public class LogNormalDistribution extends BaseRandomOp
dataType, shapedimensionz, extraArgz, x, xVertexId, y, yVertexId, z, zVertexIddimensions, extraArgs, inPlace, ownName, ownNameSetWithDefault, sameDiff, scalarValue| Constructor and Description |
|---|
LogNormalDistribution() |
LogNormalDistribution(double mean,
double stddev,
DataType datatype,
long... shape) |
LogNormalDistribution(@NonNull INDArray z)
This op fills Z with random values within -1.0..0..1.0
|
LogNormalDistribution(@NonNull INDArray z,
double stddev)
This op fills Z with random values within stddev..0..stddev
|
LogNormalDistribution(@NonNull INDArray z,
double mean,
double stddev)
This op fills Z with random values within stddev..mean..stddev boundaries
|
LogNormalDistribution(@NonNull INDArray z,
@NonNull INDArray means,
double stddev) |
LogNormalDistribution(SameDiff sd,
double mean,
double stdev,
DataType dataType,
long... shape) |
LogNormalDistribution(SameDiff sd,
double mean,
double stdev,
long... shape) |
| Modifier and Type | Method and Description |
|---|---|
List<DataType> |
calculateOutputDataTypes(List<DataType> inputDataTypes)
Calculate the data types for the output arrays.
|
List<LongShapeDescriptor> |
calculateOutputShape()
Calculate the output shape for this op
|
List<LongShapeDescriptor> |
calculateOutputShape(OpContext oc) |
List<SDVariable> |
doDiff(List<SDVariable> f1)
The actual implementation for automatic differentiation.
|
boolean |
isTripleArgRngOp() |
String |
onnxName()
The opName of this function in onnx
|
String |
opName()
The name of the op
|
int |
opNum()
The number of the op (mainly for old legacy XYZ ops
like
Op) |
void |
setZ(INDArray z)
set z (the solution ndarray)
|
String |
tensorflowName()
The opName of this function tensorflow
|
isInPlace, opTypeclearArrays, defineDimensions, dimensions, equals, extraArgs, extraArgsBuff, extraArgsDataBuff, getFinalResult, getInputArgument, getNumOutputs, getOpType, hashCode, initFromOnnx, initFromTensorFlow, outputVariables, setX, setY, toCustomOp, toString, x, y, zarg, arg, argNames, args, attributeAdaptersForFunction, configFieldName, diff, dup, getValue, isConfigProperties, larg, mappingsForFunction, onnxNames, outputs, outputVariable, outputVariables, outputVariablesNames, propertiesForFunction, rarg, replaceArg, setInstanceId, setPropertiesForFunction, setValueFor, tensorflowNamesclone, finalize, getClass, notify, notifyAll, wait, wait, waitclearArrays, extraArgs, extraArgsBuff, extraArgsDataBuff, setExtraArgs, setX, setY, toCustomOp, x, y, zpublic LogNormalDistribution()
public LogNormalDistribution(SameDiff sd, double mean, double stdev, long... shape)
public LogNormalDistribution(SameDiff sd, double mean, double stdev, DataType dataType, long... shape)
public LogNormalDistribution(double mean,
double stddev,
DataType datatype,
long... shape)
public LogNormalDistribution(@NonNull
@NonNull INDArray z,
double mean,
double stddev)
z - mean - stddev - public LogNormalDistribution(@NonNull
@NonNull INDArray z,
@NonNull
@NonNull INDArray means,
double stddev)
public LogNormalDistribution(@NonNull
@NonNull INDArray z)
z - public LogNormalDistribution(@NonNull
@NonNull INDArray z,
double stddev)
z - public String onnxName()
DifferentialFunctionpublic String tensorflowName()
DifferentialFunctiontensorflowName in class BaseOppublic int opNum()
DifferentialFunctionOp)opNum in interface OpopNum in class DifferentialFunctionpublic String opName()
DifferentialFunctionopName in interface OpopName in class DifferentialFunctionpublic void setZ(INDArray z)
Oppublic List<LongShapeDescriptor> calculateOutputShape(OpContext oc)
calculateOutputShape in class DifferentialFunctionpublic List<LongShapeDescriptor> calculateOutputShape()
DifferentialFunctioncalculateOutputShape in class BaseRandomOppublic List<SDVariable> doDiff(List<SDVariable> f1)
DifferentialFunctiondoDiff in class DifferentialFunctionpublic List<DataType> calculateOutputDataTypes(List<DataType> inputDataTypes)
DifferentialFunctionDifferentialFunction.calculateOutputShape(), this method differs in that it does not
require the input arrays to be populated.
This is important as it allows us to do greedy datatype inference for the entire net - even if arrays are not
available.calculateOutputDataTypes in class BaseRandomOpinputDataTypes - The data types of the inputspublic boolean isTripleArgRngOp()
isTripleArgRngOp in class BaseRandomOpCopyright © 2021. All rights reserved.