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subgraph_executor.cc 31 kB

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  1. /**
  2. * Copyright 2019-2020 Huawei Technologies Co., Ltd
  3. *
  4. * Licensed under the Apache License, Version 2.0 (the "License");
  5. * you may not use this file except in compliance with the License.
  6. * You may obtain a copy of the License at
  7. *
  8. * http://www.apache.org/licenses/LICENSE-2.0
  9. *
  10. * Unless required by applicable law or agreed to in writing, software
  11. * distributed under the License is distributed on an "AS IS" BASIS,
  12. * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. * See the License for the specific language governing permissions and
  14. * limitations under the License.
  15. */
  16. #include "hybrid/executor/subgraph_executor.h"
  17. #include "graph/ge_context.h"
  18. #include "hybrid/executor/worker/task_compile_engine.h"
  19. #include "hybrid/executor/worker/execution_engine.h"
  20. #include "hybrid/node_executor/node_executor.h"
  21. namespace ge {
  22. namespace hybrid {
  23. namespace {
  24. constexpr int kDefaultThreadNum = 4;
  25. constexpr int kDefaultQueueSize = 16;
  26. constexpr int kDataInputIndex = 0;
  27. }
  28. SubgraphExecutor::SubgraphExecutor(const GraphItem *graph_item, GraphExecutionContext *context, bool force_infer_shape)
  29. : graph_item_(graph_item),
  30. context_(context),
  31. force_infer_shape_(force_infer_shape),
  32. pre_run_pool_(kDefaultThreadNum),
  33. ready_queue_(kDefaultQueueSize) {
  34. }
  35. SubgraphExecutor::~SubgraphExecutor() {
  36. GELOGD("[%s] SubgraphExecutor destroyed.", graph_item_->GetName().c_str());
  37. }
  38. Status SubgraphExecutor::Init(const std::vector<TensorValue> &inputs,
  39. const std::vector<ConstGeTensorDescPtr> &input_desc) {
  40. subgraph_context_.reset(new(std::nothrow)SubgraphContext(graph_item_, context_));
  41. GE_CHECK_NOTNULL(subgraph_context_);
  42. GE_CHK_STATUS_RET(subgraph_context_->Init(),
  43. "[Init][SubgraphContext][%s] Failed to init subgraph context.", graph_item_->GetName().c_str());
  44. shape_inference_engine_.reset(new(std::nothrow) ShapeInferenceEngine(context_, subgraph_context_.get()));
  45. GE_CHECK_NOTNULL(shape_inference_engine_);
  46. if (graph_item_->IsDynamic()) {
  47. GE_CHK_STATUS_RET(InitInputsForUnknownShape(inputs, input_desc),
  48. "[%s] Failed to set inputs.",
  49. graph_item_->GetName().c_str());
  50. } else {
  51. GE_CHK_STATUS_RET(InitInputsForKnownShape(inputs),
  52. "[Invoke][InitInputsForKnownShape][%s] Failed to init subgraph executor for known shape subgraph.",
  53. graph_item_->GetName().c_str());
  54. }
  55. return SUCCESS;
  56. }
  57. Status SubgraphExecutor::InitInputsForUnknownShape(const std::vector<TensorValue> &inputs,
  58. const std::vector<ConstGeTensorDescPtr> &input_desc) {
  59. // Number of inputs of parent node should be greater or equal than that of subgraph
  60. auto input_nodes = graph_item_->GetInputNodes();
  61. if (inputs.size() < input_nodes.size()) {
  62. GELOGE(INTERNAL_ERROR,
  63. "[Check][Size][%s] Number of inputs [%zu] is not sufficient for subgraph which needs [%zu] inputs.",
  64. graph_item_->GetName().c_str(), inputs.size(), input_nodes.size());
  65. REPORT_INNER_ERROR("E19999",
  66. "[%s] Number of inputs [%zu] is not sufficient for subgraph which needs [%zu] inputs.",
  67. graph_item_->GetName().c_str(), inputs.size(), input_nodes.size());
  68. return INTERNAL_ERROR;
  69. }
  70. for (size_t i = 0; i < input_nodes.size(); ++i) {
  71. auto &input_node = input_nodes[i];
  72. if (input_node == nullptr) {
  73. GELOGD("[%s] Input[%zu] is not needed by subgraph, skip it.", graph_item_->GetName().c_str(), i);
  74. continue;
  75. }
