pytorchのコードを見ていたところ、
class Conv1d(_ConvNd):
def __init__(
self,
in_channels: int,
out_channels: int,
kernel_size: _size_1_t,
stride: _size_1_t = 1,
padding: _size_1_t = 0,
dilation: _size_1_t = 1,
groups: int = 1,
bias: bool = True,
padding_mode: str = 'zeros' # TODO: refine this type
):
# we create new variables below to make mypy happy since kernel_size has
# type Union[int, Tuple[int]] and kernel_size_ has type Tuple[int]
kernel_size_ = _single(kernel_size)
stride_ = _single(stride)
padding_ = _single(padding)
dilation_ = _single(dilation)
super(Conv1d, self).__init__(
in_channels, out_channels, kernel_size_, stride_, padding_, dilation_,
False, _single(0), groups, bias, padding_mode)
と、記載があり、
super(Conv1d, self).__init__(
in_channels, out_channels, kernel_size_, stride_, padding_, dilation_,
False, _single(0), groups, bias, padding_mode)
のsuperが何をしているのかがいまいち理解できません。
自分自身を継承?このコードの意味を教えてください。