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Diffstat (limited to 'tests/validate_examples/graph_validate_utils.h')
-rw-r--r-- | tests/validate_examples/graph_validate_utils.h | 695 |
1 files changed, 0 insertions, 695 deletions
diff --git a/tests/validate_examples/graph_validate_utils.h b/tests/validate_examples/graph_validate_utils.h deleted file mode 100644 index 485d3c1409..0000000000 --- a/tests/validate_examples/graph_validate_utils.h +++ /dev/null @@ -1,695 +0,0 @@ -/* - * Copyright (c) 2019 ARM Limited. - * - * SPDX-License-Identifier: MIT - * - * Permission is hereby granted, free of charge, to any person obtaining a copy - * of this software and associated documentation files (the "Software"), to - * deal in the Software without restriction, including without limitation the - * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or - * sell copies of the Software, and to permit persons to whom the Software is - * furnished to do so, subject to the following conditions: - * - * The above copyright notice and this permission notice shall be included in all - * copies or substantial portions of the Software. - * - * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR - * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, - * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE - * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER - * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, - * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE - * SOFTWARE. - */ - -#ifndef __GRAPH_VALIDATE_UTILS_H__ -#define __GRAPH_VALIDATE_UTILS_H__ - -#include "arm_compute/graph.h" - -#include "ValidateExample.h" -#include "utils/command_line/CommandLineParser.h" - -namespace arm_compute -{ -namespace utils -{ -/*Available Padding modes */ -enum class ConvolutionPaddingMode -{ - Valid, - Same, - Manual -}; - -/** Stream Input operator for the ConvolutionPaddingMode type - * - * @param[in] stream Input stream. - * @param[out] Mode Convolution parameters to output - * - * @return input stream. - */ -inline ::std::istream &operator>>(::std::istream &stream, ConvolutionPaddingMode &Mode) -{ - static const std::map<std::string, ConvolutionPaddingMode> modes = - { - { "valid", ConvolutionPaddingMode::Valid }, - { "same", ConvolutionPaddingMode::Same }, - { "manual", ConvolutionPaddingMode::Manual } - }; - std::string value; - stream >> value; -#ifndef ARM_COMPUTE_EXCEPTIONS_DISABLED - try - { -#endif /* ARM_COMPUTE_EXCEPTIONS_DISABLED */ - Mode = modes.at(arm_compute::utility::tolower(value)); -#ifndef ARM_COMPUTE_EXCEPTIONS_DISABLED - } - catch(const std::out_of_range &) - { - throw std::invalid_argument(value); - } -#endif /* ARM_COMPUTE_EXCEPTIONS_DISABLED */ - - return stream; -} - -/** Formatted output of the ConvolutionPaddingMode type - * - * @param[out] os Output stream. - * @param[in] Mode ConvolutionPaddingMode to output - * - * @return Modified output stream. - */ -inline ::std::ostream &operator<<(::std::ostream &os, ConvolutionPaddingMode Mode) -{ - switch(Mode) - { - case ConvolutionPaddingMode::Valid: - os << "Valid"; - break; - case ConvolutionPaddingMode::Same: - os << "Same"; - break; - case ConvolutionPaddingMode::Manual: - os << "Manual"; - break; - default: - throw std::invalid_argument("Unsupported padding mode format"); - } - - return os; -} - -/** Structure holding all the input tensor graph parameters */ -struct TensorParams -{ - int width{ 1 }; - int height{ 1 }; - int fm{ 1 }; - int batch{ 1 }; - QuantizationInfo quant_info{ 1.0f, 0 }; - std::string npy{}; - uint64_t range_low{ 0 }; - uint64_t range_high{ 16 }; -}; - -/** Structure holding all the verification graph parameters */ -struct VerificationParams -{ - float absolute_tolerance{ -1.f }; - float relative_tolerance{ -1.f }; - float tolerance_number{ -1.f }; -}; - -/** Structure holding all the common graph parameters */ -struct FrameworkParams -{ - bool help{ false }; - int threads{ 0 }; - arm_compute::graph::Target target{ arm_compute::graph::Target::NEON }; -}; - -/** Structure holding all the graph Example parameters */ -struct CommonParams -{ - FrameworkParams common_params{}; - TensorParams input{}; - TensorParams weights{}; - TensorParams bias{}; - TensorParams output{}; - VerificationParams verification{}; - arm_compute::DataType data_type{ DataType::F32 }; -}; - -/** Structure holding all the Convolution layer graph parameters */ -struct ConvolutionParams -{ - int depth_multiplier{ 1 }; - /** Padding graph parameters */ - int padding_top{ 0 }; - int padding_bottom{ 0 }; - int padding_left{ 0 }; - int padding_right{ 0 }; - int padding_stride_x{ 0 }; - int padding_stride_y{ 0 }; - ConvolutionPaddingMode padding_mode{ ConvolutionPaddingMode::Valid }; - struct - { - struct - { - int X{ 0 }; - int Y{ 0 }; - } stride{}; - ConvolutionPaddingMode mode{ ConvolutionPaddingMode::Valid }; - } padding{}; -}; - -/** Structure holding all the fully_connected layer graph parameters */ -struct FullyConnectedParams -{ - FullyConnectedLayerInfo info{}; - int num_outputs{ 1 }; -}; - -/** Structure holding all the graph Example parameters */ -struct ExampleParams : public CommonParams -{ - FullyConnectedParams fully_connected{}; - ConvolutionParams convolution{}; - arm_compute::graph::DepthwiseConvolutionMethod depth_convolution_method{ arm_compute::graph::DepthwiseConvolutionMethod::Default }; - arm_compute::graph::ConvolutionMethod convolution_method{ arm_compute::graph::ConvolutionMethod::Default }; - arm_compute::DataLayout data_layout{ DataLayout::NCHW }; -}; - -/** Calculate stride information. - * - * Depending on the selected padding mode create the desired PadStrideInfo - * - * @param[in] params Convolution parameters supplied by the user. - * - * @return PadStrideInfo with the correct padding mode. - */ -inline PadStrideInfo calculate_convolution_padding(ExampleParams params) -{ - switch(params.convolution.padding_mode) - { - case ConvolutionPaddingMode::Manual: - { - return PadStrideInfo(params.convolution.padding_stride_x, params.convolution.padding_stride_y, params.convolution.padding_left, params.convolution.padding_right, params.convolution.padding_top, - params.convolution.padding_bottom, DimensionRoundingType::FLOOR); - } - case ConvolutionPaddingMode::Valid: - { - return PadStrideInfo(); - } - case ConvolutionPaddingMode::Same: - { - return arm_compute::calculate_same_pad(TensorShape(params.input.width, params.input.height), TensorShape(params.weights.width, params.weights.height), - PadStrideInfo(params.convolution.padding_stride_x, - params.convolution.padding_stride_y)); - } - default: - ARM_COMPUTE_ERROR("NOT SUPPORTED!"); - } -} -/** CommonGraphValidateOptions command line options used to configure the graph examples - * - * (Similar to common options) - * The options in this object get populated when "parse()" is called on the parser used to construct it. - * The expected workflow is: - * - * CommandLineParser parser; - * CommonOptions options( parser ); - * parser.parse(argc, argv); - */ -class CommonGraphValidateOptions -{ -public: - explicit CommonGraphValidateOptions(CommandLineParser &parser) noexcept - : help(parser.add_option<ToggleOption>("help")), - threads(parser.add_option<SimpleOption<int>>("threads")), - target(), - data_type(), - absolute_tolerance(parser.add_option<SimpleOption<float>>("abs_tolerance", -1.0f)), - relative_tolerance(parser.add_option<SimpleOption<float>>("rel_tolerance", -1.0f)), - tolerance_number(parser.add_option<SimpleOption<float>>("tolerance_num", -1.0f)) - { - const std::set<arm_compute::graph::Target> supported_targets - { - arm_compute::graph::Target::NEON, - arm_compute::graph::Target::CL, - arm_compute::graph::Target::GC, - }; - - const std::set<arm_compute::DataType> supported_data_types - { - DataType::F16, - DataType::F32, - DataType::QASYMM8, - }; - - target = parser.add_option<EnumOption<arm_compute::graph::Target>>("target", supported_targets, arm_compute::graph::Target::NEON); - data_type = parser.add_option<EnumOption<DataType>>("type", supported_data_types, DataType::F32); - - target->set_help("Target to execute on"); - data_type->set_help("Data type to use"); - help->set_help("Show this help message"); - absolute_tolerance->set_help("Absolute tolerance used for verification"); - relative_tolerance->set_help("Absolute tolerance used for verification"); - tolerance_number->set_help("Absolute tolerance used for verification"); - ; - } - - /** Prevent instances of this class from being copied (As this class contains pointers) */ - CommonGraphValidateOptions(const CommonGraphValidateOptions &) = delete; - /** Prevent instances of this class from being copied (As this class contains pointers) */ - CommonGraphValidateOptions &operator=(const CommonGraphValidateOptions &) = delete; - /** Allow instances of this class to be moved */ - CommonGraphValidateOptions(CommonGraphValidateOptions &&) noexcept(true) = default; - /** Allow instances of this class to be moved */ - CommonGraphValidateOptions &operator=(CommonGraphValidateOptions &&) noexcept(true) = default; - /** Default destructor */ - virtual ~CommonGraphValidateOptions() = default; - - void consume_common_parameters(CommonParams &common_params) - { - common_params.common_params.help = help->is_set() ? help->value() : false; - common_params.common_params.threads = threads->value(); - common_params.common_params.target = target->value(); - - common_params.verification.absolute_tolerance = absolute_tolerance->value(); - common_params.verification.relative_tolerance = relative_tolerance->value(); - common_params.verification.tolerance_number = tolerance_number->value(); - } - - /** Formatted output of the ExampleParams type - * - * @param[out] os Output stream. - * @param[in] common_params Example parameters to output - * - * @return None. - */ - virtual void print_parameters(::std::ostream &os, const ExampleParams &common_params) - { - os << "Threads : " << common_params.common_params.threads << std::endl; - os << "Target : " << common_params.common_params.target << std::endl; - os << "Data type : " << common_params.data_type << std::endl; - } - - ToggleOption *help; /**< show help message */ - SimpleOption<int> *threads; /**< Number of threads option */ - EnumOption<arm_compute::graph::Target> *target; /**< Graph execution target */ - EnumOption<arm_compute::DataType> *data_type; /**< Graph data type */ - SimpleOption<float> *absolute_tolerance; /**< Absolute tolerance used in verification */ - SimpleOption<float> *relative_tolerance; /**< Relative tolerance used in verification */ - SimpleOption<float> *tolerance_number; /**< Tolerance number used in verification */ -}; - -/** Consumes the consume_common_graph_parameters graph options and creates a structure containing any information - * - * @param[in] options Options to consume - * @param[out] common_params params structure to consume. - * - * @return consume_common_graph_parameters structure containing the common graph parameters - */ -void consume_common_graph_parameters(CommonGraphValidateOptions &options, CommonParams &common_params) -{ - common_params.common_params.help = options.help->is_set() ? options.help->value() : false; - common_params.common_params.threads = options.threads->value(); - common_params.common_params.target = options.target->value(); - - common_params.verification.absolute_tolerance = options.absolute_tolerance->value(); - common_params.verification.relative_tolerance = options.relative_tolerance->value(); - common_params.verification.tolerance_number = options.tolerance_number->value(); -} - -/** Generates appropriate accessor according to the specified graph parameters - * - * @param[in] tensor Tensor parameters - * @param[in] lower Lower random values bound - * @param[in] upper Upper random values bound - * @param[in] seed Random generator seed - * - * @return An appropriate tensor accessor - */ -inline std::unique_ptr<graph::ITensorAccessor> get_accessor(const TensorParams &tensor, PixelValue