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import argparse
import getpass
import os
import os.path as osp
from datetime import datetime
from mmengine.config import Config, DictAction
from opencompass.partitioners import MultimodalNaivePartitioner
from opencompass.registry import PARTITIONERS, RUNNERS, build_from_cfg
from opencompass.runners import SlurmRunner
from opencompass.summarizers import DefaultSummarizer
from opencompass.utils import LarkReporter, get_logger
from opencompass.utils.run import (exec_mm_infer_runner, fill_eval_cfg,
fill_infer_cfg, get_config_from_arg)
def parse_args():
parser = argparse.ArgumentParser(description='Run an evaluation task')
parser.add_argument('config', nargs='?', help='Train config file path')
# add mutually exclusive args `--slurm` `--dlc`, defaults to local runner
# if "infer" or "eval" not specified
launch_method = parser.add_mutually_exclusive_group()
launch_method.add_argument('--slurm',
action='store_true',
default=False,
help='Whether to force tasks to run with srun. '
'If True, `--partition(-p)` must be set. '
'Defaults to False')
launch_method.add_argument('--dlc',
action='store_true',
default=False,
help='Whether to force tasks to run on dlc. If '
'True, `--aliyun-cfg` must be set. Defaults'
' to False')
# multi-modal support
parser.add_argument('--mm-eval',
help='Whether or not enable multimodal evaluation',
action='store_true',
default=False)
# Add shortcut parameters (models, datasets and summarizer)
parser.add_argument('--models', nargs='+', help='', default=None)
parser.add_argument('--datasets', nargs='+', help='', default=None)
parser.add_argument('--summarizer', help='', default=None)
# add general args
parser.add_argument('--debug',
help='Debug mode, in which scheduler will run tasks '
'in the single process, and output will not be '
'redirected to files',
action='store_true',
default=False)
parser.add_argument('--dry-run',
help='Dry run mode, in which the scheduler will not '
'actually run the tasks, but only print the commands '
'to run',
action='store_true',
default=False)
parser.add_argument('-m',
'--mode',
help='Running mode. You can choose "infer" if you '
'only want the inference results, or "eval" if you '
'already have the results and want to evaluate them, '
'or "viz" if you want to visualize the results.',
choices=['all', 'infer', 'eval', 'viz'],
default='all',
type=str)
parser.add_argument('-r',
'--reuse',
nargs='?',
type=str,
const='latest',
help='Reuse previous outputs & results, and run any '
'missing jobs presented in the config. If its '
'argument is not specified, the latest results in '
'the work_dir will be reused. The argument should '
'also be a specific timestamp, e.g. 20230516_144254'),
parser.add_argument('-w',
'--work-dir',
help='Work path, all the outputs will be '
'saved in this path, including the slurm logs, '
'the evaluation results, the summary results, etc.'
'If not specified, the work_dir will be set to '
'./outputs/default.',
default=None,
type=str)
parser.add_argument(
'--config-dir',
default='configs',
help='Use the custom config directory instead of config/ to '
'search the configs for datasets, models and summarizers',
type=str)
parser.add_argument('-l',
'--lark',
help='Report the running status to lark bot',
action='store_true',
default=False)
parser.add_argument('--max-partition-size',
help='The maximum size of an infer task. Only '
'effective when "infer" is missing from the config.',
type=int,
default=40000),
parser.add_argument(
'--gen-task-coef',
help='The dataset cost measurement coefficient for generation tasks, '
'Only effective when "infer" is missing from the config.',
type=int,
default=20)
parser.add_argument('--max-num-workers',
help='Max number of workers to run in parallel. '
'Will be overrideen by the "max_num_workers" argument '
'in the config.',
type=int,
default=32)
parser.add_argument('--max-workers-per-gpu',
help='Max task to run in parallel on one GPU. '
'It will only be used in the local runner.',
type=int,
default=1)
parser.add_argument(
'--retry',
help='Number of retries if the job failed when using slurm or dlc. '
'Will be overrideen by the "retry" argument in the config.',
type=int,
default=2)
parser.add_argument(
'--dump-eval-details',
help='Whether to dump the evaluation details, including the '
'correctness of each sample, bpb, etc.',
action='store_true',
)
# set srun args
slurm_parser = parser.add_argument_group('slurm_args')
parse_slurm_args(slurm_parser)
# set dlc args
dlc_parser = parser.add_argument_group('dlc_args')
parse_dlc_args(dlc_parser)
# set hf args
hf_parser = parser.add_argument_group('hf_args')
parse_hf_args(hf_parser)
# set custom dataset args
custom_dataset_parser = parser.add_argument_group('custom_dataset_args')
parse_custom_dataset_args(custom_dataset_parser)
args = parser.parse_args()
if args.slurm:
assert args.partition is not None, (
'--partition(-p) must be set if you want to use slurm')
if args.dlc:
assert os.path.exists(args.aliyun_cfg), (
'When launching tasks using dlc, it needs to be configured '
'in "~/.aliyun.cfg", or use "--aliyun-cfg $ALiYun-CFG_Path"'
' to specify a new path.')
