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node_state.cc 10 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/node_state.h"
  17. #include <chrono>
  18. #include "framework/common/debug/log.h"
  19. #include "graph/compute_graph.h"
  20. #include "graph/utils/tensor_utils.h"
  21. #include "hybrid_execution_context.h"
  22. #include "subgraph_context.h"
  23. namespace ge {
  24. namespace hybrid {
  25. namespace {
  26. // 5s * 120, wait for 10m
  27. constexpr auto kWaitInternal = 5;
  28. constexpr auto kMaxWaitTimes = 120;
  29. }
  30. ShapeInferenceState::ShapeInferenceState(const NodeItem &node_item) : node_item(node_item) {
  31. this->num_pending_shapes_ = node_item.num_inputs - node_item.num_static_input_shapes;
  32. GELOGD("[%s] ShapeInferenceState created, pending shape count = %d",
  33. node_item.NodeName().c_str(),
  34. this->num_pending_shapes_);
  35. for (int i = 0; i < node_item.num_inputs; ++i){
  36. input_tensor_desc.emplace_back(*node_item.MutableInputDesc(i));
  37. }
  38. for (int i = 0; i < node_item.num_outputs; ++i){
  39. output_tensor_desc.emplace_back(*node_item.MutableOutputDesc(i));
  40. }
  41. }
  42. Status ShapeInferenceState::UpdateInputShape(int idx, const GeTensorDesc &target) {
  43. if (node_item.IsInputShapeStatic(idx)) {
  44. GELOGD("[%s] Trying to update static shape, idx = %d. old shape = [%s], new shape = [%s]",
  45. node_item.NodeName().c_str(),
  46. idx,
  47. node_item.MutableInputDesc(idx)->GetShape().ToString().c_str(),
  48. target.GetShape().ToString().c_str());
  49. return SUCCESS;
  50. }
  51. std::lock_guard<std::mutex> lk(mu_);
  52. auto &input_desc = input_tensor_desc[idx];
  53. GeShape shape = target.GetShape();
  54. input_desc.SetShape(shape);
  55. input_desc.SetOriginShape(target.GetOriginShape());
  56. int64_t tensor_size = -1;
  57. (void) TensorUtils::GetSize(target, tensor_size);
  58. if (tensor_size <= 0) {
  59. Format format = input_desc.GetFormat();
  60. DataType data_type = input_desc.GetDataType();
  61. if (TensorUtils::CalcTensorMemSize(shape, format, data_type, tensor_size) != GRAPH_SUCCESS) {
  62. GELOGE(FAILED, "[%s] Calculate tensor memory size failed.", node_item.NodeName().c_str());
  63. return FAILED;
  64. }
  65. }
  66. GELOGD("[%s] Update input shape [%d] with Shape: [%s] and OriginalShape: [%s], size = %ld",
  67. node_item.NodeName().c_str(),
  68. idx,
  69. shape.ToString().c_str(),
  70. target.GetOriginShape().ToString().c_str(),
  71. tensor_size);
  72. (void) TensorUtils::SetSize(input_desc, tensor_size);
  73. if (--num_pending_shapes_ <= 0) {
  74. ready_cv_.notify_all();
  75. }
  76. return SUCCESS;
  77. }
  78. void ShapeInferenceState::UpdateInputShapeFuture(int idx, ShapeFuture &&future) {
  79. if (node_item.IsInputShapeStatic(idx)) {
  80. GELOGD("[%s] Trying to update constant shape, idx = %d", node_item.NodeName().c_str(), idx);
  81. return;
  82. }
  83. GELOGD("[%s] Update input shape [%d] with ShapeFuture.", node_item.NodeName().c_str(), idx);
  84. std::lock_guard<std::mutex> lk(mu_);
  85. shape_futures.emplace_back(idx, std::move(future));
  86. if (--num_pending_shapes_ == 0) {
  87. ready_cv_.notify_all();
  88. }
  89. }
  90. Status ShapeInferenceState::AwaitShapesReady(const GraphExecutionContext &context) {
  91. if (!node_item.is_dynamic) {
  92. return SUCCESS;
  93. }
  94. std::unique_lock<std::mutex> lk(mu_);
