Note
Please refer to PyTorch Distributed Overview for a brief introduction to all features related to distributed training.
.. automodule:: torch.distributed
.. currentmodule:: torch.distributed
torch.distributed
supports three built-in backends, each with
different capabilities. The table below shows which functions are available
for use with CPU / CUDA tensors.
MPI supports CUDA only if the implementation used to build PyTorch supports it.
Backend | gloo |
mpi |
nccl |
|||
---|---|---|---|---|---|---|
Device | CPU | GPU | CPU | GPU | CPU | GPU |
send | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
recv | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
broadcast | ✓ | ✓ | ✓ | ? | ✘ | ✓ |
all_reduce | ✓ | ✓ | ✓ | ? | ✘ | ✓ |
reduce | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
all_gather | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
gather | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
scatter | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
reduce_scatter | ✘ | ✘ | ✘ | ✘ | ✘ | ✓ |
all_to_all | ✘ | ✘ | ✓ | ? | ✘ | ✓ |
barrier | ✓ | ✘ | ✓ | ? | ✘ | ✓ |
PyTorch distributed package supports Linux (stable), MacOS (stable), and Windows (prototype). By default for Linux, the Gloo and NCCL backends are built and included in PyTorch distributed (NCCL only when building with CUDA). MPI is an optional backend that can only be included if you build PyTorch from source. (e.g. building PyTorch on a host that has MPI installed.)
Note
As of PyTorch v1.8, Windows supports all collective communications backend but NCCL, If the init_method argument of :func:`init_process_group` points to a file it must adhere to the following schema:
- Local file system,
init_method="file:///d:/tmp/some_file"
- Shared file system,
init_method="file://////{machine_name}/{share_folder_name}/some_file"
Same as on Linux platform, you can enable TcpStore by setting environment variables, MASTER_ADDR and MASTER_PORT.
In the past, we were often asked: "which backend should I use?".
- Rule of thumb
- Use the NCCL backend for distributed GPU training
- Use the Gloo backend for distributed CPU training.
- GPU hosts with InfiniBand interconnect
- Use NCCL, since it's the only backend that currently supports InfiniBand and GPUDirect.
- GPU hosts with Ethernet interconnect
- Use NCCL, since it currently provides the best distributed GPU training performance, especially for multiprocess single-node or multi-node distributed training. If you encounter any problem with NCCL, use Gloo as the fallback option. (Note that Gloo currently runs slower than NCCL for GPUs.)
- CPU hosts with InfiniBand interconnect
- If your InfiniBand has enabled IP over IB, use Gloo, otherwise, use MPI instead. We are planning on adding InfiniBand support for Gloo in the upcoming releases.
- CPU hosts with Ethernet interconnect
- Use Gloo, unless you have specific reasons to use MPI.
By default, both the NCCL and Gloo backends will try to find the right network interface to use. If the automatically detected interface is not correct, you can override it using the following environment variables (applicable to the respective backend):
- NCCL_SOCKET_IFNAME, for example
export NCCL_SOCKET_IFNAME=eth0
- GLOO_SOCKET_IFNAME, for example
export GLOO_SOCKET_IFNAME=eth0
If you're using the Gloo backend, you can specify multiple interfaces by separating
them by a comma, like this: export GLOO_SOCKET_IFNAME=eth0,eth1,eth2,eth3
.
The backend will dispatch operations in a round-robin fashion across these interfaces.
It is imperative that all processes specify the same number of interfaces in this variable.
Debugging - in case of NCCL failure, you can set NCCL_DEBUG=INFO
to print an explicit
warning message as well as basic NCCL initialization information.
You may also use NCCL_DEBUG_SUBSYS
to get more details about a specific
aspect of NCCL. For example, NCCL_DEBUG_SUBSYS=COLL
would print logs of
collective calls, which may be helpful when debugging hangs, especially those
caused by collective type or message size mismatch. In case of topology
detection failure, it would be helpful to set NCCL_DEBUG_SUBSYS=GRAPH
to inspect the detailed detection result and save as reference if further help
from NCCL team is needed.
Performance tuning - NCCL performs automatic tuning based on its topology detection to save users'
tuning effort. On some socket-based systems, users may still try tuning
NCCL_SOCKET_NTHREADS
and NCCL_NSOCKS_PERTHREAD
to increase socket
network bandwidth. These two environment variables have been pre-tuned by NCCL
for some cloud providers, such as AWS or GCP.
