jax.lax.conv_with_general_padding#
- jax.lax.conv_with_general_padding(lhs, rhs, window_strides, padding, lhs_dilation, rhs_dilation, precision=None, preferred_element_type=None)[source]#
Convenience wrapper around conv_general_dilated.
- Parameters:
lhs (Array) – a rank n+2 dimensional input array.
rhs (Array) – a rank n+2 dimensional array of kernel weights.
window_strides (Sequence[int]) – a sequence of n integers, representing the inter-window strides.
padding (str | Sequence[tuple[int, int]]) – either the string ‘SAME’, the string ‘VALID’, or a sequence of n (low, high) integer pairs that give the padding to apply before and after each spatial dimension.
lhs_dilation (Sequence[int] | None) – None, or a sequence of n integers, giving the dilation factor to apply in each spatial dimension of lhs. LHS dilation is also known as transposed convolution.
rhs_dilation (Sequence[int] | None) – None, or a sequence of n integers, giving the dilation factor to apply in each spatial dimension of rhs. RHS dilation is also known as atrous convolution.
precision (lax.PrecisionLike | None) – Optional. Either
None
, which means the default precision for the backend, aPrecision
enum value (Precision.DEFAULT
,Precision.HIGH
orPrecision.HIGHEST
) or a tuple of twoPrecision
enums indicating precision oflhs`
andrhs
.preferred_element_type (DTypeLike | None | None) – Optional. Either
None
, which means the default accumulation type for the input types, or a datatype, indicating to accumulate results to and return a result with that datatype.
- Returns:
An array containing the convolution result.
- Return type: