捷徑

torch.quantized_max_pool1d

torch.quantized_max_pool1d(input, kernel_size, stride=[], padding=0, dilation=1, ceil_mode=False) Tensor

將一維最大池化應用於由多個輸入平面組成的量化張量。

參數
  • input (Tensor) – 量化張量

  • kernel_size (list of int) – 滑動視窗的大小

  • stride (list of int, optional) – 滑動視窗的步幅

  • padding (list of int, optional) – 要添加到兩側的填充,必須 >= 0 且 <= kernel_size / 2

  • dilation (list of int, optional) – 滑動視窗內元素之間的步幅,必須 > 0。預設值為 1

  • ceil_mode (bool, optional) – 如果為 True,將使用 ceil 而不是 floor 來計算輸出形狀。預設值為 False。

返回

應用 max_pool1d 的量化張量。

返回類型

Tensor

範例

>>> qx = torch.quantize_per_tensor(torch.rand(2, 2), 1.5, 3, torch.quint8)
>>> torch.quantized_max_pool1d(qx, [2])
tensor([[0.0000],
        [1.5000]], size=(2, 1), dtype=torch.quint8,
    quantization_scheme=torch.per_tensor_affine, scale=1.5, zero_point=3)

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