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r""" |
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Module ``torch.distributed.launch``. |
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``torch.distributed.launch`` is a module that spawns up multiple distributed |
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training processes on each of the training nodes. |
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.. warning:: |
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This module is going to be deprecated in favor of :ref:`torchrun <launcher-api>`. |
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The utility can be used for single-node distributed training, in which one or |
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more processes per node will be spawned. The utility can be used for either |
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CPU training or GPU training. If the utility is used for GPU training, |
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each distributed process will be operating on a single GPU. This can achieve |
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well-improved single-node training performance. It can also be used in |
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multi-node distributed training, by spawning up multiple processes on each node |
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for well-improved multi-node distributed training performance as well. |
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This will especially be beneficial for systems with multiple Infiniband |
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interfaces that have direct-GPU support, since all of them can be utilized for |
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aggregated communication bandwidth. |
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In both cases of single-node distributed training or multi-node distributed |
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training, this utility will launch the given number of processes per node |
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(``--nproc-per-node``). If used for GPU training, this number needs to be less |
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or equal to the number of GPUs on the current system (``nproc_per_node``), |
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and each process will be operating on a single GPU from *GPU 0 to |
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GPU (nproc_per_node - 1)*. |
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**How to use this module:** |
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1. Single-Node multi-process distributed training |
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:: |
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python -m torch.distributed.launch --nproc-per-node=NUM_GPUS_YOU_HAVE |
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YOUR_TRAINING_SCRIPT.py (--arg1 --arg2 --arg3 and all other |
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arguments of your training script) |
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2. Multi-Node multi-process distributed training: (e.g. two nodes) |
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Node 1: *(IP: 192.168.1.1, and has a free port: 1234)* |
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:: |
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python -m torch.distributed.launch --nproc-per-node=NUM_GPUS_YOU_HAVE |
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--nnodes=2 --node-rank=0 --master-addr="192.168.1.1" |
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--master-port=1234 YOUR_TRAINING_SCRIPT.py (--arg1 --arg2 --arg3 |
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and all other arguments of your training script) |
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Node 2: |
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:: |
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python -m torch.distributed.launch --nproc-per-node=NUM_GPUS_YOU_HAVE |
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--nnodes=2 --node-rank=1 --master-addr="192.168.1.1" |
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--master-port=1234 YOUR_TRAINING_SCRIPT.py (--arg1 --arg2 --arg3 |
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and all other arguments of your training script) |
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3. To look up what optional arguments this module offers: |
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:: |
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python -m torch.distributed.launch --help |
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**Important Notices:** |
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1. This utility and multi-process distributed (single-node or |
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multi-node) GPU training currently only achieves the best performance using |
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the NCCL distributed backend. Thus NCCL backend is the recommended backend to |
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use for GPU training. |
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2. In your training program, you must parse the command-line argument: |
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``--local-rank=LOCAL_PROCESS_RANK``, which will be provided by this module. |
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If your training program uses GPUs, you should ensure that your code only |
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runs on the GPU device of LOCAL_PROCESS_RANK. This can be done by: |
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Parsing the local_rank argument |
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:: |
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>>> # xdoctest: +SKIP |
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>>> import argparse |
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>>> parser = argparse.ArgumentParser() |
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>>> parser.add_argument("--local-rank", "--local_rank", type=int) |
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>>> args = parser.parse_args() |
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Set your device to local rank using either |
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:: |
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>>> torch.cuda.set_device(args.local_rank) # before your code runs |
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or |
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:: |
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>>> with torch.cuda.device(args.local_rank): |
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>>> # your code to run |
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>>> ... |
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.. versionchanged:: 2.0.0 |
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The launcher will passes the ``--local-rank=<rank>`` argument to your script. |
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From PyTorch 2.0.0 onwards, the dashed ``--local-rank`` is preferred over the |
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previously used underscored ``--local_rank``. |
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For backward compatibility, it may be necessary for users to handle both |
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cases in their argument parsing code. This means including both ``"--local-rank"`` |
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and ``"--local_rank"`` in the argument parser. If only ``"--local_rank"`` is |
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provided, the launcher will trigger an error: "error: unrecognized arguments: |
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--local-rank=<rank>". For training code that only supports PyTorch 2.0.0+, |
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including ``"--local-rank"`` should be sufficient. |
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3. In your training program, you are supposed to call the following function |
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at the beginning to start the distributed backend. It is strongly recommended |
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that ``init_method=env://``. Other init methods (e.g. ``tcp://``) may work, |
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but ``env://`` is the one that is officially supported by this module. |
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:: |
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>>> torch.distributed.init_process_group(backend='YOUR BACKEND', |
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>>> init_method='env://') |
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4. In your training program, you can either use regular distributed functions |
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or use :func:`torch.nn.parallel.DistributedDataParallel` module. If your |
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training program uses GPUs for training and you would like to use |
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:func:`torch.nn.parallel.DistributedDataParallel` module, |
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here is how to configure it. |
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:: |
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>>> model = torch.nn.parallel.DistributedDataParallel(model, |
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>>> device_ids=[args.local_rank], |
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>>> output_device=args.local_rank) |
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Please ensure that ``device_ids`` argument is set to be the only GPU device id |
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that your code will be operating on. This is generally the local rank of the |
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process. In other words, the ``device_ids`` needs to be ``[args.local_rank]``, |
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and ``output_device`` needs to be ``args.local_rank`` in order to use this |
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utility |
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5. Another way to pass ``local_rank`` to the subprocesses via environment variable |
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``LOCAL_RANK``. This behavior is enabled when you launch the script with |
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``--use-env=True``. You must adjust the subprocess example above to replace |
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``args.local_rank`` with ``os.environ['LOCAL_RANK']``; the launcher |
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will not pass ``--local-rank`` when you specify this flag. |
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.. warning:: |
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``local_rank`` is NOT globally unique: it is only unique per process |
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on a machine. Thus, don't use it to decide if you should, e.g., |
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write to a networked filesystem. See |
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https://github.com/pytorch/pytorch/issues/12042 for an example of |
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how things can go wrong if you don't do this correctly. |
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""" |
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from typing_extensions import deprecated as _deprecated |
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from torch.distributed.run import get_args_parser, run |
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def parse_args(args): |
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parser = get_args_parser() |
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parser.add_argument( |
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"--use-env", |
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"--use_env", |
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default=False, |
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action="store_true", |
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help="Use environment variable to pass " |
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"'local rank'. For legacy reasons, the default value is False. " |
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"If set to True, the script will not pass " |
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"--local-rank as argument, and will instead set LOCAL_RANK.", |
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) |
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return parser.parse_args(args) |
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def launch(args): |
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if args.no_python and not args.use_env: |
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raise ValueError( |
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"When using the '--no-python' flag, you must also set the '--use-env' flag." |
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) |
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run(args) |
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@_deprecated( |
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"The module torch.distributed.launch is deprecated\n" |
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"and will be removed in future. Use torchrun.\n" |
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"Note that --use-env is set by default in torchrun.\n" |
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"If your script expects `--local-rank` argument to be set, please\n" |
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"change it to read from `os.environ['LOCAL_RANK']` instead. See \n" |
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"https://pytorch.org/docs/stable/distributed.html#launch-utility for \n" |
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"further instructions\n", |
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category=FutureWarning, |
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) |
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def main(args=None): |
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args = parse_args(args) |
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launch(args) |
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if __name__ == "__main__": |
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main() |
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