lower, PixelValue upper, const std::random_device::result_type seed = 0) -{ - if(!tensor.npy.empty()) - { - return arm_compute::support::cpp14::make_unique<arm_compute::graph_utils::NumPyBinLoader>(tensor.npy); - } - else - { - return arm_compute::support::cpp14::make_unique<arm_compute::graph_utils::RandomAccessor>(lower, upper, seed); - } -} - -/** Graph example validation accessor class */ -template <typename D> -class VerifyAccessor : public graph::ITensorAccessor -{ -public: - using TBias = typename std::conditional<std::is_same<typename std::decay<D>::type, uint8_t>::value, int32_t, D>::type; - /** Constructor - * - * @param[in] params Convolution parameters - */ - explicit VerifyAccessor(ExampleParams ¶ms) - : _params(std::move(params)) - { - } - // Inherited methods overriden: - bool access_tensor(ITensor &tensor) override - { - if(_params.output.npy.empty()) - { - arm_compute::test::SimpleTensor<D> src; - arm_compute::test::SimpleTensor<D> weights; - arm_compute::test::SimpleTensor<TBias> bias; - - //Create Input tensors - create_tensors(src, weights, bias, tensor); - - //Fill the tensors with random values - fill_tensor(src, 0, static_cast<D>(_params.input.range_low), static_cast<D>(_params.input.range_high)); - fill_tensor(weights, 1, static_cast<D>(_params.weights.range_low), static_cast<D>(_params.weights.range_high)); - fill_tensor(bias, 2, static_cast<TBias>(_params.input.range_low), static_cast<TBias>(_params.input.range_high)); - - arm_compute::test::SimpleTensor<D> output = reference(src, weights, bias, output_shape(tensor)); - - validate(tensor, output); - } - else - { - //The user provided a reference file use an npy accessor to validate - arm_compute::graph_utils::NumPyAccessor(_params.output.npy, tensor.info()->tensor_shape(), tensor.info()->data_type()).access_tensor(tensor); - } - return false; - } - - /** Create reference tensors. - * - * Validate the given tensor against the reference result. - * - * @param[out] src The tensor with the source data. - * @param[out] weights The tensor with the weigths data. - * @param[out] bias The tensor with the bias data. - * @param[in] tensor Tensor result of the actual operation passed into the Accessor. - * - * @return None. - */ - virtual void create_tensors(arm_compute::test::SimpleTensor<D> &src, - arm_compute::test::SimpleTensor<D> &weights, - arm_compute::test::SimpleTensor<TBias> &bias, - ITensor &tensor) - { - //Create Input tensors - src = arm_compute::test::SimpleTensor<D> { TensorShape(_params.input.width, _params.input.height, _params.input.fm, _params.input.batch), _params.data_type, 1, _params.input.quant_info }; - weights = arm_compute::test::SimpleTensor<D> { TensorShape(_params.weights.width, _params.weights.height, _params.weights.fm), _params.data_type, 1, _params.weights.quant_info }; - bias = arm_compute::test::SimpleTensor<TBias> { TensorShape(_params.input.height), _params.data_type, 1, _params.input.quant_info }; - } - - /** Calculate reference output tensor shape. - * - * @param[in] tensor Tensor result of the actual operation passed into the Accessor. - * - * @return output tensor shape. - */ - virtual TensorShape output_shape(ITensor &tensor) - { - return arm_compute::graph_utils::permute_shape(tensor.info()->tensor_shape(), _params.data_layout, DataLayout::NCHW); - } - - /** Calculate reference tensor. - * - * Validate the given tensor against the reference result. - * - * @param[in] src The tensor with the source data. - * @param[in] weights The tensor with the weigths data. - * @param[in] bias The tensor with the bias data. - * @param[in] output_shape Shape of the output tensor. - * - * @return Tensor with the reference output. - */ - virtual arm_compute::test::SimpleTensor<D> reference(arm_compute::test::SimpleTensor<D> &src, - arm_compute::test::SimpleTensor<D> &weights, - arm_compute::test::SimpleTensor<TBias> &bias, - const arm_compute::TensorShape &output_shape) = 0; - - /** Fill QASYMM tensor with Random values. - * - * Validate