org.nd4j.autodiff.functions.DifferentialFunctionFactory Maven / Gradle / Ivy
/*******************************************************************************
* Copyright (c) 2015-2018 Skymind, Inc.
*
* 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.
*
* 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
******************************************************************************/
package org.nd4j.autodiff.functions;
import lombok.Data;
import lombok.NonNull;
import lombok.val;
import org.apache.commons.lang3.ArrayUtils;
import org.nd4j.autodiff.loss.LossReduce;
import org.nd4j.autodiff.samediff.SDVariable;
import org.nd4j.autodiff.samediff.SameDiff;
import org.nd4j.base.Preconditions;
import org.nd4j.linalg.api.blas.params.MMulTranspose;
import org.nd4j.linalg.api.buffer.DataType;
import org.nd4j.linalg.api.ndarray.INDArray;
import org.nd4j.linalg.api.ops.NoOp;
import org.nd4j.linalg.api.ops.impl.controlflow.compat.Merge;
import org.nd4j.linalg.api.ops.impl.controlflow.compat.Switch;
import org.nd4j.linalg.api.ops.impl.image.ExtractImagePatches;
import org.nd4j.linalg.api.ops.impl.loss.SigmoidCrossEntropyLoss;
import org.nd4j.linalg.api.ops.impl.loss.SoftmaxCrossEntropyLoss;
import org.nd4j.linalg.api.ops.impl.loss.bp.*;
import org.nd4j.linalg.api.ops.impl.reduce.*;
import org.nd4j.linalg.api.ops.impl.reduce.custom.*;
import org.nd4j.linalg.api.ops.impl.reduce.floating.*;
import org.nd4j.linalg.api.ops.impl.reduce.same.*;
import org.nd4j.linalg.api.ops.impl.reduce.bool.All;
import org.nd4j.linalg.api.ops.impl.reduce.bool.Any;
import org.nd4j.linalg.api.ops.impl.reduce.bp.*;
import org.nd4j.linalg.api.ops.impl.reduce.longer.CountNonZero;
import org.nd4j.linalg.api.ops.impl.reduce.longer.CountZero;
import org.nd4j.linalg.api.ops.impl.reduce.longer.MatchCondition;
import org.nd4j.linalg.api.ops.impl.reduce.same.AMax;
import org.nd4j.linalg.api.ops.impl.reduce.same.AMin;
import org.nd4j.linalg.api.ops.impl.reduce.same.Max;
import org.nd4j.linalg.api.ops.impl.reduce.same.Min;
import org.nd4j.linalg.api.ops.impl.broadcast.BiasAdd;
import org.nd4j.linalg.api.ops.impl.broadcast.BiasAddGrad;
import org.nd4j.linalg.api.ops.impl.indexaccum.*;
import org.nd4j.linalg.api.ops.impl.layers.convolution.*;
import org.nd4j.linalg.api.ops.impl.layers.convolution.config.*;
import org.nd4j.linalg.api.ops.impl.reduce3.*;
import org.nd4j.linalg.api.ops.impl.loss.*;
import org.nd4j.linalg.api.ops.impl.scalar.*;
import org.nd4j.linalg.api.ops.impl.scalar.Pow;
import org.nd4j.linalg.api.ops.impl.scalar.comparison.*;
import org.nd4j.linalg.api.ops.impl.scatter.*;
import org.nd4j.linalg.api.ops.impl.shape.*;
import org.nd4j.linalg.api.ops.impl.shape.Stack;
import org.nd4j.linalg.api.ops.impl.shape.bp.SliceBp;
import org.nd4j.linalg.api.ops.impl.shape.bp.StridedSliceBp;
import org.nd4j.linalg.api.ops.impl.shape.bp.TileBp;
import org.nd4j.linalg.api.ops.impl.summarystats.StandardDeviation;
import org.nd4j.linalg.api.ops.impl.summarystats.Variance;
import org.nd4j.linalg.api.ops.impl.transforms.*;
import org.nd4j.linalg.api.ops.impl.transforms.any.IsMax;
import org.nd4j.linalg.api.ops.impl.transforms.custom.*;
import org.nd4j.linalg.api.ops.impl.transforms.dtype.Cast;
import org.nd4j.linalg.api.ops.impl.transforms.pairwise.bool.And;
import org.nd4j.linalg.api.ops.impl.transforms.pairwise.bool.Or;
import org.nd4j.linalg.api.ops.impl.transforms.pairwise.bool.Xor;
import org.nd4j.linalg.api.ops.impl.transforms.pairwise.arithmetic.*;
import org.nd4j.linalg.api.ops.impl.transforms.pairwise.arithmetic.bp.*;
import org.nd4j.linalg.api.ops.impl.transforms.bool.*;
import org.nd4j.linalg.api.ops.impl.transforms.clip.ClipByNorm;
import org.nd4j.linalg.api.ops.impl.transforms.clip.ClipByValue;
import org.nd4j.linalg.api.ops.impl.transforms.comparison.*;
import org.nd4j.linalg.api.ops.impl.transforms.floating.*;
import org.nd4j.linalg.api.ops.impl.transforms.gradient.*;
import org.nd4j.linalg.api.ops.impl.transforms.gradient.SigmoidDerivative;
import org.nd4j.linalg.api.ops.impl.transforms.same.*;
import org.nd4j.linalg.api.ops.impl.transforms.custom.segment.*;
import org.nd4j.linalg.api.ops.impl.transforms.strict.*;
import org.nd4j.linalg.api.ops.impl.transforms.custom.SoftMax;
import org.nd4j.linalg.api.ops.impl.transforms.segment.*;
import org.nd4j.linalg.api.ops.impl.transforms.segment.bp.*;
import org.nd4j.linalg.api.ops.impl.layers.ExternalErrorsFunction;
import org.nd4j.linalg.api.ops.random.custom.DistributionUniform;
import org.nd4j.linalg.api.ops.random.custom.RandomBernoulli;
import org.nd4j.linalg.api.ops.random.custom.RandomExponential;
import org.nd4j.linalg.api.ops.random.custom.RandomNormal;
import org.nd4j.linalg.api.ops.random.impl.*;
import org.nd4j.linalg.api.ops.random.impl.Linspace;
import org.nd4j.linalg.api.shape.Shape;
import org.nd4j.linalg.indexing.conditions.Condition;
import org.nd4j.linalg.util.ArrayUtil;
import java.lang.reflect.Method;
import java.util.*;
/**
*
*/
@Data
public class DifferentialFunctionFactory {
protected SameDiff sameDiff;
private static Map methodNames;
/**
* @param sameDiff
*/
public DifferentialFunctionFactory(SameDiff sameDiff) {
if (sameDiff != null) {
this.sameDiff = sameDiff;
if (methodNames == null) {
methodNames = new HashMap<>();
Method[] methods = getClass().getDeclaredMethods();
for (Method method : methods)
methodNames.put(method.getName().toLowerCase(), method);
}
} else {
throw new IllegalArgumentException("Input not null value.");
}
}
public SameDiff sameDiff() {
return sameDiff;
}
public SDVariable invoke(String name, Object[] args) {
try {
return (SDVariable) methodNames.get(name).invoke(this, args);
} catch (Exception e) {
throw new RuntimeException(e);
}
}
public Constant val(SDVariable iX) {
return new Constant(sameDiff(), iX,
iX.getShape());
}
public ExternalErrorsFunction externalErrors(SDVariable... inputs) {
return externalErrors(null, inputs);
}
public ExternalErrorsFunction externalErrors(Map externalGradients, SDVariable... inputs) {
Preconditions.checkArgument(inputs != null && inputs.length > 0, "Require at least one SDVariable to" +
" be specified when using external errors: got %s", inputs);
ExternalErrorsFunction fn = new ExternalErrorsFunction(sameDiff(), Arrays.asList(inputs), externalGradients);
fn.outputVariable();
return fn;
}
public SDVariable zerosLike(SDVariable input) {
return zerosLike(null, input);
}
public SDVariable zerosLike(String name, SDVariable input) {
validateDifferentialFunctionsameDiff(input);
return new ZerosLike(name, sameDiff(), input).outputVariable();
}
public SDVariable onesLike(String name, SDVariable input, DataType dataType) {
validateDifferentialFunctionsameDiff(input);
return new OnesLike(name, sameDiff(), input, dataType).outputVariable();
}
public SDVariable constant(SDVariable input, long... shape) {
return new Constant(sameDiff(), input, (shape != null && shape.length > 0 ? shape : null)).outputVariable();
}
public SDVariable linspace(SDVariable lower, SDVariable upper, SDVariable count, DataType dt) {
return new org.nd4j.linalg.api.ops.impl.shape.Linspace(sameDiff(), lower, upper, count, dt).outputVariable();
}
public SDVariable range(double from, double to, double step, DataType dataType) {
return new Range(sameDiff(), from, to, step, dataType).outputVariable();
}
public SDVariable cast(SDVariable toCast, DataType toType){
return new Cast(sameDiff(), toCast, toType).outputVariable();
}
public SDVariable[] meshgrid(boolean cartesian, SDVariable... inputs) {
return new MeshGrid(sameDiff(), cartesian, inputs).outputVariables();
}
public SDVariable randomUniform(double min, double max, SDVariable shape) {
return new DistributionUniform(sameDiff(), shape, min, max).outputVariable();
}
public SDVariable randomUniform(double min, double max, long... shape) {
return new UniformDistribution(sameDiff(), min, max, shape).outputVariable();
}
public SDVariable randomNormal(double mean, double std, SDVariable shape) {
return new RandomNormal(sameDiff(), shape, mean, std).outputVariable();
}
public SDVariable randomNormal(double mean, double std, long... shape) {
return new GaussianDistribution(sameDiff(), mean, std, shape).outputVariable();
}
public SDVariable randomBernoulli(double p, SDVariable shape) {
return new RandomBernoulli(sameDiff(), shape, p).outputVariable();
}
public SDVariable randomBernoulli(double p, long... shape) {
return new BernoulliDistribution(sameDiff(), p, shape).outputVariable();
}
public SDVariable randomBinomial(int nTrials, double p, long... shape) {
return new BinomialDistribution(sameDiff(), nTrials, p, shape).outputVariable();
}
public SDVariable randomLogNormal(double mean, double stdev, long... shape) {
return new LogNormalDistribution(sameDiff(), mean, stdev, shape).outputVariable();
}
public SDVariable randomNormalTruncated(double mean, double stdev, long... shape) {
return new TruncatedNormalDistribution(sameDiff(), mean, stdev, shape).outputVariable();
}
/**
* Exponential distribution: P(x) = lambda * exp(-lambda * x)
*
* @param lambda Must be > 0
* @param shape Shape of the output
*/
public SDVariable randomExponential(double lambda, SDVariable shape) {
return new RandomExponential(sameDiff(), shape, lambda).outputVariable();
}
public SDVariable pad(SDVariable input, SDVariable padding, Pad.Mode mode, double padValue){
return new Pad(sameDiff(), input, padding, mode, padValue).outputVariable();
}
/**
* Local response normalization operation.
