385 lines
22 KiB
Plaintext
385 lines
22 KiB
Plaintext
/*******************************************************************************
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* Copyright (c) 2015-2018 Skymind, Inc.
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*
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* This program and the accompanying materials are made available under the
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* terms of the Apache License, Version 2.0 which is available at
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* https://www.apache.org/licenses/LICENSE-2.0.
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
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* WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
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* License for the specific language governing permissions and limitations
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* under the License.
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*
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* SPDX-License-Identifier: Apache-2.0
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******************************************************************************/
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//
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// @author GS <sgazeos@gmail.com>
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//
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#include <ops/declarable/helpers/segment.h>
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#include <ops/declarable/helpers/segment_common.h>
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#include <NDArrayFactory.h>
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#include <helpers/ShapeUtils.h>
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#include <helpers/TAD.h>
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#include <exceptions/cuda_exception.h>
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#include <PointersManager.h>
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#include <ConstantTadHelper.h>
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namespace nd4j {
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namespace ops {
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namespace helpers {
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// -------------------------------------------------------------------------------------------------------------- //
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// Segment Prod ops linear kernels
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static __global__ void segmentProdLinearKernel(void* input, Nd4jLong* inputShape, int* starts, int* lengths,
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Nd4jLong numOfClasses, void* output, Nd4jLong* outputShape) {
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__shared__ Nd4jLong xLen, zLen;
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__shared__ T* x;
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__shared__ T* z;
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if (threadIdx.x == 0) {
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x = reinterpret_cast<T*>(input);
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z = reinterpret_cast<T*>(output);
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xLen = shape::length(inputShape);
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zLen = shape::length(outputShape);
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}
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__syncthreads();
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for(auto segment = blockIdx.x; segment < numOfClasses; segment += gridDim.x) {
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auto zIndex = shape::getIndexOffset(segment, outputShape);
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auto start = starts[segment];
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auto finish = start + lengths[segment];
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if (lengths[segment] == 0) {
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continue;
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}
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for (auto e = start + threadIdx.x; e < finish; e += blockDim.x) {
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auto xIndex = shape::getIndexOffset(e, inputShape);
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nd4j::math::atomics::nd4j_atomicMul(&z[segment], x[xIndex]);
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}
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static __global__ void unsortedSegmentProdLinearKernel(T* input, Nd4jLong* inputShape, I* indices, Nd4jLong* indicesShape, int* starts, int* lengths, Nd4jLong numOfClasses, T* output, Nd4jLong* outputShape) {
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__shared__ Nd4jLong xLen, zLen;
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if (threadIdx.x == 0) {
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xLen = shape::length(inputShape);
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zLen = shape::length(outputShape);
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}
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__syncthreads();
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auto start = threadIdx.x + blockIdx.x * blockDim.x;
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auto step = blockDim.x * gridDim.x;
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for (auto idx = start; idx < xLen; idx += step) {
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auto xIndex = shape::getIndexOffset(idx, inputShape);
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auto yIndex = shape::getIndexOffset(idx, indicesShape);
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auto segment = indices[yIndex];
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auto zIndex = shape::getIndexOffset(segment, outputShape);
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if (lengths[segment] == 0) {
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continue;
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}
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nd4j::math::atomics::nd4j_atomicMul(&output[zIndex], input[xIndex]);
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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// SegmentProd kernel
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template <typename T, typename I>
