/** * Copyright 2019 Huawei Technologies Co., Ltd * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ #include "session/ascend_session.h" #include #include "operator/ops.h" #include "ir/meta_tensor.h" #include "ir/anf.h" #include "common/trans.h" #include "device/kernel_runtime.h" #include "device/ascend/kernel_select_ascend.h" #include "device/ascend/kernel_build_ascend.h" #include "device/ascend/ascend_kernel_runtime.h" #include "device/ascend/ascend_device_address.h" #include "pre_activate/ascend/ascend_backend_optimization.h" #include "device/kernel_adjust.h" #include "device/ascend/ascend_stream_assign.h" #include "predict/predict.h" #include "session/anf_runtime_algorithm.h" #include "ir/scalar.h" #include "debug/anf_ir_dump.h" #include "debug/anf_ir_utils.h" #include "common/utils.h" #include "pre_activate/common/helper.h" #include "device/kernel_runtime_manager.h" #include "kernel/tbe/tbe_python_funcs.h" #include "utils/config_manager.h" namespace mindspore { namespace session { const size_t kInvalidIndex = SIZE_MAX; namespace { void DumpGraphExeOrder(const std::vector &execution_order) { MS_LOG(INFO) << "Dump execution_order size " << execution_order.size(); MS_LOG(INFO) << "[index][stream_label][graph_id][node string]"; int i = 0; for (auto &cnode : execution_order) { MS_EXCEPTION_IF_NULL(cnode); MS_LOG(INFO) << "[ " << i << "]" << "[" << AnfAlgo::GetStreamDistinctionLabel(cnode.get()) << "]" << "[" << AnfAlgo::GetGraphId(cnode.get()) << "]" << "[" << cnode->DebugString() << "]"; i++; } } void DumpGraphInputArgs(const VectorRef &args) { MS_LOG(INFO) << "Args size[%lu]" << args.size(); for (size_t i = 0; i < args.size(); i++) { if (utils::isa(args[i])) { auto anf = utils::cast(args[i]); MS_EXCEPTION_IF_NULL(anf); MS_LOG(INFO) << "Parameter arg" << i << " = [%s]" << anf->DebugString(); } else if (utils::isa(args[i])) { auto value = utils::cast(args[i]); MS_EXCEPTION_IF_NULL(value); MS_LOG(INFO) << "Tensor arg" << i << " = " << value->ToString(); } else { MS_LOG(INFO) << "Unknown arg" << i << " = " << args[i].ToString(); } } } void SetStreamDistinctionLabel(const KernelGraphPtr &graph, uint32_t label, bool is_override) { MS_EXCEPTION_IF_NULL(graph); for (auto &node : graph->execution_order()) { if (is_override || AnfAlgo::GetStreamDistinctionLabel(node.get()) == kInvalidDistincLabel) { MS_EXCEPTION_IF_NULL(node); AnfAlgo::SetStreamDistinctionLabel(label, node.get()); } } } GraphId GetDistinctionLabel(const KernelGraphPtr &graph) { MS_EXCEPTION_IF_NULL(graph); // if graph is empty,use graph id as distinction label if (graph->execution_order().empty()) { return graph->graph_id(); } // else use first node of execution order as label return AnfAlgo::GetStreamDistinctionLabel(graph->execution_order()[0].get()); } std::vector GetRealArgs(const KernelGraphPtr graph, const VectorRef &args) { MS_EXCEPTION_IF_NULL(graph); std::vector graph_inputs = graph->inputs(); auto valid_inputs = graph->ValidInputs(); size_t real_args_size = 0; std::vector real_args = {}; for (size_t i = 0; i < args.size(); i++) { if (utils::isa(args[i])) { auto tmp_args = AnfAlgo::GetAllOutput(utils::cast(args[i]), {prim::kPrimTupleGetItem}); for (auto &real_arg : tmp_args) { auto anf_node = utils::cast(real_arg); MS_EXCEPTION_IF_NULL(anf_node); auto abstract = anf_node->abstract(); MS_EXCEPTION_IF_NULL(abstract); // create multiple parameters if is a tuple output real kernel if (abstract->isa() && !AnfAlgo::CheckPrimitiveType(anf_node, prim::kPrimTupleGetItem)) { auto tuple_abstract = abstract->cast(); real_args_size += tuple_abstract->size(); continue; } real_args_size += 1; real_args.push_back(real_arg); } } else { real_args_size += 1; real_args.push_back(args[i]); } } if (graph_inputs.size() != valid_inputs.size()) { MS_LOG(EXCEPTION) << "graph_inputs.size(): " << graph_inputs.size() << ", valid_inputs.size(): " << valid_inputs.size() << " not equal"; } if (real_args_size != graph_inputs.size()) { for (size_t j = 0; j < valid_inputs.size(); j++) { if (valid_inputs[j]) { MS_LOG(INFO) << "index: " << j << ", nodes: " << graph_inputs[j]->DebugString(); } } MS_LOG(WARNING) << "real_args_size: " << real_args_size << ", graph_inputs.size(): " << graph_inputs.size() << " not equal"; } return real_args; } } // namespace GraphId AscendSession::CompileGraph(const AnfNodePtrList &lst, const AnfNodePtrList &outputs) { MS_LOG(INFO) << "start"; auto graph_id = graph_sum_; // construct graph, if successfully, graph_sum_ + 1 auto graph = ConstructKernelGraph(lst, outputs); MS_EXCEPTION_IF_NULL(graph); opt::AscendBackendIRFusionOptimization(graph); // select kernel build info SelectKernel(*graph); // convert kernel Graph to model predictmodel::StepConvertGraph(graph); // optimize graph HardwareOptimize(graph); // init runtime resource InitRuntimeResource(); // assign static memory of parameters auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); runtime_instance->AssignStaticMemoryInput(graph.get()); MS_LOG(INFO) << "Compile