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