* initial commit Signed-off-by: raver119@gmail.com <raver119@gmail.com> * another initial commit Signed-off-by: raver119@gmail.com <raver119@gmail.com> * another initial commit Signed-off-by: raver119@gmail.com <raver119@gmail.com> * one more initial commit Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next step Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next step Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next step Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next step Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Refactored buffer() and shapeInfo() methods usage with NDArray class. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt Graph class methods to use const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt choose op to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt where op shape method to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt lstsq op to use constant empty shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt matrix_diag_part op shape routine to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt determinant ops to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt mean_pairwssqerr_loss ops to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt ops shape methods. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt shape methods for loss ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt log_loss op shape method. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt shape methods for ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt dilation2d ops shape methods. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted deconv2d ops shape methods. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted dynamicRNN op shape method. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted shape methods for ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted shape methods for lstm layer ops. Signed-off-by: shugeo <sgazeos@gmail.com> * few updates Signed-off-by: raver119@gmail.com <raver119@gmail.com> * first cuda tweak Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Adopt constant shapes for sconv2d ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt constant shapes for gru ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt constant shapes with shape methods for segment ops and so on. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted constant shapes with unsorted_segment_* ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted constant shapes with gamma op shape method. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted shape methods of reduce_stddev ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted shape methods for reduce_* ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt shape method for squeeze op. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt strided_slice shape method. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored concat op shape method to adopt constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted shape method for mirror_pad op. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted split op shape method. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted tile ops shape methods. Signed-off-by: shugeo <sgazeos@gmail.com> * Added const cast for mkldnn routines handles. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored logSoftMaxForVector_ routine to conform with proper data and shape pointer casts. Signed-off-by: shugeo <sgazeos@gmail.com> * Cosmetic changes to proper usage of constant pointers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored a couple shape comparators for strides and addBias helpers to proper use data pointers with inplace option. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored depthToSpace helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored histogram helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored im2col helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored gather and gatherND helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage on percentile helper. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed gather shape with helpers and range buffer usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with space to depth helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage and constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with LUP decomposition> Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored onehot_ helper. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored pad and prefix to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactoed softmax helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed space to batch helpers to use buffers properly. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed stack and split helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with sparse to dense helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with mindistance_ helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with tile helper. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed constant shape usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed constant shape usage with legacy pairwise bool ops. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored a couple of methods to adopt constant shape usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed broadcasting with constant shape." Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const usage with inplace reverse and constant shapes with legacy reduction. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored legacy ops with const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored sort to adopt constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected sort for constant shape usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed constant shape usage with special methods. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored Context to conform with constant shape usage. Signed-off-by: shugeo <sgazeos@gmail.com> * CUDA broadcasting headers Signed-off-by: raver119@gmail.com <raver119@gmail.com> * pairwise/indexreduce/random headers Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Refactored native ops to adopt constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * legacy reduce3/scalar headers Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Corrected pullRow signature and tests. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected routines to proper use of constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored tests to use constant shapes properly. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored legacy ops tests to use constant shapes properly. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored buffer usage with NDArray tests. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed native ops tests. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed special concat routine. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with test. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed buffer usage with a test. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored TAD.h and tests. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored calcStrides* routines to use constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed miscelaneous errors with constant shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * NativeOps const changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Corrected definitions for declared functions. Signed-off-by: shugeo <sgazeos@gmail.com> * NativeOps const changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * few more const changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Fixed const shapes with shape routines. Signed-off-by: shugeo <sgazeos@gmail.com> * few more const changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Fixed shape method for broadcastable case. Signed-off-by: shugeo <sgazeos@gmail.com> * few more const changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * xw_plus_b BP shape fn restored Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Fixed signatures with broadcasting. Signed-off-by: shugeo <sgazeos@gmail.com> * Repaired backprops shape methods for a set of operations. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored broadcast bool for cuda. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored methods for 3 args with const qualifier. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed a couple of kernel signatures for broadcasting. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed kernels signatures for const buffers and shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored pairwise methods to persistent buffers and shapes usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt const to buffers and shapes with kernels. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopt const to buffers and shapes with scalar kernels. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored indexreduce kernels signatures to use const buffers and shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored pairwise kernels to adopt cons shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored pairwise bool kernels to adopt cons shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored random special ops to conform with const shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored native ops to conform with const shapes and buffers under cuda platform. Signed-off-by: shugeo <sgazeos@gmail.com> * Cosmetical changes only. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const shapes and buffers error. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected start pos routine. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored methods to conform with const shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored helpers to use proper methods instead. Signed-off-by: shugeo <sgazeos@gmail.com> * bunch of changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next bunch of changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * next bunch of changes Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Fixed execScalar declaration. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed execScalar declaration. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected const shape cases with sort and so on. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const shapes for sort. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored kernel declarations to adopt const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed kernels declarations to adopt const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected kernel declarations to adopt const shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed kernels declarations to adopt const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed segment helpers kernels declarations and so on to adopt const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const shape usage with segment and solve helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed kernel declaration with adjustWeight helper. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed cuda implementations for constant shape helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted const shape usage with kernels. Signed-off-by: shugeo <sgazeos@gmail.com> * Adopted top_k kernels to use const shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Corrected kernels declarations to adopt const shapes with helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored NDArray definitions to adopt const shapes and buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const shapes with image suppression helpers. Signed-off-by: shugeo <sgazeos@gmail.com> * Slight improvement with buffers. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored buffer usage. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored buffer usage with tests. Signed-off-by: shugeo <sgazeos@gmail.com> * Fixed const shape usage with definitions. Signed-off-by: shugeo <sgazeos@gmail.com> * minor updates on cpu side Signed-off-by: raver119@gmail.com <raver119@gmail.com> * Refactored const shape usage with ConstantDescritor and native ops with cuda platform. Signed-off-by: shugeo <sgazeos@gmail.com> * Refactored tear and tile kernels to adopt with const shapes. Signed-off-by: shugeo <sgazeos@gmail.com> * softmax_loop fix Signed-off-by: raver119 <raver119@gmail.com> * update missing signature Signed-off-by: raver119@gmail.com <raver119@gmail.com> * softmax again Signed-off-by: raver119@gmail.com <raver119@gmail.com> * few more missing consts Signed-off-by: raver119 <raver119@gmail.com> * new methods updated Signed-off-by: raver119@gmail.com <raver119@gmail.com> Co-authored-by: shugeo <sgazeos@gmail.com>
362 lines
15 KiB
Plaintext
362 lines
15 KiB
Plaintext
/*******************************************************************************
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* Copyright (c) 2019 Konduit K.K.
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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 sgazeos@gmail.com
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//
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#include <ops/declarable/helpers/random.h>
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//#include <NativeOps.h>
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#include <vector>
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#include <memory>
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#include <graph/Context.h>
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#include <helpers/RandomLauncher.h>
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#include <helpers/ShapeUtils.h>
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#include <array/NDArrayFactory.h>
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#include <exceptions/cuda_exception.h>
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#include <helpers/ConstantTadHelper.h>
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#include <helpers/PointersManager.h>
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namespace sd {
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namespace ops {
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namespace helpers {
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/*
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* fillGammaKernel - fill up output with gamma distributed values
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*
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* uList - uniformly distributed values set
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* uLength - length of uList
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* alpha - alpha param
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* beta - beta param
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* output - distributed output.
