1 //===- MLRegAllocEvictAdvisor.cpp - ML eviction advisor -------------------===// 2 // 3 // Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions. 4 // See https://llvm.org/LICENSE.txt for license information. 5 // SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception 6 // 7 //===----------------------------------------------------------------------===// 8 // 9 // Implementation of the ML eviction advisor and reward injection pass 10 // 11 //===----------------------------------------------------------------------===// 12 13 #include "AllocationOrder.h" 14 #include "RegAllocGreedy.h" 15 #include "llvm/Analysis/InteractiveModelRunner.h" 16 #include "llvm/Analysis/MLModelRunner.h" 17 #include "llvm/Analysis/TensorSpec.h" 18 #include "llvm/CodeGen/RegAllocEvictionAdvisor.h" 19 #if defined(LLVM_HAVE_TF_AOT_REGALLOCEVICTMODEL) || defined(LLVM_HAVE_TFLITE) 20 #include "llvm/Analysis/ModelUnderTrainingRunner.h" 21 #include "llvm/Analysis/NoInferenceModelRunner.h" 22 #include "llvm/Analysis/Utils/TrainingLogger.h" 23 #endif 24 #include "MLRegAllocEvictAdvisor.h" 25 #include "llvm/Analysis/ReleaseModeModelRunner.h" 26 #include "llvm/CodeGen/CalcSpillWeights.h" 27 #include "llvm/CodeGen/LiveRegMatrix.h" 28 #include "llvm/CodeGen/MachineBlockFrequencyInfo.h" 29 #include "llvm/CodeGen/MachineFunction.h" 30 #include "llvm/CodeGen/MachineLoopInfo.h" 31 #include "llvm/CodeGen/MachineRegisterInfo.h" 32 #include "llvm/CodeGen/Passes.h" 33 #include "llvm/CodeGen/RegisterClassInfo.h" 34 #include "llvm/CodeGen/VirtRegMap.h" 35 #include "llvm/IR/Module.h" 36 #include "llvm/InitializePasses.h" 37 #include "llvm/Pass.h" 38 #include "llvm/PassRegistry.h" 39 #include "llvm/Support/CommandLine.h" 40 #include "llvm/Support/ErrorHandling.h" 41 42 #include <array> 43 #include <bitset> 44 #include <memory> 45 #include <unordered_map> 46 47 using namespace llvm; 48 49 #define DEBUG_TYPE "ml-regalloc" 50 51 // Generated header in release (AOT) mode 52 #if defined(LLVM_HAVE_TF_AOT_REGALLOCEVICTMODEL) 53 #include "RegAllocEvictModel.h" 54 using CompiledModelType = RegAllocEvictModel; 55 #else 56 using CompiledModelType = NoopSavedModelImpl; 57 #endif 58 59 static cl::opt<std::string> InteractiveChannelBaseName( 60 "regalloc-evict-interactive-channel-base", cl::Hidden, 61 cl::desc( 62 "Base file path for the interactive mode. The incoming filename should " 63 "have the name <regalloc-evict-interactive-channel-base>.in, while the " 64 "outgoing name should be " 65 "<regalloc-evict-interactive-channel-base>.out")); 66 67 static cl::opt<unsigned> MaxEvictionCount( 68 "mlregalloc-max-eviction-count", cl::Hidden, 69 cl::desc("The maximum number of times a live range can be " 70 "evicted before preventing it from being evicted"), 71 cl::init(100)); 72 73 // Options that only make sense in development mode 74 #ifdef LLVM_HAVE_TFLITE 75 #include "RegAllocScore.h" 76 #include "llvm/Analysis/Utils/TFUtils.h" 77 78 static cl::opt<std::string> TrainingLog( 79 "regalloc-training-log", cl::Hidden, 80 cl::desc("Training log for the register allocator eviction model")); 81 82 static cl::opt<std::string> ModelUnderTraining( 83 "regalloc-model", cl::Hidden, 84 cl::desc("The model being trained for register allocation eviction")); 85 86 static cl::opt<bool> EnableDevelopmentFeatures( 87 "regalloc-enable-development-features", cl::Hidden, 88 cl::desc("Whether or not to enable features under development for the ML " 89 "regalloc advisor")); 90 91 #else 92 static const bool EnableDevelopmentFeatures = false; 93 #endif // #ifdef LLVM_HAVE_TFLITE 94 95 /// The score injection pass. 96 /// This pass calculates the score for a function and inserts it in the log, but 97 /// this happens only in development mode. It's a no-op otherwise. 98 namespace llvm { 99 extern cl::opt<unsigned> EvictInterferenceCutoff; 100 101 class RegAllocScoring : public MachineFunctionPass { 102 public: 103 static char ID; 104 105 RegAllocScoring() : MachineFunctionPass(ID) { 106 initializeRegAllocScoringPass(*PassRegistry::getPassRegistry()); 107 } 108 109 ~RegAllocScoring() override = default; 110 111 StringRef getPassName() const override { 112 return "Register Allocation Pass Scoring"; 113 } 114 115 /// RegAllocReward analysis usage. 116 void getAnalysisUsage(AnalysisUsage &AU) const override { 117 AU.setPreservesAll(); 118 AU.addRequired<RegAllocEvictionAdvisorAnalysisLegacy>(); 119 AU.addRequired<RegAllocPriorityAdvisorAnalysisLegacy>(); 120 AU.addRequired<MachineBlockFrequencyInfoWrapperPass>(); 121 MachineFunctionPass::getAnalysisUsage(AU); 122 } 123 124 /// Performs this pass 125 bool runOnMachineFunction(MachineFunction &) override; 126 }; 127 128 char RegAllocScoring::ID = 0; 129 FunctionPass *createRegAllocScoringPass() { return new RegAllocScoring(); } 130 131 } // namespace llvm 132 133 INITIALIZE_PASS(RegAllocScoring, "regallocscoringpass", 134 "Register Allocation Scoring Pass", false, false) 135 136 // =================================== 137 // Common ML Advisor declarations 138 // =================================== 139 namespace { 140 // The model can only accept a specified number of opcodes and will error it if 141 // fed an opcode it hasn't seen before. This constant sets the current cutoff. 142 static const int OpcodeValueCutoff = 17716; 143 144 // Most features are as described above, so we'll reuse this vector in defining 145 // them. 146 static const std::vector<int64_t> PerLiveRangeShape{1, NumberOfInterferences}; 147 148 // -------------- 149 // Features table 150 // -------------- 151 // For each interfering live range (incl. the candidate) we collect a number of 152 // features. However, because the features are of different types (and because 153 // of ML best practices), we organize the tensors per feature, not per 154 // candidate. Each such tensor has a scalar value corresponding to the 155 // interferring live range at that position, in the order in AllocationOrder. 156 // The last position corresponds to the virt reg seeking allocation. 157 // Exception to all that is the progression feature, which is just a scalar (see 158 // its documentation for details). 159 // Note on naming: the "_by_max" are normalized using the largest value of that 160 // tensor, as observed in the current decision making stage (i.e. for the 161 // current call to the advisor's tryFindEvictionCandidate) 162 // 163 // The feature list format: type, name, shape, documentation. 164 // Note: we can really just use int64 and float, hence the modeling of some 165 // bools as int64 values. 