For a full list of NCCL environment variables, please refer to NVIDIA NCCL's official documentation
The torch.distributed package provides PyTorch support and communication primitives for multiprocess parallelism across several computation nodes running on one or more machines. The class :func:`torch.nn.parallel.DistributedDataParallel` builds on this functionality to provide synchronous distributed training as a wrapper around any PyTorch model. This differs from the kinds of parallelism provided by :doc:`multiprocessing` and :func:`torch.nn.DataParallel` in that it supports multiple network-connected machines and in that the user must explicitly launch a separate copy of the main training script for each process.
In the single-machine synchronous case, torch.distributed or the :func:`torch.nn.parallel.DistributedDataParallel` wrapper may still have advantages over other approaches to data-parallelism, including :func:`torch.nn.DataParallel`:
- Each process maintains its own optimizer and performs a complete optimization step with each iteration. While this may appear redundant, since the gradients have already been gathered together and averaged across processes and are thus the same for every process, this means that no parameter broadcast step is needed, reducing time spent transferring tensors between nodes.
- Each process contains an independent Python interpreter, eliminating the extra interpreter overhead and "GIL-thrashing" that comes from driving several execution threads, model replicas, or GPUs from a single Python process. This is especially important for models that make heavy use of the Python runtime, including models with recurrent layers or many small components.
The package needs to be initialized using the :func:`torch.distributed.init_process_group` or :func:`torch.distributed.device_mesh.init_device_mesh` function before calling any other methods. Both block until all processes have joined.
Warning
Initialization is not thread-safe. Process group creation should be performed from a single thread, to prevent inconsistent 'UUID' assignment across ranks, and to prevent races during initialization that can lead to hangs.
.. autofunction:: is_available
.. autofunction:: init_process_group
.. autofunction:: torch.distributed.device_mesh.init_device_mesh
.. autofunction:: is_initialized
.. autofunction:: is_mpi_available
.. autofunction:: is_nccl_available
.. autofunction:: is_gloo_available
.. autofunction:: torch.distributed.distributed_c10d.is_xccl_available
.. autofunction:: is_torchelastic_launched
Currently three initialization methods are supported:
There are two ways to initialize using TCP, both requiring a network address
reachable from all processes and a desired world_size
. The first way
requires specifying an address that belongs to the rank 0 process. This
initialization method requires that all processes have manually specified ranks.
Note that multicast address is not supported anymore in the latest distributed
package. group_name
is deprecated as well.
import torch.distributed as dist # Use address of one of the machines dist.init_process_group(backend, init_method='tcp://10.1.1.20:23456', rank=args.rank, world_size=4)
Another initialization method makes use of a file system that is shared and
visible from all machines in a group, along with a desired world_size
. The URL should start
with file://
and contain a path to a non-existent file (in an existing
directory) on a shared file system. File-system initialization will automatically
create that file if it doesn't exist, but will not delete the file. Therefore, it
is your responsibility to make sure that the file is cleaned up before the next
:func:`init_process_group` call on the same file path/name.
Note that automatic rank assignment is not supported anymore in the latest
distributed package and group_name
is deprecated as well.
Warning
This method assumes that the file system supports locking using fcntl
- most
local systems and NFS support it.
Warning
This method will always create the file and try its best to clean up and remove the file at the end of the program. In other words, each initialization with the file init method will need a brand new empty file in order for the initialization to succeed. If the same file used by the previous initialization (which happens not to get cleaned up) is used again, this is unexpected behavior and can often cause deadlocks and failures. Therefore, even though this method will try its best to clean up the file, if the auto-delete happens to be unsuccessful, it is your responsibility to ensure that the file is removed at the end of the training to prevent the same file to be reused again during the next time. This is especially important if you plan to call :func:`init_process_group` multiple times on the same file name. In other words, if the file is not removed/cleaned up and you call :func:`init_process_group` again on that file, failures are expected. The rule of thumb here is that, make sure that the file is non-existent or empty every time :func:`init_process_group` is called.
import torch.distributed as dist # rank should always be specified dist.init_process_group(backend, init_method='file:///mnt/nfs/sharedfile', world_size=4, rank=args.rank)
This method will read the configuration from environment variables, allowing one to fully customize how the information is obtained. The variables to be set are:
MASTER_PORT
- required; has to be a free port on machine with rank 0MASTER_ADDR
- required (except for rank 0); address of rank 0 nodeWORLD_SIZE
- required; can be set either here, or in a call to init functionRANK
- required; can be set either here, or in a call to init function
The machine with rank 0 will be used to set up all connections.
This is the default method, meaning that init_method
does not have to be specified (or
can be env://
).
Once :func:`torch.distributed.init_process_group` was run, the following functions can be used. To check whether the process group has already been initialized use :func:`torch.distributed.is_initialized`.
.. autoclass:: Backend :members:
.. autofunction:: get_backend
.. autofunction:: get_rank
.. autofunction:: get_world_size
It is important to clean up resources on exit by calling :func:`destroy_process_group`.
