diff options
Diffstat (limited to 'tests/validation/fixtures/ConvolutionLayerFixture.h')
-rw-r--r-- | tests/validation/fixtures/ConvolutionLayerFixture.h | 589 |
1 files changed, 539 insertions, 50 deletions
diff --git a/tests/validation/fixtures/ConvolutionLayerFixture.h b/tests/validation/fixtures/ConvolutionLayerFixture.h index a4db49fc8e..0622e5e6f0 100644 --- a/tests/validation/fixtures/ConvolutionLayerFixture.h +++ b/tests/validation/fixtures/ConvolutionLayerFixture.h @@ -1,5 +1,5 @@ /* - * Copyright (c) 2017-2021 Arm Limited. + * Copyright (c) 2017-2023 Arm Limited. * * SPDX-License-Identifier: MIT * @@ -21,12 +21,19 @@ * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE * SOFTWARE. */ -#ifndef ARM_COMPUTE_TEST_CONVOLUTION_LAYER_FIXTURE -#define ARM_COMPUTE_TEST_CONVOLUTION_LAYER_FIXTURE + +#ifndef ACL_TESTS_VALIDATION_FIXTURES_CONVOLUTIONLAYERFIXTURE_H +#define ACL_TESTS_VALIDATION_FIXTURES_CONVOLUTIONLAYERFIXTURE_H #include "arm_compute/core/TensorShape.h" #include "arm_compute/core/Types.h" +#include "arm_compute/graph/Utils.h" +#ifdef ARM_COMPUTE_OPENCL_ENABLED +#include "arm_compute/runtime/CL/functions/CLGEMMConvolutionLayer.h" +#endif // ARM_COMPUTE_OPENCL_ENABLED #include "arm_compute/runtime/NEON/NEScheduler.h" +#include "src/core/NEON/kernels/arm_gemm/utils.hpp" +#include "src/graph/mutators/MutatorUtils.h" #include "tests/AssetsLibrary.h" #include "tests/Globals.h" #include "tests/IAccessor.h" @@ -35,10 +42,12 @@ #include "tests/validation/Helpers.h" #include "tests/validation/reference/ActivationLayer.h" #include "tests/validation/reference/ConvolutionLayer.h" +#include "tests/validation/reference/PadLayer.h" #include "tests/validation/reference/Permute.h" #include "tests/validation/reference/Utils.h" #include <random> +#include <type_traits> namespace arm_compute { @@ -49,13 +58,30 @@ namespace validation namespace detail { template <typename ConvolutionFunction, typename TensorType> -void configure_conv_function(ConvolutionFunction &func, +#ifdef ARM_COMPUTE_OPENCL_ENABLED +std::enable_if_t<!std::is_same<ConvolutionFunction, CLGEMMConvolutionLayer>::value, void> +#else // ARM_COMPUTE_OPENCL_ENABLED +void +#endif // ARM_COMPUTE_OPENCL_ENABLED +configure_conv_function(ConvolutionFunction &func, + TensorType *src, const TensorType *weights, const TensorType *bias, TensorType *dst, + const PadStrideInfo &info, const WeightsInfo &weights_info, + const Size2D &dilation, const ActivationLayerInfo &act_info, unsigned int num_groups) +{ + func.configure(src, weights, bias, dst, info, weights_info, dilation, act_info, false /* enable_fast_math */, num_groups); +} + +#ifdef ARM_COMPUTE_OPENCL_ENABLED +template <typename ConvolutionFunction, typename TensorType> +std::enable_if_t<std::is_same<ConvolutionFunction, CLGEMMConvolutionLayer>::value, void> +configure_conv_function(ConvolutionFunction &func, TensorType *src, const TensorType *weights, const TensorType *bias, TensorType *dst, const PadStrideInfo &info, const WeightsInfo &weights_info, const Size2D &dilation, const ActivationLayerInfo &act_info, unsigned int num_groups) { func.configure(src, weights, bias, dst, info, weights_info, dilation, act_info, num_groups); } +#endif // ARM_COMPUTE_OPENCL_ENABLED } // namespace detail template <typename TensorType, typename AccessorType, typename FunctionType, typename T, typename TW> @@ -66,26 +92,84 @@ public: || std::is_same<typename std::decay<T>::type, int8_t>::value, int32_t, T >::type; + void setup_quantization(TensorShape input_shape, TensorShape weights_shape, QuantizationInfo &input_q_info, + QuantizationInfo &weights_q_info, DataType data_type) + { + const int32_t t_max = static_cast<int32_t>(std::numeric_limits<T>::max()); + const int32_t t_min = static_cast<int32_t>(std::numeric_limits<T>::min()); + + std::mt19937 generator(library->seed() + _hash); + std::uniform_real_distribution<float> distribution_float(-5.0f, 3.0f); + std::uniform_int_distribution<int32_t> distribution_t(t_min, t_max); + + const float scale_lhs = pow(2, distribution_float(generator)); // [2^-5, 2^3] + const float scale_rhs = pow(2, distribution_float(generator)); // [2^-5, 2^3] + + const int32_t offset_lhs = distribution_t(generator); + const int32_t offset_rhs = distribution_t(generator); + + _quantization_info = QuantizationInfo(scale_lhs, offset_lhs); + _weight_quantization_info = QuantizationInfo(scale_rhs, offset_rhs); + + QuantizationHint q_hint = suggest_conv_dst_q_info_and_bias(input_q_info, weights_q_info, + weights_shape.y() /* heights */, weights_shape.x() /* width */, input_shape.z() /* channels */, + data_type, 0.5f /* bias_fraction */); + + _dst_q_info = q_hint.q_info; + _min_bias = q_hint.bias_min; + _max_bias = q_hint.bias_max; + } + public: - template <typename...