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- /**
- * Copyright 2020-2022 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 "debug/data_dump/e2e_dump.h"
-
- #include <unistd.h>
- #include <sstream>
- #include <algorithm>
- #include <map>
- #include <memory>
- #include <set>
- #include <utility>
- #include <vector>
- #include "debug/data_dump/dump_json_parser.h"
- #include "utils/ms_device_shape_transfer.h"
- #include "debug/anf_ir_utils.h"
- #include "debug/common.h"
- #include "backend/session/anf_runtime_algorithm.h"
- #include "utils/ms_context.h"
- #include "runtime/device/kernel_runtime_manager.h"
- #include "utils/config_manager.h"
- #include "utils/file_utils.h"
- #include "debug/data_dump/tensor_stat_dump.h"
- #include "abstract/utils.h"
- #ifdef ENABLE_DEBUGGER
- #include "debug/debug_services.h"
- #include "debug/tensor_load.h"
- #include "debug/debugger/debugger.h"
- #endif
-
- namespace mindspore {
- #ifdef ENABLE_D
- using ProtoFormat = debugger::dump::OutputFormat;
- using ProtoDataType = debugger::dump::OutputDataType;
-
- constexpr int kDhaAtomicAddInfoSize = 128;
- constexpr int kL2AtomicAddInfoSize = 128;
- constexpr int kAiCoreInfoSize = 256;
- constexpr int kDhaAtomicAddStatusSize = 256;
- constexpr int kL2AtomicAddStatusSize = 256;
- constexpr int kUint64Size = sizeof(uint64_t);
- const std::set<std::pair<std::string, std::string>> kSuppTransFormatPair = {
- // {device format, host format}
- {kOpFormat_FRAC_Z, kOpFormat_NCHW}, {kOpFormat_FRAC_NZ, kOpFormat_NCHW},
- {kOpFormat_NC1HWC0, kOpFormat_NCHW}, {kOpFormat_C1HWNCoC0, kOpFormat_NCHW},
- {kOpFormat_NC1HWC0_C04, kOpFormat_NCHW}, {kOpFormat_NDC1HWC0, kOpFormat_NCHW},
- {kOpFormat_FRACTAL_Z_3D, kOpFormat_NCHW}};
-
- const std::map<ProtoFormat, std::string> kFormatToStringMap = {
- {ProtoFormat::FORMAT_NCHW, kOpFormat_NCHW},
- {ProtoFormat::FORMAT_NHWC, kOpFormat_NHWC},
- {ProtoFormat::FORMAT_ND, kOpFormat_ND},
- {ProtoFormat::FORMAT_NC1HWC0, kOpFormat_NC1HWC0},
- {ProtoFormat::FORMAT_FRACTAL_Z, kOpFormat_FRAC_Z},
- {ProtoFormat::FORMAT_NC1HWC0_C04, kOpFormat_NC1HWC0_C04},
- {ProtoFormat::FORMAT_FRACTAL_Z_C04, kOpFormat_FRACTAL_Z_C04},
- {ProtoFormat::FORMAT_NC1KHKWHWC0, kOpFormat_NC1KHKWHWC0},
- {ProtoFormat::FORMAT_HWCN, kOpFormat_HWCN},
- {ProtoFormat::FORMAT_NDHWC, kOpFormat_NDHWC},
- {ProtoFormat::FORMAT_NCDHW, kOpFormat_NCDHW},
- {ProtoFormat::FORMAT_DHWCN, kOpFormat_DHWCN},
- {ProtoFormat::FORMAT_DHWNC, kOpFormat_DHWNC},
- {ProtoFormat::FORMAT_NDC1HWC0, kOpFormat_NDC1HWC0},
- {ProtoFormat::FORMAT_FRACTAL_Z_3D, kOpFormat_FRACTAL_Z_3D},
- {ProtoFormat::FORMAT_C1HWNCoC0, kOpFormat_C1HWNCoC0},
- {ProtoFormat::FORMAT_FRACTAL_NZ, kOpFormat_FRAC_NZ},
- {ProtoFormat::FORMAT_FRACTAL_ZN_LSTM, kOpFormat_FRACTAL_ZN_LSTM}};
-
- const std::map<ProtoDataType, mindspore::TypeId> kDataTypetoMSTypeMap = {
- {ProtoDataType::DT_UNDEFINED, mindspore::TypeId::kTypeUnknown},
- {ProtoDataType::DT_FLOAT, mindspore::TypeId::kNumberTypeFloat32},
- {ProtoDataType::DT_FLOAT16, mindspore::TypeId::kNumberTypeFloat16},
- {ProtoDataType::DT_INT8, mindspore::TypeId::kNumberTypeInt8},
- {ProtoDataType::DT_UINT8, mindspore::TypeId::kNumberTypeUInt8},
- {ProtoDataType::DT_INT16, mindspore::TypeId::kNumberTypeInt16},
- {ProtoDataType::DT_UINT16, mindspore::TypeId::kNumberTypeUInt16},
- {ProtoDataType::DT_INT32, mindspore::TypeId::kNumberTypeInt32},
- {ProtoDataType::DT_INT64, mindspore::TypeId::kNumberTypeInt64},
- {ProtoDataType::DT_UINT32, mindspore::TypeId::kNumberTypeUInt32},
- {ProtoDataType::DT_UINT64, mindspore::TypeId::kNumberTypeUInt64},
- {ProtoDataType::DT_BOOL, mindspore::TypeId::kNumberTypeBool},
- {ProtoDataType::DT_DOUBLE, mindspore::TypeId::kNumberTypeFloat64},
- {ProtoDataType::DT_STRING, mindspore::TypeId::kObjectTypeString}};
- #endif
-
- bool E2eDump::IsDeviceTargetGPU() {
- auto context = MsContext::GetInstance();
- MS_EXCEPTION_IF_NULL(context);
- return context->get_param<std::string>(MS_CTX_DEVICE_TARGET) == kGPUDevice;
- }
-
- /*
- * Feature group: Dump.