  95. if (num_pending_shapes_ > 0) {
  96. GELOGD("[%s] Await pending shape or shape future start.", node_item.NodeName().c_str());
  97. int try_count = 0;
  98. bool wait_success = false;
  99. while (try_count++ < kMaxWaitTimes) {
  100. if (ready_cv_.wait_for(lk, std::chrono::seconds(kWaitInternal), [&]() { return num_pending_shapes_ == 0; })) {
  101. GELOGD("[%s] Await pending shape or shape future end.", node_item.NodeName().c_str());
  102. wait_success = true;
  103. break;
  104. }
  105. if (context.is_eos_) {
  106. GELOGD("[%s] Await pending shape cancelled due to end of sequence", node_item.NodeName().c_str());
  107. return END_OF_SEQUENCE;
  108. }
  109. if (context.GetStatus() != SUCCESS) {
  110. GELOGE(FAILED, "[%s] Await pending shape cancelled", node_item.NodeName().c_str());
  111. break;
  112. }
  113. }
  114. if (!wait_success) {
  115. GELOGE(FAILED, "[%s] Wait for shape timeout.", node_item.NodeName().c_str());
  116. return FAILED;
  117. }
  118. }
  119. for (size_t i = 0; i < input_tensor_desc.size(); ++i) {
  120. auto dst_tensor_desc = node_item.op_desc->MutableInputDesc(i);
  121. if (dst_tensor_desc == nullptr) {
  122. continue;
  123. }
  124. auto &tensor_desc = input_tensor_desc[i];
  125. int64_t tensor_size = -1;
  126. (void) TensorUtils::GetSize(tensor_desc, tensor_size);
  127. dst_tensor_desc->SetShape(tensor_desc.MutableShape());
  128. dst_tensor_desc->SetOriginShape(tensor_desc.GetOriginShape());
  129. (void) TensorUtils::SetSize(*dst_tensor_desc, tensor_size);
  130. }
  131. for (auto &p : shape_futures) {
  132. auto idx = p.first;
  133. auto &future = p.second;
  134. RECORD_SHAPE_INFERENCE_EVENT(&context, node_item.NodeName().c_str(), "[AwaitShape] [idx = %u] Start", idx);
  135. const GeTensorDesc* src_tensor_desc = nullptr;
  136. GE_CHK_STATUS_RET_NOLOG(future.GetTensorDesc(&src_tensor_desc));
  137. GE_CHECK_NOTNULL(src_tensor_desc);
  138. RECORD_SHAPE_INFERENCE_EVENT(&context, node_item.NodeName().c_str(), "[AwaitShape] [idx = %u] End", idx);
  139. auto input_desc = node_item.MutableInputDesc(idx);
  140. GE_CHECK_NOTNULL(input_desc);
  141. int64_t tensor_size = -1;
  142. (void) TensorUtils::GetSize(*src_tensor_desc, tensor_size);
  143. GELOGD("[%s] Update input shape [%u] with shape: [%s] and ori_shape: [%s], index = %zu",
  144. node_item.NodeName().c_str(),
  145. idx,
  146. src_tensor_desc->GetShape().ToString().c_str(),
  147. src_tensor_desc->GetOriginShape().ToString().c_str(),
  148. tensor_size);
  149. input_desc->SetShape(src_tensor_desc->GetShape());
  150. input_desc->SetOriginShape(src_tensor_desc->GetOriginShape());
  151. (void) TensorUtils::SetSize(*input_desc, tensor_size);
  152. }
  153. return SUCCESS;
  154. }
  155. const vector<GeTensorDesc> &ShapeInferenceState::GetOutputTensorDesc() const {
  156. return output_tensor_desc;
  157. }
  158. Status ShapeInferenceState::UpdateOutputDesc() {
  159. for (size_t i = 0; i < output_tensor_desc.size(); ++i) {
  160. auto src_tensor_desc = node_item.MutableOutputDesc(i);
  161. GE_CHECK_NOTNULL(src_tensor_desc);
  162. auto &dst_tensor_desc = output_tensor_desc[i];
  163. dst_tensor_desc.SetShape(src_tensor_desc->MutableShape());
  164. dst_tensor_desc.SetOriginShape(src_tensor_desc->GetOriginShape());
  165. int64_t tensor_size = -1;
  166. (void) TensorUtils::GetSize(*src_tensor_desc, tensor_size);
  167. (void) TensorUtils::SetSize(dst_tensor_desc, tensor_size);