  76. auto &input_tensor = inputs[i];
  77. GELOGD("[%s] Set input tensor[%zu] to inputs with index = %d, tensor = %s",
  78. graph_item_->GetName().c_str(),
  79. i,
  80. input_node->input_start,
  81. input_tensor.DebugString().c_str());
  82. GE_CHK_STATUS_RET(subgraph_context_->SetInput(*input_node, kDataInputIndex, input_tensor),
  83. "[Invoke][SetInput] failed for grap_item[%s] input tensor[%zu]",
  84. graph_item_->GetName().c_str(), i);
  85. if (force_infer_shape_ || input_node->is_dynamic) {
  86. GELOGD("[%s] Start to update input[%zu] for subgraph data node.", graph_item_->GetName().c_str(), i);
  87. GE_CHECK_LE(i + 1, input_desc.size());
  88. const auto &tensor_desc = input_desc[i];
  89. GE_CHECK_NOTNULL(tensor_desc);
  90. auto node_state = subgraph_context_->GetOrCreateNodeState(input_node);
  91. GE_CHECK_NOTNULL(node_state);
  92. node_state->GetShapeInferenceState().UpdateInputShape(0, *tensor_desc);
  93. }
  94. }
  95. GELOGD("[%s] Done setting inputs.", graph_item_->GetName().c_str());
  96. return SUCCESS;
  97. }
  98. Status SubgraphExecutor::InitInputsForKnownShape(const std::vector<TensorValue> &inputs) {
  99. auto &input_index_mapping = graph_item_->GetInputIndexMapping();
  100. for (size_t i = 0; i < input_index_mapping.size(); ++i) {
  101. auto &parent_input_index = input_index_mapping[i];
  102. if (static_cast<size_t>(parent_input_index) >= inputs.size()) {
  103. GELOGE(INTERNAL_ERROR, "[Check][Size][%s] Number of inputs [%zu] is not sufficient for subgraph"
  104. "which needs at lease [%d] inputs", graph_item_->GetName().c_str(), inputs.size(),
  105. parent_input_index + 1);
  106. REPORT_INNER_ERROR("E19999", "[%s] Number of inputs [%zu] is not sufficient for subgraph"
  107. "which needs at lease [%d] inputs",
  108. graph_item_->GetName().c_str(), inputs.size(), parent_input_index + 1);
  109. return INTERNAL_ERROR;
  110. }
  111. auto &input_tensor = inputs[parent_input_index];
  112. subgraph_context_->SetInput(static_cast<int>(i), input_tensor);
  113. GELOGD("[%s] Set input tensor[%zu] with inputs with index = %d, tensor = %s",
  114. graph_item_->GetName().c_str(),
  115. i,
  116. parent_input_index,
  117. input_tensor.DebugString().c_str());
  118. }
  119. return SUCCESS;
  120. }
  121. Status SubgraphExecutor::ExecuteAsync(const std::vector<TensorValue> &inputs,
  122. const std::vector<ConstGeTensorDescPtr> &input_desc,
  123. const std::vector<TensorValue> &outputs) {
  124. GELOGD("[%s] is dynamic = %s", graph_item_->GetName().c_str(), graph_item_->IsDynamic() ? "true" : "false");
  125. GE_CHK_STATUS_RET(Init(inputs, input_desc), "[Invoke][Init]failed for [%s].", graph_item_->GetName().c_str());
  126. if (!outputs.empty()) {
  127. GE_CHK_STATUS_RET(EnableOutputZeroCopy(outputs),
  128. "[Invoke][EnableOutputZeroCopy] Failed by user provided outputs.");
  129. }
  130. if (!graph_item_->IsDynamic()) {
  131. return ExecuteAsyncForKnownShape(inputs);
  132. }
  133. HYBRID_CHK_STATUS_RET(ScheduleTasks(), "[%s] Failed to execute tasks.", graph_item_->GetName().c_str());
  134. GELOGD("[%s] Done executing subgraph successfully.", graph_item_->GetName().c_str());
  135. return SUCCESS;
  136. }
  137. Status SubgraphExecutor::ExecuteAsync(const std::vector<TensorValue> &inputs,
  138. const std::vector<ConstGeTensorDescPtr> &input_desc) {
  139. return ExecuteAsync(inputs, input_desc, {});
  140. }
  141. Status SubgraphExecutor::ExecuteAsyncForKnownShape(const std::vector<TensorValue> &inputs) {
  142. GELOGD("[%s] subgraph is not dynamic.", graph_item_->GetName().c_str());
  143. if (graph_item_->GetAllNodes().size() != 1) {
  144. REPORT_INNER_ERROR("E19999", "[%s] Invalid known shape subgraph. node size = %zu",
  145. graph_item_->GetName().c_str(), graph_item_->GetAllNodes().size());