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* */
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template <typename T>
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static __global__ void fillGammaKernel(T* uList, Nd4jLong uLength, T* alpha, const Nd4jLong* alphaShape,
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T* beta, const Nd4jLong* betaShape, T* output, const Nd4jLong* outputShape) {
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// fill up
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__shared__ Nd4jLong aLength;
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if (threadIdx.x == 0) {
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aLength = shape::length(alphaShape);
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}
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__syncthreads();
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for (auto k = blockIdx.x; k < (int)uLength; k += gridDim.x) {
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auto pos = k * aLength;
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auto u = uList[k]; // this is a vector
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for (auto e = threadIdx.x; e < (int)aLength; e += blockDim.x) {
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auto aIndex = shape::getIndexOffset(e, alphaShape);
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auto bIndex = betaShape?shape::getIndexOffset(e, betaShape):-1LL;
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auto betaV = T(beta != nullptr ? beta[bIndex] * u : u);
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auto zIndex = shape::getIndexOffset(e + pos, outputShape);
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output[zIndex] = math::nd4j_igamma<T, T, T>(alpha[aIndex], betaV);
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}
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}
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}
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template <typename T>
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static void fillRandomGamma_(LaunchContext* context, graph::RandomGenerator& rng, NDArray* alpha, NDArray* beta, NDArray* output) {
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// To fill up output need to broadcast alpha and beta to the same shape and in
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const Nd4jLong* broadcasted = nullptr;
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if (beta != nullptr)
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ShapeUtils::evalBroadcastShapeInfo(*alpha, *beta, true, broadcasted, context->getWorkspace());
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else
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broadcasted = alpha->shapeInfo();
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auto step = shape::length(broadcasted);
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auto shift = output->lengthOf() / step;
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auto copyAlpha = alpha;
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auto copyBeta = beta;
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if (beta != nullptr) {
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NDArray alphaBroadcasted(broadcasted, alpha->dataType(), true, context);
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NDArray betaBroadcasted(broadcasted, beta->dataType(), true, context);
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copyAlpha = new NDArray(alphaBroadcasted.applyTrueBroadcast(BroadcastOpsTuple::Assign(), *alpha));
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copyBeta = new NDArray(betaBroadcasted.applyTrueBroadcast(BroadcastOpsTuple::Assign(), *beta));
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copyAlpha->tickWriteDevice(); copyBeta->tickWriteDevice();
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}
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auto stream = context->getCudaStream();
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NDArray uniform = NDArrayFactory::create<T>('c', {shift}, context);
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uniform.syncToDevice();
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// fill up uniform with given length
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RandomLauncher::fillUniform(context, rng, &uniform, 0., 1.);
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fillGammaKernel<T><<<128, 128, 256, *stream>>>(uniform.dataBuffer()->specialAsT<T>(), shift,
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copyAlpha->dataBuffer()->specialAsT<T>(), copyAlpha->specialShapeInfo(),
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beta?copyBeta->dataBuffer()->specialAsT<T>():(T*)nullptr,
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beta?copyBeta->specialShapeInfo():(Nd4jLong*)nullptr,
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output->dataBuffer()->specialAsT<T>(), output->specialShapeInfo());
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if (beta != nullptr) {
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delete copyAlpha;
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delete copyBeta;
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//delete broadcasted;
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}
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}
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void fillRandomGamma(LaunchContext* context, graph::RandomGenerator& rng, NDArray* alpha, NDArray* beta, NDArray* output) {
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if (beta)
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NDArray::prepareSpecialUse({output}, {alpha, beta});
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else
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NDArray::prepareSpecialUse({output}, {alpha});
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BUILD_SINGLE_SELECTOR(output->dataType(), fillRandomGamma_, (context, rng, alpha, beta, output), FLOAT_NATIVE);
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if (beta)
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NDArray::registerSpecialUse({output}, {alpha, beta});
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else
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NDArray::prepareSpecialUse({output}, {alpha});
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}
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BUILD_SINGLE_TEMPLATE(template void fillRandomGamma_, (LaunchContext* context, graph::RandomGenerator& rng, NDArray* alpha, NDArray* beta, NDArray* output), FLOAT_NATIVE);
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/*
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* algorithm Poisson generator based upon the inversion by sequential search
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*
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init:
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Let x ← 0, p ← e−λ, s ← p.