graph " << graph_id << " success"; return graph_id; } void AscendSession::BuildGraph(GraphId graph_id) { MS_LOG(INFO) << "start"; auto graph = GetGraph(graph_id); MS_EXCEPTION_IF_NULL(graph); // multiple graph handle if (graph_id == final_graph_id_) { if (!graph->executable()) { return; } // merge child graph MergeGraphExecOrder(); } else { // set the distinction label of single graph SetStreamDistinctionLabel(GetGraph(graph_id), graph_id, false); } // adjust execution order because merge child graph and other special operations AdjustKernel(graph); // Assign streams for control sink and hccl and so on AssignStream(graph); device::KernelAdjust::GetInstance().Profiling(NOT_NULL(graph.get())); // build kernel if node is cnode BuildKernel(graph); auto ms_context = MsContext::GetInstance(); MS_EXCEPTION_IF_NULL(ms_context); if (ms_context->precompile_only()) { MS_LOG(INFO) << "Precompile only, stop in build kernel step"; } else { // alloc memory, including static memory and dynamic memory MemoryAlloc(graph.get()); // generate task info for task sink mode GenerateTaskInfo(graph); // load task info to device if it is sink mode LoadTask(graph); } MS_LOG(INFO) << "end"; } void AscendSession::RunGraph(const GraphId &graph_id, const std::vector &inputs, VectorRef *const outputs) { MS_LOG(INFO) << "start"; auto kernel_graph = GetGraph(graph_id); MS_EXCEPTION_IF_NULL(kernel_graph); // if none of child graph and no anf output exists if (!kernel_graph->executable()) { MS_LOG(INFO) << "No child graph has anf output"; UpdateOutputs(kernel_graph, outputs, inputs); return; } // load input data from user input LoadInputData(kernel_graph, inputs); // convert inputs to model predictmodel::StepConvertWeight(inputs); { py::gil_scoped_release release; // run task on device ExecTask(kernel_graph); } // get result from device UpdateOutputs(kernel_graph, outputs, inputs); // summary Summary(kernel_graph.get()); // dump used for debug Dump(kernel_graph); MS_LOG(INFO) << "Finish!"; } void AscendSession::RunOpHardwareOptimize(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start"; // data layout optimization opt::RunOpAscendDataLayout(kernel_graph); // mixed precision optimization opt::AscendMixPrecision(kernel_graph); MS_LOG(INFO) << "Finish"; } void AscendSession::RunOpExecTask(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); bool ret_ok = runtime_instance->LaunchKernel(kernel_graph.get()); if (!ret_ok) { MS_LOG(EXCEPTION) << "run task error!"; } MS_LOG(INFO) << "Finish!"; } bool AscendSession::GraphCacheExist(const GraphInfo &graph_info) const { if (run_op_graphs_.find(graph_info) != run_op_graphs_.end()) { return true; } return false; } void AscendSession::BuildOp(const OpRunInfo &op_run_info, const GraphInfo &graph_info, const std::vector &input_tensors, const std::vector &tensors_mask) { MS_LOG(INFO) << "Build op " << op_run_info.op_name << " start !"; if (GraphCacheExist(graph_info)) { MS_LOG(INFO) << "Build op " << op_run_info.op_name << " finish !"; return; } // construct graph include one op auto graph = ConstructSingleOpGraph(op_run_info, input_tensors, tensors_mask); MS_EXCEPTION_IF_NULL(graph); opt::RunOpAscendBackendIRFusionOptimization(graph); // kernel select SelectKernel(*graph); // optimize RunOpHardwareOptimize(graph); // init runtime resource InitRuntimeResource(); // build kernel RunOpAdjustKernel(graph); BuildKernel(graph); run_op_graphs_[graph_info] = graph; MS_LOG(INFO) << "Build op " << op_run_info.op_name << " finish !"; } py::tuple AscendSession::RunOp(const OpRunInfo &op_run_info, const GraphInfo &graph_info, const std::vector &input_tensors) { auto graph = run_op_graphs_[graph_info]; MS_EXCEPTION_IF_NULL(graph); MS_LOG(INFO) << "Run op " << op_run_info.op_name << " start!"; // malloc mem RunOpMemoryAlloc(input_tensors, graph.get()); // load input data to device LoadInputData(graph, input_tensors); // run op RunOpExecTask(graph); // get output VectorRef outputs; UpdateOutputs(graph, &outputs, input_tensors); // trans output to tuple auto output_tensors = TransformBaseRefListToTuple(outputs); if (!utils::isa(output_tensors) || !py::isinstance(utils::cast(output_tensors).object_)) { MS_LOG(EXCEPTION) << "The output tensors should be a tuple !"; } py::object tuple_obj = utils::cast(output_tensors).object_; py::tuple tuple_tensors = py::cast(tuple_obj); MS_LOG(INFO) << "Run op " << op_run_info.op_name << " finish!"; return tuple_tensors; } // compile graph steps void AscendSession::SelectKernel(const KernelGraph &kernel_graph) const { MS_LOG(INFO) << "Start!"; for (const auto &cnode : kernel_graph.execution_order()) { device::ascend::SelectKernelInfo(cnode); MS_LOG(INFO) << "Select ApplyKernel: " << cnode->DebugString(); } MS_LOG(INFO) << "Finish!"; } void AscendSession::InitRuntimeResource() { MS_LOG(INFO) << "Start!"; auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); if (!runtime_instance->Init()) { MS_LOG(EXCEPTION) << "Kernel runtime init error."; } MS_LOG(INFO) << "Finish!"; } void AscendSession::HardwareOptimize(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "HardwareOptimize start!"; opt::AscendBackendOptimization(kernel_graph); MS_EXCEPTION_IF_NULL(kernel_graph); kernel_graph->SetExecOrderByDefault(); MS_LOG(INFO) << "HardwareOptimize Finish!"; } void AscendSession::AdjustKernel(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; device::KernelAdjust::GetInstance().Reorder(kernel_graph); opt::HideNopNode(kernel_graph.get()); // Insert CLearZero op // prepare for next step from json get atomic info BuildKernel(kernel_graph); device::ascend::KernelBuildPreprocess(kernel_graph.get()); device::KernelAdjust::GetInstance().InsertSwitchLoop(kernel_graph); auto context_ptr = MsContext::GetInstance(); MS_EXCEPTION_IF_NULL(context_ptr); bool save_graphs = context_ptr->save_graphs_flag(); auto save_graphs_path = context_ptr->save_graphs_path(); if (save_graphs_path.empty()) { save_graphs_path = "."; } if (save_graphs) { std::string file_path = save_graphs_path + "/" + "after_adjust_kernel.ir"; DumpIR(file_path, kernel_graph); } MS_LOG(INFO) << "Finish!"; } void AscendSession::RunOpAdjustKernel(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; opt::HideNopNode(kernel_graph.get()); // Insert CLearZero op // prepare for next step from json get atomic info BuildKernel(kernel_graph); device::ascend::KernelBuildPreprocess(kernel_graph.get()); MS_LOG(INFO) << "Finish!"; } void AscendSession::AssignStream(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; device::ascend::AscendStreamAssign::GetInstance().AssignStreamNew(kernel_graph); MS_LOG(INFO) << "Finish!"; } void AscendSession::BuildKernel(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; struct timeval start_time, end_time; (void)gettimeofday(&start_time, nullptr); auto ret = device::ascend::KernelBuild(kernel_graph.get()); if (!ret) { MS_LOG(EXCEPTION) << "Kernel build error."; } (void)gettimeofday(&end_time, nullptr); const uint64_t kUSecondInSecond = 1000000; uint64_t cost = kUSecondInSecond * static_cast(end_time.tv_sec - start_time.tv_sec); cost += static_cast(end_time.tv_usec - start_time.tv_usec); MS_LOG(INFO) << "KernelBuild run in " << PRIu64 << " us " << cost; MS_LOG(INFO) << "Finish!"; } void AscendSession::MemoryAlloc(KernelGraph *kernel_graph) const { MS_LOG(INFO) << "Start!"; MS_EXCEPTION_IF_NULL(kernel_graph); opt::RemoveNopNode(kernel_graph); auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); runtime_instance->AssignMemory(kernel_graph); MS_LOG(INFO) << "Finish!"; } void AscendSession::RunOpMemoryAlloc(const std::vector &input_tensors, KernelGraph *kernel_graph) const { MS_LOG(INFO) << "Start memory alloc!"; MS_EXCEPTION_IF_NULL(kernel_graph); opt::RemoveNopNode(kernel_graph); auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); runtime_instance->RunOpAssignMemory(input_tensors, kernel_graph); MS_LOG(INFO) << "Finish!"; } void AscendSession::GenerateTaskInfo(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; (void)device::KernelAdjust::GetInstance().StepLoadCtrlInputs(context_, kernel_graph); auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); bool ret_ok = runtime_instance->GenTask(kernel_graph.get()); if (!ret_ok) { MS_LOG(EXCEPTION) << "Generate task error!"; } MS_LOG(INFO) << "Finish!"; } void AscendSession::LoadTask(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); bool ret_ok = runtime_instance->LoadTask(kernel_graph.get()); if (!ret_ok) { MS_LOG(EXCEPTION) << "Load task error!"; } MS_LOG(INFO) << "Finish!"; } void AscendSession::ExecTask(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); bool ret_ok = runtime_instance->Run(kernel_graph.get()); if (!ret_ok) { MS_LOG(EXCEPTION) << "run task error!"; } MS_LOG(INFO) << "Finish!"; } void AscendSession::Dump(const std::shared_ptr &kernel_graph) const { MS_LOG(INFO) << "Start!"; MS_EXCEPTION_IF_NULL(kernel_graph); auto runtime_instance = device::KernelRuntimeManager::Instance().GetKernelRuntime(kAscendDevice, device_id_); MS_EXCEPTION_IF_NULL(runtime_instance); (void)runtime_instance->DumpData(kernel_graph.get()); MS_LOG(INFO) << "Finish!"; } GraphId AscendSession::SetFinalGraphInput(const std::vector &args) { MS_LOG(INFO) << "Start! Args size " << args.size(); auto final_graph = std::make_shared(); final_graph_id_ = graph_sum_++; graphs_[final_graph_id_] = final_graph; final_graph->set_graph_id(final_graph_id_); MS_LOG(INFO) << "Create a new final graph" << final_graph_id_ << "success"; // init private variables and bind them with final_graph_id graph_execute_orders_[final_graph_id_] = std::vector(); graph_order_types_[final_graph_id_] = std::vector(); for (const auto ¶meter : args) { MS_EXCEPTION_IF_NULL(parameter); if (!parameter->isa()) { MS_LOG(EXCEPTION) << parameter->DebugString() << " is not a parameter type!"; } AnfNodePtr