> void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, - DataType data_type, DataType weights_data_type, DataLayout data_layout, QuantizationInfo quantization_info, QuantizationInfo weight_quantization_info, ActivationLayerInfo act_info) + DataType data_type, DataType weights_data_type, DataLayout data_layout, QuantizationInfo quantization_info, QuantizationInfo weight_quantization_info, ActivationLayerInfo act_info, + bool mixed_layout = false, PaddingList pre_pad_layer = PaddingList({}), bool padded_weights = false) { + // This hash is used by random generators. There may be hash collisions but + // this is intentional as it's a very easy way to make the the current + // random generation process almost different for many test configurations, + // which were using the same set of values before. + _hash = input_shape[0] + input_shape[1] + input_shape[2] + input_shape[3] + + + weights_shape[0] + weights_shape[1] + weights_shape[2] + weights_shape[3] + + mixed_layout + (data_type == DataType::QASYMM8_SIGNED) + (data_layout == DataLayout::NHWC); + + _mixed_layout = mixed_layout; _data_type = data_type; _weights_data_type = weights_data_type; - _is_quantized = is_data_type_quantized_asymmetric(data_type); + const bool is_quantized = is_data_type_quantized(weights_data_type); _is_bfloat16 = data_type == DataType::BFLOAT16; - _bias_data_type = _is_quantized ? DataType::S32 : (_is_bfloat16 ? DataType::F32 : data_type); + _bias_data_type = is_quantized ? DataType::S32 : (_is_bfloat16 ? DataType::F32 : data_type); _output_data_type = _is_bfloat16 ? DataType::F32 : data_type; _quantization_info = quantization_info; _weight_quantization_info = weight_quantization_info; _data_layout = data_layout; + _dst_q_info = quantization_info; + + if(is_quantized && !is_data_type_quantized_symmetric(weights_data_type) && (!act_info.enabled() || act_info.activation() == ActivationFunction::IDENTITY)) + { + setup_quantization(input_shape, weights_shape, _quantization_info, _weight_quantization_info, data_type); + _use_dynamic_output_quant = true; + } - _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, reshape_weights, dilation, act_info); - _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, dilation, act_info); + _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, reshape_weights, dilation, act_info, pre_pad_layer, padded_weights); + _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, dilation, act_info, pre_pad_layer); } protected: + void mix_layout(FunctionType &layer, TensorType &src, TensorType &dst) + { + // Test Multi DataLayout graph cases, when the data layout changes after configure + src.info()->set_data_layout(_data_layout == DataLayout::NCHW ? DataLayout::NHWC : DataLayout::NCHW); + dst.info()->set_data_layout(_data_layout == DataLayout::NCHW ? DataLayout::NHWC : DataLayout::NCHW); + + // Compute Convolution function + layer.run(); + + // Reinstating original data layout for the test suite to properly check the values + src.info()->set_data_layout(_data_layout); + dst.info()->set_data_layout(_data_layout); + } + void regularize_values(void *values, size_t size) { float *fvalues = static_cast<float *>(values); @@ -102,16 +186,34 @@ protected: { case DataType::QASYMM8: { - std::pair<int, int> bounds = get_quantized_bounds(tensor.quantization_info(), -1.0f, 1.0f); - std::uniform_int_distribution<uint8_t> distribution(bounds.first, bounds.second); - library->fill(tensor, distribution, i); + if(_use_dynamic_output_quant) + { + std::uniform_int_distribution<int32_t> distribution(0, 255); + library->fill(tensor, distribution, i); + } + else + { + // Legacy initialization in case the output quantization info can't be reliably estimated + std::pair<int, int> bounds = get_quantized_bounds(tensor.quantization_info(), -1.0f, 1.0f); + std::uniform_int_distribution<uint32_t> distribution(bounds.first, bounds.second); + library->fill(tensor, distribution, i); + } break; } case DataType::QASYMM8_SIGNED: { - std::pair<int, int> bounds = get_quantized_qasymm8_signed_bounds(tensor.quantization_info(), -1.0f, 