  146. GELOGE(INTERNAL_ERROR, "[Check][Size][%s] Invalid known shape subgraph. node size = %zu",
  147. graph_item_->GetName().c_str(), graph_item_->GetAllNodes().size());
  148. return INTERNAL_ERROR;
  149. }
  150. auto node_item = graph_item_->GetAllNodes()[0];
  151. GE_CHECK_NOTNULL(node_item);
  152. auto node_state = subgraph_context_->GetOrCreateNodeState(node_item);
  153. GE_CHECK_NOTNULL(node_state);
  154. node_state->SetKernelTask(node_item->kernel_task);
  155. known_shape_task_context_ = TaskContext::Create(node_state.get(), context_, subgraph_context_.get());
  156. GE_CHECK_NOTNULL(known_shape_task_context_);
  157. std::function<void()> callback;
  158. GE_CHK_STATUS_RET_NOLOG(InitCallback(node_state.get(), callback));
  159. HYBRID_CHK_STATUS_RET(ExecutionEngine::ExecuteAsync(*node_state, known_shape_task_context_, *context_, callback),
  160. "[%s] Failed to execute node [%s] for known subgraph.",
  161. graph_item_->GetName().c_str(),
  162. known_shape_task_context_->GetNodeName());
  163. GELOGD("[%s] Done execute non-dynamic subgraph successfully.", graph_item_->GetName().c_str());
  164. return SUCCESS;
  165. }
  166. Status SubgraphExecutor::ExecuteAsync(TaskContext &task_context) {
  167. std::vector<TensorValue> inputs;
  168. std::vector<ConstGeTensorDescPtr> input_desc;
  169. for (int i = 0; i < task_context.NumInputs(); ++i) {
  170. auto tensor = task_context.GetInput(i);
  171. GE_CHECK_NOTNULL(tensor);
  172. inputs.emplace_back(*tensor);
  173. input_desc.emplace_back(task_context.GetInputDesc(i));
  174. }
  175. GE_CHK_STATUS_RET(ExecuteAsync(inputs, input_desc), "[Invoke][ExecuteAsync] failed for [%s].",
  176. graph_item_->GetName().c_str());
  177. GE_CHK_STATUS_RET(SetOutputsToParentNode(task_context),
  178. "[Invoke][SetOutputsToParentNode][%s] Failed to set output shapes to parent node.",
  179. graph_item_->GetName().c_str());
  180. return SUCCESS;
  181. }
  182. BlockingQueue<const NodeItem *> &SubgraphExecutor::GetPrepareQueue(int group) {
  183. std::lock_guard<std::mutex> lk(mu_);
  184. return prepare_queues_[group];
  185. }
  186. Status SubgraphExecutor::NodeEnqueue(NodeState *node_state) {
  187. if (!ready_queue_.Push(node_state)) {
  188. if (context_->is_eos_) {
  189. GELOGD("Got end of sequence");
  190. return SUCCESS;
  191. }
  192. GELOGE(INTERNAL_ERROR, "[Check][State][%s] Error occurs while launching tasks. quit from preparing nodes.",
  193. graph_item_->GetName().c_str());
  194. REPORT_INNER_ERROR("E19999", "[%s] Error occurs while launching tasks. quit from preparing nodes.",
  195. graph_item_->GetName().c_str());
  196. return INTERNAL_ERROR;
  197. }
  198. GELOGD("[%s] Push node [%s] to queue.", graph_item_->GetName().c_str(), node_state->GetName().c_str());
  199. return SUCCESS;
  200. }
  201. Status SubgraphExecutor::PrepareNode(const NodeItem &node_item, int group) {
  202. GELOGD("[%s] Start to prepare node [%s].", graph_item_->GetName().c_str(), node_item.NodeName().c_str());
  203. // for while op
  204. if (force_infer_shape_ && !node_item.is_dynamic) {
  205. GELOGD("[%s] Force infer shape is set, updating node to dynamic.", node_item.NodeName().c_str());
  206. auto &mutable_node_item = const_cast<NodeItem &>(node_item);
  207. mutable_node_item.SetToDynamic();
  208. }
  209. auto node_state = subgraph_context_->GetOrCreateNodeState(&node_item);
  210. GE_CHECK_NOTNULL(node_state);
  211. node_state->ResetContext(group);
  212. auto p_node_state = node_state.get();
  213. if (node_item.node_type == NETOUTPUT) {
  214. GE_CHK_STATUS_RET_NOLOG(NodeEnqueue(p_node_state));
  215. return AfterPrepared(p_node_state);
  216. }
  217. // only do shape inference and compilation for nodes with dynamic shapes.