parameter_backend = nullptr; // if function return UINT_MAX,the parameter is not exist in child graph auto parameter_belong_graph_id = GetGraphIdByNode(parameter); if (parameter_belong_graph_id == kInvalidGraphId) { parameter_backend = final_graph->NewParameter(parameter->cast()); final_graph->FrontBackendlMapAdd(parameter, parameter_backend); MS_LOG(INFO) << "New parameter" << parameter->DebugString() << "in final_graph"; } else { // parametr is a parameter of child graph auto graph = GetGraph(parameter_belong_graph_id); MS_EXCEPTION_IF_NULL(graph); MS_LOG(INFO) << "Reuse parameter [" << parameter->DebugString() << "] of child graph [" << parameter_belong_graph_id << "]"; parameter_backend = graph->GetBackendAnfByFrontAnf(parameter); } MS_EXCEPTION_IF_NULL(parameter_backend); MS_LOG(INFO) << "parameter backend " << parameter_backend->DebugString() << " belong_graph_id " << AnfAlgo::GetGraphId(parameter_backend.get()); // add parameter in backend to final graph inputs auto final_graph_inputs = final_graph->MutableInputs(); MS_EXCEPTION_IF_NULL(final_graph_inputs); final_graph_inputs->push_back(parameter_backend); } MS_LOG(INFO) << "End final_graph_id " << final_graph_id_; return final_graph_id_; } void AscendSession::SetFinalGraphOutput(const BaseRef &output) { auto final_graph = GetGraph(final_graph_id_); MS_EXCEPTION_IF_NULL(final_graph); if (!utils::isa(output)) { if (!utils::isa(output)) { MS_LOG(EXCEPTION) << "Unknown output type:" << output.ToString(); } auto value_ptr = utils::cast(output); auto value_node = NewValueNode(value_ptr); MS_EXCEPTION_IF_NULL(value_node); auto kernel_info = std::make_shared(); value_node->set_kernel_info(kernel_info); value_node->set_abstract(abstract::FromValue(value_ptr)); final_graph->set_output(final_graph->NewCNode({NewValueNode(prim::kPrimMakeTuple), value_node})); final_graph->set_executable(false); MS_LOG(INFO) << "Not anf output[" << output.ToString() << "]"; return; } // get the backend anf node related to the output node of front auto output_anf_node = utils::cast(output); auto output_from_graph_id = GetGraphIdByNode(output_anf_node); auto output_from_graph = GetGraph(output_from_graph_id); MS_EXCEPTION_IF_NULL(output_anf_node); MS_LOG(INFO) << "Set the output[" << output_anf_node->DebugString() << "] of graph[" << output_from_graph_id << "] to final graph"; MS_EXCEPTION_IF_NULL(output_from_graph); // if output is from final graph,it remarks no child graph exist if (final_graph_id_ == output_from_graph_id) { MS_LOG(INFO) << "No child graph,output is " << output_anf_node->DebugString(); final_graph->set_output(ConstructOutput({output_anf_node}, final_graph)); final_graph->set_executable(false); return; } final_graph->set_output(output_from_graph->output()); } KernelGraphPtr AscendSession::GetGraph(mindspore::GraphId graph_id) { auto it = graphs_.find(graph_id); if (it == graphs_.end()) { MS_LOG(WARNING) << "Can't find graph " << graph_id; return nullptr; } return it->second; } void AscendSession::InsertSwitchToGraph(GraphId condition_graph_id, GraphId true_graph_id) { MS_LOG(INFO) << "Start!"; MS_LOG(INFO) << "Condition graph id[" << condition_graph_id << "],true graph id[" << true_graph_id << "]"; auto condition_graph = GetGraph(condition_graph_id); MS_EXCEPTION_IF_NULL(condition_graph); tensor::TensorPtr tensor = std::make_shared(kNumberTypeInt32, std::vector{1}); int32_t *val = nullptr; val = static_cast(tensor->data_c(true)); MS_EXCEPTION_IF_NULL(val); *val = 0; auto value_node = std::make_shared(tensor); value_node->set_abstract(abstract::FromValue(tensor, false)); auto counter_const = condition_graph->NewValueNode(value_node); condition_graph->AddValueNodeToGraph(counter_const); // create a new switch op auto switch_primitive = std::make_shared("StreamSwitch"); auto kernel_build_info_builder = std::make_shared(); kernel_build_info_builder->SetOutputsFormat(std::vector{kOpFormat_DEFAULT}); kernel_build_info_builder->SetOutputsDeviceType(std::vector{kNumberTypeInt32}); kernel_build_info_builder->SetFusionType(kernel::FusionType::OPAQUE); kernel_build_info_builder->SetProcessor(kernel::Processor::AICORE); kernel_build_info_builder->SetKernelType(KernelType::RT_KERNEL); auto cond_output_it = condition_output_.find(condition_graph_id); if (cond_output_it == condition_output_.end()) { MS_LOG(EXCEPTION) << "Can't find condition graph" << condition_graph_id; } auto cond_output_kernel = AnfAlgo::VisitKernel(condition_graph->GetBackendAnfByFrontAnf(cond_output_it->second), 0).first; MS_EXCEPTION_IF_NULL(cond_output_kernel); std::vector inputs = {NewValueNode(switch_primitive), cond_output_kernel, counter_const}; CNodePtr switch_node = condition_graph->NewCNode(inputs); AnfAlgo::SetSelectKernelBuildInfo(kernel_build_info_builder->Build(), switch_node.get()); MS_EXCEPTION_IF_NULL(switch_node); switch_node->set_abstract(std::make_shared()); AnfAlgo::SetGraphId(condition_graph_id, switch_node.get()); AnfAlgo::SetStreamDistinctionLabel(GetDistinctionLabel(GetGraph(condition_graph_id)), switch_node.get()); // set