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using uniformly random sequence U (u in U) distributed at [0, 1].
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while u > s do:
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x ← x + 1.
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p ← p * λ / x.
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s ← s + p.
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return x.
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* */
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template <typename T>
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static __global__ void fillPoissonKernel(T* uList, Nd4jLong uLength, T* lambda, const Nd4jLong* lambdaShape,
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T* output, const Nd4jLong* outputShape) {
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__shared__ Nd4jLong step;
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if (threadIdx.x == 0) {
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step = shape::length(lambdaShape);
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}
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__syncthreads();
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for (auto k = blockIdx.x; k < (int)uLength; k += gridDim.x) {
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auto pos = k * step;
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auto u = uList[k];
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for (auto e = threadIdx.x; e < step; e += blockDim.x) {
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auto p = math::nd4j_exp<T,T>(-lambda[e]);
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auto s = p;
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auto x = T(0.f);
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auto lIndex = shape::getIndexOffset(e, lambdaShape);
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auto zIndex = shape::getIndexOffset(e + pos, outputShape);
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while (u > s) {
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x += T(1.);
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p *= lambda[lIndex] / x;
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s += p;
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}
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output[zIndex] = x;
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}
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}
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}
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template <typename T>
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static void fillRandomPoisson_(LaunchContext* context, graph::RandomGenerator& rng, NDArray* lambda, NDArray* output) {
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auto shift = output->lengthOf() / lambda->lengthOf();
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NDArray uniform('c', {shift}, output->dataType());
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auto stream = context->getCudaStream();
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// fill up uniform with given length
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RandomLauncher::fillUniform(context, rng, &uniform, 0., 1.);
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fillPoissonKernel<T><<<128, 256, 128, *stream>>>(uniform.dataBuffer()->specialAsT<T>(), uniform.lengthOf(),
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lambda->dataBuffer()->specialAsT<T>(), lambda->specialShapeInfo(),
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output->dataBuffer()->specialAsT<T>(), output->specialShapeInfo());
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}
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void fillRandomPoisson(LaunchContext* context, graph::RandomGenerator& rng, NDArray* lambda, NDArray* output) {
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NDArray::prepareSpecialUse({output}, {lambda});
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BUILD_SINGLE_SELECTOR(output->dataType(), fillRandomPoisson_, (context, rng, lambda, output), FLOAT_NATIVE);