*
* @param input the inputs to lrn
* @param lrnConfig the configuration
* @return
*/
public SDVariable localResponseNormalization(SDVariable input, LocalResponseNormalizationConfig lrnConfig) {
LocalResponseNormalization lrn = LocalResponseNormalization.builder()
.inputFunctions(new SDVariable[]{input})
.sameDiff(sameDiff())
.config(lrnConfig)
.build();
return lrn.outputVariable();
}
/**
* Conv1d operation.
*
* @param input the inputs to conv1d
* @param weights conv1d weights
* @param conv1DConfig the configuration
* @return
*/
public SDVariable conv1d(SDVariable input, SDVariable weights, Conv1DConfig conv1DConfig) {
Conv1D conv1D = Conv1D.builder()
.inputFunctions(new SDVariable[]{input, weights})
.sameDiff(sameDiff())
.config(conv1DConfig)
.build();
return conv1D.outputVariable();
}
/**
* Conv2d operation.
*
* @param inputs the inputs to conv2d
* @param conv2DConfig the configuration
* @return
*/
public SDVariable conv2d(SDVariable[] inputs, Conv2DConfig conv2DConfig) {
Conv2D conv2D = Conv2D.builder()
.inputFunctions(inputs)
.sameDiff(sameDiff())
.config(conv2DConfig)
.build();
return conv2D.outputVariable();
}
public SDVariable upsampling2d(SDVariable input, boolean nchw, int scaleH, int scaleW) {
return new Upsampling2d(sameDiff(), input, nchw, scaleH, scaleW).outputVariable();
}
public SDVariable upsampling2dBp(SDVariable input, SDVariable gradient, boolean nchw, int scaleH, int scaleW) {
return new Upsampling2dDerivative(sameDiff(), input, gradient, nchw, scaleH, scaleW).outputVariable();
}
/**
* Average pooling 2d operation.
*
* @param input the inputs to pooling
* @param pooling2DConfig the configuration
* @return
*/
public SDVariable avgPooling2d(SDVariable input, Pooling2DConfig pooling2DConfig) {
AvgPooling2D avgPooling2D = AvgPooling2D.builder()
.input(input)
.sameDiff(sameDiff())
.config(pooling2DConfig)
.build();
return avgPooling2D.outputVariable();
}
/**
* Max pooling 2d operation.
*
* @param input the inputs to pooling
* @param pooling2DConfig the configuration
* @return
*/
public SDVariable maxPooling2d(SDVariable input, Pooling2DConfig pooling2DConfig) {
MaxPooling2D maxPooling2D = MaxPooling2D.builder()
.input(input)
.sameDiff(sameDiff())
.config(pooling2DConfig)
.build();
return maxPooling2D.outputVariable();
}
/**
* Avg pooling 3d operation.
*
* @param input the inputs to pooling
* @param pooling3DConfig the configuration
* @return
*/
public SDVariable avgPooling3d(SDVariable input, Pooling3DConfig pooling3DConfig) {
pooling3DConfig.setType(Pooling3D.Pooling3DType.AVG);
return pooling3d(input, pooling3DConfig);
}
/**
* Max pooling 3d operation.
*
* @param input the inputs to pooling
* @param pooling3DConfig the configuration
* @return
*/
public SDVariable maxPooling3d(SDVariable input, Pooling3DConfig pooling3DConfig) {
pooling3DConfig.setType(Pooling3D.Pooling3DType.MAX);
return pooling3d(input, pooling3DConfig);
}
public SDVariable pooling3d(SDVariable input, Pooling3DConfig pooling3DConfig) {
Pooling3D pool3d = Pooling3D.builder()
.inputs(new SDVariable[]{input})
.sameDiff(sameDiff())
.pooling3DConfig(pooling3DConfig)
.type(pooling3DConfig.getType())
.build();
return pool3d.outputVariable();
}
/**
* Separable Conv2d operation.
*
* @param inputs the inputs to conv2d
* @param conv2DConfig the configuration
* @return
*/
public SDVariable sconv2d(SDVariable[] inputs, Conv2DConfig conv2DConfig) {
SConv2D sconv2D = SConv2D.sBuilder()
.inputFunctions(inputs)
.sameDiff(sameDiff())
.conv2DConfig(conv2DConfig)
.build();
return sconv2D.outputVariable();
}
/**
* Depth-wise Conv2d operation. This is just separable convolution with
* only the depth-wise weights specified.
*
* @param inputs the inputs to conv2d
* @param depthConv2DConfig the configuration
* @return
*/
public SDVariable depthWiseConv2d(SDVariable[] inputs, Conv2DConfig depthConv2DConfig) {
SConv2D depthWiseConv2D = SConv2D.sBuilder()
.inputFunctions(inputs)
.sameDiff(sameDiff())
.conv2DConfig(depthConv2DConfig)
.build();
return depthWiseConv2D.outputVariable();
}
/**
* Deconv2d operation.
*
* @param inputs the inputs to conv2d
* @param deconv2DConfig the configuration
* @return
*/
public SDVariable deconv2d(SDVariable[] inputs, DeConv2DConfig deconv2DConfig) {
DeConv2D deconv2D = DeConv2D.builder()
.inputs(inputs)
.sameDiff(sameDiff())
.config(deconv2DConfig)
.build();
return deconv2D.outputVariable();
}
public SDVariable deconv3d(SDVariable input, SDVariable weights, SDVariable bias, DeConv3DConfig config) {
DeConv3D d = new DeConv3D(sameDiff(), input, weights, bias, config);
return d.outputVariable();
}
public SDVariable[] deconv3dDerivative(SDVariable input, SDVariable weights, SDVariable bias, SDVariable grad, DeConv3DConfig config) {
DeConv3DDerivative d = new DeConv3DDerivative(sameDiff(), input, weights, bias, grad, config);
return d.outputVariables();
}
/**
* Conv3d operation.
*
* @param inputs the inputs to conv3d
* @param conv3DConfig the configuration
* @return
*/
public SDVariable conv3d(SDVariable[] inputs, Conv3DConfig conv3DConfig) {
Conv3D conv3D = Conv3D.builder()
.inputFunctions(inputs)
.conv3DConfig(conv3DConfig)
.sameDiff(sameDiff())
.build();
val outputVars = conv3D.outputVariables();
return outputVars[0];
}
/**
* Batch norm operation.
