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gpu_session.cc 31 kB

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  1. /**
  2. * Copyright 2019-2021 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 "backend/session/gpu_session.h"
  17. #include <string>
  18. #include <utility>
  19. #include "backend/optimizer/common/helper.h"
  20. #include "backend/optimizer/common/optimizer.h"
  21. #include "backend/optimizer/common/pass_manager.h"
  22. #include "backend/optimizer/common/common_backend_optimization.h"
  23. #include "backend/optimizer/gpu/adam_weight_decay_fusion.h"
  24. #include "backend/optimizer/gpu/adam_fusion.h"
  25. #include "backend/optimizer/gpu/apply_momentum_weight_scale_fusion.h"
  26. #include "backend/optimizer/gpu/apply_momentum_scale_fusion.h"
  27. #include "backend/optimizer/gpu/apply_momentum_weight_fusion.h"
  28. #include "backend/optimizer/gpu/batch_norm_relu_fusion.h"
  29. #include "backend/optimizer/gpu/batch_norm_relu_grad_fusion.h"
  30. #include "backend/optimizer/gpu/batch_norm_add_relu_fusion.h"
  31. #include "backend/optimizer/gpu/post_batch_norm_add_relu_fusion.h"
  32. #include "backend/optimizer/gpu/batch_norm_add_relu_grad_fusion.h"
  33. #include "backend/optimizer/gpu/combine_momentum_fusion.h"
  34. #include "backend/optimizer/gpu/combine_cast_fusion.h"
  35. #include "backend/optimizer/gpu/cudnn_inplace_fusion.h"
  36. #include "backend/optimizer/gpu/insert_format_transform_op.h"
  37. #include "backend/optimizer/gpu/replace_momentum_cast_fusion.h"
  38. #include "backend/optimizer/gpu/replace_addn_fusion.h"
  39. #include "backend/optimizer/gpu/print_reduce_fusion.h"
  40. #include "backend/optimizer/gpu/bce_with_logits_loss_fusion.h"
  41. #include "backend/optimizer/gpu/remove_format_transform_pair.h"
  42. #include "backend/optimizer/gpu/remove_redundant_format_transform.h"
  43. #include "backend/optimizer/gpu/reduce_precision_fusion.h"
  44. #include "backend/optimizer/gpu/insert_cast_gpu.h"
  45. #include "backend/optimizer/gpu/relu_v2_pass.h"
  46. #include "backend/optimizer/gpu/add_relu_v2_fusion.h"
  47. #include "backend/optimizer/gpu/add_relu_grad_v2_fusion.h"
  48. #include "backend/optimizer/gpu/matmul_biasadd_fusion.h"
  49. #if ENABLE_GPU_INFER
  50. #include "backend/optimizer/trt_pass/graph_converter.h"
  51. #endif
  52. #include "backend/optimizer/graph_kernel/graph_kernel_optimization.h"
  53. #include "backend/optimizer/pass/communication_op_fusion.h"
  54. #include "backend/optimizer/gpu/concat_outputs_for_all_gather.h"
  55. #include "backend/optimizer/pass/getitem_tuple.h"
  56. #include "backend/optimizer/pass/optimize_updatestate.h"
  57. #include "common/trans.h"
  58. #include "debug/anf_ir_dump.h"
  59. #include "debug/data_dump/e2e_dump.h"
  60. #ifdef ENABLE_DEBUGGER
  61. #include "debug/debugger/proto_exporter.h"
  62. #else
  63. #include "debug/debugger/proto_exporter_stub.h"
  64. #endif
  65. #include "debug/data_dump/dump_json_parser.h"
  66. #include "debug/data_dump/dump_utils.h"
  67. #include "debug/tensor_load.h"
  68. #include "debug/dump_proto.h"
  69. #include "runtime/device/gpu/gpu_kernel_build.h"
  70. #include "runtime/device/gpu/gpu_kernel_runtime.h"
  71. #include "runtime/device/gpu/gpu_stream_assign.h"
  72. #include "runtime/device/gpu/kernel_info_setter.h"
  73. #include "runtime/device/kernel_runtime_manager.h"
  74. #include "runtime/device/gpu/cuda_driver.h"
  75. #include "runtime/device/gpu/distribution/collective_init.h"
  76. #include "runtime/device/gpu/gpu_bucket.h"
  77. #include "runtime/device/gpu/gpu_device_address.h"
  78. #include "utils/ms_utils.h"
  79. #include "utils/config_manager.h"
  80. #include "utils/ms_context.h"
  81. #include "utils/context/graph_kernel_flags.h"
  82. #include "utils/utils.h"
  83. #include "abstract/utils.h"
  84. #if ENABLE_CPU && ENABLE_GPU
  85. #include "ps/util.h"
  86. #include "ps/ps_cache/ps_cache_manager.h"
  87. #endif
  88. #ifdef ENABLE_DUMP_IR
  89. #include "debug/rdr/running_data_recorder.h"
  90. #endif
  91. namespace mindspore {
  92. namespace session {
  93. namespace gpu {
  94. using AnfAlgo = mindspore::session::AnfRuntimeAlgorithm;
  95. using CollectiveInitializer = device::gpu::CollectiveInitializer;
  96. using GetLocalRankId = device::gpu::GetLocalRankId;
  97. using InitNCCLComm = device::gpu::InitNCCLComm;
  98. void GPUSession::Init(uint32_t device_id) {
  99. const void *collective_handle_ = CollectiveInitializer::instance().collective_handle();
