torch.fmax¶
- torch.fmax(input, other, *, out=None) Tensor¶
- Computes the element-wise maximum of - inputand- other.- This is like - torch.maximum()except it handles NaNs differently: if exactly one of the two elements being compared is a NaN then the non-NaN element is taken as the maximum. Only if both elements are NaN is NaN propagated.- This function is a wrapper around C++’s - std::fmaxand is similar to NumPy’s- fmaxfunction.- Supports broadcasting to a common shape, type promotion, and integer and floating-point inputs. - Parameters
- Keyword Arguments
- out (Tensor, optional) – the output tensor. 
 - Example: - >>> a = torch.tensor([9.7, float('nan'), 3.1, float('nan')]) >>> b = torch.tensor([-2.2, 0.5, float('nan'), float('nan')]) >>> torch.fmax(a, b) tensor([9.7000, 0.5000, 3.1000, nan])