1 //===- MLRegAllocPriorityAdvisor.cpp - ML priority 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 priority advisor and reward injection pass
10 //
11 //===----------------------------------------------------------------------===//
12
13 #include "AllocationOrder.h"
14 #include "RegAllocGreedy.h"
15 #include "llvm/Analysis/AliasAnalysis.h"
16 #include "llvm/Analysis/InteractiveModelRunner.h"
17 #include "llvm/Analysis/MLModelRunner.h"
18 #include "llvm/Analysis/ReleaseModeModelRunner.h"
19 #include "llvm/Analysis/TensorSpec.h"
20 #include "llvm/CodeGen/CalcSpillWeights.h"
21 #include "llvm/CodeGen/LiveRegMatrix.h"
22 #include "llvm/CodeGen/MachineBlockFrequencyInfo.h"
23 #include "llvm/CodeGen/MachineFunction.h"
24 #include "llvm/CodeGen/MachineLoopInfo.h"
25 #include "llvm/CodeGen/MachineRegisterInfo.h"
26 #include "llvm/CodeGen/Passes.h"
27 #include "llvm/CodeGen/RegAllocPriorityAdvisor.h"
28 #include "llvm/CodeGen/RegisterClassInfo.h"
29 #include "llvm/CodeGen/SlotIndexes.h"
30 #include "llvm/CodeGen/VirtRegMap.h"
31 #include "llvm/InitializePasses.h"
32 #include "llvm/Pass.h"
33 #include "llvm/PassRegistry.h"
34 #include "llvm/Support/CommandLine.h"
35
36 #if defined(LLVM_HAVE_TFLITE)
37 #include "llvm/Analysis/ModelUnderTrainingRunner.h"
38 #include "llvm/Analysis/NoInferenceModelRunner.h"
39 #include "llvm/Analysis/Utils/TrainingLogger.h"
40 #include "llvm/IR/Module.h"
41 #endif
42
43 using namespace llvm;
44
45 static cl::opt<std::string> InteractiveChannelBaseName(
46 "regalloc-priority-interactive-channel-base", cl::Hidden,
47 cl::desc(
48 "Base file path for the interactive mode. The incoming filename should "
49 "have the name <regalloc-priority-interactive-channel-base>.in, while "
50 "the outgoing name should be "
51 "<regalloc-priority-interactive-channel-base>.out"));
52
53 using CompiledModelType = NoopSavedModelImpl;
54
55 // Options that only make sense in development mode
56 #ifdef LLVM_HAVE_TFLITE
57 #include "RegAllocScore.h"
58 #include "llvm/Analysis/Utils/TFUtils.h"
59
60 static cl::opt<std::string> TrainingLog(
61 "regalloc-priority-training-log", cl::Hidden,
62 cl::desc("Training log for the register allocator priority model"));
63
64 static cl::opt<std::string> ModelUnderTraining(
65 "regalloc-priority-model", cl::Hidden,
66 cl::desc("The model being trained for register allocation priority"));
67
68 #endif // #ifdef LLVM_HAVE_TFLITE
69
70 namespace llvm {
71
72 static const std::vector<int64_t> PerLiveRangeShape{1};
73
74 #define RA_PRIORITY_FEATURES_LIST(M) \
75 M(int64_t, li_size, PerLiveRangeShape, "size") \
76 M(int64_t, stage, PerLiveRangeShape, "stage") \
77 M(float, weight, PerLiveRangeShape, "weight")
78
79 #define DecisionName "priority"
80 static const TensorSpec DecisionSpec =
81 TensorSpec::createSpec<float>(DecisionName, {1});
82
83
84 // Named features index.
85 enum FeatureIDs {
86 #define _FEATURE_IDX(_, name, __, ___) name,
87 RA_PRIORITY_FEATURES_LIST(_FEATURE_IDX)
88 #undef _FEATURE_IDX
89 FeatureCount
90 };
91
92 class MLPriorityAdvisor : public RegAllocPriorityAdvisor {
93 public:
94 MLPriorityAdvisor(const MachineFunction &MF, const RAGreedy &RA,
95 SlotIndexes *const Indexes, MLModelRunner *Runner);
96
97 protected:
getDefaultAdvisor() const98 const RegAllocPriorityAdvisor &getDefaultAdvisor() const {
99 return static_cast<const RegAllocPriorityAdvisor &>(DefaultAdvisor);
100 }
101
102 // The assumption is that if the Runner could not be constructed, we emit-ed
103 // error, and we shouldn't be asking for it here.