  100. bool collective_inited = CollectiveInitializer::instance().collective_inited();
  101. if (collective_inited && collective_handle_ != nullptr) {
  102. auto get_local_rank_funcptr =
  103. reinterpret_cast<GetLocalRankId>(dlsym(const_cast<void *>(collective_handle_), "local_rank_id"));
  104. MS_EXCEPTION_IF_NULL(get_local_rank_funcptr);
  105. device_id = IntToUint((*get_local_rank_funcptr)());
  106. }
  107. bool ret = device::gpu::CudaDriver::SetDevice(UintToInt(device_id));
  108. if (!ret) {
  109. MS_LOG(EXCEPTION) << "GPUSession failed to set current device id:" << device_id;
  110. }
  111. auto ms_context = MsContext::GetInstance();
  112. MS_EXCEPTION_IF_NULL(ms_context);
  113. ms_context->set_param<uint32_t>(MS_CTX_DEVICE_ID, device_id);
  114. if (collective_inited) {
  115. if (collective_handle_ != nullptr) {
  116. auto init_nccl_comm_funcptr =
  117. reinterpret_cast<InitNCCLComm>(dlsym(const_cast<void *>(collective_handle_), "InitNCCLComm"));
  118. MS_EXCEPTION_IF_NULL(init_nccl_comm_funcptr);
  119. (*init_nccl_comm_funcptr)();
  120. rank_id_ = GetRankId();
  121. }
  122. }
  123. auto &json_parser = DumpJsonParser::GetInstance();
  124. // Dump json config file if dump is enabled
  125. json_parser.CopyJsonToDir(rank_id_);
  126. json_parser.CopyMSCfgJsonToDir(rank_id_);
  127. MS_LOG(INFO) << "Set device id " << device_id << " for gpu session.";
  128. InitExecutor(kGPUDevice, device_id);
  129. }
  130. void GPUSession::SelectKernel(const std::shared_ptr<KernelGraph> &kernel_graph) const {
  131. MS_EXCEPTION_IF_NULL(kernel_graph);
  132. device::gpu::FormatTransformChecker::GetInstance().CheckSupportFormatTransform(kernel_graph);
  133. for (const auto &kernel_node : kernel_graph->execution_order()) {
  134. MS_EXCEPTION_IF_NULL(kernel_node);
  135. device::gpu::SetKernelInfo(kernel_node);
  136. }
  137. }
  138. void GPUSession::StartKernelRT() const {
  139. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  140. MS_EXCEPTION_IF_NULL(runtime_instance);
  141. if (!runtime_instance->Init()) {
  142. MS_LOG(EXCEPTION) << "GPU start kernel runtime failed";
  143. }
  144. }
  145. void GPUSession::Optimize(const std::shared_ptr<KernelGraph> &kernel_graph) {
  146. MS_EXCEPTION_IF_NULL(kernel_graph);
  147. auto optimizer = std::make_shared<opt::GraphOptimizer>();
  148. auto pm = std::make_shared<opt::PassManager>();
  149. #if ENABLE_GPU_INFER
  150. pm->AddPass(std::make_shared<opt::GraphConverter>());
  151. #endif
  152. pm->AddPass(std::make_shared<opt::MatMulBiasAddFusion>());
  153. pm->AddPass(std::make_shared<opt::AdamWeightDecayFusion>());
  154. pm->AddPass(std::make_shared<opt::AdamFusion>());
  155. pm->AddPass(std::make_shared<opt::ApplyMomentumWeightDecayScaleFusion>());
  156. pm->AddPass(std::make_shared<opt::ApplyMomentumScaleFusion>());
  157. pm->AddPass(std::make_shared<opt::ApplyMomentumWeightDecayFusion>());
  158. if (!context::GraphKernelFlags::GetInstance().IsEnableGraphKernel()) {
  159. pm->AddPass(std::make_shared<opt::CastAllFusion>("cast_all"));
  160. }
  161. pm->AddPass(std::make_shared<opt::CombineMomentumFusion>("combine_momentum"));
  162. pm->AddPass(std::make_shared<opt::ReplaceMomentumCastFusion>());
  163. pm->AddPass(std::make_shared<opt::ReplaceAddNFusion>());
  164. pm->AddPass(std::make_shared<opt::PrintReduceFusion>("print_reduce"));
  165. pm->AddPass(std::make_shared<opt::BCEWithLogitsLossFusion>());
  166. pm->AddPass(std::make_shared<opt::InsertCastGPU>("insert_cast_gpu"));
  167. optimizer->AddPassManager(pm);
  168. (void)optimizer->Optimize(kernel_graph);
  169. kernel_graph->SetExecOrderByDefault();
  170. }
  171. void GPUSession::HardwareOptimize(const std::shared_ptr<KernelGraph> &kernel_graph) {
  172. MS_EXCEPTION_IF_NULL(kernel_graph);
  173. auto optimizer = std::make_shared<opt::GraphOptimizer>();
  174. auto pm = std::make_shared<opt::PassManager>();
  175. pm->AddPass(std::make_shared<opt::BatchNormReluFusion>());
  176. pm->AddPass(std::make_shared<opt::BatchNormReluGradFusion>());
  177. pm->AddPass(std::make_shared<opt::BatchNormAddReluFusion>());
  178. pm->AddPass(std::make_shared<opt::PostBatchNormAddReluFusion>());
  179. pm->AddPass(std::make_shared<opt::BatchNormAddReluGradFusion>());
  180. pm->AddPass(std::make_shared<opt::InsertFormatTransformOp>());
  181. pm->AddPass(std::make_shared<opt::RemoveFormatTransformPair>());
  182. pm->AddPass(std::make_shared<opt::RemoveRedundantFormatTransform>());
  183. // Remove node only used by UpdateState, in order to ensure the correct execution sequence in CudnnInplaceAggregate.
