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hybrid_model_pipeline_executor.cc 11 kB

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  1. #include "hybrid_model_pipeline_executor.h"
  2. #include "common/math/math_util.h"
  3. #include "graph/ge_context.h"
  4. #include "graph/runtime_inference_context.h"
  5. namespace ge {
  6. namespace hybrid {
  7. namespace {
  8. constexpr int kNumExecutors = 2;
  9. const int kIntBase = 10;
  10. const char *const kEnvProfilingLevel = "HYBRID_PROFILING_LEVEL";
  11. }
  12. StageExecutor::StageExecutor(int id, HybridModel *model, PipeExecutionConfig *config)
  13. : id_(id), model_(model), pipe_config_(config) {}
  14. StageExecutor::~StageExecutor() { GELOGD("~StageExecutor(), id = %d", id_); }
  15. Status StageExecutor::Init() {
  16. GELOGD("[Executor: %d] Start to init StateExecutor", id_);
  17. context_.rt_context = pipe_config_->rt_context;
  18. GE_CHK_STATUS_RET_NOLOG(InitExecutionContext());
  19. GE_CHK_RT_RET(rtStreamCreate(&stream_, RT_STREAM_PRIORITY_DEFAULT));
  20. context_.stream = stream_;
  21. root_graph_executor_.reset(new (std::nothrow) SubgraphExecutor(model_->GetRootGraphItem(), &context_));
  22. GE_CHECK_NOTNULL(root_graph_executor_);
  23. GELOGD("[Executor: %d] Init stage executor successfully", id_);
  24. return SUCCESS;
  25. }
  26. Status StageExecutor::ResetExecutionContext(GraphExecutionContext &context) {
  27. GE_CHK_STATUS_RET_NOLOG(context.callback_manager->Init());
  28. string ctx_id = std::to_string(context.context_id);
  29. RuntimeInferenceContext::DestroyContext(ctx_id);
  30. GE_CHK_GRAPH_STATUS_RET(RuntimeInferenceContext::CreateContext(ctx_id), "Failed to Destroy RuntimeInferenceContext");
  31. return SUCCESS;
  32. }
  33. Status StageExecutor::Start(const std::vector<TensorValue> &inputs, const std::vector<ConstGeTensorDescPtr> &input_desc,
  34. int iteration_count) {
  35. GELOGD("Start");
  36. GE_CHK_RT_RET(rtCtxSetCurrent(context_.rt_context));
  37. int num_loops = iteration_count / pipe_config_->num_executors;
  38. if (id_ < iteration_count % iteration_count) {
  39. num_loops += 1;
  40. }
  41. FMK_INT32_MULCHECK(num_loops, pipe_config_->num_stages);
  42. num_loops *= pipe_config_->num_stages;
  43. GELOGD("[Executor: %d] loop count = %d", id_, num_loops);
  44. for (int loop_idx = 0; loop_idx < num_loops; ++loop_idx) {
  45. GELOGD("[Executor: %d] Start to wait for task.", id_);
  46. StageTask task_info;
  47. task_queue_.Pop(task_info);
  48. GELOGD("[Executor: %d] Got task, stage = %d, iteration = %ld", id_, task_info.stage, task_info.iteration);
  49. if (task_info.iteration >= pipe_config_->iteration_end) {
  50. GELOGE(INTERNAL_ERROR, "[Executor: %d] Unexpected iteration: %d", id_, task_info.iteration);
  51. return INTERNAL_ERROR;
  52. }
  53. if (task_info.event != nullptr) {
  54. GELOGD("[%d] Add StreamWaitEvent", id_);
  55. GE_CHK_RT_RET(rtStreamWaitEvent(stream_, task_info.event));
  56. RECORD_MODEL_EXECUTION_EVENT(&context_, "[iteration = %d] [Stage = %d] End", task_info.iteration - 1,
  57. task_info.stage);
  58. }
  59. RECORD_MODEL_EXECUTION_EVENT(&context_, "[iteration = %d] [Stage = %d] Start", task_info.iteration,
  60. task_info.stage);
  61. if (task_info.stage == 0) {
  62. GELOGD("[Executor: %d] To ResetExecutionContext", id_);
  63. GE_CHK_STATUS_RET(ResetExecutionContext(context_), "[Executor: %d] Failed to reset context", id_);
  64. context_.iteration = task_info.iteration;
  65. GE_CHK_STATUS_RET_NOLOG(SetInputs(inputs, input_desc));
  66. }
  67. RECORD_MODEL_EXECUTION_EVENT(&context_, "[Stage = %d] PartialExecuteAsync Start", task_info.stage);
  68. GE_CHK_STATUS_RET(root_graph_executor_->PartialExecuteAsync(task_info.stage));
  69. RECORD_MODEL_EXECUTION_EVENT(&context_, "[Stage = %d] PartialExecuteAsync End", task_info.stage);
  70. GELOGD("[Executor: %d] PartialExecuteAsync successfully.", id_);
  71. // notify next execution unit
