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import logging |
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import os |
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import pickle |
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import random |
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import socket |
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import struct |
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import subprocess |
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import warnings |
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from collections import OrderedDict |
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from typing import Any, Dict, Mapping |
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import torch |
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import torch.distributed as dist |
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from fairseq import utils |
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logger = logging.getLogger(__name__) |
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def is_master(args): |
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return args.distributed_rank == 0 |
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def infer_init_method(args, force_distributed=False): |
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if args.distributed_init_method is not None or getattr(args, 'tpu', False): |
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return |
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if all(key in os.environ for key in [ |
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'MASTER_ADDR', 'MASTER_PORT', 'WORLD_SIZE', 'RANK' |
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]): |
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args.distributed_init_method = 'env://' |
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args.distributed_world_size = int(os.environ['WORLD_SIZE']) |
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args.distributed_rank = int(os.environ['RANK']) |
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args.distributed_no_spawn = True |
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elif args.distributed_port > 0: |
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node_list = os.environ.get('SLURM_STEP_NODELIST') |
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if node_list is None: |
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node_list = os.environ.get('SLURM_JOB_NODELIST') |
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if node_list is not None: |
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try: |
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hostnames = subprocess.check_output(['scontrol', 'show', 'hostnames', node_list]) |
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args.distributed_init_method = 'tcp://{host}:{port}'.format( |
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host=hostnames.split()[0].decode('utf-8'), |
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port=args.distributed_port, |
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) |
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nnodes = int(os.environ.get('SLURM_NNODES')) |
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ntasks_per_node = os.environ.get('SLURM_NTASKS_PER_NODE') |
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if ntasks_per_node is not None: |
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ntasks_per_node = int(ntasks_per_node) |
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else: |
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ntasks = int(os.environ.get('SLURM_NTASKS')) |
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nnodes = int(os.environ.get('SLURM_NNODES')) |
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assert ntasks % nnodes == 0 |
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ntasks_per_node = int(ntasks / nnodes) |
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if ntasks_per_node == 1: |
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assert args.distributed_world_size % nnodes == 0 |
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gpus_per_node = args.distributed_world_size // nnodes |
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node_id = int(os.environ.get('SLURM_NODEID')) |
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args.distributed_rank = node_id * gpus_per_node |
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else: |
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assert ntasks_per_node == args.distributed_world_size // nnodes |
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args.distributed_no_spawn = True |
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args.distributed_rank = int(os.environ.get('SLURM_PROCID')) |
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args.device_id = int(os.environ.get('SLURM_LOCALID')) |
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except subprocess.CalledProcessError as e: |
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raise e |
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except FileNotFoundError: |
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pass |
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elif args.distributed_world_size > 1 or force_distributed: |
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assert args.distributed_world_size <= torch.cuda.device_count() |
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port = random.randint(10000, 20000) |
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args.distributed_init_method = 'tcp://localhost:{port}'.format(port=port) |
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def distributed_init(args): |
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if not getattr(args, 'tpu', False): |
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if torch.distributed.is_initialized(): |
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warnings.warn('Distributed is already initialized, cannot initialize twice!') |
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else: |
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logger.info('distributed init (rank {}): {}'.format( |
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args.distributed_rank, args.distributed_init_method, |
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)) |
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dist.init_process_group( |
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backend=args.distributed_backend, |
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init_method=args.distributed_init_method, |
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world_size=args.distributed_world_size, |
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rank=args.distributed_rank, |
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) |
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logger.info('initialized host {} as rank {}'.format( |
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socket.gethostname(), args.distributed_rank, |
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)) |
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if torch.cuda.is_available(): |
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dist.all_reduce(torch.zeros(1).cuda()) |
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args.distributed_rank = torch.distributed.get_rank() |
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else: |
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import torch_xla.core.xla_model as xm |
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assert xm.xrt_world_size() == args.distributed_world_size |
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args.device_id = xm.get_local_ordinal() |
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args.distributed_rank = xm.get_ordinal() |
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xm.rendezvous('distributed_init') |
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xm.mark_step() |
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if is_master(args): |
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logging.getLogger().setLevel(logging.INFO) |
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else: |
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logging.getLogger().setLevel(logging.WARNING) |
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if args.model_parallel_size > 1: |
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try: |
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from fairseq.model_parallel.megatron.mpu import ( |
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get_model_parallel_rank, |
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initialize_model_parallel, |
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model_parallel_cuda_manual_seed, |
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) |
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except ImportError: |
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raise ImportError( |
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'\n\nPlease install the megatron submodule:' |
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'\n\n git submodule update --init ' |
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'fairseq/model_parallel/megatron' |
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) |
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initialize_model_parallel(args.model_parallel_size) |
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model_parallel_cuda_manual_seed(args.seed) |
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model_part_number = get_model_parallel_rank() |
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args.checkpoint_suffix += '-model_part-{0}'.format(model_part_number) |
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return args.distributed_rank |
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def distributed_main(i, main, args, kwargs): |
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args.device_id = i |
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if torch.cuda.is_available() and not args.cpu and not getattr(args, "tpu", False): |
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torch.cuda.set_device(args.device_id) |
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if args.distributed_rank is None: |
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args.distributed_rank = kwargs.pop('start_rank', 0) + i |
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args.distributed_rank = distributed_init(args) |
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after_distributed_init_fn = kwargs.pop('after_distributed_init_fn', None) |
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if after_distributed_init_fn: |
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args = after_distributed_init_fn(args) |
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main(args, **kwargs) |
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def call_main(args, main, **kwargs): |
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if args.distributed_init_method is None: |
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infer_init_method(args) |
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if args.distributed_init_method is not None: |