- * Target device group: GPU.
- * Runtime category: Old runtime, MindRT.
- * Description: This function is for dumping tensor in memory to disk in GPU machine.
- */
- void E2eDump::DumpGPUMemToFile(const std::string &file_path, const std::string &original_kernel_name,
- const device::DeviceAddress &addr, const ShapeVector &int_shapes,
- const TypeId &host_type, const TypeId &device_type, bool trans_flag, size_t slot,
- const Debugger *debugger) {
- #ifdef ENABLE_DEBUGGER
- auto format = kOpFormat_DEFAULT;
- MS_EXCEPTION_IF_NULL(debugger);
- auto ret = debugger->DumpTensorToFile(original_kernel_name, trans_flag, file_path, format, int_shapes, host_type,
- device_type, addr.format(), slot);
- if (!ret) {
- MS_LOG(INFO) << "DumpTensorToFile Failed: flag:" << trans_flag << ", path:" << file_path
- << ", host_format:" << format;
- }
- #endif
- }
-
- void E2eDump::DumpOutput(const session::KernelGraph *graph, const std::string &dump_path, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(graph);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!dump_json_parser.OutputNeedDump()) {
- return;
- }
- MS_LOG(INFO) << "Start e2e dump output";
- bool trans_flag = dump_json_parser.trans_flag();
- const auto &apply_kernels = graph->execution_order();
- for (const auto &node : apply_kernels) {
- MS_EXCEPTION_IF_NULL(node);
- std::string kernel_name = GetKernelNodeName(node);
- if (!dump_json_parser.NeedDump(kernel_name)) {
- continue;
- }
- DumpJsonParser::GetInstance().MatchKernel(kernel_name);
- DumpOutputImpl(node, trans_flag, dump_path, &kernel_name, debugger);
- }
- }
-
- void E2eDump::DumpOutputSingleNode(const CNodePtr &node, const std::string &dump_path, const Debugger *debugger) {
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!dump_json_parser.OutputNeedDump()) {
- return;
- }
- bool trans_flag = dump_json_parser.trans_flag();
- MS_EXCEPTION_IF_NULL(node);
- std::string kernel_name = GetKernelNodeName(node);
- if (!dump_json_parser.NeedDump(kernel_name)) {
- return;
- }
- DumpJsonParser::GetInstance().MatchKernel(kernel_name);
- DumpOutputImpl(node, trans_flag, dump_path, &kernel_name, debugger);
- }
-
- void E2eDump::DumpOutputImpl(const CNodePtr &node, bool trans_flag, const std::string &dump_path,
- std::string *kernel_name, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(node);
- GetFileKernelName(NOT_NULL(kernel_name));
- auto output_size = AnfAlgo::GetOutputTensorNum(node);
- for (size_t j = 0; j < output_size; ++j) {
- if (!AnfAlgo::OutputAddrExist(node, j)) {
- continue;
- }
- auto addr = AnfAlgo::GetOutputAddr(node, j);
- MS_EXCEPTION_IF_NULL(addr);
- ShapeVector int_shapes;
- GetDumpIntShape(node, j, NOT_NULL(&int_shapes), trans_flag);
- auto type = AnfAlgo::GetOutputInferDataType(node, j);
- auto device_type = AnfAlgo::GetOutputDeviceDataType(node, j);
- std::string op_type = AnfAlgo::GetCNodeName(node);
- std::string op_name = GetOpNameWithoutScope(*kernel_name);
- uint32_t task_id = 0;
- uint32_t stream_id = 0;
- uint64_t timestamp = GetTimeStamp();
- std::string file_path = dump_path + '/' + op_type + '.' + op_name + '.' + std::to_string(task_id) + '.' +
- std::to_string(stream_id) + '.' + std::to_string(timestamp) + ".output." +
- std::to_string(j);
- if (IsDeviceTargetGPU()) {
- if (DumpJsonParser::GetInstance().IsStatisticDump()) {
- TensorStatDump stat_dump(op_type, op_name, task_id, stream_id, timestamp, false, j, j);
- stat_dump.DumpTensorStatsToFile(GetKernelNodeName(node), dump_path, debugger);
- }
- if (DumpJsonParser::GetInstance().IsTensorDump()) {
- DumpGPUMemToFile(file_path, GetKernelNodeName(node), *addr, int_shapes, type, device_type, trans_flag, j,
- debugger);
- }
- } else {
- DumpMemToFile(file_path, *addr, int_shapes, type, trans_flag);
- }
- }
- }
-