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static __global__ void segmentProdTadKernel(void* inputBuf, Nd4jLong* inputShape, Nd4jLong* inputTads,
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Nd4jLong* inputTadOffsets, I* indices, int* starts, int* lengths, Nd4jLong numOfClasses, void* outputBuf,
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Nd4jLong* outputShape, Nd4jLong* outputTads, Nd4jLong* outputTadOffsets) {
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__shared__ Nd4jLong len, total;
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if (threadIdx.x == 0) {
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total = shape::sizeAt(inputShape, 0);
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len = shape::length(inputTads);
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}
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__syncthreads();
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for (auto idx = blockIdx.x; idx < total; idx += gridDim.x) {
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auto x = reinterpret_cast<T *>(inputBuf) + inputTadOffsets[idx];
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auto segment = indices[idx]; // / threadsPerSegment;
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auto z = reinterpret_cast<T *>(outputBuf) + outputTadOffsets[segment];
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auto start = starts[segment];
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auto finish = start + lengths[segment];
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if (lengths[segment] == 0) continue;
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for (auto e = threadIdx.x; e < len; e += blockDim.x) {
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auto xIndex = shape::getIndexOffset(e, inputTads);
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auto zIndex = shape::getIndexOffset(e, outputTads);
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nd4j::math::atomics::nd4j_atomicMul(&z[zIndex], x[xIndex]);
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}
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static void segmentProdFunctor_(nd4j::LaunchContext* context, NDArray* input, NDArray* indices, NDArray* output) {
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auto stream = context->getCudaStream();
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Nd4jLong numClasses = indices->e<Nd4jLong>(indices->lengthOf() - 1) + 1;
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NDArray classesRangesLens = NDArrayFactory::create<int>('c', {numClasses});
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NDArray classesRangesBegs = NDArrayFactory::create<int>('c', {numClasses});
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output->assign(1);
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classesRangesBegs.assign(indices->lengthOf());
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classesRangesLens.assign(0);
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dim3 dims(numClasses, indices->lengthOf(), numClasses * 32 + 32);
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fillUpSegments(indices, numClasses, classesRangesBegs, classesRangesLens);
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int* begins = reinterpret_cast<int*>(classesRangesBegs.specialBuffer());
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int* lengths = reinterpret_cast<int*>(classesRangesLens.specialBuffer());
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if (input->isVector()) {
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segmentProdLinearKernel<T,I><<<128, 256, 128, *stream>>>(input->specialBuffer(), input->specialShapeInfo(), begins, lengths, numClasses, output->specialBuffer(), output->specialShapeInfo());
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}
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else {
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std::vector<int> dimensions = ShapeUtils::evalDimsToExclude(input->rankOf(), {0});
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auto packX = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(input->getShapeInfo(), dimensions);
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auto packZ = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(output->getShapeInfo(), dimensions);
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Nd4jLong* inputTads = packX.specialShapeInfo();
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Nd4jLong* inputTadOffsets = packX.specialOffsets();
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Nd4jLong* outputTads = packZ.specialShapeInfo();
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Nd4jLong* outputTadOffsets = packZ.specialOffsets();
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segmentProdTadKernel<T,I><<<128, 512, 2048, *stream>>>(input->specialBuffer(), input->specialShapeInfo(), inputTads, inputTadOffsets, reinterpret_cast<I*>(indices->specialBuffer()), begins, lengths, numClasses, output->specialBuffer(), output->specialShapeInfo(), outputTads, outputTadOffsets);
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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void segmentProdFunctor(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, NDArray* output) {
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NDArray::prepareSpecialUse({output}, {input, indices});
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BUILD_DOUBLE_SELECTOR(output->dataType(), indices->dataType(), segmentProdFunctor_, (context, input, indices, output), NUMERIC_TYPES, INDEXING_TYPES);
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NDArray::registerSpecialUse({output}, {input, indices});
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static void unsortedSegmentProdFunctor_(nd4j::LaunchContext* context, NDArray* input, NDArray* indices, Nd4jLong numOfClasses, NDArray* output) {
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auto stream = context->getCudaStream();
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// NDArray classes = NDArrayFactory::create<int>('c', {numOfClasses, 2});
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NDArray classesRangesBegs = NDArrayFactory::create<int>('c', {numOfClasses});
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NDArray classesRangesLens = NDArrayFactory::create<int>('c', {numOfClasses});
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// NDArray row = NDArrayFactory::create<int>('c', {1, 2}, {(int)indices->lengthOf(), (int)0});
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// classes.applyTrueBroadcast(nd4j::BroadcastOpsTuple::Assign(), &row, &classes);
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classesRangesBegs.assign(indices->lengthOf());