  72. StageTask next_task;
  73. next_task.stage = task_info.stage;
  74. next_task.iteration = task_info.iteration + 1;
  75. auto sync_result = Synchronize();
  76. if (sync_result != SUCCESS) {
  77. GELOGE(sync_result, "[Executor: %d] Failed to sync result. iteration = %d", id_, task_info.iteration);
  78. context_.profiler->Dump(std::cout);
  79. context_.callback_manager->Destroy();
  80. RuntimeInferenceContext::DestroyContext(std::to_string(context_.context_id));
  81. return sync_result;
  82. }
  83. RECORD_MODEL_EXECUTION_EVENT(&context_, "[iteration = %d] [Stage = %d] End", task_info.iteration, task_info.stage);
  84. // if not end stage
  85. if (task_info.stage >= pipe_config_->num_stages - 1) {
  86. RECORD_MODEL_EXECUTION_EVENT(&context_, "[iteration = %d] Schedule End", task_info.iteration);
  87. GELOGD("[Executor: %d] End of iteration [%ld]", id_, task_info.iteration);
  88. context_.callback_manager->Destroy();
  89. RuntimeInferenceContext::DestroyContext(std::to_string(context_.context_id));
  90. }
  91. next_executor_->ExecuteAsync(next_task);
  92. GELOGD("[Executor: %d] Push item successfully.", id_);
  93. }
  94. GELOGD("[Executor: %d] Process task ended.", id_);
  95. return SUCCESS;
  96. }
  97. Status StageExecutor::ExecuteAsync(const StageTask &args) {
  98. (void)task_queue_.Push(args);
  99. return SUCCESS;
  100. }
  101. Status StageExecutor::Synchronize() {
  102. auto ret = root_graph_executor_->Synchronize();
  103. RECORD_MODEL_EXECUTION_EVENT(&context_, "[Synchronize] End, ret = %u", ret);
  104. return ret;
  105. }
  106. HybridModelPipelineExecutor::HybridModelPipelineExecutor(HybridModel *model, uint32_t device_id)
  107. : model_(model), device_id_(device_id) {
  108. config_.num_executors = kNumExecutors;
  109. config_.num_stages = model_->GetRootGraphItem()->NumGroups();
  110. config_.device_id = device_id_;
  111. }
  112. Status StageExecutor::InitExecutionContext() {
  113. GE_CHK_RT_RET(rtCtxCreate(&context_.rt_gen_context, RT_CTX_GEN_MODE, 0));
  114. GE_CHK_RT_RET(rtCtxSetCurrent(context_.rt_context));
  115. context_.model = model_;
  116. context_.session_id = ::ge::GetContext().SessionId();
  117. GELOGD("session id from model = %lu, from context = %lu", model_->GetSessionId(), context_.session_id);
  118. context_.allocator = NpuMemoryAllocator::GetAllocator(pipe_config_->device_id);
  119. GE_CHECK_NOTNULL(context_.allocator);
  120. context_.callback_manager = std::unique_ptr<CallbackManager>(new (std::nothrow) CallbackManager());
  121. GE_CHECK_NOTNULL(context_.callback_manager);
  122. context_.dump_properties = PropertiesManager::Instance().GetDumpProperties(context_.session_id);
  123. if (IsLogEnable(GE_MODULE_NAME, DLOG_DEBUG)) {
  124. context_.trace_enabled = true;
  125. }
  126. return SUCCESS;
  127. }
  128. Status StageExecutor::SetInputs(const vector<TensorValue> &inputs, const vector<ConstGeTensorDescPtr> &input_desc) {
  129. root_graph_executor_->InitForPartialExecution(inputs, input_desc);
  130. return SUCCESS;
  131. }
  132. Status StageExecutor::GetOutputs(vector<TensorValue> &outputs, vector<ConstGeTensorDescPtr> &output_desc) {
  133. return root_graph_executor_->GetOutputs(outputs, output_desc);
  134. }
  135. void StageExecutor::Reset() {
  136. task_queue_.Stop();
  137. task_queue_.Clear();
  138. task_queue_.Restart();
  139. }
  140. Status HybridModelPipelineExecutor::Init() {
  141. const char *profiling_level = std::getenv(kEnvProfilingLevel);
  142. if (profiling_level != nullptr) {
  143. context_.profiling_level = std::strtol(profiling_level, nullptr, kIntBase);
  144. GELOGD("Got profiling level = %ld", context_.profiling_level);
  145. if (context_.profiling_level > 0) {
  146. context_.profiler.reset(new (std::nothrow) HybridProfiler());
  147. GE_CHECK_NOTNULL(context_.profiler);
  148. }
  149. }
  150. GELOGD("Number of stages = %d, number of executors = %d", config_.num_stages, config_.num_executors);