166 #define RA_EVICT_FEATURES_LIST(M) \ 167 M(int64_t, mask, PerLiveRangeShape, \ 168 "boolean values, 0 for unavailable candidates (i.e. if a position is 0, " \ 169 "it " \ 170 "can't be evicted)") \ 171 M(int64_t, is_free, PerLiveRangeShape, \ 172 "boolean values, 1 if this phys reg is actually free (no interferences)") \ 173 M(float, nr_urgent, PerLiveRangeShape, \ 174 "number of 'urgent' intervals, normalized. Urgent are those that are OK " \ 175 "to break cascades") \ 176 M(float, nr_broken_hints, PerLiveRangeShape, \ 177 "if this position were evicted, how many broken hints would there be") \ 178 M(int64_t, is_hint, PerLiveRangeShape, \ 179 "is this a preferred phys reg for the candidate") \ 180 M(int64_t, is_local, PerLiveRangeShape, \ 181 "is this live range local to a basic block") \ 182 M(float, nr_rematerializable, PerLiveRangeShape, \ 183 "nr rematerializable ranges") \ 184 M(float, nr_defs_and_uses, PerLiveRangeShape, \ 185 "bb freq - weighed nr defs and uses") \ 186 M(float, weighed_reads_by_max, PerLiveRangeShape, \ 187 "bb freq - weighed nr of reads, normalized") \ 188 M(float, weighed_writes_by_max, PerLiveRangeShape, \ 189 "bb feq - weighed nr of writes, normalized") \ 190 M(float, weighed_read_writes_by_max, PerLiveRangeShape, \ 191 "bb freq - weighed nr of uses that are both read and writes, normalized") \ 192 M(float, weighed_indvars_by_max, PerLiveRangeShape, \ 193 "bb freq - weighed nr of uses that are indvars, normalized") \ 194 M(float, hint_weights_by_max, PerLiveRangeShape, \ 195 "bb freq - weighed nr of uses that are hints, normalized") \ 196 M(float, start_bb_freq_by_max, PerLiveRangeShape, \ 197 "the freq in the start block, normalized") \ 198 M(float, end_bb_freq_by_max, PerLiveRangeShape, \ 199 "freq of end block, normalized") \ 200 M(float, hottest_bb_freq_by_max, PerLiveRangeShape, \ 201 "hottest BB freq, normalized") \ 202 M(float, liverange_size, PerLiveRangeShape, \ 203 "size (instr index diff) of the LR") \ 204 M(float, use_def_density, PerLiveRangeShape, \ 205 "the max weight, as computed by the manual heuristic") \ 206 M(int64_t, max_stage, PerLiveRangeShape, \ 207 "largest stage of an interval in this LR") \ 208 M(int64_t, min_stage, PerLiveRangeShape, \ 209 "lowest stage of an interval in this LR") \ 210 M(float, progress, {1}, "ratio of current queue size to initial size") 211 212 #ifdef LLVM_HAVE_TFLITE 213 #define RA_EVICT_FIRST_DEVELOPMENT_FEATURE(M) \ 214 M(int64_t, instructions, InstructionsShape, \ 215 "Opcodes of the instructions covered by the eviction problem") 216 217 #define RA_EVICT_REST_DEVELOPMENT_FEATURES(M) \ 218 M(int64_t, instructions_mapping, InstructionsMappingShape, \ 219 "A binary matrix mapping LRs to instruction opcodes") \ 220 M(float, mbb_frequencies, MBBFrequencyShape, \ 221 "A vector of machine basic block frequencies") \ 222 M(int64_t, mbb_mapping, InstructionsShape, \ 223 "A vector of indices mapping instructions to MBBs") 224 #else 225 #define RA_EVICT_FIRST_DEVELOPMENT_FEATURE(M) 226 #define RA_EVICT_REST_DEVELOPMENT_FEATURES(M) 227 #endif 228 229 // The model learns to pick one of the mask == 1 interferences. This is the 230 // name of the output tensor. The contract with the model is that the output 231 // will be guaranteed to be to a mask == 1 position. Using a macro here to 232 // avoid 'not used' warnings (and keep cond compilation to a minimum) 233 #define DecisionName "index_to_evict" 234 static const TensorSpec DecisionSpec = 235 TensorSpec::createSpec<int64_t>(DecisionName, {1}); 236 237 // Named features index. 238 enum FeatureIDs { 239 #define _FEATURE_IDX_SIMPLE(_, name, __, ___) name 240 #define _FEATURE_IDX(A, B, C, D) _FEATURE_IDX_SIMPLE(A, B, C, D), 241 RA_EVICT_FEATURES_LIST(_FEATURE_IDX) FeatureCount, 242 #ifdef LLVM_HAVE_TFLITE 243 RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_FEATURE_IDX_SIMPLE) = FeatureCount, 244 #else 245 RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_FEATURE_IDX) 246 #endif // #ifdef LLVM_HAVE_TFLITE 247 RA_EVICT_REST_DEVELOPMENT_FEATURES(_FEATURE_IDX) FeaturesWithDevelopmentCount 248 #undef _FEATURE_IDX 249 #undef _FEATURE_IDX_SIMPLE 250 }; 251 252 // The ML advisor will typically have a sparse input to the evaluator, because 253 // various phys regs won't be available. It's easier (maintenance-wise) to 254 // bulk-reset the state of the evaluator each time we are about to use it 255 // again. 256 template <typename T> size_t getTotalSize(const std::vector<int64_t> &Shape) { 257 size_t Ret = sizeof(T); 258 for (const auto V : Shape) 259 Ret *= V; 260 return Ret; 261 } 262 263 void resetInputs(MLModelRunner &Runner) { 264 #define _RESET(TYPE, NAME, SHAPE, __) \ 265 std::memset(Runner.getTensorUntyped(FeatureIDs::NAME), 0, \ 266 getTotalSize<TYPE>(SHAPE)); 267 RA_EVICT_FEATURES_LIST(_RESET) 268 if (EnableDevelopmentFeatures) { 269 RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_RESET) 270 RA_EVICT_REST_DEVELOPMENT_FEATURES(_RESET) 271 #undef _RESET 272 } 273 } 274 275 // Per-live interval components that get aggregated into the feature values 276 // that will be passed to the evaluator. 277 struct LIFeatureComponents { 278 double R = 0; 279 double W = 0; 280 double RW = 0; 281 double IndVarUpdates = 0; 282 double HintWeights = 0.0; 283 int64_t NumDefsAndUses = 0; 284 float HottestBlockFreq = 0.0; 285 bool IsRemat = false; 286 }; 287 288 using CandidateRegList = 289 std::array<std::pair<MCRegister, bool>, NumberOfInterferences>; 290 using FeaturesListNormalizer = 291 llvm::SmallVector<float, FeatureIDs::FeatureCount>; 292 293 /// The ML evictor (commonalities between release and development mode) 294 class MLEvictAdvisor : public RegAllocEvictionAdvisor { 295 public: 296 MLEvictAdvisor(const MachineFunction &MF, const RAGreedy &RA, 297 MLModelRunner *Runner, const MachineBlockFrequencyInfo &MBFI, 298 const MachineLoopInfo &Loops); 299 300 protected: 301 const RegAllocEvictionAdvisor &getDefaultAdvisor() const { 302 return static_cast<const RegAllocEvictionAdvisor &>(DefaultAdvisor); 303 } 304 305 // The assumption is that if the Runner could not be constructed, we emit-ed 306 // error, and we shouldn't be asking for it here. 307 const MLModelRunner &getRunner() const { return *Runner; } 308 309 /// This just calls Evaluate on the Runner, but in the development mode 310 /// case, if we're just capturing the log of the default advisor, it needs 311 /// to call the latter instead, so we need to pass all the necessary 312 /// parameters for it. In the development case, it will also log. 313 virtual int64_t 314 tryFindEvictionCandidatePosition(const LiveInterval &VirtReg, 315 const AllocationOrder &Order, 316 unsigned OrderLimit, uint8_t CostPerUseLimit, 317 const SmallVirtRegSet &FixedRegisters) const; 318 319 /// Load the features of the given VirtReg (allocated or not) at column Pos, 320 /// but if that can't be evicted, return false instead. 