- void E2eDump::DumpInput(const session::KernelGraph *graph, const std::string &dump_path, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(graph);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!dump_json_parser.InputNeedDump()) {
- return;
- }
- MS_LOG(INFO) << "Start e2e dump input";
- bool trans_flag = dump_json_parser.trans_flag();
- const auto &apply_kernels = graph->execution_order();
- for (const auto &node : apply_kernels) {
- MS_EXCEPTION_IF_NULL(node);
- std::string kernel_name = GetKernelNodeName(node);
- if (!dump_json_parser.NeedDump(kernel_name)) {
- continue;
- }
- DumpJsonParser::GetInstance().MatchKernel(kernel_name);
- DumpInputImpl(node, trans_flag, dump_path, &kernel_name, debugger);
- }
- }
-
- void E2eDump::DumpInputSingleNode(const CNodePtr &node, const std::string &dump_path, const Debugger *debugger) {
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!dump_json_parser.InputNeedDump()) {
- return;
- }
- bool trans_flag = dump_json_parser.trans_flag();
- MS_EXCEPTION_IF_NULL(node);
- std::string kernel_name = GetKernelNodeName(node);
- if (!dump_json_parser.NeedDump(kernel_name)) {
- return;
- }
- DumpJsonParser::GetInstance().MatchKernel(kernel_name);
- DumpInputImpl(node, trans_flag, dump_path, &kernel_name, debugger);
- }
-
- void E2eDump::DumpInputImpl(const CNodePtr &node, bool trans_flag, const std::string &dump_path,
- std::string *kernel_name, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(node);
- GetFileKernelName(NOT_NULL(kernel_name));
- auto input_size = AnfAlgo::GetInputTensorNum(node);
- for (size_t j = 0; j < input_size; ++j) {
- auto kernel_with_index = AnfAlgo::GetPrevNodeOutput(node, j);
- auto input = kernel_with_index.first;
- auto index = kernel_with_index.second;
- if (!AnfAlgo::OutputAddrExist(input, index)) {
- continue;
- }
- auto addr = AnfAlgo::GetOutputAddr(input, index);
- MS_EXCEPTION_IF_NULL(addr);
-
- std::string tensor_name = GetKernelNodeName(node);
- size_t slot = j;
- if (IsDeviceTargetGPU()) {
- auto input_kernel = node->input(j + 1);
- std::string input_kernel_name = GetKernelNodeName(input_kernel);
- tensor_name = input_kernel_name;
- slot = 0;
- }
- ShapeVector int_shapes;
- GetDumpIntShape(input, index, NOT_NULL(&int_shapes), trans_flag);
- auto type = AnfAlgo::GetOutputInferDataType(input, index);
- auto device_type = AnfAlgo::GetOutputDeviceDataType(input, index);
- std::string op_type = AnfAlgo::GetCNodeName(node);
- std::string op_name = GetOpNameWithoutScope(*kernel_name);
- uint64_t timestamp = GetTimeStamp();
- uint32_t task_id = 0;
- uint32_t stream_id = 0;
- std::string file_path = dump_path + '/' + op_type + '.' + op_name + '.' + std::to_string(task_id) + '.' +
- std::to_string(stream_id) + '.' + std::to_string(timestamp) + ".input." + std::to_string(j);
- MS_EXCEPTION_IF_NULL(addr);
- if (IsDeviceTargetGPU()) {
- if (DumpJsonParser::GetInstance().IsStatisticDump()) {
- TensorStatDump stat_dump(op_type, op_name, task_id, stream_id, timestamp, true, j, slot);
- stat_dump.DumpTensorStatsToFile(tensor_name, dump_path, debugger);
- }
- if (DumpJsonParser::GetInstance().IsTensorDump()) {
- DumpGPUMemToFile(file_path, tensor_name, *addr, int_shapes, type, device_type, trans_flag, slot, debugger);
- }
- } else {
- DumpMemToFile(file_path, *addr, int_shapes, type, trans_flag);
- }
- }
- }
-
- void E2eDump::DumpSingleAnfNode(const AnfNodePtr &anf_node, const size_t output_index, const std::string &dump_path,
- bool trans_flag, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(anf_node);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if ((!anf_node->isa<Parameter>() && !anf_node->isa<ValueNode>()) || IsValueNode<StringImm>(anf_node)) {
- return;
- }
- std::string node_name = GetKernelNodeName(anf_node);
- if (!dump_json_parser.NeedDump(node_name)) {
- return;
- }
