提交 82091035 编写于 作者: T tensor-tang

follow comments and refine code

上级 0b080a42
/* Copyright (c) 2017 PaddlePaddle Authors. All Rights Reserve.
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. */
#pragma once
#include "paddle/math/MathFunctions.h"
#include "paddle/math/Matrix.h"
namespace paddle {
class MKLPackedGemm {
protected:
real* weightPacked_;
real* weightTPacked_;
size_t weightHeight_;
size_t weightWidth_;
public:
explicit MKLPackedGemm(MatrixPtr weight) {
weightHeight_ = weight->getHeight();
weightWidth_ = weight->getWidth();
weightPacked_ =
cblas_sgemm_alloc(CblasBMatrix, 1, weightWidth_, weightHeight_);
weightTPacked_ =
cblas_sgemm_alloc(CblasBMatrix, 1, weightWidth_, weightHeight_);
cblas_sgemm_pack(CblasRowMajor,
CblasBMatrix,
CblasNoTrans,
1,
weightWidth_,
weightHeight_,
1.0,
weight->getData(),
weightWidth_,
weightPacked_);
cblas_sgemm_pack(CblasRowMajor,
CblasBMatrix,
CblasTrans,
1,
weightWidth_,
weightHeight_,
1.0,
weight->getData(),
weightWidth_,
weightTPacked_);
}
void compute(MatrixPtr batch2, MatrixPtr batch1, bool transW = false) {
if (transW) {
cblas_sgemm_compute(CblasRowMajor,
CblasNoTrans,
CblasPacked,
batch2->getHeight(),
weightWidth_,
weightHeight_,
batch1->getData(),
weightHeight_,
weightTPacked_,
weightWidth_,
1,
batch2->getData(),
weightWidth_);
} else {
cblas_sgemm_compute(CblasRowMajor,
CblasNoTrans,
CblasPacked,
batch2->getHeight(),
weightWidth_,
weightHeight_,
batch1->getData(),
weightHeight_,
weightPacked_,
weightWidth_,
1,
batch2->getData(),
weightWidth_);
}
}
~MKLPackedGemm() {
cblas_sgemm_free(weightPacked_);
cblas_sgemm_free(weightTPacked_);
}
};
} // namespace paddle
...@@ -20,188 +20,21 @@ REGISTER_LAYER(mkl_packed_recurrent, MKLPackedRecurrentLayer); ...@@ -20,188 +20,21 @@ REGISTER_LAYER(mkl_packed_recurrent, MKLPackedRecurrentLayer);
bool MKLPackedRecurrentLayer::init(const LayerMap& layerMap, bool MKLPackedRecurrentLayer::init(const LayerMap& layerMap,
const ParameterMap& parameterMap) { const ParameterMap& parameterMap) {
if (!Layer::init(layerMap, parameterMap)) return false; if (!RecurrentLayer::init(layerMap, parameterMap)) return false;
CHECK_EQ(1U, inputLayers_.size()); packed_weight_.reset(new MKLPackedWeight(weight_->getW()));
CHECK_EQ(1U, parameters_.size()); packed_weight_->pack();
CHECK_EQ(getSize() * getSize(), parameters_[0]->getSize()); if (needGradient_) {
weight_.reset(new Weight(getSize(), getSize(), parameters_[0])); packed_weightT_.reset(new MKLPackedWeight(weight_->getW(), true));
if (biasParameter_.get() != NULL) { packed_weightT_->pack();
bias_.reset(new Weight(1, getSize(), biasParameter_));
} }
reversed_ = config_.reversed();
sgemm_packed_.reset(new MKLPackedGemm(weight_->getW()));
return true; return true;
} }
void MKLPackedRecurrentLayer::resetState() {
CHECK(!reversed_) << "state is not allowed for reversed recurrent layer";
Matrix::resizeOrCreate(
prevOutput_, 1, getSize(), /* trans= */ false, useGpu_);
prevOutput_->zeroMem();
}
void MKLPackedRecurrentLayer::setState(LayerStatePtr state) {
CHECK(state->value.size() == 1) << "one matrix is expected for RNN state";
prevOutput_->copyFrom(*(state->value[0]));
}
LayerStatePtr MKLPackedRecurrentLayer::getState() {
LayerStatePtr res = std::make_shared<LayerState>();
res->value.push_back(prevOutput_->clone(0, 0, useGpu_));
res->value[0]->copyFrom(*prevOutput_);
return res;
}
void MKLPackedRecurrentLayer::forward(PassType passType) {
REGISTER_TIMER_INFO("RecurrentFwTimer", getName().c_str());
Layer::forward(passType);
const Argument& input = getInput(0);