  218. if (node_item.is_dynamic) {
  219. auto prepare_future = pre_run_pool_.commit([this, p_node_state]() -> Status {
  220. GetContext().SetSessionId(context_->session_id);
  221. GetContext().SetContextId(context_->context_id);
  222. GE_CHK_STATUS_RET_NOLOG(InferShape(shape_inference_engine_.get(), *p_node_state));
  223. GE_CHK_STATUS_RET_NOLOG(PrepareForExecution(context_, *p_node_state));
  224. return AfterPrepared(p_node_state);
  225. });
  226. p_node_state->SetPrepareFuture(std::move(prepare_future));
  227. return NodeEnqueue(p_node_state);
  228. } else {
  229. GELOGD("[%s] Skipping shape inference and compilation for node with static shape.",
  230. node_item.NodeName().c_str());
  231. if (node_item.kernel_task == nullptr) {
  232. GELOGW("[%s] Node of static shape got no task.", node_item.NodeName().c_str());
  233. GE_CHK_STATUS_RET(TaskCompileEngine::Compile(*p_node_state, context_),
  234. "[Invoke][Compile] failed for [%s].", p_node_state->GetName().c_str());
  235. } else {
  236. node_state->SetKernelTask(node_item.kernel_task);
  237. }
  238. auto unique_task_context = TaskContext::Create(node_state.get(), context_, subgraph_context_.get());
  239. GE_CHECK_NOTNULL(unique_task_context);
  240. const auto &task = node_state->GetKernelTask();
  241. if (task == nullptr) {
  242. GELOGE(INTERNAL_ERROR, "[Get][KernelTask] failed for[%s], NodeTask is null.", node_state->GetName().c_str());
  243. REPORT_CALL_ERROR("E19999", "GetKernelTask failed for %s, nodetask is null.", node_state->GetName().c_str());
  244. return INTERNAL_ERROR;
  245. }
  246. auto shared_task_context = std::shared_ptr<TaskContext>(unique_task_context.release());
  247. node_state->SetTaskContext(shared_task_context);
  248. GE_CHK_STATUS_RET_NOLOG(NodeEnqueue(p_node_state));
  249. return AfterPrepared(p_node_state);
  250. }
  251. }
  252. Status SubgraphExecutor::PrepareNodes(int group) {
  253. const size_t node_size = graph_item_->GetNodeSize(group);
  254. GELOGD("[%s] Start to prepare nodes. group = %d, size = %zu", graph_item_->GetName().c_str(), group, node_size);
  255. if (!graph_item_->HasCtrlFlowOp()) {
  256. for (const auto &node_item : graph_item_->GetAllNodes(group)) {
  257. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] Start");
  258. GE_CHK_STATUS_RET(PrepareNode(*node_item, group), "[%s] failed to prepare task.", node_item->NodeName().c_str());
  259. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] End");
  260. }
  261. GELOGD("[%s] Done preparing nodes successfully.", graph_item_->GetName().c_str());
  262. return SUCCESS;
  263. }
  264. // Initialize the ready queue
  265. size_t node_count = 0;
  266. bool node_complete = false;
  267. for (const auto &node_item : graph_item_->GetRootNodes(group)) {
  268. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] Start");
  269. GE_CHK_STATUS_RET(PrepareNode(*node_item, group), "[%s] failed to prepare task.", node_item->NodeName().c_str());
  270. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] End");
  271. node_complete = node_item->NodeType() == NETOUTPUT;
  272. node_count++;
  273. }
  274. GELOGD("[%s] Done preparing root nodes.", graph_item_->GetName().c_str());
  275. BlockingQueue<const NodeItem *> &prepare_queue = GetPrepareQueue(group);
  276. while (((group != -1) && (node_count < node_size)) || ((group == -1) && !node_complete)) {
  277. const NodeItem *node_item = nullptr;
  278. if (!prepare_queue.Pop(node_item)) {
  279. if (context_->is_eos_) {
  280. GELOGD("[%s] Got end of sequence.", graph_item_->GetName().c_str());
  281. break;
  282. }
  283. if (context_->GetStatus() != SUCCESS) {
  284. GELOGD("[%s] Graph execution Got failed.", graph_item_->GetName().c_str());
  285. return SUCCESS;
  286. }
  287. GELOGE(INTERNAL_ERROR, "[%s] failed to pop node.", graph_item_->GetName().c_str());
  288. return INTERNAL_ERROR;
  289. }
  290. if (node_item == nullptr) {
  291. GELOGD("[%s] Got EOF from queue.", graph_item_->GetName().c_str());
  292. break;
  293. }
  294. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] Start");
