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deeplearning4j--deeplearning4j/libnd4j/include/ops/declarable/helpers/cpu/updaterNadam.cpp
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2026-07-13 12:47:05 +08:00

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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
* *****************************************************************************
*/
//
// @author Oleh Semeniv (oleg.semeniv@gmail.com)
//
#include <execution/Threads.h>
#include <math/platformmath.h>
#include <math/templatemath.h>
#include <ops/declarable/helpers/updatersHelpers.h>
#if NOT_EXCLUDED(OP_nadam_updater)
namespace sd {
namespace ops {
namespace helpers {
//////////////////////////////////////////////////////////////////////////////////////////////////////////////////////////////////////
template <typename T>
static void nadamUpdater_(NDArray& gradient, NDArray& initStateV, NDArray& initStateM,
NDArray& update, NDArray& stateV, NDArray& stateM, const double dLr, const double dBeta1,
const double dBeta2, const double dEpsilon, const int nIteration) {
// Cache shape information
const auto gradientShapeInfo = gradient.shapeInfo();
const auto updateShapeInfo = update.shapeInfo();
const auto initStateVShapeInfo = initStateV.shapeInfo();
const auto stateVShapeInfo = stateV.shapeInfo();
const auto initStateMShapeInfo = initStateM.shapeInfo();
const auto stateMShapeInfo = stateM.shapeInfo();
const auto gradRank = shape::rank(gradientShapeInfo);
const auto* gradShape = shape::shapeOf(gradientShapeInfo);
const auto* gradStride = shape::stride(gradientShapeInfo);
const auto* updateStride = shape::stride(updateShapeInfo);
const auto* initStateVStride = shape::stride(initStateVShapeInfo);
const auto* stateVStride = shape::stride(stateVShapeInfo);
const auto* initStateMStride = shape::stride(initStateMShapeInfo);
const auto* stateMStride = shape::stride(stateMShapeInfo);
const T* grad = gradient.bufferAsT<T>();
const T* initV = initStateV.bufferAsT<T>();
const T* initM = initStateM.bufferAsT<T>();
T* up = update.bufferAsT<T>();
T* stV = stateV.bufferAsT<T>();
T* stM = stateM.bufferAsT<T>();
const T lr = static_cast<T>(dLr);
const T beta1 = static_cast<T>(dBeta1);
const T beta2 = static_cast<T>(dBeta2);
T epsilon = static_cast<T>(dEpsilon);
//fp16 to prevent underflow
if(epsilon == 0.0) {
epsilon = static_cast<T>(1e-7);
}
const T iteration = static_cast<T>(nIteration);
const T mbeta1T = 1.0 - sd::math::sd_pow<T, T, T>(beta1, (iteration + 1));
const T mbeta1 = (1 - beta1);
const T mbeta2 = (1 - beta2);
bool bEws1 = 1 == gradient.ews() && 1 == update.ews() && 1 == stateM.ews() && 1 == initStateM.ews() &&
1 == stateV.ews() && 1 == initStateV.ews();
bool bSameOrdering = gradient.ordering() == update.ordering() && update.ordering() == stateV.ordering() &&
stateV.ordering() == initStateV.ordering() && stateV.ordering() == initStateM.ordering() &&
stateM.ordering() == initStateM.ordering();
if (bEws1 && bSameOrdering) {
auto func = PRAGMA_THREADS_FOR {
for (auto i = start; i < stop; i++) {
auto oneMinusBeta1Grad = grad[i] * mbeta1;
stM[i] = beta1 * initM[i] + oneMinusBeta1Grad;
stV[i] = beta2 * initV[i] + grad[i] * grad[i] * mbeta2;
up[i] = (lr * ((stM[i] * beta1 + oneMinusBeta1Grad) / mbeta1T)) / (sd::math::sd_sqrt<T, T>(stV[i]) + epsilon);
}
};
samediff::Threads::parallel_for(func, 0, gradient.lengthOf(), 1);
return;
}
bool bXZsame = shape::haveSameShapeAndStrides(gradientShapeInfo, updateShapeInfo);
bool bXInVSame = shape::haveSameShapeAndStrides(gradientShapeInfo, initStateVShapeInfo);
bool bXStVSame = shape::haveSameShapeAndStrides(gradientShapeInfo, stateVShapeInfo);
bool bXInMSame = shape::haveSameShapeAndStrides(gradientShapeInfo, initStateMShapeInfo);
bool bXStMSame = shape::haveSameShapeAndStrides(gradientShapeInfo, stateMShapeInfo);
auto func = PRAGMA_THREADS_FOR {
sd::LongType coords[SD_MAX_RANK];
for (sd::LongType i = start; i < stop; i++) {
INDEX2COORDS(i, gradRank, gradShape, coords);
sd::LongType xOffset;
COORDS2INDEX(gradRank, gradStride, coords, xOffset);
sd::LongType zOffset;
if (bXZsame) {
zOffset = xOffset;
} else {
COORDS2INDEX(gradRank, updateStride, coords, zOffset);
}
sd::LongType initVOffset;
if (bXInVSame) {
initVOffset = xOffset;
} else {
COORDS2INDEX(gradRank, initStateVStride, coords, initVOffset);
}
sd::LongType stVOffset;
if (bXStVSame) {
stVOffset = xOffset;
} else {
COORDS2INDEX(gradRank, stateVStride, coords, stVOffset);
}
sd::LongType initMOffset;
if (bXInMSame) {
initMOffset = xOffset;
} else {
COORDS2INDEX(gradRank, initStateMStride, coords, initMOffset);
}
sd::LongType stMOffset;
if (bXStMSame) {
stMOffset = xOffset;
} else {
COORDS2INDEX(gradRank, stateMStride, coords, stMOffset);
}
auto oneMinusBeta1Grad = grad[xOffset] * mbeta1;
stM[stMOffset] = beta1 * initM[initMOffset] + oneMinusBeta1Grad;
stV[stVOffset] = beta2 * initV[initVOffset] + grad[xOffset] * grad[xOffset] * mbeta2;
up[zOffset] = (lr * ((stM[stMOffset] * beta1 + oneMinusBeta1Grad) / mbeta1T)) /
(sd::math::sd_sqrt<T, T>(stV[stVOffset]) + epsilon);
}
};
samediff::Threads::parallel_for(func, 0, gradient.lengthOf(), 1);
return;
}
void updaterNadam(sd::LaunchContext* context, NDArray& gradient, NDArray& initStateV,
NDArray& initStateM, NDArray& update, NDArray& stateV, NDArray& stateM, const double dLr,
const double dBeta1, const double dBeta2, const double dEpsilon, const int nIteration) {
BUILD_SINGLE_SELECTOR(
gradient.dataType(), nadamUpdater_,
(gradient, initStateV, initStateM, update, stateV, stateM, dLr, dBeta1, dBeta2, dEpsilon, nIteration),
SD_FLOAT_TYPES);
}
} // namespace helpers
} // namespace ops
} // namespace sd
#endif