torch.set_default_device¶
- torch.set_default_device(device)[source]¶
- Sets the default - torch.Tensorto be allocated on- device. This does not affect factory function calls which are called with an explicit- deviceargument. Factory calls will be performed as if they were passed- deviceas an argument.- To only temporarily change the default device instead of setting it globally, use - with torch.device(device):instead.- The default device is initially - cpu. If you set the default tensor device to another device (e.g.,- cuda) without a device index, tensors will be allocated on whatever the current device for the device type, even after- torch.cuda.set_device()is called.- Warning - This function imposes a slight performance cost on every Python call to the torch API (not just factory functions). If this is causing problems for you, please comment on https://github.com/pytorch/pytorch/issues/92701 - Note - This doesn’t affect functions that create tensors that share the same memory as the input, like: - torch.from_numpy()and- torch.frombuffer()- Parameters
- device (device or string) – the device to set as default 
 - Example: - >>> torch.tensor([1.2, 3]).device device(type='cpu') >>> torch.set_default_device('cuda') # current device is 0 >>> torch.tensor([1.2, 3]).device device(type='cuda', index=0) >>> torch.set_default_device('cuda:1') >>> torch.tensor([1.2, 3]).device device(type='cuda', index=1)