  295. GE_CHK_STATUS_RET(PrepareNode(*node_item, group), "[%s] failed to prepare task.", node_item->NodeName().c_str());
  296. RECORD_EXECUTION_EVENT(context_, node_item->NodeName().c_str(), "[PrepareNode] End");
  297. node_complete = node_item->NodeType() == NETOUTPUT;
  298. node_count++;
  299. }
  300. GELOGD("[%s] Done preparing nodes successfully.", graph_item_->GetName().c_str());
  301. return SUCCESS;
  302. }
  303. Status SubgraphExecutor::NodeScheduled(NodeState *node_state) {
  304. GELOGD("Graph[%s] After [%s] scheduled, data size: %zu, ctrl size: %zu, switch index: %d, merge index: %d",
  305. graph_item_->GetName().c_str(), node_state->GetName().c_str(),
  306. node_state->GetNodeItem()->data_send_.size(), node_state->GetNodeItem()->ctrl_send_.size(),
  307. node_state->GetSwitchIndex(), node_state->GetMergeIndex());
  308. auto future = pre_run_pool_.commit([this, node_state]() -> Status {
  309. RECORD_CALLBACK_EVENT(context_, node_state->GetName().c_str(), "[NodeScheduled] Start");
  310. std::function<void(const NodeItem *)> callback = [&](const NodeItem *node_item) {
  311. const auto &node_name = node_item->node_name;
  312. int group = (node_state->GetGroup() != -1) ? node_item->group : -1;
  313. GELOGI("After [%s] scheduled, [%s] is ready for prepare.", node_state->GetName().c_str(), node_name.c_str());
  314. BlockingQueue<const NodeItem *> &prepare_queue = GetPrepareQueue(group);
  315. if (!prepare_queue.Push(node_item)) {
  316. if (!context_->is_eos_) {
  317. GELOGE(INTERNAL_ERROR, "[Check][State][%s] error occurs when push to queue.", graph_item_->GetName().c_str());
  318. REPORT_INNER_ERROR("E19999", "[%s] error occurs when push to queue.", graph_item_->GetName().c_str());
  319. }
  320. }
  321. };
  322. GE_CHK_STATUS_RET_NOLOG(node_state->NodeScheduled(callback));
  323. node_state->ResetSchedule();
  324. RECORD_CALLBACK_EVENT(context_, node_state->GetName().c_str(), "[NodeScheduled] End");
  325. return SUCCESS;
  326. });
  327. node_state->SetScheduleFuture(std::move(future));
  328. if (schedule_queue_.Push(node_state)) {
  329. return SUCCESS;
  330. }
  331. if (context_->is_eos_) {
  332. GELOGD("[%s] Got end of sequence", graph_item_->GetName().c_str());
  333. return SUCCESS;
  334. }
  335. GELOGE(INTERNAL_ERROR, "[Check][State][%s] error occurs when push to queue.", graph_item_->GetName().c_str());
  336. REPORT_INNER_ERROR("E19999", "[%s] error occurs when push to queue.", graph_item_->GetName().c_str());
  337. return INTERNAL_ERROR;
  338. }
  339. Status SubgraphExecutor::AfterPrepared(NodeState *node_state) {
  340. if (!graph_item_->HasCtrlFlowOp()) {
  341. return SUCCESS;
  342. }
  343. if (node_state->IsShapeDependence()) {
  344. return SUCCESS;
  345. }
  346. // Not control flow node, propagate state.
  347. return NodeScheduled(node_state);
  348. }
  349. void SubgraphExecutor::AfterExecuted(NodeState *node_state) {
  350. if (!node_state->IsShapeDependence()) {
  351. return;
  352. }
  353. // For control flow node, propagate state.
  354. auto error = NodeScheduled(node_state);
  355. if (error != SUCCESS) {
  356. auto task_context = node_state->GetTaskContext();
  357. task_context->OnError(error);
  358. }
  359. }
  360. void SubgraphExecutor::OnNodeDone(NodeState *node_state) {
  361. auto task_context = node_state->GetTaskContext();
  362. NodeDoneCallback cb(context_, task_context);
  363. auto error = cb.OnNodeDone();
  364. if (error != SUCCESS) {
  365. task_context->OnError(error);
  366. }
  367. if (node_state->IsShapeDependence() && graph_item_->HasCtrlFlowOp()) {
  368. AfterExecuted(node_state);
  369. }
  370. }
  371. Status SubgraphExecutor::InitCallback(NodeState *node_state, std::function<void()> &callback) {
  372. auto task_context = node_state->GetTaskContext();
  373. GE_CHECK_NOTNULL(task_context);
  374. if (task_context->NeedCallback()) {
  375. callback = std::bind(&SubgraphExecutor::OnNodeDone, this, node_state);
  376. } else if (node_state->IsShapeDependence() && graph_item_->HasCtrlFlowOp()) {
  377. callback = std::bind(&SubgraphExecutor::AfterExecuted, this, node_state);