321 bool 322 loadInterferenceFeatures(const LiveInterval &VirtReg, MCRegister PhysReg, 323 bool IsHint, const SmallVirtRegSet &FixedRegisters, 324 llvm::SmallVectorImpl<float> &Largest, size_t Pos, 325 SmallVectorImpl<LRStartEndInfo> &LRPosInfo) const; 326 327 private: 328 static float getInitialQueueSize(const MachineFunction &MF); 329 330 MCRegister tryFindEvictionCandidate( 331 const LiveInterval &VirtReg, const AllocationOrder &Order, 332 uint8_t CostPerUseLimit, 333 const SmallVirtRegSet &FixedRegisters) const override; 334 335 void extractFeatures(const SmallVectorImpl<const LiveInterval *> &Intervals, 336 llvm::SmallVectorImpl<float> &Largest, size_t Pos, 337 int64_t IsHint, int64_t LocalIntfsCount, float NumUrgent, 338 SmallVectorImpl<LRStartEndInfo> &LRPosInfo) const; 339 340 // Point-in-time: we didn't learn this, so we always delegate to the 341 // default. 342 bool canEvictHintInterference( 343 const LiveInterval &VirtReg, MCRegister PhysReg, 344 const SmallVirtRegSet &FixedRegisters) const override { 345 return getDefaultAdvisor().canEvictHintInterference(VirtReg, PhysReg, 346 FixedRegisters); 347 } 348 349 const LIFeatureComponents & 350 getLIFeatureComponents(const LiveInterval &LI) const; 351 352 // Hold on to a default advisor for: 353 // 1) the implementation of canEvictHintInterference, because we didn't 354 // learn that nuance yet; 2) for bootstrapping (logging) in the development 355 // mode case. 356 const DefaultEvictionAdvisor DefaultAdvisor; 357 MLModelRunner *const Runner; 358 const MachineBlockFrequencyInfo &MBFI; 359 const MachineLoopInfo &Loops; 360 361 // Indices of those features we don't want to normalize. 362 // This could be static and shared, but its initialization is non-trivial. 363 std::bitset<FeatureIDs::FeatureCount> DoNotNormalize; 364 const float InitialQSize; 365 366 using RegID = unsigned; 367 mutable DenseMap<RegID, LIFeatureComponents> CachedFeatures; 368 369 mutable std::unordered_map<unsigned, unsigned> VirtRegEvictionCounts; 370 371 void onEviction(Register RegBeingEvicted) const { 372 // If we cannot find the virtual register in the map, we just assume it has 373 // not been evicted before and thus has a value of zero (which is what the 374 // subscript operator returns by default). 375 ++VirtRegEvictionCounts[RegBeingEvicted.id()]; 376 } 377 378 unsigned getEvictionCount(Register Reg) const { 379 auto EvictionCountIt = VirtRegEvictionCounts.find(Reg.id()); 380 if (EvictionCountIt != VirtRegEvictionCounts.end()) 381 return EvictionCountIt->second; 382 return 0; 383 } 384 }; 385 386 #define _DECL_FEATURES(type, name, shape, _) \ 387 TensorSpec::createSpec<type>(#name, shape), 388 389 // =================================== 390 // Release (AOT) - specifics 391 // =================================== 392 /// Common provider for legacy and new pass managers. 393 class ReleaseModeEvictionAdvisorProvider final 394 : public RegAllocEvictionAdvisorProvider { 395 public: 396 ReleaseModeEvictionAdvisorProvider(LLVMContext &Ctx) 397 : RegAllocEvictionAdvisorProvider(AdvisorMode::Release, Ctx) { 398 if (EnableDevelopmentFeatures) { 399 InputFeatures = {RA_EVICT_FEATURES_LIST( 400 _DECL_FEATURES) RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_DECL_FEATURES) 401 RA_EVICT_REST_DEVELOPMENT_FEATURES(_DECL_FEATURES)}; 402 } else { 403 InputFeatures = {RA_EVICT_FEATURES_LIST(_DECL_FEATURES)}; 404 } 405 } 406 // support for isa<> and dyn_cast. 407 static bool classof(const RegAllocEvictionAdvisorProvider *R) { 408 return R->getAdvisorMode() == AdvisorMode::Release; 409 } 410 411 std::unique_ptr<RegAllocEvictionAdvisor> 412 getAdvisor(const MachineFunction &MF, const RAGreedy &RA, 413 MachineBlockFrequencyInfo *MBFI, MachineLoopInfo *Loops) override { 414 if (!Runner) { 415 if (InteractiveChannelBaseName.empty()) 416 Runner = std::make_unique<ReleaseModeModelRunner<CompiledModelType>>( 417 MF.getFunction().getContext(), InputFeatures, DecisionName); 418 else 419 Runner = std::make_unique<InteractiveModelRunner>( 420 MF.getFunction().getContext(), InputFeatures, DecisionSpec, 421 InteractiveChannelBaseName + ".out", 422 InteractiveChannelBaseName + ".in"); 423 } 424 assert(MBFI && Loops && 425 "Invalid provider state: must have analysis available"); 426 return std::make_unique<MLEvictAdvisor>(MF, RA, Runner.get(), *MBFI, 427 *Loops); 428 } 429 430 private: 431 std::vector<TensorSpec> InputFeatures; 432 std::unique_ptr<MLModelRunner> Runner; 433 }; 434 435 class ReleaseModeEvictionAdvisorAnalysisLegacy final 436 : public RegAllocEvictionAdvisorAnalysisLegacy { 437 public: 438 ReleaseModeEvictionAdvisorAnalysisLegacy() 439 : RegAllocEvictionAdvisorAnalysisLegacy(AdvisorMode::Release) {} 440 441 void logRewardIfNeeded(const MachineFunction &MF, 442 llvm::function_ref<float()> GetReward) override { 443 // No-op in release mode 444 } 445 446 bool doInitialization(Module &M) override { 447 Provider = 448 std::make_unique<ReleaseModeEvictionAdvisorProvider>(M.getContext()); 449 return false; 450 } 451 452 static bool classof(const RegAllocEvictionAdvisorAnalysisLegacy *R) { 453 return R->getAdvisorMode() == AdvisorMode::Release; 454 } 455 456 void getAnalysisUsage(AnalysisUsage &AU) const override { 457 AU.addRequired<MachineBlockFrequencyInfoWrapperPass>(); 458 AU.addRequired<MachineLoopInfoWrapperPass>(); 459 RegAllocEvictionAdvisorAnalysisLegacy::getAnalysisUsage(AU); 460 } 461 }; 462 463 // =================================== 464 // Development mode-specifics 465 // =================================== 466 // 467 // Features we log 468 #ifdef LLVM_HAVE_TFLITE 469 static const TensorSpec Reward = TensorSpec::createSpec<float>("reward", {1}); 470 471 // Features we bind on the model. The tensor names have a prefix, and we also 472 // need to include some tensors that are expected to be present by the 473 // training algo. 474 // TODO: can we just get rid of these? 