[WIP] SVD (#16)
* - new SVD constructor - OrthogonalDistribution now uses SVD custom op Signed-off-by: raver119 <raver119@gmail.com> * shapes fixed Signed-off-by: raver119 <raver119@gmail.com>master
parent
029a69a835
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5a4d2e8b31
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@ -47,6 +47,20 @@ public class Svd extends DynamicCustomOp {
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public Svd(){ }
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public Svd(INDArray input, boolean full_matrices, INDArray s, INDArray u, INDArray v) {
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inputArguments.add(input);
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fullUV = full_matrices;
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computeUv = true;
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switchNum = DEFAULT_SWITCHNUM;
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outputArguments.add(s);
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outputArguments.add(u);
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outputArguments.add(v);
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addIArgument(ArrayUtil.fromBoolean(fullUV), ArrayUtil.fromBoolean(computeUv), switchNum);
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}
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public Svd(SameDiff sd, SDVariable input, boolean fullUV, boolean computeUv){
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this(sd, input, fullUV, computeUv, DEFAULT_SWITCHNUM);
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}
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@ -21,6 +21,7 @@ import lombok.val;
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import org.apache.commons.math3.exception.NumberIsTooLargeException;
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import org.apache.commons.math3.exception.OutOfRangeException;
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import org.nd4j.linalg.api.ndarray.INDArray;
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import org.nd4j.linalg.api.ops.impl.transforms.custom.Svd;
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import org.nd4j.linalg.api.ops.random.impl.GaussianDistribution;
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import org.nd4j.linalg.api.rng.distribution.BaseDistribution;
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import org.nd4j.linalg.factory.Nd4j;
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@ -231,21 +232,20 @@ public class OrthogonalDistribution extends BaseDistribution {
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val flatShape = new long[]{numRows, numCols};
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val flatRng = Nd4j.getExecutioner().exec(new GaussianDistribution(Nd4j.createUninitialized(dtype, flatShape, Nd4j.order()), 0.0, 1.0), random);
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long m = flatRng.rows();
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long n = flatRng.columns();
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val m = flatRng.rows();
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val n = flatRng.columns();
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val s = Nd4j.create(dtype, m < n ? m : n);
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val u = m < n ? Nd4j.create(dtype, m, n) : Nd4j.create(dtype, m, m);
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val u = Nd4j.create(dtype, m, m);
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val v = Nd4j.create(dtype, new long[] {n, n}, 'f');
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Nd4j.getBlasWrapper().lapack().gesvd(flatRng, s, u, v);
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Nd4j.exec(new Svd(flatRng, true, s, u, v));
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// FIXME: int cast
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if (gains == null) {
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if (u.rows() == numRows && u.columns() == numCols) {
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return v.get(NDArrayIndex.interval(0, numRows), NDArrayIndex.interval(0, numCols)).mul(gain).reshape(shape);
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} else {
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if (u.rows() >= numRows && u.columns() >= numCols) {
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return u.get(NDArrayIndex.interval(0, numRows), NDArrayIndex.interval(0, numCols)).mul(gain).reshape(shape);
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} else {
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return v.get(NDArrayIndex.interval(0, numRows), NDArrayIndex.interval(0, numCols)).mul(gain).reshape(shape);
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}
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} else {
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throw new UnsupportedOperationException();
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@ -598,6 +598,10 @@ public class Nd4jCpu extends org.nd4j.nativeblas.Nd4jCpuHelper {
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public native @Cast("bool") boolean isCPU();
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public native int blasMajorVersion();
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public native int blasMinorVersion();
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public native int blasPatchVersion();
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public native @StdVector Pair capabilities();
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}
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@ -12281,6 +12285,7 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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// #include <ops/declarable/headers/datatypes.h>
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// #include <ops/declarable/headers/third_party.h>
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// #include <ops/declarable/headers/tests.h>
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// #include <ops/declarable/headers/kernels.h>
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// #include <ops/declarable/headers/BarnesHutTsne.h>
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// #include <dll.h>
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// #include <helpers/shape.h>
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@ -21398,12 +21403,12 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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private native void allocate();
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public native ShapeList calculateOutputShape(ShapeList inputShape, @ByRef Context block);
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}
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// #endif
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// #endif
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/**
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* Local response normalization implementation as TF.
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* input: 4D array
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*
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*
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* T args:
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*
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* 0: bias
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@ -21411,8 +21416,8 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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* 2: beta
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*
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* Int arg: depth - optional local radius
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*
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* output - 4D array
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*
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* output - 4D array
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*/
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// #if NOT_EXCLUDED(OP_lrn)
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@Namespace("nd4j::ops") public static class lrn extends DeclarableOp {
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@ -21434,10 +21439,10 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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/**
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* Local response normalization - backprop variant.