  378. }
  379. return SUCCESS;
  380. }
  381. Status SubgraphExecutor::ScheduleNodes() {
  382. GELOGD("[%s] Start to schedule nodes.", graph_item_->GetName().c_str());
  383. while (true) {
  384. NodeState *node_state = nullptr;
  385. if (!schedule_queue_.Pop(node_state)) {
  386. if (context_->is_eos_) {
  387. GELOGD("[%s] Got end of sequence.", graph_item_->GetName().c_str());
  388. break;
  389. }
  390. if (context_->GetStatus() != SUCCESS) {
  391. GELOGD("[%s] Graph execution Got failed.", graph_item_->GetName().c_str());
  392. return SUCCESS;
  393. }
  394. GELOGE(INTERNAL_ERROR, "[%s] failed to pop node.", graph_item_->GetName().c_str());
  395. return INTERNAL_ERROR;
  396. }
  397. if (node_state == nullptr) {
  398. GELOGD("[%s] Got EOF from queue.", graph_item_->GetName().c_str());
  399. break;
  400. }
  401. GE_CHK_STATUS_RET_NOLOG(node_state->WaitForScheduleDone());
  402. }
  403. GELOGD("[%s] Done schedule nodes successfully.", graph_item_->GetName().c_str());
  404. return SUCCESS;
  405. }
  406. Status SubgraphExecutor::InferShape(ShapeInferenceEngine *shape_inference_engine, NodeState &node_state) const {
  407. HYBRID_CHK_STATUS_RET(shape_inference_engine->InferShape(node_state),
  408. "[Invoke][InferShape] failed for [%s].", node_state.GetName().c_str());
  409. HYBRID_CHK_STATUS_RET(shape_inference_engine->PropagateOutputShapes(node_state),
  410. "[Invoke][PropagateOutputShapes] failed for [%s].", node_state.GetName().c_str());
  411. return SUCCESS;
  412. }
  413. Status SubgraphExecutor::PrepareForExecution(GraphExecutionContext *ctx, NodeState &node_state) {
  414. auto &node_item = *node_state.GetNodeItem();
  415. if (node_item.kernel_task == nullptr) {
  416. GE_CHK_STATUS_RET(TaskCompileEngine::Compile(node_state, ctx),
  417. "[Invoke][Compile] Failed for node[%s]", node_state.GetName().c_str());
  418. } else {
  419. node_state.SetKernelTask(node_item.kernel_task);
  420. }
  421. auto unique_task_context = TaskContext::Create(&node_state, context_, subgraph_context_.get());
  422. GE_CHECK_NOTNULL(unique_task_context);
  423. const auto &task = node_state.GetKernelTask();
  424. if (task == nullptr) {
  425. GELOGE(INTERNAL_ERROR, "[Invoke][GetKernelTask] failed for[%s], NodeTask is null.", node_state.GetName().c_str());
  426. REPORT_CALL_ERROR("E19999", "invoke GetKernelTask failed for %s, NodeTask is null.", node_state.GetName().c_str());
  427. return INTERNAL_ERROR;
  428. }
  429. auto shared_task_context = std::shared_ptr<TaskContext>(unique_task_context.release());
  430. node_state.SetTaskContext(shared_task_context);
  431. GE_CHK_RT_RET(rtCtxSetCurrent(ctx->rt_context));
  432. RECORD_COMPILE_EVENT(ctx, node_item.NodeName().c_str(), "[UpdateTilingData] start");
  433. GE_CHK_STATUS_RET_NOLOG(task->UpdateTilingData(*shared_task_context)); // update op_desc before alloc ws
  434. RECORD_COMPILE_EVENT(ctx, node_item.NodeName().c_str(), "[UpdateTilingData] end");
  435. return SUCCESS;
  436. }
  437. Status SubgraphExecutor::LaunchTasks() {
  438. while (true) {
  439. NodeState *node_state = nullptr;
  440. if (!ready_queue_.Pop(node_state)) {
  441. GELOGE(INTERNAL_ERROR, "[Invoke][Pop] failed for [%s].", graph_item_->GetName().c_str());
  442. REPORT_CALL_ERROR("E19999", "invoke pop failed for %s.", graph_item_->GetName().c_str());
  443. return INTERNAL_ERROR;
  444. }
  445. if (node_state == nullptr) {
  446. GELOGD("[%s] Got EOF from queue.", graph_item_->GetName().c_str());
  447. return SUCCESS;
  448. }
  449. if (node_state->GetType() == NETOUTPUT) {
  450. // Wait for all inputs become valid
  451. // after PrepareNodes returned. all output tensors and shapes are valid
  452. GE_CHK_STATUS_RET_NOLOG(node_state->GetShapeInferenceState().AwaitShapesReady(*context_));
  453. GE_CHK_STATUS_RET_NOLOG(node_state->AwaitInputTensors(*context_));
  454. GELOGD("[%s] Done executing node successfully.", node_state->GetName().c_str());
  455. continue;
  456. }
  457. GE_CHK_STATUS_RET_NOLOG(node_state->WaitForPrepareDone());
  458. GELOGD("[%s] Start to execute.", node_state->GetName().c_str());