The simplest pattern to follow is to destroy every process group and backend by calling :func:`destroy_process_group()` with the default value of None for the group argument, at a point in the training script where communications are no longer needed, usually near the end of main(). The call should be made once per trainer-process, not at the outer process-launcher level.
if :func:`destroy_process_group` is not called by all ranks in a pg within the timeout duration, especially when there are multiple process-groups in the application e.g. for N-D parallelism, hangs on exit are possible. This is because the destructor for ProcessGroupNCCL calls ncclCommAbort, which must be called collectively, but the order of calling ProcessGroupNCCL's destructor if called by python's GC is not deterministic. Calling :func:`destroy_process_group` helps by ensuring ncclCommAbort is called in a consistent order across ranks, and avoids calling ncclCommAbort during ProcessGroupNCCL's destructor.
destroy_process_group can also be used to destroy individual process groups. One use case could be fault tolerant training, where a process group may be destroyed and then a new one initialized during runtime. In this case, it's critical to synchronize the trainer processes using some means other than torch.distributed primitives _after_ calling destroy and before subsequently initializing. This behavior is currently unsupported/untested, due to the difficulty of achieving this synchronization, and is considered a known issue. Please file a github issue or RFC if this is a use case that's blocking you.
By default collectives operate on the default group (also called the world) and
require all processes to enter the distributed function call. However, some workloads can benefit
from more fine-grained communication. This is where distributed groups come
into play. :func:`~torch.distributed.new_group` function can be
used to create new groups, with arbitrary subsets of all processes. It returns
an opaque group handle that can be given as a group
argument to all collectives
(collectives are distributed functions to exchange information in certain well-known programming patterns).
.. autofunction:: new_group
.. autofunction:: get_group_rank
.. autofunction:: get_global_rank
.. autofunction:: get_process_group_ranks
DeviceMesh is a higher level abstraction that manages process groups (or NCCL communicators). It allows user to easily create inter node and intra node process groups without worrying about how to set up the ranks correctly for different sub process groups, and it helps manage those distributed process group easily. :func:`~torch.distributed.device_mesh.init_device_mesh` function can be used to create new DeviceMesh, with a mesh shape describing the device topology.
.. autoclass:: torch.distributed.device_mesh.DeviceMesh :members:
.. autofunction:: send
.. autofunction:: recv
:func:`~torch.distributed.isend` and :func:`~torch.distributed.irecv` return distributed request objects when used. In general, the type of this object is unspecified as they should never be created manually, but they are guaranteed to support two methods:
is_completed()
- returns True if the operation has finishedwait()
- will block the process until the operation is finished.is_completed()
is guaranteed to return True once it returns.
.. autofunction:: isend
.. autofunction:: irecv
.. autofunction:: send_object_list
.. autofunction:: recv_object_list
.. autofunction:: batch_isend_irecv
.. autoclass:: P2POp
Every collective operation function supports the following two kinds of operations,
depending on the setting of the async_op
flag passed into the collective:
Synchronous operation - the default mode, when async_op
is set to False
.
When the function returns, it is guaranteed that
the collective operation is performed. In the case of CUDA operations, it is not guaranteed
that the CUDA operation is completed, since CUDA operations are asynchronous. For CPU collectives, any
further function calls utilizing the output of the collective call will behave as expected. For CUDA collectives,
function calls utilizing the output on the same CUDA stream will behave as expected. Users must take care of
synchronization under the scenario of running under different streams. For details on CUDA semantics such as stream
synchronization, see CUDA Semantics.
See the below script to see examples of differences in these semantics for CPU and CUDA operations.
Asynchronous operation - when async_op
is set to True. The collective operation function
returns a distributed request object. In general, you don't need to create it manually and it
is guaranteed to support two methods:
is_completed()
- in the case of CPU collectives, returnsTrue
if completed. In the case of CUDA operations, returnsTrue
if the operation has been successfully enqueued onto a CUDA stream and the output can be utilized on the default stream without further synchronization.wait()
- in the case of CPU collectives, will block the process until the operation is completed. In the case of CUDA collectives, will block the currently active CUDA stream until the operation is completed (but will not block the CPU).get_future()
- returnstorch._C.Future
object. Supported for NCCL, also supported for most operations on GLOO and MPI, except for peer to peer operations. Note: as we continue adopting Futures and merging APIs,get_future()
call might become redundant.