- DumpJsonParser::GetInstance().MatchKernel(node_name);
- GetFileKernelName(NOT_NULL(&node_name));
-
- std::string dump_name = node_name;
- const std::string cst_prefix = "Default--";
- if (anf_node->isa<ValueNode>()) {
- if (dump_name.find(cst_prefix) == std::string::npos) {
- MS_LOG(INFO) << "Incorrect constant format: " << dump_name;
- return;
- }
- dump_name = node_name.substr(cst_prefix.length());
- trans_flag = false;
- }
-
- // check if output address exists, if not, return;
- if (!AnfAlgo::OutputAddrExist(anf_node, output_index)) {
- return;
- }
- auto addr = AnfAlgo::GetOutputAddr(anf_node, output_index);
- MS_EXCEPTION_IF_NULL(addr);
- ShapeVector int_shapes;
- GetDumpIntShape(anf_node, output_index, NOT_NULL(&int_shapes), trans_flag);
- auto type = AnfAlgo::GetOutputInferDataType(anf_node, output_index);
- auto device_type = AnfAlgo::GetOutputDeviceDataType(anf_node, output_index);
- uint64_t timestamp = GetTimeStamp();
- uint32_t task_id = 0;
- uint32_t stream_id = 0;
- std::string file_path = dump_path + "/Parameter." + dump_name + '.' + std::to_string(task_id) + '.' +
- std::to_string(stream_id) + '.' + std::to_string(timestamp) + ".output.0";
- if (IsDeviceTargetGPU()) {
- if (dump_json_parser.IsStatisticDump()) {
- TensorStatDump stat_dump("Parameter", dump_name, task_id, stream_id, timestamp, false, 0, 0);
- stat_dump.DumpTensorStatsToFile(node_name, dump_path, debugger);
- }
- if (dump_json_parser.IsTensorDump()) {
- DumpGPUMemToFile(file_path, node_name, *addr, int_shapes, type, device_type, trans_flag, 0, debugger);
- }
- } else {
- DumpMemToFile(file_path, *addr, int_shapes, type, trans_flag);
- }
- }
-
- void E2eDump::DumpParameters(const session::KernelGraph *graph, const std::string &dump_path,
- const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(graph);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!dump_json_parser.OutputNeedDump()) {
- return;
- }
- MS_LOG(INFO) << "Start e2e dump parameters";
- bool trans_flag = dump_json_parser.trans_flag();
-
- // dump parameters
- const auto ¶meters = graph->inputs();
- for (auto &item : parameters) {
- DumpSingleAnfNode(item, PARAMETER_OUTPUT_INDEX, dump_path, trans_flag, debugger);
- }
- }
-
- void E2eDump::DumpConstantData(const session::KernelGraph *graph, uint32_t rank_id, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(graph);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (!IsDeviceTargetGPU() || !dump_json_parser.e2e_dump_enabled()) {
- return;
- }
- uint32_t graph_id = graph->graph_id();
- std::string cst_path = GenerateDumpPath(graph_id, rank_id, true);
- if (!Common::FileExists(cst_path)) {
- DumpConstantData(graph, cst_path, debugger);
- }
- }
-
- void E2eDump::DumpConstantData(const session::KernelGraph *graph, const std::string &cst_dump_path,
- const Debugger *debugger) {
- // Dump constant to npy file
- MS_EXCEPTION_IF_NULL(graph);
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- MS_LOG(INFO) << "DumpConstants. Current iteration is " << dump_json_parser.cur_dump_iter();
- MS_LOG(INFO) << "Current graph id is " << graph->graph_id();
- if (!dump_json_parser.OutputNeedDump()) {
- return;
- }
- const auto value_nodes = graph->graph_value_nodes();
- for (auto &item : value_nodes) {
- DumpSingleAnfNode(item, VALUE_NODE_OUTPUT_INDEX, cst_dump_path, false, debugger);
- }
- }
-
- void E2eDump::UpdateIterDumpSetup(const session::KernelGraph *graph, bool sink_mode) {
- uint32_t graph_id = graph->graph_id();
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (IsDeviceTargetGPU()) {
- if (starting_graph_id == INT32_MAX) {
- starting_graph_id = graph_id;
- } else if (starting_graph_id == graph_id && !MsContext::GetInstance()->get_param<bool>(MS_CTX_ENABLE_MINDRT)) {
- // Update dump iter for mindrt runtime is done using UpdateIterGPUDump().
