onnxruntime/winml/lib/Api.Experimental/LearningModelBuilder.cpp
Ginés Hidalgo 79436a2d5b
Avoided warning C5038 (#9543)
Updated several DML EP files to avoid warning C5038: data member 'member1' will be initialized after data member 'member2' / base class 'base_class'

More information:
https://docs.microsoft.com/en-us/cpp/error-messages/compiler-warnings/c5038?view=msvc-160
2021-10-30 00:36:22 -07:00

85 lines
3.3 KiB
C++

#include "lib/Api.Experimental/pch/pch.h"
#include "LearningModelBuilder.h"
#include "LearningModel.h"
#include "TensorFeatureDescriptor.h"
#include "LearningModelSession.h"
#include "LearningModelInputs.h"
#include "LearningModelOutputs.h"
#include "LearningModelOperatorSet.h"
#include "OnnxruntimeProvider.h"
namespace WINML_EXPERIMENTALP {
LearningModelBuilder::LearningModelBuilder(int64_t opset) : inert_session_(nullptr), inputs_(nullptr), outputs_(nullptr), operators_(nullptr) {
telemetry_helper.LogApiUsage("LearningModelBuilder::LearningModelBuilder");
WINML_THROW_IF_FAILED(CreateOnnxruntimeEngineFactory(engine_factory_.put()));
WINML_THROW_IF_FAILED(engine_factory_->CreateEmptyModel(opset, model_.put()));
inputs_ = winrt::make<winml_experimentalp::LearningModelInputs>(*this);
outputs_ = winrt::make<winml_experimentalp::LearningModelOutputs>(*this);
operators_ = winrt::make<winml_experimentalp::LearningModelOperatorSet>(*this);
winrt::com_ptr<_winml::IEngineBuilder> builder;
WINML_THROW_IF_FAILED(engine_factory_->CreateEngineBuilder(builder.put()));
winrt::com_ptr<_winml::IEngine> engine;
WINML_THROW_IF_FAILED(builder->CreateEngine(engine.put()));
inert_session_ = winmlp::LearningModelSession::CreateInertSession(engine.get());
}
LearningModelBuilder::LearningModelBuilder(LearningModelBuilder& builder) : inert_session_(nullptr),
inputs_(builder.inputs_),
outputs_(builder.outputs_),
operators_(builder.operators_)
{
}
winml_experimental::LearningModelInputs LearningModelBuilder::Inputs() {
return inputs_;
}
winml_experimental::LearningModelOutputs LearningModelBuilder::Outputs() {
return outputs_;
}
winml_experimental::LearningModelOperatorSet LearningModelBuilder::Operators() {
return operators_;
}
winml::LearningModel LearningModelBuilder::CreateModel() {
telemetry_helper.LogApiUsage("LearningModelBuilder::CreateModel");
com_ptr<_winml::IModel> model_clone;
model_->CloneModel(model_clone.put());
return winrt::make<winmlp::LearningModel>(engine_factory_.get(), model_clone.get(), nullptr);
}
void LearningModelBuilder::Save(const winrt::hstring& file_name) {
telemetry_helper.LogApiUsage("LearningModelBuilder::Save");
model_->SaveModel(file_name.c_str(), file_name.size());
}
winml_experimental::LearningModelBuilder LearningModelBuilder::Create(int32_t opset) {
return winrt::make<LearningModelBuilder>(static_cast<int64_t>(opset));
}
winml::TensorFeatureDescriptor LearningModelBuilder::CreateTensorFeatureDescriptor(
hstring const& name,
winml::TensorKind const& kind,
array_view<int64_t const> shape) {
return winrt::make<winmlp::TensorFeatureDescriptor>(name, L"", kind, shape);
}
winml::TensorFeatureDescriptor LearningModelBuilder::CreateTensorFeatureDescriptor(
hstring const& name,
hstring const& description,
winml::TensorKind const& kind,
array_view<int64_t const> shape) {
return winrt::make<winmlp::TensorFeatureDescriptor>(name, description, kind, shape);
}
_winml::IModel* LearningModelBuilder::UseModel() {
return model_.get();
}
} // namespace WINML_EXPERIMENTALP