  184. pm->AddPass(std::make_shared<opt::OptimizeUpdateState>());
  185. pm->AddPass(std::make_shared<opt::CudnnInplaceAggregate>());
  186. pm->AddPass(std::make_shared<opt::ReluV2Pass>());
  187. pm->AddPass(std::make_shared<opt::AddReluV2Fusion>());
  188. pm->AddPass(std::make_shared<opt::AddReluGradV2Fusion>());
  189. pm->AddPass(std::make_shared<opt::AllReduceFusion>());
  190. pm->AddPass(std::make_shared<opt::AllGatherFusion>());
  191. pm->AddPass(std::make_shared<opt::ConcatOutputsForAllGather>());
  192. pm->AddPass(std::make_shared<opt::GetitemTuple>());
  193. pm->AddPass(std::make_shared<opt::ReducePrecisionFusion>("reduce_precision"));
  194. optimizer->AddPassManager(pm);
  195. (void)optimizer->Optimize(kernel_graph);
  196. kernel_graph->SetExecOrderByDefault();
  197. }
  198. void GPUSession::RunOpOptimize(const std::shared_ptr<KernelGraph> &kernel_graph) {
  199. MS_EXCEPTION_IF_NULL(kernel_graph);
  200. auto optimizer = std::make_shared<opt::GraphOptimizer>();
  201. auto pm = std::make_shared<opt::PassManager>();
  202. pm->AddPass(std::make_shared<opt::BCEWithLogitsLossFusion>());
  203. pm->AddPass(std::make_shared<opt::InsertCastGPU>("insert_cast_gpu"));
  204. optimizer->AddPassManager(pm);
  205. (void)optimizer->Optimize(kernel_graph);
  206. kernel_graph->SetExecOrderByDefault();
  207. }
  208. void GPUSession::RunOpHardwareOptimize(const std::shared_ptr<KernelGraph> &kernel_graph) {
  209. MS_EXCEPTION_IF_NULL(kernel_graph);
  210. auto optimizer = std::make_shared<opt::GraphOptimizer>();
  211. auto pm = std::make_shared<opt::PassManager>();
  212. pm->AddPass(std::make_shared<opt::ReducePrecisionFusion>("reduce_precision"));
  213. optimizer->AddPassManager(pm);
  214. (void)optimizer->Optimize(kernel_graph);
  215. kernel_graph->SetExecOrderByDefault();
  216. }
  217. void GPUSession::GraphKernelOptimize(const std::shared_ptr<KernelGraph> &kernel_graph) {
  218. if (!context::GraphKernelFlags::GetInstance().IsEnableGraphKernel()) {
  219. return;
  220. }
  221. opt::GraphKernelOptimize(kernel_graph);
  222. kernel_graph->SetExecOrderByDefault();
  223. }
  224. void GPUSession::AssignStream(const std::shared_ptr<KernelGraph> &kernel_graph) {
  225. MS_EXCEPTION_IF_NULL(kernel_graph);
  226. device::gpu::AssignGpuStream(kernel_graph);
  227. }
  228. void GPUSession::BuildKernel(const std::shared_ptr<KernelGraph> &kernel_graph) const {
  229. auto kernels = kernel_graph->execution_order();
  230. device::gpu::CreateGPUKernel(kernels);
  231. }
  232. void GPUSession::AllocateMemory(KernelGraph *kernel_graph) const {
  233. MS_EXCEPTION_IF_NULL(kernel_graph);
  234. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  235. MS_EXCEPTION_IF_NULL(runtime_instance);
  236. runtime_instance->AssignMemory(kernel_graph);
  237. }
  238. void GPUSession::RunOpAllocateMemory(const std::vector<tensor::TensorPtr> &input_tensors,
  239. KernelGraph *kernel_graph) const {
  240. MS_EXCEPTION_IF_NULL(kernel_graph);
  241. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  242. MS_EXCEPTION_IF_NULL(runtime_instance);
  243. runtime_instance->RunOpAssignMemory(input_tensors, kernel_graph);
  244. }
  245. void GPUSession::RunOpGenKernelEvent(const KernelGraph *graph) const {
  246. MS_EXCEPTION_IF_NULL(graph);
  247. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  248. MS_EXCEPTION_IF_NULL(runtime_instance);
  249. runtime_instance->GenKernelEvents(graph);
  250. }
  251. void GPUSession::RunOpClearMemory(KernelGraph *kernel_graph) const {
  252. MS_EXCEPTION_IF_NULL(kernel_graph);