- // Update dump iter for GPU old runtime.
- dump_json_parser.UpdateDumpIter();
- }
- return;
- }
- // If device target is Ascend
- if (sink_mode && graph->IsDatasetGraph()) {
- MS_LOG(INFO) << "No need to update iteration for dataset graph.";
- return;
- }
-
- // In multi network scripts, dump iter is equal to the number of networks that have been executed so far.
- dump_json_parser.UpdateDumpIter();
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend, GPU.
- * Runtime category: Old runtime, MindRT.
- * Description: This function is for updating dump iteration for GPU and ascend old runtime and ascend super
- * kernel MindRT.
- */
- void E2eDump::DumpSetup(const session::KernelGraph *graph) {
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- bool sink_mode = (ConfigManager::GetInstance().dataset_mode() || E2eDump::isDatasetGraph(graph));
-
- if (dump_json_parser.async_dump_enabled() || dump_json_parser.e2e_dump_enabled()) {
- UpdateIterDumpSetup(graph, sink_mode);
- }
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend, GPU.
- * Runtime category: MindRT.
- * Description: This function is for updating dump iteration for GPU and kernel by kernel ascend MindRT dump.
- */
- void E2eDump::UpdateIterMindRTDump() {
- // update dump iter for GPU and kernel by kernel ascend dump.
- DumpJsonParser::GetInstance().UpdateDumpIter();
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend, GPU.
- * Runtime category: Old runtime, MindRT.
- * Description: Generates graph history files (dumping all the iteration numbers in which the graph was executed) for
- * the given graph and rank_id. If dataset_sink_mode is true for async dump in ascend, this function is called once per
- * each epoch and dumps all the iterations in the epoch to the graph history file.
- */
- void E2eDump::DumpRunIter(const KernelGraphPtr &graph, uint32_t rank_id) {
- auto &json_parser = DumpJsonParser::GetInstance();
- if (!(json_parser.async_dump_enabled() || json_parser.e2e_dump_enabled())) {
- return;
- }
- bool sink_mode = (ConfigManager::GetInstance().dataset_mode() || graph->IsDatasetGraph());
- auto iter_num = SizeToInt(LongToSize(ConfigManager::GetInstance().iter_num()));
- if (graph->IsDatasetGraph()) {
- MS_LOG(INFO) << "graph: " << graph->graph_id() << " is dataset graph, not creating graph history file.";
- return;
- }
- std::string execution_order_path = json_parser.path() + "/rank_" + std::to_string(rank_id) + "/execution_order/";
- std::string file_name_to_check =
- execution_order_path + "/ms_global_execution_order_graph_" + std::to_string(graph->graph_id()) + ".csv";
- auto real_path = Common::CreatePrefixPath(file_name_to_check);
- if (!real_path.has_value()) {
- MS_LOG(WARNING) << "Check file path: " << file_name_to_check << " failed.";
- return;
- }
- std::string file_name = real_path.value();
- ChangeFileMode(file_name, S_IWUSR);
- std::ofstream fout(file_name, std::ofstream::app);
- if (!fout.is_open()) {
- MS_LOG(WARNING) << "Open file for saving graph global execution order failed.";
- return;
- }
- if (sink_mode && json_parser.async_dump_enabled()) {
- // for async dump when sink_mode = true, cur_dump_iter() = current_epoch
- // dump history for all iterations in the epoch
- Debugger::GetInstance()->UpdateGraphIterMap(graph->graph_id(), iter_num);
- auto graph_iter_map = Debugger::GetInstance()->GetGraphIterMap();
- auto step_per_epoch = graph_iter_map[graph->graph_id()];
- for (int i = 0; i < step_per_epoch; i++) {
- auto step = (json_parser.cur_dump_iter() * step_per_epoch) + i;
- fout << (std::to_string(step) + "\n");
- }
- } else {
- fout << std::to_string(json_parser.cur_dump_iter()) + "\n";
- }
- fout.close();
- ChangeFileMode(file_name, S_IRUSR);
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend, GPU.
- * Runtime category: Old runtime, MindRT.
- * Description: This function is for dumping the whole graph. It is used for old runtime in GPU and Ascend and
- * super-kernel mindRT in Ascend.