  459. auto shared_task_context = node_state->GetTaskContext();
  460. GE_CHECK_NOTNULL(shared_task_context);
  461. shared_task_context->SetForceInferShape(force_infer_shape_);
  462. std::function<void()> callback;
  463. GE_CHK_STATUS_RET_NOLOG(InitCallback(node_state, callback));
  464. HYBRID_CHK_STATUS_RET(ExecutionEngine::ExecuteAsync(*node_state, shared_task_context, *context_, callback),
  465. "[Invoke][ExecuteAsync] failed for [%s].", node_state->GetName().c_str());
  466. GELOGD("[%s] Done executing node successfully.", node_state->GetName().c_str());
  467. }
  468. }
  469. Status SubgraphExecutor::ScheduleTasks(int group) {
  470. GELOGD("[%s] Start to schedule prepare workers.", graph_item_->GetName().c_str());
  471. auto prepare_future = std::async(std::launch::async, [&]() -> Status {
  472. GetContext().SetSessionId(context_->session_id);
  473. GetContext().SetContextId(context_->context_id);
  474. auto ret = PrepareNodes(group);
  475. ready_queue_.Push(nullptr);
  476. schedule_queue_.Push(nullptr);
  477. for (auto &item : prepare_queues_) {
  478. item.second.Push(nullptr);
  479. }
  480. return ret;
  481. });
  482. auto schedule_future = std::async(std::launch::async, [&]() -> Status {
  483. return ScheduleNodes();
  484. });
  485. GELOGD("[%s] Start to execute subgraph.", graph_item_->GetName().c_str());
  486. auto ret = LaunchTasks();
  487. if (ret != SUCCESS) {
  488. subgraph_context_->OnError(ret);
  489. context_->SetErrorCode(ret);
  490. ready_queue_.Stop();
  491. schedule_queue_.Stop();
  492. for (auto &item : prepare_queues_) {
  493. item.second.Stop();
  494. }
  495. prepare_future.wait();
  496. schedule_future.wait();
  497. return ret;
  498. }
  499. GE_CHK_STATUS_RET(prepare_future.get(), "[Invoke][get] [%s] Error occurred in task preparation.",
  500. graph_item_->GetName().c_str());
  501. GE_CHK_STATUS_RET(schedule_future.get(), "[Invoke][get] [%s] Error occurred in task preparation.",
  502. graph_item_->GetName().c_str());
  503. GELOGD("[%s] Done launching all tasks successfully.", graph_item_->GetName().c_str());
  504. return SUCCESS;
  505. }
  506. Status SubgraphExecutor::GetOutputs(vector<TensorValue> &outputs) {
  507. return subgraph_context_->GetOutputs(outputs);
  508. }
  509. Status SubgraphExecutor::GetOutputs(vector<TensorValue> &outputs, std::vector<ConstGeTensorDescPtr> &output_desc) {
  510. GE_CHK_STATUS_RET(GetOutputs(outputs), "[Invoke][GetOutputs] failed for [%s].", graph_item_->GetName().c_str());
  511. // copy output data from op to designated position
  512. GE_CHK_STATUS_RET(graph_item_->GetOutputDescList(output_desc),
  513. "[Invoke][GetOutputDescList][%s] Failed to get output tensor desc.",
  514. graph_item_->GetName().c_str());
  515. if (outputs.size() != output_desc.size()) {
  516. GELOGE(INTERNAL_ERROR, "[Check][Size]Number of outputs(%zu) mismatch number of output_desc(%zu).",
  517. outputs.size(), output_desc.size());
  518. REPORT_INNER_ERROR("E19999", "Number of outputs(%zu) mismatch number of output_desc(%zu).",
  519. outputs.size(), output_desc.size());
  520. return INTERNAL_ERROR;
  521. }
  522. return SUCCESS;
  523. }
  524. Status SubgraphExecutor::Synchronize() {
  525. GELOGD("[%s] Synchronize start.", graph_item_->GetName().c_str());
  526. GE_CHK_STATUS_RET_NOLOG(context_->Synchronize(context_->stream));
  527. GELOGD("[%s] Done synchronizing successfully.", graph_item_->GetName().c_str());
  528. return SUCCESS;
  529. }
  530. Status SubgraphExecutor::SetOutputsToParentNode(TaskContext &task_context) {
  531. // get output tensors and tensor desc list
  532. std::vector<TensorValue> outputs;
  533. std::vector<ConstGeTensorDescPtr> output_desc_list;
  534. GE_CHK_STATUS_RET(subgraph_context_->GetOutputs(outputs), "[Invoke][GetOutputs][%s] Failed to get output tensors.",
  535. graph_item_->GetName().c_str());
  536. GE_CHK_STATUS_RET(graph_item_->GetOutputDescList(output_desc_list),
  537. "[Invoke][GetOutputDescList][%s] Failed to get output tensor desc.",
  538. graph_item_->GetName().c_str());