attr: cond_ RT_GREATER AnfAlgo::SetNodeAttr(kAttrSwitchCondition, MakeValue(static_cast(RT_GREATER)), switch_node); // set attr:data_type AnfAlgo::SetNodeAttr(kAttrDataType, MakeValue(static_cast(RT_SWITCH_INT64)), switch_node); // set attr:true branch graph id ,which is same to stream distinction label AnfAlgo::SetNodeAttr(kAttrTrueBranchStream, MakeValue(true_graph_id), switch_node); // append switch at the end of condition graph std::vector exec_order = condition_graph->execution_order(); exec_order.push_back(switch_node); condition_graph->set_execution_order(exec_order); MS_LOG(INFO) << "Finish!"; } void AscendSession::CopyOutputOfIf(GraphId false_graph_id) { auto &graph_execute_order = GetGraphOrder(final_graph_id_); auto &graph_order_type = GetGraphOrderType(final_graph_id_); auto false_index = ExecOrderOfChildGraph(final_graph_id_, false_graph_id); if (false_index == kInvalidIndex || false_index == 0) { return; } for (int i = SizeToInt(false_index) - 1; i >= 0; i--) { size_t graph_index = IntToSize(i); if (graph_index >= graph_execute_order.size()) { MS_LOG(EXCEPTION) << "Graph index[" << graph_index << "] out of range[" << graph_execute_order.size() << "]"; } if (graph_order_type[graph_index] == COMMON_GRAPH) { auto true_last_id = graph_execute_order[graph_index]; MS_LOG(INFO) << "The last graph of if true branch is " << true_last_id; auto true_last = GetGraph(true_last_id); auto final_graph = GetGraph(final_graph_id_); MS_EXCEPTION_IF_NULL(final_graph); auto false_last_id = AnfAlgo::GetGraphId(final_graph->output().get()); auto false_last = GetGraph(false_last_id); MS_EXCEPTION_IF_NULL(true_last); MS_EXCEPTION_IF_NULL(false_last); MS_LOG(INFO) << "The last graph of false branch is " << false_last_id; // now only consider the single output InsertMultipleAssignToGraph(true_last_id, true_last->output(), false_last->output()); // insert stream active for loop sink auto context_ptr = MsContext::GetInstance(); MS_EXCEPTION_IF_NULL(context_ptr); if (context_ptr->enable_task_sink() && context_ptr->loop_sink_flag() && ConfigManager::GetInstance().iter_num() > 1) { // insert active in true graph, another active will be inserted in kernel adjust InsertStreamActiveToGraph(true_last_id, kSecondStreamSwitchLabel); } break; } } } void AscendSession::SwitchCompile(GraphId cond_graph_id, GraphId true_graph_id, GraphId false_graph_id, const AnfNodePtr &output) { if (switches_.find(cond_graph_id) != switches_.end()) { MS_LOG(WARNING) << "Condition graph" << cond_graph_id << " has been set before "; return; } switches_[cond_graph_id] = std::pair(true_graph_id, false_graph_id); condition_output_[cond_graph_id] = output; MS_LOG(INFO) << "New switch compile " << cond_graph_id << " " << true_graph_id << " " << false_graph_id; // set the type of condition graph auto cond_graph_index = ExecOrderOfChildGraph(final_graph_id_, cond_graph_id); auto &graph_order_type = GetGraphOrderType(final_graph_id_); if (cond_graph_index >= graph_order_type.size()) { MS_LOG(EXCEPTION) << "cond_graph_index " << cond_graph_index << " out of range " << graph_order_types_.size(); } graph_order_type[cond_graph_index] = CONDITION_GRAPH; // update distinction label of false graph,update before merge to sure the distinction if (false_graph_id != kInvalidGraphId) { // false graph and condition in graph same stream auto condition_graph = GetGraph(cond_graph_id); SetStreamDistinctionLabel(GetGraph(false_graph_id), GetDistinctionLabel(condition_graph), true); // if false graph is a condition graph and has been switch compiled before,it's false should be updated again auto cond_it = switches_.find(false_graph_id); while (cond_it != switches_.end() && cond_it->second.second != kInvalidGraphId) { cond_graph_id = cond_it->first; false_graph_id = cond_it->second.second; condition_graph = GetGraph(cond_graph_id); SetStreamDistinctionLabel(GetGraph(false_graph_id), GetDistinctionLabel(condition_graph), true); cond_it = switches_.find(false_graph_id); } } } // namespace session void AscendSession::MergeSwitchCompile() { auto graph_execute_order = GetGraphOrder(final_graph_id_); auto &graph_order_type = GetGraphOrderType(final_graph_id_); for (auto switch_compile : switches_) { auto cond_graph_id = switch_compile.first; auto true_graph_id = switch_compile.second.first; auto false_graph_id = switch_compile.second.second; MS_LOG(INFO) << "Switch compile: " << cond_graph_id << " " << true_graph_id << " " << false_graph_id; auto condition_graph = GetGraph(cond_graph_id); auto final_graph = GetGraph(final_graph_id_); MS_EXCEPTION_IF_NULL(condition_graph); MS_EXCEPTION_IF_NULL(final_graph); // insert switch to condition graph InsertSwitchToGraph(cond_graph_id, true_graph_id); auto cond_graph_index = ExecOrderOfChildGraph(final_graph_id_, cond_graph_id); auto prev_graph_id = kInvalidGraphId; // if