475 #define _DECL_TRAIN_FEATURES(type, name, shape, _) \ 476 TensorSpec::createSpec<type>(std::string("action_") + #name, shape), 477 478 class DevelopmentModeEvictAdvisor : public MLEvictAdvisor { 479 public: 480 DevelopmentModeEvictAdvisor(const MachineFunction &MF, const RAGreedy &RA, 481 MLModelRunner *Runner, 482 const MachineBlockFrequencyInfo &MBFI, 483 const MachineLoopInfo &Loops, Logger *Log) 484 : MLEvictAdvisor(MF, RA, Runner, MBFI, Loops), Log(Log) {} 485 486 private: 487 int64_t tryFindEvictionCandidatePosition( 488 const LiveInterval &VirtReg, const AllocationOrder &Order, 489 unsigned OrderLimit, uint8_t CostPerUseLimit, 490 const SmallVirtRegSet &FixedRegisters) const override; 491 492 Logger *const Log; 493 }; 494 495 class DevelopmentModeEvictionAdvisorProvider final 496 : public RegAllocEvictionAdvisorProvider { 497 public: 498 DevelopmentModeEvictionAdvisorProvider(LLVMContext &Ctx) 499 : RegAllocEvictionAdvisorProvider(AdvisorMode::Development, Ctx) { 500 if (EnableDevelopmentFeatures) { 501 InputFeatures = {RA_EVICT_FEATURES_LIST( 502 _DECL_FEATURES) RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_DECL_FEATURES) 503 RA_EVICT_REST_DEVELOPMENT_FEATURES(_DECL_FEATURES)}; 504 TrainingInputFeatures = { 505 RA_EVICT_FEATURES_LIST(_DECL_TRAIN_FEATURES) 506 RA_EVICT_FIRST_DEVELOPMENT_FEATURE(_DECL_TRAIN_FEATURES) 507 RA_EVICT_REST_DEVELOPMENT_FEATURES(_DECL_TRAIN_FEATURES) 508 TensorSpec::createSpec<float>("action_discount", {1}), 509 TensorSpec::createSpec<int32_t>("action_step_type", {1}), 510 TensorSpec::createSpec<float>("action_reward", {1})}; 511 } else { 512 InputFeatures = {RA_EVICT_FEATURES_LIST(_DECL_FEATURES)}; 513 TrainingInputFeatures = { 514 RA_EVICT_FEATURES_LIST(_DECL_TRAIN_FEATURES) 515 TensorSpec::createSpec<float>("action_discount", {1}), 516 TensorSpec::createSpec<int32_t>("action_step_type", {1}), 517 TensorSpec::createSpec<float>("action_reward", {1})}; 518 } 519 if (ModelUnderTraining.empty() && TrainingLog.empty()) { 520 Ctx.emitError("Regalloc development mode should be requested with at " 521 "least logging enabled and/or a training model"); 522 return; 523 } 524 if (ModelUnderTraining.empty()) 525 Runner = std::make_unique<NoInferenceModelRunner>(Ctx, InputFeatures); 526 else 527 Runner = ModelUnderTrainingRunner::createAndEnsureValid( 528 Ctx, ModelUnderTraining, DecisionName, TrainingInputFeatures); 529 if (!Runner) { 530 Ctx.emitError("Regalloc: could not set up the model runner"); 531 return; 532 } 533 if (TrainingLog.empty()) 534 return; 535 std::error_code EC; 536 auto OS = std::make_unique<raw_fd_ostream>(TrainingLog, EC); 537 if (EC) { 538 Ctx.emitError(EC.message() + ":" + TrainingLog); 539 return; 540 } 541 std::vector<TensorSpec> LFS = InputFeatures; 542 if (auto *MUTR = dyn_cast<ModelUnderTrainingRunner>(Runner.get())) 543 append_range(LFS, MUTR->extraOutputsForLoggingSpecs()); 544 // We always log the output; in particular, if we're not evaluating, we 545 // don't have an output spec json file. That's why we handle the 546 // 'normal' output separately. 547 LFS.push_back(DecisionSpec); 548 549 Log = std::make_unique<Logger>(std::move(OS), LFS, Reward, 550 /*IncludeReward*/ true); 551 return; 552 } 553 554 // support for isa<> and dyn_cast. 555 static bool classof(const RegAllocEvictionAdvisorProvider *R) { 556 return R->getAdvisorMode() == AdvisorMode::Development; 557 } 558 559 void logRewardIfNeeded(const MachineFunction &MF, 560 llvm::function_ref<float()> GetReward) override { 561 if (!Log || !Log->hasAnyObservationForContext(MF.getName())) 562 return; 563 // The function pass manager would run all the function passes for a 564 // function, so we assume the last context belongs to this function. If 565 // this invariant ever changes, we can implement at that time switching 566 // contexts. At this point, it'd be an error 567 if (Log->currentContext() != MF.getName()) { 568 MF.getFunction().getContext().emitError( 569 "The training log context shouldn't have had changed."); 570 } 571 if (Log->hasObservationInProgress()) 572 Log->logReward<float>(GetReward()); 573 } 574 575 std::unique_ptr<RegAllocEvictionAdvisor> 576 getAdvisor(const MachineFunction &MF, const RAGreedy &RA, 577 MachineBlockFrequencyInfo *MBFI, MachineLoopInfo *Loops) override { 578 if (!Runner) 579 return nullptr; 580 if (Log) 581 Log->switchContext(MF.getName()); 582 assert(MBFI && Loops && 583 "Invalid provider state: must have analysis available"); 584 return std::make_unique<DevelopmentModeEvictAdvisor>( 585 MF, RA, Runner.get(), *MBFI, *Loops, Log.get()); 586 } 587 588 private: 589 std::vector<TensorSpec> InputFeatures; 590 std::vector<TensorSpec> TrainingInputFeatures; 591 592 std::unique_ptr<MLModelRunner> Runner; 593 std::unique_ptr<Logger> Log; 594 }; 595 596 class DevelopmentModeEvictionAdvisorAnalysisLegacy final 597 : public RegAllocEvictionAdvisorAnalysisLegacy { 598 public: 599 DevelopmentModeEvictionAdvisorAnalysisLegacy() 600 : RegAllocEvictionAdvisorAnalysisLegacy(AdvisorMode::Development) {} 601 602 bool doInitialization(Module &M) override { 603 Provider = std::make_unique<DevelopmentModeEvictionAdvisorProvider>( 604 M.getContext()); 605 return false; 606 } 607 608 void logRewardIfNeeded(const MachineFunction &MF, 609 llvm::function_ref<float()> GetReward) override { 610 Provider->logRewardIfNeeded(MF, GetReward); 611 } 612 613 // support for isa<> and dyn_cast. 614 static bool classof(const RegAllocEvictionAdvisorAnalysisLegacy *R) { 615 return R->getAdvisorMode() == AdvisorMode::Development; 616 } 617 618 void getAnalysisUsage(AnalysisUsage &AU) const override { 619 AU.addRequired<MachineBlockFrequencyInfoWrapperPass>(); 620 AU.addRequired<MachineLoopInfoWrapperPass>(); 621 RegAllocEvictionAdvisorAnalysisLegacy::getAnalysisUsage(AU); 622 } 623 }; 624 625 #endif // #ifdef LLVM_HAVE_TFLITE 626 } // namespace 627 628 float MLEvictAdvisor::getInitialQueueSize(const MachineFunction &MF) { 629 auto &MRI = MF.getRegInfo(); 630 unsigned NumUsedRegs = 0; 631 for (unsigned I = 0, E = MRI.getNumVirtRegs(); I != E; ++I) { 632 Register Reg = Register::index2VirtReg(I); 633 if (!MRI.reg_nodbg_empty(Reg)) 634 ++NumUsedRegs; 635 } 636 return static_cast<float>(NumUsedRegs); 637 } 638 639 MLEvictAdvisor::MLEvictAdvisor(const MachineFunction &MF, const RAGreedy &RA, 640 MLModelRunner *Runner, 641 const MachineBlockFrequencyInfo &MBFI, 642 const MachineLoopInfo &Loops) 643 : RegAllocEvictionAdvisor(MF, RA), DefaultAdvisor(MF, RA), 644 Runner(std::move(Runner)), MBFI(MBFI), Loops(Loops), 645 InitialQSize(MLEvictAdvisor::getInitialQueueSize(MF)) { 646 assert(this->Runner); 647 