getRunner() const104 const MLModelRunner &getRunner() const { return *Runner; }
105 float getPriorityImpl(const LiveInterval &LI) const;
106 unsigned getPriority(const LiveInterval &LI) const override;
107
108 private:
109 const DefaultPriorityAdvisor DefaultAdvisor;
110 MLModelRunner *const Runner;
111 };
112
113 #define _DECL_FEATURES(type, name, shape, _) \
114 TensorSpec::createSpec<type>(#name, shape),
115
116 static const std::vector<TensorSpec> InputFeatures{
117 {RA_PRIORITY_FEATURES_LIST(_DECL_FEATURES)},
118 };
119 #undef _DECL_FEATURES
120
121 // ===================================
122 // Release (AOT) - specifics
123 // ===================================
124 class ReleaseModePriorityAdvisorProvider final
125 : public RegAllocPriorityAdvisorProvider {
126 public:
ReleaseModePriorityAdvisorProvider()127 ReleaseModePriorityAdvisorProvider()
128 : RegAllocPriorityAdvisorProvider(AdvisorMode::Release) {}
129 std::unique_ptr<RegAllocPriorityAdvisor>
getAdvisor(const MachineFunction & MF,const RAGreedy & RA,SlotIndexes & SI)130 getAdvisor(const MachineFunction &MF, const RAGreedy &RA,
131 SlotIndexes &SI) override {
132 if (!Runner) {
133 if (InteractiveChannelBaseName.empty())
134 Runner = std::make_unique<ReleaseModeModelRunner<CompiledModelType>>(
135 MF.getFunction().getContext(), InputFeatures, DecisionName);
136 else
137 Runner = std::make_unique<InteractiveModelRunner>(
138 MF.getFunction().getContext(), InputFeatures, DecisionSpec,
139 InteractiveChannelBaseName + ".out",
140 InteractiveChannelBaseName + ".in");
141 }
142 return std::make_unique<MLPriorityAdvisor>(MF, RA, &SI, Runner.get());
143 }
144
145 private:
146 std::unique_ptr<MLModelRunner> Runner;
147 };
148
149 class ReleaseModePriorityAdvisorAnalysisLegacy final
150 : public RegAllocPriorityAdvisorAnalysisLegacy {
151 public:
ReleaseModePriorityAdvisorAnalysisLegacy()152 ReleaseModePriorityAdvisorAnalysisLegacy()
153 : RegAllocPriorityAdvisorAnalysisLegacy(AdvisorMode::Release) {}
154 // support for isa<> and dyn_cast.
classof(const RegAllocPriorityAdvisorAnalysisLegacy * R)155 static bool classof(const RegAllocPriorityAdvisorAnalysisLegacy *R) {
156 return R->getAdvisorMode() == AdvisorMode::Release;
157 }
158
159 private:
getAnalysisUsage(AnalysisUsage & AU) const160 void getAnalysisUsage(AnalysisUsage &AU) const override {
161 AU.setPreservesAll();
162 AU.addRequired<SlotIndexesWrapperPass>();
163 RegAllocPriorityAdvisorAnalysisLegacy::getAnalysisUsage(AU);
164 }
165
doInitialization(Module & M)166 bool doInitialization(Module &M) override {
167 Provider = std::make_unique<ReleaseModePriorityAdvisorProvider>();
168 return false;
169 }
170 };
171
172 // ===================================
173 // Development mode-specifics
174 // ===================================
175 //
176 // Features we log
177 #ifdef LLVM_HAVE_TFLITE
178 static const TensorSpec Reward = TensorSpec::createSpec<float>("reward", {1});
179
180 #define _DECL_TRAIN_FEATURES(type, name, shape, _) \
181 TensorSpec::createSpec<type>(std::string("action_") + #name, shape),
182
183 static const std::vector<TensorSpec> TrainingInputFeatures{
184 {RA_PRIORITY_FEATURES_LIST(_DECL_TRAIN_FEATURES)
185 TensorSpec::createSpec<float>("action_discount", {1}),
186 TensorSpec::createSpec<int32_t>("action_step_type", {1}),
187 TensorSpec::createSpec<float>("action_reward", {1})}};
188 #undef _DECL_TRAIN_FEATURES
189
190 class DevelopmentModePriorityAdvisor : public MLPriorityAdvisor {
191 public:
DevelopmentModePriorityAdvisor(const MachineFunction & MF,const RAGreedy & RA,SlotIndexes * const Indexes,MLModelRunner * Runner,Logger * Log)192 DevelopmentModePriorityAdvisor(const MachineFunction &MF, const RAGreedy &RA,
193 SlotIndexes *const Indexes,
194 MLModelRunner *Runner, Logger *Log)
195 : MLPriorityAdvisor(MF, RA, Indexes, Runner), Log(Log) {}
196
197 private:
198 unsigned getPriority(const LiveInterval &LI) const override;
199 Logger *const Log;
200 };
201
202 class DevelopmentModePriorityAdvisorProvider final
203 : public RegAllocPriorityAdvisorProvider {
204
205 public:
206 // Save all the logs (when requested).