  253. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  254. MS_EXCEPTION_IF_NULL(runtime_instance);
  255. runtime_instance->RunOpClearMemory(kernel_graph);
  256. }
  257. namespace {
  258. constexpr auto kAssignInputSize = 3;
  259. constexpr auto kAssignUpdateIndex = 1;
  260. bool UpdatedByAssign(const KernelGraphPtr &kernel_graph, const AnfNodePtr &node) {
  261. MS_EXCEPTION_IF_NULL(kernel_graph);
  262. auto manager = kernel_graph->manager();
  263. if (manager == nullptr) {
  264. return false;
  265. }
  266. auto &node_users = manager->node_users();
  267. auto iter = node_users.find(node);
  268. if (iter == node_users.end()) {
  269. return false;
  270. }
  271. auto &users = iter->second;
  272. return std::any_of(users.begin(), users.end(), [](const std::pair<AnfNodePtr, int64_t> &user) {
  273. MS_EXCEPTION_IF_NULL(user.first);
  274. auto output_cnode = user.first->cast<CNodePtr>();
  275. return output_cnode != nullptr && IsPrimitiveCNode(output_cnode, prim::kPrimAssign) &&
  276. user.second == kAssignUpdateIndex && output_cnode->inputs().size() > kAssignInputSize;
  277. });
  278. }
  279. size_t UpdateGraphInputAbstract(const AnfNodePtr input_node, const tensor::TensorPtr tensor) {
  280. MS_EXCEPTION_IF_NULL(input_node);
  281. MS_EXCEPTION_IF_NULL(tensor);
  282. size_t size = LongToSize(tensor->data().nbytes());
  283. if (!input_node->isa<Parameter>()) {
  284. return size;
  285. }
  286. auto input_param = input_node->cast<ParameterPtr>();
  287. if (input_param != nullptr && input_param->has_dynamic_shape()) {
  288. auto tensor_shape = tensor->shape();
  289. std::vector<size_t> shape_tmp;
  290. (void)std::transform(tensor_shape.begin(), tensor_shape.end(), std::back_inserter(shape_tmp), IntToSize);
  291. AnfAlgo::SetOutputInferTypeAndShape({AnfAlgo::GetOutputInferDataType(input_node, 0)}, {shape_tmp},
  292. input_node.get());
  293. size = abstract::ShapeSize(shape_tmp) * abstract::TypeIdSize(tensor->data_type());
  294. }
  295. return size;
  296. }
  297. } // namespace
  298. void GPUSession::LoadInputData(const std::shared_ptr<KernelGraph> &kernel_graph,
  299. const std::vector<tensor::TensorPtr> &inputs_const) const {
  300. std::vector<tensor::TensorPtr> inputs(inputs_const);
  301. MS_EXCEPTION_IF_NULL(kernel_graph);
  302. auto &input_nodes = kernel_graph->input_nodes();
  303. auto ms_context = MsContext::GetInstance();
  304. MS_EXCEPTION_IF_NULL(ms_context);
  305. if (inputs.size() != input_nodes.size()) {
  306. MS_LOG(EXCEPTION) << "Tensor input:" << inputs.size() << " is not equal graph inputs:" << input_nodes.size();
  307. }
  308. for (size_t i = 0; i < inputs.size(); ++i) {
  309. auto tensor = inputs[i];
  310. MS_EXCEPTION_IF_NULL(tensor);
  311. auto input_node = input_nodes[i];
  312. MS_EXCEPTION_IF_NULL(input_node);
  313. if (input_node->isa<Parameter>() && AnfAlgo::OutputAddrExist(input_node, 0)) {
  314. #if ENABLE_CPU && ENABLE_GPU
  315. const std::string &param_name = input_node->fullname_with_scope();
  316. if (ps::ps_cache_instance.IsHashTable(param_name)) {
  317. continue;
  318. }
  319. #endif
  320. auto pk_node = input_node->cast<ParameterPtr>();
  321. auto device_address = AnfAlgo::GetMutableOutputAddr(pk_node, 0);
  322. MS_EXCEPTION_IF_NULL(device_address);
  323. auto tensor_address = std::dynamic_pointer_cast<device::DeviceAddress>(tensor->device_address());
  324. bool need_sync = false;
  325. if (ms_context->get_param<bool>(MS_CTX_ENABLE_PYNATIVE_INFER)) {
  326. if (tensor_address == nullptr || tensor_address != device_address) {