the given tensor against the reference result. - * - * @param[out] tensor The tensor we want to file - * @param[in] seed seed for the randomization function - * @param[in] low lower bound for random values - * @param[in] high upper bound for random values - * - * @return None. - */ - void fill_tensor(arm_compute::test::SimpleTensor<uint8_t> &tensor, std::random_device::result_type seed, uint8_t low, uint8_t high) - { - ARM_COMPUTE_ERROR_ON(tensor.data_type() != arm_compute::DataType::QASYMM8); - - std::mt19937 gen(seed); - - uint8_t qasymm8_low = tensor.quantization_info().quantize(low, RoundingPolicy::TO_NEAREST_UP); - uint8_t qasymm8_high = tensor.quantization_info().quantize(high, RoundingPolicy::TO_NEAREST_UP); - - std::uniform_int_distribution<uint8_t> distribution(qasymm8_low, qasymm8_high); - - for(int i = 0; i < tensor.num_elements(); ++i) - { - tensor[i] = tensor.quantization_info().quantize(distribution(gen), RoundingPolicy::TO_NEAREST_UP); - } - } - /** Fill S32 tensor with Random values. - * - * Validate the given tensor against the reference result. - * - * @param[out] tensor The tensor we want to file - * @param[in] seed seed for the randomization function - * @param[in] low lower bound for random values - * @param[in] high upper bound for random values - * - * @return None. - */ - void fill_tensor(arm_compute::test::SimpleTensor<int32_t> &tensor, std::random_device::result_type seed, int32_t low, int32_t high) - { - std::mt19937 gen(seed); - std::uniform_int_distribution<int32_t> distribution(static_cast<int32_t>(low), static_cast<uint32_t>(high)); - - for(int i = 0; i < tensor.num_elements(); ++i) - { - tensor[i] = distribution(gen); - } - } - /** Fill F32 tensor with Random values. - * - * Validate the given tensor against the reference result. - * - * @param[out] tensor The tensor we want to file - * @param[in] seed seed for the randomization function - * @param[in] low lower bound for random values - * @param[in] high upper bound for random values - * - * @return None. - */ - void fill_tensor(arm_compute::test::SimpleTensor<float> &tensor, std::random_device::result_type seed, float low, float high) - { - ARM_COMPUTE_ERROR_ON(tensor.data_type() != arm_compute::DataType::F32); - std::mt19937 gen(seed); - std::uniform_real_distribution<float> distribution(low, high); - - for(int i = 0; i < tensor.num_elements(); ++i) - { - tensor[i] = distribution(gen); - } - } - /** Fill F16 tensor with Random values. - * - * Validate the given tensor against the reference result. - * - * @param[out] tensor The tensor we want to file - * @param[in] seed seed for the randomization function - * @param[in] low lower bound for random values - * @param[in] high upper bound for random values - * - * @return None. - */ - void fill_tensor(arm_compute::test::SimpleTensor<half> &tensor, std::random_device::result_type seed, half low, half high) - { - ARM_COMPUTE_ERROR_ON(tensor.data_type() != arm_compute::DataType::F16); - std::mt19937 gen(seed); - std::uniform_real_distribution<float> distribution(static_cast<half>(low), static_cast<half>(high)); - - for(int i = 0; i < tensor.num_elements(); ++i) - { - tensor[i] = static_cast<half>(distribution(gen)); - } - } - - /** Select relative tolerance. - * - * Select relative tolerance if not supplied by user. - * - * @return Appropriate relative tolerance. - */ - virtual float relative_tolerance() = 0; - - /** Select absolute tolerance. - * - * Select absolute tolerance if not supplied by user. - * - * @return Appropriate absolute tolerance. - */ - virtual float absolute_tolerance() = 0; - - /** Select tolerance number. - * - * Select tolerance number if not supplied by user. - * - * @return Appropriate tolerance number. - */ - virtual float tolerance_number() = 0; - - /** Validate the output versus the reference. - * - * @param[in] tensor Tensor result of the actual operation passed into the Accessor. - * @param[in] output Tensor result of the reference implementation. - * - * @return