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classesRangesLens.assign(0);
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dim3 dims(numOfClasses, indices->lengthOf(), numOfClasses * 32 + 32);
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// int* classesBuf = reinterpret_cast<int*>(classes.specialBuffer());
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fillUpSegments(indices, numOfClasses, classesRangesBegs, classesRangesLens);
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int* begins = reinterpret_cast<int*>(classesRangesBegs.specialBuffer());
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int* lengths = reinterpret_cast<int*>(classesRangesLens.specialBuffer());
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output->assign(1);
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if (input->isVector()) {
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unsortedSegmentProdLinearKernel<T,I><<<128, 256, 256, *stream>>>(
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input->dataBuffer()->specialAsT<T>(), input->specialShapeInfo(),
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indices->dataBuffer()->specialAsT<I>(), indices->specialShapeInfo(), begins, lengths, numOfClasses,
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output->dataBuffer()->specialAsT<T>(), output->specialShapeInfo());
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}
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else {
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std::vector<int> dimensions = ShapeUtils::evalDimsToExclude(input->rankOf(), {0});
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auto packX = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(input->getShapeInfo(), dimensions);
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auto packZ = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(output->getShapeInfo(), dimensions);
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Nd4jLong* inputTads = packX.specialShapeInfo();
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Nd4jLong* inputTadOffsets = packX.specialOffsets();
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Nd4jLong* outputTads = packZ.specialShapeInfo();
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Nd4jLong* outputTadOffsets = packZ.specialOffsets();
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dims.x = input->sizeAt(0);
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segmentProdTadKernel<T,I><<<128, 256, 256, *stream>>>(input->specialBuffer(), input->specialShapeInfo(), inputTads, inputTadOffsets, reinterpret_cast<I*>(indices->specialBuffer()), begins, lengths, numOfClasses, output->specialBuffer(), output->specialShapeInfo(), outputTads, outputTadOffsets);
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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void unsortedSegmentProdFunctor(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, Nd4jLong numOfClasses, NDArray* output) {
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NDArray::prepareSpecialUse({output}, {input, indices});
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BUILD_DOUBLE_SELECTOR(input->dataType(), indices->dataType(), unsortedSegmentProdFunctor_, (context, input, indices, numOfClasses, output),
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NUMERIC_TYPES, INDEXING_TYPES);
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NDArray::registerSpecialUse({output}, {input, indices});
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static __global__ void segmentProdBPLinearKernel(void* inputBuf, Nd4jLong* inputShape, void* forwardOutput,
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Nd4jLong* forwardShape, void* eps, Nd4jLong* epsShape, void* indicesBuf, Nd4jLong* indicesShape,
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void* outputBuf, Nd4jLong* outputShape) {
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__shared__ T* x;
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__shared__ T* gradIn;
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__shared__ T* gradOut;
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__shared__ I* y;
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__shared__ T* z;
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__shared__ Nd4jLong xLen, gradLen;
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if (threadIdx.x == 0) {
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xLen = shape::length(inputShape);
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x = reinterpret_cast<T*>(inputBuf);
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y = reinterpret_cast<I*>(indicesBuf);
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z = reinterpret_cast<T*>(outputBuf);
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gradIn = reinterpret_cast<T*>(forwardOutput);
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gradOut = reinterpret_cast<T*>(eps);
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gradLen = shape::length(epsShape);
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}
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__syncthreads();
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auto start = blockIdx.x * blockDim.x + threadIdx.x;
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auto step = gridDim.x * blockDim.x;
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for (auto e = start; e < xLen; e += step) {
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auto zOffset = shape::getIndexOffset(e, outputShape);
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auto xOffset = shape::getIndexOffset(e, inputShape);
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auto yOffset = shape::getIndexOffset(e, indicesShape);
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auto classIndex = y[yOffset];
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auto gradOffsetI = shape::getIndexOffset(classIndex, forwardShape);
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auto gradOffsetO = shape::getIndexOffset(classIndex, epsShape);
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z[zOffset] = gradOut[gradOffsetO] * gradIn[gradOffsetI] / x[xOffset];
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static __global__ void segmentProdBPTadKernel(void* inputBuf, Nd4jLong* inputShape, void* forwardOutput,
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Nd4jLong* forwardShape, void* eps, Nd4jLong* epsShape, void* indicesBuf, Nd4jLong* indicesShape,
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void* outputBuf, Nd4jLong* outputShape,Nd4jLong* inputTad,
