/* Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved. 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 "paddle/fluid/framework/operator.h" #include #include #include #include "gflags/gflags.h" #include "paddle/fluid/framework/data_transform.h" #include "paddle/fluid/framework/data_type_transform.h" #include "paddle/fluid/framework/details/nan_inf_utils.h" #include "paddle/fluid/framework/op_call_stack.h" #include "paddle/fluid/framework/shape_inference.h" #include "paddle/fluid/framework/transfer_scope_cache.h" #include "paddle/fluid/framework/unused_var_check.h" #include "paddle/fluid/framework/var_type.h" #include "paddle/fluid/platform/enforce.h" #include "paddle/fluid/platform/profiler.h" #include "paddle/pten/common/scalar.h" #include "paddle/pten/common/scalar_array.h" namespace paddle { namespace framework { class LoDTensor; } // namespace framework } // namespace paddle #ifdef PADDLE_WITH_XPU #include "paddle/fluid/platform/device/xpu/xpu_info.h" #include "paddle/fluid/platform/device/xpu/xpu_op_list.h" #endif #ifdef PADDLE_WITH_MKLDNN #include "paddle/fluid/platform/mkldnn_helper.h" #endif #ifdef PADDLE_WITH_MLU #include "paddle/fluid/platform/device/mlu/mlu_info.h" #endif DECLARE_bool(benchmark); DECLARE_bool(check_nan_inf); DECLARE_bool(enable_unused_var_check); PADDLE_DEFINE_EXPORTED_int32(inner_op_parallelism, 0, "number of threads for inner op"); DECLARE_bool(run_pten_kernel); DECLARE_bool(run_kp_kernel); namespace paddle { namespace framework { std::vector> kKernelPriority = { std::make_tuple(platform::CUDAPlace(0), LibraryType::kCUDNN), std::make_tuple(platform::CUDAPlace(0), LibraryType::kPlain), std::make_tuple(platform::CPUPlace(), LibraryType::kMKLDNN), std::make_tuple(platform::CPUPlace(), LibraryType::kPlain), }; static DDim GetDimsDebug(const ScopeBase& scope, const std::string& name, bool get_actual_dim = false) { Variable* var = scope.FindVar(name); if (var == nullptr) { return DDim({-1}); } if (var->IsType()) { const LoDTensor& tensor = var->Get(); return tensor.dims(); } else if (var->IsType()) { if (get_actual_dim) { return var->Get().value().dims(); } else { return var->Get().GetCompleteDims(); } } else if (var->IsType()) { return DDim({static_cast(var->Get().size())}); } else { return DDim({-1}); } } static bool VarInited(const ScopeBase& scope, const std::string& name) { Variable* var = scope.FindVar(name); if (var == nullptr) return false; return var->IsInitialized(); } static std::string GetDtype(const ScopeBase& scope, const std::string& name) { Variable* var = scope.FindVar(name); if (var == nullptr) { return ""; } if (var->IsType()) { const LoDTensor& tensor = var->Get(); if (UNLIKELY(!tensor.IsInitialized())) { return ""; } return DataTypeToString(tensor.type()); } else if (var->IsType()) { auto tensor = var->Get().value(); if (UNLIKELY(!tensor.IsInitialized())) { return "uninited"; } else { return DataTypeToString(tensor.type()); } } else if (var->IsType()) { return "strings"; } else { return ""; } } static std::string GetPlace(const ScopeBase& scope, const std::string& name) { Variable* var = scope.FindVar(name); if (var == nullptr) { return ""; } auto to_string = [](const platform::Place& p) { std::stringstream sstream; sstream << p; return sstream.str(); }; if (var->IsType()) { const LoDTensor& tensor = var->Get(); if (UNLIKELY(!tensor.IsInitialized())) { return ""; } return to_string(tensor.place()); } else if (var->IsType()) { auto tensor = var->Get().value(); if (UNLIKELY(!tensor.IsInitialized())) { return "uninited"; } else { return to_string(tensor.place()); } } else { return ""; } } static int GetRowSize(const ScopeBase& scope, const std::string& name) { Variable* var = scope.FindVar(name); if (var == nullptr) { return -1; } if (var->IsType()) { return var->Get().rows().size(); } return -1; } static LoD GetLoDDebug(const ScopeBase& scope, const std::string& name) { Variable* var = scope.FindVar(name); auto default_lod = LoD({{}}); if (var == nullptr) { return default_lod; } if (var->IsType()) { const LoDTensor& tensor = var->Get(); return tensor.lod(); } else { return default_lod; } } RuntimeContext::RuntimeContext(const VariableNameMap& innames, const VariableNameMap& outnames, const Scope& scope) { for (auto& var_name_item : innames) { std::vector& input_vars = inputs[var_name_item.first]; input_vars.reserve(var_name_item.second.size()); for (auto& var_name : var_name_item.second) { input_vars.push_back(scope.FindVar(var_name)); } } for (auto& var_name_item : outnames) { std::vector& output_vars = outputs[var_name_item.first]; output_vars.reserve(var_name_item.second.size()); for (auto& var_name : var_name_item.second) { output_vars.push_back(scope.FindVar(var_name)); } } } void OperatorBase::Run(const Scope& scope, const platform::Place& place) { try { VLOG(4) << place << " " << DebugStringEx(&scope); if (platform::is_gpu_place(place)) { #if !defined(PADDLE_WITH_CUDA) && !defined(PADDLE_WITH_HIP) PADDLE_THROW(platform::errors::Unavailable( "Cannot run operator on place %s, please recompile paddle or " "reinstall Paddle with CUDA support.", place)); #else auto dev_id = BOOST_GET_CONST(platform::CUDAPlace, place).device; platform::SetDeviceId(dev_id); #endif } else if (platform::is_xpu_place(place)) { #ifndef PADDLE_WITH_XPU PADDLE_THROW(platform::errors::Unavailable( "Cannot run operator on place %s, please recompile paddle or " "reinstall Paddle with XPU support.", place)); #else auto dev_id = BOOST_GET_CONST(platform::XPUPlace, place).device; platform::SetXPUDeviceId(dev_id); #endif } else if (platform::is_npu_place(place)) { #ifndef PADDLE_WITH_ASCEND_CL PADDLE_THROW(platform::errors::Unavailable( "Cannot run operator on place %s, please recompile paddle or " "reinstall Paddle with NPU support.", place)); #else auto dev_id = BOOST_GET_CONST(platform::NPUPlace, place).device; platform::SetNPUDeviceId(dev_id); #endif } else if (platform::is_mlu_place(place)) { #ifndef PADDLE_WITH_MLU PADDLE_THROW(platform::errors::Unavailable( "Cannot run operator on place %s, please recompile paddle or " "reinstall Paddle with MLU support.", place)); #else auto dev_id = BOOST_GET_CONST(platform::MLUPlace, place).device; platform::SetMLUDeviceId(dev_id); #endif } { // TODO(wangchaochaohu) : refine code to use only one RecordEvent) // in order to record different op type cost time // and different op name cost time,we set two event. platform::RecordEvent op_type_record_event(Type()); auto op_name = platform::OpName(outputs_, Type()); platform::RecordEvent op_name_record_event( op_name, platform::EventRole::kUniqueOp); RunImpl(scope, place); } VLOG(3) << GetExecutionPlace(place) << " " << DebugStringEx(&scope); } catch (platform::EnforceNotMet& exception) { framework::InsertCallStackInfo(Type(), Attrs(), &exception); throw std::move(exception); } catch (platform::EOFException&) { std::rethrow_exception(std::current_exception()); } catch (std::exception& ex) { LOG(WARNING) << Type() << " raises an exception " << platform::demangle(typeid(ex).name()) << ", " << ex.what(); std::rethrow_exception(std::current_exception()); } catch (...) { LOG(WARNING) << Type() << " raises an unknown exception"; std::rethrow_exception(std::current_exception()); } } bool OperatorBase::HasInputs(const std::string& name) const { return inputs_.find(name) != inputs_.end(); } std::string OperatorBase::Input(const std::string& name) const { auto& ins = Inputs(name); PADDLE_ENFORCE_LE( ins.size(), 1UL, platform::errors::InvalidArgument( "Operator %s's input %s should contain only one variable.", type_, name)); return ins.empty() ? kEmptyVarName : ins[0]; } const std::vector& OperatorBase::Inputs( const std::string& name) const { auto it = inputs_.find(name); PADDLE_ENFORCE_NE( it, inputs_.end(), platform::errors::NotFound("Operator %s does not have the input %s.", type_, name)); return it->second; } bool OperatorBase::HasOutputs(const std::string& name) const { if (outputs_.find(name) != outputs_.end()) { return true; } else { return false; } } std::string OperatorBase::Output(const std::string& name) const { auto& outs = Outputs(name); PADDLE_ENFORCE_LE( outs.size(), 1UL, platform::errors::InvalidArgument( "Operator %s's output %s should contain only one variable.", type_, name)); return outs.empty() ? kEmptyVarName : outs[0]; } const std::vector& OperatorBase::Outputs( const std::string& name) const { auto it = outputs_.find(name); PADDLE_ENFORCE_NE( it, outputs_.end(), platform::errors::NotFound( "Operator %s does not have an output called %s.", type_, name)); return it->second; } std::string OperatorBase::DebugStringEx(const ScopeBase* scope) const { std::stringstream ss; ss << "Op(" << type_ << "), inputs:{"; const std::unordered_set* no_need_buffer_vars = nullptr; if (info_ && info_->NoNeedBufferVarsInferer()) { no_need_buffer_vars = &(Info().NoNeedBufferVarsInferer()(Inputs(), Outputs(), Attrs())); if (no_need_buffer_vars->empty()) no_need_buffer_vars = nullptr; } for (auto it = inputs_.begin(); it != inputs_.end();) { auto& input = *it; bool is_no_need_buffer_var = (no_need_buffer_vars && no_need_buffer_vars->count(input.first) > 0); ss << input.first << "["; for (size_t i = 0; i < input.second.size(); ++i) { auto var_name = input.second[i]; ss << var_name; if (scope) { if (!VarInited(*scope, var_name)) { ss << "[uninited]"; } else { int row_size = GetRowSize(*scope, var_name); if (row_size >= 0) { ss << "[row_size=" << row_size << "]"; } std::string dtype = is_no_need_buffer_var ? "unknown_dtype" : GetDtype(*scope, var_name); ss << ":" << dtype; ss << "[" << GetDimsDebug(*scope, var_name, true) << "]"; ss << "(" << GetLoDDebug(*scope, var_name) << ")"; ss << "(" << GetPlace(*scope, var_name) << ")"; } } if (i != input.second.size() - 1) { ss << ", "; } } ss << "]"; ++it; if (it != inputs_.end()) { ss << ", "; } } ss << "}, outputs:{"; for (auto it = outputs_.begin(); it != outputs_.end();) { auto& output = *it; ss << output.first << "["; for (size_t i = 0; i < output.second.size(); ++i) { auto var_name = output.second[i]; ss << var_name; if (scope) { if (!VarInited(*scope, var_name)) { ss << "[uninited]"; } else { int row_size = GetRowSize(*scope, output.second[i]); if (row_size >= 0) { ss << "[row_size=" << row_size << "]"; } std::string dtype = GetDtype(*scope, output.second[i]); ss << ":" << dtype; ss << "[" << GetDimsDebug(*scope, var_name, true) << "]"; ss << "(" << GetLoDDebug(*scope, var_name) << ")"; ss << "(" << GetPlace(*scope, var_name) << ")"; } } if (i != output.second.size() - 1) { ss << ", "; } } ss << "]"; ++it; if (it != outputs_.end()) { ss << ", "; } } ss << "}."; return ss.str(); } OperatorBase::OperatorBase(const std::string& type, const VariableNameMap& inputs, const VariableNameMap& outputs, const AttributeMap& attrs) : type_(type), inputs_(inputs), outputs_(outputs), attrs_(attrs), // NOTE(zjl): why op_info may be nullptr? info_(OpInfoMap::Instance().GetNullable(type)) { // In dygraph mode, all the OperatorBase will be constructed by function: // framework::OpRegistry::CreateOp(type, {}, {}, {}, false). // Inputs, outputs and attrs will be set to empty map // to improve the execution efficiency of dygraph. if (inputs_.size() > 0 || outputs_.size() > 0) { GenerateTemporaryNames(); CheckAllInputOutputSet(); } } std::vector OperatorBase::InputVars() const { std::vector ret_val; for (auto& o : inputs_) { ret_val.reserve(ret_val.size() + o.second.size()); ret_val.insert(ret_val.end(), o.second.begin(), o.second.end()); } return ret_val; } std::vector OperatorBase::OutputVars(bool has_intermediate) const { std::vector ret_val; if (has_intermediate) { // push all outputs into ret_val for (auto& o : outputs_) { ret_val.reserve(ret_val.size() + o.second.size()); ret_val.insert(ret_val.end(), o.second.begin(), o.second.end()); } return ret_val; } auto& info = Info(); // get all OpProto::Var for outputs for (auto& o : info.Proto().outputs()) { // ignore all intermediate output if (o.intermediate()) continue; auto out = outputs_.find(o.name()); if (out != outputs_.end()) { ret_val.reserve(ret_val.size() + out->second.size()); ret_val.insert(ret_val.end(), out->second.begin(), out->second.end()); } } return ret_val; } void OperatorBase::CheckAllInputOutputSet() const { if (info_ == nullptr || info_->proto_ == nullptr) return; for (auto& in : info_->Proto().inputs()) { if (!in.dispensable() && !in.extra()) { PADDLE_ENFORCE_NE( inputs_.find(in.name()), inputs_.end(), platform::errors::NotFound("Operator %s's input (%s) is not set.", Type(), in.name())); } } for (auto& out : info_->Proto().outputs()) { if (!out.dispensable() && !out.extra()) { PADDLE_ENFORCE_NE( outputs_.find(out.name()), outputs_.end(), platform::errors::NotFound("Operator %s's output (%s) is not set.", Type(), out.name())); } } } void OperatorBase::GenerateTemporaryNames() { static std::atomic gUniqId(0UL); for (auto& output : outputs_) { for (auto& output_name : output.second) { if (output_name == kTempVarName) { output_name += type_; output_name += "@"; output_name += std::to_string(gUniqId.fetch_add(1)); } } } } const Tensor* GetLoDTensorOrSelectedRowsValueFromVar(const Variable& var) { if (var.IsType()) { return static_cast(&(var.Get())); } else if (var.IsType()) { return &(var.Get().value()); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Variable type is %s, expect LoDTensor or SelectedRows.", ToTypeName(var.Type()))); } } Tensor* GetMutableLoDTensorOrSelectedRowsValueFromVar(Variable* var) { if (var->IsType()) { return var->GetMutable(); } else if (var->IsType()) { return var->GetMutable()->mutable_value(); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Variable type is %s, expect LoDTensor or SelectedRows.", ToTypeName(var->Type()))); } } bool ExecutionContext::HasInput(const std::string& name) const { auto* var = InputVar(name); return var != nullptr; } bool ExecutionContext::HasOutput(const std::string& name) const { auto* var = OutputVar(name); return var != nullptr; } const Variable* ExecutionContext::InputVar(const std::string& name) const { LogVarUsageIfUnusedVarCheckEnabled(name); auto it = ctx_.inputs.find(name); if (it == ctx_.inputs.end()) return nullptr; PADDLE_ENFORCE_LE( it->second.size(), 1UL, platform::errors::InvalidArgument( "Operator %s's input %s should contain only one variable.", op_.Type(), name)); return it->second.empty() ? nullptr : it->second[0]; } Variable* ExecutionContext::OutputVar(const std::string& name) const { auto it = ctx_.outputs.find(name); if (it == ctx_.outputs.end()) return nullptr; PADDLE_ENFORCE_LE( it->second.size(), 1UL, platform::errors::InvalidArgument( "Operator %s's output %s should contain only one variable.", op_.Type(), name)); return it->second.empty() ? nullptr : it->second[0]; } template <> const Tensor* ExecutionContext::Input(const std::string& name) const { return Input(name); } template <> const std::vector ExecutionContext::MultiInput( const std::string& name) const { LogVarUsageIfUnusedVarCheckEnabled(name); auto vars = MultiInputVar(name); if (vars.size() == 0) { return {}; } std::vector res; res.reserve(vars.size()); std::transform(vars.begin(), vars.end(), std::back_inserter(res), [&](const Variable* var) -> const Tensor* { if (var == nullptr) return nullptr; PADDLE_ENFORCE_EQ(var->IsType(), true, platform::errors::InvalidArgument( "Input variable should be LoDTensor, " "but the received type is %s.", ToTypeName(var->Type()))); return &(var->Get()); }); return res; } template <> Tensor* ExecutionContext::Output(const std::string& name) const { return