:param padding: size of the paddings added to the input on both sides of its
spatial dimensions. Only zero-padding is supported. Default: 0
:param dilation: dilation of the 2D convolution operation. Default: 1
:param groups: number of groups into which the input and output channels are divided, so as to perform a ``grouped convolution``. When ``groups`` is not 1,
:param groups: number of groups into which the input and output channels are divided,
so as to perform a ``grouped convolution``. When ``groups`` is not 1,
``in_channels`` and ``out_channels`` must be divisible by ``groups``,
and the shape of weight should be `(groups, out_channel // groups,
in_channels // groups, height, width)`.
...
...
@@ -141,7 +144,6 @@ def conv2d(
pad_h,pad_w=expand_hw(padding)
dilate_h,dilate_w=expand_hw(dilation)
Sparse=builtin.Convolution.Sparse
sparse_type="DENSE"ifgroups==1else"GROUP"
op=builtin.Convolution(
stride_h=stride_h,
...
...
@@ -185,7 +187,8 @@ def conv_transpose2d(
:param padding: size of the paddings added to the input on both sides of its
spatial dimensions. Only zero-padding is supported. Default: 0
:param dilation: dilation of the 2D convolution operation. Default: 1
:param groups: number of groups into which the input and output channels are divided, so as to perform a ``grouped convolution``. When ``groups`` is not 1,
:param groups: number of groups into which the input and output channels are divided,
so as to perform a ``grouped convolution``. When ``groups`` is not 1,
``in_channels`` and ``out_channels`` must be divisible by groups,
and the shape of weight should be `(groups, out_channel // groups,
:param padding: size of the paddings added to the input on both sides of its
spatial dimensions. Only zero-padding is supported. Default: 0
:param dilation: dilation of the 1D convolution operation. Default: 1
:param groups: number of groups into which the input and output channels are divided, so as to perform a "grouped convolution". When ``groups`` is not 1,
:param groups: number of groups into which the input and output channels are divided,
so as to perform a "grouped convolution". When ``groups`` is not 1,
``in_channels`` and ``out_channels`` must be divisible by ``groups``,
and there would be an extra dimension at the beginning of the weight's
shape. Specifically, the shape of weight would be `(groups,
...
...
@@ -250,15 +258,16 @@ class Conv2d(_ConvNd):
In general, output feature maps' shapes can be inferred as follows:
When `groups == in_channels` and `out_channels == K * in_channels`,
where K is a positive integer, this operation is also known as depthwise
...
...
@@ -277,7 +286,8 @@ class Conv2d(_ConvNd):
:param padding: size of the paddings added to the input on both sides of its
spatial dimensions. Only zero-padding is supported. Default: 0
:param dilation: dilation of the 2D convolution operation. Default: 1
:param groups: number of groups into which the input and output channels are divided, so as to perform a "grouped convolution". When ``groups`` is not 1,
:param groups: number of groups into which the input and output channels are divided,
so as to perform a "grouped convolution". When ``groups`` is not 1,
``in_channels`` and ``out_channels`` must be divisible by ``groups``,
and there would be an extra dimension at the beginning of the weight's
shape. Specifically, the shape of weight would be `(groups,
...
...
@@ -406,7 +416,8 @@ class ConvTranspose2d(_ConvNd):
:param padding: size of the paddings added to the input on both sides of its
spatial dimensions. Only zero-padding is supported. Default: 0
:param dilation: dilation of the 2D convolution operation. Default: 1
:param groups: number of groups into which the input and output channels are divided, so as to perform a "grouped convolution". When ``groups`` is not 1,
:param groups: number of groups into which the input and output channels are divided,
so as to perform a "grouped convolution". When ``groups`` is not 1,
``in_channels`` and ``out_channels`` must be divisible by ``groups``,
and there would be an extra dimension at the beginning of the weight's
shape. Specifically, the shape of weight would be ``(groups,