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Nd4jLong* inputOffsets, Nd4jLong* gradInTad, Nd4jLong* gradInOffsets,
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Nd4jLong* gradOutTad, Nd4jLong* gradOutOffsets, Nd4jLong* outTad,
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Nd4jLong* outOffsets) {
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__shared__ T* x;
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__shared__ T* gradIn;
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__shared__ T* gradOut;
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__shared__ I* y;
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__shared__ T* z;
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__shared__ Nd4jLong xLen, yLen, gradLen, currentLen;
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if (threadIdx.x == 0) {
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xLen = shape::length(inputShape);
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x = reinterpret_cast<T*>(inputBuf);
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y = reinterpret_cast<I*>(indicesBuf);
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z = reinterpret_cast<T*>(outputBuf);
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yLen = shape::length(indicesShape);
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gradOut = reinterpret_cast<T*>(eps);
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gradIn = reinterpret_cast<T*>(forwardOutput);
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gradLen = shape::length(epsShape);
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currentLen = shape::length(outTad);
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}
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__syncthreads();
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for (auto i = blockIdx.x; i < yLen; i += gridDim.x) {
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auto yIndex = shape::getIndexOffset(i, indicesShape);
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auto segment = y[yIndex];
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T* current = x + inputOffsets[i];
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T* currentOut = z + outOffsets[i];
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T* in = gradIn + gradInOffsets[segment];
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T* outGrad = gradOut + gradOutOffsets[segment];
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for (auto e = threadIdx.x; e < currentLen; e += blockDim.x) {
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currentOut[e] = outGrad[e] * in[e] / current[e];
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}
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}
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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int segmentProdFunctorBP_(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, NDArray* gradOut, NDArray* output) {
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auto stream = context->getCudaStream();
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NDArray tempRes(gradOut->ordering(), gradOut->getShapeAsVector(), DataTypeUtils::fromT<T>(), context);//->shapeInfo(), context);
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segmentProdFunctor_<T, I>(context, input, indices, &tempRes);
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NDArray::prepareSpecialUse({output}, {input, indices, gradOut});
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if (input->isVector()) {
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Nd4jLong loopSize = input->lengthOf();
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auto numOfClasses = gradOut->lengthOf(); //indices->e<Nd4jLong>(loop_size - 1);
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segmentProdBPLinearKernel<T,I><<<gradOut->lengthOf(), loopSize, 256, *stream>>>(input->specialBuffer(), input->specialShapeInfo(),
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tempRes.specialBuffer(), tempRes.specialShapeInfo(), gradOut->specialBuffer(), gradOut->specialShapeInfo(),
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indices->specialBuffer(), indices->specialShapeInfo(), output->specialBuffer(), output->specialShapeInfo());
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}
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else {
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std::vector<int> dimensions = ShapeUtils::evalDimsToExclude(input->rankOf(), {0});
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auto packX = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(input->getShapeInfo(), dimensions);
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auto packZ = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(output->getShapeInfo(), dimensions);
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auto packGradIn = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(tempRes.getShapeInfo(), dimensions);
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auto packGradOut = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(gradOut->getShapeInfo(), dimensions);
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Nd4jLong* inputTads = packX.specialShapeInfo();
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Nd4jLong* inputTadOffsets = packX.specialOffsets();
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Nd4jLong* outputTads = packZ.specialShapeInfo();
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Nd4jLong* outputTadOffsets = packZ.specialOffsets();
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Nd4jLong* gradInTads = packGradIn.specialShapeInfo();
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Nd4jLong* gradInTadOffsets = packGradIn.specialOffsets();
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Nd4jLong* gradOutTads = packGradOut.specialShapeInfo();
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Nd4jLong* gradOutTadOffsets = packGradOut.specialOffsets();
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segmentProdBPTadKernel<T,I><<<gradOut->lengthOf(), input->lengthOf(), 256, *stream>>>(input->specialBuffer(), input->specialShapeInfo(),
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tempRes.specialBuffer(), tempRes.specialShapeInfo(), gradOut->specialBuffer(), gradOut->specialShapeInfo(),
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indices->specialBuffer(), indices->specialShapeInfo(), output->specialBuffer(), output->specialShapeInfo(),
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inputTads, inputTadOffsets, gradInTads, gradInTadOffsets, gradOutTads, gradOutTadOffsets,
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outputTads, outputTadOffsets);