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* input:
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* input:
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* 0 - 4D array of data
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* 1 - epsilon - 4D array of approximation
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*
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*
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* T args:
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*
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* 0: bias
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@ -21467,21 +21472,21 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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// #endif
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/**
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* Batch normalization implementation.
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* Batch normalization implementation.
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* Reference: https://arxiv.org/abs/1502.03167v3
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*
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*
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* Expected arguments:
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* input: input array (any number of dimensions)
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* mean:
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* variance:
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* gamma:
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* beta:
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*
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*
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* Int args:
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* 0: apply scale
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* 1: apply offset
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*
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*
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*
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*
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* T args:
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* 0: epsilon
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*/
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@ -21502,27 +21507,10 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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public native ShapeList calculateOutputShape(ShapeList inputShape, @ByRef Context block);
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}
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// #endif
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// #if NOT_EXCLUDED(OP_batchnorm_new)
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@Namespace("nd4j::ops") public static class batchnorm_new extends DeclarableCustomOp {
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static { Loader.load(); }
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/** Pointer cast constructor. Invokes {@link Pointer#Pointer(Pointer)}. */
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public batchnorm_new(Pointer p) { super(p); }
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/** Native array allocator. Access with {@link Pointer#position(long)}. */
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public batchnorm_new(long size) { super((Pointer)null); allocateArray(size); }
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private native void allocateArray(long size);
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@Override public batchnorm_new position(long position) {
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return (batchnorm_new)super.position(position);
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}
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public batchnorm_new() { super((Pointer)null); allocate(); }
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private native void allocate();
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public native ShapeList calculateOutputShape(ShapeList inputShape, @ByRef Context block);
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}
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// #endif
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/**
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* back prop in batch normalization
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*
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*
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* Expected arguments:
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* input: input array (any number of dimensions)
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* mean:
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@ -21530,11 +21518,11 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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* gamma: optional
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* beta: optional
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* dLdOut: next epsilon
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*
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*
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* Int args:
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* 0: apply scale
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* 1: apply offset
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*
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* 1: apply offset
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*
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* T args:
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* 0: epsilon
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*
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@ -21542,8 +21530,8 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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* dL/dInput
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* dL/dMean
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* dL/dVariance
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* dL/dGamma
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* dL/dBeta
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* dL/dGamma, optional
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* dL/dBeta, optional
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*/
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// #if NOT_EXCLUDED(OP_batchnorm)
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@Namespace("nd4j::ops") public static class batchnorm_bp extends DeclarableCustomOp {
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@ -21570,7 +21558,7 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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* x: parameters, any shape
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* y: gradients. same shape as x
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* lr: optional, learning rate
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*
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*
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* T args:
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* 0: optional, learning rate
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*/
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@ -21589,25 +21577,25 @@ public static final int TAD_THRESHOLD = TAD_THRESHOLD();
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public apply_sgd() { super((Pointer)null); allocate(); }
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private native void allocate();
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public native ShapeList calculateOutputShape(ShapeList inputShape, @ByRef Context block);
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}
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}
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// #endif
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/**
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* This operation performs batch normalization of layer, it is based on following article http://arxiv.org/abs/1502.03167.
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* Expected arguments:
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* x: input 4D array of shape [bS,iH,iW,iD] (data format = NHWC) or [bS,iD,iH,iW] (data format = NCHW), where
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* bS - batch size
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* iH - input height
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* iW - input width
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* bS - batch size
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* iH - input height
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* iW - input width
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* iD - input depth (or number of channels)
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* scale: 1D input array of scale factors, shape [iD]
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* offset: 1D input array of offsets (shifts), shape [iD]
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* mean: 1D input array of population mean used for inference, shape [iD], this array is required only if isTraining = false
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* variance: 1D input array of population mean used for inference, shape [iD], this array is required only if isTraining = false
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*
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*
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* T input arguments:
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* 0: epsilon, it is optional argument, default value is 0.001, this is small number to be added to the variance of x
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*
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*
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* integer input arguments:
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* 0: dataFormat, may have two values: zero -> NHWC, unity -> NCHW
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* 1: isTraining, may have two values: zero -> inference, unity -> training
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@ -1375,6 +1375,24 @@ public class RandomTests extends BaseNd4jTest {
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log.info("Array: {}", array);
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}
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@Test
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public void testOrthogonalDistribution2() {
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val dist = new OrthogonalDistribution(1.0);
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val array = dist.sample(new int[] {9, 6});
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log.info("Array: {}", array);
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}
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@Test
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public void testOrthogonalDistribution3() {
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val dist = new OrthogonalDistribution(1.0);
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val array = dist.sample(new int[] {9, 9});
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log.info("Array: {}", array);
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}
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@Test
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public void reproducabilityTest(){
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