What is the correct way to perform gradient clipping in pytorch?

I have an exploding gradients problem.

  • 8
    @pierrom Thanks. I found that thread myself. Thought that asking here would save everyone who comes after me and googles for a quick answer the hassle of reading through all the discussion (which I haven't finished yet myself), and just getting a quick answer, stackoverflow style. Going to forums to find answers reminds me of 1990. If no one else posts the answer before me, then I will once I find it.
    – Gulzar
    Commented Feb 15, 2019 at 20:26

4 Answers 4


A more complete example from here:

loss, hidden = model(data, hidden, targets)

torch.nn.utils.clip_grad_norm_(model.parameters(), args.clip)
  • 3
    Why is this more complete? I see the more votes, but don't really understand why this is better. Can you explain please?
    – Gulzar
    Commented Oct 28, 2020 at 11:26
  • 21
    This simply follows a popular pattern, where one can insert torch.nn.utils.clip_grad_norm_(model.parameters(), args.clip) between the loss.backward() and optimizer.step()
    – Rahul
    Commented Oct 29, 2020 at 15:33
  • 16
    what is args.clip? Commented Dec 3, 2021 at 11:45
  • 1
    does it matter if you call opt.zero_grad() before the forward pass or not? My guess is that the sooner it's zeroed out perhaps the sooner MEM freeing happens? Commented Jan 21, 2022 at 20:02
  • 6
    @FarhangAmaji the max_norm (clipping threshold) value from the args (perhaps from argparse module)
    – vdi
    Commented Jan 28, 2022 at 6:45

clip_grad_norm (which is actually deprecated in favor of clip_grad_norm_ following the more consistent syntax of a trailing _ when in-place modification is performed) clips the norm of the overall gradient by concatenating all parameters passed to the function, as can be seen from the documentation:

The norm is computed over all gradients together, as if they were concatenated into a single vector. Gradients are modified in-place.

From your example it looks like that you want clip_grad_value_ instead which has a similar syntax and also modifies the gradients in-place:

clip_grad_value_(model.parameters(), clip_value)

Another option is to register a backward hook. This takes the current gradient as an input and may return a tensor which will be used in-place of the previous gradient, i.e. modifying it. This hook is called each time after a gradient has been computed, i.e. there's no need for manually clipping once the hook has been registered:

for p in model.parameters():
    p.register_hook(lambda grad: torch.clamp(grad, -clip_value, clip_value))
  • 21
    It is worth mentioning here that these two approaches are NOT equivalent. The latter approach with registering a hook is definitely what most people want. The difference between these two approaches is that the latter approach clips gradients DURING backpropagation and the first approach clips gradients AFTER the entire backpropagation has taken place.
    – c0mr4t
    Commented Feb 2, 2022 at 23:30
  • 7
    And why do we want to clip the gradients DURING backpropagation not AFTER it? Trying to understand why the latter is more desirable than the first.
    – NikSp
    Commented Jan 12, 2023 at 17:02
  • 11
    @NikSp If you clip during backpropagation then the clipped gradients propagate to the upstream layers. Otherwise, the raw gradients propagate upstream and this might saturate the gradients for those upstream layers (if clipping would be performed after backpropagation). If the gradients of all layers saturate at the threshold (clip) value this might prevent convergence.
    – a_guest
    Commented Jan 31, 2023 at 20:48
  • 1
    Could you expand on how to make sure the latter does l2 norm clipping. It currently looks like it is simply clipping the absolute value of individual elements. Also does register_hook work only on gradients? Because I would have expected something like param.grad. TIA.
    – sachinruk
    Commented Apr 5, 2023 at 11:59
  • While registering a hook is a fine option, it doesn't seem like the hook in the answer is applying a norm clipping. It's clipping the individual elements rather than the norm of the elements of the gradient. Commented Jul 27, 2023 at 4:35

Reading through the forum discussion gave this:

clipping_value = 1 # arbitrary value of your choosing
torch.nn.utils.clip_grad_norm(model.parameters(), clipping_value)

I'm sure there is more depth to it than only this code snippet.


And if you are using Automatic Mixed Precision (AMP), you need to do a bit more before clipping as AMP scales the gradient:

loss = model(data, targets)

# Unscales the gradients of optimizer's assigned params in-place

# Since the gradients of optimizer's assigned params are unscaled, clips as usual:
torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm)

# optimizer's gradients are already unscaled, so scaler.step does not unscale them,
# although it still skips optimizer.step() if the gradients contain infs or NaNs.

# Updates the scale for next iteration.

Reference: https://pytorch.org/docs/stable/notes/amp_examples.html#gradient-clipping

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