// Copyright (c) 2020, ARM Limited. // // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. #include "reduction.h" #include "quant_util.h" using namespace TosaReference; using namespace Eigen; using namespace tosa; template ReduceNode::ReduceNode(const Op& op_, TosaAttributeBase* attribute_, uint64_t id_) : GraphNode(op_, id_) { setRequiredOperands(1, 1); setRequiredRank(0, 4); INIT_ATTRIBUTE(Axis); } template ReduceNode::~ReduceNode() { if (attribute) delete attribute; } template int ReduceNode::checkTensorAttributes() { if (validateRequiredOperands()) return 1; if (validateRequiredRank(inputs[0]) || validateRequiredRank(outputs[0])) { return 1; } if (attribute->axis() < 0 || attribute->axis() >= inputs[0]->getRank()) { printNodeValidationError("Reduce axis must between [0, input_rank - 1]"); return 1; } if (inputs[0]->matchRank(*outputs[0])) { printNodeValidationError("Input and output tensor ranks must match"); return 1; } in = dynamic_cast*>(inputs[0]); out = dynamic_cast*>(outputs[0]); ASSERT_MEM(in && out); dims[0] = this->attribute->axis(); return 0; } template int OpReduceAll::eval() { this->out->getTensor() = this->in->getTensor().all(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } template int OpReduceAny::eval() { this->out->getTensor() = this->in->getTensor().any(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } template int OpReduceMax::eval() { this->out->getTensor() = this->in->getTensor().maximum(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } template int OpReduceMin::eval() { this->out->getTensor() = this->in->getTensor().minimum(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } template int OpReduceProduct::eval() { this->out->getTensor() = this->in->getTensor().prod(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } template int OpReduceSum::eval() { this->out->getTensor() = this->in->getTensor().sum(this->dims).reshape(this->out->getTensor().dimensions()); return GraphNode::eval(); } // template explicit instantiation DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceAll, BOOL); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceAny, BOOL); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMax, FLOAT); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMax, AINT8); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMax, INT16); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMax, INT32); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMin, FLOAT); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMin, AINT8); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMin, INT16); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceMin, INT32); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceProduct, FLOAT); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceSum, FLOAT); DEF_INSTANTIATE_RANK1_6_ONE_RANK_ONE_TYPE(OpReduceSum, INT32);