Example
The following code can serve as a reference regarding semantics for CUDA operations when using distributed collectives. It shows the explicit need to synchronize when using collective outputs on different CUDA streams:
# Code runs on each rank. dist.init_process_group("nccl", rank=rank, world_size=2) output = torch.tensor([rank]).cuda(rank) s = torch.cuda.Stream() handle = dist.all_reduce(output, async_op=True) # Wait ensures the operation is enqueued, but not necessarily complete. handle.wait() # Using result on non-default stream. with torch.cuda.stream(s): s.wait_stream(torch.cuda.default_stream()) output.add_(100) if rank == 0: # if the explicit call to wait_stream was omitted, the output below will be # non-deterministically 1 or 101, depending on whether the allreduce overwrote # the value after the add completed. print(output)
.. autofunction:: broadcast
.. autofunction:: broadcast_object_list
.. autofunction:: all_reduce
.. autofunction:: reduce
.. autofunction:: all_gather
.. autofunction:: all_gather_into_tensor
.. autofunction:: all_gather_object
.. autofunction:: gather
.. autofunction:: gather_object
.. autofunction:: scatter
.. autofunction:: scatter_object_list
.. autofunction:: reduce_scatter
.. autofunction:: reduce_scatter_tensor
.. autofunction:: all_to_all_single
.. autofunction:: all_to_all
.. autofunction:: barrier
.. autofunction:: monitored_barrier
.. autoclass:: Work :members:
.. autoclass:: ReduceOp
Deprecated enum-like class for reduction operations: SUM
, PRODUCT
,
MIN
, and MAX
.
:class:`~torch.distributed.ReduceOp` is recommended to use instead.
The distributed package comes with a distributed key-value store, which can be
used to share information between processes in the group as well as to
initialize the distributed package in
:func:`torch.distributed.init_process_group` (by explicitly creating the store
as an alternative to specifying init_method
.) There are 3 choices for
Key-Value Stores: :class:`~torch.distributed.TCPStore`,
:class:`~torch.distributed.FileStore`, and :class:`~torch.distributed.HashStore`.
.. autoclass:: Store :members: :special-members:
.. autoclass:: TCPStore :members: :special-members: __init__
.. autoclass:: HashStore :members: :special-members: __init__
.. autoclass:: FileStore :members: :special-members: __init__
.. autoclass:: PrefixStore :members: :special-members: __init__
Note that you can use torch.profiler
(recommended, only available after 1.8.1) or torch.autograd.profiler
to profile collective communication and point-to-point communication APIs mentioned here. All out-of-the-box backends (gloo
,
nccl
, mpi
) are supported and collective communication usage will be rendered as expected in profiling output/traces. Profiling your code is the same as any regular torch operator:
import torch import torch.distributed as dist with torch.profiler(): tensor = torch.randn(20, 10) dist.all_reduce(tensor)
Please refer to the profiler documentation for a full overview of profiler features.
Warning
The multi-GPU functions (which stand for multiple GPUs per CPU thread) are deprecated. As of today, PyTorch Distributed's preferred programming model is one device per thread, as exemplified by the APIs in this document. If you are a backend developer and want to support multiple devices per thread, please contact PyTorch Distributed's maintainers.
Besides the builtin GLOO/MPI/NCCL backends, PyTorch distributed supports
third-party backends through a run-time register mechanism.
For references on how to develop a third-party backend through C++ Extension,
please refer to Tutorials - Custom C++ and CUDA Extensions and
test/cpp_extensions/cpp_c10d_extension.cpp
. The capability of third-party
backends are decided by their own implementations.
The new backend derives from c10d::ProcessGroup
and registers the backend
name and the instantiating interface through :func:`torch.distributed.Backend.register_backend`
when imported.
When manually importing this backend and invoking :func:`torch.distributed.init_process_group`
with the corresponding backend name, the torch.distributed
package runs on
the new backend.
Warning
The support of third-party backend is experimental and subject to change.
The torch.distributed package also provides a launch utility in torch.distributed.launch. This helper utility can be used to launch multiple processes per node for distributed training.
.. automodule:: torch.distributed.launch
The :ref:`multiprocessing-doc` package also provides a spawn
function in :func:`torch.multiprocessing.spawn`. This helper function
can be used to spawn multiple processes. It works by passing in the
function that you want to run and spawns N processes to run it. This
can be used for multiprocess distributed training as well.
For references on how to use it, please refer to PyTorch example - ImageNet implementation
Note that this function requires Python 3.4 or higher.
Debugging distributed applications can be challenging due to hard to understand hangs, crashes, or inconsistent behavior across ranks. torch.distributed
provides
a suite of tools to help debug training applications in a self-serve fashion:
It is extremely convenient to use python's debugger in a distributed environment, but because it does not work out of the box many people do not use it at all. PyTorch offers a customized wrapper around pdb that streamlines the process.
torch.distributed.breakpoint makes this process easy. Internally, it customizes pdb's breakpoint behavior in two ways but otherwise behaves as normal pdb. 1. Attaches the debugger only on one rank (specified by the user). 2. Ensures all other ranks stop, by using a torch.distributed.barrier() that will release once the debugged rank issues a continue 3. Reroutes stdin from the child process such that it connects to your terminal.