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NDArray::registerSpecialUse({output}, {lambda});
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}
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BUILD_SINGLE_TEMPLATE(template void fillRandomPoisson_, (LaunchContext* context, graph::RandomGenerator& rng, NDArray* lambda, NDArray* output), FLOAT_NATIVE);
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template <typename T>
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static __global__ void fillUniformKernel(graph::RandomGenerator* devRng, T from, T to, T* output, const Nd4jLong* outputShape) {
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auto start = blockIdx.x * blockDim.x + threadIdx.x;
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auto step = blockDim.x * gridDim.x;
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__shared__ Nd4jLong outputLen;
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if (0 == threadIdx.x) {
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outputLen = shape::length(outputShape);
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}
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__syncthreads();
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for (auto i = start; i < outputLen; i += step) {
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auto zIndex = shape::getIndexOffset(i, outputShape);
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output[zIndex] = devRng->relativeT<T>(i, from, to);
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}
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}
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template <typename T>
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static void fillRandomUniform_(LaunchContext* context, graph::RandomGenerator& rng, NDArray* min, NDArray* max, NDArray* output) {
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T minVal = T(0);
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T maxVal = DataTypeUtils::infOrMax<T>();
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if (min)
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||
minVal = min->t<T>(0);
|
||
if (max)
|
||
maxVal = max->t<T>(0);
|
||
|
||
if (output->isR())
|
||
RandomLauncher::fillUniform(context, rng, output, minVal, maxVal);
|
||
else {
|
||
auto stream = context->getCudaStream();
|
||
graph::RandomGenerator *devRng;
|
||
auto err = cudaMalloc(&devRng, sizeof(graph::RandomGenerator));
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomUniform_: Cannot allocate device memory for random generator due error", err);
|
||
}
|
||
|
||
err = cudaMemcpy(devRng, &rng, sizeof(graph::RandomGenerator), cudaMemcpyHostToDevice);
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomUniform_: Cannot copy random generator to device", err);
|
||
}
|
||
auto outputBuf = output->dataBuffer()->specialAsT<T>();
|
||
auto outputShape = output->specialShapeInfo();
|
||
fillUniformKernel<T><<<128, 128, 128, *stream>>>(devRng, minVal, maxVal, outputBuf, outputShape);
|
||
|
||
err = cudaStreamSynchronize(*stream);
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomUniform_: Cannot successfully finish kernel call", err);
|
||
}
|
||
|
||
err = cudaFree(devRng);
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomUniform_: Cannot deallocate device memory for random generator", err);
|
||
}
|
||
}
|
||
}
|
||
|
||
void fillRandomUniform(LaunchContext* context, graph::RandomGenerator& rng, NDArray* min, NDArray* max, NDArray* output) {
|
||
BUILD_SINGLE_SELECTOR(output->dataType(), fillRandomUniform_, (context, rng, min, max, output), NUMERIC_TYPES);
|
||
}
|
||
|
||
///////////////////////////////////////////////////////////////////
|
||
// used https://en.wikipedia.org/wiki/Categorical_distribution
|
||
// methods: gumbel trick + softmax + argmax
|
||
template<typename X, typename Z>
|
||
__global__ static void fillMultiNomialCuda_(graph::RandomGenerator* devRng, const void* vx, const Nd4jLong* xShapeInfo,
|
||
void* vz, const Nd4jLong* zShapeInfo, const Nd4jLong batchValue,
|
||
const Nd4jLong numOfSamples, const Nd4jLong numOfClassX,
|
||
const Nd4jLong dimA, const X minVal, const X maxVal) {
|
||
|
||
|
||
const X* x = reinterpret_cast<const X*>(vx);
|
||
Z* z = reinterpret_cast<Z*>(vz);
|
||
|