- */
- void E2eDump::DumpData(const session::KernelGraph *graph, uint32_t rank_id, const Debugger *debugger) {
- MS_EXCEPTION_IF_NULL(graph);
- bool success = false;
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- uint32_t graph_id = graph->graph_id();
- if (!dump_json_parser.e2e_dump_enabled()) {
- return;
- }
-
- if (dump_json_parser.GetIterDumpFlag()) {
- MS_LOG(INFO) << "Start e2e dump. Current iteration is " << dump_json_parser.cur_dump_iter();
- MS_LOG(INFO) << "Current graph id is " << graph_id;
- std::string dump_path = GenerateDumpPath(graph_id, rank_id);
- std::string cst_path = GenerateDumpPath(graph_id, rank_id, true);
-
- if (dump_json_parser.IsStatisticDump()) {
- TensorStatDump::OpenStatisticsFile(dump_path);
- }
- DumpInput(graph, dump_path, debugger);
- DumpOutput(graph, dump_path, debugger);
- DumpParameters(graph, dump_path, debugger);
- if (IsDeviceTargetGPU() && dump_json_parser.e2e_dump_enabled()) {
- DumpConstantData(graph, cst_path, debugger);
- }
- if (dump_json_parser.IsStatisticDump()) {
- CsvWriter::GetInstance().CloseFile();
- }
- success = true;
- }
-
- if (success) {
- MS_LOG(DEBUG) << "E2eDump Dump Data completed!";
- } else {
- MS_LOG(DEBUG) << "E2eDump Dump has not occurred!";
- }
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend, GPU.
- * Runtime category: MindRT.
- * Description: This function is for dumping a single node. It is used for mindrt in GPU and Ascend kernel-by-kernel.
- */
- bool E2eDump::DumpSingleNodeData(const CNodePtr &node, uint32_t graph_id, uint32_t rank_id, const Debugger *debugger) {
- bool success = false;
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (dump_json_parser.DumpEnabledForIter()) {
- std::string dump_path = GenerateDumpPath(graph_id, rank_id);
- DumpInputSingleNode(node, dump_path, debugger);
- DumpOutputSingleNode(node, dump_path, debugger);
- success = true;
- }
- return success;
- }
-
- bool E2eDump::DumpParametersData(const session::KernelGraph *graph, uint32_t rank_id, const Debugger *debugger) {
- bool success = false;
- uint32_t graph_id = graph->graph_id();
- auto &dump_json_parser = DumpJsonParser::GetInstance();
- if (dump_json_parser.DumpEnabledForIter()) {
- MS_LOG(INFO) << "DumpParameters. Current iteration is " << dump_json_parser.cur_dump_iter();
- MS_LOG(INFO) << "Current graph id is " << graph_id;
- std::string dump_path = GenerateDumpPath(graph_id, rank_id);
- DumpParameters(graph, dump_path, debugger);
- success = true;
- }
- return success;
- }
- bool E2eDump::isDatasetGraph(const session::KernelGraph *graph) {
- // check if there is GetNext or InitDataSetQueue node
- const auto &nodes = graph->execution_order();
- for (const auto &node : nodes) {
- auto node_name = AnfAlgo::GetCNodeName(node);
- if (node_name == prim::kPrimGetNext->name() || node_name == prim::kPrimInitDataSetQueue->name()) {
- return true;
- }
- }
- return false;
- }
-
- #ifdef ENABLE_D
- /*
- * Feature group: Dump.
- * Target device group: Ascend.
- * Runtime category: Old runtime, MindRT.
- * Description: This function is for ascend A+M dump only. It parses and converts each slot of tensor in DumpData object
- * and dump the tensor data in npy file or statistic data in csv file.
- */
- void E2eDump::DumpTensorToFile(const std::string &dump_path, const debugger::dump::DumpData &dump_data,
- char *data_ptr) {
- // dump input tensors
- std::vector<debugger::dump::OpInput> input_tensors(dump_data.input().begin(), dump_data.input().end());
- uint64_t offset = 0;
- for (uint32_t slot = 0; slot < input_tensors.size(); slot++) {
- auto in_tensor = input_tensors[slot];
- auto succ = ConvertFormatForTensorAndDump(dump_path, in_tensor, data_ptr + offset, "input", slot);
- if (!succ) {
- MS_LOG(INFO) << "Failed to convert format for tensor " << dump_path << ".input." << slot;
- }
- offset += in_tensor.size();
- }
-
- // dump output tensors
- std::vector<debugger::dump::OpOutput> output_tensors(dump_data.output().begin(), dump_data.output().end());
- for (uint32_t slot = 0; slot < output_tensors.size(); slot++) {
- auto out_tensor = output_tensors[slot];
- auto succ = ConvertFormatForTensorAndDump(dump_path, out_tensor, data_ptr + offset, "output", slot);
- if (!succ) {
- MS_LOG(INFO) << "Failed to convert format for tensor " << dump_path << ".output." << slot;
- }
- offset += out_tensor.size();
- }
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend.
- * Runtime category: Old runtime, MindRT.
- * Description: It serves for A+M dump. Save statistic of the tensor data into dump path as configured.
