I am new to pytorch and I am working on DQN for a timeseries using Reinforcement Learning and I needed to have a complex observation of timeseries and some sensor readings, so I merged two neural networks and I am not sure if that's what is ruining my loss.backward or something else. I know there is multiple questions with the same title but none worked for me, maybe I am missing something.
First of all, this is my network:

class DQN(nn.Module):
  def __init__(self, list_shape, score_shape, n_actions):
    super(DQN, self).__init__()

    self.FeatureList =  nn.Sequential(
            nn.Conv1d(list_shape[1], 32, kernel_size=8, stride=4),
            nn.Conv1d(32, 64, kernel_size=4, stride=2),
            nn.Conv1d(64, 64, kernel_size=3, stride=1),
    self.FeatureScore = nn.Sequential(
            nn.Linear(score_shape[1], 512),
            nn.Linear(512, 128)
    t_list_test = torch.zeros(list_shape)
    t_score_test = torch.zeros(score_shape)
    merge_shape = self.FeatureList(t_list_test).shape[1] + self.FeatureScore(t_score_test).shape[1]
    self.FinalNN =  nn.Sequential(
            nn.Linear(merge_shape, 512),
            nn.Linear(512, 128),
            nn.Linear(128, n_actions),
  def forward(self, list, score):
    listOut = self.FeatureList(list)
    scoreOut = self.FeatureScore(score)
    MergedTensor = torch.cat((listOut,scoreOut),1)
    return self.FinalNN(MergedTensor)

I have a function called calc_loss, and at its end it return the MSE loss as below

  return nn.MSELoss()(state_action_values, expected_state_action_values)

and the print shows float32 and float64 respectively.
I get the error when I run the loss.backward() as below

optimizer = optim.Adam(net.parameters(), lr=LEARNING_RATE)

for i in range(50):
  loss_v = calc_loss(sample(obs, 500, 200, 64), net, tgt_net)

and the print output is as below:
tensor(1887.4831, dtype=torch.float64, grad_fn=)

Update 1:
I tried using a simpler model, yet the same issue, when I tried to cast the inputs to Float, I got an error:

RuntimeError: expected scalar type Double but found Float

What makes the model expects double ?

Update 2:
I tried to add the below line on top after the torch import but same issue of RuntimeError: Found dtype Double but expected Float

>>> torch.set_default_tensor_type(torch.FloatTensor)

But when I used the DoubleTensor I got: RuntimeError: Input type (torch.FloatTensor) and weight type (torch.DoubleTensor) should be the same or input should be a MKLDNN tensor and weight is a dense tensor

  • How about convert expected_state_action_values to float?
    – joe32140
    Jan 7, 2022 at 4:01
  • Hi @joe32140, I tried to cast both the input of the MSE to float but got same error.
    – Ramzy
    Jan 7, 2022 at 9:59
  • Maybe try to unify the model and data to double. assuming that your input is double, by adding self.double() at the last line of your DQN init. Or covert your data to float before feeding into the model.
    – joe32140
    Jan 7, 2022 at 18:05
  • Thanks Joe, I am working on a way to unify the model which would have some drawbacks regarding the observation representation to the agent. regarding the input, I already made sure its float with no nans, inf or -inf. yet there might be some and I couldn't debug it.
    – Ramzy
    Jan 7, 2022 at 18:39

1 Answer 1


The issue wasn't in the input to the network but the criterion of the MSELoss, so it worked fine after casting the criterion to float as below

return nn.MSELoss()(state_action_values.float(), expected_state_action_values.float())

I decided to leave the answer for beginners like me who might be stuck and didn't expect to check the datatype of the loss criterion

  • work for me, at the loss function call place
    – sprite

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