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I'm trying to minimize some input relative to some target by running it through several backward pass iterations and updating the input at each step. The first pass runs successfully but I get the following error on the second pass: RuntimeError: element 0 of variables tuple is volatile

This code snippet demonstrates the problem

import torch
from torch.autograd import Variable
import torch.nn as nn

inp = Variable(torch.Tensor([1]), requires_grad=True)
target = Variable(torch.Tensor([3]))

loss_fn = nn.MSELoss()

for i in range(2):
    loss = loss_fn(inp, target)
    loss.backward()
    gradient = inp.grad
    inp = inp - inp.grad * 0.01

When I inspect the value of inp, before it is reassigned on the last line, inp.volatile => False and inp.requires_grad => True but after it is reassigned those switch to True and False, respectively. Why does being a volatile variable prevent the second backprop run?

1 Answer 1

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You must zero out the gradient before each update like this:

inp.grad.data.zero_()

But in your code every time you update the gradient you are creating another Variable object, so you must update entire history like this:

import torch
from torch.autograd import Variable
import torch.nn as nn

inp_hist = []
inp = Variable(torch.Tensor([1]), requires_grad=True)
target = Variable(torch.Tensor([3]))

loss_fn = nn.MSELoss()

for i in range(2):
    loss = loss_fn(inp, target)
    loss.backward()
    gradient = inp.grad
    inp_hist.append(inp)
    inp = inp - inp.grad * 0.01
    for inp in inp_hist:
        inp.grad.data.zero_()

But this way you will compute the gradient for all previous inputs you have created in the history(and it's bad, it's a wast of everything), a correct implementation looks like this:

import torch
from torch.autograd import Variable
import torch.nn as nn
inp = Variable(torch.Tensor([1]), requires_grad=True)
target = Variable(torch.Tensor([3]))
loss_fn = nn.MSELoss()
for i in range(2):
    loss = loss_fn(inp, target)
    loss.backward()
    gradient = inp.grad
    inp.data = inp.data - inp.grad.data * 0.01
    inp.grad.data.zero_()
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  • 1
    In your second to last line do you mean inp.data = ... instead of inp.grad.data? So this is essentially an in place modification of the same Variable whereas the previous example creates new Variable's each time? In the first example, if i create a new Variable each iteration, why would the gradients from previous variables be updated?
    – jvans
    Oct 1, 2017 at 16:46
  • Thank you :) that was a mistake :D Oct 1, 2017 at 17:10

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