*/
public SDVariable batchNorm(SDVariable input, SDVariable mean,
SDVariable variance, SDVariable gamma,
SDVariable beta,
boolean applyGamma, boolean applyBeta,
double epsilon, int... axis) {
BatchNorm batchNorm = BatchNorm.builder()
.inputFunctions(new SDVariable[]{input, mean, variance, gamma, beta})
.applyGamma(applyGamma)
.applyBeta(applyBeta)
.epsilon(epsilon)
.sameDiff(sameDiff())
.axis(axis)
.build();
val outputVars = batchNorm.outputVariables();
return outputVars[0];
}
public SDVariable im2Col(SDVariable input, Conv2DConfig config) {
return new Im2col(sameDiff(), input, config).outputVariable();
}
public SDVariable im2ColBp(SDVariable im2colInput, SDVariable gradientAtOutput, Conv2DConfig config) {
return new Im2colBp(sameDiff(), im2colInput, gradientAtOutput, config).outputVariable();
}
public SDVariable col2Im(SDVariable input, Conv2DConfig config) {
return new Col2Im(sameDiff(), input, config).outputVariable();
}
public SDVariable extractImagePatches(SDVariable input, int kH, int kW, int sH, int sW, int rH, int rW, boolean sameMode){
return new ExtractImagePatches(sameDiff(), input, new int[]{kH, kW}, new int[]{sH, sW}, new int[]{rH, rW}, sameMode).outputVariable();
}
public SDVariable[] moments(SDVariable input, int... axes) {
return new Moments(sameDiff(), input, axes).outputVariables();
}
public SDVariable[] normalizeMoments(SDVariable counts, SDVariable means, SDVariable variances, double shift) {
return new NormalizeMoments(sameDiff(), counts, means, variances, shift).outputVariables();
}
public SDVariable tile(@NonNull SDVariable iX, @NonNull int[] repeat) {
return new Tile(sameDiff(), iX, repeat).outputVariable();
}
public SDVariable tileBp(@NonNull SDVariable in, @NonNull SDVariable grad, @NonNull int[] repeat){
return new TileBp(sameDiff, in, grad, repeat).outputVariable();
}
public SDVariable dropout(SDVariable input, double p) {
return new DropOutInverted(sameDiff(), input, p).outputVariable();
}
public SDVariable sum(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Sum(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable sumBp(SDVariable i_x, SDVariable grad, boolean keepDims, int... dimensions) {
return new SumBp(sameDiff(), i_x, grad, keepDims, dimensions).outputVariable();
}
public SDVariable prod(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Prod(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable prodBp(SDVariable preReduceInput, SDVariable grad, boolean keepDims, int... dimensions) {
return new ProdBp(sameDiff(), preReduceInput, grad, keepDims, dimensions).outputVariable();
}
public SDVariable mean(SDVariable in, boolean keepDims, int... dimensions) {
return new Mean(sameDiff(), in, keepDims, dimensions).outputVariable();
}
public SDVariable meanBp(SDVariable in, SDVariable grad, boolean keepDims, int... dimensions) {
return new MeanBp(sameDiff(), in, grad, keepDims, dimensions).outputVariable();
}
public SDVariable std(SDVariable i_x, boolean biasCorrected, boolean keepDims, int... dimensions) {
return new StandardDeviation(sameDiff(), i_x, biasCorrected, keepDims, dimensions).outputVariable();
}
public SDVariable stdBp(SDVariable stdInput, SDVariable gradient, boolean biasCorrected, boolean keepDims, int... dimensions) {
return new StandardDeviationBp(sameDiff(), stdInput, gradient, biasCorrected, keepDims, dimensions).outputVariable();
}
public SDVariable variance(SDVariable i_x, boolean biasCorrected, boolean keepDims, int... dimensions) {
return new Variance(sameDiff(), i_x, biasCorrected, keepDims, dimensions).outputVariable();
}
public SDVariable varianceBp(SDVariable stdInput, SDVariable gradient, boolean biasCorrected, boolean keepDims, int... dimensions) {
return new VarianceBp(sameDiff(), stdInput, gradient, biasCorrected, keepDims, dimensions).outputVariable();
}
public SDVariable standardize(SDVariable i_x, int... dimensions) {
return new Standardize(sameDiff(), i_x, dimensions).outputVariable();
}
public SDVariable standardizeBp(SDVariable stdInput, SDVariable gradient, int... dimensions) {
return new StandardizeBp(sameDiff(), stdInput, gradient, dimensions).outputVariable();
}
public SDVariable layerNorm(SDVariable input, SDVariable gain, SDVariable bias, int... dimensions) {
return new LayerNorm(sameDiff(), input, gain, bias, dimensions).outputVariable();
}
public SDVariable[] layerNormBp(SDVariable input, SDVariable gain, SDVariable bias, SDVariable gradient, int... dimensions) {
return new LayerNormBp(sameDiff(), input, gain, bias, gradient, dimensions).outputVariables();
}
public SDVariable layerNorm(SDVariable input, SDVariable gain, int... dimensions) {
return new LayerNorm(sameDiff(), input, gain, dimensions).outputVariable();
}
public SDVariable[] layerNormBp(SDVariable input, SDVariable gain, SDVariable gradient, int... dimensions) {
return new LayerNormBp(sameDiff(), input, gain, gradient, dimensions).outputVariables();
}
public SDVariable squaredNorm(SDVariable input, boolean keepDims, int... dimensions) {
return new SquaredNorm(sameDiff(), input, keepDims, dimensions).outputVariable();
}
public SDVariable squaredNormBp(SDVariable preReduceInput, SDVariable gradient, boolean keepDims, int... dimensions) {
return new SquaredNormBp(sameDiff(), preReduceInput, gradient, keepDims, dimensions).outputVariable();
}
public SDVariable entropy(SDVariable in, int... dimensions) {
return new Entropy(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable logEntropy(SDVariable in, int... dimensions) {
return new LogEntropy(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable shannonEntropy(SDVariable in, int... dimensions){
return new ShannonEntropy(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable countNonZero(SDVariable input, int... dimensions) {
return new CountNonZero(sameDiff(), input, dimensions).outputVariable();
}
public SDVariable countZero(SDVariable input, int... dimensions) {
return new CountZero(sameDiff(), input, dimensions).outputVariable();
}
public SDVariable zeroFraction(SDVariable input) {
return new ZeroFraction(sameDiff(), input).outputVariable();
}
public SDVariable scalarMax(SDVariable in, Number num) {
return new ScalarMax(sameDiff(), in, num).outputVariable();
}
public SDVariable scalarMin(SDVariable in, Number num) {
return new ScalarMin(sameDiff(), in, num).outputVariable();
}
public SDVariable scalarSet(SDVariable in, Number num) {
return new ScalarSet(sameDiff(), in, num).outputVariable();
}
public SDVariable scalarFloorMod(SDVariable in, Number num) {
return new ScalarFMod(sameDiff(), in, num).outputVariable();
}
public SDVariable max(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Max(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable max(SDVariable first, SDVariable second) {
return new org.nd4j.linalg.api.ops.impl.transforms.custom.Max(sameDiff(), first, second)
.outputVariable();
}
public SDVariable maxBp(SDVariable i_x, SDVariable grad, boolean keepDims, int... dimensions) {
return new MaxBp(sameDiff(), i_x, grad, keepDims, dimensions).outputVariable();
}
public SDVariable min(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Min(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable minBp(SDVariable i_x, SDVariable grad, boolean keepDims, int... dimensions) {
return new MinBp(sameDiff(), i_x, grad, keepDims, dimensions).outputVariable();
}
public SDVariable min(SDVariable first, SDVariable second) {
return new org.nd4j.linalg.api.ops.impl.transforms.custom.Min(sameDiff(), first, second)
.outputVariable();
}
public SDVariable amax(SDVariable in, int... dimensions) {
return new AMax(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable amin(SDVariable in, int... dimensions) {
return new AMin(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable amean(SDVariable in, int... dimensions) {
return new AMean(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable asum(SDVariable in, int... dimensions) {
return new ASum(sameDiff(), in, dimensions).outputVariable();
}
public SDVariable argmax(SDVariable in, boolean keepDims, int... dimensions) {
return new IMax(sameDiff(), in, keepDims, dimensions).outputVariable();
}
public SDVariable argmin(SDVariable in, boolean keepDims, int... dimensions) {
return new IMin(sameDiff(), in, keepDims, dimensions).outputVariable();
}
public SDVariable iamax(SDVariable in, boolean keepDims, int... dimensions) {
return new IAMax(sameDiff(), in, keepDims, dimensions).outputVariable();
}
public SDVariable iamin(SDVariable in, boolean keepDims, int... dimensions) {
return new IAMin(sameDiff(), in, keepDims, dimensions).outputVariable();
}
public SDVariable firstIndex(SDVariable in, Condition condition, boolean keepDims, int... dimensions) {
return new FirstIndex(sameDiff(), in, condition, keepDims, dimensions).outputVariable();
}
public SDVariable lastIndex(SDVariable in, Condition condition, boolean keepDims, int... dimensions) {
return new LastIndex(sameDiff(), in, condition, keepDims, dimensions).outputVariable();
}
/**
* Returns a count of the number of elements that satisfy the condition
*
* @param in Input
* @param condition Condition
* @return Number of elements that the condition is satisfied for
*/
public SDVariable matchConditionCount(SDVariable in, Condition condition, boolean keepDims, int... dimensions) {
return new MatchCondition(sameDiff(), in, condition, keepDims, dimensions).outputVariable();
}
/**
* Returns a boolean mask of equal shape to the input, where the condition is satisfied
*
* @param in Input
* @param condition Condition
* @return Boolean mask
*/
public SDVariable matchCondition(SDVariable in, Condition condition) {
return new MatchConditionTransform(sameDiff(), in, condition).outputVariable();
}
public SDVariable cumsum(SDVariable in, boolean exclusive, boolean reverse, int... axis) {
return new CumSum(sameDiff(), in, exclusive, reverse, axis).outputVariable();
}
public SDVariable cumsumBp(SDVariable in, SDVariable grad, boolean exclusive, boolean reverse, int... axis) {
return new CumSumBp(sameDiff(), in, grad, exclusive, reverse, axis).outputVariable();
}
public SDVariable cumprod(SDVariable in, boolean exclusive, boolean reverse, int... axis) {
return new CumProd(sameDiff(), in, exclusive, reverse, axis).outputVariable();
}
public SDVariable cumprodBp(SDVariable in, SDVariable grad, boolean exclusive, boolean reverse, int... axis) {
return new CumProdBp(sameDiff(), in, grad, exclusive, reverse, axis).outputVariable();
}
public SDVariable biasAdd(SDVariable input, SDVariable bias) {
return new BiasAdd(sameDiff(), input, bias).outputVariable();
}
public SDVariable[] biasAddBp(SDVariable input, SDVariable bias, SDVariable grad) {
return new BiasAddGrad(sameDiff(), input, bias, grad).outputVariables();
}
public SDVariable norm1(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Norm1(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable norm1Bp(SDVariable preReduceIn, SDVariable grad, boolean keepDims, int... dimensions) {
return new Norm1Bp(sameDiff(), preReduceIn, grad, keepDims, dimensions).outputVariable();
}
public SDVariable norm2(SDVariable i_x, boolean keepDims, int... dimensions) {
return new Norm2(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable norm2Bp(SDVariable preReduceIn, SDVariable grad, boolean keepDims, int... dimensions) {
return new Norm2Bp(sameDiff(), preReduceIn, grad, keepDims, dimensions).outputVariable();
}
public SDVariable normmax(SDVariable i_x, boolean keepDims, int... dimensions) {
return new NormMax(sameDiff(), i_x, keepDims, dimensions).outputVariable();
}
public SDVariable normmaxBp(SDVariable preReduceIn, SDVariable grad, boolean keepDims, int... dimensions) {
return new NormMaxBp(sameDiff(), preReduceIn, grad, keepDims, dimensions).outputVariable();
}
public SDVariable reductionShape(SDVariable shape, SDVariable axis, boolean keepDim){
return new ReductionShape(sameDiff(), shape, axis, keepDim).outputVariable();
}
/**
* Add 1s as required to the array make an array possible to be broadcast with the original (pre-reduce) array.