To use it, simply issue torch.distributed.breakpoint(rank) on all ranks, using the same value for rank in each case.
As of v1.10, :func:`torch.distributed.monitored_barrier` exists as an alternative to :func:`torch.distributed.barrier` which fails with helpful information about which rank may be faulty
when crashing, i.e. not all ranks calling into :func:`torch.distributed.monitored_barrier` within the provided timeout. :func:`torch.distributed.monitored_barrier` implements a host-side
barrier using send
/recv
communication primitives in a process similar to acknowledgements, allowing rank 0 to report which rank(s) failed to acknowledge
the barrier in time. As an example, consider the following function where rank 1 fails to call into :func:`torch.distributed.monitored_barrier` (in practice this could be due
to an application bug or hang in a previous collective):
import os from datetime import timedelta import torch import torch.distributed as dist import torch.multiprocessing as mp def worker(rank): dist.init_process_group("nccl", rank=rank, world_size=2) # monitored barrier requires gloo process group to perform host-side sync. group_gloo = dist.new_group(backend="gloo") if rank not in [1]: dist.monitored_barrier(group=group_gloo, timeout=timedelta(seconds=2)) if __name__ == "__main__": os.environ["MASTER_ADDR"] = "localhost" os.environ["MASTER_PORT"] = "29501" mp.spawn(worker, nprocs=2, args=())
The following error message is produced on rank 0, allowing the user to determine which rank(s) may be faulty and investigate further:
RuntimeError: Rank 1 failed to pass monitoredBarrier in 2000 ms Original exception: [gloo/transport/tcp/pair.cc:598] Connection closed by peer [2401:db00:eef0:1100:3560:0:1c05:25d]:8594
With TORCH_CPP_LOG_LEVEL=INFO
, the environment variable TORCH_DISTRIBUTED_DEBUG
can be used to trigger additional useful logging and collective synchronization checks to ensure all ranks
are synchronized appropriately. TORCH_DISTRIBUTED_DEBUG
can be set to either OFF
(default), INFO
, or DETAIL
depending on the debugging level
required. Please note that the most verbose option, DETAIL
may impact the application performance and thus should only be used when debugging issues.
Setting TORCH_DISTRIBUTED_DEBUG=INFO
will result in additional debug logging when models trained with :func:`torch.nn.parallel.DistributedDataParallel` are initialized, and
TORCH_DISTRIBUTED_DEBUG=DETAIL
will additionally log runtime performance statistics a select number of iterations. These runtime statistics
include data such as forward time, backward time, gradient communication time, etc. As an example, given the following application:
import os import torch import torch.distributed as dist import torch.multiprocessing as mp class TwoLinLayerNet(torch.nn.Module): def __init__(self): super().__init__() self.a = torch.nn.Linear(10, 10, bias=False) self.b = torch.nn.Linear(10, 1, bias=False) def forward(self, x): a = self.a(x) b = self.b(x) return (a, b) def worker(rank): dist.init_process_group("nccl", rank=rank, world_size=2) torch.cuda.set_device(rank) print("init model") model = TwoLinLayerNet().cuda() print("init ddp") ddp_model = torch.nn.parallel.DistributedDataParallel(model, device_ids=[rank]) inp = torch.randn(10, 10).cuda() print("train") for _ in range(20): output = ddp_model(inp) loss = output[0] + output[1] loss.sum().backward() if __name__ == "__main__": os.environ["MASTER_ADDR"] = "localhost" os.environ["MASTER_PORT"] = "29501" os.environ["TORCH_CPP_LOG_LEVEL"]="INFO" os.environ[ "TORCH_DISTRIBUTED_DEBUG" ] = "DETAIL" # set to DETAIL for runtime logging. mp.spawn(worker, nprocs=2, args=())
The following logs are rendered at initialization time:
I0607 16:10:35.739390 515217 logger.cpp:173] [Rank 0]: DDP Initialized with: broadcast_buffers: 1 bucket_cap_bytes: 26214400 find_unused_parameters: 0 gradient_as_bucket_view: 0 is_multi_device_module: 0 iteration: 0 num_parameter_tensors: 2 output_device: 0 rank: 0 total_parameter_size_bytes: 440 world_size: 2 backend_name: nccl bucket_sizes: 440 cuda_visible_devices: N/A device_ids: 0 dtypes: float master_addr: localhost master_port: 29501 module_name: TwoLinLayerNet nccl_async_error_handling: N/A nccl_blocking_wait: N/A nccl_debug: WARN nccl_ib_timeout: N/A nccl_nthreads: N/A nccl_socket_ifname: N/A torch_distributed_debug: INFO
The following logs are rendered during runtime (when TORCH_DISTRIBUTED_DEBUG=DETAIL
is set):
I0607 16:18:58.085681 544067 logger.cpp:344] [Rank 1 / 2] Training TwoLinLayerNet unused_parameter_size=0 Avg forward compute time: 40838608 Avg backward compute time: 5983335 Avg backward comm. time: 4326421 Avg backward comm/comp overlap time: 4207652 I0607 16:18:58.085693 544066 logger.cpp:344] [Rank 0 / 2] Training TwoLinLayerNet unused_parameter_size=0 Avg forward compute time: 42850427 Avg backward compute time: 3885553 Avg backward comm. time: 2357981 Avg backward comm/comp overlap time: 2234674
