mindspore.nn.AvgPool1d

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class mindspore.nn.AvgPool1d(kernel_size=1, stride=1, pad_mode='valid', padding=0, ceil_mode=False, count_include_pad=True)[source]

Applies a 1D average pooling over an input Tensor which can be regarded as a composition of 1D input planes.

Typically the input is of shape \((N_{in}, C_{in}, L_{in})\), AvgPool1d outputs regional average in the \((L_{in})\)-dimension. Given kernel_size \(l_{ker}\) and stride \(s_0\), the operation is as follows:

\[\text{output}(N_i, C_j, l) = \frac{1}{l_{ker}} \sum_{n=0}^{l_{ker}-1} \text{input}(N_i, C_j, s_0 \times l + n)\]

Note

This interface currently does not support Atlas A2 training series products.

Parameters
  • kernel_size (int) – The size of kernel window used to take the average value, Default: 1 .

  • stride (int) – The distance of kernel moving, an int number that represents the width of movement is strides, Default: 1 .

  • pad_mode (str, optional) –

    Specifies the padding mode with a padding value of 0. It can be set to: "same" , "valid" or "pad" . Default: "valid" .

    • "same": Pad the input at the begin and end so that the shape of input and output are the same when stride is set to 1. The amount of padding to is calculated by the operator internally. If the amount is even, it is uniformly distributed around the input, if it is odd, the excess padding is goes to the right side. If this mode is set, padding must be 0.

    • "valid": No padding is applied to the input, and the output returns the maximum possible length. Extra pixels that could not complete a full stride will be discarded. If this mode is set, padding must be 0.

    • "pad": Pad the input with a specified amount. In this mode, the amount of padding at the begin and end is determined by the padding parameter. If this mode is set, padding must be greater than or equal to 0.

  • padding (Union(int, tuple[int], list[int])) – Pooling padding value, only "pad" mode can be set to non-zero. Default: 0 . padding can only be an integer or a tuple/list containing a single integer, in which case padding times or padding[0] times are padded on both sides of the input.

  • ceil_mode (bool) – If True , use ceil to compute the output shape instead of floor. Default: False .

  • count_include_pad (bool) – If True , averaging calculation will include the zero-padding. Default: True .

Inputs:
  • x (Tensor) - Tensor of shape \((N, C_{in}, L_{in})\) or \((C_{in}, L_{in})\).

Outputs:

Tensor of shape \((N, C_{out}, L_{out})\) or \((C_{out}, L_{out})\).

If pad_mode is in pad mode, the output shape calculation formula is as follows:

\[L_{out} = \left\lfloor \frac{L_{in} + 2 \times \text{padding} - \text{kernel_size}}{\text{stride}} + 1\right\rfloor\]
Raises
  • TypeError – If kernel_size or stride is not an int.

  • ValueError – If pad_mode is not "valid" , "same" or "pad" with not case sensitive.

  • ValueError – If kernel_size or strides is less than 1.

  • ValueError – If length of padding tuple/list is not 1.

  • ValueError – If length of shape of x is not equal to 2 or 3.

  • ValueError – If padding is non-zero when pad_mode is not "pad".

Supported Platforms:

Ascend GPU CPU

Examples

>>> import mindspore as ms
>>> import numpy as np
>>> pool = ms.nn.AvgPool1d(kernel_size=6, stride=1)
>>> x = ms.Tensor(np.random.randint(0, 10, [1, 3, 6]), ms.float32)
>>> output = pool(x)
>>> result = output.shape
>>> print(result)
(1, 3, 1)
>>> pool2 = ms.nn.AvgPool1d(4, stride=1, ceil_mode=True, pad_mode="pad", padding=2)
>>> x1 = ms.ops.randn(6, 6, 8)
>>> output = pool2(x1)
>>> print(output.shape)
(6, 6, 9)