This PR:
- Updates autograd.Function.forward docs to reflect how you either
define a forward with ctx or a separate forward and setup_context
- Updates the "Extending Autograd" docs to suggest the usage of
autograd.Function with separate forward and setup_context. This should
be the default because there is a low barrier to go from this to
an autograd.Function that is fully supported by functorch transforms.
- Adds a new "Extending torch.func with autograd.Function" doc that
explains how to use autograd.Function with torch.func. It also
explains how to use generate_vmap_rule and how to manually write a
vmap staticmethod.
While writing this, I noticed that the implementation of
setup_context staticmethod/generate_vmap_rule/vmap staticmethod are a
bit inconsistent with the other method/attributes on autograd.Function:
- https://github.com/pytorch/pytorch/issues/91451
- I'm happy to fix those if we think it is a problem, either in this PR
or a followup (this PR is getting long, I want some initial docs
out that I can point early adopters at, and fixing the problems in the
future isn't really BC-breaking).
Test Plan:
- view docs preview
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91452
Approved by: https://github.com/soulitzer
Docs copy-pasted from functorch docs with minor adjustments. We are
keeping the functorch docs for BC, though that's up for debate -- we
could also just say "see .. in torch.func" for some, but not all doc
pages (we still want to keep around any examples that use
make_functional so that users can tell what the difference between that
and the new functional_call is).
Test Plan:
- docs preview
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91319
Approved by: https://github.com/samdow
This PR moves the definitions for:
* `sym_int`
* `sym_ceil` (used only for `sym_int`)
* `sym_floor` (used only for `sym_int`)
* `sym_float`
from `torch/fx/experimental/symbolic_shapes.py` to `torch/__init__.py`, where `SymInt` and `SymFloat` are already defined.
This removes the need for several in-line imports, and enables proper JIT script gating for #91318. I'm very open to doing this in a better way!
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91317
Approved by: https://github.com/ezyang, https://github.com/anijain2305
Fixes#91107
Added `softmax` docs in
- `pytorch/torch/_tensor_docs.py`
- `pytorch/torch/_torch_docs.py `
- `pytorch/docs/XXX.rst` files. Here XXX represents all those files where I made the change
Although I have added `softmax` in `docs` directory, I was not sure which files/folders required the edits so there could be issues
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91292
Approved by: https://github.com/lezcano
Fixes#91107
Added `softmax` docs in
- `pytorch/torch/_tensor_docs.py`
- `pytorch/torch/_torch_docs.py `
- `pytorch/docs/XXX.rst` files. Here XXX represents all those files where I made the change
Although I have added `softmax` in `docs` directory, I was not sure which files/folders required the edits so there could be issues
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91292
Approved by: https://github.com/lezcano
Essentially the same change as #67946, except that the default is to disallow reduced precision reductions in `BFloat16` GEMMs (for now). If performance is severely regressed, we can change the default, but this option appears to be necessary to pass some `addmm` `BFloat16` tests on H100.
CC @ptrblck @ngimel
Pull Request resolved: https://github.com/pytorch/pytorch/pull/89172
Approved by: https://github.com/ngimel
This PR sets up torch.func and populates it with the following APIs:
- grad
- grad_and_value
- vjp
- jvp
- jacrev
- jacfwd
- hessian
- functionalize
- vmap
It also renames all instances of `functorch` in the APIs for those docs
to `torch.func`.
We rewrite the `__module__` fields on some of the above APIs so that the
APIs fit PyTorch's public api definition.
- For an API to be public, it must have a `__module__` that points to a
public PyTorch submodule. However, `torch._functorch.eager_transforms`
is not public due to the leading underscore.
- The solution is to rewrite `__module__` to point to where the API is
exposed (torch.func). This is what both Numpy and JAX do for their
APIs.
- h/t pmeier in
https://github.com/pytorch/pytorch/issues/90284#issuecomment-1348595246
for idea and code
- The helper function, `exposed_in`, is confined to
torch._functorch/utils for now because we're not completely sure if
this should be the long-term solution.