Output(name); } template <> std::vector ExecutionContext::MultiOutput( const std::string& name) const { auto vars = MultiOutputVar(name); if (vars.size() == 0) { return {}; } std::vector res; res.reserve(vars.size()); std::transform(vars.begin(), vars.end(), std::back_inserter(res), [&](Variable* var) -> Tensor* { return var == nullptr ? nullptr : var->GetMutable(); }); return res; } bool OpSupportGPU(const std::string& op_type) { auto& all_kernels = OperatorWithKernel::AllOpKernels(); auto it = all_kernels.find(op_type); if (it == all_kernels.end()) { // All control operator must support GPU return true; } for (auto& kern_pair : it->second) { if (platform::is_gpu_place(kern_pair.first.place_)) { return true; } } return false; } class RuntimeInferShapeContext : public InferShapeContext { public: RuntimeInferShapeContext(const OperatorBase& op, const RuntimeContext& ctx) : op_(op), ctx_(ctx) {} bool HasInput(const std::string& name) const override { // has only one input const auto& ins = ctx_.inputs; auto it = ins.find(name); if (it == ins.end()) { return false; } const auto& in = it->second; if (in.size() == 0) return false; PADDLE_ENFORCE_EQ( in.size(), 1UL, platform::errors::InvalidArgument( "Input %s should not contain more than one inputs.", name)); return in[0] != nullptr; } bool HasOutput(const std::string& name) const override { // has only one output const auto& outs = ctx_.outputs; auto it = outs.find(name); if (it == outs.end()) { return false; } const auto& out = it->second; if (out.size() == 0) { return false; } PADDLE_ENFORCE_EQ( out.size(), 1UL, platform::errors::InvalidArgument( "Output %s should not contain more than one outputs.", name)); return out[0] != nullptr; } bool HasInputs(const std::string& name) const override { const auto& ins = ctx_.inputs; auto it = ins.find(name); if (it == ins.end() || it->second.empty()) { return false; } for (auto& input : it->second) { if (input == nullptr) { return false; } } return true; } bool HasOutputs(const std::string& name) const override { const auto& outs = ctx_.outputs; auto it = outs.find(name); if (it == outs.end() || it->second.empty()) { return false; } for (auto& output : it->second) { if (output == nullptr) { return false; } } return true; } AttrReader Attrs() const override { return AttrReader(op_.Attrs()); } std::vector Inputs(const std::string& name) const override { return op_.Inputs(name); } std::vector Outputs(const std::string& name) const override { return op_.Outputs(name); } std::string GetInputNameByIdx(size_t idx) const override { auto& op_proto = paddle::framework::OpInfoMap::Instance().Get(op_.Type()).proto_; PADDLE_ENFORCE_LT(idx, op_proto->inputs().size(), platform::errors::OutOfRange( "The index should be less than the size of inputs of " "operator %s, but got index is %d and size is %d", op_.Type(), idx, op_proto->inputs().size())); return op_proto->inputs()[idx].name(); } std::string GetOutputNameByIdx(size_t idx) const override { auto& op_proto = paddle::framework::OpInfoMap::Instance().Get(op_.Type()).proto_; PADDLE_ENFORCE_LT( idx, op_proto->outputs().size(), platform::errors::OutOfRange( "The index should be less than the size of outputs of " "operator %s, but got index is %d and size is %d", op_.Type(), idx, op_proto->outputs().size())); return op_proto->outputs()[idx].name(); } void ShareDim(const std::string& in, const std::string& out, size_t i = 0, size_t j = 0) override { auto in_it = ctx_.inputs.find(in); auto out_it = ctx_.outputs.find(out); PADDLE_ENFORCE_NE( in_it, ctx_.inputs.end(), platform::errors::NotFound("Input %s does not exist.", in)); PADDLE_ENFORCE_NE( out_it, ctx_.outputs.end(), platform::errors::NotFound("Output %s does not exist.", out)); PADDLE_ENFORCE_LT(i, in_it->second.size(), platform::errors::InvalidArgument( "The index of input dimension is out of range, " "excepted index less than %zu, but received %zu.", in_it->second.size(), i)); PADDLE_ENFORCE_LT(j, out_it->second.size(), platform::errors::InvalidArgument( "The index of output dimension is out of range, " "excepted index less than %zu, but received %zu.", out_it->second.size(), j)); Variable* in_var = in_it->second[i]; Variable* out_var = out_it->second[j]; PADDLE_ENFORCE_EQ( in_var->Type(), out_var->Type(), platform::errors::InvalidArgument( "The type of input (%s) and output (%s) are inconsistent.", in, out)); if (in_var->IsType()) { auto& in_sele_rows = in_var->Get(); auto out_sele_rows = out_var->GetMutable(); out_sele_rows->mutable_value()->Resize(in_sele_rows.value().dims()); out_sele_rows->set_rows(in_sele_rows.rows()); out_sele_rows->set_height(in_sele_rows.height()); } else if (in_var->IsType()) { auto& in_lod_tensor = in_var->Get(); auto* out_lod_tensor = out_var->GetMutable(); out_lod_tensor->Resize(in_lod_tensor.dims()); } else { PADDLE_THROW(platform::errors::Unimplemented( "Currently, the input type of ShareDim only can be LoDTensor " "or SelectedRows.")); } } void ShareAllLoD(const std::string& in, const std::string& out) const override { auto in_it = ctx_.inputs.find(in); auto out_it = ctx_.outputs.find(out); PADDLE_ENFORCE_NE(in_it, ctx_.inputs.end(), platform::errors::NotFound( "Input [%s] found error in Op [%s]", in, op_.Type())); PADDLE_ENFORCE_NE( out_it, ctx_.outputs.end(), platform::errors::NotFound("Output [%s] found error in Op [%s]", out, op_.Type())); auto& in_var_list = in_it->second; auto& out_var_list = out_it->second; PADDLE_ENFORCE_EQ( in_var_list.size(), out_var_list.size(), platform::errors::PreconditionNotMet( "Op [%s]: Input var size should be equal with output var size", op_.Type())); auto& out_var_names = op_.Outputs(out); for (size_t i = 0; i < in_var_list.size(); ++i) { if (out_var_names[i] == framework::kEmptyVarName) { continue; } Variable* in_var = in_var_list[i]; if (!in_var->IsType()) return; Variable* out_var = out_var_list[i]; PADDLE_ENFORCE_EQ(out_var->IsType(), true, platform::errors::PreconditionNotMet( "The %d-th output of Output(%s) must be LoDTensor.", i, out_var_names[i])); auto& in_tensor = in_var->Get(); auto* out_tensor = out_var->GetMutable(); out_tensor->set_lod(in_tensor.lod()); #ifdef PADDLE_WITH_MKLDNN if (in_tensor.layout() != DataLayout::kMKLDNN) #endif out_tensor->set_layout(in_tensor.layout()); } } void ShareLoD(const std::string& in, const std::string& out, size_t i = 0, size_t j = 0) const override { auto in_it = ctx_.inputs.find(in); auto out_it = ctx_.outputs.find(out); PADDLE_ENFORCE_NE( in_it, ctx_.inputs.end(), platform::errors::NotFound("Input %s does not exist.", in)); PADDLE_ENFORCE_NE( out_it, ctx_.outputs.end(), platform::errors::NotFound("Output %s does not exist.", out)); PADDLE_ENFORCE_LT(i, in_it->second.size(), platform::errors::InvalidArgument( "The index of input dimension is out of range, " "excepted index less than %zu, but received %zu.", in_it->second.size(), i)); PADDLE_ENFORCE_LT(j, out_it->second.size(), platform::errors::InvalidArgument( "The index of output dimension is out of range, " "excepted index less than %zu, but received %zu.", out_it->second.size(), j)); Variable* in_var = in_it->second.at(i); if (!in_var->IsType()) return; Variable* out_var = out_it->second.at(j); PADDLE_ENFORCE_EQ( out_var->IsType(), true, platform::errors::InvalidArgument( "The %zu-th output of Output(%s) must be LoDTensor.", j, out)); auto& in_tensor = in_var->Get(); auto* out_tensor = out_var->GetMutable(); out_tensor->set_lod(in_tensor.lod()); // TODO(dzhwinter) : reuse ShareLoD in most operators. // Need to call ShareLayout explicitly in sequence related ops. // Shall we have a better method to shared info between in/out Tensor? #ifdef PADDLE_WITH_MKLDNN // Fix me: ugly workaround below // Correct solution: // set_layout() should NOT be called here (i.e. ShareLoD). Instead, // layout