Continuation after https://github.com/pytorch/pytorch/pull/90163.
Here is a script I used to find all the non-existing arguments in the docstrings (the script can give false positives in presence of *args/**kwargs or decorators):
_Edit:_
I've realized that the indentation is wrong for the last `break` in the script, so the script only gives output for a function if the first docstring argument is wrong. I'll create a separate PR if I find more issues with corrected script.
``` python
import ast
import os
import docstring_parser
for root, dirs, files in os.walk('.'):
for name in files:
if root.startswith("./.git/") or root.startswith("./third_party/"):
continue
if name.endswith(".py"):
full_name = os.path.join(root, name)
with open(full_name, "r") as source:
tree = ast.parse(source.read())
for node in ast.walk(tree):
if isinstance(node, ast.FunctionDef):
all_node_args = node.args.args
if node.args.vararg is not None:
all_node_args.append(node.args.vararg)
if node.args.kwarg is not None:
all_node_args.append(node.args.kwarg)
if node.args.posonlyargs is not None:
all_node_args.extend(node.args.posonlyargs)
if node.args.kwonlyargs is not None:
all_node_args.extend(node.args.kwonlyargs)
args = [a.arg for a in all_node_args]
docstring = docstring_parser.parse(ast.get_docstring(node))
doc_args = [a.arg_name for a in docstring.params]
clean_doc_args = []
for a in doc_args:
clean_a = ""
for c in a.split()[0]:
if c.isalnum() or c == '_':
clean_a += c
if clean_a:
clean_doc_args.append(clean_a)
doc_args = clean_doc_args
for a in doc_args:
if a not in args:
print(full_name, node.lineno, args, doc_args)
break
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/90505
Approved by: https://github.com/malfet, https://github.com/ZainRizvi
This is a new version of #15648 based on the latest master branch.
Unlike the previous PR where I fixed a lot of the doctests in addition to integrating xdoctest, I'm going to reduce the scope here. I'm simply going to integrate xdoctest, and then I'm going to mark all of the failing tests as "SKIP". This will let xdoctest run on the dashboards, provide some value, and still let the dashboards pass. I'll leave fixing the doctests themselves to another PR.
In my initial commit, I do the bare minimum to get something running with failing dashboards. The few tests that I marked as skip are causing segfaults. Running xdoctest results in 293 failed, 201 passed tests. The next commits will be to disable those tests. (unfortunately I don't have a tool that will insert the `#xdoctest: +SKIP` directive over every failing test, so I'm going to do this mostly manually.)
Fixes https://github.com/pytorch/pytorch/issues/71105
@ezyang
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82797
Approved by: https://github.com/ezyang
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/73372
This PR which allows for optional `world_size` argument in init_rpc. This makes changes in rendezvous to allow for `NoneType` for world_size and creates a new code path when initializing TensorPipe agent for init_rpc. The TensorPipe agent is protected by a critical section enforced using the store, so that only one node can create a TPAgent at a time.
This PR does not yet enable RPC commands between ranks.
Previously:
```python
os.environ['MASTER_ADDR'] = 'localhost'
os.environ['MASTER_PORT'] = '29500'
init_rpc("worker0", world_size=1, rank=0)
```
Now (only rank is needed):
```python
os.environ['MASTER_ADDR'] = 'localhost'
os.environ['MASTER_PORT'] = '29500'
init_rpc("worker0", rank=0)
```
Test Plan: Imported from OSS
Reviewed By: mrshenli
Differential Revision: D34621651
Pulled By: H-Huang
fbshipit-source-id: 09dbb511d5a00c219a6ce0a35501ff2e388998b0
(cherry picked from commit 834aedc3256167399c323169ef2f0c9b3cf98dff)
Summary:
Fixes [issue#64](https://github.com/MLH-Fellowship/pyre-check/issues/64)
This PR fixes the type checking errors in torch/distributed/rpc/options.py.
The variable types in 84:8 and 85:8 were declared to have type `List` but were sometimes assigned a value of `None`. This caused an incompatitble variable type error. Therefore, I changed the type from `List` to `Optional[List]` . Hence, this fixes the incompatitble variable type error.
Signed-off-by: Onyemowo Agbo
onionymous
0xedward
Pull Request resolved: https://github.com/pytorch/pytorch/pull/68056
Reviewed By: zou3519
Differential Revision: D32282289
Pulled By: mrshenli
fbshipit-source-id: ee410165e623834b4f5f3da8d44bd5a29306daae
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/57294
With the advent of CPUs in the device maps, and to be more generic (e.g., to support AMD GPUs), and to avoid conversions when passing to Future and RRef and such, it's easier to use Devices instead of DeviceIndices. This started by just migrating the TensorPipe agent but the RPC layer is quite intertwined so I had to migrate a lot of stuff.
ghstack-source-id: 127916562
Test Plan: CI
Reviewed By: mrshenli
Differential Revision: D28092733
fbshipit-source-id: 024dcb3648c5898ab13e770413c43958f04f1a8a
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/56405
If not provided, the `devices` field will be initialized to local
devices in local `device_maps` and corresponding devices in peers'
`device_maps`. When processing CUDA RPC requests, the agent will
use a dedicated stream for each device in the devices list to 1)
accept argument CUDA tensors 2) run user functions 3) send return
value tensors.
closes#54017
Test Plan: Imported from OSS
Reviewed By: lw
Differential Revision: D27863133
Pulled By: mrshenli
fbshipit-source-id: 5d078c3b6d1812f85d62b0eb0f89f2b6c82cb060
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/45353
Temporarily removing this feature, will add this back after branch cut.
Test Plan: Imported from OSS
Reviewed By: rohan-varma
Differential Revision: D23939865
Pulled By: mrshenli
fbshipit-source-id: 7dceaffea6b9a16512b5ba6036da73e7f8f83a8e
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/42637
This commit enables sending non-CPU tensors through RPC using
TensorPipe backend. Users can configure device mappings by calling
set_map_location on `TensorPipeRpcBackendOptions`. Internally,
the `init_rpc` API verifies the correctness of device mappings. It
will shutdown RPC if the check failed, or proceed and pass global
mappings to `TensorPipeAgent` if the check was successful. For serde,
we added a device indices field to TensorPipe read and write buffers,
which should be either empty (all tensors must be on CPU) or match
the tensors in order and number in the RPC message. This commit
does not yet avoid zero-copy, the tensor is always moved to CPU
on the sender and then moved to the specified device on the receiver.
Test Plan: Imported from OSS
Reviewed By: izdeby
Differential Revision: D23011572
Pulled By: mrshenli
fbshipit-source-id: 62b617eed91237d4e9926bc8551db78b822a1187