- */
- template <typename T>
- bool DumpTensorStatsIfNeeded(const std::string &dump_path, const T &tensor, char *data_ptr, const std::string &io,
- uint32_t slot, const ShapeVector &shape, TypeId type) {
- // dump_path: dump_dir/op_type.op_name.task_id.stream_id.timestamp
- if (!DumpJsonParser::GetInstance().IsStatisticDump()) {
- return true;
- }
- size_t pos = dump_path.rfind("/");
- std::string file_name = dump_path.substr(pos + 1);
- size_t first_dot = file_name.find(".");
- size_t fourth_dot = file_name.rfind(".");
- size_t third_dot = file_name.rfind(".", fourth_dot - 1);
- size_t second_dot = file_name.rfind(".", third_dot - 1);
- if (first_dot == std::string::npos || second_dot == std::string::npos || third_dot == std::string::npos ||
- first_dot == second_dot) {
- MS_LOG(ERROR) << "Dump path " << dump_path << " received is not well formed";
- return false;
- }
- std::string op_type = file_name.substr(0, first_dot);
- std::string op_name = file_name.substr(first_dot + 1, second_dot - first_dot - 1);
- std::string task_id = file_name.substr(second_dot + 1, third_dot - second_dot - 1);
- std::string stream_id = file_name.substr(third_dot + 1, fourth_dot - third_dot - 1);
- std::string timestamp = file_name.substr(fourth_dot + 1);
- TensorStatDump stat_dump(op_type, op_name, task_id, stream_id, timestamp, io, slot, slot);
- std::shared_ptr<TensorData> data = std::make_shared<TensorData>();
- if (type <= TypeId::kNumberTypeBegin || type >= TypeId::kNumberTypeComplex64) {
- MS_LOG(ERROR) << "Data type of operator " << file_name << " is not supported by statistic dump";
- return false;
- }
- data->SetType(type);
- data->SetByteSize((size_t)tensor.size());
- data->SetShape(shape);
- data->SetDataPtr(data_ptr);
- return stat_dump.DumpTensorStatsToFile(dump_path.substr(0, pos), data);
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend.
- * Runtime category: Old runtime, MindRT.
- * Description: It serves for A+M dump. Parse each attributes in Dumpdata proto object from device format to mindspore
- * supported format and save tensor data or statistic as configured.
- */
- template <typename T>
- bool E2eDump::ConvertFormatForTensorAndDump(std::string dump_path, const T &tensor, char *data_ptr,
- const std::string &io, uint32_t slot) {
- // dump_path: dump_dir/op_type.op_name.task_id.stream_id.timestamp
- std::ostringstream dump_path_ss;
- dump_path_ss << dump_path << "." << io << "." << slot << ".";
- std::string dump_path_slot = dump_path_ss.str();
- // get format
- auto iter_fmt = kFormatToStringMap.find(tensor.format());
- if (iter_fmt == kFormatToStringMap.end()) {
- MS_LOG(INFO) << "Unsupported tensor format for tensor " << dump_path << ": unknown(" << tensor.format() << ")";
- return false;
- }
- std::string device_format = iter_fmt->second;
- // get data type
- auto iter_dtype = kDataTypetoMSTypeMap.find(tensor.data_type());
- if (iter_dtype == kDataTypetoMSTypeMap.end()) {
- MS_LOG(INFO) << "Unsupported data type for tensor " << dump_path << ": unknown(" << tensor.data_type() << ")";
- return false;
- }
- auto src_type = iter_dtype->second;
- // get host shape
- std::vector<size_t> device_shape;
- (void)std::copy(tensor.shape().dim().begin(), tensor.shape().dim().end(), std::back_inserter(device_shape));
- ShapeVector shape_d;
- (void)std::transform(device_shape.begin(), device_shape.end(), std::back_inserter(shape_d), SizeToLong);
- std::vector<size_t> host_shape;
- (void)std::copy(tensor.original_shape().dim().begin(), tensor.original_shape().dim().end(),
- std::back_inserter(host_shape));
- ShapeVector shape_to;
- (void)std::transform(host_shape.begin(), host_shape.end(), std::back_inserter(shape_to), SizeToLong);
- size_t data_size = (size_t)tensor.size();
-
- bool trans_success = false;
- auto trans_buf = std::vector<uint8_t>(data_size);
- // convert format to host format. It can be either NCHW or ND (non 4-dimemsions).
