/* * Copyright (c) 2018 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 ARM_COMPUTE_TEST_RNN_LAYER_FIXTURE #define ARM_COMPUTE_TEST_RNN_LAYER_FIXTURE #include "tests/Globals.h" #include "tests/framework/Asserts.h" #include "tests/framework/Fixture.h" #include "tests/validation/reference/ActivationLayer.h" #include "tests/validation/reference/ArithmeticOperations.h" #include "tests/validation/reference/FullyConnectedLayer.h" #include "tests/validation/reference/GEMM.h" namespace arm_compute { namespace test { namespace validation { template class RNNLayerValidationFixture : public framework::Fixture { public: template void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape recurrent_weights_shape, TensorShape bias_shape, TensorShape output_shape, ActivationLayerInfo info, DataType data_type) { _target = compute_target(input_shape, weights_shape, recurrent_weights_shape, bias_shape, output_shape, info, data_type); _reference = compute_reference(input_shape, weights_shape, recurrent_weights_shape, bias_shape, output_shape, info, data_type); } protected: template void fill(U &&tensor, int i) { std::uniform_real_distribution<> distribution(-1.0f, 1.0f); library->fill(tensor, distribution, i); } TensorType compute_target(const TensorShape &input_shape, const TensorShape &weights_shape, const TensorShape &recurrent_weights_shape, const TensorShape &bias_shape, const TensorShape &output_shape, ActivationLayerInfo info, DataType data_type) { // Create tensors TensorType input = create_tensor(input_shape, data_type); TensorType weights = create_tensor(weights_shape, data_type); TensorType recurrent_weights = create_tensor(recurrent_weights_shape, data_type); TensorType bias = create_tensor(bias_shape, data_type); TensorType hidden_state = create_tensor(output_shape, data_type); TensorType output = create_tensor(output_shape, data_type); // Create and configure function FunctionType rnn; rnn.configure(&input, &weights, &recurrent_weights, &bias, &hidden_state, &output, info); ARM_COMPUTE_EXPECT(input.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(weights.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(recurrent_weights.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(bias.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(hidden_state.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(output.info()->is_resizable(), framework::LogLevel::ERRORS); // Allocate tensors input.allocator()->allocate(); weights.allocator()->allocate(); recurrent_weights.allocator()->allocate(); bias.allocator()->allocate(); hidden_state.allocator()->allocate(); output.allocator()->allocate(); ARM_COMPUTE_EXPECT(!input.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(!weights.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(!recurrent_weights.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(!bias.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(!hidden_state.info()->is_resizable(), framework::LogLevel::ERRORS); ARM_COMPUTE_EXPECT(!output.info()->is_resizable(), framework::LogLevel::ERRORS); // Fill tensors fill(AccessorType(input), 0); fill(AccessorType(weights), 0); fill(AccessorType(recurrent_weights), 0); fill(AccessorType(bias), 0); fill(AccessorType(hidden_state), 0); // Compute function rnn.run(); return output; } SimpleTensor compute_reference(const TensorShape &input_shape, const TensorShape &weights_shape, const TensorShape &recurrent_weights_shape, const TensorShape &bias_shape, const TensorShape &output_shape, ActivationLayerInfo info, DataType data_type) { // Create reference SimpleTensor input{ input_shape, data_type }; SimpleTensor weights{ weights_shape, data_type }; SimpleTensor recurrent_weights{ recurrent_weights_shape, data_type }; SimpleTensor bias{ bias_shape, data_type }; SimpleTensor hidden_state{ output_shape, data_type }; // Fill reference fill(input, 0); fill(weights, 0); fill(recurrent_weights, 0); fill(bias, 0); fill(hidden_state, 0); TensorShape out_shape = recurrent_weights_shape; out_shape.set(1, output_shape.y()); // Compute reference SimpleTensor out_w{ out_shape, data_type }; SimpleTensor fully_connected = reference::fully_connected_layer(input, weights, bias, out_shape); SimpleTensor gemm = reference::gemm(hidden_state, recurrent_weights, out_w, 1.f, 0.f); SimpleTensor add_res = reference::arithmetic_operation(reference::ArithmeticOperation::ADD, fully_connected, gemm, data_type, ConvertPolicy::SATURATE); return reference::activation_layer(add_res, info); } TensorType _target{}; SimpleTensor _reference{}; }; } // namespace validation } // namespace test } // namespace arm_compute #endif /* ARM_COMPUTE_TEST_RNN_LAYER_FIXTURE */