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deeplearning4j--deeplearning4j/libnd4j/include/ops/declarable/generic/reduce/reduce_sum.cpp
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/* ******************************************************************************
*
*
* This program and the accompanying materials are made available under the
* terms of the Apache License, Version 2.0 which is available at
* https://www.apache.org/licenses/LICENSE-2.0.
*
* See the NOTICE file distributed with this work for additional
* information regarding copyright ownership.
* 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.
*
* SPDX-License-Identifier: Apache-2.0
******************************************************************************/
//
// Created by george@skymind.io on 6/1/2018.
// @author Yurii Shyrma (iuriish@yahoo.com)
//
#include <ops/declarable/CustomOperations.h>
#include <ops/declarable/helpers/axis.h>
#if NOT_EXCLUDED(OP_reduce_sum)
namespace sd {
namespace ops {
//////////////////////////////////////////////////////////////////////////
CUSTOM_OP_IMPL(reduce_sum, -1, 1, false, 0, 0) {
auto input = INPUT_VARIABLE(0);
auto output = OUTPUT_VARIABLE(0);
std::vector<sd::LongType> dimensions;
if (block.width() > 1) {
auto axesVector = INPUT_VARIABLE(1);
helpers::adjustAxis(input->rankOf(), axesVector, dimensions);
} else if (block.getIArguments()->size())
dimensions = *block.getIArguments();
REQUIRE_TRUE(
dimensions.size() <= static_cast<size_t>(input->rankOf()), 0,
"REDUCE_SUM OP: the number of dimensions to reduce along must be <= input array rank, but got %i instead",
dimensions.size());
for (const auto& item : dimensions)
REQUIRE_TRUE(item >= -input->shapeInfo()[0] && item < input->shapeInfo()[0], 0,
"REDUCE_SUM OP: the input dimension to reduce along must be in range [-%i, %i), but got %i instead !",
input->rankOf(), input->rankOf(), item);
bool keepDims = false;
if (block.getBArguments()->size())
keepDims = B_ARG(0);
else if (block.getTArguments()->size())
keepDims = (bool)T_ARG(0);
input->reduceAlongDimension(reduce::Sum, output, &dimensions, keepDims);
return sd::Status::OK;
}
DECLARE_SHAPE_FN(reduce_sum) {
bool keepDims = false;
if (block.getBArguments()->size())
keepDims = B_ARG(0);
else if (block.getTArguments()->size())
keepDims = (bool)T_ARG(0);
std::vector<sd::LongType> dimensions;
if (block.width() > 1) {
auto axesVector = INPUT_VARIABLE(1);
helpers::adjustAxis(INPUT_VARIABLE(0)->rankOf(), axesVector, dimensions);
} else if (block.getIArguments()->size())
dimensions = *block.getIArguments();
REQUIRE_TRUE(
dimensions.size() <= static_cast<size_t>(inputShape->at(0)[0]), 0,
"REDUCE_SUM OP: the number of dimensions to reduce along must be <= input array rank, but got %i instead",
dimensions.size());
for (const auto& item : dimensions)
REQUIRE_TRUE(item >= -inputShape->at(0)[0] && item < inputShape->at(0)[0], 0,
"REDUCE_SUM OP: the input dimension to reduce along must be in range [-%i, %i), but got %i instead !",
inputShape->at(0)[0], inputShape->at(0)[0], item);
return SHAPELIST(ShapeUtils::evalReduceShapeInfo(shape::order(inputShape->at(0)), &dimensions, inputShape->at(0),
keepDims, false, block.getWorkspace()));
}
DECLARE_TYPES(reduce_sum) { getOpDescriptor()->setAllowedInputTypes(sd::DataType::ANY)->setSameMode(true); }
//////////////////////////////////////////////////////////////////////////
CUSTOM_OP_IMPL(reduce_sum_bp, -1, 1, false, 0, 0) {
auto input = INPUT_VARIABLE(0);
auto gradO = INPUT_VARIABLE(1);
auto gradI = OUTPUT_VARIABLE(0);
bool keepDims = false;
auto dimensions = *block.getIArguments();
if (block.width() > 2) {
auto axesVector = INPUT_VARIABLE(2);
helpers::adjustAxis(input->rankOf(), axesVector, dimensions);
}
if (block.getBArguments()->size())
keepDims = B_ARG(0);
else if (block.getTArguments()->size())
keepDims = (bool)T_ARG(0);
REQUIRE_TRUE(
dimensions.size() <= static_cast<size_t>(input->rankOf()), 0,
"REDUCE_SUM_BP OP: the number of dimensions to reduce along must be <= input array rank, but got %i instead",
dimensions.size());
for (const auto& item : dimensions)
REQUIRE_TRUE(
item >= -input->rankOf() && item < input->rankOf(), 0,
"REDUCE_SUM_BP OP: the input dimension to reduce along must be in range [-%i, %i), but got %i instead !",
input->rankOf(), input->rankOf(), item);
// *** calculations *** //
if (!keepDims) {
auto gradOShapeKeepDims =
ShapeUtils::evalReduceShapeInfo(gradO->ordering(), &dimensions, *input, true, false, block.getWorkspace());
std::vector<sd::LongType> shape = ShapeUtils::pullShapeFromShapeInfo(
gradOShapeKeepDims);
auto r = gradO->reshape(gradO->ordering(),
shape); // for example could be something like [a,b] -> [1,a,1,b]
gradI->applyTrueBroadcast(sd::BroadcastOpsTuple::Assign(), r, gradI);
delete r;
} else
gradI->applyTrueBroadcast(sd::BroadcastOpsTuple::Assign(), gradO, gradI);
return sd::Status::OK;
}
DECLARE_SHAPE_FN(reduce_sum_bp) {
auto dimensions = *block.getIArguments();
if (block.width() > 2) {
auto axesVector = INPUT_VARIABLE(2);
helpers::adjustAxis(INPUT_VARIABLE(0)->rankOf(), axesVector, dimensions);
}
REQUIRE_TRUE(
dimensions.size() <= static_cast<size_t>(inputShape->at(0)[0]), 0,
"REDUCE_SUM_BP OP: the number of dimensions to reduce along must be <= input array rank, but got %i instead",
dimensions.size());
for (const auto& item : dimensions)
REQUIRE_TRUE(
item >= -inputShape->at(0)[0] && item < inputShape->at(0)[0], 0,
"REDUCE_SUM_BP OP: the input dimension to reduce along must be in range [-%i, %i), but got %i instead !",
inputShape->at(0)[0], inputShape->at(0)[0], item);
return SHAPELIST(CONSTANT(inputShape->at(0)));
}
DECLARE_TYPES(reduce_sum_bp) {
getOpDescriptor()->setAllowedInputTypes(sd::DataType::ANY)->setAllowedOutputTypes({ALL_FLOATS});
}
} // namespace ops
} // namespace sd
#endif