None. - */ - void validate(ITensor &tensor, arm_compute::test::SimpleTensor<D> output) - { - float user_relative_tolerance = _params.verification.relative_tolerance; - float user_absolute_tolerance = _params.verification.absolute_tolerance; - float user_tolerance_num = _params.verification.tolerance_number; - /* If no user input was provided override with defaults. */ - if(user_relative_tolerance == -1) - { - user_relative_tolerance = relative_tolerance(); - } - - if(user_absolute_tolerance == -1) - { - user_absolute_tolerance = absolute_tolerance(); - } - - if(user_tolerance_num == -1) - { - user_tolerance_num = tolerance_number(); - } - - const arm_compute::test::validation::RelativeTolerance<float> rel_tolerance(user_relative_tolerance); /**< Relative tolerance */ - const arm_compute::test::validation::AbsoluteTolerance<float> abs_tolerance(user_absolute_tolerance); /**< Absolute tolerance */ - const float tolerance_num(user_tolerance_num); /**< Tolerance number */ - - arm_compute::test::validation::validate(arm_compute::test::Accessor(tensor), output, rel_tolerance, tolerance_num, abs_tolerance); - } - - ExampleParams _params; -}; - -/** Generates appropriate convolution verify accessor - * - * @param[in] params User supplied parameters for convolution. - * - * @return A convolution verify accessor for the requested datatype. - */ -template <template <typename D> class VerifyAccessorT> -inline std::unique_ptr<graph::ITensorAccessor> get_verify_accessor(ExampleParams params) -{ - switch(params.data_type) - { - case DataType::QASYMM8: - { - return arm_compute::support::cpp14::make_unique<VerifyAccessorT<uint8_t>>( - params); - } - case DataType::F16: - { - return arm_compute::support::cpp14::make_unique<VerifyAccessorT<half>>( - params); - } - case DataType::F32: - { - return arm_compute::support::cpp14::make_unique<VerifyAccessorT<float>>( - params); - } - default: - ARM_COMPUTE_ERROR("NOT SUPPORTED!"); - } -} - -template <typename LayerT, typename OptionsT, template <typename D> class VerifyAccessorT> -class GraphValidateExample : public ValidateExample -{ -public: - GraphValidateExample(std::string name) - : graph(0, name) - { - } - - virtual LayerT GraphFunctionLayer(ExampleParams ¶ms) = 0; - - bool do_setup(int argc, char **argv) override - { - CommandLineParser parser; - - OptionsT Options(parser); - - parser.parse(argc, argv); - - ExampleParams params; - - Options.consume_common_parameters(params); - Options.consume_parameters(params); - - if(params.common_params.help) - { - parser.print_help(argv[0]); - return false; - } - - Options.print_parameters(std::cout, params); - // Create input descriptor - const TensorShape input_shape = arm_compute::graph_utils::permute_shape(TensorShape(params.input.width, params.input.height, params.input.fm, params.input.batch), - DataLayout::NCHW, params.data_layout); - arm_compute::graph::TensorDescriptor input_descriptor = arm_compute::graph::TensorDescriptor(input_shape, params.data_type, params.input.quant_info, params.data_layout); - - const PixelValue lower = PixelValue(params.input.range_low, params.data_type, params.input.quant_info); - const PixelValue upper = PixelValue(params.input.range_high, params.data_type, params.input.quant_info); - - graph << params.common_params.target - << params.convolution_method - << params.depth_convolution_method - << arm_compute::graph::frontend::InputLayer(input_descriptor, get_accessor(params.input, lower, upper, 0)) - << GraphFunctionLayer(params) - << arm_compute::graph::frontend::OutputLayer(get_verify_accessor<VerifyAccessorT>(params)); - - arm_compute::graph::GraphConfig config; - config.num_threads = params.common_params.threads; - - graph.finalize(params.common_params.target, config); - - return true; - } - - void do_run() override - { - graph.run(); - } - - void do_teardown() override - { - } - - arm_compute::graph::frontend::Stream graph; -}; - -} // graph_validate_utils -} // arm_compute -#endif //__GRAPH_VALIDATE_UTILS_H__ |