  327. need_sync = true;
  328. }
  329. } else if (tensor->NeedSyncHostToDevice() || tensor_address == nullptr) {
  330. need_sync = true;
  331. } else if (tensor_address != device_address) {
  332. if (tensor_address->DeviceType() == device_address->DeviceType()) {
  333. AnfAlgo::SetOutputAddr(tensor_address, 0, pk_node.get());
  334. } else {
  335. need_sync = true;
  336. }
  337. }
  338. if (need_sync) {
  339. if (AnfAlgo::IsParameterWeight(pk_node) || UpdatedByAssign(kernel_graph, input_node) ||
  340. ms_context->get_param<int>(MS_CTX_EXECUTION_MODE) == kPynativeMode) {
  341. tensor->set_device_address(device_address);
  342. }
  343. auto size = UpdateGraphInputAbstract(input_node, tensor);
  344. if (!device_address->SyncHostToDevice(trans::GetRuntimePaddingShape(pk_node, 0), size, tensor->data_type(),
  345. tensor->data_c())) {
  346. MS_LOG(EXCEPTION) << "SyncHostToDevice failed.";
  347. }
  348. if (kernel_graph->IsUpdatedParameter(pk_node)) {
  349. tensor->SetIsUpdateByDevice();
  350. }
  351. }
  352. }
  353. tensor->set_sync_status(kNoNeedSync);
  354. }
  355. }
  356. GraphId GPUSession::CompileGraphImpl(const AnfNodePtrList &lst, const AnfNodePtrList &outputs) {
  357. // Construct graph, if successfully, graph_sum_ + 1
  358. auto graph = ConstructKernelGraph(lst, outputs);
  359. MS_EXCEPTION_IF_NULL(graph);
  360. return CompileGraphImpl(graph);
  361. }
  362. GraphId GPUSession::CompileGraphImpl(NotNull<FuncGraphPtr> func_graph) {
  363. std::vector<KernelGraphPtr> all_graphs;
  364. auto root_graph = ConstructKernelGraph(func_graph, &all_graphs);
  365. MS_EXCEPTION_IF_NULL(root_graph);
  366. if (all_graphs.size() != 1) {
  367. MS_LOG(EXCEPTION) << "Gpu backend does not support multi-graph schedule, graph num is " << all_graphs.size();
  368. }
  369. // Insert maketuple graph output in case of multi-outputs.
  370. // The ConvertTupleOutputToMaketuple pass will insert TupleGetItem.
  371. AnfAlgo::InsertMakeTupleForOutput(NOT_NULL(root_graph));
  372. opt::BackendCommonOptimization(root_graph);
  373. return CompileGraphImpl(root_graph);
  374. }
  375. GraphId GPUSession::CompileGraphImpl(KernelGraphPtr graph) {
  376. MS_EXCEPTION_IF_NULL(graph);
  377. // Prepare ms context info for dump .pb graph
  378. auto context_ptr = MsContext::GetInstance();
  379. MS_EXCEPTION_IF_NULL(context_ptr);
  380. bool save_graphs = context_ptr->get_param<bool>(MS_CTX_SAVE_GRAPHS_FLAG);
  381. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  382. MS_EXCEPTION_IF_NULL(runtime_instance);
  383. auto &json_parser = DumpJsonParser::GetInstance();
  384. json_parser.Parse();
  385. // Dump .pb graph before graph optimization
  386. if (save_graphs) {
  387. DumpIRProto(graph, "before_opt_" + std::to_string(graph->graph_id()));
  388. }
  389. // Graph optimization irrelevant to device data format
  390. Optimize(graph);
  391. // Select kernel build info
  392. SelectKernel(graph);
  393. // Graph optimization relevant to device data format
  394. HardwareOptimize(graph);
  395. // Run final optimization
  396. FinalOptimize(graph);
  397. // Graph kernel fusion optimization
  398. GraphKernelOptimize(graph);
  399. // Start gpu kernel runtime
  400. StartKernelRT();
  401. #if ENABLE_CPU && ENABLE_GPU
  402. InitPsWorker(graph);
  403. #endif
  404. // Assign CUDA streams
  405. AssignStream(graph);
  406. // Dump .pb graph before remove nop nodes
  407. if (save_graphs) {
  408. DumpIRProto(graph, "before_removeNop_" + std::to_string(graph->graph_id()));
  409. }
  410. // Update Graph Dynamic Shape Attr.