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if not args.distributed_no_spawn: |
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start_rank = args.distributed_rank |
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args.distributed_rank = None |
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kwargs['start_rank'] = start_rank |
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torch.multiprocessing.spawn( |
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fn=distributed_main, |
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args=(main, args, kwargs), |
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nprocs=min( |
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torch.cuda.device_count(), |
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args.distributed_world_size, |
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), |
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) |
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else: |
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distributed_main(args.device_id, main, args, kwargs) |
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elif getattr(args, "tpu", False): |
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import torch_xla.distributed.xla_multiprocessing as xmp |
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torch.multiprocessing.set_sharing_strategy("file_system") |
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xmp.spawn( |
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fn=distributed_main, |
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args=(main, args, kwargs), |
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nprocs=8, |
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) |
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else: |
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main(args, **kwargs) |
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def get_rank(): |
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return dist.get_rank() |
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def get_world_size(): |
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return dist.get_world_size() |
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def get_default_group(): |
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return dist.group.WORLD |
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def all_reduce(tensor, group=None): |
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if isinstance(group, tuple) and group[0] == 'tpu': |
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import torch_xla.core.xla_model as xm |
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return xm.all_reduce('sum', [tensor], groups=group[1]) |
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else: |
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if group is None: |
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group = get_default_group() |
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return dist.all_reduce(tensor, group=group) |
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def all_gather_list(data, group=None, max_size=16384): |
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"""Gathers arbitrary data from all nodes into a list. |
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Similar to :func:`~torch.distributed.all_gather` but for arbitrary Python |
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data. Note that *data* must be picklable. |
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Args: |
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data (Any): data from the local worker to be gathered on other workers |
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group (optional): group of the collective |
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max_size (int, optional): maximum size of the data to be gathered |
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across workers |
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""" |
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rank = get_rank() |
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world_size = get_world_size() |
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buffer_size = max_size * world_size |
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if not hasattr(all_gather_list, '_buffer') or \ |
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all_gather_list._buffer.numel() < buffer_size: |
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all_gather_list._buffer = torch.cuda.ByteTensor(buffer_size) |
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all_gather_list._cpu_buffer = torch.ByteTensor(max_size).pin_memory() |
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buffer = all_gather_list._buffer |
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buffer.zero_() |
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cpu_buffer = all_gather_list._cpu_buffer |
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data = utils.move_to_cpu(data) |
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enc = pickle.dumps(data) |
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enc_size = len(enc) |
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header_size = 4 |
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size = header_size + enc_size |
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if size > max_size: |
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raise ValueError('encoded data size ({}) exceeds max_size ({})'.format(size, max_size)) |
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header = struct.pack(">I", enc_size) |
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cpu_buffer[:size] = torch.ByteTensor(list(header + enc)) |
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start = rank * max_size |
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buffer[start:start + size].copy_(cpu_buffer[:size]) |
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all_reduce(buffer, group=group) |
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buffer = buffer.cpu() |
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try: |
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result = [] |
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for i in range(world_size): |
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out_buffer = buffer[i * max_size:(i + 1) * max_size] |
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enc_size, = struct.unpack(">I", bytes(out_buffer[:header_size].tolist())) |
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if enc_size > 0: |
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result.append(pickle.loads(bytes(out_buffer[header_size:header_size + enc_size].tolist()))) |
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return result |
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except pickle.UnpicklingError: |
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raise Exception( |
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'Unable to unpickle data from other workers. all_gather_list requires all ' |
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'workers to enter the function together, so this error usually indicates ' |
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'that the workers have fallen out of sync somehow. Workers can fall out of ' |
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'sync if one of them runs out of memory, or if there are other conditions ' |
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'in your training script that can cause one worker to finish an epoch ' |
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'while other workers are still iterating over their portions of the data. ' |
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'Try rerunning with --ddp-backend=no_c10d and see if that helps.' |
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) |
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def all_reduce_dict( |
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data: Mapping[str, Any], |
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device, |
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group=None, |
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) -> Dict[str, Any]: |
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""" |
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AllReduce a dictionary of values across workers. We separately |
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reduce items that are already on the device and items on CPU for |
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better performance. |
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Args: |
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data (Mapping[str, Any]): dictionary of data to all-reduce, but |
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cannot be a nested dictionary |
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device (torch.device): device for the reduction |
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group (optional): group of the collective |
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""" |
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data_keys = list(data.keys()) |
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cpu_data = OrderedDict() |
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device_data = OrderedDict() |
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for k in data_keys: |
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t = data[k] |
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if not torch.is_tensor(t): |
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cpu_data[k] = torch.tensor(t, dtype=torch.double) |
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elif t.device.type != device.type: |
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cpu_data[k] = t.to(dtype=torch.double) |
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else: |
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device_data[k] = t.to(dtype=torch.double) |
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def _all_reduce_dict(data: OrderedDict): |
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if len(data) == 0: |
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return data |
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buf = torch.stack(list(data.values())).to(device=device) |
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all_reduce(buf, group=group) |
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return {k: buf[i] for i, k in enumerate(data)} |
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cpu_data = _all_reduce_dict(cpu_data) |
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device_data = _all_reduce_dict(device_data) |
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def get_from_stack(key): |
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if key in cpu_data: |
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return cpu_data[key] |
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elif key in device_data: |
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return device_data[key] |
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raise KeyError |
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return OrderedDict([(key, get_from_stack(key)) for key in data_keys]) |
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