Class Variance
- java.lang.Object
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- org.nd4j.autodiff.functions.DifferentialFunction
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- org.nd4j.linalg.api.ops.BaseOp
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- org.nd4j.linalg.api.ops.BaseReduceOp
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- org.nd4j.linalg.api.ops.impl.summarystats.Variance
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- Direct Known Subclasses:
StandardDeviation
public class Variance extends BaseReduceOp
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Field Summary
Fields Modifier and Type Field Description protected doublebiasprotected booleanbiasCorrectedprotected doublemean-
Fields inherited from class org.nd4j.linalg.api.ops.BaseReduceOp
dimensionVariable, isComplex, isEmptyReduce, keepDims
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Fields inherited from class org.nd4j.linalg.api.ops.BaseOp
dimensionz, extraArgz, x, xVertexId, y, yVertexId, z, zVertexId
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Fields inherited from class org.nd4j.autodiff.functions.DifferentialFunction
dimensions, extraArgs, inPlace, ownName, ownNameSetWithDefault, sameDiff, scalarValue
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Constructor Summary
Constructors Constructor Description Variance()Variance(boolean biasCorrected)Variance(double mean)Variance(double mean, double bias)Variance(double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, double mean)Variance(SameDiff sameDiff, double mean, double bias)Variance(SameDiff sameDiff, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, boolean biasCorrected, boolean keepDims, int[] dimensions)Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean)Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, double mean)Variance(SameDiff sameDiff, SDVariable i_v, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean, double bias, boolean biasCorrected)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean, double bias)Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean, double bias, boolean biasCorrected)Variance(INDArray x, boolean biasCorrected, boolean keepDims, int... dimensions)Variance(INDArray x, boolean keepDims, double mean, double bias, boolean biasCorrected, int... dimensions)Variance(INDArray x, boolean keepDims, double mean, double bias, int... dimensions)Variance(INDArray x, boolean keepDims, double mean, int... dimensions)Variance(INDArray x, boolean biasCorrected, int... dimensions)Variance(INDArray x, double mean, double bias, boolean biasCorrected, int... dimensions)Variance(INDArray x, double mean, double bias, int... dimensions)Variance(INDArray x, double mean, int... dimensions)Variance(INDArray x, int... dimension)Variance(INDArray x, INDArray z, boolean biasCorrected, boolean keepDims, int... dimensions)Variance(INDArray x, INDArray z, boolean biasCorrected, int... dimensions)Variance(INDArray x, INDArray y, double mean, double bias, boolean biasCorrected, int... dimensions)Variance(INDArray x, INDArray y, double mean, double bias, int... dimensions)Variance(INDArray x, INDArray y, double mean, int... dimensions)Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean)Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean, double bias)Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean, double bias, boolean biasCorrected)Variance(INDArray x, INDArray y, INDArray z, double mean, double bias, boolean biasCorrected, int... dimensions)Variance(INDArray x, INDArray y, INDArray z, double mean, double bias, int... dimensions)Variance(INDArray x, INDArray y, INDArray z, double mean, int... dimensions)
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Method Summary
All Methods Instance Methods Concrete Methods Modifier and Type Method Description List<DataType>calculateOutputDataTypes(List<DataType> dataTypes)Calculate the data types for the output arrays.List<LongShapeDescriptor>calculateOutputShape()Calculate the output shape for this opList<LongShapeDescriptor>calculateOutputShape(OpContext oc)List<SDVariable>doDiff(List<SDVariable> grad)The actual implementation for automatic differentiation.Op.TypegetOpType()booleanisBiasCorrected()INDArraynoOp()Returns the no op version of the input Basically when a reduce can't happen (eg: sum(0) on a row vector) you have a no op state for a given reduction.StringonnxName()The opName of this function in onnxStringopName()The name of the opintopNum()The number of the op (mainly for old legacy XYZ ops likeOp)Op.TypeopType()The type of the opDataTyperesultType()This method returns datatype for result array wrt given inputsDataTyperesultType(OpContext oc)voidsetBiasCorrected(boolean biasCorrected)StringtensorflowName()The opName of this function tensorflowbooleanvalidateDataTypes(OpContext oc)-
Methods inherited from class org.nd4j.linalg.api.ops.BaseReduceOp
configureWithSameDiff, hasReductionIndices, initFromOnnx, initFromTensorFlow, isComplexAccumulation, isKeepDims, setDimensions, setPropertiesForFunction
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Methods inherited from class org.nd4j.linalg.api.ops.BaseOp
clearArrays, computeVariables, defineDimensions, dimensions, equals, extraArgs, extraArgsBuff, extraArgsDataBuff, getFinalResult, getInputArgument, getNumOutputs, getOpType, hashCode, outputVariables, setX, setY, setZ, toCustomOp, toString, x, y, z
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Methods inherited from class org.nd4j.autodiff.functions.DifferentialFunction
arg, arg, argNames, args, attributeAdaptersForFunction, configFieldName, diff, dup, getBooleanFromProperty, getDoubleValueFromProperty, getIntValueFromProperty, getLongValueFromProperty, getStringFromProperty, getValue, isConfigProperties, larg, mappingsForFunction, onnxNames, outputs, outputVariable, outputVariables, outputVariablesNames, propertiesForFunction, rarg, replaceArg, setInstanceId, setValueFor, tensorflowNames
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Methods inherited from class java.lang.Object
clone, finalize, getClass, notify, notifyAll, wait, wait, wait
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Methods inherited from interface org.nd4j.linalg.api.ops.Op
clearArrays, extraArgs, extraArgsBuff, extraArgsDataBuff, setExtraArgs, setX, setY, setZ, toCustomOp, x, y, z
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Methods inherited from interface org.nd4j.linalg.api.ops.ReduceOp
dimensions, getFinalResult
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Constructor Detail
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean)
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Variance
public Variance(double mean)
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Variance
public Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean)
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Variance
public Variance(INDArray x, double mean, int... dimensions)
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Variance