  168. }
  169. return SUCCESS;
  170. }
  171. ShapeFuture::ShapeFuture(NodeState *src_node,
  172. uint32_t src_index,
  173. SubgraphContext *subgraph_context)
  174. : src_node_(src_node), src_index_(src_index), subgraph_context_(subgraph_context) {
  175. }
  176. NodeState::NodeState(const NodeItem &node_item, SubgraphContext *subgraph_context)
  177. : node_item_(&node_item), shape_inference_state_(node_item), subgraph_context_(subgraph_context) {
  178. this->op_desc_ = node_item.node->GetOpDesc();
  179. }
  180. Status NodeState::AwaitInputTensors(GraphExecutionContext &context) const {
  181. for (auto &src_node : node_item_->dependents_for_execution) {
  182. GELOGD("[%s] Start to wait for data dependent node: [%s]",
  183. node_item_->NodeName().c_str(),
  184. src_node->GetName().c_str());
  185. RECORD_EXECUTION_EVENT(&context,
  186. node_item_->NodeName().c_str(),
  187. "[AwaitNodeDone] [%s] Start",
  188. src_node->GetName().c_str());
  189. HYBRID_CHK_STATUS_RET(subgraph_context_->Await(src_node),
  190. "[%s] Await node [%s] failed.",
  191. GetName().c_str(),
  192. src_node->GetName().c_str());
  193. RECORD_EXECUTION_EVENT(&context,
  194. node_item_->NodeName().c_str(),
  195. "[AwaitNodeDone] [%s] End",
  196. src_node->GetName().c_str());
  197. GELOGD("[%s] Done waiting node.", src_node->GetName().c_str());
  198. }
  199. return SUCCESS;
  200. }
  201. Status NodeState::WaitForPrepareDone() {
  202. if (prepare_future_.valid()) {
  203. GELOGD("[%s] Start to wait for prepare future.", GetName().c_str());
  204. GE_CHK_STATUS_RET(prepare_future_.get(),
  205. "[%s] PreRun failed.", GetName().c_str());
  206. }
  207. return SUCCESS;
  208. }
  209. Status NodeState::UpdateOutputShapes(int index, const GeShape &shape, const GeShape &ori_shape) {
  210. auto self_tensor_desc = op_desc_->MutableOutputDesc(index);
  211. GE_CHECK_NOTNULL(self_tensor_desc);
  212. self_tensor_desc->SetShape(shape);
  213. self_tensor_desc->SetOriginShape(ori_shape);
  214. return SUCCESS;
  215. }
  216. void NodeState::SetTaskContext(std::shared_ptr<TaskContext> &task_context) {
  217. task_context_ = task_context;
  218. }
  219. std::shared_ptr<TaskContext> NodeState::GetTaskContext() {
  220. return task_context_;
  221. }
  222. Status ShapeFuture::Get(GeShape &ori_shape, GeShape &shape) {
  223. GELOGD("Start to wait node: %s for getting shape", src_node_->GetName().c_str());
  224. HYBRID_CHK_STATUS_RET(subgraph_context_->Await(src_node_->GetNodeItem()->node), "cancelled");
  225. auto &output_desc = src_node_->GetShapeInferenceState().GetOutputTensorDesc().at(src_index_);
  226. shape = output_desc.GetShape();
  227. ori_shape = output_desc.GetOriginShape();
  228. GELOGD("Get shape from %s:%u. shape = [%s]", src_node_->GetName().c_str(), src_index_, shape.ToString().c_str());
  229. return SUCCESS;
  230. }
  231. Status ShapeFuture::GetTensorDesc(const GeTensorDesc **tensor_desc) {
  232. GE_CHECK_NOTNULL(tensor_desc);
  233. GELOGD("Start to wait node: %s for getting shape", src_node_->GetName().c_str());
  234. HYBRID_CHK_STATUS_RET(subgraph_context_->Await(src_node_->GetNodeItem()->node), "cancelled");
  235. *tensor_desc = &src_node_->GetShapeInferenceState().GetOutputTensorDesc().at(src_index_);
  236. return SUCCESS;
  237. }
  238. } // namespace hybrid
  239. } // 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.