condition graph is the first graph and final graph has assign op,then the final graph is the common graph if (cond_graph_index == 0 && !final_graph->execution_order().empty()) { prev_graph_id = final_graph_id_; // set the distinction label of final graph SetStreamDistinctionLabel(final_graph, final_graph_id_, true); // if condition graph is not the first graph } else if ((cond_graph_index - 1 < graph_execute_order.size()) && (graph_order_type[cond_graph_index - 1] == COMMON_GRAPH)) { prev_graph_id = graph_execute_order[cond_graph_index - 1]; } // insert stream active to common graph if (prev_graph_id != kInvalidGraphId) { InsertStreamActiveToGraph(prev_graph_id, GetDistinctionLabel(condition_graph)); } // if this is a 'if' condition auto it = while_condition_graphs_.find(cond_graph_id); if (it == while_condition_graphs_.end()) { CopyOutputOfIf(false_graph_id); } else { // if it is a while,insert a stream active to true graph GraphId from_graph = it->second; InsertStreamActiveToGraph(from_graph, GetDistinctionLabel(condition_graph)); } } MS_LOG(INFO) << "Finish!"; } // insert active to graph void AscendSession::SetActive(GraphId from, GraphId to) { if (while_condition_graphs_.find(to) != while_condition_graphs_.end()) { MS_LOG(WARNING) << " to " << to << " has been exits in map,from " << from << ",exist from " << while_condition_graphs_[to]; return; } MS_LOG(INFO) << "From " << from << " to " << to; auto &graph_order = GetGraphOrder(final_graph_id_); auto &graph_type = GetGraphOrderType(final_graph_id_); std::vector graph_order_new; std::vector graph_type_new; for (size_t i = 0; i < graph_order.size(); i++) { auto graph_id = graph_order[i]; graph_order_new.push_back(graph_id); graph_type_new.push_back(graph_type[i]); if (from == graph_id) { graph_order_new.push_back(kInvalidGraphId); graph_type_new.push_back(BRANCH_END); } } graph_order = graph_order_new; graph_type = graph_type_new; // set the graph type of condition graph graph_type[ExecOrderOfChildGraph(final_graph_id_, to)] = CONDITION_GRAPH; // record the condition graph into while condition set while_condition_graphs_[to] = from; } void AscendSession::SetChildGraphParameter(const AnfNodePtr &front_anf, const AnfNodePtr &backend_parameter) { MS_LOG(INFO) << "Start!"; MS_EXCEPTION_IF_NULL(backend_parameter); MS_EXCEPTION_IF_NULL(front_anf); if (!backend_parameter->isa()) { MS_LOG(EXCEPTION) << "Backend parameter's type is not a parameter,but is " << backend_parameter->ToString(); } auto from_graph_id = GetGraphIdByNode(front_anf); auto from_graph = GetGraph(from_graph_id); MS_EXCEPTION_IF_NULL(from_graph); auto to_graph_id = AnfAlgo::GetGraphId(backend_parameter.get()); auto to_graph = GetGraph(to_graph_id); auto backend_arg = from_graph->GetBackendAnfByFrontAnf(front_anf); MS_EXCEPTION_IF_NULL(to_graph); MS_LOG(INFO) << "Set node[" << front_anf->DebugString() << "] of graph[" << from_graph_id << "]to node[" << backend_parameter->DebugString() << "] of graph[" << AnfAlgo::GetGraphId(backend_parameter.get()) << "]"; // a node should not assign to itself if (backend_arg.get() == backend_parameter.get()) { return; } // if arg is the the parameter of child graph,it is parameter of final graph too if (front_anf->isa()) { MS_EXCEPTION_IF_NULL(backend_arg); if (!AnfAlgo::OutputAddrExist(backend_arg, 0)) { // set parameter's addr in child graph to parameter in final graph AnfAlgo::SetOutputAddr(AnfAlgo::GetMutableOutputAddr(backend_parameter, 0), 0, backend_arg.get()); MS_LOG(INFO) << "Assign mem of node" << backend_parameter->DebugString() << " of graph " << AnfAlgo::GetGraphId(backend_parameter.get()) << " to node" << backend_arg->DebugString() << "of graph " << AnfAlgo::GetGraphId(backend_arg.get()); return; } // if a parameter is a weight and not linked to any executable node,device type will be kTypeUnknown,set it's device // type same to arg if (AnfAlgo::GetOutputDeviceDataType(backend_parameter, 0) == kTypeUnknown) { AnfAlgo::SetSelectKernelBuildInfo(AnfAlgo::GetSelectKernelBuildInfo(backend_arg), backend_parameter.get()); } // if front anf is a parameter,we can assign the value back,because backend_parameter won't be change in it's graph // unless it's a weight.If backend_parameter is a weight,we should assign the value back. AnfAlgo::SetOutputAddr(AnfAlgo::GetMutableOutputAddr(backend_arg, 0), 0, backend_parameter.get()); return; } InsertAssignToGraph(from_graph_id, backend_arg, backend_parameter); MS_LOG(INFO) << "Finish!"; } void AscendSession::SetChildGraphParameter(const tensor::TensorPtr &front_tensor, const AnfNodePtr &backend_parameter) { MS_LOG(INFO) << "Start!"; // sync data from host to device MS_EXCEPTION_IF_NULL(front_tensor); size_t tensor_size = front_tensor->data().nbytes(); auto addr = AnfAlgo::GetOutputAddr(backend_parameter, 0); MS_EXCEPTION_IF_NULL(addr); if (!addr->SyncHostToDevice(trans::GetRuntimePaddingShape(backend_parameter, 