torch.nn.functional.conv3d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1) Tensor

Applies a 3D convolution over an input image composed of several input planes.

This operator supports TensorFloat32.

See Conv3d for details and output shape.


In some circumstances when given tensors on a CUDA device and using CuDNN, this operator may select a nondeterministic algorithm to increase performance. If this is undesirable, you can try to make the operation deterministic (potentially at a performance cost) by setting torch.backends.cudnn.deterministic = True. See Reproducibility for more information.


This operator supports complex data types i.e. complex32, complex64, complex128.

  • input – input tensor of shape (minibatch,in_channels,iT,iH,iW)(\text{minibatch} , \text{in\_channels} , iT , iH , iW)

  • weight – filters of shape (out_channels,in_channelsgroups,kT,kH,kW)(\text{out\_channels} , \frac{\text{in\_channels}}{\text{groups}} , kT , kH , kW)

  • bias – optional bias tensor of shape (out_channels)(\text{out\_channels}). Default: None

  • stride – the stride of the convolving kernel. Can be a single number or a tuple (sT, sH, sW). Default: 1

  • padding

    implicit paddings on both sides of the input. Can be a string {‘valid’, ‘same’}, single number or a tuple (padT, padH, padW). Default: 0 padding='valid' is the same as no padding. padding='same' pads the input so the output has the same shape as the input. However, this mode doesn’t support any stride values other than 1.


    For padding='same', if the weight is even-length and dilation is odd in any dimension, a full pad() operation may be needed internally. Lowering performance.

  • dilation – the spacing between kernel elements. Can be a single number or a tuple (dT, dH, dW). Default: 1

  • groups – split input into groups, in_channels\text{in\_channels} should be divisible by the number of groups. Default: 1


>>> filters = torch.randn(33, 16, 3, 3, 3)
>>> inputs = torch.randn(20, 16, 50, 10, 20)
>>> F.conv3d(inputs, filters)


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