  411. UpdateGraphDynamicShapeAttr(NOT_NULL(graph));
  412. graph->UpdateGraphDynamicAttr();
  413. const bool pynative_mode = context_ptr->get_param<int>(MS_CTX_EXECUTION_MODE) == kPynativeMode;
  414. // Hide NopOp from execution graph in graph mode
  415. if (!pynative_mode) {
  416. opt::HideNopNode(graph.get());
  417. }
  418. // Build kernel if node is cnode
  419. BuildKernel(graph);
  420. #ifdef ENABLE_DUMP_IR
  421. std::string name = "graph_build";
  422. DumpGraphParams dump_params = {true, static_cast<int>(kWholeStack)};
  423. (void)mindspore::RDR::RecordAnfGraph(SubModuleId::SM_SESSION, name, graph, dump_params, ".ir,.pb");
  424. auto &kernels = graph->execution_order();
  425. std::string exec_order_name = "graph_exec_order." + std::to_string(graph->graph_id());
  426. (void)mindspore::RDR::RecordGraphExecOrder(SubModuleId::SM_SESSION, exec_order_name, kernels);
  427. #endif
  428. // Get summary nodes.
  429. SetSummaryNodes(graph.get());
  430. // Dump .pb graph after graph optimization
  431. if (save_graphs) {
  432. DumpIRProto(graph, "after_opt_" + std::to_string(graph->graph_id()));
  433. }
  434. if (json_parser.e2e_dump_enabled()) {
  435. graph->set_root_graph_id(graph->graph_id());
  436. std::string final_graph = "trace_code_graph_" + std::to_string(graph->graph_id());
  437. std::string root_dir = json_parser.path() + "/rank_" + std::to_string(rank_id_);
  438. std::string target_dir = root_dir + "/graphs";
  439. std::string ir_file_path = target_dir + "/" + "ms_output_" + final_graph + ".ir";
  440. DumpIRProtoWithSrcInfo(graph, final_graph, target_dir, kDebugWholeStack);
  441. DumpIR("trace_code_graph", graph, true, kWholeStack, ir_file_path);
  442. DumpGraphExeOrder("ms_execution_order_graph_" + std::to_string(graph->graph_id()) + ".csv", root_dir,
  443. graph->execution_order());
  444. }
  445. // Set graph manager.
  446. MS_EXCEPTION_IF_NULL(context_);
  447. FuncGraphManagerPtr manager = MakeManager({graph});
  448. context_->AddManager(manager);
  449. if (manager) {
  450. manager->AddFuncGraph(graph);
  451. graph->set_manager(manager);
  452. }
  453. InitAllBucket(graph);
  454. // Alloc memory in graph mode, including static memory and dynamic memory
  455. if (!pynative_mode) {
  456. AllocateMemory(graph.get());
  457. }
  458. DumpGraph(graph);
  459. #ifdef ENABLE_DEBUGGER
  460. if (debugger_ && debugger_->DebuggerBackendEnabled()) {
  461. debugger_->LoadGraphs(graph);
  462. }
  463. #endif
  464. MS_LOG(INFO) << "CompileGraph graph_id: " << graph->graph_id();
  465. return graph->graph_id();
  466. }
  467. void GPUSession::PreExecuteGraph(const std::shared_ptr<KernelGraph> &kernel_graph,
  468. const std::vector<tensor::TensorPtr> &inputs, VectorRef *outputs) {
  469. if (debugger_) {
  470. debugger_->PreExecute(kernel_graph);
  471. }
  472. DumpSetup(kernel_graph);
  473. #if ENABLE_CPU && ENABLE_GPU
  474. // Initialize parameter server
  475. InitPSParamAndOptim(kernel_graph, inputs);
  476. #endif
  477. }
  478. void GPUSession::PostExecuteGraph(const std::shared_ptr<KernelGraph> &kernel_graph,
  479. const std::vector<tensor::TensorPtr> &inputs, VectorRef *outputs) {
  480. // Summary
  481. auto context_ptr = MsContext::GetInstance();
  482. MS_EXCEPTION_IF_NULL(context_ptr);
  483. if (context_ptr->get_param<bool>(MS_CTX_ENABLE_GPU_SUMMARY)) {
  484. Summary(kernel_graph.get());
  485. }
  486. if (debugger_ && debugger_->DebuggerBackendEnabled()) {
  487. debugger_->LoadParametersAndConst(kernel_graph);
  488. }
  489. // debug used for dump
  490. if (debugger_ && debugger_->CheckDebuggerDumpEnabled()) {
  491. Dump(kernel_graph);
  492. }
  493. if (debugger_) {
  494. debugger_->PostExecute();
  495. }
  496. }
  497. void GPUSession::ExecuteGraph(const std::shared_ptr<KernelGraph> &kernel_graph) {
  498. int kernel_num = kernel_graph->execution_order().size();
  499. int64_t loopsize = (kernel_num > 1) ? ConfigManager::GetInstance().gpu_loopsink_size() : 1;
  500. for (int64_t i = 0; i < loopsize; i++) {
  501. #if ENABLE_CPU && ENABLE_GPU
  502. std::string channel_name;
  503. if (ps::PsDataPrefetch::GetInstance().cache_enable() && IsGetNextGraph(kernel_graph, &channel_name)) {
  504. ps::ps_cache_instance.IncreaseGraphStep(channel_name);
  505. }
  506. #endif
  507. Execute(kernel_graph);
  508. }
  509. }
  510. void GPUSession::UpdateOutputTensors(const VectorRef *outputs,
  511. const std::map<tensor::TensorPtr, session::KernelWithIndex> &tensor_to_node) {
  512. MS_EXCEPTION_IF_NULL(outputs);
  513. for (const auto &item : *outputs) {
  514. if (utils::isa<VectorRefPtr>(item)) {
  515. const auto &vector_ref = utils::cast<VectorRef>(item);
  516. UpdateOutputTensors(&vector_ref, tensor_to_node);
  517. } else if (utils::isa<tensor::TensorPtr>(item)) {
  518. const auto &tensor = utils::cast<tensor::TensorPtr>(item);
  519. MS_EXCEPTION_IF_NULL(tensor);
  520. const auto &iter = tensor_to_node.find(tensor);
  521. if (iter != tensor_to_node.end()) {
  522. const auto &node = iter->second.first;
  523. const auto &output_index = iter->second.second;
  524. MS_EXCEPTION_IF_NULL(node);
  525. const auto &address = AnfAlgo::GetMutableOutputAddr(node, output_index);
  526. // The outputs may have the same tensor, so need skip when the tensor has been set to device address.