return args
def parse_slurm_args(slurm_parser):
"""These args are all for slurm launch."""
slurm_parser.add_argument('-p',
'--partition',
help='Slurm partition name',
default=None,
type=str)
slurm_parser.add_argument('-q',
'--quotatype',
help='Slurm quota type',
default=None,
type=str)
slurm_parser.add_argument('--qos',
help='Slurm quality of service',
default=None,
type=str)
def parse_dlc_args(dlc_parser):
"""These args are all for dlc launch."""
dlc_parser.add_argument('--aliyun-cfg',
help='The config path for aliyun config',
default='~/.aliyun.cfg',
type=str)
def parse_hf_args(hf_parser):
"""These args are all for the quick construction of HuggingFace models."""
hf_parser.add_argument('--hf-path', type=str)
hf_parser.add_argument('--peft-path', type=str)
hf_parser.add_argument('--tokenizer-path', type=str)
hf_parser.add_argument('--model-kwargs',
nargs='+',
action=DictAction,
default={})
hf_parser.add_argument('--tokenizer-kwargs',
nargs='+',
action=DictAction,
default={})
hf_parser.add_argument('--max-out-len', type=int)
hf_parser.add_argument('--max-seq-len', type=int)
hf_parser.add_argument('--no-batch-padding',
action='store_true',
default=False)
hf_parser.add_argument('--batch-size', type=int)
hf_parser.add_argument('--num-gpus', type=int)
hf_parser.add_argument('--pad-token-id', type=int)
def parse_custom_dataset_args(custom_dataset_parser):
"""These args are all for the quick construction of custom datasets."""
custom_dataset_parser.add_argument('--custom-dataset-path', type=str)
custom_dataset_parser.add_argument('--custom-dataset-meta-path', type=str)
custom_dataset_parser.add_argument('--custom-dataset-data-type',
type=str,
choices=['mcq', 'qa'])
custom_dataset_parser.add_argument('--custom-dataset-infer-method',
type=str,
choices=['gen', 'ppl'])
def main():
args = parse_args()
if args.dry_run:
args.debug = True
# initialize logger
logger = get_logger(log_level='DEBUG' if args.debug else 'INFO')
cfg = get_config_from_arg(args)
if args.work_dir is not None:
cfg['work_dir'] = args.work_dir
else:
cfg.setdefault('work_dir', './outputs/default/')
# cfg_time_str defaults to the current time
cfg_time_str = dir_time_str = datetime.now().strftime('%Y%m%d_%H%M%S')
if args.reuse:
if args.reuse == 'latest':
if not os.path.exists(cfg.work_dir) or not os.listdir(
cfg.work_dir):
logger.warning('No previous results to reuse!')
else:
dirs = os.listdir(cfg.work_dir)
dir_time_str = sorted(dirs)[-1]
else:
dir_time_str = args.reuse
logger.info(f'Reusing experiements from {dir_time_str}')
elif args.mode in ['eval', 'viz']:
raise ValueError('You must specify -r or --reuse when running in eval '
'or viz mode!')
