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Add tests for WinRT Projection Raw ABI consumption Co-authored-by: Sheil Kumar <sheilk@microsoft.com>
155 lines
No EOL
4.3 KiB
C++
155 lines
No EOL
4.3 KiB
C++
#pragma once
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#ifndef MICROSOFT_AI_MACHINELEARNING_H_
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#define MICROSOFT_AI_MACHINELEARNING_H_
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#define ML_FAIL_FAST_IF(condition) \
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do { \
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bool _cond = condition; \
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if (_cond) { \
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__fastfail(0); \
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} \
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} while(0)
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namespace Microsoft { namespace AI { namespace MachineLearning {
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using tensor_shape_type = int64_t;
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}}} // namespace Microsoft::AI::MachineLearning
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#include "winml_microsoft.h"
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namespace Microsoft { namespace AI { namespace MachineLearning { namespace Details {
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using learning_model = WinMLLearningModel;
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using learning_model_device = WinMLLearningModelDevice;
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using learning_model_session = WinMLLearningModelSession;
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using learning_model_binding = WinMLLearningModelBinding;
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using learning_model_results = WinMLLearningModelResults;
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}}}} // namespace Microsoft::AI::MachineLearning::Details
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namespace Microsoft { namespace AI { namespace MachineLearning {
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struct learning_model
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{
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friend struct learning_model_session;
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learning_model(const wchar_t* model_path, size_t size) :
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m_model(model_path, size)
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{}
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learning_model(const char* bytes, size_t size) :
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m_model(bytes, size)
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{}
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private:
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Details::learning_model m_model;
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};
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struct learning_model_results
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{
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friend struct learning_model_session;
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int32_t get_output(const wchar_t* feature_name, size_t feature_name_size, void** pp_buffer, size_t* p_capacity)
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{
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return m_results.get_output(feature_name, feature_name_size, pp_buffer, p_capacity);
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}
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private:
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learning_model_results(Details::learning_model_results results) :
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m_results(results) {}
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private:
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Details::learning_model_results m_results;
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};
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struct learning_model_device
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{
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friend struct learning_model_session;
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learning_model_device() : m_device(){}
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learning_model_device(learning_model_device&& device) :
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m_device(std::move(device.m_device))
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{}
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learning_model_device(learning_model_device& device) :
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m_device(device.m_device)
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{}
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void operator=(learning_model_device& device)
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{
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m_device = device.m_device;
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}
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protected:
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learning_model_device(Details::learning_model_device&& learning_model_device) :
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m_device(std::move(learning_model_device)){}
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private:
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Details::learning_model_device m_device;
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};
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struct learning_model_session
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{
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friend struct learning_model_binding;
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learning_model_session(const learning_model& model) :
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m_session(model.m_model)
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{}
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learning_model_session(const learning_model& model, const learning_model_device& device) :
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m_session(model.m_model, device.m_device)
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{}
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inline learning_model_results evaluate(learning_model_binding& binding);
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private:
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Details::learning_model_session m_session;
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};
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struct learning_model_binding
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{
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friend struct learning_model_session;
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learning_model_binding(const learning_model_session& session) :
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m_binding(session.m_session)
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{}
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template <typename T>
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int32_t bind_as_reference(
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const wchar_t* feature_name, size_t feature_name_size,
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tensor_shape_type* p_shape, size_t shape_size,
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T* p_data, size_t data_size)
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{
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return m_binding.bind_as_reference<T>(feature_name, feature_name_size, p_shape, shape_size, p_data, data_size);
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}
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template <typename T>
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int32_t bind(
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const wchar_t* feature_name, size_t feature_name_size,
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tensor_shape_type* p_shape, size_t shape_size,
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T* p_data, size_t data_size)
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{
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return m_binding.bind<T>(feature_name, feature_name_size, p_shape, shape_size, p_data, data_size);
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}
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template <typename T = float>
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int32_t bind(
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const wchar_t* feature_name, size_t feature_name_size,
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tensor_shape_type* p_shape, size_t shape_size)
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{
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return m_binding.bind<T>(feature_name, feature_name_size, p_shape, shape_size);
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}
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private:
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Details::learning_model_binding m_binding;
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};
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learning_model_results learning_model_session::evaluate(learning_model_binding& binding)
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{
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return Details::learning_model_results(m_session.evaluate(binding.m_binding));
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}
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}}} // namespace Microsoft::AI::MachineLearning::Details
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#endif // MICROSOFT_AI_MACHINELEARNING_H_
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