*
* Example: if doing [a,b,c].sum(1), result is [a,c]. To 'undo' this in a way that can be auto-broadcast,
* we want to expand as required - i.e., [a,c] -> [a,1,c] which can be auto-broadcast with the original [a,b,c].
* This is typically only used with reduction operations backprop.
*
* @param origRank Rank of the original array, before the reduction was executed
* @param reduceDims Dimensions that the original array was reduced from
* @param toExpand Array to add 1s to the shape to (such that it can be
* @return Reshaped array.
*/
public SDVariable reductionBroadcastableWithOrigShape(int origRank, int[] reduceDims, SDVariable toExpand) {
if (Shape.isWholeArray(origRank, reduceDims)) {
//Output is [1,1] which is already broadcastable
return toExpand;
} else if (origRank == 2 && reduceDims.length == 1) {
//In this case: [a,b] -> [1,b] or [a,b] -> [a,1]
//both are already broadcastable
return toExpand;
} else {
//Example: [a,b,c].sum(1) -> [a,c]... want [a,1,c]
for (int d : reduceDims) {
toExpand = sameDiff().expandDims(toExpand, d);
}
return toExpand;
}
}
public SDVariable reductionBroadcastableWithOrigShape(SDVariable origInput, SDVariable axis, SDVariable toExpand) {
SDVariable shape = origInput.shape();
SDVariable reduceShape = reductionShape(shape, axis, true);
SDVariable reshaped = toExpand.reshape(reduceShape);
return reshaped;
}
public SDVariable gradientBackwardsMarker(SDVariable iX) {
return new GradientBackwardsMarker(sameDiff(), iX, sameDiff.scalar(iX.getVarName() + "-pairgrad", 1.0)).outputVariable();
}
public SDVariable abs(SDVariable iX) {
return new Abs(sameDiff(), iX, false).outputVariable();
}
public SDVariable neg(SDVariable iX) {
return new Negative(sameDiff(), iX, false).outputVariable();
}
public SDVariable cos(SDVariable iX) {
return new Cos(sameDiff(), iX, false).outputVariable();
}
public SDVariable sin(SDVariable iX) {
return new Sin(sameDiff(), iX, false).outputVariable();
}
public SDVariable tan(SDVariable iX) {
return new Tan(sameDiff(), iX, false).outputVariable();
}
public SDVariable permute(SDVariable iX, int... dimensions) {
return new Permute(sameDiff(), iX, dimensions).outputVariable();
}
public SDVariable noop(SDVariable input) {
return new NoOp(sameDiff(), input).outputVariable();
}
public SDVariable identity(SDVariable input) {
return new Identity(sameDiff(), input).outputVariable();
}
public SDVariable all(SDVariable input, int... dimensions) {
return new All(sameDiff(), input, dimensions).outputVariable();
}
public SDVariable any(SDVariable input, int... dimensions) {
return new Any(sameDiff(), input, dimensions).outputVariable();
}
public SDVariable invertPermutation(SDVariable input, boolean inPlace) {
return new InvertPermutation(sameDiff(), input, inPlace).outputVariable();
}
public SDVariable transpose(SDVariable iX) {
return new Transpose(sameDiff(), iX).outputVariable();
}
public SDVariable acos(SDVariable iX) {
return new ACos(sameDiff(), iX, false).outputVariable();
}
public SDVariable asin(SDVariable iX) {
return new ASin(sameDiff(), iX, false).outputVariable();
}
public SDVariable atan(SDVariable iX) {
return new ATan(sameDiff(), iX, false).outputVariable();
}
public SDVariable atan2(SDVariable y, SDVariable x) {
return new ATan2(sameDiff(), y, x).outputVariable();
}
public SDVariable cosh(SDVariable iX) {
return new Cosh(sameDiff(), iX, false).outputVariable();
}
public SDVariable sinh(SDVariable iX) {
return new Sinh(sameDiff(), iX, false).outputVariable();
}
public SDVariable tanh(SDVariable iX) {
return new Tanh(sameDiff(), iX, false).outputVariable();
}
public SDVariable tanhRational(SDVariable in) {
return new RationalTanh(sameDiff(), in, false).outputVariable();
}
public SDVariable tanhRectified(SDVariable in) {
return new RectifiedTanh(sameDiff(), in, false).outputVariable();
}
public SDVariable tanhDerivative(SDVariable iX, SDVariable wrt) {
return new org.nd4j.linalg.api.ops.impl.transforms.gradient.TanhDerivative(sameDiff(), iX, wrt).outputVariable();
}
public SDVariable tanhRationalDerivative(SDVariable in) {
return new RationalTanhDerivative(sameDiff(), in, false).outputVariable();
}
public SDVariable tanhRectifiedDerivative(SDVariable in) {
return new RectifiedTanhDerivative(sameDiff(), in, false).outputVariable();
}
public SDVariable step(SDVariable in, double cutoff) {
return new Step(sameDiff(), in, false, cutoff).outputVariable();
}
public SDVariable acosh(SDVariable iX) {
return new ACosh(sameDiff(), iX).outputVariable();
}
public SDVariable asinh(SDVariable iX) {
return new ASinh(sameDiff(), iX).outputVariable();
}
public SDVariable atanh(SDVariable iX) {
return new ATanh(sameDiff(), iX).outputVariable();
}
public SDVariable exp(SDVariable iX) {
return new Exp(sameDiff(), iX, false).outputVariable();
}
public SDVariable expm1(SDVariable iX) {
return new Expm1(sameDiff(), iX, false).outputVariable();
}
public SDVariable rsqrt(SDVariable iX) {
return new RSqrt(sameDiff(), iX, false).outputVariable();
}
public SDVariable log(SDVariable iX) {
return new Log(sameDiff(), iX, false).outputVariable();
}
public SDVariable log(SDVariable in, double base) {
return new LogX(sameDiff(), in, base).outputVariable();
}
public SDVariable log1p(SDVariable iX) {
return new Log1p(sameDiff(), iX, false).outputVariable();
}
public SDVariable isFinite(SDVariable ix) {
return new IsFinite(sameDiff(), ix, false).outputVariable();
}
public SDVariable isInfinite(SDVariable ix) {
return new IsInf(sameDiff(), ix, false).outputVariable();
}
public SDVariable isNaN(SDVariable ix) {
return new IsNaN(sameDiff(), ix, false).outputVariable();
}
public SDVariable isMax(SDVariable ix) {
return new IsMax(sameDiff(), ix, false).outputVariable();
}
public SDVariable replaceWhere(SDVariable to, SDVariable from, Condition condition) {
return new CompareAndReplace(sameDiff(), to, from, condition).outputVariable();
}
public SDVariable replaceWhere(SDVariable to, Number set, Condition condition) {
return new CompareAndSet(sameDiff(), to, set, condition).outputVariable();
}
public SDVariable round(SDVariable ix) {
return new Round(sameDiff(), ix, false).outputVariable();
}
public SDVariable or(SDVariable iX, SDVariable i_y) {
return new Or(sameDiff(), iX, i_y).outputVariable();
}
public SDVariable and(SDVariable ix, SDVariable iy) {
return new And(sameDiff(), ix, iy).outputVariable();
}
public SDVariable xor(SDVariable ix, SDVariable iy) {
return new Xor(sameDiff(), ix, iy).outputVariable();
}
public SDVariable eq(SDVariable iX, SDVariable i_y) {
return new EqualTo(sameDiff(), new SDVariable[]{iX, i_y}, false).outputVariable();
}
public SDVariable neq(SDVariable iX, double i_y) {
return new ScalarNotEquals(sameDiff(), iX, i_y).outputVariable();
}
public SDVariable neqi(SDVariable iX, double i_y) {
return new ScalarNotEquals(sameDiff(), iX, i_y, true).outputVariable();
}
public SDVariable neqi(SDVariable iX, SDVariable i_y) {
return new NotEqualTo(sameDiff(), new SDVariable[]{iX, i_y}, true).outputVariable();
}
public SDVariable neq(SDVariable iX, SDVariable i_y) {
return new NotEqualTo(sameDiff(), new SDVariable[]{iX, i_y}, false).outputVariable();
}
public SDVariable pow(SDVariable iX, double i_y) {
return new Pow(sameDiff(), iX, false, i_y).outputVariable();
}
public SDVariable pow(SDVariable x, SDVariable y){
return new org.nd4j.linalg.api.ops.impl.transforms.custom.Pow(sameDiff(), x, y).outputVariable();
}
public SDVariable sqrt(SDVariable iX) {
return new Sqrt(sameDiff(), iX, false).outputVariable();
}
public SDVariable square(SDVariable iX) {
return new Square(sameDiff(), iX, false).outputVariable();
}
public SDVariable cube(SDVariable iX) {
return new Cube(sameDiff(), iX, false).outputVariable();
}
public SDVariable cubeDerivative(SDVariable iX) {
return new CubeDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable floor(SDVariable iX) {
return new Floor(sameDiff(), iX, false).outputVariable();
}
public SDVariable floorDiv(SDVariable x, SDVariable y) {
return new FloorDivOp(sameDiff(), x, y).outputVariable();
}
public List floorDivBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new FloorDivBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable floorMod(SDVariable x, SDVariable y) {
return new FloorModOp(sameDiff(), x, y).outputVariable();
}
public List floorModBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new FloorModBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable ceil(SDVariable x) {
return new Ceil(sameDiff(), x).outputVariable();
}
public SDVariable clipByValue(SDVariable x, double clipValueMin, double clipValueMax) {
return new ClipByValue(sameDiff(), x, clipValueMin, clipValueMax).outputVariable();
}
public SDVariable clipByNorm(SDVariable x, double clipValue) {
return new ClipByNorm(sameDiff(), x, clipValue).outputVariable();
}
public SDVariable clipByNorm(SDVariable x, double clipValue, int... dimensions) {
return new ClipByNorm(sameDiff(), x, clipValue, dimensions).outputVariable();
}
public SDVariable relu(SDVariable iX, double cutoff) {
return new RectifiedLinear(sameDiff(), iX, false, cutoff).outputVariable();
}
public SDVariable relu6(SDVariable iX, double cutoff) {
return new Relu6(sameDiff(), iX, false, cutoff).outputVariable();
}
public SDVariable relu6Derivative(SDVariable iX, SDVariable wrt, double cutoff) {
return new Relu6Derivative(sameDiff(), iX, wrt, cutoff).outputVariable();
}
public SDVariable softmax(SDVariable iX) {
return new SoftMax(sameDiff(), new SDVariable[]{iX}).outputVariable();
}
public SDVariable softmax(SDVariable iX, int dimension) {
return new SoftMax(sameDiff(), new SDVariable[]{iX}, dimension).outputVariable();
}
public SDVariable hardTanh(SDVariable iX) {
return new HardTanh(sameDiff(), iX, false).outputVariable();
}
public SDVariable hardTanhDerivative(SDVariable iX) {
return new HardTanhDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable hardSigmoid(SDVariable in) {