of output tensor should be set "manually" in Compute() // of each OPKernel. The reason layout should NOT be shared between // input and output "automatically" (now by InferShape()->ShareLoD()) // is that layout transform may occur after InferShape(). // Workaround: // Skip set_layout() when input layout is kMKLDNN // This is to avoid kMKLDNN is populated wrongly into a non-MKLDNN // OPKernel. In all MKLDNN OPkernel, set_layout(kMKLDNN) should be called // in Compute() if (in_tensor.layout() != DataLayout::kMKLDNN) #endif out_tensor->set_layout(in_tensor.layout()); } int32_t GetLoDLevel(const std::string& in, size_t i = 0) const override { PADDLE_THROW(platform::errors::PreconditionNotMet( "GetLoDLevel is only used in compile time. The calculation of " "output's actual lod is different among operators so that should be " "set in the runtime kernel.")); } void SetLoDLevel(const std::string& out, int32_t lod_level, size_t j = 0) const override { PADDLE_THROW(platform::errors::PreconditionNotMet( "SetLoDLevel is only used in compile time. The calculation of " "output's actual lod is different among operators so that should be " "set in the runtime kernel.")); } bool IsRuntime() const override { return true; } // TODO(paddle-dev): Can this be template? std::vector GetInputVarPtrs( const std::string& name) const override { const std::vector& vars = InputVars(name); std::vector res; res.reserve(vars.size()); res.insert(res.begin(), vars.begin(), vars.end()); return res; } std::vector GetOutputVarPtrs( const std::string& name) const override { const std::vector& vars = OutputVars(name); std::vector res; res.reserve(vars.size()); res.insert(res.begin(), vars.begin(), vars.end()); return res; } DDim GetInputDim(const std::string& name) const override { const std::vector& vars = InputVars(name); PADDLE_ENFORCE_EQ( vars.size(), 1UL, platform::errors::InvalidArgument( "Input(%s) should hold one element, but now it holds %zu elements.", name, vars.size())); return this->GetDim(vars[0]); } std::vector GetInputsDim(const std::string& name) const override { const std::vector& vars = InputVars(name); return GetDims(vars); } std::vector GetInputsVarType( const std::string& name) const override { return GetVarTypes(InputVars(name)); } std::vector GetOutputsVarType( const std::string& name) const override { return GetVarTypes(OutputVars(name)); } void SetOutputDim(const std::string& name, const DDim& dim) override { auto& vars = OutputVars(name); PADDLE_ENFORCE_EQ( vars.size(), 1UL, platform::errors::InvalidArgument("Output(%s) should hold one element, " "but now it holds %zu elements.", name, vars.size())); SetDim(vars[0], dim); } void SetOutputsDim(const std::string& name, const std::vector& dims) override { auto& vars = OutputVars(name); SetDims(vars, dims); } protected: DDim GetDim(Variable* var) const { PADDLE_ENFORCE_NOT_NULL( var, platform::errors::InvalidArgument("Input variable is nullptr.")); if (var->IsType()) { return var->Get().dims(); } else if (var->IsType()) { return var->Get().GetCompleteDims(); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Only LoDTensor or SelectedRows support 'GetDim', but input " "Variable's type is %s.", ToTypeName(var->Type()))); } } std::vector GetDims(const std::vector& vars) const { std::vector ret; ret.reserve(vars.size()); std::transform(vars.begin(), vars.end(), std::back_inserter(ret), [this](Variable* var) { return this->GetDim(var); }); return ret; } std::vector GetRepeatedDims(const std::string& name) const override { PADDLE_THROW(platform::errors::PreconditionNotMet( "GetRepeatedDims method only ban be used in compile time.")); } void SetDim(Variable* var, const DDim& dim) { if (var->IsType()) { var->GetMutable()->Resize(dim); } else if (var->IsType()) { var->GetMutable()->set_height(dim[0]); } else { PADDLE_THROW(platform::errors::Unimplemented( "Variable type error, expect LoDTensor or SelectedRows, but received " "(%s).", ToTypeName(var->Type()))); } } void SetDims(const std::vector& vars, const std::vector& dims) { size_t length = vars.size(); PADDLE_ENFORCE_EQ(length, dims.size(), platform::errors::InvalidArgument( "The number of input variables do not match the " "number of input dimensions, the number of variables " "is %zu, the number of dimensions is %zu.", length, dims.size())); for (size_t i = 0; i < length; ++i) { if (vars[i] == nullptr) { continue; } SetDim(vars[i], dims[i]); } } void SetRepeatedDims(const std::string& name, const std::vector& dims) override { PADDLE_THROW(platform::errors::PreconditionNotMet( "SetRepeatedDims method only can be used in compile time.")); } std::vector GetVarTypes( const std::vector& vars) const { std::vector retv; retv.resize(vars.size()); std::transform(vars.begin(), vars.end(), retv.begin(), std::bind(std::mem_fn(&RuntimeInferShapeContext::GetVarType), this, std::placeholders::_1)); return retv; } proto::VarType::Type GetVarType(Variable* var) const { return ToVarType(var->Type()); } private: const std::vector& InputVars(const std::string& name) const { auto it = ctx_.inputs.find(name); PADDLE_ENFORCE_NE( it, ctx_.inputs.end(), platform::errors::NotFound( "Operator (%s) does not have the input (%s).", op_.Type(), name)); return it->second; } const std::vector& OutputVars(const std::string& name) const { auto it = ctx_.outputs.find(name); PADDLE_ENFORCE_NE( it, ctx_.outputs.end(), platform::errors::NotFound( "Operator (%s) does not have the outputs (%s).", op_.Type(), name)); return it->second; } const OperatorBase& op_; const RuntimeContext& ctx_; }; static void CheckTensorNANOrInf(const std::string& op_type, const std::string& name, const framework::Tensor& tensor) { if (tensor.memory_size() == 0) { return; } if (tensor.type() != proto::VarType::FP32 && tensor.type() != proto::VarType::FP64) { return; } PADDLE_ENFORCE_NE( framework::TensorContainsInf(tensor), true, platform::errors::Fatal("Operator %s output Tensor %s contains Inf.", op_type, name)); PADDLE_ENFORCE_NE( framework::TensorContainsNAN(tensor), true, platform::errors::Fatal("Operator %s output Tensor %s contains NAN.", op_type, name)); } bool OperatorWithKernel::SupportsMKLDNN( const proto::VarType::Type data_type) const { auto& op_kernels = OperatorWithKernel::AllOpKernels().at(type_); return std::any_of(op_kernels.begin(), op_kernels.end(), [data_type](OpKernelMap::const_reference kern_pair) { return platform::is_cpu_place(kern_pair.first.place_) && kern_pair.first.library_type_ == LibraryType::kMKLDNN && kern_pair.first.data_type_ == data_type; }); } bool OperatorWithKernel::CanMKLDNNBeUsed(const framework::ExecutionContext& ctx, proto::VarType::Type data_type) const { bool use_mkldnn_ctx = ctx.HasAttr("use_mkldnn") && ctx.Attr("use_mkldnn") && platform::is_cpu_place(ctx.GetPlace()); return use_mkldnn_ctx && this->SupportsMKLDNN(data_type); } void OperatorWithKernel::RuntimeInferShape(const Scope& scope, const platform::Place& place, const RuntimeContext& ctx) const { RuntimeInferShapeContext infer_shape_ctx(*this, ctx); this->Info().infer_shape_(&infer_shape_ctx); } void OperatorWithKernel::RunImpl(const Scope& scope, const platform::Place& place) const { // To reduce the elapsed time of HasAttr, we use bool variable to record the // result of HasAttr. if (!enable_cache_runtime_context_ && HasAttr(kEnableCacheRuntimeContext)) enable_cache_runtime_context_ = true; if (!all_kernels_must_compute_runtime_shape_ && HasAttr(kAllKernelsMustComputeRuntimeShape)) all_kernels_must_compute_runtime_shape_ = true; const Scope* cur_scope = &scope; if (!enable_cache_runtime_context_) { RuntimeContext ctx(Inputs(), Outputs(), scope); RunImpl(scope, place, &ctx); pre_scope_ = cur_scope; } else { if (runtime_ctx_.get() == nullptr || pre_scope_ != cur_scope) { std::lock_guard