// Copyright 2022 Google LLC // // This source code is licensed under the BSD-style license found in the // LICENSE file in the root directory of this source tree. #include #include #include #include #include #include #include #include #include #include #include #include #include namespace { inline size_t compute_output_dimension(size_t padded_input_dimension, size_t kernel_dimension) { return padded_input_dimension / kernel_dimension; } } // namespace class ArgmaxPoolingTestF32 : public ::testing::Test { protected: ArgmaxPoolingTestF32() { random_device = std::make_unique(); rng = std::mt19937((*random_device)()); input_size_dist = std::uniform_int_distribution(10, 15); pooling_size_dist = std::uniform_int_distribution(2, 5); batch_size = input_size_dist(rng); input_height = input_size_dist(rng); input_width = input_size_dist(rng); channels = input_size_dist(rng); pooling_height = pooling_size_dist(rng); pooling_width = pooling_size_dist(rng); input_padding_top = input_size_dist(rng); input_padding_right = input_size_dist(rng); input_padding_bottom = input_size_dist(rng); input_padding_left = input_size_dist(rng); output_height = compute_output_dimension(input_height + input_padding_top + input_padding_bottom, pooling_height); output_width = compute_output_dimension(input_width + input_padding_left + input_padding_right, pooling_width); input_dims = {batch_size, input_height, input_width, channels}; output_dims = {batch_size, output_height, output_width, channels}; input = std::vector(XNN_EXTRA_BYTES / sizeof(float) + batch_size * input_height * input_width * channels); operator_output = std::vector(batch_size * output_height * output_width * channels); operator_output_index = std::vector(batch_size * output_height * output_width * channels); subgraph_output = std::vector(batch_size * output_height * output_width * channels); subgraph_output_index = std::vector(batch_size * output_height * output_width * channels); } std::unique_ptr random_device; std::mt19937 rng; std::uniform_int_distribution input_size_dist; std::uniform_int_distribution pooling_size_dist; uint32_t batch_size; uint32_t input_height; uint32_t input_width; uint32_t channels; uint32_t pooling_height; uint32_t pooling_width; uint32_t output_height; uint32_t output_width; std::array input_dims; std::array output_dims; uint32_t input_padding_top; uint32_t input_padding_right; uint32_t input_padding_bottom; uint32_t input_padding_left; uint32_t input_id; uint32_t output_value_id; uint32_t output_index_id; std::vector input; std::vector operator_output; std::vector operator_output_index; std::vector subgraph_output; std::vector subgraph_output_index; }; TEST_F(ArgmaxPoolingTestF32, define) { ASSERT_EQ(xnn_status_success, xnn_initialize(/*allocator=*/nullptr)); xnn_subgraph_t subgraph = nullptr; ASSERT_EQ(xnn_status_success, xnn_create_subgraph(/*external_value_ids=*/3, /*flags=*/0, &subgraph)); std::unique_ptr auto_subgraph(subgraph, xnn_delete_subgraph); input_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, input_dims.size(), input_dims.data(), nullptr, 0, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_INPUT, &input_id)); ASSERT_NE(input_id, XNN_INVALID_NODE_ID); output_value_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, output_dims.size(), output_dims.data(), nullptr, 1, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_OUTPUT, &output_value_id)); ASSERT_NE(output_value_id, XNN_INVALID_NODE_ID); output_index_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, output_dims.size(), output_dims.data(), nullptr, 2, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_OUTPUT, &output_index_id)); ASSERT_NE(output_index_id, XNN_INVALID_NODE_ID); ASSERT_EQ( xnn_status_success, xnn_define_argmax_pooling_2d( subgraph, input_padding_top, input_padding_right, input_padding_bottom, input_padding_left, pooling_height, pooling_width, input_id, output_value_id, output_index_id, /*flags=*/0)); ASSERT_EQ(subgraph->num_nodes, 