// Copyright 2020 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 "xnnpack.h" #include "xnnpack/log.h" #include "xnnpack/node-type.h" #include "xnnpack/subgraph-validation.h" #include "xnnpack/subgraph.h" #include "pthreadpool.h" static enum xnn_status create_argmax_pooling_operator( const struct xnn_node* node, const struct xnn_value* values, size_t num_values, struct xnn_operator_data* opdata, struct xnn_code_cache* code_cache, xnn_weights_cache_t weights_cache) { assert(node->num_inputs == 1); const uint32_t input_id = node->inputs[0]; assert(input_id != XNN_INVALID_VALUE_ID); assert(input_id < num_values); (void) input_id; // Silence unused warning, only use in asserts. assert(node->num_outputs == 2); const enum xnn_status status = xnn_create_argmax_pooling2d_nhwc_f32( node->params.pooling_2d.padding_top, node->params.pooling_2d.padding_right, node->params.pooling_2d.padding_bottom, node->params.pooling_2d.padding_left, node->params.pooling_2d.pooling_height, node->params.pooling_2d.pooling_width, node->flags, &opdata->operator_objects[0]); return status; } static enum xnn_status reshape_argmax_pooling_operator( struct xnn_operator_data* opdata, struct xnn_value* values, size_t num_values, pthreadpool_t threadpool) { const uint32_t input_id = opdata->inputs[0]; assert(input_id < num_values); const size_t batch_size = values[input_id].shape.dim[0]; const size_t input_height = values[input_id].shape.dim[1]; const size_t input_width = values[input_id].shape.dim[2]; const size_t channel_dim = values[input_id].shape.dim[3]; size_t output_height, output_width; const size_t old_workspace_size = opdata->workspace_size; enum xnn_status status = xnn_reshape_argmax_pooling2d_nhwc_f32( opdata->operator_objects[0], batch_size, input_height, input_width, /*channels=*/channel_dim, /*input_pixel_stride=*/channel_dim, /*output_pixel_stride=*/channel_dim, &opdata->workspace_size, &opdata->workspace_alignment, &output_height, &output_width, threadpool); if (status != xnn_status_success) { return status; } const uint32_t output_id = opdata->outputs[0]; assert(output_id < num_values); struct xnn_value* output_value = values + output_id; output_value->shape.dim[0] = batch_size; output_value->shape.dim[1] = output_height; output_value->shape.dim[2] = output_width; output_value->shape.dim[3] = channel_dim; output_value->shape.num_dims = 4; const size_t new_size = xnn_tensor_get_size(output_value); if (new_size > output_value->size || opdata->workspace_size > old_workspace_size) { output_value->size = new_size; return xnn_status_reallocation_required; } return xnn_status_success; } static enum xnn_status setup_argmax_pooling_operator( const struct xnn_operator_data* opdata, const struct xnn_value* values, size_t num_values, pthreadpool_t threadpool) { const uint32_t input_id = opdata->inputs[0]; assert(input_id != XNN_INVALID_VALUE_ID); assert(input_id < num_values); const uint32_t output_value_id = opdata->outputs[0]; assert(output_value_id != XNN_INVALID_VALUE_ID); assert(output_value_id < num_values); const uint32_t output_index_id = opdata->outputs[1]; assert(output_index_id != XNN_INVALID_VALUE_ID); assert(output_index_id < num_values); const struct xnn_value* input_value = values + input_id; const void* input_data = input_value->data; assert(input_data != NULL); const struct xnn_value* output_value_value = values + output_value_id; void* output_value_data = output_value_value->data; assert(output_value_data != NULL); const struct xnn_value* output_index_value = values + output_index_id; void* output_index_data = output_index_value->data; assert(output_index_data != NULL); return xnn_setup_argmax_pooling2d_nhwc_f32( opdata->operator_objects[0], opdata->workspace, input_data, output_value_data, output_index_data); } enum xnn_status xnn_define_argmax_pooling_2d( xnn_subgraph_t subgraph, uint32_t input_padding_top, uint32_t input_padding_right, uint32_t input_padding_bottom, uint32_t input_padding_left, uint32_t pooling_height, uint32_t pooling_width, uint32_t input_id, uint32_t output_value_id, uint32_t