0), tensor_size, front_tensor->data_type(), front_tensor->data_c(false))) { MS_LOG(EXCEPTION) << "Tensor SyncHostToDevice fail!"; } MS_LOG(INFO) << "Finish!"; } void AscendSession::UpdateGraphOrder(GraphId to_graph_id) { MS_LOG(INFO) << "to_graph_id " << to_graph_id; auto &graph_order = GetGraphOrder(final_graph_id_); auto &graph_type = GetGraphOrderType(final_graph_id_); for (size_t i = 0; i < graph_order.size(); i++) { if (graph_order[i] == to_graph_id) { return; } } // if graph is not in graph order,add it to graph order SetStreamDistinctionLabel(GetGraph(to_graph_id), to_graph_id, false); graph_order.push_back(to_graph_id); graph_type.push_back(COMMON_GRAPH); for (size_t i = 0; i < graph_order.size(); i++) { MS_LOG(INFO) << "Index " << i << ",graph_id " << graph_order[i] << ",graph_type" << graph_type[i]; } } size_t AscendSession::SetChildGraphInput(const KernelGraphPtr &graph, const AnfNodePtr &node, size_t input_index) { auto output_num = AnfAlgo::GetOutputTensorNum(node); if (output_num > 1 && !AnfAlgo::CheckPrimitiveType(node, prim::kPrimTupleGetItem)) { return input_index + output_num; } auto &graph_inputs = graph->inputs(); auto &valid_inputs = graph->ValidInputs(); if (valid_inputs[input_index]) { SetChildGraphParameter(node, graph_inputs[input_index]); } else { MS_LOG(DEBUG) << "Invalid input arg: " << node->DebugString(); } return ++input_index; } size_t AscendSession::SetChildGraphInput(const KernelGraphPtr &graph, const ValuePtr &value, size_t input_index) { MS_EXCEPTION_IF_NULL(value); if (!value->isa()) { MS_LOG(EXCEPTION) << "Value Node should be a tensor, unexpected value: " << value->ToString(); } auto &graph_inputs = graph->inputs(); SetChildGraphParameter(value->cast(), graph_inputs[input_index]); return ++input_index; } size_t AscendSession::SetChildGraphInput(const KernelGraphPtr &graph, const VectorRef &vec_args, size_t input_index) { auto index = input_index; for (auto &arg : vec_args) { if (utils::isa(arg)) { // arg is a anf node auto node = utils::cast(arg); index = SetChildGraphInput(graph, node, input_index); } else if (utils::isa(arg)) { // arg is a tensor auto value = utils::cast(arg); index = SetChildGraphInput(graph, value, input_index); } else { MS_LOG(EXCEPTION) << "Unexpected arg type " << arg.ToString(); } } return index; } void AscendSession::SetChildGraphInput(GraphId g, const VectorRef &args) { MS_LOG(INFO) << "Set input of graph " << g; auto to_graph = GetGraph(g); MS_EXCEPTION_IF_NULL(to_graph); DumpGraphInputArgs(args); UpdateGraphOrder(g); auto &graph_inputs = to_graph->inputs(); auto real_args = GetRealArgs(to_graph, args); size_t input_index = 0; for (size_t i = 0; i < real_args.size(); i++) { if (input_index >= graph_inputs.size()) { MS_LOG(EXCEPTION) << "input_index " << input_index << " out of range size " << graph_inputs.size(); } auto &real_arg = real_args[i]; if (utils::isa(real_arg)) { // arg is a anf node auto node = utils::cast(real_arg); input_index = SetChildGraphInput(to_graph, node, input_index); } else if (utils::isa(real_arg)) { // arg is a tensor auto value = utils::cast(real_arg); input_index = SetChildGraphInput(to_graph, value, input_index); } else if (utils::isa(real_arg)) { // arg is a VectorRef auto vec_args = utils::cast(real_arg); input_index = SetChildGraphInput(to_graph, vec_args, input_index); } else { MS_LOG(EXCEPTION) << "Unexpected arg type " << real_arg.ToString(); } } MS_LOG(INFO) << "Finish!"; } GraphId AscendSession::GetGraphIdByNode(const AnfNodePtr &front_anf) const { for (const auto &graph_item : graphs_) { auto graph = graph_item.second; MS_EXCEPTION_IF_NULL(graph); // if front_anf is a parameter,the backend parameter may have two if (graph->GetBackendAnfByFrontAnf(front_anf) != nullptr) { return graph_item.first; } } MS_EXCEPTION_IF_NULL(front_anf); MS_LOG(DEBUG) << "front_anf " << front_anf->DebugString() << " is not exist in any graph"; return kInvalidGraphId; } void AscendSession::MergeGraphExecOrder() { MS_LOG(INFO) << "Start!"; // insert switch to graph MergeSwitchCompile(); // merge graph order auto &graph_order = GetGraphOrder(final_graph_id_); auto &graph_type = GetGraphOrderType(final_graph_id_); auto final_graph = GetGraph(final_graph_id_); MS_EXCEPTION_IF_NULL(final_graph); if (graph_order.empty()) { MS_LOG(WARNING) << "Graph output is a lonely variable not linked to any op!"; return; } // if first graph is common,the final graph has no label,then set the stream of final graph same with the first graph SetStreamDistinctionLabel(final_graph, graph_order[0], false); std::vector final_exec_order = final_graph->execution_order(); KernelGraphPtr last_graph = nullptr; for (size_t i = 0; i < graph_order.size(); i++) { auto graph_id = graph_order[i]; if (graph_type[i] == BRANCH_END || graph_type[i] == BRANCH_START) { continue; } auto child_graph = GetGraph(graph_id); last_graph = child_graph; MS_EXCEPTION_IF_NULL(child_graph); auto exec_order = child_graph->execution_order(); MS_LOG(INFO) << "Merge