||
__shared__ Nd4jLong xDimAstride, zDimAstride, xDimCstride, zDimCstride, dimC;
|
||
|
||
if (0 == threadIdx.x) {
|
||
dimC = (0 == dimA) ? 1 : 0;
|
||
zDimAstride = shape::stride(zShapeInfo)[dimA];
|
||
xDimAstride = shape::stride(xShapeInfo)[dimA];
|
||
zDimCstride = shape::stride(zShapeInfo)[dimC];
|
||
xDimCstride = shape::stride(xShapeInfo)[dimC];
|
||
}
|
||
__syncthreads();
|
||
|
||
const auto tid = blockIdx.x * blockDim.x + threadIdx.x;
|
||
|
||
for (Nd4jLong index = tid; index < batchValue*numOfSamples; index += gridDim.x * blockDim.x) {
|
||
|
||
Nd4jLong nBatchIndex = index / numOfSamples;
|
||
Nd4jLong nSampleIndexInBatch = index - (nBatchIndex * numOfSamples);
|
||
|
||
const X* xTad = x + (nBatchIndex * xDimCstride);
|
||
Z* zTad = z + (nBatchIndex * zDimCstride);
|
||
Z& arg = zTad[nSampleIndexInBatch * zDimAstride];
|
||
|
||
X Max = -minVal;
|
||
Nd4jLong nSamplesPerBatch = nBatchIndex * numOfClassX * numOfSamples;
|
||
Nd4jLong nClassPerSamples = nSampleIndexInBatch * numOfClassX;
|
||
|
||
for (Nd4jLong nClass = 0; nClass < numOfClassX; nClass++) {
|
||
Nd4jLong nIndex = nSamplesPerBatch + nClassPerSamples + nClass;
|
||
X tValue = (xTad[nClass * xDimAstride] - sd::math::nd4j_log<X, X>(-sd::math::nd4j_log<X, X>(devRng->relativeT<X>(nIndex, minVal, maxVal))));
|
||
if (tValue > Max) {
|
||
Max = tValue;
|
||
arg = nClass;
|
||
}
|
||
}
|
||
}
|
||
}
|
||
|
||
//////////////////////////////////////////////////////////////////////////
|
||
template<typename X, typename Z>
|
||
__host__ static void fillMultiNomialCudaLauncher(
|
||
const int blocksPerGrid, const int threadsPerBlock, const cudaStream_t* stream,
|
||
graph::RandomGenerator* devRng, const void* vx, const Nd4jLong* xShapeInfo,
|
||
void* vz, const Nd4jLong* zShapeInfo,
|
||
const Nd4jLong batchValue, const Nd4jLong numOfSamples,
|
||
const Nd4jLong numOfClassX, const Nd4jLong dimA){
|
||
|
||
const X minVal = DataTypeUtils::min<X>();
|
||
const X maxVal = 1.0;
|
||
|
||
fillMultiNomialCuda_<X, Z> <<< blocksPerGrid, threadsPerBlock, 256, * stream >>> (
|
||
devRng, vx, xShapeInfo, vz, zShapeInfo, batchValue,
|
||
numOfSamples, numOfClassX, dimA, minVal, maxVal);
|
||
}
|
||
|
||
///////////////////////////////////////////////////////////////////
|
||
void fillRandomMultiNomial(LaunchContext* context, graph::RandomGenerator& rng, NDArray& input, NDArray& output, const Nd4jLong numOfSamples, const int dimC) {
|
||
|
||
Nd4jLong dimA = (0 == dimC) ? 1 : 0;
|
||
|
||
const Nd4jLong batchValue = output.sizeAt(dimC);
|
||
const Nd4jLong numOfClassX = input.sizeAt(dimA);
|
||
|
||
const int threadsPerBlock = MAX_NUM_THREADS / 2;
|
||
const int blocksPerGrid = (batchValue * numOfSamples + threadsPerBlock - 1) / threadsPerBlock;
|
||
|
||
PointersManager manager(context, "fillMultinomial");
|
||
graph::RandomGenerator *devRng;
|
||
|
||
auto err = cudaMalloc(&devRng, sizeof(graph::RandomGenerator));
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomMultiNomial: Cannot allocate device memory for random generator due error", err);
|
||
}
|
||
err = cudaStreamSynchronize(*context->getCudaStream());
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomMultiNomial: Cannot synchronize stream for random generator due error", err);
|
||
}
|
||
err = cudaMemcpyAsync(devRng, &rng, sizeof(graph::RandomGenerator), cudaMemcpyHostToDevice, *context->getCudaStream());
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomMultiNomial: Cannot copy random generator to device", err);
|
||
}
|
||
|
||
NDArray::prepareSpecialUse({ &output }, { &input });
|
||
BUILD_DOUBLE_SELECTOR(input.dataType(), output.dataType(), fillMultiNomialCudaLauncher,
|
||
(blocksPerGrid, threadsPerBlock, context->getCudaStream(), devRng, input.specialBuffer(),
|
||
input.specialShapeInfo(), output.specialBuffer(),
|
||
output.specialShapeInfo(), batchValue, numOfSamples,
|
||
numOfClassX, dimA), FLOAT_TYPES, INDEXING_TYPES);
|
||
NDArray::registerSpecialUse({ &output }, { &input });
|
||
manager.synchronize();
|
||
|
||
err = cudaFree(devRng);
|
||
if (err != 0) {
|
||
cuda_exception::build("fillRandomMultiNomial: Cannot deallocate device memory for random generator", err);
|
||
}
|
||
rng.rewindH(output.lengthOf() * numOfClassX);
|
||
}
|
||
|
||
}
|
||
}
|
||
} |