lock(cache_update_mutex_); if (runtime_ctx_.get() == nullptr || pre_scope_ != cur_scope) { runtime_ctx_.reset(new RuntimeContext(Inputs(), Outputs(), scope)); pre_scope_ = cur_scope; } } RunImpl(scope, place, runtime_ctx_.get()); } } void OperatorWithKernel::RunImpl(const Scope& scope, const platform::Place& place, RuntimeContext* runtime_ctx) const { platform::DeviceContextPool& pool = platform::DeviceContextPool::Instance(); auto* dev_ctx = pool.Get(place); #ifdef PADDLE_WITH_ASCEND_CL // NOTE(wangxi): nan/inf cannot be detected on NPU by checking the variable // values, but only through special `float_status` to checks whether // the operation is overflow. More about `float_status`, see: // https://gitee.com/ascend/modelzoo/issues/I3NF8V?from=project-issue if (FLAGS_check_nan_inf) { framework::details::NPUAllocAndClearFloatStatus(*this, scope, place); } #endif auto exe_ctx = ExecutionContext(*this, scope, *dev_ctx, *runtime_ctx); // TODO(chenweihang): Now we are still reusing a lot of the original fluid // implementation, this is a gradual replacement process // TODO(chenweihang): in the first phase of project, we only support CPU, CUDA // and RCOM backend, the XPU, NPU and MKLDNN will be supported in the second // phase if (FLAGS_run_pten_kernel && pten::KernelFactory::Instance().HasCompatiblePtenKernel(type_)) { if (pt_kernel_signature_ == nullptr || pt_kernel_ == nullptr) { ChoosePtenKernel(exe_ctx); } run_pten_kernel_ = pt_kernel_->IsValid(); } if (!run_pten_kernel_) { if (kernel_type_.get() == nullptr || kernel_func_.get() == nullptr) { ChooseKernel(exe_ctx); } } // do data transformScope &transfer_scope; std::vector transfered_inplace_vars; Scope* transfer_scope = nullptr; { platform::RecordEvent record_event("prepare_data", platform::EventRole::kInnerOp); if (need_prepare_data_) { transfer_scope = PrepareData(scope, *kernel_type_, &transfered_inplace_vars, runtime_ctx); } } // exec scope is the scope that kernel actually executed on. const Scope& exec_scope = (transfer_scope == nullptr ? scope : *transfer_scope); if (!(kernel_type_->place_ == dev_ctx->GetPlace())) { dev_ctx = pool.Get(kernel_type_->place_); } if (!all_kernels_must_compute_runtime_shape_) { platform::RecordEvent record_event("infer_shape", platform::EventRole::kInnerOp); RuntimeInferShapeContext infer_shape_ctx(*this, *runtime_ctx); // TODO(chenweihang): replace this after removing `this->IsMKLDNNType()` // in some mkldnn infershape functions, such conv2d infershape this->InferShape(&infer_shape_ctx); } if (FLAGS_enable_unused_var_check) { GetThreadLocalUsedVarNameSet()->clear(); } // TODO(panyx0718): ExecutionContext should only depend on RuntimeContext // not Scope. Imperative mode only pass inputs and get outputs. { platform::RecordEvent record_event("compute", platform::EventRole::kInnerOp); if (run_pten_kernel_) { if (pt_kernel_context_ == nullptr) { pt_kernel_context_.reset(new pten::KernelContext()); } BuildPtenKernelContext(*runtime_ctx, dev_ctx); (*pt_kernel_)(pt_kernel_context_.get()); WriteBackToOutputs(runtime_ctx); pt_kernel_context_->ClearData(); } else { (*kernel_func_)( ExecutionContext(*this, exec_scope, *dev_ctx, *runtime_ctx)); } } if (!transfered_inplace_vars.empty()) { // there is inplace variable has been transferred. TransferInplaceVarsBack(scope, transfered_inplace_vars, *transfer_scope); } // See [ Why need handle complex gradient to real gradient? ] // Only handle the case where the current kernel data type is complex if (framework::IsComplexType(kernel_type_->data_type_)) { HandleComplexGradToRealGrad(scope, runtime_ctx); } if (FLAGS_enable_unused_var_check) { // skip op that uses mkldnn because it has different memory reuse strategy. // use attr here because some GradMakers (like ActivationGradOpMaker) add // input when use_mkldnn=true; if (!(HasAttr("use_mkldnn") && Attr("use_mkldnn"))) { CheckUnusedVar(*this, scope); } } /*For profiling/benchmark only*/ if (FLAGS_benchmark) { dev_ctx->Wait(); #if defined(PADDLE_WITH_CUDA) || defined(PADLDE_WITH_ROCM) PADDLE_ENFORCE_GPU_SUCCESS(platform::GpuGetLastError()); #endif VLOG(4) << "Operator(" << Type() << "): context wait and get last error"; } if (FLAGS_check_nan_inf) { framework::details::CheckOpHasNanOrInf(*this, exec_scope, place); } // To solve issue #15032, have a discussion with @Luotao for cpu inference, // do not cache transfer scope, hence in this case delete transfer scope // after run to avoid memory leak if (transfer_scope && !run_by_executor_ && !enable_cache_transfer_scope_) { scope.DeleteScope(transfer_scope); } } OpKernelType OperatorWithKernel::InnerGetExpectedKernelType( const ExecutionContext& ctx) const { auto& dev_ctx = ctx.device_context(); auto expected_kernel_key = this->GetExpectedKernelType(ctx); if (HasAttr("op_device")) { if (Attr("op_device") == "cpu") { expected_kernel_key.place_ = platform::CPUPlace(); } else if (Attr("op_device").find("gpu") != std::string::npos) { auto device = Attr("op_device"); size_t pos = device.find(':'); if (pos != std::string::npos) { device = device.substr(0, pos); LOG_FIRST_N(WARNING, 1) << "Device index is only supported under pipeline parallelism, " << "so it will be ignored."; } // when the Op that only has CPUKernel is assigned to GPU, the CPUKernel // will be executed and a warning will be given at the same time. if (SupportGPU()) { expected_kernel_key.place_ = dev_ctx.GetPlace(); } else if (SupportNPU()) { expected_kernel_key.place_ = dev_ctx.GetPlace(); } else { expected_kernel_key.place_ = platform::CPUPlace(); LOG_FIRST_N(WARNING, 1) << "Op(" << type_ << ") has no CUDA implementation. It will be assigned to CPUPlace."; } } } VLOG(3) << "op type:" << type_ << ", expected_kernel_key:" << expected_kernel_key; return expected_kernel_key; } void OperatorWithKernel::ChoosePtenKernel(const ExecutionContext& ctx) const { pt_kernel_signature_.reset( new KernelSignature(std::move(this->GetExpectedPtenKernelArgs(ctx)))); VLOG(6) << KernelSignatureToString(*pt_kernel_signature_.get()); kernel_type_.reset( new OpKernelType(std::move(InnerGetExpectedKernelType(ctx)))); auto pt_kernel_name = pt_kernel_signature_->name; auto pt_kernel_key = TransOpKernelTypeToPtenKernelKey(*kernel_type_.get()); pt_kernel_.reset( new pten::Kernel(pten::KernelFactory::Instance().SelectKernel( pt_kernel_name, pt_kernel_key))); if (pt_kernel_->IsValid()) { VLOG(6) << "Static mode ChoosePtenKernel - kernel name: " << pt_kernel_name << " | kernel key: " << pt_kernel_key << " | kernel: " << *pt_kernel_; } else { VLOG(6) << "Static mode ChoosePtenKernel - kernel `" << pt_kernel_name << "` not found."; } } void OperatorWithKernel::ChooseKernel(const ExecutionContext& ctx) const { // check if op[type] has kernel registered. auto& all_op_kernels = AllOpKernels(); auto kernels_iter = all_op_kernels.find(type_); PADDLE_ENFORCE_NE( kernels_iter, all_op_kernels.end(), platform::errors::Unavailable( "There are no kernels which are registered in the %s operator.", type_)); OpKernelMap& kernels = kernels_iter->second; auto expected_kernel_key = InnerGetExpectedKernelType(ctx); auto kernel_iter = kernels.find(expected_kernel_key); #ifdef PADDLE_WITH_MKLDNN // workaround for missing MKLDNN kernel when FLAGS_use_mkldnn env var is set if (kernel_iter == kernels.end() && expected_kernel_key.library_type_ == LibraryType::kMKLDNN) { VLOG(3) << "missing MKLDNN kernel: fallbacking to PLAIN one"; expected_kernel_key.library_type_ = LibraryType::kPlain; expected_kernel_key.data_layout_ = DataLayout::kAnyLayout; kernel_iter = kernels.find(expected_kernel_key); } #endif #ifdef PADDLE_WITH_XPU if (is_xpu_place(expected_kernel_key.place_) && (kernel_iter == kernels.end() || !paddle::platform::is_xpu_support_op(type_, expected_kernel_key) || paddle::platform::is_in_xpu_black_list(type_))) { VLOG(3) << "missing