I wanted to update the parameters of a model manually with pytorch. I made a super simple standard sequential model (full code here) but whenever I try to train my model it does not train unless I create the actual variables explicitly (code for model variables explicitly). So with the sequential model the code looks as follow:

mdl_sgd = torch.nn.Sequential( torch.nn.Linear(D_sgd,1,bias=False) )
...
for i in range(nb_iter):
    # Forward pass: compute predicted Y using operations on Variables
    batch_xs, batch_ys = get_batch2(X,Y,M,dtype) # [M, D], [M, 1]
    ## FORWARD PASS
    y_pred = mdl_sgd.forward(X)
    ## LOSS
    loss = (1/N)*(y_pred - batch_ys).pow(2).sum()
    ## Manually zero the gradients after updating weights
    mdl_sgd.zero_grad()
    ## BACKARD PASS
    loss.backward() # Use autograd to compute the backward pass. Now w will have gradients
    ## SGD update
    for W in mdl_sgd.parameters():
        #print(W.grad.data)
        W.data = W.data - eta*W.grad.data

when I train it it seems that nothing happens. I've tried many things to make this work like wrapping it in a class and putting explicit require_grads=True or change the locations where I make the zero out the gradients etc but nothing seems to work. What I really want/need is to be able to explicitly be able to do the update rule myself (not with optimum). Not sure if thats the reason it doesn't work but the following does work for some reason:

X = poly_kernel_matrix(x_true,Degree_mdl) # maps to the feature space of the model
X = Variable(torch.FloatTensor(X).type(dtype), requires_grad=False)
Y = Variable(torch.FloatTensor(Y).type(dtype), requires_grad=False)
w_init=torch.randn(D_sgd,1).type(dtype)
W = Variable( w_init, requires_grad=True)
...
for i in range(nb_iter):
        # Forward pass: compute predicted Y using operations on Variables
        batch_xs, batch_ys = get_batch2(X,Y,M,dtype) # [M, D], [M, 1]
        ## FORWARD PASS
        #y_pred = mdl_sgd.forward(X)
        y_pred = batch_xs.mm(W)
        ## LOSS
        loss = (1/N)*(y_pred - batch_ys).pow(2).sum()
        ## BACKARD PASS
        loss.backward() # Use autograd to compute the backward pass. Now w will have gradients
        ## SGD update
        W.data = W.data - eta*W.grad.data
        ## Manually zero the gradients after updating weights
        #mdl_sgd.zero_grad()
        W.grad.data.zero_()

the reason I know this is because the plot of the regression lines look sensible:

enter image description here

while when I use the torch.nn.Sequential I get:

enter image description here

I am sure its a really newbie question but I am not sure why I can't update the parameters. Does someone know why? I want to be able to update the parameters manually (however I want) and in this case I decided to use SGD to see if I could even update the parameters.


Note I also tried subclassing modules and registering params but it didn't work either. This is the class I built:

class regression_NN(torch.nn.Module):

def __init__(self,w_init):
    """
    """
    super(type(self), self).__init__()
    # mdl
    #self.W = Variable(w_init, requires_grad=True)
    #self.W = torch.nn.Parameter( Variable(w_init, requires_grad=True) )
    #self.W = torch.nn.Parameter( w_init ) 
    self.W = torch.nn.Parameter( w_init,requires_grad=True )
    #self.mod_list = torch.nn.ModuleList([self.W])

def forward(self, x):
    """
    """
    y_pred = x.mm(self.W)
    return y_pred

All code is:

https://github.com/brando90/simple_regression

I'm relatively new at pytorch so I might have many bad practice...you can correct them if u want but Im mostly concerned that my paremters are not updating even when I try to explicitly register them in a class that inherits from torch.nn.Module.


I also linked to the question from the pytorch official forum: https://discuss.pytorch.org/t/how-does-one-make-sure-that-the-parameters-are-update-manually-in-pytorch-using-modules/6076

  • not sure why the above doesn't work but W.data = W.data - eta*W.grad.data should work but W = W - eta*W.grad does not. Though I am not sure why that is the case... – Charlie Parker Aug 11 '17 at 23:40
  • best solution I know so far is to use W.data.copy_(new_value.data) – Charlie Parker Aug 12 '17 at 2:25

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