1.0f); - std::uniform_int_distribution<int8_t> distribution(bounds.first, bounds.second); - library->fill(tensor, distribution, i); + if(_use_dynamic_output_quant) + { + std::uniform_int_distribution<int32_t> distribution(-128, 127); + library->fill(tensor, distribution, i); + } + else + { + // Legacy initialization in case the output quantization info can't be reliably estimated + std::pair<int, int> bounds = get_quantized_qasymm8_signed_bounds(tensor.quantization_info(), -1.0f, 1.0f); + std::uniform_int_distribution<int32_t> distribution(bounds.first, bounds.second); + library->fill(tensor, distribution, i); + } break; } case DataType::QSYMM8_PER_CHANNEL: @@ -130,13 +232,13 @@ protected: max_bound = bounds.second; } } - std::uniform_int_distribution<int8_t> distribution(min_bound, max_bound); + std::uniform_int_distribution<int32_t> distribution(min_bound, max_bound); library->fill(tensor, distribution, i); break; } case DataType::S32: { - std::uniform_int_distribution<int32_t> distribution(-100, 100); + std::uniform_int_distribution<int32_t> distribution(_min_bias, _max_bias); library->fill(tensor, distribution, i); break; } @@ -163,8 +265,9 @@ protected: } } + // given input is IN nchw format TensorType compute_target(TensorShape input_shape, TensorShape weights_shape, const TensorShape &bias_shape, TensorShape output_shape, const PadStrideInfo &info, - bool reshape_weights, const Size2D &dilation, const ActivationLayerInfo act_info) + bool reshape_weights, const Size2D &dilation, const ActivationLayerInfo act_info, PaddingList pre_pad_layer = PaddingList({}), bool padded_weights = false) { ARM_COMPUTE_ERROR_ON((input_shape[2] % weights_shape[2]) != 0); @@ -175,6 +278,18 @@ protected: permute(input_shape, PermutationVector(2U, 0U, 1U)); permute(weights_shape, PermutationVector(2U, 0U, 1U)); permute(output_shape, PermutationVector(2U, 0U, 1U)); + + if(pre_pad_layer.size() > 0) + { + // make sure paddings exist for each c,h,w dimensions + for(unsigned int i = 0; i < 3 - pre_pad_layer.size(); ++i) + { + pre_pad_layer.push_back({ 0, 0 }); + } + + // rotate padding info from nchw to nhwc + std::rotate(pre_pad_layer.begin(), pre_pad_layer.begin() + 2, pre_pad_layer.begin() + 3); + } } const int idx_width = get_data_layout_dimension_index(_data_layout, DataLayoutDimension::WIDTH); @@ -186,17 +301,47 @@ protected: // Create tensors TensorType src = create_tensor<TensorType>(input_shape, _data_type, 1, _quantization_info, _data_layout); TensorType weights = create_tensor<TensorType>(reshaped_weights_shape, _weights_data_type, 1, _weight_quantization_info, _data_layout); - TensorType bias = create_tensor<TensorType>(bias_shape, _bias_data_type, 1, _quantization_info, _data_layout); - TensorType dst = create_tensor<TensorType>(output_shape, _output_data_type, 1, _quantization_info, _data_layout); + TensorType bias = create_tensor<TensorType>(bias_shape, _bias_data_type, 1, QuantizationInfo() /*bias is not a quantized type*/, _data_layout); + TensorType dst = create_tensor<TensorType>(output_shape, _output_data_type, 1, _dst_q_info, _data_layout); // Create and configure function FunctionType conv; - detail::configure_conv_function(conv, &src, &weights, &bias, &dst, info, weights_info, dilation, act_info, num_groups); - ARM_COMPUTE_EXPECT(src.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(weights.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(bias.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(dst.info()->is_resizable(), framework::LogLevel::ERRORS); + const unsigned int height_index = arm_compute::graph::get_dimension_idx(_data_layout, DataLayoutDimension::HEIGHT); + const unsigned int width_index = arm_compute::graph::get_dimension_idx(_data_layout, DataLayoutDimension::WIDTH); + + const PaddingInfo pad_w = width_index < pre_pad_layer.size() ? pre_pad_layer[width_index] : PaddingInfo(0, 0); + const PaddingInfo pad_h = height_index < pre_pad_layer.size() ? pre_pad_layer[height_index] : PaddingInfo(0, 0); + + if(pre_pad_layer.size() > 0 && arm_compute::graph::is_padding_in_height_or_width(_data_layout, pre_pad_layer)) + { + // this is the logic implemented in NodeFusionMutator -> fuse_pad_with_convolution + const PadStrideInfo new_conv_info( + info.stride().first, + info.stride().second, + info.pad_left() + pad_w.first, + info.pad_right() + pad_w.second, + info.pad_top() + pad_h.first, + info.pad_bottom() + pad_h.second, + info.round()); + detail::configure_conv_function(conv, &src, &weights, &bias, &dst, new_conv_info, weights_info, dilation, act_info, num_groups); + } + else + { + detail::configure_conv_function(conv, &src, &weights, &bias, &dst, info, weights_info, dilation, act_info, num_groups); + } + + ARM_COMPUTE_ASSERT(src.info()->is_resizable()); + ARM_COMPUTE_ASSERT(weights.info()->is_resizable()); + ARM_COMPUTE_ASSERT(bias.info()->is_resizable()); + ARM_COMPUTE_ASSERT(dst.info()->is_resizable()); + // Test "add padding after configure" behavior. This behavior should not affect the correctness + add_padding_x({ &src, &bias, &dst }, _data_layout); + // Padding weights may affect code path in some backends + if (padded_weights) + { + add_padding_x({ &weights }, _data_layout); + } // Allocate tensors src.allocator()->allocate(); @@ -204,24 +349,31 @@ protected: bias.allocator()->allocate(); dst.allocator()->allocate(); - ARM_COMPUTE_EXPECT(!src.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(!weights.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(!bias.info()->is_resizable(), framework::LogLevel::ERRORS); - ARM_COMPUTE_EXPECT(!dst.info()->is_resizable(), framework::LogLevel::ERRORS); + ARM_COMPUTE_ASSERT(!src.info()->is_resizable()); + ARM_COMPUTE_ASSERT(!weights.info()->is_resizable()); + ARM_COMPUTE_ASSERT(!bias.info()->is_resizable()); + ARM_COMPUTE_ASSERT(!dst.info()->is_resizable()); // Fill tensors - fill(AccessorType(src), 0); - fill(AccessorType(weights), 1); - fill(AccessorType(bias), 2); + fill(AccessorType(src), 0 + _hash); + fill(AccessorType(weights), 1 + _hash); + fill(AccessorType(bias), 2 + _hash); - // Compute NEConvolutionLayer function - conv.run(); + if(_mixed_layout) + { + mix_layout(conv, src, dst); + } + else + { + // Compute Convolution function + conv.run(); + } return dst; } SimpleTensor<T> compute_reference(const TensorShape &input_shape, const TensorShape &weights_shape, const TensorShape &bias_shape, const TensorShape &output_shape, const PadStrideInfo &info, - const Size2D &dilation, const ActivationLayerInfo act_info) + const Size2D &dilation, const ActivationLayerInfo act_info, PaddingList pre_pad_layer = PaddingList({})) { ARM_COMPUTE_ERROR_ON((input_shape[2] % weights_shape[2]) != 0); @@ -237,9 +389,9 @@ protected: SimpleTensor<TW> weights{ weights_shape, weights_dt, 1, _weight_quantization_info }; SimpleTensor<TBias> bias{ bias_shape, bias_dt, 1, _quantization_info }; - fill(src, 0); - fill(weights, 1); - fill(bias, 2); + fill(src, 0 + _hash); + fill(weights, 1 + _hash); + fill(bias, 2 + _hash); // Fill with bfloat16 to perform the conversion and reduce the mismatches in the output if(_is_bfloat16) @@ -248,9 +400,14 @@ protected: regularize_values(static_cast<void *>(weights.data()), weights.num_elements()); } - return (act_info.enabled()) ? reference::activation_layer<T>(reference::convolution_layer<T>(src, weights, bias, output_shape, info, dilation, num_groups), + if(pre_pad_layer.size() > 0) + { + src = reference::pad_layer<T>(src, pre_pad_layer, PixelValue(0), PaddingMode::CONSTANT); + } + + return (act_info.enabled()) ? reference::activation_layer<T>(reference::convolution_layer<T>(src, weights, bias, output_shape, info, dilation, num_groups, _dst_q_info), act_info) : - reference::convolution_layer<T>(src, weights, bias, output_shape, info, dilation, num_groups); + reference::convolution_layer<T>(src, weights, bias, output_shape, info, dilation, num_groups, _dst_q_info); } TensorType _target{}; @@ -262,34 +419,63 @@ protected: DataLayout _data_layout{}; QuantizationInfo _quantization_info{}; QuantizationInfo _weight_quantization_info{}; - bool _is_quantized = false; + QuantizationInfo _dst_q_info{}; bool _is_bfloat16 = false; + bool _mixed_layout = false; + bool _use_dynamic_output_quant{false}; + int32_t _hash{0}; + int32_t _min_bias{-100}; + int32_t _max_bias{100}; }; -template <typename TensorType, typename AccessorType, typename FunctionType, typename T> +template <typename TensorType, typename AccessorType, typename FunctionType, typename T, bool mixed_layout = false> class ConvolutionValidationFixture : public ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T> { public: - template <typename...