Runner->switchContext(MF.getName()); 648 DoNotNormalize.set(FeatureIDs::mask); 649 DoNotNormalize.set(FeatureIDs::is_free); 650 DoNotNormalize.set(FeatureIDs::is_hint); 651 DoNotNormalize.set(FeatureIDs::is_local); 652 DoNotNormalize.set(FeatureIDs::min_stage); 653 DoNotNormalize.set(FeatureIDs::max_stage); 654 DoNotNormalize.set(FeatureIDs::progress); 655 } 656 657 int64_t MLEvictAdvisor::tryFindEvictionCandidatePosition( 658 const LiveInterval &, const AllocationOrder &, unsigned, uint8_t, 659 const SmallVirtRegSet &) const { 660 int64_t Ret = Runner->evaluate<int64_t>(); 661 assert(Ret >= 0); 662 assert(Ret <= CandidateVirtRegPos); 663 return Ret; 664 } 665 666 bool MLEvictAdvisor::loadInterferenceFeatures( 667 const LiveInterval &VirtReg, MCRegister PhysReg, bool IsHint, 668 const SmallVirtRegSet &FixedRegisters, 669 llvm::SmallVectorImpl<float> &Largest, size_t Pos, 670 llvm::SmallVectorImpl<LRStartEndInfo> &LRPosInfo) const { 671 // It is only possible to evict virtual register interference. 672 if (Matrix->checkInterference(VirtReg, PhysReg) > LiveRegMatrix::IK_VirtReg) { 673 // leave unavailable 674 return false; 675 } 676 677 const bool IsLocal = LIS->intervalIsInOneMBB(VirtReg); 678 int64_t LocalIntfs = 0; 679 float NumUrgent = 0.0f; 680 681 // The cascade tracking is the same as in the default advisor 682 unsigned Cascade = RA.getExtraInfo().getCascadeOrCurrentNext(VirtReg.reg()); 683 684 SmallVector<const LiveInterval *, MaxInterferences> InterferingIntervals; 685 for (MCRegUnit Unit : TRI->regunits(PhysReg)) { 686 LiveIntervalUnion::Query &Q = Matrix->query(VirtReg, Unit); 687 // Different from the default heuristic, we don't make any assumptions 688 // about what having more than 10 results in the query may mean. 689 const auto &IFIntervals = Q.interferingVRegs(EvictInterferenceCutoff); 690 if (IFIntervals.empty() && InterferingIntervals.empty()) 691 continue; 692 if (IFIntervals.size() >= EvictInterferenceCutoff) 693 return false; 694 InterferingIntervals.append(IFIntervals.begin(), IFIntervals.end()); 695 for (const LiveInterval *Intf : reverse(IFIntervals)) { 696 assert(Intf->reg().isVirtual() && 697 "Only expecting virtual register interference from query"); 698 // This is the same set of legality checks as in the default case: don't 699 // try to evict fixed regs or 'done' ones. Also don't break cascades, 700 // except in the urgent case, with the same nuances used in the default 701 // heuristic. 702 // We could try sharing this between the advisors, but it may end up 703 // more complex than it is right now. 704 if (FixedRegisters.count(Intf->reg())) 705 return false; 706 if (RA.getExtraInfo().getStage(*Intf) == RS_Done) 707 return false; 708 bool Urgent = 709 !VirtReg.isSpillable() && 710 (Intf->isSpillable() || 711 RegClassInfo.getNumAllocatableRegs(MRI->getRegClass(VirtReg.reg())) < 712 RegClassInfo.getNumAllocatableRegs( 713 MRI->getRegClass(Intf->reg()))); 714 715 unsigned IntfCascade = RA.getExtraInfo().getCascade(Intf->reg()); 716 // There is a potential that the model could be adversarial and 717 // continually evict live ranges over and over again, leading to a 718 // large amount of compile time being spent in regalloc. If we hit the 719 // threshold, prevent the range from being evicted. We still let the 720 // range through if it is urgent as we are required to produce an 721 // eviction if the candidate is not spillable. 722 if (getEvictionCount(Intf->reg()) > MaxEvictionCount && !Urgent) 723 return false; 724 725 // Only evict older cascades or live ranges without a cascade. 726 if (Cascade <= IntfCascade) { 727 if (!Urgent) 728 return false; 729 ++NumUrgent; 730 } 731 732 LocalIntfs += (IsLocal && LIS->intervalIsInOneMBB(*Intf) && 733 (!EnableLocalReassign || !canReassign(*Intf, PhysReg))); 734 } 735 } 736 // OK, so if we made it this far, this LR is an eviction candidate, load its 737 // features. 738 extractFeatures(InterferingIntervals, Largest, Pos, IsHint, LocalIntfs, 739 NumUrgent, LRPosInfo); 740 return true; 741 } 742 743 MCRegister MLEvictAdvisor::tryFindEvictionCandidate( 744 const LiveInterval &VirtReg, const AllocationOrder &Order, 745 uint8_t CostPerUseLimit, const SmallVirtRegSet &FixedRegisters) const { 746 auto MaybeOrderLimit = getOrderLimit(VirtReg, Order, CostPerUseLimit); 747 if (!MaybeOrderLimit) 748 return MCRegister::NoRegister; 749 unsigned OrderLimit = *MaybeOrderLimit; 750 751 // The heuristic sets initial costs such as, if CostPerUseLimit is 752 // max<uint8_t>, then any of the costs of the legally-evictable intervals 753 // would be lower. When that happens, one of those will be selected. 754 // Therefore, we allow the candidate be selected, unless the candidate is 755 // unspillable, in which case it would be incorrect to not find a register 756 // for it. 757 const bool MustFindEviction = 758 (!VirtReg.isSpillable() && CostPerUseLimit == static_cast<uint8_t>(~0u)); 759 // Number of available candidates - if 0, no need to continue. 760 size_t Available = 0; 761 // Make sure we don't have leftover partial state from an attempt where we 762 // had no available candidates and bailed out early. 763 resetInputs(*Runner); 764 765 // Track the index->register mapping because AllocationOrder doesn't do that 766 // and we'd have to scan it. 767 // Also track their mask, to write asserts/debug. 768 CandidateRegList Regs; 769 Regs.fill({0, false}); 770 771 // Track the largest value of features seen during this eviction session. We 772 // only normalize (some of) the float features, but it's just simpler to 773 // dimension 'Largest' to all the features, especially since we have the 774 // 'DoNotNormalize' list. 775 FeaturesListNormalizer Largest(FeatureIDs::FeatureCount, 0.0); 776 777 // Same overal idea as in the default eviction policy - we visit the values 778 // of AllocationOrder one at a time. If it's not legally available, we mask 779 // off the corresponding feature column (==do nothing because we already 780 // reset all the features to 0) Use Pos to capture the column we load 781 // features at - in AllocationOrder order. 782 size_t Pos = 0; 783 SmallVector<LRStartEndInfo, NumberOfInterferences> LRPosInfo; 784 for (auto I = Order.begin(), E = Order.getOrderLimitEnd(OrderLimit); I != E; 785 ++I, ++Pos) { 786 MCRegister PhysReg = *I; 787 assert(!Regs[Pos].second); 788 assert(PhysReg); 789 if (!canAllocatePhysReg(CostPerUseLimit, PhysReg)) { 790 continue; 791 } 792 if (loadInterferenceFeatures(VirtReg, PhysReg, I.isHint(), FixedRegisters, 793 Largest, Pos, LRPosInfo)) { 794 ++Available; 795 Regs[Pos] = std::make_pair(PhysReg, true); 796 } 797 } 798 if (Available == 0) { 799 // Nothing to decide, nothing to learn. 