Implication for functorch.* APIs:
- functorch.grad is the same object as torch.func.grad
- this means that the functorch.grad docstring is actually the
torch.func.grad docstring and will refer to torch.func instead of
functorch.
- This isn't really a problem since the plan on record is to deprecate
functorch in favor of torch.func. We can fix these if we really want,
but I'm not sure if a solution is worth maintaining.
Test Plan:
- view docs preview
Future:
- vmap should actually just be torch.vmap. This requires an extra step
where I need to test internal callsites, so, I'm separating it into a
different PR.
- make_fx should be in torch.func to be consistent with `import
functorch`. This one is a bit more of a headache to deal with w.r.t.
public api, so going to deal with it separately.
- beef up func.rst with everything else currently on the functorch
documention website. func.rst is currently just an empty shell.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/91016
Approved by: https://github.com/samdow
`torch.compile` can be used either as decorator or to optimize model directly, for example:
```
@torch.compile
def foo(x):
return torch.sin(x) + x.max()
```
or
```
mod = torch.nn.ReLU()
optimized_mod = torch.compile(mod, mode="max-autotune")
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/89607
Approved by: https://github.com/soumith
Preparation for the next PR in this stack: #89559.
I replaced
- `self.assertTrue(torch.equal(...))` with `self.assertEqual(..., rtol=0, atol=0, exact_device=True)`,
- the same for `self.assertFalse(...)` with `self.assertNotEqual(...)`, and
- `assert torch.equal(...)` with `torch.testing.assert_close(..., rtol=0, atol=0)` (note that we don't need to set `check_device=True` here since that is the default).
There were a few instances where the result of `torch.equal` is used directly. In that cases I've replaced with `(... == ...).all().item()` while sometimes also dropping the `.item()` depending on the context.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/89527
Approved by: https://github.com/mruberry
After our failed attempt to remove `assert_allclose` in #87974, we decided to add it to the documentation after all. Although we drop the expected removal date, the function continues to be deprecated in favor of `assert_close`.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/89526
Approved by: https://github.com/mruberry
Summary: The recommended way to use QConfigMapping is through
`get_default_qconfig_mapping`. However, the docs still references
usages that use `QConfigMapping().set_global(...)`. This doesn't
actually work well in practice when the model has fixed qparams
ops for example. This commit updates these usages.
Reviewers: vkuzo
Subscribers: vkuzo
Pull Request resolved: https://github.com/pytorch/pytorch/pull/87299
Approved by: https://github.com/jerryzh168
Fixes#43144
This uses the Backend system added by [82682](https://github.com/pytorch/pytorch/pull/82682) to change allocators dynamically during the code execution. This will allow us to use RMM, use CUDA managed memory for some portions of the code that do not fit in GPU memory. Write static memory allocators to reduce fragmentation while training models and improve interoperability with external DL compilers/libraries.
For example, we could have the following allocator in c++
```c++
#include <sys/types.h>
#include <cuda_runtime_api.h>
#include <iostream>
extern "C" {
void* my_malloc(ssize_t size, int device, cudaStream_t stream) {
void *ptr;
std::cout<<"alloc "<< size<<std::endl;
cudaMalloc(&ptr, size);
return ptr;
}
void my_free(void* ptr) {
std::cout<<"free "<<std::endl;
cudaFree(ptr);
}
}
```
Compile it as a shared library
```
nvcc allocator.cc -o alloc.so -shared --compiler-options '-fPIC'
```
And use it from PyTorch as follows
```python
import torch
# Init caching
# b = torch.zeros(10, device='cuda')
new_alloc = torch.cuda.memory.CUDAPluggableAllocator('alloc.so', 'my_malloc', 'my_free')
old = torch.cuda.memory.get_current_allocator()
torch.cuda.memory.change_current_allocator(new_alloc)
b = torch.zeros(10, device='cuda')
# This will error since the current allocator was already instantiated
torch.cuda.memory.change_current_allocator(old)
```
Things to discuss
- How to test this, needs compiling external code ...
Pull Request resolved: https://github.com/pytorch/pytorch/pull/86786
Approved by: https://github.com/albanD