In addition, TORCH_DISTRIBUTED_DEBUG=INFO
enhances crash logging in :func:`torch.nn.parallel.DistributedDataParallel` due to unused parameters in the model. Currently, find_unused_parameters=True
must be passed into :func:`torch.nn.parallel.DistributedDataParallel` initialization if there are parameters that may be unused in the forward pass, and as of v1.10, all model outputs are required
to be used in loss computation as :func:`torch.nn.parallel.DistributedDataParallel` does not support unused parameters in the backwards pass. These constraints are challenging especially for larger
models, thus when crashing with an error, :func:`torch.nn.parallel.DistributedDataParallel` will log the fully qualified name of all parameters that went unused. For example, in the above application,
if we modify loss
to be instead computed as loss = output[1]
, then TwoLinLayerNet.a
does not receive a gradient in the backwards pass, and
thus results in DDP
failing. On a crash, the user is passed information about parameters which went unused, which may be challenging to manually find for large models:
RuntimeError: Expected to have finished reduction in the prior iteration before starting a new one. This error indicates that your module has parameters that were not used in producing loss. You can enable unused parameter detection by passing the keyword argument `find_unused_parameters=True` to `torch.nn.parallel.DistributedDataParallel`, and by making sure all `forward` function outputs participate in calculating loss. If you already have done the above, then the distributed data parallel module wasn't able to locate the output tensors in the return value of your module's `forward` function. Please include the loss function and the structure of the return va lue of `forward` of your module when reporting this issue (e.g. list, dict, iterable). Parameters which did not receive grad for rank 0: a.weight Parameter indices which did not receive grad for rank 0: 0
Setting TORCH_DISTRIBUTED_DEBUG=DETAIL
will trigger additional consistency and synchronization checks on every collective call issued by the user
either directly or indirectly (such as DDP allreduce
). This is done by creating a wrapper process group that wraps all process groups returned by
:func:`torch.distributed.init_process_group` and :func:`torch.distributed.new_group` APIs. As a result, these APIs will return a wrapper process group that can be used exactly like a regular process
group, but performs consistency checks before dispatching the collective to an underlying process group. Currently, these checks include a :func:`torch.distributed.monitored_barrier`,
which ensures all ranks complete their outstanding collective calls and reports ranks which are stuck. Next, the collective itself is checked for consistency by
ensuring all collective functions match and are called with consistent tensor shapes. If this is not the case, a detailed error report is included when the
application crashes, rather than a hang or uninformative error message. As an example, consider the following function which has mismatched input shapes into
:func:`torch.distributed.all_reduce`:
import torch import torch.distributed as dist import torch.multiprocessing as mp def worker(rank): dist.init_process_group("nccl", rank=rank, world_size=2) torch.cuda.set_device(rank) tensor = torch.randn(10 if rank == 0 else 20).cuda() dist.all_reduce(tensor) torch.cuda.synchronize(device=rank) if __name__ == "__main__": os.environ["MASTER_ADDR"] = "localhost" os.environ["MASTER_PORT"] = "29501" os.environ["TORCH_CPP_LOG_LEVEL"]="INFO" os.environ["TORCH_DISTRIBUTED_DEBUG"] = "DETAIL" mp.spawn(worker, nprocs=2, args=())
With the NCCL
backend, such an application would likely result in a hang which can be challenging to root-cause in nontrivial scenarios. If the user enables
TORCH_DISTRIBUTED_DEBUG=DETAIL
and reruns the application, the following error message reveals the root cause:
work = default_pg.allreduce([tensor], opts) RuntimeError: Error when verifying shape tensors for collective ALLREDUCE on rank 0. This likely indicates that input shapes into the collective are mismatched across ranks. Got shapes: 10 [ torch.LongTensor{1} ]
Note
For fine-grained control of the debug level during runtime the functions :func:`torch.distributed.set_debug_level`, :func:`torch.distributed.set_debug_level_from_env`, and :func:`torch.distributed.get_debug_level` can also be used.
