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/35615
Python 2 has reached end-of-life and is no longer supported by PyTorch.
Now we can clean up a lot of cruft that we put in place to support it.
These changes were all done manually, and I skipped anything that seemed
like it would take more than a few seconds, so I think it makes sense to
review it manually as well (though using side-by-side view and ignoring
whitespace change might be helpful).
Test Plan: CI
Differential Revision: D20842886
Pulled By: dreiss
fbshipit-source-id: 8cad4e87c45895e7ce3938a88e61157a79504aed
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/33711Fixed#33480
This makes `dist_autograd.backward` and `dist_optimizer.step` functional by making the user explicitly pass in the `context_id` as opposed to relying on the confusing thread_local context_id.
This diff incorporates these API changes and all places where these functions are called.
More concretely, this code:
```
with dist_autograd.context():
# Forward pass.
dist_autograd.backward([loss.sum()])
dist_optim.step()
```
should now be written as follows:
```
with dist_autograd.context() as context_id:
# Forward pass.
dist_autograd.backward(context_id, [loss.sum()])
dist_optim.step(context_id)
```
Test Plan: Ensuring all existing dist_autograd and dist_optimizer tests pass with the new API. Also added a new test case for input checking.
Differential Revision: D20011710
fbshipit-source-id: 216e12207934a2a79c7223332b97c558d89d4d65
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/28926
The get_gradients method was a pybind only method without any
documentation for this method for users.
I've moved this method to our python distributed autograd API and ensured that
we have appropriate docs for this method.
ghstack-source-id: 93558845
Test Plan: waitforbuildbot
Differential Revision: D18234443
fbshipit-source-id: 317267d8c2416da75afd3f9d900a3cd74bb78dfb
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/27022
This change implements the "FAST" mode distributed autograd backward
pass as described in https://github.com/pytorch/pytorch/issues/23110.
At a high level the backward pass works as follows:
1. We start by computing dependencies on the node that calls
`torch.distributed.backward`.
2. This node computes the dependencies starting from the root nodes provided in
the backward call and all the 'send' functions present in the current autograd
context. The "FAST" mode assumes all 'send' functions are part of the autograd
computation.
3. Once the dependency computation is done, the distributed autograd engine
calls the local autograd engine to execute the autograd graph. Note that the
autograd graph on a single node is not necessarily connected because of
inter-node communication. As a result, we have special handling to ensure the
local autograd engine ensures we execute the entire graph starting from the
provided roots and all 'send' functions on the node.
4. When the local autograd engine hits a 'recv' function, it performs an async
RPC to send the gradients over to the appropriate node and stores a future in
the autograd context to keep track of this RPC.
5. On the destination node, the appropriate 'send' function is looked up and
enqueued on the local autograd engine. If this is the first time the node is
hearing about this autograd context id on the backward pass, then the node
computes dependencies for the local autograd engine.
6. As part of compute dependencies, the distributed autograd engine discovers
all leaf nodes and ensures those are passed as 'outputs' to the local autograd
engine. This avoids running the 'AccumulateGrad' function.
7. The gradients computed for the leaf nodes are then actually accumulated in
`DistAutogradContext` for the appropriate autograd context id.
8. The distributed autograd engine waits for the local autograd engine
to complete and also waits for all the 'Futures' (stored in 4.) for respective
RPCs to finish.
We have made the following changes to the local autograd engine for this
purpose:
1. Expose GraphTask and NodeTask so that the distributed autograd engine can
use them.
2. Expose a `execute_with_graph_task` API which gives the distributed engine
to build a GraphTask and pass it to the local autograd engine.
3. Expose a `enqueue_on_cpu` API, which allows the distributed engine to build
a `NodeTask` for a 'send' function and enqueue it on the local autograd engine.
In addition to this a few general improvements:
1. Added a `PropagateGradients` RPC call for the 'recv' function to pass
gradients to the appropriate node during the backward pass.
2. Use IValues as much as possible in serialization for RpcWithAutograd.
3. If Future.wait(), contains a message type EXCEPTION, we throw an appropriate
exception instead of just returning the message. This is inline with what most
Future.wait() APIs do.
4. Added a `get_gradients(context_id)` API which allows users to retrieve a map
from Tensor to respective gradient for the provided context_id on the local
node.
ghstack-source-id: 91794926
Test Plan: unit tests.
Differential Revision: D17652615
fbshipit-source-id: 96f65c52adb2706ee29f4b49e1655afaa0a3bec3
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/24875
As per https://github.com/pytorch/pytorch/issues/23110, each autograd pass
would be assigned a unique autograd_context_id. In this change we introduce a
DistAutogradContainer per worker which holds information for each autograd pass
currently running.
DistAutogradContainer has a map from the autograd_context_id to
DistAutogradContext (which holds all the relevant information for the autograd
pass). DistAutogradContext currently only stores the autograd_context_id and
more information would be added to it later as we build out the rest of the
framework.
The autograd_context_id is a 64 bit globally unique integer where the first 16
bits are the worker_id and next 48 bits are auto-incrementing for uniqueness.
Sample python code on how this would be used for distributed autograd:
```
import torch.distributed.autograd as dist_autograd
worker_id = 0
dist_autograd.init(worker_id)
with dist_autograd.context() as context_id:
# forward pass...
# backward pass...
# optimizer step...
```
ghstack-source-id: 89119248
Test Plan: unit tests.
Differential Revision: D16356694
fbshipit-source-id: d1a8678da0c2af611758dbb5d624d554212330ce