  539. if (outputs.size() != output_desc_list.size()) {
  540. GELOGE(INTERNAL_ERROR, "[Check][Size][%s] num of output tensors = %zu, num of output tensor desc = %zu not equal",
  541. graph_item_->GetName().c_str(), outputs.size(), output_desc_list.size());
  542. REPORT_INNER_ERROR("E19999", "%s num of output tensors = %zu, num of output tensor desc = %zu not equal",
  543. graph_item_->GetName().c_str(), outputs.size(), output_desc_list.size());
  544. return INTERNAL_ERROR;
  545. }
  546. // mapping to parent task context
  547. for (size_t i = 0; i < outputs.size(); ++i) {
  548. int parent_output_index = graph_item_->GetParentOutputIndex(i);
  549. GE_CHECK_GE(parent_output_index, 0);
  550. // update tensor
  551. GELOGD("[%s] Updating output[%zu] to parent output[%d]",
  552. graph_item_->GetName().c_str(),
  553. i,
  554. parent_output_index);
  555. GELOGD("[%s] Updating output tensor, index = %d, tensor = %s",
  556. graph_item_->GetName().c_str(),
  557. parent_output_index,
  558. outputs[i].DebugString().c_str());
  559. GE_CHK_STATUS_RET(task_context.SetOutput(parent_output_index, outputs[i]));
  560. // updating shapes. dynamic format/dtype is not supported.
  561. // It should be noted that even the subgraph is of known shape, it is also necessary to update parent output desc,
  562. // for instance, IfOp may have two known-shaped subgraphs of different output shapes
  563. const auto &output_desc = output_desc_list[i];
  564. auto parent_output_desc = task_context.MutableOutputDesc(parent_output_index);
  565. GE_CHECK_NOTNULL(parent_output_desc);
  566. GELOGD("[%s] Updating output shape[%d] from [%s] to [%s]",
  567. graph_item_->GetName().c_str(),
  568. parent_output_index,
  569. parent_output_desc->MutableShape().ToString().c_str(),
  570. output_desc->GetShape().ToString().c_str());
  571. parent_output_desc->SetShape(output_desc->GetShape());
  572. GELOGD("[%s] Updating output original shape[%d] from [%s] to [%s]",
  573. graph_item_->GetName().c_str(),
  574. parent_output_index,
  575. parent_output_desc->GetOriginShape().ToString().c_str(),
  576. output_desc->GetOriginShape().ToString().c_str());
  577. parent_output_desc->SetOriginShape(output_desc->GetOriginShape());
  578. }
  579. return SUCCESS;
  580. }
  581. Status SubgraphExecutor::EnableOutputZeroCopy(const vector<TensorValue> &outputs) {
  582. GELOGD("To enable zero copy, output number = %zu", outputs.size());
  583. const auto &output_edges = graph_item_->GetOutputEdges();
  584. // Op -> MetOutput, set the output tensor of Op that output to the NetOutput node
  585. if (outputs.size() != output_edges.size()) {
  586. GELOGE(PARAM_INVALID, "[Check][Size]Output number mismatches, expect = %zu, but given = %zu",
  587. output_edges.size(), outputs.size());
  588. REPORT_INNER_ERROR("E19999", "Output number mismatches, expect = %zu, but given = %zu",
  589. output_edges.size(), outputs.size());
  590. return PARAM_INVALID;
  591. }
  592. for (size_t i = 0; i < outputs.size(); ++i) {
  593. auto &output_tensor = outputs[i];
  594. auto &output_node = output_edges[i].first;
  595. int output_idx = output_edges[i].second;
  596. GELOGD("[%s] Set output tensor[%zu] to [%s]'s output[%d], tensor = %s",
  597. graph_item_->GetName().c_str(),
  598. i,
  599. output_node->NodeName().c_str(),
  600. output_idx,
  601. output_tensor.DebugString().c_str());
  602. GE_CHK_STATUS_RET(subgraph_context_->SetOutput(*output_node, output_idx, output_tensor),
  603. "[Invoke][SetOutput][%s] Failed to set input tensor[%zu]",
  604. graph_item_->GetName().c_str(), i);
  605. }
  606. GELOGD("Done enabling zero copy for outputs successfully.");
  607. return SUCCESS;
  608. }
  609. Status SubgraphExecutor::PartialExecuteAsync(int task_group) {
  610. return ScheduleTasks(task_group);
  611. }
  612. Status SubgraphExecutor::InitForPartialExecution(const vector<TensorValue> &inputs,
  613. const vector<ConstGeTensorDescPtr> &input_desc) {
  614. return Init(inputs, input_desc);
  615. }
  616. } // namespace hybrid
  617. } // 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