In addition, TORCH_DISTRIBUTED_DEBUG=DETAIL can be used in conjunction with TORCH_SHOW_CPP_STACKTRACES=1 to log the entire callstack when a collective desynchronization is detected. These
collective desynchronization checks will work for all applications that use c10d
collective calls backed by process groups created with the
:func:`torch.distributed.init_process_group` and :func:`torch.distributed.new_group` APIs.
In addition to explicit debugging support via :func:`torch.distributed.monitored_barrier` and TORCH_DISTRIBUTED_DEBUG
, the underlying C++ library of torch.distributed
also outputs log
messages at various levels. These messages can be helpful to understand the execution state of a distributed training job and to troubleshoot problems such as network connection failures. The
following matrix shows how the log level can be adjusted via the combination of TORCH_CPP_LOG_LEVEL
and TORCH_DISTRIBUTED_DEBUG
environment variables.
TORCH_CPP_LOG_LEVEL |
TORCH_DISTRIBUTED_DEBUG |
Effective Log Level |
---|---|---|
ERROR |
ignored | Error |
WARNING |
ignored | Warning |
INFO |
ignored | Info |
INFO |
INFO |
Debug |
INFO |
DETAIL |
Trace (a.k.a. All) |
Distributed components raise custom Exception types derived from RuntimeError:
- torch.distributed.DistError: This is the base type of all distributed exceptions.
- torch.distributed.DistBackendError: This exception is thrown when a backend-specific error occurs. For example, if the NCCL backend is used and the user attempts to use a GPU that is not available to the NCCL library.
- torch.distributed.DistNetworkError: This exception is thrown when networking libraries encounter errors (ex: Connection reset by peer)
- torch.distributed.DistStoreError: This exception is thrown when the Store encounters an error (ex: TCPStore timeout)
.. autoclass:: torch.distributed.DistError
.. autoclass:: torch.distributed.DistBackendError
.. autoclass:: torch.distributed.DistNetworkError
.. autoclass:: torch.distributed.DistStoreError
If you are running single node training, it may be convenient to interactively breakpoint your script. We offer a way to conveniently breakpoint a single rank:
.. autofunction:: torch.distributed.breakpoint
.. py:module:: torch.distributed.algorithms
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks
.. py:module:: torch.distributed.algorithms.model_averaging
.. py:module:: torch.distributed.elastic
.. py:module:: torch.distributed.elastic.utils
.. py:module:: torch.distributed.elastic.utils.data
.. py:module:: torch.distributed.launcher
.. py:module:: torch.distributed.nn
.. py:module:: torch.distributed.nn.api
.. py:module:: torch.distributed.nn.jit
.. py:module:: torch.distributed.nn.jit.templates
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.ddp_zero_hook
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.debugging_hooks
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.default_hooks
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.mixed_precision_hooks
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.optimizer_overlap_hooks
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.post_localSGD_hook
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.powerSGD_hook
.. py:module:: torch.distributed.algorithms.ddp_comm_hooks.quantization_hooks
.. py:module:: torch.distributed.algorithms.join
.. py:module:: torch.distributed.algorithms.model_averaging.averagers
.. py:module:: torch.distributed.algorithms.model_averaging.hierarchical_model_averager
.. py:module:: torch.distributed.algorithms.model_averaging.utils
.. py:module:: torch.distributed.argparse_util
.. py:module:: torch.distributed.c10d_logger
.. py:module:: torch.distributed.checkpoint.api
.. py:module:: torch.distributed.checkpoint.default_planner
.. py:module:: torch.distributed.checkpoint.filesystem
.. py:module:: torch.distributed.checkpoint.metadata
.. py:module:: torch.distributed.checkpoint.optimizer
.. py:module:: torch.distributed.checkpoint.planner
.. py:module:: torch.distributed.checkpoint.planner_helpers
.. py:module:: torch.distributed.checkpoint.resharding
.. py:module:: torch.distributed.checkpoint.state_dict_loader
.. py:module:: torch.distributed.checkpoint.state_dict_saver
.. py:module:: torch.distributed.checkpoint.stateful
.. py:module:: torch.distributed.checkpoint.storage
