I have to stack some my own layers on different kinds of pytorch models with different devices.
E.g. A is a cuda model and B is a cpu model (but I don't know it before I get the device type). Then the new models are C and D respectively, where
class NewModule(torch.nn.Module): def __init__(self, base): super(NewModule, self).__init__() self.base = base self.extra = my_layer() # e.g. torch.nn.Linear() def forward(self,x): y = self.base(x) z = self.extra(y) return z ... C = NewModule(A) # cuda D = NewModule(B) # cpu
However I must move
extra to the same device, i.e.
extra of C are cuda models and D's are cpu models. So I tried this
def __init__(self, base): super(NewModule, self).__init__() self.base = base self.extra = my_layer().to(base.device)
Unfortunately, there's no attribute
What should I do to get the device type of
base? Or any other method to make
extra to be on the same device automaticly even the structure of
base is unspecific?