> void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, DataType data_type, DataLayout data_layout, ActivationLayerInfo act_info) { ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T>::setup(input_shape, weights_shape, bias_shape, output_shape, info, dilation, reshape_weights, data_type, data_type, data_layout, - QuantizationInfo(), QuantizationInfo(), act_info); + QuantizationInfo(), QuantizationInfo(), act_info, mixed_layout); } }; -template <typename TensorType, typename AccessorType, typename FunctionType, typename T> +template <typename TensorType, typename AccessorType, typename FunctionType, typename T, bool mixed_layout = false> +class ConvolutionValidationPaddedWeightsFixture : public ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T> +{ +public: + void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, DataType data_type, + DataLayout data_layout) + { + ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T>::setup(input_shape, weights_shape, bias_shape, output_shape, info, dilation, reshape_weights, + data_type, data_type, data_layout, + QuantizationInfo(), QuantizationInfo(), ActivationLayerInfo(), mixed_layout, PaddingList({}), true); + } +}; + +template <typename TensorType, typename AccessorType, typename FunctionType, typename T, bool mixed_layout = false> +class ConvolutionValidationWithPaddingFixture : public ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T> +{ +public: + void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, DataType data_type, + DataLayout data_layout, ActivationLayerInfo act_info, PaddingList pre_pad_layer = PaddingList({})) + { + ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T>::setup(input_shape, weights_shape, bias_shape, output_shape, info, dilation, reshape_weights, + data_type, data_type, data_layout, + QuantizationInfo(), QuantizationInfo(), act_info, mixed_layout, pre_pad_layer); + } +}; + +template <typename TensorType, typename AccessorType, typename FunctionType, typename T, bool mixed_layout = false> class ConvolutionValidationQuantizedFixture : public ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T> { public: - template <typename...> void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, DataType data_type, DataLayout data_layout, QuantizationInfo quantization_info, ActivationLayerInfo act_info) { ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, T>::setup(input_shape, weights_shape, bias_shape, output_shape, info, dilation, reshape_weights, - data_type, data_type, data_layout, quantization_info, quantization_info, act_info); + data_type, data_type, data_layout, quantization_info, quantization_info, act_info, mixed_layout); } }; @@ -297,7 +483,6 @@ template <typename TensorType, typename AccessorType, typename FunctionType, typ class ConvolutionValidationQuantizedPerChannelFixture : public ConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T, TW> { public: - template <typename...> void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, bool reshape_weights, DataType data_type, DataLayout data_layout, QuantizationInfo quantization_info, ActivationLayerInfo act_info, DataType weights_data_type) { @@ -313,7 +498,311 @@ public: quantization_info, QuantizationInfo(weights_scales), act_info); } }; + + +#ifdef ARM_COMPUTE_ENABLE_FIXED_FORMAT_KERNELS +inline TensorInfo prepare_weights(const TensorInfo tensor_info, const arm_compute::WeightFormat weight_format) +{ + const DataLayout data_layout = tensor_info.data_layout(); + ARM_COMPUTE_EXPECT(data_layout == DataLayout::NHWC, framework::LogLevel::ERRORS); + const DataType data_type = tensor_info.data_type(); + const TensorShape tensor_shape = tensor_info.tensor_shape(); + const int N = tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::BATCHES)]; // N=O + const int H = tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::HEIGHT)]; + const int W = tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::WIDTH)]; + const int C = tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::CHANNEL)]; // C=I + + const int interleave_by = arm_compute::interleave_by(weight_format); + const int block_by = arm_compute::block_by(weight_format); + const int Ip = arm_gemm::roundup<unsigned int>(C, block_by); // C'=I' + const int Op = arm_gemm::roundup<unsigned int>(N, interleave_by); // O'=N' + + arm_compute::Strides strides_in_bytes = tensor_info.strides_in_bytes(); + strides_in_bytes.set(1, Ip * interleave_by * H * W * tensor_info.element_size()); + strides_in_bytes.set(2, Ip * Op * tensor_info.element_size()); + + const size_t offset_first_element_in_bytes = tensor_info.offset_first_element_in_bytes(); + + // Total size needs to include padded dimensions + const size_t total_size_in_bytes = Op * H * W * Ip * tensor_info.element_size(); + + const TensorShape TS(Ip, W, H, Op); + + TensorInfo new_tensor_info = tensor_info; + new_tensor_info.init(TS, 1 /*num_channels, deprecated*/, data_type, strides_in_bytes, + offset_first_element_in_bytes, total_size_in_bytes); + return new_tensor_info; +} + +template <typename ScalarType, typename AccessorType> +inline void rearrange_data(const AccessorType src, AccessorType dst, const arm_compute::WeightFormat weight_format) +{ + ARM_COMPUTE_EXPECT(arm_compute::is_fixed_format(weight_format), framework::LogLevel::ERRORS); + // Data Layout: OHWIo<interleave_by>i<block_by> + const int interleave_by = arm_compute::interleave_by(weight_format); + const int block_by = arm_compute::block_by(weight_format); + const TensorShape src_tensor_shape = src.shape(); + const DataLayout data_layout = src.data_layout(); + ARM_COMPUTE_EXPECT(data_layout == DataLayout::NHWC, framework::LogLevel::ERRORS); + const unsigned int O = src_tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::BATCHES)]; // N=O + const unsigned int H = src_tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::HEIGHT)]; + const unsigned int W = src_tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::WIDTH)]; + const unsigned int I = src_tensor_shape[get_data_layout_dimension_index(data_layout, DataLayoutDimension::CHANNEL)]; // C=I + const unsigned int Ip = arm_gemm::roundup<unsigned int>(I, block_by); // C'=I' + const unsigned int Op = arm_gemm::roundup<unsigned int>(O, interleave_by); // N'=O' + + ARM_COMPUTE_EXPECT_EQUAL(Op * H * W * Ip, (unsigned)dst.num_elements(), framework::LogLevel::ERRORS); + ARM_COMPUTE_EXPECT(src.num_elements() <= dst.num_elements(), framework::LogLevel::ERRORS); + + const ScalarType *src_ptr = reinterpret_cast<const ScalarType *>(src.data()); + ScalarType *dst_ptr = reinterpret_cast<ScalarType *>(dst.data()); + for(unsigned i = 0; i < I; ++i) + for(unsigned w = 0; w < W; ++w) + for(unsigned h = 0; h < H; ++h) + for(unsigned o = 0; o < O; ++o) + { + ScalarType src_element; + switch(data_layout) + { + case DataLayout::NHWC: + { + src_element = src_ptr[o * H * W * I + h * W * I + w * I + i]; + } + break; + default: + { + ARM_COMPUTE_ERROR("Unsupported memory layout."); + } + } + const int x5 = std::floor(((float)o) / interleave_by); + const int x4 = h; + const int x3 = w; + const int x2 = std::floor((float)i / block_by); + const int x1 = o % interleave_by; + const int x0 = i % block_by; + unsigned dst_idx = x5 * H * W * Ip * interleave_by + + x4 * W * Ip * interleave_by + + x3 * Ip * interleave_by + + x2 * interleave_by * block_by + + x1 * block_by + + x0; + dst_ptr[dst_idx] = src_element; + } +} + +template <typename ConvolutionFunction, typename TensorClass, typename AccessorType, typename ScalarType, bool enable_fast_math> +class VariableWeightsFixtureBaseClass : public framework::Fixture +{ +public: + void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation, DataLayout data_layout, + const DataType data_type) + { + conv = std::make_unique<ConvolutionFunction>(); + // prepare data + _data_layout = data_layout; + // Fixed format kernels for variable weights can work only with NHWC format. + ARM_COMPUTE_EXPECT_EQUAL(_data_layout, DataLayout::NHWC, framework::LogLevel::ERRORS); + _data_type = data_type; + // run the code + compute_target(input_shape, weights_shape, bias_shape, output_shape, info, dilation); + compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, dilation); + } + void teardown() + { + _target.allocator()->free(); + } + +protected: + template <typename U> + void fill(U &&tensor, int i) + { + switch(tensor.data_type()) + { + case DataType::F16: + { + arm_compute::utils::uniform_real_distribution_16bit<half> distribution{ -1.0f, 1.0f }; + library->fill(tensor, distribution, i); + break; + } + case DataType::F32: + { + std::uniform_real_distribution<float> distribution(-1.0f, 1.0f); + library->fill(tensor, distribution, i); + break; + } + default: + library->fill_tensor_uniform(tensor, i); + } + } + +private: + virtual void configure_and_execute_kernel(TensorInfo src_tensor_info, TensorInfo weight_tensor_info, TensorInfo bias_tensor_info, TensorInfo dst_tensor_info, const WeightsInfo weights_info, + const PadStrideInfo &conv_info, + const Size2D &dilation) = 0; + + void compute_target(TensorShape input_shape, TensorShape weights_shape, const TensorShape &bias_shape, TensorShape output_shape, const PadStrideInfo &conv_info, + const