XPU kernel: " << type_ << ", expected_kernel_key:" << expected_kernel_key << ", fallbacking to CPU one!"; expected_kernel_key.place_ = platform::CPUPlace(); kernel_iter = kernels.find(expected_kernel_key); } #endif #ifdef PADDLE_WITH_ASCEND_CL if (kernel_iter == kernels.end() && is_npu_place(expected_kernel_key.place_)) { VLOG(3) << "missing NPU kernel: " << type_ << ", expected_kernel_key:" << expected_kernel_key << ", fallbacking to CPU one!"; expected_kernel_key.place_ = platform::CPUPlace(); kernel_iter = kernels.find(expected_kernel_key); } #endif #ifdef PADDLE_WITH_MLU if (kernel_iter == kernels.end() && is_mlu_place(expected_kernel_key.place_)) { VLOG(3) << "missing MLU kernel: " << type_ << ", expected_kernel_key:" << expected_kernel_key << ", fallbacking to CPU one!"; expected_kernel_key.place_ = platform::CPUPlace(); kernel_iter = kernels.find(expected_kernel_key); } #endif PADDLE_ENFORCE_NE(kernel_iter, kernels.end(), platform::errors::NotFound( "Operator (%s) does not have kernel for %s.", type_, KernelTypeToString(expected_kernel_key))); std::lock_guard lock(cache_update_mutex_); if (kernel_type_.get() == nullptr || kernel_func_.get() == nullptr) { kernel_type_.reset(new OpKernelType(expected_kernel_key)); kernel_func_.reset(new OpKernelFunc(kernel_iter->second)); } } void OperatorWithKernel::TransferInplaceVarsBack( const Scope& scope, const std::vector& inplace_vars, const Scope& transfer_scope) const { for (auto& var_name : inplace_vars) { VLOG(3) << "share inplace var " + var_name + " back to it's original scope"; auto* origin_var = scope.FindVar(var_name); PADDLE_ENFORCE_NOT_NULL(origin_var, platform::errors::InvalidArgument( "The variable[%s] is nullptr.", var_name)); auto* original_tensor = GetMutableLoDTensorOrSelectedRowsValueFromVar(origin_var); auto* var = transfer_scope.FindVar(var_name); PADDLE_ENFORCE_NOT_NULL(var, platform::errors::InvalidArgument( "The variable[%s] is nullptr.", var_name)); auto* transformed_tensor = GetLoDTensorOrSelectedRowsValueFromVar(*var); auto original_dims = original_tensor->dims(); original_tensor->ShareDataWith(*transformed_tensor); // In order to solve the problem that the output latitude of NPU reshape // operator is not changed when inplace. if (type_ != "reshape2" && type_ != "reshape2_grad") { original_tensor->Resize(original_dims); } } } void OperatorWithKernel::HandleComplexGradToRealGrad( const Scope& scope, RuntimeContext* ctx) const { for (auto& var_name_item : Outputs()) { std::vector& output_vars = ctx->outputs[var_name_item.first]; for (size_t i = 0; i < var_name_item.second.size(); ++i) { // 1. find grad_var & check whether is complex tensor auto var_name = var_name_item.second[i]; auto orig_var_name = GradOriginalVarName(var_name); // only focus on gradient var if (var_name == orig_var_name) { continue; } auto* grad_var = output_vars[i]; // skip nullptr var if (grad_var == nullptr) { continue; } // don't process LoDTensorArray temporarily, // add support if necessary for complex number calculations in the future if (!VarIsTensor(*grad_var)) { continue; } auto* grad_tensor = GetMutableLoDTensorOrSelectedRowsValueFromVar(grad_var); // skip nullptr tensor if (grad_tensor == nullptr || !grad_tensor->IsInitialized()) { continue; } // only focus on complex dtype now auto src_type = grad_tensor->type(); if (!IsComplexType(src_type)) { continue; } // 2. find forward var & check whether need to cast auto* var = scope.FindVar(orig_var_name); // if forward var not exists, do nothing if (var == nullptr) { continue; } if (!VarIsTensor(*var)) { continue; } const auto* tensor = GetLoDTensorOrSelectedRowsValueFromVar(*var); PADDLE_ENFORCE_NOT_NULL( tensor, platform::errors::Unavailable( "Forward tensor is nullptr when handle complex data to real.")); // only need record type, the allocation may have been released auto dst_type = tensor->saved_type(); // only focus on real dtype and need casting if (IsComplexType(dst_type)) { continue; } // 3. cast complex grad to real grad VLOG(6) << "Transform " << framework::DataTypeToString(src_type) << " var `" << var_name << "` to " << framework::DataTypeToString(dst_type) << " real var in static graph."; Tensor out; TransComplexToReal(dst_type, src_type, *grad_tensor, &out); SetTensorToVariable(*grad_var, out, grad_var); } } } Scope* OperatorWithKernel::PrepareData( const Scope& scope, const OpKernelType& expected_kernel_key, std::vector* transfered_inplace_vars, RuntimeContext* ctx) const { Scope* new_scope = nullptr; const std::unordered_set* no_buffer_ins = nullptr; if (info_) { auto& no_buffer_inferer = info_->NoNeedBufferVarsInferer(); // Some op may not register NoNeedBufferVarsInferer if (no_buffer_inferer) { no_buffer_ins = &(no_buffer_inferer(Inputs(), Outputs(), Attrs())); if (no_buffer_ins->empty()) no_buffer_ins = nullptr; } } for (auto& var_name_item : Inputs()) { bool should_skip_input = no_buffer_ins && no_buffer_ins->count(var_name_item.first) > 0; std::vector& input_vars = ctx->inputs[var_name_item.first]; for (size_t i = 0; i < var_name_item.second.size(); ++i) { auto& var_name = var_name_item.second[i]; auto* var = input_vars[i]; // Only tensor can be tranfer to another device. if (var == nullptr || !VarIsTensor(*var)) { continue; } auto* tensor_in = GetLoDTensorOrSelectedRowsValueFromVar(*var); // When no_buffer_ins then checking of Tensor::holder_ is // not a thread safe. And for infershape scenario checks // to be omitted are not really needed if (should_skip_input == true) { #ifdef PADDLE_WITH_MKLDNN // Var without buffer may be needed // for some situation like InferShape(). // In this situation We cannot skip Var analysis, as // MKL-DNN shape of Var may differ from kNHWC Var // In such situation corressponding resized Var // has to be created and registered if ((tensor_in->layout() == DataLayout::kMKLDNN) && (var->IsType() == true) && (expected_kernel_key.data_layout_ != DataLayout::kMKLDNN) && (paddle::platform::MKLDNNDeviceContext::tls() .get_cur_paddle_data_layout() == DataLayout::kNHWC)) { // Mixed execution : MKL-DNN and GPU is not supported! if (!new_scope) { new_scope = &scope.NewScope(); } auto* trans_var = new_scope->Var(var_name); input_vars[i] = trans_var; auto out = trans_var->GetMutable(); out->Resize(tensor_in->dims()); platform::MatchShapeToLayout(out, tensor_in->layout(), DataLayout::kNHWC); VLOG(7) << "Created reshaped dummy input based on MKL-DNN Tensor , " "but kNHWC layout" << var_name_item.first << " in Operator " << type_; } else { VLOG(7) << "Skip scanning input " << var_name_item.first << " in Operator " << type_; } #endif continue; } if (!tensor_in->IsInitialized()) { continue; } auto kernel_type_for_var = GetKernelTypeForVar( var_name_item.first, *tensor_in, expected_kernel_key); if (!NeedTransform(kernel_type_for_var, expected_kernel_key)) { continue; } VLOG(3) << "Transform Variable " << var_name << " from " << kernel_type_for_var << " to " << expected_kernel_key; // In the inference scenerio, the scopes will be reused across the // batches, so the `new_scope` here will result in GPU memroy explosion // over the running of operators. // We use a thread_local cache to fix that issue, the key in the cache is // the combination of the `scope` argument, from_kernel_type, // target_kernel_type. // Have a discussion with @Superjomn or the inference developers if some // changes on this logic for this macro might not tested on the other // scenerios. // If this op is not called by an Executor or ParallelExecutor, it should // called by a NaiveExecutor, the NaiveExecutor will cache the scopes and // variables, that behavior a lot different. // // To solve issue #15032, have a discussion with @Luotao for cpu // inference, for all cpu