forked from OSchip/llvm-project
395 lines
16 KiB
C++
395 lines
16 KiB
C++
//===-- Clustering.cpp ------------------------------------------*- C++ -*-===//
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//
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// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
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// See https://llvm.org/LICENSE.txt for license information.
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// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
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//
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//===----------------------------------------------------------------------===//
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#include "Clustering.h"
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#include "Error.h"
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#include "llvm/ADT/SetVector.h"
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#include "llvm/ADT/SmallSet.h"
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#include "llvm/ADT/SmallVector.h"
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#include <algorithm>
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#include <string>
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#include <vector>
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#include <deque>
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namespace llvm {
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namespace exegesis {
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// The clustering problem has the following characteristics:
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// (A) - Low dimension (dimensions are typically proc resource units,
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// typically < 10).
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// (B) - Number of points : ~thousands (points are measurements of an MCInst)
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// (C) - Number of clusters: ~tens.
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// (D) - The number of clusters is not known /a priory/.
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// (E) - The amount of noise is relatively small.
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// The problem is rather small. In terms of algorithms, (D) disqualifies
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// k-means and makes algorithms such as DBSCAN[1] or OPTICS[2] more applicable.
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//
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// We've used DBSCAN here because it's simple to implement. This is a pretty
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// straightforward and inefficient implementation of the pseudocode in [2].
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//
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// [1] https://en.wikipedia.org/wiki/DBSCAN
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// [2] https://en.wikipedia.org/wiki/OPTICS_algorithm
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// Finds the points at distance less than sqrt(EpsilonSquared) of Q (not
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// including Q).
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void InstructionBenchmarkClustering::rangeQuery(
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const size_t Q, std::vector<size_t> &Neighbors) const {
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Neighbors.clear();
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Neighbors.reserve(Points_.size() - 1); // The Q itself isn't a neighbor.
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const auto &QMeasurements = Points_[Q].Measurements;
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for (size_t P = 0, NumPoints = Points_.size(); P < NumPoints; ++P) {
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if (P == Q)
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continue;
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const auto &PMeasurements = Points_[P].Measurements;
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if (PMeasurements.empty()) // Error point.
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continue;
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if (isNeighbour(PMeasurements, QMeasurements,
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AnalysisClusteringEpsilonSquared_)) {
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Neighbors.push_back(P);
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}
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}
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}
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// Given a set of points, checks that all the points are neighbours
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// up to AnalysisClusteringEpsilon. This is O(2*N).
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bool InstructionBenchmarkClustering::areAllNeighbours(
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ArrayRef<size_t> Pts) const {
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// First, get the centroid of this group of points. This is O(N).
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SchedClassClusterCentroid G;
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for_each(Pts, [this, &G](size_t P) {
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assert(P < Points_.size());
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ArrayRef<BenchmarkMeasure> Measurements = Points_[P].Measurements;
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if (Measurements.empty()) // Error point.
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return;
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G.addPoint(Measurements);
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});
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const std::vector<BenchmarkMeasure> Centroid = G.getAsPoint();
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// Since we will be comparing with the centroid, we need to halve the epsilon.
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double AnalysisClusteringEpsilonHalvedSquared =
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AnalysisClusteringEpsilonSquared_ / 4.0;
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// And now check that every point is a neighbour of the centroid. Also O(N).
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return all_of(
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Pts, [this, &Centroid, AnalysisClusteringEpsilonHalvedSquared](size_t P) {
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assert(P < Points_.size());
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const auto &PMeasurements = Points_[P].Measurements;
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if (PMeasurements.empty()) // Error point.
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return true; // Pretend that error point is a neighbour.
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return isNeighbour(PMeasurements, Centroid,
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AnalysisClusteringEpsilonHalvedSquared);
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});
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}
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InstructionBenchmarkClustering::InstructionBenchmarkClustering(
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const std::vector<InstructionBenchmark> &Points,
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const double AnalysisClusteringEpsilonSquared)
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: Points_(Points),
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AnalysisClusteringEpsilonSquared_(AnalysisClusteringEpsilonSquared),
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NoiseCluster_(ClusterId::noise()), ErrorCluster_(ClusterId::error()) {}
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Error InstructionBenchmarkClustering::validateAndSetup() {
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ClusterIdForPoint_.resize(Points_.size());
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// Mark erroneous measurements out.
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// All points must have the same number of dimensions, in the same order.