Size2D &dilation) + { + // The dataset is always in NCHW format - we need to make C the + // innermost dimension because the fixed-format kernel work only + // with NHWC layout. + permute(input_shape, PermutationVector(2U, 0U, 1U)); + permute(weights_shape, PermutationVector(2U, 0U, 1U)); + permute(output_shape, PermutationVector(2U, 0U, 1U)); + const auto src_tensor_info = TensorInfo(input_shape, 1, _data_type, _data_layout); + const auto weight_tensor_info = TensorInfo(weights_shape, 1, _data_type, _data_layout); + const auto bias_tensor_info = TensorInfo(bias_shape, 1, _data_type, _data_layout); + auto dst_tensor_info = TensorInfo(output_shape, 1, _data_type, _data_layout); + + const int kernel_height = weights_shape[get_data_layout_dimension_index(_data_layout, DataLayoutDimension::HEIGHT)]; + const int kernel_width = weights_shape[get_data_layout_dimension_index(_data_layout, DataLayoutDimension::WIDTH)]; + const int num_kernels = weights_shape[get_data_layout_dimension_index(_data_layout, DataLayoutDimension::BATCHES)]; + + const WeightsInfo query_weights_info(/*reshape_weights*/ false, kernel_width, kernel_height, num_kernels, false, arm_compute::WeightFormat::ANY); + const bool kernel_found = bool(ConvolutionFunction::has_opt_impl(_computed_weight_format, &src_tensor_info, &weight_tensor_info, + &bias_tensor_info, &dst_tensor_info, conv_info, query_weights_info)); + // Make surethat the setup founds a fixed-format kernel as requested by the test case. + ARM_COMPUTE_EXPECT(kernel_found, framework::LogLevel::ERRORS); + ARM_COMPUTE_EXPECT(arm_compute::is_fixed_format(_computed_weight_format), framework::LogLevel::ERRORS); + + const WeightsInfo weights_info(/*reshape_weights*/ false, kernel_width, kernel_height, num_kernels, false, _computed_weight_format); + configure_and_execute_kernel(src_tensor_info, weight_tensor_info, bias_tensor_info, dst_tensor_info, weights_info, conv_info, + dilation); + } + void compute_reference(const TensorShape &input_shape, const TensorShape &weights_shape, const TensorShape &bias_shape, const TensorShape &output_shape, const PadStrideInfo &info, + const Size2D &dilation) + { + ARM_COMPUTE_UNUSED(input_shape, weights_shape, bias_shape, output_shape, info, + dilation); + + // Create reference + SimpleTensor<ScalarType> src{ input_shape, _data_type }; + SimpleTensor<ScalarType> weights{ weights_shape, _data_type }; + SimpleTensor<ScalarType> bias{ bias_shape, _data_type }; + fill(src, 0); + fill(bias, 1); + fill(weights, 3); + _reference = reference::convolution_layer<ScalarType>(src, weights, bias, output_shape, info, dilation, 1 /*num_groups*/); + } + DataLayout _data_layout{}; + DataType _data_type{}; + +protected: + std::unique_ptr<ConvolutionFunction> conv{}; + arm_compute::WeightFormat _computed_weight_format{ arm_compute::WeightFormat::UNSPECIFIED }; + TensorClass _target{}; + SimpleTensor<ScalarType> _reference{}; +}; + +template <typename ConvolutionFunction, typename TensorClass, typename AccessorType, typename ScalarType, bool enable_fast_math> +class VariableWeightsFixture : public VariableWeightsFixtureBaseClass<ConvolutionFunction, TensorClass, AccessorType, ScalarType, enable_fast_math> +{ + void configure_and_execute_kernel(TensorInfo src_tensor_info, TensorInfo weight_tensor_info, TensorInfo bias_tensor_info, TensorInfo dst_tensor_info, const WeightsInfo weights_info, + const PadStrideInfo &conv_info, + const Size2D &dilation) + { + this->conv->configure(&src_tensor_info, &weight_tensor_info, &bias_tensor_info, &dst_tensor_info, conv_info, weights_info, dilation, ActivationLayerInfo(), enable_fast_math); + + // Allocate input tensors + auto src = create_tensor<TensorClass>(src_tensor_info); + auto weights_original = create_tensor<TensorClass>(weight_tensor_info); + const TensorInfo new_tensor_info = prepare_weights(weight_tensor_info, this->_computed_weight_format); + auto weights_transformed = create_tensor<TensorClass>(new_tensor_info); + auto bias = create_tensor<TensorClass>(bias_tensor_info); + src.allocator()->allocate(); + weights_original.allocator()->allocate(); + weights_transformed.allocator()->allocate(); + bias.allocator()->allocate(); + // Allocate destination tensor + this->_target = create_tensor<TensorClass>(dst_tensor_info); + this->_target.allocator()->allocate(); + + // Prepare source and biases that are left unchanged. + this->fill(AccessorType(src), 0); + this->fill(AccessorType(bias), 