800 assert(!MustFindEviction); 801 return MCRegister::NoRegister; 802 } 803 const size_t ValidPosLimit = Pos; 804 // If we must find eviction, the candidate should be masked out of the 805 // decision making process. 806 Regs[CandidateVirtRegPos].second = !MustFindEviction; 807 if (!MustFindEviction) 808 extractFeatures(SmallVector<const LiveInterval *, 1>(1, &VirtReg), Largest, 809 CandidateVirtRegPos, /*IsHint*/ 0, 810 /*LocalIntfsCount*/ 0, 811 /*NumUrgent*/ 0.0, LRPosInfo); 812 assert(InitialQSize > 0.0 && "We couldn't have gotten here if we had " 813 "nothing to allocate initially."); 814 #ifdef LLVM_HAVE_TFLITE 815 if (EnableDevelopmentFeatures) { 816 extractInstructionFeatures( 817 LRPosInfo, Runner, 818 [this](SlotIndex InputIndex) -> int { 819 auto *CurrentMachineInstruction = 820 LIS->getInstructionFromIndex(InputIndex); 821 if (!CurrentMachineInstruction) { 822 return -1; 823 } 824 return CurrentMachineInstruction->getOpcode(); 825 }, 826 [this](SlotIndex InputIndex) -> float { 827 auto *CurrentMachineInstruction = 828 LIS->getInstructionFromIndex(InputIndex); 829 return MBFI.getBlockFreqRelativeToEntryBlock( 830 CurrentMachineInstruction->getParent()); 831 }, 832 [this](SlotIndex InputIndex) -> MachineBasicBlock * { 833 auto *CurrentMachineInstruction = 834 LIS->getInstructionFromIndex(InputIndex); 835 return CurrentMachineInstruction->getParent(); 836 }, 837 FeatureIDs::instructions, FeatureIDs::instructions_mapping, 838 FeatureIDs::mbb_frequencies, FeatureIDs::mbb_mapping, 839 LIS->getSlotIndexes()->getLastIndex()); 840 } 841 #endif // #ifdef LLVM_HAVE_TFLITE 842 // Normalize the features. 843 for (auto &V : Largest) 844 V = V ? V : 1.0; 845 for (size_t FeatureIndex = 0; FeatureIndex < FeatureIDs::FeatureCount; 846 ++FeatureIndex) { 847 if (DoNotNormalize.test(FeatureIndex)) 848 continue; 849 for (size_t Pos = 0; Pos < NumberOfInterferences; ++Pos) { 850 Runner->getTensor<float>(FeatureIndex)[Pos] /= Largest[FeatureIndex]; 851 } 852 } 853 *Runner->getTensor<float>(FeatureIDs::progress) = 854 static_cast<float>(RA.getQueueSize()) / InitialQSize; 855 856 // Get a decision. 857 size_t CandidatePos = tryFindEvictionCandidatePosition( 858 VirtReg, Order, OrderLimit, CostPerUseLimit, FixedRegisters); 859 // The contract with the ML side is that CandidatePos is mask == 1 (i.e. 860 // Regs[CandidatePos].second) 861 assert(Regs[CandidatePos].second); 862 if (CandidatePos == CandidateVirtRegPos) { 863 onEviction(VirtReg.reg()); 864 assert(!MustFindEviction); 865 return MCRegister::NoRegister; 866 } 867 assert(CandidatePos < ValidPosLimit); 868 (void)ValidPosLimit; 869 870 // Update information about how many times the virtual registers being 871 // evicted have been evicted so that we can prevent the model from evicting 872 // the same ranges continually and eating compile time. 873 for (MCRegUnit Unit : TRI->regunits(Regs[CandidatePos].first)) { 874 LiveIntervalUnion::Query &Q = Matrix->query(VirtReg, Unit); 875 const auto &IFIntervals = Q.interferingVRegs(EvictInterferenceCutoff); 876 for (const LiveInterval *Intf : reverse(IFIntervals)) { 877 onEviction(Intf->reg()); 878 } 879 } 880 881 return Regs[CandidatePos].first; 882 } 883 884 const LIFeatureComponents & 885 MLEvictAdvisor::getLIFeatureComponents(const LiveInterval &LI) const { 886 RegID ID = LI.reg().id(); 887 LIFeatureComponents Empty; 888 auto I = CachedFeatures.insert(std::make_pair(ID, Empty)); 889 LIFeatureComponents &Ret = I.first->getSecond(); 890 if (!I.second) 891 return Ret; 892 893 SmallPtrSet<MachineInstr *, 8> Visited; 894 const TargetRegisterInfo &TRI = *MF.getSubtarget().getRegisterInfo(); 895 896 for (MachineRegisterInfo::reg_instr_nodbg_iterator 897 I = MRI->reg_instr_nodbg_begin(LI.reg()), 898 E = MRI->reg_instr_nodbg_end(); 899 I != E;) { 900 MachineInstr *MI = &*(I++); 901 902 ++Ret.NumDefsAndUses; 903 if (!Visited.insert(MI).second) 904 continue; 905 906 if (MI->isIdentityCopy() || MI->isImplicitDef()) 907 continue; 908 909 bool Reads, Writes; 910 std::tie(Reads, Writes) = MI->readsWritesVirtualRegister(LI.reg()); 911 912 float Freq = MBFI.getBlockFreqRelativeToEntryBlock(MI->getParent()); 913 Ret.HottestBlockFreq = std::max(Freq, Ret.HottestBlockFreq); 914 915 Ret.R += (Reads && !Writes) * Freq; 916 Ret.W += (!Reads && Writes) * Freq; 917 Ret.RW += (Reads && Writes) * Freq; 918 919 auto *MBB = MI->getParent(); 920 auto *Loop = Loops.getLoopFor(MBB); 921 bool IsExiting = Loop ? Loop->isLoopExiting(MBB) : false; 922 923 if (Writes && IsExiting && LIS->isLiveOutOfMBB(LI, MBB)) 924 Ret.IndVarUpdates += Freq; 925 926 if (MI->isCopy() && VirtRegAuxInfo::copyHint(MI, LI.reg(), TRI, *MRI)) 927 Ret.HintWeights += Freq; 928 } 929 Ret.IsRemat = VirtRegAuxInfo::isRematerializable( 930 LI, *LIS, *VRM, *MF.getSubtarget().getInstrInfo()); 931 return Ret; 932 } 933 934 // Overall, this currently mimics what we do for weight calculation, but instead 935 // of accummulating the various features, we keep them separate. 936 void MLEvictAdvisor::extractFeatures( 937 const SmallVectorImpl<const LiveInterval *> &Intervals, 938 llvm::SmallVectorImpl<float> &Largest, size_t Pos, int64_t IsHint, 939 int64_t LocalIntfsCount, float NumUrgent, 940 SmallVectorImpl<LRStartEndInfo> &LRPosInfo) const { 941 int64_t NumDefsAndUses = 0; 942 int64_t NumBrokenHints = 0; 943 double R = 0.0; 944 double W = 0.0; 945 double RW = 0.0; 946 double IndVarUpdates = 0.0; 947 double HintWeights = 0.0; 948 float StartBBFreq = 0.0; 949 float EndBBFreq = 0.0; 950 float HottestBlockFreq = 0.0; 951 int32_t NumRematerializable = 0; 952 float TotalWeight = 0.0; 953 954 SlotIndex EndSI = LIS->getSlotIndexes()->getZeroIndex(); 955 SlotIndex StartSI = LIS->getSlotIndexes()->getLastIndex(); 956 int64_t MaxStage = 0; 957 int64_t MinStage = 958 Intervals.empty() ? 