graph,graph_id " << graph_id; (void)std::copy(exec_order.begin(), exec_order.end(), std::back_inserter(final_exec_order)); // add all value nodes of child graphs to final graph for (auto &value_node : child_graph->graph_value_nodes()) { final_graph->AddValueNodeToGraph(value_node); } // copy ref map to final graph auto child_ref_map = child_graph->GetRefMap(); for (auto &item : child_ref_map) { if (final_graph->IsInRefOutputMap(item.first)) { MS_LOG(EXCEPTION) << "The ref pair is already in final graph!"; } final_graph->AddRefCorrespondPairs(item.first, item.second); } } // set final_exec_order into final graph MS_EXCEPTION_IF_NULL(final_graph); DumpGraphExeOrder(final_exec_order); final_graph->set_execution_order(final_exec_order); } void AscendSession::InsertAssignToGraph(GraphId graph_id, const AnfNodePtr &from, const AnfNodePtr &to) { MS_EXCEPTION_IF_NULL(from); MS_EXCEPTION_IF_NULL(to); if (AnfAlgo::OutputAddrExist(from, 0) && AnfAlgo::OutputAddrExist(to, 0) && AnfAlgo::GetOutputAddr(from, 0) == AnfAlgo::GetOutputAddr(to, 0)) { return; } if (from.get() == to.get()) { return; } MS_LOG(INFO) << "Insert assign to graph " << graph_id << " from " << from->DebugString() << " to " << to->DebugString(); auto graph = graphs_[graph_id]; MS_EXCEPTION_IF_NULL(graph); // config inputs of assign node std::vector inputs = {NewValueNode(std::make_shared("Assign")), to, from}; // generate a new cnode auto assign_node = graph->NewCNode(inputs); MS_EXCEPTION_IF_NULL(assign_node); assign_node->set_abstract(std::make_shared()); auto kernel_build_info_builder = std::make_shared(); kernel_build_info_builder->SetKernelType(KernelType::RT_KERNEL); AnfAlgo::SetSelectKernelBuildInfo(kernel_build_info_builder->Build(), assign_node.get()); AnfAlgo::SetStreamDistinctionLabel(GetDistinctionLabel(graph), assign_node.get()); // append the assign at the end of from graph auto exec_order = graph->execution_order(); exec_order.push_back(assign_node); graph->set_execution_order(exec_order); } void AscendSession::InsertMultipleAssignToGraph(GraphId graph_id, const AnfNodePtr &from, const AnfNodePtr &to) { std::vector from_outputs = AnfAlgo::GetAllOutput(from, {prim::kPrimTupleGetItem}); std::vector to_outputs = AnfAlgo::GetAllOutput(to, {prim::kPrimTupleGetItem}); MS_LOG(INFO) << "Insert assigns from [" << AnfAlgo::GetGraphId(from.get()) << "] to [" << AnfAlgo::GetGraphId(to.get()) << "]"; if (from_outputs.size() != to_outputs.size()) { MS_LOG(INFO) << "From[" << from->DebugString(5) << "] to[" << to->DebugString(5) << "]"; MS_LOG(EXCEPTION) << "From outputs size[" << from_outputs.size() << "] is not equal to to outputs size[" << to_outputs.size() << "]"; } for (size_t i = 0; i < from_outputs.size(); i++) { InsertAssignToGraph(graph_id, from_outputs[i], to_outputs[i]); } } void AscendSession::InsertStreamActiveToGraph(GraphId graph_id, uint32_t actived_stream) { MS_LOG(INFO) << "Insert stream_active from " << graph_id << " to " << actived_stream; auto from_graph = graphs_[graph_id]; MS_EXCEPTION_IF_NULL(from_graph); std::vector inputs = {NewValueNode(std::make_shared("StreamActive"))}; auto active_node = from_graph->NewCNode(inputs); MS_EXCEPTION_IF_NULL(active_node); active_node->set_abstract(std::make_shared()); auto kernel_build_info_builder = std::make_shared(); kernel_build_info_builder->SetKernelType(KernelType::RT_KERNEL); AnfAlgo::SetSelectKernelBuildInfo(kernel_build_info_builder->Build(), active_node.get()); // set the active stream id into the attr of active node std::vector active_index_value = {}; active_index_value.push_back(actived_stream); AnfAlgo::SetNodeAttr(kAttrActiveStreamList, MakeValue>(active_index_value), active_node); AnfAlgo::SetStreamDistinctionLabel(GetDistinctionLabel(from_graph), active_node.get()); // append the active node at the end of from graph auto exec_order = from_graph->execution_order(); exec_order.push_back(active_node); from_graph->set_execution_order(exec_order); } size_t AscendSession::ExecOrderOfChildGraph(GraphId final_graph, GraphId child_graph) { auto &graph_order = GetGraphOrder(final_graph); for (size_t i = 0; i < graph_order.size(); i++) { if (child_graph == graph_order[i]) { return i; } } return kInvalidIndex; } std::vector &AscendSession::GetGraphOrder(GraphId final_graph_id) { auto graph_order_iter = graph_execute_orders_.find(final_graph_id); if (graph_order_iter == graph_execute_orders_.end()) { MS_LOG(EXCEPTION) << "Final graph" << final_graph_id << "has no child graph"; } return graph_order_iter->second; } // get graph order type vector by graph id std::vector &AscendSession::GetGraphOrderType(GraphId final_graph_id) { auto graph_type_iter = graph_order_types_.find(final_graph_id); if (graph_type_iter == graph_order_types_.end()) { MS_LOG(EXCEPTION) << "Final graph" << final_graph_id << "has no graph_order_types_"; } return graph_type_iter->second; } } // namespace session } // namespace mindspore