# Copyright (c) Meta Platforms, Inc. and affiliates. # # This software may be used and distributed in accordance with # the terms of the DINOv3 License Agreement. import logging import os import random import socket import subprocess from datetime import timedelta from enum import Enum from typing import List, Sequence import torch import torch.distributed as dist logger = logging.getLogger("dinov3") _DEFAULT_PROCESS_GROUP = None _PROCESS_SUBGROUP = None _BUILTIN_PRINT = None def is_distributed_enabled() -> bool: """ Returns: True if distributed training is enabled. """ return dist.is_available() and dist.is_initialized() def get_rank(group=None) -> int: """ Returns: The rank of the current process within the specified process group. """ if not is_distributed_enabled(): return 0 return dist.get_rank(group=group) def get_world_size(group=None) -> int: """ Returns: The number of processes in the specified process group. """ if not is_distributed_enabled(): return 1 return dist.get_world_size(group=group) def is_main_process(group=None) -> bool: """ Returns: True if the current process is the main one in the specified process group. """ return get_rank(group) == 0 def save_in_main_process(*args, **kwargs) -> None: """Utility function to save only from the main process.""" group = kwargs.pop("group", None) if not is_main_process(group): return torch.save(*args, **kwargs) def _restrict_print_to_main_process() -> None: """This function disables printing when not in the main process.""" import builtins as __builtin__ global _BUILTIN_PRINT _BUILTIN_PRINT = __builtin__.print def print(*args, **kwargs): force = kwargs.pop("force", False) if is_main_process() or force: _BUILTIN_PRINT(*args, **kwargs) __builtin__.print = print def _get_master_port(seed: int = 0) -> int: MIN_MASTER_PORT, MAX_MASTER_PORT = (20_000, 60_000) master_port_str = os.environ.get("MASTER_PORT") if master_port_str is None: rng = random.Random(seed) return rng.randint(MIN_MASTER_PORT, MAX_MASTER_PORT) return int(master_port_str) def _get_available_port() -> int: with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s: # A "" host address means INADDR_ANY i.e. binding to all interfaces. # Note this is not compatible with IPv6. s.bind(("", 0)) port = s.getsockname()[1] return port def _parse_slurm_node_list(s: str) -> List[str]: return subprocess.check_output(["scontrol", "show", "hostnames", s], text=True).splitlines() class JobType(Enum): TORCHELASTIC = "TorchElastic" SLURM = "Slurm" MANUAL = "manual" class TorchDistributedEnvironment: """ Helper class to get (and set) distributed job information from the environment. Identifies and supports (in this order): - TorchElastic, - Slurm, - Manual launch (single-node). """ def __init__(self): if "TORCHELASTIC_RUN_ID" in os.environ: # TorchElastic job created with torchrun self.job_id = os.environ["TORCHELASTIC_RUN_ID"] self.job_type = JobType.TORCHELASTIC self.master_addr = os.environ["MASTER_ADDR"] self.master_port = int(os.environ["MASTER_PORT"]) self.rank = int(os.environ["RANK"]) self.world_size = int(os.environ["WORLD_SIZE"]) self.local_rank = int(os.environ["LOCAL_RANK"]) self.local_world_size = int(os.environ["LOCAL_WORLD_SIZE"]) elif "SLURM_JOB_ID" in os.environ: # Slurm job created with sbatch, submitit, etc... self.job_id = int(os.environ["SLURM_JOB_ID"]) self.job_type = JobType.SLURM node_count = int(os.environ["SLURM_JOB_NUM_NODES"]) nodes = _parse_slurm_node_list(os.environ["SLURM_JOB_NODELIST"]) assert len(nodes) == node_count self.master_addr = nodes[0] self.master_port = _get_master_port(seed=self.job_id) self.rank = int(os.environ["SLURM_PROCID"]) self.world_size = int(os.environ["SLURM_NTASKS"]) self.local_rank = int(os.environ["SLURM_LOCALID"]) self.local_world_size = self.world_size // node_count else: # Single node and single job launched manually self.job_id = None self.job_type = JobType.MANUAL self.master_addr = "127.0.0.1" self.master_port = _get_available_port() self.rank = 0 self.world_size = 1 self.local_rank = 0 self.local_world_size = 1 assert self.rank < self.world_size assert self.local_rank < self.local_world_size def export( self, *, overwrite: bool, nccl_async_error_handling: bool = False, ) -> "TorchDistributedEnvironment": # See the "Environment variable initialization" section from # https://pytorch.org/docs/stable/distributed.html for the complete list of # environment variables required for the env:// initialization method. env_vars = { "MASTER_ADDR": self.master_addr, "MASTER_PORT": str(self.master_port), "RANK": str(self.rank), "WORLD_SIZE": str(self.world_size), "LOCAL_RANK": str(self.local_rank), "LOCAL_WORLD_SIZE": str(self.local_world_size), } if nccl_async_error_handling: env_vars.update( { "TORCH_NCCL_ASYNC_ERROR_HANDLING": "1", # "TORCH_" prefix added in PyTorch 2.2 } ) if not overwrite: for k, v in env_vars.items(): # Only check for difference with preset environment variables if k not in os.environ: continue if os.environ[k] == v: continue raise RuntimeError(f"Cannot export environment variables as {k} is already set") os.environ.update(env_vars) return self @property def is_main_process(self) -> bool: return self.rank == 0 def __str__(self): return ( f"{self.job_type.value} job " + (f"({self.job_id}) " if self.job_id else "") + f"using {self.master_addr}:{self.master_port} " # noqa: E231 f"(rank={self.rank}, world size={self.world_size})" ) def __repr__(self): return ( f"{self.__class__.__name__}(" f"master_addr={self.master_addr}," # noqa: E231 f"master_port={self.master_port}," # noqa: E231 f"rank={self.rank}," # noqa: E231 f"world_size={self.world_size}," # noqa: E231 f"local_rank={self.local_rank}," # noqa: E231 f"local_world_size={self.local_world_size}" ")" ) def enable_distributed( *, set_cuda_current_device: bool = True, overwrite: bool = False, nccl_async_error_handling: bool = False, restrict_print_to_main_process: bool = True, timeout: timedelta | None = None, ): """Enable distributed mode. Args: set_cuda_current_device: If True, call torch.cuda.set_device() to set the current PyTorch CUDA device to the one matching the local rank. overwrite: If True, overwrites already set variables. Else fails. nccl_async_error_handling: Enables NCCL asynchronous error handling. As a side effect, this enables timing out PyTorch distributed operations after a default 30 minutes delay). restrict_print_to_main_process: If True, the print function of non-main processes (ie rank>0) is disabled. Use print(..., force=True) to print anyway. If False, nothing is changed and all processes can print as usual. timeout: Timeout for operations executed against the process group. Default value is 10 minutes for NCCL and 30 minutes for other backends. """ global _DEFAULT_PROCESS_GROUP if _DEFAULT_PROCESS_GROUP is not None: raise RuntimeError("Distributed mode has already been enabled") torch_env = TorchDistributedEnvironment() logger.info(f"PyTorch distributed environment: {torch_env}") torch_env.export( overwrite=overwrite, nccl_async_error_handling=nccl_async_error_handling, ) if set_cuda_current_device: torch.cuda.set_device(torch_env.local_rank) dist.init_process_group(backend="nccl", timeout=timeout) dist.barrier() if restrict_print_to_main_process: _restrict_print_to_main_process() # Finalize setup _DEFAULT_PROCESS_GROUP = torch.distributed.group.WORLD def get_default_process_group(): return _DEFAULT_PROCESS_GROUP def disable_distributed() -> None: global _BUILTIN_PRINT if _BUILTIN_PRINT is not None: import builtins as __builtin__ __builtin__.print = _BUILTIN_PRINT global _PROCESS_SUBGROUP # checking here because get_process_subgroup can return _DEFAULT_PROCESS_GROUP if _PROCESS_SUBGROUP is not None: torch.distributed.destroy_process_group(_PROCESS_SUBGROUP) _PROCESS_SUBGROUP = None global _DEFAULT_PROCESS_GROUP if _DEFAULT_PROCESS_GROUP is not None: # not initialized torch.distributed.destroy_process_group(_DEFAULT_PROCESS_GROUP) _DEFAULT_PROCESS_GROUP = None def new_subgroups(all_subgroup_ranks: Sequence[Sequence[int]]): """Create new process subgroups according to the provided specification. Args: all_subgroup_ranks: a sequence of rank sequences (first rank, ..., last rank), one for each process subgroup. Example: ((0, 1), (2, 3), (4, 5, 6, 7)). Note: This is similar to the (non-documented) new_subgroups_by_enumeration(). This should be called once (and not sequentially) to create all subgroups. """ all_ranks = tuple(rank for subgroup_ranks in all_subgroup_ranks for rank in subgroup_ranks) rank = get_rank() assert len(all_ranks) == len(set(all_ranks)) assert rank in all_ranks global _PROCESS_SUBGROUP assert _PROCESS_SUBGROUP is None for subgroup_ranks in all_subgroup_ranks: subgroup = torch.distributed.new_group(subgroup_ranks) if rank in subgroup_ranks: _PROCESS_SUBGROUP = subgroup def get_process_subgroup(): """ Returns: The process subgroup of this rank (or None). """ return _PROCESS_SUBGROUP or _DEFAULT_PROCESS_GROUP def get_subgroup_rank() -> int: """ Returns: The rank of the current process within its process subgroup. """ return get_rank(group=get_process_subgroup()) def get_subgroup_size() -> int: """ Returns: The number of processes in the process subgroup """ return get_world_size(group=get_process_subgroup()) def is_subgroup_main_process() -> bool: """ Returns: True if the current process is the main one within its process subgroup. """ return get_rank(group=get_process_subgroup()) == 0