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const std::vector<BenchmarkMeasure> *LastMeasurement = nullptr;
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for (size_t P = 0, NumPoints = Points_.size(); P < NumPoints; ++P) {
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const auto &Point = Points_[P];
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if (!Point.Error.empty()) {
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ClusterIdForPoint_[P] = ClusterId::error();
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ErrorCluster_.PointIndices.push_back(P);
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continue;
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}
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const auto *CurMeasurement = &Point.Measurements;
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if (LastMeasurement) {
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if (LastMeasurement->size() != CurMeasurement->size()) {
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return make_error<ClusteringError>(
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"inconsistent measurement dimensions");
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}
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for (size_t I = 0, E = LastMeasurement->size(); I < E; ++I) {
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if (LastMeasurement->at(I).Key != CurMeasurement->at(I).Key) {
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return make_error<ClusteringError>(
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"inconsistent measurement dimensions keys");
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}
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}
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}
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LastMeasurement = CurMeasurement;
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}
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if (LastMeasurement) {
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NumDimensions_ = LastMeasurement->size();
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}
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return Error::success();
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}
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void InstructionBenchmarkClustering::clusterizeDbScan(const size_t MinPts) {
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std::vector<size_t> Neighbors; // Persistent buffer to avoid allocs.
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for (size_t P = 0, NumPoints = Points_.size(); P < NumPoints; ++P) {
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if (!ClusterIdForPoint_[P].isUndef())
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continue; // Previously processed in inner loop.
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rangeQuery(P, Neighbors);
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if (Neighbors.size() + 1 < MinPts) { // Density check.
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// The region around P is not dense enough to create a new cluster, mark
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// as noise for now.
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ClusterIdForPoint_[P] = ClusterId::noise();
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continue;
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}
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// Create a new cluster, add P.
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Clusters_.emplace_back(ClusterId::makeValid(Clusters_.size()));
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Cluster &CurrentCluster = Clusters_.back();
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ClusterIdForPoint_[P] = CurrentCluster.Id; /* Label initial point */
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CurrentCluster.PointIndices.push_back(P);
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// Process P's neighbors.
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SetVector<size_t, std::deque<size_t>> ToProcess;
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ToProcess.insert(Neighbors.begin(), Neighbors.end());
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while (!ToProcess.empty()) {
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// Retrieve a point from the set.
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const size_t Q = *ToProcess.begin();
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ToProcess.erase(ToProcess.begin());
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if (ClusterIdForPoint_[Q].isNoise()) {
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// Change noise point to border point.
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ClusterIdForPoint_[Q] = CurrentCluster.Id;
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CurrentCluster.PointIndices.push_back(Q);
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continue;
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}
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if (!ClusterIdForPoint_[Q].isUndef()) {
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continue; // Previously processed.
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}
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// Add Q to the current custer.
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ClusterIdForPoint_[Q] = CurrentCluster.Id;
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CurrentCluster.PointIndices.push_back(Q);
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// And extend to the neighbors of Q if the region is dense enough.
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rangeQuery(Q, Neighbors);
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if (Neighbors.size() + 1 >= MinPts) {
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ToProcess.insert(Neighbors.begin(), Neighbors.end());
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}
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}
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}
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// assert(Neighbors.capacity() == (Points_.size() - 1));
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// ^ True, but it is not quaranteed to be true in all the cases.
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// Add noisy points to noise cluster.
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for (size_t P = 0, NumPoints = Points_.size(); P < NumPoints; ++P) {
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if (ClusterIdForPoint_[P].isNoise()) {
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NoiseCluster_.PointIndices.push_back(P);
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}
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}
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}
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void InstructionBenchmarkClustering::clusterizeNaive(unsigned NumOpcodes) {
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// Given an instruction Opcode, which are the benchmarks of this instruction?
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std::vector<SmallVector<size_t, 1>> OpcodeToPoints;
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OpcodeToPoints.resize(NumOpcodes);
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size_t NumOpcodesSeen = 0;
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for (size_t P = 0, NumPoints = Points_.size(); P < NumPoints; ++P) {
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const InstructionBenchmark &Point = Points_[P];
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const unsigned Opcode = Point.keyInstruction().getOpcode();
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assert(Opcode < NumOpcodes && "NumOpcodes is incorrect (too small)");
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SmallVectorImpl<size_t> &PointsOfOpcode = OpcodeToPoints[Opcode];
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if (PointsOfOpcode.empty()) // If we previously have not seen any points of
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++NumOpcodesSeen; // this opcode, then naturally this is the new opcode.
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PointsOfOpcode.emplace_back(P);
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}
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assert(OpcodeToPoints.size() == NumOpcodes && "sanity check");
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assert(NumOpcodesSeen <= NumOpcodes &&
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"can't see more opcodes than there are total opcodes");
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assert(NumOpcodesSeen <= Points_.size() &&
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"can't see more opcodes than there are total points");
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Clusters_.reserve(NumOpcodesSeen); // One cluster per opcode.