1); const struct xnn_node* node = &subgraph->nodes[0]; ASSERT_EQ(node->type, xnn_node_type_argmax_pooling_2d); ASSERT_EQ(node->compute_type, xnn_compute_type_fp32); ASSERT_EQ(node->params.pooling_2d.padding_top, input_padding_top); ASSERT_EQ(node->params.pooling_2d.padding_right, input_padding_right); ASSERT_EQ(node->params.pooling_2d.padding_bottom, input_padding_bottom); ASSERT_EQ(node->params.pooling_2d.padding_left, input_padding_left); ASSERT_EQ(node->params.pooling_2d.pooling_height, pooling_height); ASSERT_EQ(node->params.pooling_2d.pooling_width, pooling_width); ASSERT_EQ(node->num_inputs, 1); ASSERT_EQ(node->inputs[0], input_id); ASSERT_EQ(node->num_outputs, 2); ASSERT_EQ(node->outputs[0], output_value_id); ASSERT_EQ(node->outputs[1], output_index_id); ASSERT_EQ(node->flags, 0); } TEST_F(ArgmaxPoolingTestF32, matches_operator_api) { std::uniform_real_distribution f32dist(-255.0f, 255.0f); std::generate(input.begin(), input.end(), [&]() { return f32dist(rng); }); std::fill(operator_output.begin(), operator_output.end(), nanf("")); std::fill(subgraph_output.begin(), subgraph_output.end(), nanf("")); ASSERT_EQ(xnn_status_success, xnn_initialize(/*allocator=*/nullptr)); // Call operator API. xnn_operator_t op = nullptr; const xnn_status status = xnn_create_argmax_pooling2d_nhwc_f32( input_padding_top, input_padding_right, input_padding_bottom, input_padding_left, pooling_height, pooling_width, channels, channels, channels, /*flags=*/0, &op); if (status == xnn_status_unsupported_hardware) { GTEST_SKIP(); } ASSERT_EQ(xnn_status_success, status); ASSERT_NE(nullptr, op); std::unique_ptr auto_op(op, xnn_delete_operator); ASSERT_EQ( xnn_status_success, xnn_reshape_argmax_pooling2d_nhwc_f32(op, batch_size, input_height, input_width, /*threadpool=*/nullptr)); ASSERT_EQ( xnn_status_success, xnn_setup_argmax_pooling2d_nhwc_f32(op, input.data(), operator_output.data(), operator_output_index.data())); ASSERT_EQ(xnn_status_success, xnn_run_operator(op, /*threadpool=*/nullptr)); // Call subgraph API. xnn_subgraph_t subgraph = nullptr; ASSERT_EQ(xnn_status_success, xnn_create_subgraph(/*external_value_ids=*/3, /*flags=*/0, &subgraph)); std::unique_ptr auto_subgraph(subgraph, xnn_delete_subgraph); input_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, input_dims.size(), input_dims.data(), nullptr, /*external_id=*/0, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_INPUT, &input_id)); ASSERT_NE(input_id, XNN_INVALID_NODE_ID); output_value_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, output_dims.size(), output_dims.data(), nullptr, /*external_id=*/1, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_OUTPUT, &output_value_id)); ASSERT_NE(output_value_id, XNN_INVALID_NODE_ID); output_index_id = XNN_INVALID_NODE_ID; ASSERT_EQ( xnn_status_success, xnn_define_tensor_value( subgraph, xnn_datatype_fp32, output_dims.size(), output_dims.data(), nullptr, /*external_id=*/2, /*flags=*/XNN_VALUE_FLAG_EXTERNAL_OUTPUT, &output_index_id)); ASSERT_NE(output_index_id, XNN_INVALID_NODE_ID); xnn_runtime_t runtime = nullptr; ASSERT_EQ( xnn_status_success, xnn_define_argmax_pooling_2d( subgraph, input_padding_top, input_padding_right, input_padding_bottom, input_padding_left, pooling_height, pooling_width, input_id, output_value_id, output_index_id, /*flags=*/0)); ASSERT_EQ(xnn_status_success, xnn_create_runtime_v3(subgraph, nullptr, nullptr, /*flags=*/0, &runtime)); ASSERT_NE(nullptr, runtime); std::unique_ptr auto_runtime(runtime, xnn_delete_runtime); std::array external = { xnn_external_value{input_id, input.data()}, xnn_external_value{output_value_id, subgraph_output.data()}, xnn_external_value{output_index_id, subgraph_output_index.data()}}; ASSERT_EQ(xnn_status_success, xnn_setup_runtime(runtime, external.size(), external.data())); ASSERT_EQ(xnn_status_success, xnn_invoke_runtime(runtime)); ASSERT_EQ(subgraph_output, operator_output); }