.. py:module:: torch.distributed.checkpoint.utils
.. py:module:: torch.distributed.collective_utils
.. py:module:: torch.distributed.constants
.. py:module:: torch.distributed.device_mesh
.. py:module:: torch.distributed.distributed_c10d
.. py:module:: torch.distributed.elastic.agent.server.api
.. py:module:: torch.distributed.elastic.agent.server.local_elastic_agent
.. py:module:: torch.distributed.elastic.events.api
.. py:module:: torch.distributed.elastic.events.handlers
.. py:module:: torch.distributed.elastic.metrics.api
.. py:module:: torch.distributed.elastic.multiprocessing.api
.. py:module:: torch.distributed.elastic.multiprocessing.errors.error_handler
.. py:module:: torch.distributed.elastic.multiprocessing.errors.handlers
.. py:module:: torch.distributed.elastic.multiprocessing.redirects
.. py:module:: torch.distributed.elastic.multiprocessing.tail_log
.. py:module:: torch.distributed.elastic.rendezvous.api
.. py:module:: torch.distributed.elastic.rendezvous.c10d_rendezvous_backend
.. py:module:: torch.distributed.elastic.rendezvous.dynamic_rendezvous
.. py:module:: torch.distributed.elastic.rendezvous.etcd_rendezvous
.. py:module:: torch.distributed.elastic.rendezvous.etcd_rendezvous_backend
.. py:module:: torch.distributed.elastic.rendezvous.etcd_server
.. py:module:: torch.distributed.elastic.rendezvous.etcd_store
.. py:module:: torch.distributed.elastic.rendezvous.static_tcp_rendezvous
.. py:module:: torch.distributed.elastic.rendezvous.utils
.. py:module:: torch.distributed.elastic.timer.api
.. py:module:: torch.distributed.elastic.timer.file_based_local_timer
.. py:module:: torch.distributed.elastic.timer.local_timer
.. py:module:: torch.distributed.elastic.utils.api
.. py:module:: torch.distributed.elastic.utils.data.cycling_iterator
.. py:module:: torch.distributed.elastic.utils.data.elastic_distributed_sampler
.. py:module:: torch.distributed.elastic.utils.distributed
.. py:module:: torch.distributed.elastic.utils.log_level
.. py:module:: torch.distributed.elastic.utils.logging
.. py:module:: torch.distributed.elastic.utils.store
.. py:module:: torch.distributed.fsdp.api
.. py:module:: torch.distributed.fsdp.fully_sharded_data_parallel
.. py:module:: torch.distributed.fsdp.sharded_grad_scaler
.. py:module:: torch.distributed.fsdp.wrap
.. py:module:: torch.distributed.launcher.api
.. py:module:: torch.distributed.logging_handlers
.. py:module:: torch.distributed.nn.api.remote_module
.. py:module:: torch.distributed.nn.functional
.. py:module:: torch.distributed.nn.jit.instantiator
.. py:module:: torch.distributed.nn.jit.templates.remote_module_template
.. py:module:: torch.distributed.optim.apply_optimizer_in_backward
.. py:module:: torch.distributed.optim.functional_adadelta
.. py:module:: torch.distributed.optim.functional_adagrad
.. py:module:: torch.distributed.optim.functional_adam
.. py:module:: torch.distributed.optim.functional_adamax
.. py:module:: torch.distributed.optim.functional_adamw
.. py:module:: torch.distributed.optim.functional_rmsprop
.. py:module:: torch.distributed.optim.functional_rprop
.. py:module:: torch.distributed.optim.functional_sgd
.. py:module:: torch.distributed.optim.named_optimizer
.. py:module:: torch.distributed.optim.optimizer
.. py:module:: torch.distributed.optim.post_localSGD_optimizer
.. py:module:: torch.distributed.optim.utils
.. py:module:: torch.distributed.optim.zero_redundancy_optimizer
.. py:module:: torch.distributed.remote_device
.. py:module:: torch.distributed.rendezvous
.. py:module:: torch.distributed.rpc.api
.. py:module:: torch.distributed.rpc.backend_registry
.. py:module:: torch.distributed.rpc.constants
.. py:module:: torch.distributed.rpc.functions
.. py:module:: torch.distributed.rpc.internal
.. py:module:: torch.distributed.rpc.options
.. py:module:: torch.distributed.rpc.rref_proxy
.. py:module:: torch.distributed.rpc.server_process_global_profiler
.. py:module:: torch.distributed.tensor.parallel.api
.. py:module:: torch.distributed.tensor.parallel.ddp
.. py:module:: torch.distributed.tensor.parallel.fsdp
.. py:module:: torch.distributed.tensor.parallel.input_reshard
.. py:module:: torch.distributed.tensor.parallel.loss
.. py:module:: torch.distributed.tensor.parallel.style
.. py:module:: torch.distributed.utils
.. py:module:: torch.distributed.checkpoint.state_dict