1); + + // First run + this->fill(AccessorType(weights_original), 2); + rearrange_data<ScalarType, AccessorType>(AccessorType(weights_original), AccessorType(weights_transformed), this->_computed_weight_format); + ITensorPack run_pack{ { TensorType::ACL_SRC_0, &src }, { TensorType::ACL_SRC_1, &weights_transformed }, { TensorType::ACL_SRC_2, &bias }, { TensorType::ACL_DST, &(this->_target) } }; + this->conv->run(run_pack); + // Second run, with new weights + this->fill(AccessorType(weights_original), 3); + rearrange_data<ScalarType, AccessorType>(AccessorType(weights_original), AccessorType(weights_transformed), this->_computed_weight_format); + this->conv->run(run_pack); + src.allocator()->free(); + weights_original.allocator()->free(); + weights_transformed.allocator()->free(); + bias.allocator()->free(); + } +}; + +template <typename ConvolutionFunction, typename TensorClass, typename AccessorType, typename ScalarType, bool enable_fast_math> +class VariableWeightsFixtureNEInterface : public VariableWeightsFixtureBaseClass<ConvolutionFunction, TensorClass, AccessorType, ScalarType, enable_fast_math> +{ + void configure_and_execute_kernel(TensorInfo src_tensor_info, TensorInfo weight_tensor_info, TensorInfo bias_tensor_info, TensorInfo dst_tensor_info, const WeightsInfo weights_info, + const PadStrideInfo &conv_info, + const Size2D &dilation) + { + // Allocate input tensors + auto src = create_tensor<TensorClass>(src_tensor_info); + auto weights_original = create_tensor<TensorClass>(weight_tensor_info); + const TensorInfo new_tensor_info = prepare_weights(weight_tensor_info, this->_computed_weight_format); + auto weights_transformed = create_tensor<TensorClass>(new_tensor_info); + auto bias = create_tensor<TensorClass>(bias_tensor_info); + src.allocator()->allocate(); + weights_original.allocator()->allocate(); + weights_transformed.allocator()->allocate(); + bias.allocator()->allocate(); + // Allocate destination tensor + this->_target = create_tensor<TensorClass>(dst_tensor_info); + this->_target.allocator()->allocate(); + this->conv->configure(&src, &weights_transformed, &bias, &(this->_target), conv_info, weights_info, dilation, ActivationLayerInfo(), enable_fast_math); + // Prepare source and biases that are left unchanged. + this->fill(AccessorType(src), 0); + this->fill(AccessorType(bias), 1); + + // First run + this->fill(AccessorType(weights_original), 2); + rearrange_data<ScalarType, AccessorType>(AccessorType(weights_original), AccessorType(weights_transformed), this->_computed_weight_format); + this->conv->run(); + // Second run, with new weights + this->fill(AccessorType(weights_original), 3); + rearrange_data<ScalarType, AccessorType>(AccessorType(weights_original), AccessorType(weights_transformed), this->_computed_weight_format); + this->conv->run(); + src.allocator()->free(); + weights_original.allocator()->free(); + weights_transformed.allocator()->free(); + bias.allocator()->free(); + } +}; + +template <typename ConvolutionClass, bool enable_fast_math> +class HasOptImplFixture : public framework::Fixture +{ +public: + void setup(DataType data_type, arm_compute::WeightFormat query_weight_format) + { + auto conv = std::make_unique<ConvolutionClass>(); + const auto src_info = TensorInfo(TensorShape(56U, 56U, 64U), 1, data_type, DataLayout::NHWC); + const auto weight_info = TensorInfo(TensorShape(64, 3U, 3U, 64U), 1, enable_fast_math ? DataType::BFLOAT16 : data_type, DataLayout::NHWC); + const auto bias_info = TensorInfo(TensorShape(64U), 1, data_type, DataLayout::NHWC); + auto dst_info = TensorInfo(TensorShape(56U, 56U, 64U), 1, data_type, DataLayout::NHWC); + const auto conv_info = PadStrideInfo(1, 1, 1, 1, 1, 1, DimensionRoundingType::FLOOR); + const WeightsInfo weights_info(false, 3U, 3U, 64U, false, query_weight_format); + _kernel_found = bool(ConvolutionClass::has_opt_impl(_computed_weight_format, &src_info, &weight_info, + &bias_info, &dst_info, conv_info, weights_info, + Size2D(1U, 1U) /*dilation*/, ActivationLayerInfo() /*act_info*/, enable_fast_math)); + } + +protected: + bool _kernel_found{ false }; + arm_compute::WeightFormat _computed_weight_format{ arm_compute::WeightFormat::UNSPECIFIED }; +}; +#endif // ARM_COMPUTE_ENABLE_FIXED_FORMAT_KERNELS + } // namespace validation } // namespace test } // namespace arm_compute -#endif /* ARM_COMPUTE_TEST_CONVOLUTION_LAYER_FIXTURE */ + +#endif // ACL_TESTS_VALIDATION_FIXTURES_CONVOLUTIONLAYERFIXTURE_H |