CHECK(input.sequenceStartPositions);
int batchSize = input.getBatchSize();
size_t numSequences = input.getNumSequences();
resetOutput(batchSize, getSize());
CHECK_EQ(getSize(), input.value->getWidth());
const int* starts = input.sequenceStartPositions->getData(false);
CHECK_EQ(starts[numSequences], batchSize);
output_.value->assign(*input.value);
if (bias_) {
output_.value->addBias(*bias_->getW(), 1);
}
if (!FLAGS_rnn_use_batch) {
forwardSequence(batchSize, numSequences, starts);
} else {
forwardBatch(batchSize, numSequences, starts);
}
}
void MKLPackedRecurrentLayer::forwardSequence(int batchSize,
size_t numSequences,
const int* starts) {
REGISTER_TIMER_INFO("RecurrentFwSequence", getName().c_str());
frameOutput_.reserve(batchSize);
for (int i = frameOutput_.size(); i < batchSize; ++i) {
Argument arg;
arg.value = Matrix::create(nullptr,
/* height= */ 1,
getSize(),
/* trans= */ false,
useGpu_);
arg.grad = Matrix::create(nullptr,
/* height= */ 1,
getSize(),
/* trans= */ false,
useGpu_);
frameOutput_.push_back(arg);
}
for (int i = 0; i < batchSize; ++i) {
frameOutput_[i].value->setData(output_.value->getData() + i * getSize());
}
for (size_t i = 0; i < numSequences; ++i) {
forwardOneSequence(starts[i], starts[i + 1] - starts[i]);
}
}
void MKLPackedRecurrentLayer::forwardOneSequence(int start, int length) {
if (!reversed_) {
if (prevOutput_) {
frameOutput_[start].value->mul(*prevOutput_, *weight_->getW(), 1, 1);
}
activation_->forward(frameOutput_[start]).check();
for (int i = 1; i < length; ++i) {
frameOutput_[start + i].value->mul(
*frameOutput_[start + i - 1].value, *weight_->getW(), 1, 1);
activation_->forward(frameOutput_[start + i]).check();
}
if (prevOutput_) {
prevOutput_->assign(*frameOutput_[start + length - 1].value);
}
} else {
activation_->forward(frameOutput_[start + length - 1]).check();
for (int i = length - 2; i >= 0; --i) {
frameOutput_[start + i].value->mul(
*frameOutput_[start + i + 1].value, *weight_->getW(), 1, 1);
activation_->forward(frameOutput_[start + i]).check();
}
}
}
void MKLPackedRecurrentLayer::backward(const UpdateCallback& callback) { void MKLPackedRecurrentLayer::backward(const UpdateCallback& callback) {
REGISTER_TIMER_INFO("RecurrentBwTimer", getName().c_str()); RecurrentLayer::backward(callback);
const Argument& input = getInput(0); packed_weight_->pack();
CHECK(input.sequenceStartPositions); if (needGradient_) {
int batchSize = input.getBatchSize(); packed_weightT_->pack();
const int* starts = input.sequenceStartPositions->getData(false);
size_t numSequences = input.getNumSequences();
if (!FLAGS_rnn_use_batch) {
backwardSequence(batchSize, numSequences, starts);
} else {
backwardBatch(batchSize, numSequences, starts);
}
if (input.grad) {
input.grad->add(*output_.grad);
}
if (bias_ && bias_->getWGrad()) {
bias_->getWGrad()->collectBias(*output_.grad, 1);
bias_->getParameterPtr()->incUpdate(callback);
}
weight_->getParameterPtr()->incUpdate(callback);
sgemm_packed_.reset(new MKLPackedGemm(weight_->getW()));
}
void MKLPackedRecurrentLayer::backwardSequence(int batchSize,
size_t numSequences,
const int* starts) {
REGISTER_TIMER_INFO("RecurrentBwSequence", getName().c_str());
for (int i = 0; i < batchSize; ++i) {
frameOutput_[i].grad->setData(output_.grad->getData() + i * getSize());
}
for (size_t i = 0; i < numSequences; ++i) {
backwardOneSequence(starts[i], starts[i + 1] - starts[i]);
}
}
void MKLPackedRecurrentLayer::backwardOneSequence(int start, int length) {
MatrixPtr weightT = weight_->getW()->getTranspose();
if (!reversed_) {
