deallocate the returned
buffers.

Differential Revision: https://reviews.llvm.org/D81137
2020-06-08 09:25:41 +02:00
Nicolas Vasilache 3463d9835b [mlir][Linalg] Add a hoistViewAllocOps helper function
This revision adds a helper function to hoist alloc/dealloc pairs and
alloca op out of immediately enclosing scf::ForOp if both conditions are true:
   1. all operands are defined outside the loop.
   2. all uses are ViewLikeOp or DeallocOp.

This is now considered Linalg-specific and will be generalized on a per-need basis.

Differential Revision: https://reviews.llvm.org/D81152
2020-06-04 18:59:03 -04:00
Nicolas Vasilache aa93659c9f [mlir][SCF] Add utility to clone an scf.ForOp while appending new yield values.
This utility factors out the machinery required to add iterArgs and yield values to an scf.ForOp.

Differential Revision: https://reviews.llvm.org/D80656
2020-05-29 07:28:17 -04:00
Nicolas Vasilache 5f9e0466f2 [mlir][Vector] Fix vector.transfer alignment calculation
https://reviews.llvm.org/D79246 introduces alignment propagation for vector transfer operations. Unfortunately, the alignment calculation is incorrect and can result in crashes.

This revision fixes the calculation by using the natural alignment of the memref elemental type, instead of the resulting vector type.

If more alignment is desired, it can be done in 2 ways:
1. use a proper vector.type_cast to transform a memref<axbxcxdxf32> into a memref<axbxvector<cxdxf32>> giving a natural alignment of vector<cxdxf32>
2. add an alignment attribute to vector transfer operations and propagate it.

With this change the alignment in the relevant tests goes down from 128 to 4.

Lastly, a few minor cleanups are performed and the custom `isMinorIdentityMap` is deprecated.

Differential Revision: https://reviews.llvm.org/D80734
2020-05-28 17:58:51 -04:00
Wen-Heng (Jack) Chung 061fb8eb2d [mlir][gpu][mlir-cuda-runner] Refactor ConvertKernelFuncToCubin to be generic.
Make ConvertKernelFuncToCubin pass to be generic:

- Rename to ConvertKernelFuncToBlob.
- Allow specifying triple, target chip, target features.
- Initializing LLVM backend is supplied by a callback function.
- Lowering process from MLIR module to LLVM module is via another callback.
- Change mlir-cuda-runner to adopt the revised pass.
- Add new tests for lowering to ROCm HSA code object (HSACO).
- Tests for CUDA and ROCm are kept in separate directories.

Differential Revision: https://reviews.llvm.org/D80142
2020-05-28 09:08:28 -05:00
Alexandre Rames 23dc948d36 [MLIR] Use `MLIR_INCLUDE_TESTS` to conditionally compile tests.
This is equivalent to what is done for other projects (e.g. clang).

Differential Revision: https://reviews.llvm.org/D80022
2020-05-18 18:47:37 +02:00
Alex Zinenko 4ead2cf76c [mlir] Rename conversions involving ex-Loop dialect to mention SCF
The following Conversions are affected: LoopToStandard -> SCFToStandard,
LoopsToGPU -> SCFToGPU, VectorToLoops -> VectorToSCF. Full file paths are
affected. Additionally, drop the 'Convert' prefix from filenames living under
lib/Conversion where applicable.

API names and CLI options for pass testing are also renamed when applicable. In
particular, LoopsToGPU contains several passes that apply to different kinds of
loops (`for` or `parallel`), for which the original names are preserved.

Differential Revision: https://reviews.llvm.org/D79940
2020-05-15 10:45:11 +02:00
Andy Davis 93d1108801 [MLIR][LoopOps] Adds the loop unroll transformation for loop::ForOp.
Summary:
Adds the loop unroll transformation for loop::ForOp.
Adds support for promoting the body of single-iteration loop::ForOps into its containing block.
Adds check tests for loop::ForOps with dynamic and static lower/upper bounds and step.
Care was taken to share code (where possible) with the AffineForOp unroll transformation to ease maintenance and potential future transition to a LoopLike construct on which loop transformations for different loop types can implemented.