return new HardSigmoid(sameDiff(), in, false).outputVariable();
}
public SDVariable sigmoid(SDVariable iX) {
return new Sigmoid(sameDiff(), iX, false).outputVariable();
}
public SDVariable sigmoidDerivative(SDVariable iX, SDVariable wrt) {
return new SigmoidDerivative(sameDiff(), iX, wrt).outputVariable();
}
public SDVariable logSigmoid(SDVariable iX) {
return new LogSigmoid(sameDiff(), iX, false).outputVariable();
}
public SDVariable powDerivative(SDVariable iX, double pow) {
return new PowDerivative(sameDiff(), iX, false, pow).outputVariable();
}
public SDVariable swish(SDVariable iX) {
return new Swish(sameDiff(), iX, false).outputVariable();
}
public SDVariable swishDerivative(SDVariable iX) {
return new SwishDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable gelu(SDVariable iX, boolean precise) {
if (precise)
return new PreciseGELU(sameDiff(), iX, false, precise).outputVariable();
else
return new GELU(sameDiff(), iX, false, precise).outputVariable();
}
public SDVariable geluDerivative(SDVariable iX, boolean precise) {
if (precise)
return new PreciseGELUDerivative(sameDiff(), iX, false, precise).outputVariable();
else
return new GELUDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable sign(SDVariable iX) {
return new Sign(sameDiff(), iX, false).outputVariable();
}
public SDVariable expandDims(SDVariable iX, int axis) {
return new ExpandDims(sameDiff(), new SDVariable[]{iX}, axis).outputVariable();
}
public SDVariable squeeze(SDVariable iX, int... axis) {
return new Squeeze(sameDiff(), iX, axis).outputVariable();
}
public SDVariable confusionMatrix(SDVariable labels, SDVariable pred, DataType dataType) {
return new ConfusionMatrix(sameDiff(), labels, pred, dataType).outputVariable();
}
public SDVariable confusionMatrix(SDVariable labels, SDVariable pred, Integer numClasses) {
return new ConfusionMatrix(sameDiff(), labels, pred, numClasses).outputVariable();
}
public SDVariable confusionMatrix(SDVariable labels, SDVariable pred, SDVariable weights) {
return new ConfusionMatrix(sameDiff(), labels, pred, weights).outputVariable();
}
public SDVariable confusionMatrix(SDVariable labels, SDVariable pred, Integer numClasses, SDVariable weights) {
return new ConfusionMatrix(sameDiff(), labels, pred, numClasses, weights).outputVariable();
}
public SDVariable matrixDeterminant(SDVariable in){
return new MatrixDeterminant(sameDiff(), in, false).outputVariable();
}
public SDVariable matrixInverse(SDVariable in){
return new MatrixInverse(sameDiff(), in, false).outputVariable();
}
public SDVariable broadcast(SDVariable iX, int... shape) {
return broadcast(iX, ArrayUtil.toLongArray(shape));
}
public SDVariable broadcast(SDVariable iX, long... shape) {
return new Broadcast(sameDiff(), iX, shape).outputVariable();
}
public SDVariable onehot(SDVariable indices, int depth, int axis, double on, double off, DataType dataType) {
return new OneHot(sameDiff(), indices, depth, axis, on, off, dataType).outputVariable();
}
public SDVariable onehot(SDVariable indices, int depth) {
return new OneHot(sameDiff(), indices, depth).outputVariable();
}
public SDVariable reciprocal(SDVariable a) {
return new Reciprocal(sameDiff(), a, false).outputVariable();
}
public SDVariable repeat(SDVariable iX, int axis) {
return new Repeat(sameDiff(), new SDVariable[]{iX}, axis).outputVariable();
}
public SDVariable stack(SDVariable[] values, int axis) {
return new Stack(sameDiff(), values, axis).outputVariable();
}
public SDVariable parallel_stack(SDVariable[] values) {
return new ParallelStack(sameDiff(), values).outputVariable();
}
public SDVariable[] unstack(SDVariable value, int axis) {
return new Unstack(sameDiff(), value, axis).outputVariables();
}
public SDVariable[] unstack(SDVariable value, int axis, int num) {
return new Unstack(sameDiff(), value, axis, num).outputVariables();
}
public SDVariable assign(SDVariable x, SDVariable y) {
return new Assign(sameDiff(), x, y).outputVariable();
}
public SDVariable assign(SDVariable x, Number num) {
return new ScalarSet(sameDiff(), x, num).outputVariable();
}
public SDVariable softsign(SDVariable iX) {
return new SoftSign(sameDiff(), iX, false).outputVariable();
}
public SDVariable softsignDerivative(SDVariable iX) {
return new SoftSignDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable softplus(SDVariable iX) {
return new SoftPlus(sameDiff(), iX, false).outputVariable();
}
public SDVariable elu(SDVariable iX) {
return new ELU(sameDiff(), iX, false).outputVariable();
}
public SDVariable eluDerivative(SDVariable iX) {
return new ELUDerivative(sameDiff(), iX, false).outputVariable();
}
public SDVariable leakyRelu(SDVariable iX, double alpha) {
return new LeakyReLU(sameDiff(), iX, false, alpha).outputVariable();
}
public SDVariable leakyReluDerivative(SDVariable iX, double cutoff) {
return new LeakyReLUDerivative(sameDiff(), iX, false, cutoff).outputVariable();
}
public SDVariable reshape(SDVariable iX, int[] shape) {
return new Reshape(sameDiff(), iX, ArrayUtil.toLongArray(shape)).outputVariable();
}
public SDVariable reshape(SDVariable iX, long[] shape) {
return new Reshape(sameDiff(), iX, shape).outputVariable();
}
public SDVariable reshape(SDVariable iX, SDVariable shape) {
return new Reshape(sameDiff(), iX, shape).outputVariable();
}
public SDVariable reverse(SDVariable x, int... dimensions) {
return new Reverse(sameDiff(), x, dimensions).outputVariable();
}
public SDVariable reverseSequence(SDVariable x, SDVariable seq_lengths, int seq_dim, int batch_dim) {
return new ReverseSequence(sameDiff(), x, seq_lengths, seq_dim, batch_dim).outputVariable();
}
public SDVariable reverseSequence(SDVariable x, SDVariable seq_lengths) {
return new ReverseSequence(sameDiff(), x, seq_lengths).outputVariable();
}
public SDVariable sequenceMask(SDVariable lengths, SDVariable maxLen, DataType dataType) {
return new SequenceMask(sameDiff(), lengths, maxLen, dataType).outputVariable();
}
public SDVariable sequenceMask(SDVariable lengths, int maxLen, DataType dataType) {
return new SequenceMask(sameDiff(), lengths, maxLen, dataType).outputVariable();
}
public SDVariable sequenceMask(SDVariable lengths, DataType dataType) {
return new SequenceMask(sameDiff(), lengths, dataType).outputVariable();
}
public SDVariable concat(int dimension, SDVariable... inputs) {
return new Concat(sameDiff(), dimension, inputs).outputVariable();
}
public SDVariable fill(SDVariable shape, DataType dataType, double value) {
return new Fill(sameDiff(), shape, dataType, value).outputVariable();
}
public SDVariable dot(SDVariable x, SDVariable y, int... dimensions) {
return new Dot(sameDiff(), x, y, dimensions).outputVariable();
}
public SDVariable[] dotBp(SDVariable in1, SDVariable in2, SDVariable grad, boolean keepDims, int... dimensions) {
return new DotBp(sameDiff(), in1, in2, grad, keepDims, dimensions).outputVariables();
}
public SDVariable cosineSimilarity(SDVariable iX, SDVariable i_y, int... dimensions) {
return new CosineSimilarity(sameDiff(), iX, i_y, dimensions).outputVariable();
}
public SDVariable cosineDistance(SDVariable ix, SDVariable iy, int... dimensions) {
return new CosineDistance(sameDiff(), ix, iy, dimensions).outputVariable();
}
public SDVariable euclideanDistance(SDVariable iX, SDVariable i_y, int... dimensions) {
return new EuclideanDistance(sameDiff(), iX, i_y, dimensions).outputVariable();
}
public SDVariable manhattanDistance(SDVariable iX, SDVariable i_y, int... dimensions) {
return new ManhattanDistance(sameDiff(), iX, i_y, dimensions).outputVariable();
}
public SDVariable hammingDistance(SDVariable ix, SDVariable iy, int... dimensions) {
return new HammingDistance(sameDiff(), ix, iy, dimensions).outputVariable();
}
public SDVariable jaccardDistance(SDVariable ix, SDVariable iy, int... dimensions) {
return new JaccardDistance(sameDiff(), ix, iy, dimensions).outputVariable();
}
public SDVariable weightedCrossEntropyWithLogits(SDVariable targets, SDVariable inputs, SDVariable weights) {
return new WeightedCrossEntropyLoss(sameDiff(), targets, inputs, weights).outputVariable();
}
public SDVariable lossL2(SDVariable var){
return new L2Loss(sameDiff(), var).outputVariable();
}
public SDVariable lossAbsoluteDifference(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new AbsoluteDifferenceLoss(sameDiff(), lossReduce, predictions, weights, label).outputVariable();
}
public SDVariable[] lossAbsoluteDifferenceBP(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new AbsoluteDifferenceLossBp(sameDiff(), lossReduce, predictions, weights, label).outputVariables();
}
public SDVariable lossCosineDistance(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, int dimension){
return new CosineDistanceLoss(sameDiff(), lossReduce, predictions, weights, label, dimension).outputVariable();
}
public SDVariable[] lossCosineDistanceBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, int dimension){
return new CosineDistanceLossBp(sameDiff(), lossReduce, predictions, weights, label, dimension).outputVariables();
}
public SDVariable lossHinge(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new HingeLoss(sameDiff(), lossReduce, predictions, weights, label).outputVariable();
}
public SDVariable[] lossHingeBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new HingeLossBp(sameDiff(), lossReduce, predictions, weights, label).outputVariables();
}
public SDVariable lossHuber(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, double delta){
return new HuberLoss(sameDiff(), lossReduce, predictions, weights, label, delta).outputVariable();
}
public SDVariable[] lossHuberBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, double delta){
return new HuberLossBp(sameDiff(), lossReduce, predictions, weights, label, delta).outputVariables();
}
public SDVariable lossLog(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, double epsilon){