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for (ArrayRef<size_t> PointsOfOpcode :
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make_filter_range(OpcodeToPoints, [](ArrayRef<size_t> PointsOfOpcode) {
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return !PointsOfOpcode.empty(); // Ignore opcodes with no points.
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})) {
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// Create a new cluster.
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Clusters_.emplace_back(ClusterId::makeValid(
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Clusters_.size(), /*IsUnstable=*/!areAllNeighbours(PointsOfOpcode)));
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Cluster &CurrentCluster = Clusters_.back();
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// Mark points as belonging to the new cluster.
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for_each(PointsOfOpcode, [this, &CurrentCluster](size_t P) {
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ClusterIdForPoint_[P] = CurrentCluster.Id;
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});
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// And add all the points of this opcode to the new cluster.
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CurrentCluster.PointIndices.reserve(PointsOfOpcode.size());
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CurrentCluster.PointIndices.assign(PointsOfOpcode.begin(),
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PointsOfOpcode.end());
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assert(CurrentCluster.PointIndices.size() == PointsOfOpcode.size());
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}
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assert(Clusters_.size() == NumOpcodesSeen);
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}
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// Given an instruction Opcode, we can make benchmarks (measurements) of the
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// instruction characteristics/performance. Then, to facilitate further analysis
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// we group the benchmarks with *similar* characteristics into clusters.
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// Now, this is all not entirely deterministic. Some instructions have variable
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// characteristics, depending on their arguments. And thus, if we do several
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// benchmarks of the same instruction Opcode, we may end up with *different*
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// performance characteristics measurements. And when we then do clustering,
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// these several benchmarks of the same instruction Opcode may end up being
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// clustered into *different* clusters. This is not great for further analysis.
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// We shall find every opcode with benchmarks not in just one cluster, and move
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// *all* the benchmarks of said Opcode into one new unstable cluster per Opcode.
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void InstructionBenchmarkClustering::stabilize(unsigned NumOpcodes) {
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// Given an instruction Opcode and Config, in which clusters do benchmarks of
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// this instruction lie? Normally, they all should be in the same cluster.
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struct OpcodeAndConfig {
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explicit OpcodeAndConfig(const InstructionBenchmark &IB)
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: Opcode(IB.keyInstruction().getOpcode()), Config(&IB.Key.Config) {}
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unsigned Opcode;
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const std::string *Config;
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auto Tie() const -> auto { return std::tie(Opcode, *Config); }
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bool operator<(const OpcodeAndConfig &O) const { return Tie() < O.Tie(); }
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bool operator!=(const OpcodeAndConfig &O) const { return Tie() != O.Tie(); }
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};
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std::map<OpcodeAndConfig, SmallSet<ClusterId, 1>> OpcodeConfigToClusterIDs;
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// Populate OpcodeConfigToClusterIDs and UnstableOpcodes data structures.
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assert(ClusterIdForPoint_.size() == Points_.size() && "size mismatch");
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for (auto Point : zip(Points_, ClusterIdForPoint_)) {
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const ClusterId &ClusterIdOfPoint = std::get<1>(Point);
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if (!ClusterIdOfPoint.isValid())
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continue; // Only process fully valid clusters.
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const OpcodeAndConfig Key(std::get<0>(Point));
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SmallSet<ClusterId, 1> &ClusterIDsOfOpcode = OpcodeConfigToClusterIDs[Key];
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ClusterIDsOfOpcode.insert(ClusterIdOfPoint);
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}
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for (const auto &OpcodeConfigToClusterID : OpcodeConfigToClusterIDs) {
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const SmallSet<ClusterId, 1> &ClusterIDs = OpcodeConfigToClusterID.second;
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const OpcodeAndConfig &Key = OpcodeConfigToClusterID.first;
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// We only care about unstable instructions.
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if (ClusterIDs.size() < 2)
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continue;
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// Create a new unstable cluster, one per Opcode.
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Clusters_.emplace_back(ClusterId::makeValidUnstable(Clusters_.size()));
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Cluster &UnstableCluster = Clusters_.back();
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// We will find *at least* one point in each of these clusters.
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UnstableCluster.PointIndices.reserve(ClusterIDs.size());
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// Go through every cluster which we recorded as containing benchmarks
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// of this UnstableOpcode. NOTE: we only recorded valid clusters.
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for (const ClusterId &CID : ClusterIDs) {
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assert(CID.isValid() &&
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"We only recorded valid clusters, not noise/error clusters.");
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Cluster &OldCluster = Clusters_[CID.getId()]; // Valid clusters storage.