  151. GE_CHK_RT_RET(rtCtxGetCurrent(&config_.rt_context));
  152. GE_CHK_STATUS_RET_NOLOG(InitStageExecutors());
  153. return SUCCESS;
  154. }
  155. Status HybridModelPipelineExecutor::InitStageExecutors() {
  156. for (int i = 0; i < config_.num_executors; ++i) {
  157. auto stage_executor = std::unique_ptr<StageExecutor>(new (std::nothrow) StageExecutor(i, model_, &config_));
  158. GE_CHECK_NOTNULL(stage_executor);
  159. GE_CHK_STATUS_RET_NOLOG(stage_executor->Init());
  160. if (context_.profiler != nullptr) {
  161. // will call unique_ptr::release later
  162. stage_executor->context_.profiler.reset(context_.profiler.get());
  163. stage_executor->context_.profiling_level = context_.profiling_level;
  164. }
  165. stage_executors_.emplace_back(std::move(stage_executor));
  166. }
  167. // build propagation loop
  168. for (int i = 0; i < config_.num_executors - 1; ++i) {
  169. stage_executors_[i]->SetNext(stage_executors_[i + 1].get());
  170. }
  171. stage_executors_[config_.num_executors - 1]->SetNext(stage_executors_[0].get());
  172. return SUCCESS;
  173. }
  174. Status HybridModelPipelineExecutor::Execute(HybridModelExecutor::ExecuteArgs &args) {
  175. int loop_count = args.num_loops;
  176. GE_CHECK_GE(loop_count, 2);
  177. auto &inputs = args.inputs;
  178. auto &input_desc = args.input_desc;
  179. // Start schedulers
  180. std::vector<std::future<Status>> futures;
  181. for (size_t i = 0; i < stage_executors_.size(); ++i) {
  182. GELOGD("Starting executor %zu", i);
  183. auto executor = stage_executors_[i].get();
  184. executor->Reset();
  185. auto future = std::async(
  186. [loop_count, executor, inputs, input_desc]() { return executor->Start(inputs, input_desc, loop_count); });
  187. futures.emplace_back(std::move(future));
  188. }
  189. // Push initial tasks
  190. GELOGD("Start to execute with loops, loop count = %d", loop_count);
  191. config_.iteration_end = iteration_ + loop_count;
  192. for (int i = 0; i < config_.num_stages; ++i) {
  193. StageExecutor::StageTask task_info;
  194. task_info.stage = i;
  195. task_info.iteration = iteration_;
  196. stage_executors_[0]->ExecuteAsync(task_info);
  197. }
  198. // Wait for end of iterations
  199. bool has_error = false;
  200. for (size_t i = 0; i < stage_executors_.size(); ++i) {
  201. GELOGD("Start to sync result of executor[%zu]", i);
  202. auto ret = futures[i].get();
  203. if (ret != SUCCESS) {
  204. GELOGE(ret, "[Executor: %zu] Failed to schedule tasks.", i);
  205. has_error = true;
  206. continue;
  207. }
  208. ret = stage_executors_[i]->Synchronize();
  209. if (ret != SUCCESS) {
  210. GELOGE(ret, "[Executor: %zu] Failed to synchronize result.", i);
  211. has_error = true;
  212. continue;
  213. }
  214. }
  215. // record for profiling analyzer
  216. RECORD_MODEL_EXECUTION_EVENT(&context_, "[Cleanup] End");
  217. if (context_.profiler != nullptr) {
  218. context_.profiler->Dump(std::cout);
  219. }
  220. iteration_ = config_.iteration_end;
  221. if (has_error) {
  222. GELOGE(FAILED, "Error occurred while execution");
  223. return FAILED;
  224. }
  225. auto last_iter_executor_idx = loop_count % stage_executors_.size();
  226. GE_CHK_STATUS_RET(stage_executors_[last_iter_executor_idx]->GetOutputs(args.outputs, args.output_desc),
  227. "Failed to get output from executor[%zu]", last_iter_executor_idx);
  228. return SUCCESS;
  229. }
  230. HybridModelPipelineExecutor::~HybridModelPipelineExecutor() {
  231. GELOGD("~HybridModelPipelineExecutor()");
  232. for (auto &executor : stage_executors_) {
  233. (void)executor->context_.profiler.release();
  234. }
  235. }
  236. } // namespace hybrid
  237. } // namespace ge

图引擎模块(GE)是MindSpore的一个子模块,其代码由C++实现,位于前端模块ME和底层硬件之间,起到承接作用。图引擎模块以ME下发的图作为输入,然后进行一系列的深度图优化操作,最后输出一张可以在底层硬件上高效运行的图。GE针对昇腾AI处理器的硬件结构特点,做了特定的优化工作,以此来充分发挥出昇腾AI处理器的强大算力。在进行模型训练/推理时,GE会被自动调用而用户并不感知。GE主要由GE API和GE Core两部分组成,详细的架构图如下所示