return new LogLoss(sameDiff(), lossReduce, predictions, weights, label, epsilon).outputVariable();
}
public SDVariable[] lossLogBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce, double epsilon){
return new LogLossBp(sameDiff(), lossReduce, predictions, weights, label, epsilon).outputVariables();
}
public SDVariable lossLogPoisson(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new LogPoissonLoss(sameDiff(), lossReduce, predictions, weights, label).outputVariable();
}
public SDVariable[] lossLogPoissonBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new LogPoissonLossBp(sameDiff(), lossReduce, predictions, weights, label).outputVariables();
}
public SDVariable lossLogPoissonFull(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new LogPoissonLoss(sameDiff(), lossReduce, predictions, weights, label, true).outputVariable();
}
public SDVariable[] lossLogPoissonFullBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new LogPoissonLossBp(sameDiff(), lossReduce, predictions, weights, label, true).outputVariables();
}
public SDVariable lossMeanPairwiseSquaredError(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new MeanPairwiseSquaredErrorLoss(sameDiff(), lossReduce, predictions, weights, label).outputVariable();
}
public SDVariable[] lossMeanPairwiseSquaredErrorBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new MeanPairwiseSquaredErrorLossBp(sameDiff(), lossReduce, predictions, weights, label).outputVariables();
}
public SDVariable lossMeanSquaredError(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new MeanSquaredErrorLoss(sameDiff(), lossReduce, predictions, weights, label).outputVariable();
}
public SDVariable[] lossMeanSquaredErrorBp(SDVariable label, SDVariable predictions, SDVariable weights, LossReduce lossReduce){
return new MeanSquaredErrorLossBp(sameDiff(), lossReduce, predictions, weights, label).outputVariables();
}
public SDVariable lossSigmoidCrossEntropy(SDVariable labels, SDVariable logits, SDVariable weights, LossReduce lossReduce, double labelSmoothing) {
return new SigmoidCrossEntropyLoss(sameDiff(), lossReduce, logits, weights, labels, labelSmoothing).outputVariable();
}
public SDVariable[] lossSigmoidCrossEntropyBp(SDVariable labels, SDVariable logits, SDVariable weights, LossReduce lossReduce, double labelSmoothing) {
return new SigmoidCrossEntropyLossBp(sameDiff(), lossReduce, logits, weights, labels, labelSmoothing).outputVariables();
}
public SDVariable lossSoftmaxCrossEntropy(SDVariable labels, SDVariable logits, SDVariable weights, LossReduce lossReduce, double labelSmoothing) {
return new SoftmaxCrossEntropyLoss(sameDiff(), lossReduce, logits, weights, labels, labelSmoothing).outputVariable();
}
public SDVariable[] lossSoftmaxCrossEntropyBp(SDVariable labels, SDVariable logits, SDVariable weights, LossReduce lossReduce, double labelSmoothing) {
return new SoftmaxCrossEntropyLossBp(sameDiff(), lossReduce, logits, weights, labels, labelSmoothing).outputVariables();
}
public SDVariable lossSoftmaxCrossEntropyWithLogits(SDVariable labels, SDVariable logits, SDVariable weights, int classDim) {
return new SoftmaxCrossEntropyWithLogitsLoss(sameDiff(), logits, weights, labels, classDim).outputVariable();
}
public SDVariable[] lossSoftmaxCrossEntropyWithLogitsBp(SDVariable labels, SDVariable logits, SDVariable weights, int classDim) {
return new SoftmaxCrossEntropyWithLogitsLossBp(sameDiff(), logits, weights, labels, classDim).outputVariables();
}
public SDVariable lossSparseSoftmaxCrossEntropy(SDVariable logits, SDVariable labels){
return new SparseSoftmaxCrossEntropyLossWithLogits(sameDiff(), logits, labels).outputVariable();
}
public SDVariable[] lossSparseSoftmaxCrossEntropyBp(SDVariable logits, SDVariable labels){
return new SparseSoftmaxCrossEntropyLossWithLogitsBp(sameDiff(), logits, labels).outputVariables();
}
public SDVariable xwPlusB(SDVariable input, SDVariable weights, SDVariable bias) {
return new XwPlusB(sameDiff(), input, weights, bias).outputVariable();
}
public SDVariable reluLayer(SDVariable input, SDVariable weights, SDVariable bias) {
return new ReluLayer(sameDiff(), input, weights, bias).outputVariable();
}
public SDVariable mmul(SDVariable x,
SDVariable y,
MMulTranspose mMulTranspose) {
validateDifferentialFunctionsameDiff(x);
validateDifferentialFunctionsameDiff(y);
return new Mmul(sameDiff(), x, y, mMulTranspose).outputVariable();
}
public SDVariable mmul(SDVariable x,
SDVariable y) {
return mmul(x, y, MMulTranspose.allFalse());
}
public List mmulBp(SDVariable x, SDVariable y, SDVariable eps, MMulTranspose mt) {
return Arrays.asList(new MmulBp(sameDiff(), x, y, eps, mt).outputVariables());
}
public SDVariable[] batchMmul(SDVariable[] matricesA,
SDVariable[] matricesB) {
return batchMmul(matricesA, matricesB, false, false);
}
public SDVariable[] batchMmul(SDVariable[] matricesA,
SDVariable[] matricesB,
boolean transposeA,
boolean transposeB) {
return batchMmul(ArrayUtils.addAll(matricesA, matricesB), transposeA, transposeB);
}
public SDVariable[] batchMmul(SDVariable[] matrices,
boolean transposeA,
boolean transposeB) {
return new BatchMmul(sameDiff(), matrices, transposeA, transposeB).outputVariables();
}
public SDVariable tensorMmul(SDVariable x,
SDVariable y,
int[][] dimensions) {
validateDifferentialFunctionsameDiff(x);
validateDifferentialFunctionsameDiff(y);
return new TensorMmul(sameDiff(), x, y, dimensions).outputVariable();
}
public SDVariable dotProductAttention(SDVariable queries, SDVariable keys, SDVariable values, SDVariable mask, boolean scaled) {
return new DotProductAttention(sameDiff(), queries, keys, values, mask, scaled, false).outputVariable();
}
public List dotProductAttention(SDVariable queries, SDVariable keys, SDVariable values, SDVariable mask, boolean scaled, boolean withWeights) {
return Arrays.asList(new DotProductAttention(sameDiff(), queries, keys, values, mask, scaled, withWeights).outputVariables());
}
public List dotProductAttentionBp(SDVariable queries, SDVariable keys, SDVariable values, SDVariable gradient, SDVariable mask, boolean scaled) {
return Arrays.asList(new DotProductAttentionBp(sameDiff(), queries, keys, values, gradient, mask, scaled).outputVariables());
}
public SDVariable multiHeadDotProductAttention(SDVariable queries, SDVariable keys, SDVariable values, SDVariable Wq, SDVariable Wk, SDVariable Wv, SDVariable Wo, SDVariable mask, boolean scaled) {
return new MultiHeadDotProductAttention(sameDiff(), queries, keys, values, Wq, Wk, Wv, Wo, mask, scaled, false).outputVariable();
}
public List multiHeadDotProductAttention(SDVariable queries, SDVariable keys, SDVariable values,SDVariable Wq, SDVariable Wk, SDVariable Wv, SDVariable Wo, SDVariable mask, boolean scaled, boolean withWeights) {
return Arrays.asList(new MultiHeadDotProductAttention(sameDiff(), queries, keys, values, Wq, Wk, Wv, Wo, mask, scaled, withWeights).outputVariables());
}
public List multiHeadDotProductAttentionBp(SDVariable queries, SDVariable keys, SDVariable values,SDVariable Wq, SDVariable Wk, SDVariable Wv, SDVariable Wo, SDVariable gradient, SDVariable mask, boolean scaled) {
return Arrays.asList(new MultiHeadDotProductAttentionBp(sameDiff(), queries, keys, values, Wq, Wk, Wv, Wo, gradient, mask, scaled).outputVariables());
}
public SDVariable softmaxDerivative(SDVariable functionInput, SDVariable wrt, Integer dimension) {
validateDifferentialFunctionsameDiff(functionInput);
return new SoftmaxBp(sameDiff(), functionInput, wrt, dimension).outputVariable();
}
public SDVariable logSoftmax(SDVariable i_v) {
validateDifferentialFunctionsameDiff(i_v);
return new LogSoftMax(sameDiff(), i_v).outputVariable();
}
public SDVariable logSoftmaxDerivative(SDVariable arg, SDVariable wrt) {
validateDifferentialFunctionsameDiff(arg);
return new LogSoftMaxDerivative(sameDiff(), arg, wrt).outputVariable();
}
public SDVariable logSumExp(SDVariable arg, int... dimension) {
return new LogSumExp(sameDiff(), arg, dimension).outputVariable();
}
public SDVariable selu(SDVariable arg) {
validateDifferentialFunctionsameDiff(arg);
return new SELU(sameDiff(), arg, false).outputVariable();
}
public SDVariable seluDerivative(SDVariable arg) {
validateDifferentialFunctionsameDiff(arg);
return new SELUDerivative(sameDiff(), arg, false).outputVariable();
}
public SDVariable rsub(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new RSubOp(sameDiff(), differentialFunction, i_v).outputVariable();
}
public List rsubBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new RSubBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable rdiv(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new RDivOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false).outputVariable();
}
public List rdivBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new RDivBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable rdivi(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new RDivOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, true).outputVariable();
}
public SDVariable rsubi(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new RSubOp(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable add(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new AddOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false).outputVariable();
}
public SDVariable mergeAdd(SDVariable... differentialFunctions) {
for (SDVariable df : differentialFunctions)
validateDifferentialFunctionsameDiff(df);
return new MergeAddOp(sameDiff(), differentialFunctions, false).outputVariable();
}
public SDVariable mergeMax(SDVariable... differentialFunctions) {
for (SDVariable df : differentialFunctions)
validateDifferentialFunctionsameDiff(df);
return new MergeMax(sameDiff(), differentialFunctions).outputVariable();
}
public SDVariable mergeAvg(SDVariable... differentialFunctions) {
for (SDVariable df : differentialFunctions)
