torch.copysign¶
- torch.copysign(input, other, *, out=None) Tensor¶
- Create a new floating-point tensor with the magnitude of - inputand the sign of- other, elementwise.- Supports broadcasting to a common shape, and integer and float inputs. - Parameters
- Keyword Arguments
- out (Tensor, optional) – the output tensor. 
 - Example: - >>> a = torch.randn(5) >>> a tensor([-1.2557, -0.0026, -0.5387, 0.4740, -0.9244]) >>> torch.copysign(a, 1) tensor([1.2557, 0.0026, 0.5387, 0.4740, 0.9244]) >>> a = torch.randn(4, 4) >>> a tensor([[ 0.7079, 0.2778, -1.0249, 0.5719], [-0.0059, -0.2600, -0.4475, -1.3948], [ 0.3667, -0.9567, -2.5757, -0.1751], [ 0.2046, -0.0742, 0.2998, -0.1054]]) >>> b = torch.randn(4) tensor([ 0.2373, 0.3120, 0.3190, -1.1128]) >>> torch.copysign(a, b) tensor([[ 0.7079, 0.2778, 1.0249, -0.5719], [ 0.0059, 0.2600, 0.4475, -1.3948], [ 0.3667, 0.9567, 2.5757, -0.1751], [ 0.2046, 0.0742, 0.2998, -0.1054]]) >>> a = torch.tensor([1.]) >>> b = torch.tensor([-0.]) >>> torch.copysign(a, b) tensor([-1.]) - Note - copysign handles signed zeros. If the other argument has a negative zero (-0), the corresponding output value will be negative.