for (int i = length - 1; i > 0; --i) {
activation_->backward(frameOutput_[start + i]).check();
frameOutput_[start + i - 1].grad->mul(
*frameOutput_[start + i].grad, *weightT, 1, 1);
}
activation_->backward(frameOutput_[start]).check();
if (weight_->getWGrad()) {
weight_->getWGrad()->mul(
*output_.value->subMatrix(start, length - 1)->getTranspose(),
*output_.grad->subMatrix(start + 1, length - 1),
1,
1);
}
} else {
for (int i = 0; i < length - 1; ++i) {
activation_->backward(frameOutput_[start + i]).check();
frameOutput_[start + i + 1].grad->mul(
*frameOutput_[start + i].grad, *weightT, 1, 1);
}
activation_->backward(frameOutput_[start + length - 1]).check();
if (weight_->getWGrad()) {
weight_->getWGrad()->mul(
*output_.value->subMatrix(start + 1, length - 1)->getTranspose(),
*output_.grad->subMatrix(start, length - 1),
1,
1);
}
} }
} }
...@@ -227,7 +60,7 @@ void MKLPackedRecurrentLayer::forwardBatch(int batchSize, ...@@ -227,7 +60,7 @@ void MKLPackedRecurrentLayer::forwardBatch(int batchSize,
batchValue_->getBatchValue(n - 1, batch2->getHeight()); batchValue_->getBatchValue(n - 1, batch2->getHeight());
// batch2->mul(*batch1, *weight_->getW(), 1, 1); // batch2->mul(*batch1, *weight_->getW(), 1, 1);
sgemm_packed_->compute(batch2, batch1); packed_weight_->compute(batch2, batch1);
} }
#pragma omp parallel for collapse(2) #pragma omp parallel for collapse(2)
...@@ -272,7 +105,7 @@ void MKLPackedRecurrentLayer::backwardBatch(int batchSize, ...@@ -272,7 +105,7 @@ void MKLPackedRecurrentLayer::backwardBatch(int batchSize,
if (n != 0) { if (n != 0) {
batch1 = batchGrad_->getBatchValue(n - 1, batch2->getHeight()); batch1 = batchGrad_->getBatchValue(n - 1, batch2->getHeight());
// batch1->mul(*batch2, *weightT, 1, 1); // batch1->mul(*batch2, *weightT, 1, 1);
sgemm_packed_->compute(batch1, batch2, true); packed_weightT_->compute(batch1, batch2);
} }
if (backwardByBatch && weight_->getWGrad()) { if (backwardByBatch && weight_->getWGrad()) {
......
...@@ -16,7 +16,8 @@ limitations under the License. */ ...@@ -16,7 +16,8 @@ limitations under the License. */
#include <gflags/gflags.h> #include <gflags/gflags.h>
#include "Layer.h" #include "Layer.h"
#include "MKLPackedGemm.h" #include "MKLPackedWeight.h"
#include "RecurrentLayer.h"
#include "SequenceToBatch.h" #include "SequenceToBatch.h"
#include "paddle/utils/Stat.h" #include "paddle/utils/Stat.h"
...@@ -45,90 +46,28 @@ namespace paddle { ...@@ -45,90 +46,28 @@ namespace paddle {
* them by rnn_use_batch flag. * them by rnn_use_batch flag.
*/ */
class MKLPackedRecurrentLayer : public Layer { class MKLPackedRecurrentLayer : public RecurrentLayer {
public: public:
explicit MKLPackedRecurrentLayer(const LayerConfig& config) : Layer(config) {} explicit MKLPackedRecurrentLayer(const LayerConfig& config)
: RecurrentLayer(config) {}
bool init(const LayerMap& layerMap, bool init(const LayerMap& layerMap,
const ParameterMap& parameterMap) override; const ParameterMap& parameterMap) override;
void forward(PassType passType) override;
void backward(const UpdateCallback& callback) override; void backward(const UpdateCallback& callback) override;
void resetState() override;
void setState(LayerStatePtr state) override;
LayerStatePtr getState() override;
protected: protected:
/** void forwardBatch(int batchSize,
* @brief If user do not set --rnn_use_batch=true, it will size_t numSequences,
* compute rnn forward one sequence by one sequence in default. const int* starts) override;
* @param batchSize Total words number of all samples in this batch.