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// Within each cluster, go through each point, and either move it to the
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// new unstable cluster, or 'keep' it.
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// In this case, we'll reshuffle OldCluster.PointIndices vector
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// so that all the points that are *not* for UnstableOpcode are first,
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// and the rest of the points is for the UnstableOpcode.
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const auto it = std::stable_partition(
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OldCluster.PointIndices.begin(), OldCluster.PointIndices.end(),
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[this, &Key](size_t P) {
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return OpcodeAndConfig(Points_[P]) != Key;
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});
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assert(std::distance(it, OldCluster.PointIndices.end()) > 0 &&
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"Should have found at least one bad point");
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// Mark to-be-moved points as belonging to the new cluster.
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std::for_each(it, OldCluster.PointIndices.end(),
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[this, &UnstableCluster](size_t P) {
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ClusterIdForPoint_[P] = UnstableCluster.Id;
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});
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// Actually append to-be-moved points to the new cluster.
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UnstableCluster.PointIndices.insert(UnstableCluster.PointIndices.end(),
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it, OldCluster.PointIndices.end());
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// And finally, remove "to-be-moved" points form the old cluster.
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OldCluster.PointIndices.erase(it, OldCluster.PointIndices.end());
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// Now, the old cluster may end up being empty, but let's just keep it
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// in whatever state it ended up. Purging empty clusters isn't worth it.
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};
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assert(UnstableCluster.PointIndices.size() > 1 &&
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"New unstable cluster should end up with more than one point.");
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assert(UnstableCluster.PointIndices.size() >= ClusterIDs.size() &&
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"New unstable cluster should end up with no less points than there "
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"was clusters");
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}
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}
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Expected<InstructionBenchmarkClustering> InstructionBenchmarkClustering::create(
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const std::vector<InstructionBenchmark> &Points, const ModeE Mode,
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const size_t DbscanMinPts, const double AnalysisClusteringEpsilon,
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Optional<unsigned> NumOpcodes) {
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InstructionBenchmarkClustering Clustering(
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Points, AnalysisClusteringEpsilon * AnalysisClusteringEpsilon);
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if (auto Error = Clustering.validateAndSetup()) {
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return std::move(Error);
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}
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if (Clustering.ErrorCluster_.PointIndices.size() == Points.size()) {
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return Clustering; // Nothing to cluster.
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}
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if (Mode == ModeE::Dbscan) {
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Clustering.clusterizeDbScan(DbscanMinPts);
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if (NumOpcodes.hasValue())
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Clustering.stabilize(NumOpcodes.getValue());
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} else /*if(Mode == ModeE::Naive)*/ {
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if (!NumOpcodes.hasValue())
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return make_error<Failure>(
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"'naive' clustering mode requires opcode count to be specified");
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Clustering.clusterizeNaive(NumOpcodes.getValue());
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}
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return Clustering;
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}
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void SchedClassClusterCentroid::addPoint(ArrayRef<BenchmarkMeasure> Point) {
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if (Representative.empty())
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Representative.resize(Point.size());
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assert(Representative.size() == Point.size() &&
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"All points should have identical dimensions.");
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for (auto I : zip(Representative, Point))
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std::get<0>(I).push(std::get<1>(I));
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}
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std::vector<BenchmarkMeasure> SchedClassClusterCentroid::getAsPoint() const {
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std::vector<BenchmarkMeasure> ClusterCenterPoint(Representative.size());
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for (auto I : zip(ClusterCenterPoint, Representative))
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std::get<0>(I).PerInstructionValue = std::get<1>(I).avg();
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return ClusterCenterPoint;
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}
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bool SchedClassClusterCentroid::validate(
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InstructionBenchmark::ModeE Mode) const {
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size_t NumMeasurements = Representative.size();
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switch (Mode) {
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case InstructionBenchmark::Latency:
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if (NumMeasurements != 1) {
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errs()
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<< "invalid number of measurements in latency mode: expected 1, got "
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<< NumMeasurements << "\n";
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return false;
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}
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break;
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case InstructionBenchmark::Uops:
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// Can have many measurements.
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break;
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case InstructionBenchmark::InverseThroughput:
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if (NumMeasurements != 1) {
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errs() << "invalid number of measurements in inverse throughput "
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"mode: expected 1, got "
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<< NumMeasurements << "\n";
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return false;
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}
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break;
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default:
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llvm_unreachable("unimplemented measurement matching mode");
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return false;
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}
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return true; // All good.
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}
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} // namespace exegesis
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} // namespace llvm
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