Reviewers: ftynse, nicolasvasilache

Reviewed By: ftynse

Subscribers: bondhugula, mgorny, zzheng, mehdi_amini, rriddle, jpienaar, shauheen, antiagainst, nicolasvasilache, arpith-jacob, mgester, lucyrfox, aartbik, liufengdb, Joonsoo, grosul1, frgossen, Kayjukh, llvm-commits

Tags: #llvm

Differential Revision: https://reviews.llvm.org/D79184
2020-05-05 10:42:36 -07:00
River Riddle 6bce7d8d67 [mlir][mlir-opt] Disable multithreading when parsing the input module.
This removes the unnecessary/costly context synchronization when parsing, as the context is guaranteed to not be used by any other threads.
2020-05-04 17:29:56 -07:00
Nicolas Vasilache 0d61dcf606 [mlir][EDSC] Make use of InsertGuard
Summary:
This revision cleans up a layer of complexity in ScopedContext and uses InsertGuard instead of previously manual bookkeeping.
The method `getBuilder` is renamed to `getBuilderRef` and spurious copies of OpBuilder are tracked.

This results in some canonicalizations not happening anymore in the Linalg matmul to vector test. This test is retired because relying on DRRs for this has been shaky at best. The solution will be better support to write fused passes in C++ with more idiomatic pattern composition and application.

Differential Revision: https://reviews.llvm.org/D79208
2020-04-30 18:04:31 -04:00
Ehsan Toosi 5c352e69e7 Providing buffer assignment for MLIR
We have provided a generic buffer assignment transformation ported from
TensorFlow. This generic transformation pass automatically analyzes the values
and their aliases (also in other blocks) and returns the valid positions for
Alloc and Dealloc operations. To find these positions, the algorithm uses the
block Dominator and Post-Dominator analyses. In our proposed algorithm, we have
considered aliasing, liveness, nested regions, branches, conditional branches,
critical edges, and independency to custom block terminators. This
implementation doesn't support block loops. However, we have considered this in
our design. For this purpose, it is only required to have a loop analysis to
insert Alloc and Dealloc operations outside of these loops in some special
cases.

Differential Revision: https://reviews.llvm.org/D78484
2020-04-28 10:17:59 +02:00
Uday Bondhugula af5e83f569 [MLIR] Introduce utility to hoist affine if/else conditions
This revision introduces a utility to unswitch affine.for/parallel loops
by hoisting affine.if operations past surrounding affine.for/parallel.
The hoisting works for both perfect/imperfect nests and in the presence
of else blocks. The hoisting is currently to as outermost a level as
possible.  Uses a test pass to test the utility.
Add convenience method Operation::getParentWithTrait<Trait>.

Depends on D77487.

Differential Revision: https://reviews.llvm.org/D77870
2020-04-16 00:32:34 +05:30
River Riddle 8938dea44a [mlir][IR] Manually register command line options for MLIRContext and AsmPrinter
Summary: This revision makes the registration of command line options for these two files manual with `registerMLIRContextCLOptions` and `registerAsmPrinterCLOptions` methods. This removes the last remaining static constructors within lib/.

Differential Revision: https://reviews.llvm.org/D77960
2020-04-11 23:13:00 -07:00
Nicolas Vasilache 6fb6a4d7f9 [mlir][Linalg] Add a test for a fused Linalg pass based on DRR to go from matmul to vectors
This revision builds a simple "fused pass" consisting of 2 levels of tiling, memory promotion and vectorization using linalg transformations written as composable pattern rewrites.
2020-04-08 16:54:40 -04:00
Lukas Sommer d86ece13d9 Keep output file after successful execution of mlir-opt
Invoke `keep()` on the output file of `mlir-opt` in case the invocation of `MlirOptMain` was successful, to make sure the output file is not deleted on exit from `mlir-opt`.
Fixes a similar problem in `standalone-opt` from the example for an out-of-tree, standalone MLIR dialect.

This revision also adds a missing parameter to the invocation of `MlirOptMain` in `standalone-opt`.

Differential Revision: https://reviews.llvm.org/D77643
2020-04-08 03:37:45 +00:00
Mehdi Amini bab5bcf8fd Add a flag on the context to protect against creation of operations in unregistered dialects
Differential Revision: https://reviews.llvm.org/D76903
2020-03-30 19:37:31 +00:00
Uday Bondhugula f273e5c507 [MLIR] Fix permuteLoops utility
Rewrite mlir::permuteLoops (affine loop permutation utility) to fix
incorrect approach. Avoiding using sinkLoops entirely - use single move
approach. Add test pass.

This fixes https://bugs.llvm.org/show_bug.cgi?id=45328

Depends on D77003.

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Differential Revision: https://reviews.llvm.org/D77004
2020-03-30 23:38:23 +05:30
Marcel Koester 86bbbb317b [mlir] Extended Dominance analysis with a function to find the nearest common dominator of two given blocks.
The Dominance analysis currently misses a utility function to find the nearest common dominator of two given blocks. This is required for a huge variety of different control-flow analyses and transformations. This commit adds this function and moves the getNode function from DominanceInfo to DominanceInfoBase, as it also works for post dominators.