public Variance(INDArray x, boolean keepDims, double mean, int... dimensions)
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Variance
public Variance(SameDiff sameDiff, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean, double bias)
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Variance
public Variance(double mean, double bias)
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Variance
public Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean, double bias)
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Variance
public Variance(INDArray x, double mean, double bias, int... dimensions)
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Variance
public Variance(INDArray x, boolean keepDims, double mean, double bias, int... dimensions)
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Variance
public Variance(INDArray x, INDArray y, INDArray z, double mean, double bias, int... dimensions)
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Variance
public Variance(SameDiff sameDiff, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean, double bias)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, int[] dimensions, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, int[] dimensions, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, boolean keepDims, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable dimensions, boolean keepDims, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(double mean, double bias, boolean biasCorrected)
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Variance
public Variance(INDArray x, INDArray y, INDArray z, boolean keepDims, int[] dimensions, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(INDArray x, double mean, double bias, boolean biasCorrected, int... dimensions)
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Variance
public Variance(INDArray x, boolean keepDims, double mean, double bias, boolean biasCorrected, int... dimensions)
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Variance
public Variance(INDArray x, INDArray y, double mean, double bias, boolean biasCorrected, int... dimensions)
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Variance
public Variance(INDArray x, INDArray y, INDArray z, double mean, double bias, boolean biasCorrected, int... dimensions)
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Variance
public Variance(SameDiff sameDiff, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, SDVariable i_v2, SDVariable dimensions, double mean, double bias, boolean biasCorrected)
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Variance
public Variance(SameDiff sameDiff, SDVariable i_v, boolean biasCorrected, boolean keepDims, int[] dimensions)
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Variance
public Variance()
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Variance
public Variance(boolean biasCorrected)
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Variance
public Variance(INDArray x, int... dimension)
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Variance
public Variance(INDArray x, boolean biasCorrected, boolean keepDims, int... dimensions)
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Variance
public Variance(INDArray x, boolean biasCorrected, int... dimensions)
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Method Detail
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noOp
public INDArray noOp()
Description copied from interface:ReduceOpReturns the no op version of the input Basically when a reduce can't happen (eg: sum(0) on a row vector) you have a no op state for a given reduction. For most accumulations, this should return x but certain transformations should return say: the absolute value- Specified by:
noOpin interfaceReduceOp- Overrides:
noOpin classBaseReduceOp- Returns:
- the no op version of the input
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opNum
public int opNum()
Description copied from class:DifferentialFunctionThe number of the op (mainly for old legacy XYZ ops likeOp)- Specified by:
opNumin interfaceOp- Overrides:
opNumin classDifferentialFunction- Returns:
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opName
public String opName()
Description copied from class:DifferentialFunctionThe name of the op- Specified by:
opNamein interfaceOp- Overrides:
opNamein classDifferentialFunction- Returns:
- the opName of this operation
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isBiasCorrected
public boolean isBiasCorrected()
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setBiasCorrected
public void setBiasCorrected(boolean biasCorrected)
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doDiff
public List<SDVariable> doDiff(List<SDVariable> grad)
Description copied from class:DifferentialFunctionThe actual implementation for automatic differentiation.- Specified by:
doDiffin classDifferentialFunction- Returns:
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onnxName
public String onnxName()
Description copied from class:DifferentialFunctionThe opName of this function in onnx
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tensorflowName
public String tensorflowName()
Description copied from class:DifferentialFunctionThe opName of this function tensorflow- Overrides:
tensorflowNamein classBaseOp- Returns:
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getOpType
public Op.Type getOpType()
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resultType
public DataType resultType()
Description copied from interface:ReduceOpThis method returns datatype for result array wrt given inputs- Returns:
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validateDataTypes
public boolean validateDataTypes(OpContext oc)
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calculateOutputShape
public List<LongShapeDescriptor> calculateOutputShape()
Description copied from class:DifferentialFunctionCalculate the output shape for this op- Specified by:
calculateOutputShapein classBaseReduceOp- Returns:
- List of output shape descriptors
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calculateOutputShape
public List<LongShapeDescriptor> calculateOutputShape(OpContext oc)
- Overrides:
calculateOutputShapein classDifferentialFunction
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opType
public Op.Type opType()
Description copied from class:DifferentialFunctionThe type of the op- Overrides:
opTypein classDifferentialFunction- Returns:
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calculateOutputDataTypes
public List<DataType> calculateOutputDataTypes(List<DataType> dataTypes)
Description copied from class:DifferentialFunctionCalculate the data types for the output arrays. Though datatypes can also be inferred fromDifferentialFunction.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.- Overrides:
calculateOutputDataTypesin classDifferentialFunction- Parameters:
dataTypes- The data types of the inputs- Returns:
- The data types of the outputs
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