0 : std::numeric_limits<int64_t>::max(); 959 960 for (const auto *L : Intervals) { 961 const LiveInterval &LI = *L; 962 MaxStage = std::max<int64_t>( 963 MaxStage, static_cast<int64_t>(RA.getExtraInfo().getStage(LI))); 964 MinStage = std::min<int64_t>( 965 MinStage, static_cast<int64_t>(RA.getExtraInfo().getStage(LI))); 966 967 TotalWeight = std::max(TotalWeight, LI.weight()); 968 969 if (LI.beginIndex() < StartSI) 970 StartSI = LI.beginIndex(); 971 972 if (LI.endIndex() > EndSI) 973 EndSI = LI.endIndex(); 974 const LIFeatureComponents &LIFC = getLIFeatureComponents(LI); 975 NumBrokenHints += VRM->hasPreferredPhys(LI.reg()); 976 977 NumDefsAndUses += LIFC.NumDefsAndUses; 978 HottestBlockFreq = std::max(HottestBlockFreq, LIFC.HottestBlockFreq); 979 R += LIFC.R; 980 W += LIFC.W; 981 RW += LIFC.RW; 982 983 IndVarUpdates += LIFC.IndVarUpdates; 984 985 HintWeights += LIFC.HintWeights; 986 NumRematerializable += LIFC.IsRemat; 987 988 if (EnableDevelopmentFeatures) { 989 for (auto CurrentSegment : LI) { 990 LRPosInfo.push_back( 991 LRStartEndInfo{CurrentSegment.start, CurrentSegment.end, Pos}); 992 } 993 } 994 } 995 size_t Size = 0; 996 if (!Intervals.empty()) { 997 StartBBFreq = 998 MBFI.getBlockFreqRelativeToEntryBlock(LIS->getMBBFromIndex(StartSI)); 999 if (EndSI >= LIS->getSlotIndexes()->getLastIndex()) 1000 EndSI = LIS->getSlotIndexes()->getLastIndex().getPrevIndex(); 1001 EndBBFreq = 1002 MBFI.getBlockFreqRelativeToEntryBlock(LIS->getMBBFromIndex(EndSI)); 1003 Size = StartSI.distance(EndSI); 1004 } 1005 // Set the features at the column 'Pos'. 1006 #define SET(ID, TYPE, VAL) \ 1007 do { \ 1008 Runner->getTensor<TYPE>(FeatureIDs::ID)[Pos] = static_cast<TYPE>(VAL); \ 1009 if (!DoNotNormalize.test(FeatureIDs::ID)) \ 1010 Largest[FeatureIDs::ID] = \ 1011 std::max(Largest[FeatureIDs::ID], static_cast<float>(VAL)); \ 1012 } while (false) 1013 SET(mask, int64_t, 1); 1014 SET(is_free, int64_t, Intervals.empty()); 1015 SET(nr_urgent, float, NumUrgent); 1016 SET(nr_broken_hints, float, NumBrokenHints); 1017 SET(is_hint, int64_t, IsHint); 1018 SET(is_local, int64_t, LocalIntfsCount); 1019 SET(nr_rematerializable, float, NumRematerializable); 1020 SET(nr_defs_and_uses, float, NumDefsAndUses); 1021 SET(weighed_reads_by_max, float, R); 1022 SET(weighed_writes_by_max, float, W); 1023 SET(weighed_read_writes_by_max, float, RW); 1024 SET(weighed_indvars_by_max, float, IndVarUpdates); 1025 SET(hint_weights_by_max, float, HintWeights); 1026 SET(start_bb_freq_by_max, float, StartBBFreq); 1027 SET(end_bb_freq_by_max, float, EndBBFreq); 1028 SET(hottest_bb_freq_by_max, float, HottestBlockFreq); 1029 SET(liverange_size, float, Size); 1030 SET(use_def_density, float, TotalWeight); 1031 SET(max_stage, int64_t, MaxStage); 1032 SET(min_stage, int64_t, MinStage); 1033 #undef SET 1034 } 1035 1036 void llvm::extractInstructionFeatures( 1037 SmallVectorImpl<LRStartEndInfo> &LRPosInfo, MLModelRunner *RegallocRunner, 1038 function_ref<int(SlotIndex)> GetOpcode, 1039 function_ref<float(SlotIndex)> GetMBBFreq, 1040 function_ref<MachineBasicBlock *(SlotIndex)> GetMBBReference, 1041 const int InstructionsIndex, const int InstructionsMappingIndex, 1042 const int MBBFreqIndex, const int MBBMappingIndex, 1043 const SlotIndex LastIndex) { 1044 // This function extracts instruction based features relevant to the eviction 1045 // problem currently being solved. This function ends up extracting two 1046 // tensors. 1047 // 1 - A vector of size max instruction count. It contains the opcodes of the 1048 // instructions spanned by all the intervals in the current instance of the 1049 // eviction problem. 1050 // 2 - A binary mapping matrix of size (LR count * max 1051 // instruction count) which maps where the LRs are live to the actual opcodes 1052 // for which they are live. 1053 // 3 - A vector of size max supported MBB count storing MBB frequencies, 1054 // encompassing all of the MBBs covered by the eviction problem. 1055 // 4 - A vector of size max instruction count of indices to members of the MBB 1056 // frequency vector, mapping each instruction to its associated MBB. 1057 1058 // Start off by sorting the segments based on the beginning slot index. 1059 std::sort( 1060 LRPosInfo.begin(), LRPosInfo.end(), 1061 [](LRStartEndInfo A, LRStartEndInfo B) { return A.Begin < B.Begin; }); 1062 size_t InstructionIndex = 0; 1063 size_t CurrentSegmentIndex = 0; 1064 SlotIndex CurrentIndex = LRPosInfo[0].Begin; 1065 std::map<MachineBasicBlock *, size_t> VisitedMBBs; 1066 size_t CurrentMBBIndex = 0; 1067 // This loop processes all the segments sequentially by starting at the 1068 // beginning slot index of the first segment, iterating through all the slot 1069 // indices before the end slot index of that segment (while checking for 1070 // overlaps with segments that start at greater slot indices). After hitting 1071 // that end index, the current segment being processed gets bumped until they 1072 // are all processed or the max instruction count is hit, where everything is 1073 // just truncated. 1074 while (true) { 1075 // If the index that we are currently at is within the current segment and 1076 // we haven't hit the max instruction count, continue processing the current 1077 // segment. 1078 while (CurrentIndex <= LRPosInfo[CurrentSegmentIndex].End && 1079 InstructionIndex < ModelMaxSupportedInstructionCount) { 1080 int CurrentOpcode = GetOpcode(CurrentIndex); 1081 // If the current machine instruction is null, skip it 1082 if (CurrentOpcode == -1) { 1083 // If we're currently at the last index in the SlotIndex analysis, 1084 // we can't go any further, so return from the function 1085 if (CurrentIndex >= LastIndex) { 1086 return; 1087 } 1088 CurrentIndex = CurrentIndex.getNextIndex(); 1089 continue; 1090 } 1091 MachineBasicBlock *CurrentMBBReference = GetMBBReference(CurrentIndex); 1092 if (VisitedMBBs.count(CurrentMBBReference) == 0) { 1093 VisitedMBBs[CurrentMBBReference] = CurrentMBBIndex; 1094 ++CurrentMBBIndex; 1095 } 1096 extractMBBFrequency(CurrentIndex, InstructionIndex, VisitedMBBs, 1097 GetMBBFreq, CurrentMBBReference, RegallocRunner, 1098 MBBFreqIndex, MBBMappingIndex); 1099 // Current code assumes we're not going to get any disjointed segments 1100 assert(LRPosInfo[CurrentSegmentIndex].Begin <= CurrentIndex); 1101 RegallocRunner->getTensor<int64_t>(InstructionsIndex)[InstructionIndex] = 1102 CurrentOpcode < OpcodeValueCutoff ? CurrentOpcode : 0; 1103 // set value in the binary mapping matrix for the current instruction 1104 auto CurrentSegmentPosition = LRPosInfo[CurrentSegmentIndex].Pos; 1105 RegallocRunner->getTensor<int64_t>( 1106 InstructionsMappingIndex)[CurrentSegmentPosition * 1107 ModelMaxSupportedInstructionCount + 1108 InstructionIndex] = 1; 1109 // All of the segments are sorted based on the beginning slot index, but 1110 // this doesn't mean that the beginning slot index of the next segment is 1111 // after the end segment of the one being currently processed. This while 1112 // loop checks for overlapping segments and modifies the portion of the 1113 // column in the mapping matrix for the currently processed instruction 1114 // for the LR it is checking. Also make sure that the beginning of the 1115 // current segment we're checking for overlap in is less than the current 1116 // index, otherwise we're done checking overlaps. 