  527. if ((address == nullptr) || (address->GetPtr() == nullptr)) {
  528. continue;
  529. }
  530. tensor->set_device_address(address);
  531. // When the device address of graph cnode output is set in tensor, the graph output need be set new device
  532. // address, to avoid that the device address context of tensor be rewritten in the next step or next loop.
  533. // But one time memory application scenarios need to be skipped, because the memory is not allocated next step:
  534. // 1. Non cnode 2. Communication kernel.
  535. bool ps_mode = false;
  536. #if (ENABLE_CPU && !_WIN32)
  537. ps_mode = ps::PSContext::instance()->is_ps_mode();
  538. #endif
  539. if (node->isa<CNode>() && !AnfAlgo::IsCommunicationOp(node) && !ps_mode) {
  540. auto new_address = std::make_shared<device::gpu::GPUDeviceAddress>(nullptr, address->GetSize());
  541. AnfAlgo::SetOutputAddr(new_address, output_index, node.get());
  542. if (context::GraphKernelFlags::GetInstance().IsEnableGraphKernel()) {
  543. auto runtime_instance =
  544. device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  545. MS_EXCEPTION_IF_NULL(runtime_instance);
  546. auto gpu_runtime_instance = dynamic_cast<device::gpu::GPUKernelRuntime *>(runtime_instance);
  547. gpu_runtime_instance->SetAddrInvalid(address);
  548. }
  549. }
  550. if (AnfAlgo::IsDynamicShape(node)) {
  551. const auto &updated_shape = AnfAlgo::GetOutputInferShape(node, output_index);
  552. ShapeVector int_shape;
  553. std::transform(updated_shape.begin(), updated_shape.end(), std::back_inserter(int_shape), SizeToInt);
  554. tensor->set_shape(int_shape);
  555. }
  556. }
  557. if (tensor->NeedSyncDeviceToHostImmediately()) {
  558. tensor->data_sync(false);
  559. tensor->set_device_address(nullptr);
  560. tensor->set_sync_status(kNeedSyncHostToDevice);
  561. }
  562. }
  563. }
  564. }
  565. void GPUSession::Execute(const std::shared_ptr<KernelGraph> &kernel_graph) const {
  566. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  567. MS_EXCEPTION_IF_NULL(runtime_instance);
  568. if (!runtime_instance->Run(kernel_graph.get(), false)) {
  569. MS_LOG(EXCEPTION) << "GPU execute graph failed!";
  570. }
  571. }
  572. KernelGraphPtr GPUSession::BuildOpImpl(const OpRunInfo &op_run_info, const GraphInfo &graph_info,
  573. const std::vector<tensor::TensorPtr> &input_tensors,
  574. const std::vector<int64_t> &tensors_mask) {
  575. // Check if the graph cache exists.
