device_batchnorm_forward.hpp Source File#
device_batchnorm_forward.hpp
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Definition convolution_backward_data_specialization.hpp:8
std::unique_ptr< DeviceBatchNormFwd< XDataType, YDataType, AccDataType, ScaleDataType, BiasDataType, MeanVarDataType, YElementwiseOp, Rank, NumBatchNormReduceDim > > DeviceBatchNormFwdPtr
Definition device_batchnorm_forward.hpp:60
Definition convolution_backward_data_specialization.hpp:7
Definition ck.hpp:268
BaseOperator()=default
Definition device_batchnorm_forward.hpp:26
virtual std::unique_ptr< BaseInvoker > MakeInvokerPointer()=0
virtual std::unique_ptr< BaseArgument > MakeArgumentPointer(const std::array< index_t, Rank > xyLengths, const std::array< index_t, Rank > xStrides, const std::array< index_t, Rank > yStrides, const std::array< int, NumBatchNormReduceDim > reduceDims, const std::array< index_t, Rank - NumBatchNormReduceDim > bnScaleBiasMeanVarLengths, const std::array< index_t, Rank - NumBatchNormReduceDim > bnScaleStrides, const std::array< index_t, Rank - NumBatchNormReduceDim > bnBiasStrides, const std::array< index_t, Rank - NumBatchNormReduceDim > bnMeanVarStrides, const void *p_x, const void *bnScale, const void *bnBias, double epsilon, const YElementwiseOp y_elementwise_op, void *p_y, void *resultSaveMean, void *resultSaveInvVariance, double exponentialAverageFactor, void *resultRunningMean, void *resultRunningVariance)=0