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submitit_mcc.py
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submitit_mcc.py
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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
# --------------------------------------------------------
# A script to run multinode training with submitit.
# References:
# MAE: https://github.com/facebookresearch/mae
# --------------------------------------------------------
import argparse
import os
import uuid
from pathlib import Path
import glob
import main_mcc as trainer
import submitit
def parse_args():
trainer_parser = trainer.get_args_parser()
parser = argparse.ArgumentParser("Submitit for MCC", parents=[trainer_parser])
parser.add_argument("--ngpus", default=8, type=int, help="Number of gpus to request on each node")
parser.add_argument("--nodes", default=2, type=int, help="Number of nodes to request")
parser.add_argument("--timeout", default=4320, type=int, help="Duration of the job")
parser.add_argument("--mem_per_gpu", default=80, type=int)
# parser.add_argument("--partition", default="devlab", type=str, help="Partition where to submit")
parser.add_argument("--partition", default="learnlab", type=str, help="Partition where to submit")
parser.add_argument("--use_volta32", action='store_true', help="Request 32G V100 GPUs")
parser.add_argument('--comment', default="", type=str, help="Comment to pass to scheduler")
return parser.parse_args()
def get_shared_folder() -> Path:
user = os.getenv("USER")
if Path("/checkpoint/").is_dir():
p = Path(f"/checkpoint/{user}/experiments")
p.mkdir(exist_ok=True)
return p
raise RuntimeError("No shared folder available")
def get_init_file():
# Init file must not exist, but it's parent dir must exist.
os.makedirs(str(get_shared_folder()), exist_ok=True)
init_file = get_shared_folder() / f"{uuid.uuid4().hex}_init"
if init_file.exists():
os.remove(str(init_file))
return init_file
class Trainer(object):
def __init__(self, args):
self.args = args
def __call__(self):
import main_mcc as trainer
self._setup_gpu_args()
trainer.main(self.args)
def checkpoint(self):
import os
import submitit
self.args.dist_url = get_init_file().as_uri()
checkpoint_file = sorted(glob.glob(os.path.join(self.args.output_dir, "checkpoint*.pth")))[-1]
if os.path.exists(checkpoint_file):
self.args.resume = checkpoint_file
empty_trainer = type(self)(self.args)
return submitit.helpers.DelayedSubmission(empty_trainer)
def _setup_gpu_args(self):
import submitit
from pathlib import Path
job_env = submitit.JobEnvironment()
self.args.output_dir = Path(str(self.args.output_dir).replace("%j", str(job_env.job_id)))
self.args.gpu = job_env.local_rank
self.args.rank = job_env.global_rank
self.args.world_size = job_env.num_tasks
print(f"Process group: {job_env.num_tasks} tasks, rank: {job_env.global_rank}")
def main():
args = parse_args()
if args.job_dir == "":
args.job_dir = get_shared_folder() / "%j"
# Note that the folder will depend on the job_id, to easily track experiments
executor = submitit.AutoExecutor(folder=args.job_dir, slurm_max_num_timeout=30)
# executor = submitit.LocalExecutor(folder=args.job_dir)
num_gpus_per_node = args.ngpus
nodes = args.nodes
timeout_min = args.timeout
partition = args.partition
kwargs = {}
if args.use_volta32:
kwargs['slurm_constraint'] = 'volta32gb'
if args.comment:
kwargs['slurm_comment'] = args.comment
executor.update_parameters(
mem_gb=args.mem_per_gpu * num_gpus_per_node,
# mem_gb=80 * num_gpus_per_node,
gpus_per_node=num_gpus_per_node,
tasks_per_node=num_gpus_per_node, # one task per GPU
cpus_per_task=10,
nodes=nodes,
timeout_min=timeout_min, # max is 60 * 72
# Below are cluster dependent parameters
slurm_partition=partition,
slurm_signal_delay_s=120,
**kwargs
)
executor.update_parameters(name="mcc")
args.dist_url = get_init_file().as_uri()
args.output_dir = args.job_dir
trainer = Trainer(args)
job = executor.submit(trainer)
print("Submitted job_id:", job.job_id)
if __name__ == "__main__":
main()