  576. auto it = run_op_graphs_.find(graph_info);
  577. if (it != run_op_graphs_.end() && kOpCacheBlackList.find(op_run_info.op_name) == kOpCacheBlackList.end()) {
  578. return it->second;
  579. }
  580. // Prepare the graph
  581. const auto &kernel_graph = ConstructSingleOpGraph(op_run_info, input_tensors, tensors_mask);
  582. MS_EXCEPTION_IF_NULL(kernel_graph);
  583. RunOpOptimize(kernel_graph);
  584. SelectKernel(kernel_graph);
  585. RunOpHardwareOptimize(kernel_graph);
  586. StartKernelRT();
  587. RunOpHideNopNode(kernel_graph);
  588. BuildKernel(kernel_graph);
  589. auto enable_op_graph_cache = MsContext::GetInstance()->get_param<bool>(MS_CTX_ENABLE_PYNATIVE_OP_GRAPH_CACHE);
  590. if (enable_op_graph_cache) {
  591. run_op_graphs_[graph_info] = kernel_graph;
  592. }
  593. return kernel_graph;
  594. }
  595. void GPUSession::RunOpImplOrigin(const GraphInfo &graph_info, OpRunInfo *op_run_info,
  596. std::vector<tensor::TensorPtr> *input_tensors, VectorRef *outputs,
  597. const std::vector<int64_t> &tensors_mask) {
  598. RunOpImpl(graph_info, op_run_info, input_tensors, outputs, tensors_mask);
  599. }
  600. void GPUSession::RunOpImpl(const GraphInfo &graph_info, OpRunInfo *op_run_info,
  601. std::vector<tensor::TensorPtr> *input_tensors, VectorRef *outputs,
  602. const std::vector<int64_t> &tensors_mask) {
  603. MS_EXCEPTION_IF_NULL(input_tensors);
  604. MS_EXCEPTION_IF_NULL(op_run_info);
  605. const auto &kernel_graph = BuildOpImpl(*op_run_info, graph_info, *input_tensors, tensors_mask);
  606. EraseValueNodeTensor(tensors_mask, input_tensors);
  607. // wait for allreduce
  608. for (auto &tensor : *input_tensors) {
  609. MS_EXCEPTION_IF_NULL(tensor);
  610. if (tensor->NeedWaitDevice()) {
  611. tensor->WaitDevice();
  612. }
  613. }
  614. // run op
  615. MS_EXCEPTION_IF_NULL(kernel_graph);
  616. RunOpRemoveNopNode(kernel_graph);
  617. RunOpAllocateMemory(*input_tensors, kernel_graph.get());
  618. RunOpGenKernelEvent(kernel_graph.get());
  619. // Execute the computation
  620. LoadInputData(kernel_graph, *input_tensors);
  621. Execute(kernel_graph);
  622. // Fetch outputs
  623. std::map<tensor::TensorPtr, session::KernelWithIndex> tensor_to_node;
  624. UpdateOutputs(kernel_graph, outputs, *input_tensors, &tensor_to_node);
  625. // update output abstract of dynamic op to op_run_info
  626. if (op_run_info->is_dynamic_shape) {
  627. UpdateOutputAbstract(kernel_graph, op_run_info);
  628. }
  629. RunOpClearMemory(kernel_graph.get());
  630. if (kOpCacheBlackList.find(op_run_info->op_name) != kOpCacheBlackList.end()) {
  631. run_op_graphs_.erase(graph_info);
  632. }
  633. }
  634. void GPUSession::DumpSetup(const std::shared_ptr<KernelGraph> &kernel_graph) const {
  635. MS_LOG(INFO) << "Start!";
  636. MS_EXCEPTION_IF_NULL(kernel_graph);
  637. E2eDump::DumpSetup(kernel_graph.get(), rank_id_);
  638. MS_LOG(INFO) << "Finish!";
  639. }
  640. void GPUSession::Dump(const std::shared_ptr<KernelGraph> &kernel_graph) const {
  641. if (debugger_->DebuggerBackendEnabled()) {
  642. MS_EXCEPTION_IF_NULL(kernel_graph);
  643. E2eDump::DumpData(kernel_graph.get(), rank_id_, debugger_.get());
  644. } else {
  645. DumpJsonParser::GetInstance().UpdateDumpIter();
  646. }
  647. }
  648. bool GPUSession::DumpDataEnabledIteration() const {
  649. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  650. MS_EXCEPTION_IF_NULL(runtime_instance);
  651. return runtime_instance->DumpDataEnabledIteration();
  652. }
  653. void GPUSession::SyncStream() {
  654. auto runtime_instance = device::KernelRuntimeManager::Instance().GetSingleKernelRuntime(kGPUDevice, device_id_);
  655. MS_EXCEPTION_IF_NULL(runtime_instance);
  656. auto ret = runtime_instance->SyncStream();
  657. if (!ret) {
  658. MS_LOG(EXCEPTION) << "Sync stream error!";
  659. }
  660. }
  661. std::shared_ptr<device::Bucket> GPUSession::CreateBucket(uint32_t bucket_id, uint32_t bucket_size) {
  662. auto bucket = std::make_shared<device::gpu::GPUBucket>(bucket_id, bucket_size);
  663. auto kernel_runtime = device::KernelRuntimeManager::Instance().GetCurrentKernelRuntime();
  664. MS_EXCEPTION_IF_NULL(kernel_runtime);
  665. auto compute_stream = kernel_runtime->compute_stream();
  666. auto communication_stream = kernel_runtime->communication_stream();
  667. MS_EXCEPTION_IF_NULL(compute_stream);
  668. MS_EXCEPTION_IF_NULL(communication_stream);
  669. MS_EXCEPTION_IF_NULL(bucket);
  670. bucket->Init({compute_stream}, {communication_stream});
  671. return bucket;
  672. }
  673. } // namespace gpu
  674. } // namespace session
  675. } // namespace mindspore