In PyTorch, the Tensor class has a grad_fn attribute. This references the operation used to obtain the tensor: for instance, if a = b + 2, a.grad_fn will be AddBackward0. But what does "reference" mean exactly?

Inspecting AddBackward0 using inspect.getmro(type(a.grad_fn)) will state that the only base class of AddBackward0 is object. Additionally, the source code for this class (and in fact, any other class which might be encountered in grad_fn) is nowhere to be found in the source code!

All of this leads me to the following questions:

  1. What precisely is stored in grad_fn and how is it called during back-propagation?
  2. How come the objects that get stored in grad_fn do not have some sort of common super class, and why is there no source code for them on GitHub?

1 Answer 1


grad_fn is a function "handle", giving access to the applicable gradient function. The gradient at the given point is a coefficient for adjusting weights during back-propagation.

"Handle" is a general term for an object descriptor, designed to give appropriate access to the object. For instance, when you open a file, open returns a file handle. When you instantiate a class, the __init__ function returns a handle to the created instance. The handle contains references (usually memory addresses) to the data and functions for the item in question.

It appears as the generic object class because it's from the underlying implementation in another language, such that it does not map exactly to the Python function type. PyTorch handles the inter-language call and return. This hand-off is part of the pre-complied (shared-object) run-time system.

Is that enough to clarify what you see?

  • Pretty much, but where can I find more info on this "handle" business?
    – David Cian
    Feb 27, 2021 at 19:37
  • I updated with a generic description. If that's not enough "more", then you'll need to research the specific type of handle you want. If you're asking for how PyTorch implements access to the gradient function, you'll probably have to read some papers on its formation, or contact the PyTorch support team.
    – Prune
    Feb 27, 2021 at 19:43
  • @Prune Do you have a practical example how one might use this grad_fn in a real use training context? I came across this functionality as a surprise when I found out torch.arange(1.0, 4.0, requires_grad=True) and torch.arange(3.0, requires_grad=True) + 1.0 do not return the same objects. TIA.
    – kfmfe04
    Nov 16, 2021 at 7:02
  • @kfmfe04 This is a separate question; please post it as such.
    – Prune
    Nov 17, 2021 at 17:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.