kernels cases without GPU participation, here // not do transfer scope caching, and cpu inference performance is not // impacted by test. enable_cache_transfer_scope_ = false; if (!run_by_executor_ && (platform::is_gpu_place(kernel_type_for_var.place_) || platform::is_gpu_place(expected_kernel_key.place_))) { new_scope = TryCreateTransferScope(kernel_type_for_var, expected_kernel_key, &scope); enable_cache_transfer_scope_ = true; } if (!new_scope) { new_scope = &scope.NewScope(); } // For inference, if a gpu model has an op which could only run on CPU, // each result of different input will be the same with the first one. // The reason is that if a gpu tensor is the input of a cpu kernel, // we will create a new cpu tensor in new scope. // However, if enable_cache_runtime_context_, we get the cpu tensor each // time, not the gpu tensor. Thus, we set pre_scope_ = nullptr // to trigger `new RuntimeContext()` in RunImpl(). if (enable_cache_runtime_context_) { pre_scope_ = nullptr; } // Create new var with the same name in transfer scopes auto* trans_var = new_scope->Var(var_name); input_vars[i] = trans_var; // Find if inplace exists between input and output // If inplace exists, set the new created var to inplaced output, and // record its name in transfered_inplace_vars. for (auto& pair : Outputs()) { for (size_t j = 0; j < pair.second.size(); ++j) { if (pair.second[j] == var_name) { VLOG(4) << "Found inplace between input(" << var_name_item.first << ") and output(" << pair.first << "), the variable name is " << var_name; ctx->outputs[pair.first][j] = trans_var; transfered_inplace_vars->emplace_back(var_name); } } } // Do transfer Tensor out; TransformData(expected_kernel_key, kernel_type_for_var, *tensor_in, &out); SetTensorToVariable(*var, out, trans_var); } } // If pre_scope = &scope, it means that scope is cached and the op is not in // while block. If new_scope = nullptr, it means that for each input of this // Op, there is no need to do PrepareData. So PrepareData could be skipped at // the rest iterations to save the elapsed time. // We do not support skipping PrepareData in while block, because the Op's // input may be changed by subsequent Ops, which may cause an error. // For inference, ops that behind conditional branch aren't supported well, // so disable prepare optimization conservatively. bool force_prepare_data = HasAttr("inference_force_prepare_data") && Attr("inference_force_prepare_data"); if (pre_scope_ == &scope && new_scope == nullptr && !force_prepare_data) { need_prepare_data_ = false; } return new_scope; } void OperatorWithKernel::ParseInputDataType( const std::vector& vars, const std::string& name, proto::VarType::Type* data_type) const { proto::VarType::Type default_data_type = static_cast(-1); for (size_t i = 0; i < vars.size(); ++i) { const Variable* var = vars[i]; if (var != nullptr) { const Tensor* t = nullptr; if (var->IsType()) { t = &var->Get(); } else if (var->IsType()) { t = &var->Get(); } else if (var->IsType()) { t = &(var->Get().value()); } else if (var->IsType()) { auto t_arr = &var->Get(); for (size_t j = 0; j < t_arr->size(); j++) { if (t_arr->at(j).IsInitialized()) { t = &(t_arr->at(j)); } } } if (t != nullptr) { PADDLE_ENFORCE_EQ( t->IsInitialized(), true, platform::errors::InvalidArgument("The %s Op's Input Variable `%s` " "contains uninitialized Tensor.", Type(), name)); proto::VarType::Type tmp = t->type(); PADDLE_ENFORCE(tmp == *data_type || *data_type == default_data_type, platform::errors::InvalidArgument( "The DataType of %s Op's duplicable or different " "slot Variable %s must be " "consistent or reigster GetExpectedKernelType. The " "current variable type is (%s), but the " "previous variable type is (%s).", Type(), name, DataTypeToString(tmp), DataTypeToString(*data_type))); *data_type = tmp; } } } } proto::VarType::Type OperatorWithKernel::IndicateDataType( const ExecutionContext& ctx) const { proto::VarType::Type dafault_data_type = static_cast(-1); proto::VarType::Type data_type = dafault_data_type; for (auto& input : ctx.InNameList()) { const std::vector vars = ctx.MultiInputVar(input); ParseInputDataType(vars, input, &data_type); } PADDLE_ENFORCE_NE( data_type, dafault_data_type, platform::errors::NotFound( "DataType should be indicated by input Variable at %s.", Type())); return data_type; } proto::VarType::Type OperatorWithKernel::IndicateVarDataType( const ExecutionContext& ctx, const std::string& name) const { proto::VarType::Type dafault_data_type = static_cast(-1); proto::VarType::Type data_type = dafault_data_type; ParseInputDataType(ctx.MultiInputVar(name), name, &data_type); PADDLE_ENFORCE_NE( data_type, dafault_data_type, platform::errors::InvalidArgument( "The Input Variable(%s) of (%s) Operator used to determine kernel " "data type is empty or not LoDTensor or SelectedRows or " "LoDTensorArray.", name, Type())); return data_type; } Tensor* OperatorWithKernel::GetTensorFormInputSafely( const ExecutionContext& ctx, const std::string& name) const { // 1. get variable and check // NOTE: only supports signal input var now // NOTE: using const_cast is because we don't have method // can get single mutable var, and here will not change // the var's data, only use some attribute Variable* var = const_cast(ctx.InputVar(name)); PADDLE_ENFORCE_NOT_NULL( var, platform::errors::NotFound( "The variable %s is not found when promote complex types.", name)); // 2. get tensor and check Tensor* t = nullptr; if (var->IsType()) { t = var->GetMutable(); } else if (var->IsType()) { t = var->GetMutable(); } else if (var->IsType()) { t = var->GetMutable()->mutable_value(); } else { PADDLE_THROW(platform::errors::Unimplemented( "Unsupported input variable type in complex type promotion.")); } PADDLE_ENFORCE_NOT_NULL( t, platform::errors::InvalidArgument( "The Tensor of variable %s is nullptr when promote complex types.")); PADDLE_ENFORCE_EQ(t->IsInitialized(), true, platform::errors::InvalidArgument( "The Tensor in the %s Op's Input Variable %s(%s) is " "not initialized.", Type(), name, ctx.InputName(name))); return t; } /** NOTE(chenweihang): For safety reasons, we now only * perform type promotes for binary operations with * complex type inputs, which is used to support the * paddle quantum function. * In other cases, the first input data type is used as * the kernel data type. */ proto::VarType::Type OperatorWithKernel::IndicateOrPromoteVarDataTypes( const ExecutionContext& ctx, const std::string& name1, const std::string& name2) const { // 1. Get tensor auto* tensor_a = GetTensorFormInputSafely(ctx, name1); auto* tensor_b = GetTensorFormInputSafely(ctx, name2); // 2. Get two input types auto type_a = tensor_a->type(); auto type_b = tensor_b->type(); // 3. Get first input type or promote complex types auto target_type = PromoteTypesIfComplexExists(type_a, type_b); return target_type; } OpKernelType OperatorWithKernel::GetExpectedKernelType( const ExecutionContext& ctx) const { return OpKernelType(IndicateDataType(ctx), ctx.GetPlace()); } OpKernelType OperatorWithKernel::GetKernelTypeForVar( const std::string& var_name, const Tensor& tensor, const OpKernelType& expected_kernel_type) const { return OpKernelType(expected_kernel_type.data_type_, tensor.place(), tensor.layout()); } KernelSignature OperatorWithKernel::GetExpectedPtenKernelArgs( const ExecutionContext& ctx) const { return KernelSignatureMap::Instance().Get( pten::TransToPtenKernelName(Type())); } void OperatorWithKernel::BuildPtenKernelContext( const RuntimeContext& ctx, platform::DeviceContext* dev_ctx) const { if (pt_kernel_context_ == nullptr) { pt_kernel_context_.reset(new pten::KernelContext()); } // TODO(chenweihang): now only work for very simple case, // many cases need to be deal with later: // 1. the input