* @param numSequences The sample number.
* @param starts Each start position of each samples.
*/
void forwardSequence(int batchSize, size_t numSequences, const int* starts);
/**
* @brief Compute rnn forward by one sequence.
* @param start The start position of this sequence (or sample).
* @param length The length of this sequence (or sample), namely the words
* number of this sequence.
*/
void forwardOneSequence(int start, int length);
/**
* @brief Compute rnn backward one sequence by onesequence.
* @param batchSize Total words number of all samples in this batch.
* @param numSequences The sample number.
* @param starts Each start position of each samples.
*/
void backwardSequence(int batchSize, size_t numSequences, const int* starts);
/**
* @brief Compute rnn backward by one sequence.
* @param start The start position of this sequence (or sample).
* @param length The length of this sequence (or sample), namely the words
* number of this sequence.
*/
void backwardOneSequence(int start, int length);
/** void backwardBatch(int batchSize,
* @brief Reorganize input into batches and compute rnn forward batch size_t numSequences,
* by batch. It will convert batch shape to sequence after finishing forward. const int* starts) override;
* The batch info can refer to SequenceToBatch class.
* @param batchSize Total words number of all samples in this batch.
* @param numSequences The sample number.
* @param starts Each start position of each samples.
*/
void forwardBatch(int batchSize, size_t numSequences, const int* starts);
/**
* @brief Reorganize input into batches and compute rnn forward batch
* by batch.
* @param batchSize Total words number of all samples in this batch.
* @param numSequences The sample number.
* @param starts Each start position of each samples.
*/
void backwardBatch(int batchSize, size_t numSequences, const int* starts);
protected: protected:
std::unique_ptr<Weight> weight_; std::unique_ptr<MKLPackedWeight> packed_weight_;
std::unique_ptr<Weight> bias_; std::unique_ptr<MKLPackedWeight> packed_weightT_;
/// frameOutput_[i] is used to hold the i-th sample of output_
std::vector<Argument> frameOutput_;
MatrixPtr prevOutput_;
/// Whether compute rnn by reverse.
bool reversed_;
/// If compute batch by batch, batchValue_ will be used to save the
/// reorganized input value.
std::unique_ptr<SequenceToBatch> batchValue_;
/// If compute batch by batch, batchGrad_ will be used to save the
/// gradient with respect to reorganized input value.
std::unique_ptr<SequenceToBatch> batchGrad_;
std::unique_ptr<MKLPackedGemm> sgemm_packed_;
}; };
} // namespace paddle } // namespace paddle
/* Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserve.
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. */
#pragma once
#include "paddle/math/MathFunctions.h"
#include "paddle/parameter/Parameter.h"
#include "paddle/parameter/Weight.h"
namespace paddle {
class MKLPackedWeight {
protected:
real *weight_;
real *packedWeight_;
size_t height_;
size_t width_;
bool transW_;
public:
MKLPackedWeight(MatrixPtr weight, bool transW = false) {
packedWeight_ = nullptr;
weight_ = weight->getData();
height_ = weight->getHeight();
width_ = weight->getWidth();
transW_ = transW;
}
~MKLPackedWeight() { free_(); }
void pack() { pack_(weight_); }
void compute(MatrixPtr dst, MatrixPtr src) {
cblas_sgemm_compute(CblasRowMajor,
CblasNoTrans,
CblasPacked,
src->getHeight(),
transW_ ? height_ : width_,
transW_ ? width_ : height_,
src->getData(),
src->getWidth(),
packedWeight_,
width_,
1.0,
dst->getData(),
dst->getWidth());
}
void compute(size_t M, real *A, size_t lda, real *C, size_t ldc) {
cblas_sgemm_compute(CblasRowMajor,
CblasNoTrans,
CblasPacked,
M,
width_,
height_,
A,
lda,
packedWeight_,
width_,
1.0,
C,
ldc);
}
protected:
void pack_(real *src) {
if (!packedWeight_) {
packedWeight_ = cblas_sgemm_alloc(CblasBMatrix, 1, width_, height_);
}
cblas_sgemm_pack(CblasRowMajor,
CblasBMatrix,
transW_ ? CblasTrans : CblasNoTrans,
1,
transW_ ? height_ : width_,
transW_ ? width_ : height_,
1.0,
src,
width_,
packedWeight_);
}
void free_() {
if (packedWeight_) {
cblas_sgemm_free(packedWeight_);
}
}
};
} // namespace paddle
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