1117 size_t OverlapCheckCurrentSegment = CurrentSegmentIndex + 1; 1118 while (OverlapCheckCurrentSegment < LRPosInfo.size() && 1119 LRPosInfo[OverlapCheckCurrentSegment].Begin <= CurrentIndex) { 1120 auto OverlapCurrentSegmentPosition = 1121 LRPosInfo[OverlapCheckCurrentSegment].Pos; 1122 if (LRPosInfo[OverlapCheckCurrentSegment].End >= CurrentIndex) { 1123 RegallocRunner->getTensor<int64_t>( 1124 InstructionsMappingIndex)[OverlapCurrentSegmentPosition * 1125 ModelMaxSupportedInstructionCount + 1126 InstructionIndex] = 1; 1127 } 1128 ++OverlapCheckCurrentSegment; 1129 } 1130 ++InstructionIndex; 1131 if (CurrentIndex >= LastIndex) { 1132 return; 1133 } 1134 CurrentIndex = CurrentIndex.getNextIndex(); 1135 } 1136 // if we've just finished processing through the last segment or if we've 1137 // hit the maximum number of instructions, break out of the loop. 1138 if (CurrentSegmentIndex == LRPosInfo.size() - 1 || 1139 InstructionIndex >= ModelMaxSupportedInstructionCount) { 1140 break; 1141 } 1142 // If the segments are not overlapping, we need to move to the beginning 1143 // index of the next segment to avoid having instructions not attached to 1144 // any register. 1145 if (LRPosInfo[CurrentSegmentIndex + 1].Begin > 1146 LRPosInfo[CurrentSegmentIndex].End) { 1147 CurrentIndex = LRPosInfo[CurrentSegmentIndex + 1].Begin; 1148 } 1149 ++CurrentSegmentIndex; 1150 } 1151 } 1152 1153 void llvm::extractMBBFrequency( 1154 const SlotIndex CurrentIndex, const size_t CurrentInstructionIndex, 1155 std::map<MachineBasicBlock *, size_t> &VisitedMBBs, 1156 function_ref<float(SlotIndex)> GetMBBFreq, 1157 MachineBasicBlock *CurrentMBBReference, MLModelRunner *RegallocRunner, 1158 const int MBBFreqIndex, const int MBBMappingIndex) { 1159 size_t CurrentMBBIndex = VisitedMBBs[CurrentMBBReference]; 1160 float CurrentMBBFreq = GetMBBFreq(CurrentIndex); 1161 if (CurrentMBBIndex < ModelMaxSupportedMBBCount) { 1162 RegallocRunner->getTensor<float>(MBBFreqIndex)[CurrentMBBIndex] = 1163 CurrentMBBFreq; 1164 RegallocRunner->getTensor<int64_t>( 1165 MBBMappingIndex)[CurrentInstructionIndex] = CurrentMBBIndex; 1166 } 1167 } 1168 1169 // Development mode-specific implementations 1170 #ifdef LLVM_HAVE_TFLITE 1171 1172 RegAllocEvictionAdvisorAnalysisLegacy * 1173 llvm::createDevelopmentModeAdvisorAnalysisLegacy() { 1174 return new DevelopmentModeEvictionAdvisorAnalysisLegacy(); 1175 } 1176 1177 int64_t DevelopmentModeEvictAdvisor::tryFindEvictionCandidatePosition( 1178 const LiveInterval &VirtReg, const AllocationOrder &Order, 1179 unsigned OrderLimit, uint8_t CostPerUseLimit, 1180 const SmallVirtRegSet &FixedRegisters) const { 1181 int64_t Ret = 0; 1182 if (isa<ModelUnderTrainingRunner>(getRunner())) { 1183 Ret = MLEvictAdvisor::tryFindEvictionCandidatePosition( 1184 VirtReg, Order, OrderLimit, CostPerUseLimit, FixedRegisters); 1185 } else { 1186 MCRegister PhysReg = getDefaultAdvisor().tryFindEvictionCandidate( 1187 VirtReg, Order, CostPerUseLimit, FixedRegisters); 1188 // Find the index of the selected PhysReg. We need it for logging, 1189 // otherwise this is wasted cycles (but so would starting development mode 1190 // without a model nor logging) 1191 if (!PhysReg) 1192 Ret = CandidateVirtRegPos; 1193 else 1194 for (auto I = Order.begin(), E = Order.getOrderLimitEnd(OrderLimit); 1195 I != E; ++I, ++Ret) 1196 if (*I == PhysReg) 1197 break; 1198 } 1199 if (TrainingLog.empty()) 1200 return Ret; 1201 // TODO(mtrofin): when we support optional rewards, this can go away. In the 1202 // meantime, we log the "pretend" reward (0) for the previous observation 1203 // before starting a new one. 1204 if (Log->hasObservationInProgress()) 1205 Log->logReward<float>(0.0); 1206 1207 Log->startObservation(); 1208 size_t CurrentFeature = 0; 1209 size_t FeatureCount = EnableDevelopmentFeatures 1210 ? FeatureIDs::FeaturesWithDevelopmentCount 1211 : FeatureIDs::FeatureCount; 1212 for (; CurrentFeature < FeatureCount; ++CurrentFeature) { 1213 Log->logTensorValue(CurrentFeature, 1214 reinterpret_cast<const char *>( 1215 getRunner().getTensorUntyped(CurrentFeature))); 1216 } 1217 if (auto *MUTR = dyn_cast<ModelUnderTrainingRunner>(&getRunner())) 1218 for (size_t I = 0; I < MUTR->extraOutputsForLoggingSpecs().size(); 1219 ++I, ++CurrentFeature) 1220 Log->logTensorValue( 1221 CurrentFeature, 1222 reinterpret_cast<const char *>(MUTR->getUntypedExtraOutputValue(I))); 1223 // The output is right after the features and the extra outputs 1224 Log->logTensorValue(CurrentFeature, reinterpret_cast<const char *>(&Ret)); 1225 Log->endObservation(); 1226 return Ret; 1227 } 1228 1229 bool RegAllocScoring::runOnMachineFunction(MachineFunction &MF) { 1230 std::optional<float> CachedReward; 1231 auto GetReward = [&]() { 1232 if (!CachedReward) 1233 CachedReward = static_cast<float>( 1234 calculateRegAllocScore( 1235 MF, getAnalysis<MachineBlockFrequencyInfoWrapperPass>().getMBFI()) 1236 .getScore()); 1237 return *CachedReward; 1238 }; 1239 1240 getAnalysis<RegAllocEvictionAdvisorAnalysisLegacy>().logRewardIfNeeded( 1241 MF, GetReward); 1242 getAnalysis<RegAllocPriorityAdvisorAnalysisLegacy>().logRewardIfNeeded( 1243 MF, GetReward); 1244 return false; 1245 } 1246 #endif // #ifdef LLVM_HAVE_TFLITE 1247 1248 RegAllocEvictionAdvisorProvider * 1249 llvm::createReleaseModeAdvisorProvider(LLVMContext &Ctx) { 1250 return new ReleaseModeEvictionAdvisorProvider(Ctx); 1251 } 1252 1253 RegAllocEvictionAdvisorProvider * 1254 llvm::createDevelopmentModeAdvisorProvider(LLVMContext &Ctx) { 1255 #if defined(LLVM_HAVE_TFLITE) 1256 return new DevelopmentModeEvictionAdvisorProvider(Ctx); 1257 #endif 1258 return nullptr; 1259 } 1260 1261 RegAllocEvictionAdvisorAnalysisLegacy * 1262 llvm::createReleaseModeAdvisorAnalysisLegacy() { 1263 return llvm::isEmbeddedModelEvaluatorValid<CompiledModelType>() || 1264 !InteractiveChannelBaseName.empty() 1265 ? new ReleaseModeEvictionAdvisorAnalysisLegacy() 1266 : nullptr; 1267 } 1268 1269 // In all cases except development mode, we don't need scoring. 1270 #if !defined(LLVM_HAVE_TFLITE) 1271 bool RegAllocScoring::runOnMachineFunction(MachineFunction &) { return false; } 1272 #endif 1273