DevelopmentModePriorityAdvisorProvider(LLVMContext & Ctx)207 DevelopmentModePriorityAdvisorProvider(LLVMContext &Ctx)
208 : RegAllocPriorityAdvisorProvider(AdvisorMode::Development) {
209 if (ModelUnderTraining.empty() && TrainingLog.empty()) {
210 Ctx.emitError("Regalloc development mode should be requested with at "
211 "least logging enabled and/or a training model");
212 return;
213 }
214 if (ModelUnderTraining.empty())
215 Runner = std::make_unique<NoInferenceModelRunner>(Ctx, InputFeatures);
216 else
217 Runner = ModelUnderTrainingRunner::createAndEnsureValid(
218 Ctx, ModelUnderTraining, DecisionName, TrainingInputFeatures);
219 if (!Runner) {
220 Ctx.emitError("Regalloc: could not set up the model runner");
221 return;
222 }
223 if (TrainingLog.empty())
224 return;
225 std::error_code EC;
226 auto OS = std::make_unique<raw_fd_ostream>(TrainingLog, EC);
227 if (EC) {
228 Ctx.emitError(EC.message() + ":" + TrainingLog);
229 return;
230 }
231 std::vector<TensorSpec> LFS = InputFeatures;
232 if (auto *MUTR = dyn_cast<ModelUnderTrainingRunner>(Runner.get()))
233 append_range(LFS, MUTR->extraOutputsForLoggingSpecs());
234 // We always log the output; in particular, if we're not evaluating, we
235 // don't have an output spec json file. That's why we handle the
236 // 'normal' output separately.
237 LFS.push_back(DecisionSpec);
238
239 Log = std::make_unique<Logger>(std::move(OS), LFS, Reward,
240 /*IncludeReward*/ true);
241 }
242
logRewardIfNeeded(const MachineFunction & MF,llvm::function_ref<float ()> GetReward)243 void logRewardIfNeeded(const MachineFunction &MF,
244 llvm::function_ref<float()> GetReward) override {
245 if (!Log || !Log->hasAnyObservationForContext(MF.getName()))
246 return;
247 // The function pass manager would run all the function passes for a
248 // function, so we assume the last context belongs to this function. If
249 // this invariant ever changes, we can implement at that time switching
250 // contexts. At this point, it'd be an error
251 if (Log->currentContext() != MF.getName()) {
252 MF.getFunction().getContext().emitError(
253 "The training log context shouldn't have had changed.");
254 }
255 if (Log->hasObservationInProgress())
256 Log->logReward<float>(GetReward());
257 }
258
259 std::unique_ptr<RegAllocPriorityAdvisor>
getAdvisor(const MachineFunction & MF,const RAGreedy & RA,SlotIndexes & SI)260 getAdvisor(const MachineFunction &MF, const RAGreedy &RA,
261 SlotIndexes &SI) override {
262 if (!Runner)
263 return nullptr;
264 if (Log) {
265 Log->switchContext(MF.getName());
266 }
267 return std::make_unique<DevelopmentModePriorityAdvisor>(
268 MF, RA, &SI, Runner.get(), Log.get());
269 }
270
271 std::unique_ptr<MLModelRunner> Runner;
272 std::unique_ptr<Logger> Log;
273 };
274
275 class DevelopmentModePriorityAdvisorAnalysisLegacy final
276 : public RegAllocPriorityAdvisorAnalysisLegacy {
277 public:
DevelopmentModePriorityAdvisorAnalysisLegacy()278 DevelopmentModePriorityAdvisorAnalysisLegacy()
279 : RegAllocPriorityAdvisorAnalysisLegacy(AdvisorMode::Development) {}
280
281 // support for isa<> and dyn_cast.
classof(const RegAllocPriorityAdvisorAnalysisLegacy * R)282 static bool classof(const RegAllocPriorityAdvisorAnalysisLegacy *R) {
283 return R->getAdvisorMode() == AdvisorMode::Development;
284 }
285
logRewardIfNeeded(const MachineFunction & MF,llvm::function_ref<float ()> GetReward)286 void logRewardIfNeeded(const MachineFunction &MF,
287 llvm::function_ref<float()> GetReward) override {
288 Provider->logRewardIfNeeded(MF, GetReward);
289 }
290
291 private:
getAnalysisUsage(AnalysisUsage & AU) const292 void getAnalysisUsage(AnalysisUsage &AU) const override {
293 AU.setPreservesAll();
294 AU.addRequired<SlotIndexesWrapperPass>();
295 RegAllocPriorityAdvisorAnalysisLegacy::getAnalysisUsage(AU);
296 }
297
298 // Save all the logs (when requested).
