I have 2 numpy arrays, which I convert into tensors to use the TensorDataset object.

```
import torch.utils.data as data_utils
X = np.zeros((100,30))
Y = np.zeros((100,30))
train = data_utils.TensorDataset(torch.from_numpy(X).double(), torch.from_numpy(Y))
train_loader = data_utils.DataLoader(train, batch_size=50, shuffle=True)
```

when I do:

```
for batch_idx, (data, target) in enumerate(train_loader):
data, target = Variable(data), Variable(target)
optimizer.zero_grad()
output = model(data) # error occurs here
```

I get the fallowing error:

TypeError: addmm_ received an invalid combination of arguments - got (int, int, torch.DoubleTensor, torch.FloatTensor), but expected one of: [...]

* (float beta, float alpha, torch.DoubleTensor mat1, torch.DoubleTensor mat2) didn't match because some of the arguments have invalid types: (int, int, torch.DoubleTensor, torch.FloatTensor)

* (float beta, float alpha, torch.SparseDoubleTensor mat1, torch.DoubleTensor mat2) didn't match because some of the arguments have invalid types: (int, int, torch.DoubleTensor, torch.FloatTensor)

The last error comes from:

output.addmm_(0, 1, input, weight.t())

As you see in my code I tried converting the tensor by using .double() - but this did not work. Why is he casting one array into a FloatTensor object and the other into a DoubleTensor? Any ideas?