validateDifferentialFunctionsameDiff(df);
return new MergeAvg(sameDiff(), differentialFunctions).outputVariable();
}
public SDVariable diag(SDVariable sdVariable) {
validateDifferentialFunctionsameDiff(sdVariable);
return new Diag(sameDiff(), new SDVariable[]{sdVariable}, false).outputVariable();
}
public SDVariable diagPart(SDVariable sdVariable) {
validateDifferentialFunctionsameDiff(sdVariable);
return new DiagPart(sameDiff(), new SDVariable[]{sdVariable}, false).outputVariable();
}
public SDVariable setDiag(SDVariable in, SDVariable diag) {
return new MatrixSetDiag(sameDiff(), in, diag, false).outputVariable();
}
public SDVariable batchToSpace(SDVariable differentialFunction, int[] blocks, int[][] crops) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new BatchToSpace(sameDiff(), new SDVariable[]{differentialFunction}, blocks, crops, false)
.outputVariable();
}
public SDVariable spaceToBatch(SDVariable differentialFunction, int[] blocks, int[][] padding) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new SpaceToBatch(sameDiff(), new SDVariable[]{differentialFunction}, blocks, padding, false)
.outputVariable();
}
public SDVariable depthToSpace(SDVariable differentialFunction, int blocksSize, String dataFormat) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new DepthToSpace(sameDiff(), new SDVariable[]{differentialFunction}, blocksSize, dataFormat)
.outputVariable();
}
public SDVariable spaceToDepth(SDVariable differentialFunction, int blocksSize, String dataFormat) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new SpaceToDepth(sameDiff(), new SDVariable[]{differentialFunction}, blocksSize, dataFormat)
.outputVariable();
}
public SDVariable[] dynamicPartition(SDVariable differentialFunction, SDVariable partitions, int numPartitions) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new DynamicPartition(sameDiff(), differentialFunction, partitions, numPartitions)
.outputVariables();
}
public SDVariable[] dynamicPartitionBp(SDVariable input, SDVariable partitions, SDVariable[] grads, int numPartitions){
return new DynamicPartitionBp(sameDiff(), input, partitions, grads, numPartitions).outputVariables();
}
public SDVariable dynamicStitch(SDVariable[] indices, SDVariable[] differentialFunctions) {
for (SDVariable df : differentialFunctions)
validateDifferentialFunctionsameDiff(df);
return new DynamicStitch(sameDiff(), indices, differentialFunctions).outputVariable();
}
public SDVariable segmentMax(SDVariable data, SDVariable segmentIds){
return new SegmentMax(sameDiff(), data, segmentIds).outputVariable();
}
public SDVariable[] segmentMaxBp(SDVariable data, SDVariable segmentIds, SDVariable gradient){
return new SegmentMaxBp(sameDiff(), data, segmentIds, gradient).outputVariables();
}
public SDVariable segmentMin(SDVariable data, SDVariable segmentIds){
return new SegmentMin(sameDiff(), data, segmentIds).outputVariable();
}
public SDVariable[] segmentMinBp(SDVariable data, SDVariable segmentIds, SDVariable gradient){
return new SegmentMinBp(sameDiff(), data, segmentIds, gradient).outputVariables();
}
public SDVariable segmentMean(SDVariable data, SDVariable segmentIds){
return new SegmentMean(sameDiff(), data, segmentIds).outputVariable();
}
public SDVariable[] segmentMeanBp(SDVariable data, SDVariable segmentIds, SDVariable gradient){
return new SegmentMeanBp(sameDiff(), data, segmentIds, gradient).outputVariables();
}
public SDVariable segmentProd(SDVariable data, SDVariable segmentIds){
return new SegmentProd(sameDiff(), data, segmentIds).outputVariable();
}
public SDVariable[] segmentProdBp(SDVariable data, SDVariable segmentIds, SDVariable gradient){
return new SegmentProdBp(sameDiff(), data, segmentIds, gradient).outputVariables();
}
public SDVariable segmentSum(SDVariable data, SDVariable segmentIds){
return new SegmentSum(sameDiff(), data, segmentIds).outputVariable();
}
public SDVariable[] segmentSumBp(SDVariable data, SDVariable segmentIds, SDVariable gradient){
return new SegmentSumBp(sameDiff(), data, segmentIds, gradient).outputVariables();
}
public SDVariable unsortedSegmentMax(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentMax(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentMaxBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentMaxBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable unsortedSegmentMin(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentMin(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentMinBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentMinBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable unsortedSegmentMean(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentMean(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentMeanBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentMeanBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable unsortedSegmentProd(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentProd(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentProdBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentProdBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable unsortedSegmentSum(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentSum(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentSumBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentSumBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable unsortedSegmentSqrtN(SDVariable data, SDVariable segmentIds, int numSegments){
return new UnsortedSegmentSqrtN(sameDiff(), data, segmentIds, numSegments).outputVariable();
}
public SDVariable[] unsortedSegmentSqrtNBp(SDVariable data, SDVariable segmentIds, SDVariable gradient, int numSegments){
return new UnsortedSegmentSqrtNBp(sameDiff(), data, segmentIds, gradient, numSegments).outputVariables();
}
public SDVariable dilation2D(SDVariable df, SDVariable weights, int[] strides,
int[] rates, boolean isSameMode) {
validateDifferentialFunctionsameDiff(df);
return new Dilation2D(sameDiff(), new SDVariable[]{df, weights}, strides, rates, isSameMode, false)
.outputVariable();
}
public SDVariable shape(SDVariable df) {
validateDifferentialFunctionsameDiff(df);
return new org.nd4j.linalg.api.ops.impl.shape.Shape(sameDiff(), df, false).outputVariable();
}
public SDVariable size(SDVariable in) {
return new Size(sameDiff(), in).outputVariable();
}
public SDVariable sizeAt(SDVariable in, int dimension){
return new SizeAt(sameDiff(), in, dimension).outputVariable();
}
public SDVariable rank(SDVariable df) {
return new Rank(sameDiff(), df, false).outputVariable();
}
public SDVariable gather(SDVariable df, int[] indices, int axis) {
validateDifferentialFunctionsameDiff(df);
return new Gather(sameDiff(), df, indices, axis, false).outputVariable();
}
public SDVariable gather(SDVariable df, SDVariable indices, int axis) {
validateDifferentialFunctionsameDiff(df);
return new Gather(sameDiff(), df, indices, axis, false).outputVariable();
}
public SDVariable gatherNd(SDVariable df, SDVariable indices) {
validateDifferentialFunctionsameDiff(df);
return new GatherNd(sameDiff(), df, indices, false).outputVariable();
}
public SDVariable trace(SDVariable in){
return new Trace(sameDiff(), in).outputVariable();
}
public SDVariable cross(SDVariable a, SDVariable b) {
validateDifferentialFunctionsameDiff(a);
return new Cross(sameDiff(), new SDVariable[]{a, b}).outputVariable();
}
public SDVariable erf(SDVariable differentialFunction) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new Erf(sameDiff(), differentialFunction, false).outputVariable();
}
public SDVariable erfc(SDVariable differentialFunction) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new Erfc(sameDiff(), differentialFunction, false).outputVariable();
}
public SDVariable addi(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new AddOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, true).outputVariable();
}
public List addBp(SDVariable x, SDVariable y, SDVariable grad) {
SDVariable[] ret = new AddBpOp(sameDiff(), x, y, grad).outputVariables();
return Arrays.asList(ret);
}
public SDVariable sub(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new SubOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false).outputVariable();
}
public SDVariable squaredDifference(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new SquaredDifferenceOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false)
.outputVariable();
}
public List subBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new SubBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable subi(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new SubOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, true).outputVariable();
}
public SDVariable mul(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new MulOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false).outputVariable();
}
public List mulBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new MulBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable muli(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new MulOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, true).outputVariable();
}
public SDVariable div(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new DivOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, false).outputVariable();
}
public SDVariable truncatedDiv(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new TruncateDivOp(sameDiff(), differentialFunction, i_v, false).outputVariable();
}
public List divBp(SDVariable x, SDVariable y, SDVariable grad) {
return Arrays.asList(new DivBpOp(sameDiff(), x, y, grad).outputVariables());
}
public SDVariable divi(SDVariable differentialFunction, SDVariable i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new DivOp(sameDiff(), new SDVariable[]{differentialFunction, i_v}, true).outputVariable();
}