doInitialization(Module & M)299 bool doInitialization(Module &M) override {
300 Provider = std::make_unique<DevelopmentModePriorityAdvisorProvider>(
301 M.getContext());
302 return false;
303 ;
304 }
305 };
306 #endif //#ifdef LLVM_HAVE_TFLITE
307
308 } // namespace llvm
309
310 RegAllocPriorityAdvisorAnalysisLegacy *
createReleaseModePriorityAdvisorAnalysis()311 llvm::createReleaseModePriorityAdvisorAnalysis() {
312 return llvm::isEmbeddedModelEvaluatorValid<CompiledModelType>() ||
313 !InteractiveChannelBaseName.empty()
314 ? new ReleaseModePriorityAdvisorAnalysisLegacy()
315 : nullptr;
316 }
317
MLPriorityAdvisor(const MachineFunction & MF,const RAGreedy & RA,SlotIndexes * const Indexes,MLModelRunner * Runner)318 MLPriorityAdvisor::MLPriorityAdvisor(const MachineFunction &MF,
319 const RAGreedy &RA,
320 SlotIndexes *const Indexes,
321 MLModelRunner *Runner)
322 : RegAllocPriorityAdvisor(MF, RA, Indexes), DefaultAdvisor(MF, RA, Indexes),
323 Runner(std::move(Runner)) {
324 assert(this->Runner);
325 Runner->switchContext(MF.getName());
326 }
327
getPriorityImpl(const LiveInterval & LI) const328 float MLPriorityAdvisor::getPriorityImpl(const LiveInterval &LI) const {
329 const unsigned Size = LI.getSize();
330 LiveRangeStage Stage = RA.getExtraInfo().getStage(LI);
331
332 *Runner->getTensor<int64_t>(0) = static_cast<int64_t>(Size);
333 *Runner->getTensor<int64_t>(1) = static_cast<int64_t>(Stage);
334 *Runner->getTensor<float>(2) = static_cast<float>(LI.weight());
335
336 return Runner->evaluate<float>();
337 }
338
getPriority(const LiveInterval & LI) const339 unsigned MLPriorityAdvisor::getPriority(const LiveInterval &LI) const {
340 return static_cast<unsigned>(getPriorityImpl(LI));
341 }
342
343 #ifdef LLVM_HAVE_TFLITE
344 RegAllocPriorityAdvisorAnalysisLegacy *
createDevelopmentModePriorityAdvisorAnalysis()345 llvm::createDevelopmentModePriorityAdvisorAnalysis() {
346 return new DevelopmentModePriorityAdvisorAnalysisLegacy();
347 }
348
349 unsigned
getPriority(const LiveInterval & LI) const350 DevelopmentModePriorityAdvisor::getPriority(const LiveInterval &LI) const {
351 double Prio = 0;
352
353 if (isa<ModelUnderTrainingRunner>(getRunner())) {
354 Prio = MLPriorityAdvisor::getPriorityImpl(LI);
355 } else {
356 Prio = getDefaultAdvisor().getPriority(LI);
357 }
358
359 if (TrainingLog.empty())
360 return Prio;
361
362 // TODO(mtrofin): when we support optional rewards, this can go away. In the
363 // meantime, we log the "pretend" reward (0) for the previous observation
364 // before starting a new one.
365 if (Log->hasObservationInProgress())
366 Log->logReward<float>(0.0);
367
368 Log->startObservation();
369 size_t CurrentFeature = 0;
370 for (; CurrentFeature < InputFeatures.size(); ++CurrentFeature) {
371 Log->logTensorValue(CurrentFeature,
372 reinterpret_cast<const char *>(
373 getRunner().getTensorUntyped(CurrentFeature)));
374 }
375
376 if (auto *MUTR = dyn_cast<ModelUnderTrainingRunner>(&getRunner())) {
377 for (size_t I = 0; I < MUTR->extraOutputsForLoggingSpecs().size();
378 ++I, ++CurrentFeature)
379 Log->logTensorValue(
380 CurrentFeature,
381 reinterpret_cast<const char *>(MUTR->getUntypedExtraOutputValue(I)));
382 }
383
384 float Ret = static_cast<float>(Prio);
385 Log->logTensorValue(CurrentFeature, reinterpret_cast<const char *>(&Ret));
386 Log->endObservation();
387
388 return static_cast<unsigned>(Prio);
389 }
390
391 RegAllocPriorityAdvisorProvider *
createDevelopmentModePriorityAdvisorProvider(LLVMContext & Ctx)392 llvm::createDevelopmentModePriorityAdvisorProvider(LLVMContext &Ctx) {
393 return new DevelopmentModePriorityAdvisorProvider(Ctx);
394 }
395
396 #endif // #ifdef LLVM_HAVE_TFLITE
397
398 RegAllocPriorityAdvisorProvider *
createReleaseModePriorityAdvisorProvider()399 llvm::createReleaseModePriorityAdvisorProvider() {
400 return new ReleaseModePriorityAdvisorProvider();
401 }
402