onnxruntime/winml/lib/Api.Experimental/LearningModelOperatorSet.cpp
2021-08-11 00:37:36 -07:00

94 lines
3.9 KiB
C++

#include "pch.h"
#include "LearningModelOperatorSet.h"
#include "LearningModelOperator.h"
#include "..\Api\inc\ILotusValueProviderPrivate.h"
namespace WINML_EXPERIMENTALP {
LearningModelOperatorSet::LearningModelOperatorSet(winml_experimental::LearningModelBuilder builder) :
builder_(builder),
operators_(winrt::single_threaded_vector<winml_experimental::LearningModelOperator>())
{
}
winml_experimental::LearningModelBuilder LearningModelOperatorSet::Add(winml_experimental::LearningModelOperator const& op)
{
auto operator_private = op.as<winml_experimentalp::LearningModelOperator>();
auto constant_input_map = operator_private->ConstantInputMapping();
auto input_map = operator_private->InputMapping();
auto output_map = operator_private->OutputMapping();
auto attribute_map = operator_private->AttributeMap();
auto operator_name = _winml::Strings::UTF8FromHString(operator_private->Name());
auto operator_type = _winml::Strings::UTF8FromHString(operator_private->Type());
auto operator_domain = _winml::Strings::UTF8FromHString(operator_private->Domain());
std::vector<std::string> operator_input_names(input_map.Size());
std::vector<std::string> actual_input_names(input_map.Size());
std::vector<const char*> raw_operator_input_names(input_map.Size());
std::vector<const char*> raw_actual_input_names(input_map.Size());
int i = 0;
for (auto kvp : input_map) {
operator_input_names[i] = _winml::Strings::UTF8FromHString(kvp.Key());
actual_input_names[i] = _winml::Strings::UTF8FromHString(kvp.Value());
raw_operator_input_names[i] = operator_input_names[i].c_str();
raw_actual_input_names[i] = actual_input_names[i].c_str();
i++;
}
std::vector<std::string> operator_output_names(output_map.Size());
std::vector<std::string> actual_output_names(output_map.Size());
std::vector<const char*> raw_operator_output_names(output_map.Size());
std::vector<const char*> raw_actual_output_names(output_map.Size());
i = 0;
for (auto kvp : output_map) {
operator_output_names[i] = _winml::Strings::UTF8FromHString(kvp.Key());
actual_output_names[i] = _winml::Strings::UTF8FromHString(kvp.Value());
raw_operator_output_names[i] = operator_output_names[i].c_str();
raw_actual_output_names[i] = actual_output_names[i].c_str();
i++;
}
// Create the Binding Context to pass to the feature value
_winml::BindingContext context{
_winml::BindingType::kInput,
builder_.as<winml_experimentalp::LearningModelBuilder>()->InertSession(),
nullptr,
nullptr,
{} // SubresourceId is set by callee
};
std::vector<std::string> attribute_names(attribute_map.Size());
std::vector<const char*> raw_attribute_names(attribute_map.Size());
std::vector<winrt::com_ptr<_winml::IValue>> attribute_values(attribute_map.Size());
std::vector<_winml::IValue*> raw_attribute_values(attribute_map.Size());
i = 0;
for (auto kvp : attribute_map) {
attribute_names[i] = _winml::Strings::UTF8FromHString(kvp.Key());
auto default_value_value_provider = kvp.Value().as<_winml::ILotusValueProviderPrivate>();
default_value_value_provider->GetValue(context, attribute_values[i].put());
raw_attribute_names[i] = attribute_names[i].c_str();
raw_attribute_values[i] = attribute_values[i].get();
i++;
}
auto builder = builder_.as<winml_experimentalp::LearningModelBuilder>();
WINML_THROW_IF_FAILED(builder->UseModel()->AddOperator(
operator_type.c_str(),
operator_name.c_str(),
operator_domain.c_str(),
raw_operator_input_names.data(), raw_actual_input_names.data(), input_map.Size(),
raw_operator_output_names.data(), raw_actual_output_names.data(), output_map.Size(),
raw_attribute_names.data(), raw_attribute_values.data(), attribute_map.Size()));
// Add constants
for (auto kvp : constant_input_map) {
builder_.Inputs().AddConstant(kvp.Key(), kvp.Value());
}
return builder_;
}
}