output_index_id, uint32_t flags) { enum xnn_status status; if ((status = xnn_subgraph_check_xnnpack_initialized(xnn_node_type_argmax_pooling_2d)) != xnn_status_success) { return status; } const uint32_t pooling_size = pooling_height * pooling_width; if (pooling_size == 0) { xnn_log_error( "failed to define %s operator with %" PRIu32 "x%" PRIu32 " pooling size: " "pooling size dimensions must be non-zero", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), pooling_width, pooling_height); return xnn_status_invalid_parameter; } if (pooling_size == 1) { xnn_log_error( "failed to define %s operator with 1 pooling element: 1x1 pooling is meaningless", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d)); return xnn_status_invalid_parameter; } if ((status = xnn_subgraph_check_input_node_id(xnn_node_type_argmax_pooling_2d, input_id, subgraph->num_values)) != xnn_status_success) { return status; } const struct xnn_value* input_value = &subgraph->values[input_id]; status = xnn_subgraph_check_input_type_dense(xnn_node_type_argmax_pooling_2d, input_id, input_value); if (status != xnn_status_success) { return status; } switch (input_value->datatype) { case xnn_datatype_fp32: break; default: xnn_log_error( "failed to define %s operator with input ID #%" PRIu32 ": unsupported Value datatype %s (%d)", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), input_id, xnn_datatype_to_string(input_value->datatype), input_value->datatype); return xnn_status_invalid_parameter; } if (output_value_id >= subgraph->num_values) { xnn_log_error( "failed to define %s operator with output value ID #%" PRIu32 ": invalid Value ID", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), output_value_id); return xnn_status_invalid_parameter; } const struct xnn_value* output_value_value = &subgraph->values[output_value_id]; if (output_value_value->type != xnn_value_type_dense_tensor) { xnn_log_error( "failed to define %s operator with output value ID #%" PRIu32 ": unsupported Value type %d (expected dense tensor)", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), output_value_id, output_value_value->type); return xnn_status_invalid_parameter; } switch (output_value_value->datatype) { case xnn_datatype_fp32: break; default: xnn_log_error( "failed to define %s operator with output value ID #%" PRIu32 ": unsupported Value datatype %s (%d)", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), output_value_id, xnn_datatype_to_string(output_value_value->datatype), output_value_value->datatype); return xnn_status_invalid_parameter; } if (output_index_id >= subgraph->num_values) { xnn_log_error( "failed to define %s operator with output index ID #%" PRIu32 ": invalid Value ID", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), output_index_id); return xnn_status_invalid_parameter; } const struct xnn_value* output_index_value = &subgraph->values[output_index_id]; if (output_index_value->type != xnn_value_type_dense_tensor) { xnn_log_error( "failed to define %s operator with output index ID #%" PRIu32 ": unsupported Value type %d (expected dense tensor)", xnn_node_type_to_string(xnn_node_type_argmax_pooling_2d), output_index_id, output_index_value->type); return xnn_status_invalid_parameter; } struct xnn_node* node = xnn_subgraph_new_node(subgraph); if (node == NULL) { return xnn_status_out_of_memory; } node->type = xnn_node_type_argmax_pooling_2d; node->params.pooling_2d.padding_top = input_padding_top; node->params.pooling_2d.padding_right = input_padding_right; node->params.pooling_2d.padding_bottom = input_padding_bottom; node->params.pooling_2d.padding_left = input_padding_left; node->params.pooling_2d.pooling_height = pooling_height; node->params.pooling_2d.pooling_width = pooling_width; node->num_inputs = 1; node->inputs[0] = input_id; node->num_outputs = 2; node->outputs[0] = output_value_id; node->outputs[1] = output_index_id; node->flags = flags; node->create = create_argmax_pooling_operator; node->reshape = reshape_argmax_pooling_operator; node->setup = setup_argmax_pooling_operator; return xnn_status_success; }