and output are not tensor // 2. the dispensbale, duplicable input and output // 3. needless attributes remove // 4. use pt Tensor directly // 5. kernel input is not DenseTensor pt_kernel_context_->SetDeviceContext(dev_ctx); auto& input_names = std::get<0>(pt_kernel_signature_->args); auto& attr_names = std::get<1>(pt_kernel_signature_->args); auto& output_names = std::get<2>(pt_kernel_signature_->args); auto input_defs = pt_kernel_->args_def().input_defs(); auto attr_defs = pt_kernel_->args_def().attribute_defs(); auto output_defs = pt_kernel_->args_def().output_defs(); PADDLE_ENFORCE_EQ(input_names.size(), input_defs.size(), platform::errors::InvalidArgument( "The size of inputs_args names (%d) must be equal to " "the size of kernel input_defs (%d).", input_names.size(), input_defs.size())); PADDLE_ENFORCE_EQ(output_names.size(), output_defs.size(), platform::errors::InvalidArgument( "The size of outputs_args names (%d) must be equal to " "the size of kernel output_defs (%d).", output_names.size(), output_defs.size())); PADDLE_ENFORCE_EQ(attr_names.size(), attr_defs.size(), platform::errors::InvalidArgument( "The size of attribute_args names (%d) must be equal " "to the size of kernel attribute_defs (%d).", attr_names.size(), attr_defs.size())); for (size_t i = 0; i < input_names.size(); ++i) { auto& in_def = input_defs.at(i); auto& ins_vector = ctx.inputs.at(input_names[i]); // calcute the start and end index of the input tensors size_t start_idx = (i == 0 ? 0 : pt_kernel_context_->InputRangeAt(i - 1).second); size_t end_idx = start_idx + ins_vector.size(); auto current_vector_size = pt_kernel_context_->InputsSize(); // If the memory needed is less than the current memory allocated, we will // reuse the current memory by using ReMakePtenDenseTensorFromVar. // Otherwise,we will create new storage. for (size_t offset = 0; offset < ins_vector.size(); ++offset) { if (current_vector_size > start_idx + offset) { auto& input_ptr = pt_kernel_context_->MutableInputPtrAt(start_idx + offset); if (input_ptr == nullptr) { input_ptr = experimental::MakePtenTensorBaseFromVar( *ins_vector[offset], in_def); } else { experimental::ReMakePtenDenseTensorFromVar( *ins_vector[offset], in_def, pt_kernel_context_->MutableInputAt(start_idx + offset)); } } else { pt_kernel_context_->EmplaceBackInputWithoutSetRange( experimental::MakePtenTensorBaseFromVar(*ins_vector[offset], in_def)); } } pt_kernel_context_->AssignInputRange(std::make_pair(start_idx, end_idx), i); } for (size_t i = 0; i < output_names.size(); ++i) { auto& out_def = output_defs.at(i); auto& outs_vector = ctx.outputs.at(output_names[i]); size_t start_idx = (i == 0 ? 0 : pt_kernel_context_->OutputRangeAt(i - 1).second); size_t end_idx = start_idx + outs_vector.size(); auto current_vector_size = pt_kernel_context_->OutputsSize(); // If the memory needed is less than the current memory allocated, we will // reuse the current memory by using ReMakePtenDenseTensorFromVar. // Otherwise,we will create new storage. for (size_t offset = 0; offset < outs_vector.size(); ++offset) { if (current_vector_size > start_idx + offset) { experimental::ReMakePtenDenseTensorFromVar( outs_vector[offset], out_def, pt_kernel_context_->MutableOutputAt(start_idx + offset)); } else { pt_kernel_context_->EmplaceBackOutputWithoutSetRange( experimental::MakePtenTensorBaseFromVar(outs_vector[offset], out_def)); } } pt_kernel_context_->AssignOutputRange(std::make_pair(start_idx, end_idx), i); } for (size_t i = 0; i < attr_names.size(); ++i) { if (attr_defs[i].type_index == std::type_index(typeid(pten::ScalarArray))) { auto attr_iter = Attrs().find(attr_names[i]); if (attr_iter != Attrs().end()) { // shape is in the attribute if (std::type_index(attr_iter->second.type()) == std::type_index(typeid(std::vector))) { pt_kernel_context_->EmplaceBackAttr(std::move(pten::ScalarArray( BOOST_GET_CONST(std::vector, attr_iter->second)))); } else if (std::type_index(attr_iter->second.type()) == std::type_index(typeid(std::vector))) { pt_kernel_context_->EmplaceBackAttr(std::move(pten::ScalarArray( BOOST_GET_CONST(std::vector, attr_iter->second)))); } else { PADDLE_THROW(platform::errors::Unimplemented( "Unsupported cast op attribute `%s` to ScalarArray when " "construct KernelContext.", attr_names[i])); } } else { // shape is in the input auto& ins_vector = ctx.inputs.at(attr_names[i]); if (ins_vector.size() == 1) { // ShapeTensor pt_kernel_context_->EmplaceBackAttr(std::move( experimental::MakePtenScalarArrayFromVar(*ins_vector.front()))); } else { // ShapeTensorList pt_kernel_context_->EmplaceBackAttr(std::move( experimental::MakePtenScalarArrayFromVarList(ins_vector))); } } } else if (attr_defs[i].type_index == std::type_index(typeid(pten::Scalar))) { // TODO(chenweihang): support other attrs later // TODO(zhangyunfei): Scalar should hold scaler type, and we should check // attribtue type by attr_defs auto attr_iter = Attrs().find(attr_names[i]); if (attr_iter != Attrs().end()) { // scalar is in the attribute auto& attr = Attrs().at(attr_names[i]); if (std::type_index(attr.type()) == std::type_index(typeid(float))) { pt_kernel_context_->EmplaceBackAttr( std::move(pten::Scalar(BOOST_GET_CONST(float, attr)))); } else if (std::type_index(attr.type()) == std::type_index(typeid(std::string))) { pt_kernel_context_->EmplaceBackAttr( std::move(pten::Scalar(BOOST_GET_CONST(std::string, attr)))); } else { PADDLE_THROW(platform::errors::Unimplemented( "Unsupported cast op attribute `%s` to Scalar when construct " "KernelContext.", attr_names[i])); } } else { auto& ins_vector = ctx.inputs.at(attr_names[i]); pt_kernel_context_->EmplaceBackAttr(std::move( experimental::MakePtenScalarFromVar(*ins_vector.front()))); } } else { // TODO(chenweihang): support other attrs later auto& attr = Attrs().at(attr_names[i]); if (attr_defs[i].type_index == std::type_index(typeid(int))) { pt_kernel_context_->EmplaceBackAttr(BOOST_GET_CONST(int, attr)); } else if (attr_defs[i].type_index == std::type_index(typeid(float))) { pt_kernel_context_->EmplaceBackAttr(BOOST_GET_CONST(float, attr)); } else if (attr_defs[i].type_index == std::type_index(typeid(bool))) { pt_kernel_context_->EmplaceBackAttr(BOOST_GET_CONST(bool, attr)); } else if (attr_defs[i].type_index == std::type_index(typeid(pten::DataType))) { auto data_type = pten::TransToPtenDataType( static_cast( BOOST_GET_CONST(int, attr))); pt_kernel_context_->EmplaceBackAttr(data_type); } else if (attr_defs[i].type_index == std::type_index(typeid(std::vector))) { if (std::type_index(attr.type()) == std::type_index(typeid(std::vector))) { // Emplace Back Attr according to the type of Pten_Kernel args. const auto& vector_int_attr = BOOST_GET_CONST(std::vector, attr); const std::vector vector_int64_attr(vector_int_attr.begin(), vector_int_attr.end()); pt_kernel_context_->EmplaceBackAttr(vector_int64_attr); } // TODO(YuanRisheng) Need support vector attr } else { PADDLE_THROW(platform::errors::Unimplemented( "Unsupported cast op attribute `%s` when construct " "KernelContext.", attr_names[i])); } } } } void OperatorWithKernel::WriteBackToOutputs(RuntimeContext* ctx) const { // auto& input_names = std::get<0>(pt_kernel_signature_->args); // auto& attr_names = std::get<1>(pt_kernel_signature_->args); auto& output_names = std::get<2>(pt_kernel_signature_->args); // pt_kernel_context_ for (size_t i = 0; i < output_names.size(); ++i) { auto& outs_vector = ctx->outputs.at(output_names[i]); auto& range_pair = pt_kernel_context_->OutputRangeAt(i); auto pten_outs = pt_kernel_context_->MutableOutputBetween( range_pair.first, range_pair.second); for (size_t j = 0; j < pten_outs.size(); ++j) { experimental::MakeVariableFromPtenTensor(pten_outs[j], outs_vector[j]); } } } } // namespace framework } // namespace paddle