# update "actual" work_dir
cfg['work_dir'] = osp.join(cfg.work_dir, dir_time_str)
os.makedirs(osp.join(cfg.work_dir, 'configs'), exist_ok=True)
# dump config
output_config_path = osp.join(cfg.work_dir, 'configs',
f'{cfg_time_str}.py')
cfg.dump(output_config_path)
# Config is intentally reloaded here to avoid initialized
# types cannot be serialized
cfg = Config.fromfile(output_config_path, format_python_code=False)
# report to lark bot if specify --lark
if not args.lark:
cfg['lark_bot_url'] = None
elif cfg.get('lark_bot_url', None):
content = f'{getpass.getuser()}\'s task has been launched!'
LarkReporter(cfg['lark_bot_url']).post(content)
if args.mode in ['all', 'infer']:
# When user have specified --slurm or --dlc, or have not set
# "infer" in config, we will provide a default configuration
# for infer
if (args.dlc or args.slurm) and cfg.get('infer', None):
logger.warning('You have set "infer" in the config, but '
'also specified --slurm or --dlc. '
'The "infer" configuration will be overridden by '
'your runtime arguments.')
# Check whether run multimodal evaluation
if args.mm_eval:
partitioner = MultimodalNaivePartitioner(
osp.join(cfg['work_dir'], 'predictions/'))
tasks = partitioner(cfg)
exec_mm_infer_runner(tasks, args, cfg)
return
if args.dlc or args.slurm or cfg.get('infer', None) is None:
fill_infer_cfg(cfg, args)
if args.partition is not None:
if RUNNERS.get(cfg.infer.runner.type) == SlurmRunner:
cfg.infer.runner.partition = args.partition
cfg.infer.runner.quotatype = args.quotatype
else:
logger.warning('SlurmRunner is not used, so the partition '
'argument is ignored.')
if args.debug:
cfg.infer.runner.debug = True
if args.lark:
cfg.infer.runner.lark_bot_url = cfg['lark_bot_url']
cfg.infer.partitioner['out_dir'] = osp.join(cfg['work_dir'],
'predictions/')
partitioner = PARTITIONERS.build(cfg.infer.partitioner)
tasks = partitioner(cfg)
if args.dry_run:
return
runner = RUNNERS.build(cfg.infer.runner)
# Add extra attack config if exists
if hasattr(cfg, 'attack'):
for task in tasks:
cfg.attack.dataset = task.datasets[0][0].abbr
task.attack = cfg.attack
runner(tasks)
# evaluate
if args.mode in ['all', 'eval']:
# When user have specified --slurm or --dlc, or have not set
# "eval" in config, we will provide a default configuration
# for eval
if (args.dlc or args.slurm) and cfg.get('eval', None):
logger.warning('You have set "eval" in the config, but '
'also specified --slurm or --dlc. '
'The "eval" configuration will be overridden by '
'your runtime arguments.')
if args.dlc or args.slurm or cfg.get('eval', None) is None:
fill_eval_cfg(cfg, args)
if args.dump_eval_details:
cfg.eval.runner.task.dump_details = True
if args.partition is not None:
if RUNNERS.get(cfg.eval.runner.type) == SlurmRunner:
cfg.eval.runner.partition = args.partition
cfg.eval.runner.quotatype = args.quotatype
else:
logger.warning('SlurmRunner is not used, so the partition '
'argument is ignored.')
if args.debug:
cfg.eval.runner.debug = True
if args.lark:
cfg.eval.runner.lark_bot_url = cfg['lark_bot_url']
cfg.eval.partitioner['out_dir'] = osp.join(cfg['work_dir'], 'results/')
partitioner = PARTITIONERS.build(cfg.eval.partitioner)
tasks = partitioner(cfg)
if args.dry_run:
return
runner = RUNNERS.build(cfg.eval.runner)
runner(tasks)
# visualize
if args.mode in ['all', 'eval', 'viz']:
summarizer_cfg = cfg.get('summarizer', {})
if not summarizer_cfg or summarizer_cfg.get('type', None) is None:
summarizer_cfg['type'] = DefaultSummarizer
summarizer_cfg['config'] = cfg
summarizer = build_from_cfg(summarizer_cfg)
summarizer.summarize(time_str=cfg_time_str)
if __name__ == '__main__':
main()