dummy_m4 / m4 /scripts /s3-upload-checkpoints.py
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ysharma HF staff
Duplicate from HuggingFaceM4/m4-dialogue
e7d3e35
#!/usr/bin/env python
#
# This tool uploads any new deepspeed checkpoints found at given path to s3 (and also various non-checkpoint files, like logs)
#
# Example:
#
# ./s3-upload-checkpoints.py checkpoints-path
#
# Use `-h` for more options
#
import argparse
import subprocess
import sys
import time
from pathlib import Path
repo_path = Path(__file__).resolve().parents[2]
zero_checkpoint_to_hf_path = repo_path / "m4/models/zero_checkpoint_to_hf.py"
RETRIES = 5
# what dir/file glob patterns to include in the upload besides checkpoints
include_patterns = ["tb_run_*", "logs", "config.yaml"]
# we have to deal with potentially overlapping slurm jobs running on different nodes, so we can't
# rely on PIDs of a running process. Will use a control file instead as the filesystem is shared.
#
# If that file is there it means:
#
# 1. either the upload is still running
# 2. the upload got aborted (e.g. cpu-oom)
#
# to detect aborted uploads we will check if the control file is older than a reasonable time to perform such a upload
control_file_name = "started-upload-checkpoint"
finished_uploading_file_name = "finished-upload-checkpoint"
# should fine tune - but surely 2h per checkpoint is plenty
reasonable_upload_time_in_secs = 2 * 60 * 60
def run_cmd(cmd, check=True):
try:
response = subprocess.run(
cmd,
stderr=subprocess.PIPE,
stdout=subprocess.PIPE,
check=check,
encoding="utf-8",
).stdout.strip()
except subprocess.CalledProcessError as exc:
raise EnvironmentError(exc.stderr)
return response
def get_args():
parser = argparse.ArgumentParser()
parser.add_argument("checkpoints_path", type=str, help="base dir with checkpoints")
# parser.add_argument("experiment_name", type=str, help="experiment name as a s3 sub-dir")
parser.add_argument("-f", "--force", action="store_true", help="force uploading of all checkpoints")
parser.add_argument(
"--skip-conversion-check", action="store_true", help="skip checkpoint conversion is done check"
)
return parser.parse_args()
def exit(msg):
print(msg)
sys.exit()
def should_process(path, force, control_file_path, finished_uploading_file_path, args):
"""Heuristics to decide whether to upload this opt_step-XXX checkpoint or not"""
# check if checkpoint is fully saved
finished_saving_path = path / "finished-saving" # defined in from trainer.py
if not finished_saving_path.exists():
print(f"[N] {path} isn't finished saving. Skipping")
return False
if force:
print("[Y] Forced to re-process {checkpoint_dir}")
return True
# check if already uploaded
if finished_uploading_file_path.exists():
print(f"[N] {path} has already been uploaded. Skipping")
return False
# check conversion is completed
if not args.skip_conversion_check:
converted_model_path_1 = path / "unwrapped_model" / "pytorch_model.bin.index.json"
converted_model_path_2 = path / "unwrapped_model" / "pytorch_model.bin"
if not converted_model_path_1.exists() and not converted_model_path_2.exists():
print(f"[N] {path} doesn't have a converted model. Skipping")
return False
# complicated checks - has another job already started uploading? or did it crash?
if control_file_path.exists():
if control_file_path.stat().st_mtime < time.time() - reasonable_upload_time_in_secs:
print(f"[Y] {path} looks stale - probably aborted job. Re-uploading")
return True
else:
print(
f"[N] {path} either another job is uploading it or less than"
f" {reasonable_upload_time_in_secs} secs has passed since it was launched. Skipping"
)
return False
else:
print(f"[Y] {path} is a new checkpoint. Uploading")
return True
def main():
args = get_args()
checkpoints_path = Path(args.checkpoints_path)
if not (checkpoints_path.exists() and checkpoints_path.is_dir()):
raise FileNotFoundError(f"can't find a directory '{checkpoints_path}'")
checkpoint_dirs = list(checkpoints_path.glob("opt_step-*"))
if len(checkpoint_dirs) == 0:
exit("No checkpoints found, exiting")
exp_name = checkpoints_path.name
# Check each folder in real time to allow for overlapping jobs starting at different times
for checkpoint_dir in checkpoint_dirs:
print(f"\n*** Checking {checkpoint_dir}")
control_file_path = checkpoint_dir / control_file_name
finished_uploading_file_path = checkpoint_dir / finished_uploading_file_name
if not should_process(checkpoint_dir, args.force, control_file_path, finished_uploading_file_path, args):
continue
opt_step = checkpoint_dir.name
bucket_name = "m4-exps"
bucket_path = f"{exp_name}/{opt_step}"
print(f"Launching upload for {checkpoint_dir} - it could take a long time")
cmd = f"s5cmd sync {checkpoint_dir}/ s3://{bucket_name}/{bucket_path}/".split()
# we could use flock here, to avoid a race condition, but it'd be pointless since each
# cronjob is likely to run on a different node and flock only works within a single node
control_file_path.touch()
# print(f"mock running {cmd}")
# s5cmd will fail with an error like this when MD5 checksum doesn't match on upload (it won't retry)
# ERROR "cp data4.tar s3://m4-datasets/cm4-test/data4.tar": InvalidDigest: The Content-MD5
# you specified was invalid. status code: 400, request id: SZEHBJ4QQ33JSMH7, host id:
# XTeMYKd2KECiVKbFnwVbXo3LgnuA2OHWk5S+tHKAOKO95Os/pje2ZEbCfO5pojQtCTFOovvnVME=
tries = 0
while tries < RETRIES:
tries += 1
try:
response = run_cmd(cmd)
print(response)
break
except EnvironmentError as e:
if "InvalidDigest" in str(e):
print(f"MD5 checksum failed, upload retry {tries}")
continue
except Exception:
# some other possible failure?
raise
# for now disable this as large files don't have sha256 checksums
# result = integrity_check_recursive(checkpoint_dir, bucket_name, bucket_path)
# print(f"Integrity check was {result}")
control_file_path.unlink()
finished_uploading_file_path.touch()
# now upload non-checkpoint files
print("\n*** Uploading non-checkpoint files")
upload_dirs = []
for pat in include_patterns:
upload_dirs += list(checkpoints_path.glob(pat))
for dir in upload_dirs:
print(f"Launching upload for {dir}")
cmd = f"s5cmd sync {dir} s3://m4-exps/{exp_name}/".split()
print(f"running {cmd}")
response = run_cmd(cmd)
print(response)
if __name__ == "__main__":
main()