- const uint8_t kNumFourDim = 4;
- std::string host_format;
- if (host_shape.size() == kNumFourDim) {
- host_format = kOpFormat_NCHW;
- } else {
- host_format = kOpFormat_ND;
- }
- if (device_format != host_format) {
- auto iter = kSuppTransFormatPair.find(std::make_pair(device_format, host_format));
- if (iter == kSuppTransFormatPair.end()) {
- MS_LOG(INFO) << "Do not support convert from format " << device_format << " to " << host_format << " for tensor "
- << dump_path_slot;
- } else {
- const trans::FormatArgs format_args{data_ptr, data_size, host_format, device_format, shape_to, shape_d, src_type};
- auto group = tensor.sub_format() > 1 ? tensor.sub_format() : 1;
- trans_success = trans::TransFormatFromDeviceToHost(format_args, trans_buf.data(), group);
- if (!trans_success) {
- MS_LOG(ERROR) << "Trans format failed.";
- }
- }
- }
- // dump tensor data into npy file
- bool dump_success = true;
- if (trans_success) {
- dump_success = DumpTensorStatsIfNeeded(dump_path, tensor, reinterpret_cast<char *>(trans_buf.data()), io, slot,
- shape_to, src_type);
- if (DumpJsonParser::GetInstance().IsTensorDump()) {
- dump_path_slot += host_format;
- dump_success =
- DumpJsonParser::DumpToFile(dump_path_slot, trans_buf.data(), data_size, shape_to, src_type) && dump_success;
- }
- } else {
- dump_success = DumpTensorStatsIfNeeded(dump_path, tensor, data_ptr, io, slot, shape_to, src_type);
- if (DumpJsonParser::GetInstance().IsTensorDump()) {
- dump_path_slot += device_format;
- dump_success =
- DumpJsonParser::DumpToFile(dump_path_slot, data_ptr, data_size, shape_to, src_type) && dump_success;
- }
- }
- return dump_success;
- }
-
- uint64_t UnpackUint64Value(char *ptr) {
- #if defined(__APPLE__)
- return *reinterpret_cast<const uint64_t *>(ptr);
- #else
- return le16toh(*reinterpret_cast<const uint64_t *>(ptr));
- #endif
- }
-
- std::string IntToHexString(const uint64_t value) {
- std::stringstream ss;
- ss << "0x" << std::hex << value;
- return ss.str();
- }
-
- nlohmann::json E2eDump::ParseOverflowInfo(char *data_ptr) {
- uint32_t index = 0;
- uint64_t model_id = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t stream_id = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t task_id = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t task_type = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t pc_start = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t para_base = UnpackUint64Value(data_ptr + index);
-
- nlohmann::json overflow_info;
- overflow_info["model_id"] = model_id;
- overflow_info["stream_id"] = stream_id;
- overflow_info["task_id"] = task_id;
- overflow_info["task_type"] = task_type;
- overflow_info["pc_start"] = IntToHexString(pc_start);
- overflow_info["para_base"] = IntToHexString(para_base);
- return overflow_info;
- }
-
- /*
- * Feature group: Dump.
- * Target device group: Ascend.
- * Runtime category: Old runtime, MindRT.
- * Description: This function is for Ascend A+M dump. It parses and dump op overflow info in json file.
- */
- void E2eDump::DumpOpDebugToFile(const std::string &dump_path, const debugger::dump::DumpData &dump_data,
- char *data_ptr) {
- std::string out_path = dump_path + ".output.";
- std::vector<debugger::dump::OpOutput> op_debug(dump_data.output().begin(), dump_data.output().end());
- for (uint32_t slot = 0; slot < op_debug.size(); slot++) {
- uint32_t index = 0;
- // parse DHA Atomic Add info
- nlohmann::json dha_atomic_add_info = ParseOverflowInfo(data_ptr + index);
- index += kDhaAtomicAddInfoSize;
- // parse L2 Atomic Add info
- nlohmann::json l2_atomic_add_info = ParseOverflowInfo(data_ptr + index);
- index += kL2AtomicAddInfoSize;
- // parse AICore info
- nlohmann::json ai_core_info = ParseOverflowInfo(data_ptr + index);
- index += kAiCoreInfoSize;
- // parse DHA Atomic Add status
- dha_atomic_add_info["status"] = UnpackUint64Value(data_ptr + index);
- index += kDhaAtomicAddStatusSize;
- // parse L2 Atomic Add status
- l2_atomic_add_info["status"] = UnpackUint64Value(data_ptr + index);
- index += kL2AtomicAddStatusSize;
- // parse AICore status
- uint64_t kernel_code = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t block_idx = UnpackUint64Value(data_ptr + index);
- index += kUint64Size;
- uint64_t status = UnpackUint64Value(data_ptr + index);
- ai_core_info["kernel_code"] = IntToHexString(kernel_code);
- ai_core_info["block_idx"] = block_idx;
- ai_core_info["status"] = status;
-
- nlohmann::json opdebug_data;
- opdebug_data["DHA Atomic Add"] = dha_atomic_add_info;
- opdebug_data["L2 Atomic Add"] = l2_atomic_add_info;
- opdebug_data["AI Core"] = ai_core_info;
-
- // save json to file
- DumpToFile(out_path + std::to_string(slot) + ".json", opdebug_data.dump());
- }
- }
- #endif // ENABLE_D
- } // namespace mindspore
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