Differential Revision: https://reviews.llvm.org/D75507
2020-03-27 14:55:40 +01:00
River Riddle e8f5c072f6 [mlir] Move the testing pass for GpuKernelToCubin to the test/ directory
Summary:
This removes the static pass registration, and also cleans up some lingering technical debt.

Differential Revision: https://reviews.llvm.org/D76554
2020-03-22 03:38:09 -07:00
River Riddle e74961eee2 [mlir][NFC] Remove Analysis/Passes.h
Summary:
This file only contains references to test passes, and was never removed when the test passes were moved to the test/ directory.

Differential Revision: https://reviews.llvm.org/D76553
2020-03-22 03:16:51 -07:00
River Riddle f8923584da [mlir][SideEffects] Define a set of interfaces and traits for defining side effects
This revision introduces the infrastructure for defining side-effects and attaching them to operations. This infrastructure allows for defining different types of side effects, that don't interact with each other, but use the same internal mechanisms. At the base of this is an interface that allows operations to specify the different effect instances that are exhibited by a specific operation instance. An effect instance is comprised of the following:

* Effect: The specific effect being applied.
  For memory related effects this may be reading from memory, storing to memory, etc.

* Value: A specific value, either operand/result/region argument, the effect pertains to.

* Resource: This is a global entity that represents the domain within which the effect is being applied.

MLIR serves many different abstractions, which cover many different domains. Simple effects are may have very different context, for example writing to an in-memory buffer vs a database. This revision defines uses this infrastructure to define a set of initial MemoryEffects. The are effects that generally correspond to memory of some kind; Allocate, Free, Read, Write.

This set of memory effects will be used in follow revisions to generalize various parts of the compiler, and make others more powerful(e.g. DCE).

This infrastructure was originally proposed here:
https://groups.google.com/a/tensorflow.org/g/mlir/c/v2mNl4vFCUM

Differential Revision: https://reviews.llvm.org/D74439
2020-03-06 14:04:36 -08:00
Stephen Neuendorffer 01b209679f [MLIR] add show-dialects option for mlir-opt
Display the list of dialects known to mlir-opt.  This is useful
for ensuring that linkage has happened correctly, for instance.

Differential Revision: https://reviews.llvm.org/D74865
2020-02-27 10:43:39 -08:00
Stephan Herhut 7a7eacc797 [MLIR][GPU] Implement a simple greedy loop mapper.
Summary:
The mapper assigns annotations to loop.parallel operations that
are compatible with the loop to gpu mapping pass. The outermost
loop uses the grid dimensions, followed by block dimensions. All
remaining loops are mapped to sequential loops.

Differential Revision: https://reviews.llvm.org/D74963
2020-02-25 11:42:42 +01:00
Lei Zhang 8358ddbe5d [mlir][spirv] NFC: Move test passes to test/lib
Previously C++ test passes for SPIR-V were put under
test/Dialect/SPIRV. Move them to test/lib/Dialect/SPIRV
to create a better structure.

Also fixed one of the test pass to use new
PassRegistration mechanism.

Differential Revision: https://reviews.llvm.org/D75066
2020-02-24 14:17:02 -05:00
Diego Caballero d7058acc14 [mlir] Add MemRef filter to affine data copy optimization
This patch extends affine data copy optimization utility with an
optional memref filter argument. When the memref filter is used, data
copy optimization will only generate copies for such a memref.

Note: this patch is just porting the memref filter feature from Uday's
'hop' branch: https://github.com/bondhugula/llvm-project/tree/hop.

Reviewed By: bondhugula

Differential Revision: https://reviews.llvm.org/D74342
2020-02-14 13:41:45 -08:00
Mehdi Amini c64770506b Remove static registration for dialects, and the "alwayslink" hack for passes
In the previous state, we were relying on forcing the linker to include
all libraries in the final binary and the global initializer to self-register
every piece of the system. This change help moving away from this model, and
allow users to compose pieces more freely. The current change is only "fixing"
the dialect registration and avoiding relying on "whole link" for the passes.
The translation is still relying on the global registry, and some refactoring
is needed to make this all more convenient.

Differential Revision: https://reviews.llvm.org/D74461
2020-02-12 09:13:02 +00:00
Mehdi Amini 308571074c Mass update the MLIR license header to mention "Part of the LLVM project"
This is an artifact from merging MLIR into LLVM, the file headers are
now aligned with the rest of the project.
2020-01-26 03:58:30 +00:00
Mehdi Amini 56222a0694 Adjust License.txt file to use the LLVM license
PiperOrigin-RevId: 286906740
2019-12-23 15:33:37 -08:00