public SDVariable rsub(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarReverseSubtraction(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable rdiv(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarReverseDivision(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable rdivi(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarReverseDivision(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable rsubi(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarReverseSubtraction(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable add(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarAdd(sameDiff(), differentialFunction, i_v, false).outputVariable();
}
public SDVariable addi(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarAdd(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable sub(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarSubtraction(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable subi(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarSubtraction(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable mul(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarMultiplication(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable muli(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarMultiplication(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable div(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarDivision(sameDiff(), differentialFunction, i_v).outputVariable();
}
public SDVariable divi(SDVariable differentialFunction, double i_v) {
validateDifferentialFunctionsameDiff(differentialFunction);
return new ScalarDivision(sameDiff(), differentialFunction, i_v, true).outputVariable();
}
public SDVariable gt(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new GreaterThan(sameDiff(), new SDVariable[]{functionInput, functionInput1}, false).outputVariable();
}
public SDVariable lt(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new LessThan(sameDiff(), new SDVariable[]{functionInput, functionInput1}, false).outputVariable();
}
public SDVariable gti(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new GreaterThan(sameDiff(), new SDVariable[]{functionInput, functionInput1}, true).outputVariable();
}
public SDVariable lti(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new LessThan(sameDiff(), new SDVariable[]{functionInput, functionInput1}, true).outputVariable();
}
public SDVariable gte(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new GreaterThanOrEqual(sameDiff(), new SDVariable[]{functionInput, functionInput1}, false).outputVariable();
}
public SDVariable lte(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new LessThanOrEqual(sameDiff(), new SDVariable[]{functionInput, functionInput1}, false).outputVariable();
}
public SDVariable gtei(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new GreaterThanOrEqual(sameDiff(), new SDVariable[]{functionInput, functionInput1}, true).outputVariable();
}
public SDVariable ltOrEqi(SDVariable functionInput, SDVariable functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
validateDifferentialFunctionsameDiff(functionInput1);
return new LessThanOrEqual(sameDiff(), new SDVariable[]{functionInput, functionInput1}, true).outputVariable();
}
public SDVariable gt(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarGreaterThan(sameDiff(), functionInput, functionInput1, false).outputVariable();
}
public SDVariable lt(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarLessThan(sameDiff(), functionInput, functionInput1, false).outputVariable();
}
public SDVariable gti(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarGreaterThan(sameDiff(), functionInput, functionInput1, true).outputVariable();
}
public SDVariable lti(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarLessThan(sameDiff(), functionInput, functionInput1, true).outputVariable();
}
public SDVariable gte(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarGreaterThanOrEqual(sameDiff(), functionInput, functionInput1, false).outputVariable();
}
public SDVariable lte(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarLessThanOrEqual(sameDiff(), functionInput, functionInput1, false).outputVariable();
}
public SDVariable gtei(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarGreaterThanOrEqual(sameDiff(), functionInput, functionInput1, true).outputVariable();
}
public SDVariable ltei(SDVariable functionInput, double functionInput1) {
validateDifferentialFunctionsameDiff(functionInput);
return new ScalarLessThanOrEqual(sameDiff(), functionInput, functionInput1, true).outputVariable();
}
public SDVariable eq(SDVariable iX, double i_y) {
return new ScalarEquals(sameDiff(), iX, i_y).outputVariable();
}
public SDVariable eqi(SDVariable iX, double i_y) {
return new ScalarEquals(sameDiff(), iX, i_y, true).outputVariable();
}
public SDVariable isNonDecreasing(SDVariable iX) {
validateDifferentialFunctionsameDiff(iX);
return new IsNonDecreasing(sameDiff(), new SDVariable[]{iX}, false).outputVariable();
}
public SDVariable isStrictlyIncreasing(SDVariable iX) {
validateDifferentialFunctionsameDiff(iX);
return new IsStrictlyIncreasing(sameDiff(), new SDVariable[]{iX}, false).outputVariable();
}
public SDVariable isNumericTensor(SDVariable iX) {
validateDifferentialFunctionsameDiff(iX);
return new IsNumericTensor(sameDiff(), new SDVariable[]{iX}, false).outputVariable();
}
public SDVariable slice(SDVariable input, int[] begin, int[] size) {
return new Slice(sameDiff(), input, begin, size).outputVariable();
}
public SDVariable slice(SDVariable input, SDVariable begin, SDVariable size) {
return new Slice(sameDiff(), input, begin, size).outputVariable();
}
public SDVariable sliceBp(SDVariable input, SDVariable gradient, int[] begin, int[] size) {
return new SliceBp(sameDiff(), input, gradient, begin, size).outputVariable();
}
public SDVariable stridedSlice(SDVariable input, int[] begin, int[] end, int[] strides) {
return new StridedSlice(sameDiff(), input, begin, end, strides).outputVariable();
}
public SDVariable stridedSlice(SDVariable input, long[] begin, long[] end, long[] strides) {
return new StridedSlice(sameDiff(), input, begin, end, strides).outputVariable();
}
public SDVariable stridedSlice(SDVariable in, int[] begin, int[] end, int[] strides, int beginMask,
int endMask, int ellipsisMask, int newAxisMask, int shrinkAxisMask) {
return new StridedSlice(sameDiff(), in, begin, end, strides, beginMask, endMask, ellipsisMask,
newAxisMask, shrinkAxisMask).outputVariable();
}
public SDVariable stridedSlice(SDVariable in, long[] begin, long[] end, long[] strides, int beginMask,
int endMask, int ellipsisMask, int newAxisMask, int shrinkAxisMask) {
return new StridedSlice(sameDiff(), in, begin, end, strides, beginMask, endMask, ellipsisMask,
newAxisMask, shrinkAxisMask).outputVariable();
}
public SDVariable stridedSliceBp(SDVariable in, SDVariable grad, long[] begin, long[] end, long[] strides, int beginMask,
int endMask, int ellipsisMask, int newAxisMask, int shrinkAxisMask) {
return new StridedSliceBp(sameDiff(), in, grad, begin, end, strides, beginMask, endMask, ellipsisMask,
newAxisMask, shrinkAxisMask).outputVariable();
}
public SDVariable stridedSliceBp(SDVariable in, SDVariable grad, SDVariable begin, SDVariable end, SDVariable strides, int beginMask,
int endMask, int ellipsisMask, int newAxisMask, int shrinkAxisMask) {
return new StridedSliceBp(sameDiff(), in, grad, begin, end, strides, beginMask, endMask, ellipsisMask,
newAxisMask, shrinkAxisMask).outputVariable();
}
public SDVariable scatterAdd(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterAdd(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterSub(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterSub(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterMul(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterMul(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterDiv(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterDiv(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterMax(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterMax(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterMin(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterMin(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable scatterUpdate(SDVariable ref, SDVariable indices, SDVariable updates) {
return new ScatterUpdate(sameDiff(), ref, indices, updates).outputVariable();
}
public SDVariable merge(SDVariable... inputs){
return new Merge(sameDiff(), inputs).outputVariable();
}
public SDVariable[] switchOp(SDVariable input, SDVariable predicate){
return new Switch(sameDiff(), input, predicate).outputVariables();
}
public void validateDifferentialFunctionsameDiff(
SDVariable function) {
Preconditions.checkState(function != null, "Passed in function was null.");
Preconditions.checkState(function.getSameDiff() == sameDiff);
Preconditions.checkState(function.getSameDiff() == this.getSameDiff(),
"Function applications must be contained " +
"in same sameDiff. The left %s must match this function %s", function, this);
Preconditions.checkState(sameDiff == this.getSameDiff(), "Function applications must be " +
"contained in same sameDiff. The left %s must match this function ", function, this);
}
public void validateDifferentialFunctionGraph(SDVariable function) {
Preconditions.checkState(function.getSameDiff() == this.getSameDiff(),
"Function applications must be contained in same graph. The left %s must match this function %s",
function, this);
}
/**
* @param func
* @param input
* @return
*/
public SDVariable doRepeat(SDVariable func,
SDVariable input) {
validateDifferentialFunctionsameDiff(func);
validateDifferentialFunctionsameDiff(input);
// FIXME: int cast!
return tile(func, ArrayUtil.toInts(input.getShape()));
}
public String toString() {
return "DifferentialFunctionFactory{methodNames=" + methodNames + "}";
}
}