torch.func API Reference ======================== .. currentmodule:: torch.func .. automodule:: torch.func Function Transforms ------------------- .. autosummary:: :toctree: generated :nosignatures: vmap grad grad_and_value vjp jvp linearize jacrev jacfwd hessian functionalize Utilities for working with torch.nn.Modules ------------------------------------------- In general, you can transform over a function that calls a ``torch.nn.Module``. For example, the following is an example of computing a jacobian of a function that takes three values and returns three values: .. code-block:: python model = torch.nn.Linear(3, 3) def f(x): return model(x) x = torch.randn(3) jacobian = jacrev(f)(x) assert jacobian.shape == (3, 3) However, if you want to do something like compute a jacobian over the parameters of the model, then there needs to be a way to construct a function where the parameters are the inputs to the function. That's what :func:`functional_call` is for: it accepts an nn.Module, the transformed ``parameters``, and the inputs to the Module's forward pass. It returns the value of running the Module's forward pass with the replaced parameters. Here's how we would compute the Jacobian over the parameters .. code-block:: python model = torch.nn.Linear(3, 3) def f(params, x): return torch.func.functional_call(model, params, x) x = torch.randn(3) jacobian = jacrev(f)(dict(model.named_parameters()), x) .. autosummary:: :toctree: generated :nosignatures: functional_call stack_module_state replace_all_batch_norm_modules_ If you're looking for information on fixing Batch Norm modules, please follow the guidance here .. toctree:: :maxdepth: 1 func.batch_norm