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}
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NDArray::registerSpecialUse({output}, {input, indices, gradOut});
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return Status::OK();
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}
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// -------------------------------------------------------------------------------------------------------------- //
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int segmentProdFunctorBP(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, NDArray* gradOut, NDArray* output) {
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NDArray::prepareSpecialUse({output}, {input, indices, gradOut});
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BUILD_DOUBLE_SELECTOR(output->dataType(), indices->dataType(), return segmentProdFunctorBP_, (context, input,
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indices, gradOut, output), FLOAT_TYPES, INDEXING_TYPES);
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NDArray::registerSpecialUse({output}, {input, indices, gradOut});
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}
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// -------------------------------------------------------------------------------------------------------------- //
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template <typename T, typename I>
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static int unsortedSegmentProdFunctorBP_(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, NDArray* gradOut, Nd4jLong numOfClasses, NDArray* output) {
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auto stream = context->getCudaStream();
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NDArray tempRes(gradOut->ordering(), gradOut->getShapeAsVector(), DataTypeUtils::fromT<T>(), context);//->shapeInfo(), context);
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unsortedSegmentProdFunctor_<T, I>(context, input, indices, numOfClasses, &tempRes);
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NDArray::prepareSpecialUse({output}, {input, indices, gradOut});
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if (input->isVector()) {
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Nd4jLong loopSize = input->lengthOf();
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auto numOfClasses = gradOut->lengthOf(); //indices->e<Nd4jLong>(loop_size - 1);
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segmentProdBPLinearKernel<T,I><<<gradOut->lengthOf(), loopSize, 256, *stream>>>(input->specialBuffer(), input->specialShapeInfo(),
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tempRes.specialBuffer(), tempRes.specialShapeInfo(), gradOut->specialBuffer(), gradOut->specialShapeInfo(),
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indices->specialBuffer(), indices->specialShapeInfo(), output->specialBuffer(), output->specialShapeInfo());
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}
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else {
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std::vector<int> dimensions = ShapeUtils::evalDimsToExclude(input->rankOf(), {0});
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auto packX = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(input->getShapeInfo(), dimensions);
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auto packZ = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(output->getShapeInfo(), dimensions);
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auto packGradIn = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(tempRes.getShapeInfo(), dimensions);
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auto packGradOut = nd4j::ConstantTadHelper::getInstance()->tadForDimensions(gradOut->getShapeInfo(), dimensions);
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Nd4jLong* inputTads = packX.specialShapeInfo();
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Nd4jLong* inputTadOffsets = packX.specialOffsets();
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Nd4jLong* outputTads = packZ.specialShapeInfo();
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Nd4jLong* outputTadOffsets = packZ.specialOffsets();
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Nd4jLong* gradInTads = packGradIn.specialShapeInfo();
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Nd4jLong* gradInTadOffsets = packGradIn.specialOffsets();
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Nd4jLong* gradOutTads = packGradOut.specialShapeInfo();
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Nd4jLong* gradOutTadOffsets = packGradOut.specialOffsets();
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segmentProdBPTadKernel<T,I><<<indices->lengthOf(), input->lengthOf(), 256, *stream>>>(input->specialBuffer(), input->specialShapeInfo(),
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tempRes.specialBuffer(), tempRes.specialShapeInfo(), gradOut->specialBuffer(), gradOut->specialShapeInfo(),
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indices->specialBuffer(), indices->specialShapeInfo(), output->specialBuffer(), output->specialShapeInfo(),
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inputTads, inputTadOffsets, gradInTads, gradInTadOffsets, gradOutTads, gradOutTadOffsets,
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outputTads, outputTadOffsets);
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}
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NDArray::registerSpecialUse({output}, {input, indices, gradOut});
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return Status::OK();
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}
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// -------------------------------------------------------------------------------------------------------------- //
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int unsortedSegmentProdFunctorBP(nd4j::LaunchContext* context , NDArray* input, NDArray* indices, NDArray* gradOut, Nd4jLong numOfClasses, NDArray* output) {
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NDArray::prepareSpecialUse({output}, {input, indices, gradOut});
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BUILD_DOUBLE_SELECTOR(output->dataType(), indices->dataType(), return unsortedSegmentProdFunctorBP_, (context, input, indices, gradOut, numOfClasses, output), FLOAT_TYPES, INDEXING_TYPES);
|
|
NDArray::registerSpecialUse({output}, {input, indices, gradOut});
|
|
}
|
|
|
|
// -------------------------------------------------------------------------------------------------------------- //
|
|
|
|
}
|
|
}
|
|
}
|