train.py 18 KB

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  1. #!/usr/bin/env python3
  2. # Copyright FunASR (https://github.com/alibaba-damo-academy/FunASR). All Rights Reserved.
  3. # MIT License (https://opensource.org/licenses/MIT)
  4. import argparse
  5. import logging
  6. import os
  7. import sys
  8. from io import BytesIO
  9. import torch
  10. from funasr.build_utils.build_args import build_args
  11. from funasr.build_utils.build_dataloader import build_dataloader
  12. from funasr.build_utils.build_distributed import build_distributed
  13. from funasr.build_utils.build_model import build_model
  14. from funasr.build_utils.build_optimizer import build_optimizer
  15. from funasr.build_utils.build_scheduler import build_scheduler
  16. from funasr.build_utils.build_trainer import build_trainer
  17. from funasr.tokenizer.phoneme_tokenizer import g2p_choices
  18. from funasr.torch_utils.load_pretrained_model import load_pretrained_model
  19. from funasr.torch_utils.model_summary import model_summary
  20. from funasr.torch_utils.pytorch_version import pytorch_cudnn_version
  21. from funasr.torch_utils.set_all_random_seed import set_all_random_seed
  22. from funasr.utils.nested_dict_action import NestedDictAction
  23. from funasr.utils.prepare_data import prepare_data
  24. from funasr.utils.types import int_or_none
  25. from funasr.utils.types import str2bool
  26. from funasr.utils.types import str_or_none
  27. from funasr.utils.yaml_no_alias_safe_dump import yaml_no_alias_safe_dump
  28. from funasr.modules.lora.utils import mark_only_lora_as_trainable
  29. def get_parser():
  30. parser = argparse.ArgumentParser(
  31. description="FunASR Common Training Parser",
  32. )
  33. # common configuration
  34. parser.add_argument("--output_dir", help="model save path")
  35. parser.add_argument(
  36. "--ngpu",
  37. type=int,
  38. default=0,
  39. help="The number of gpus. 0 indicates CPU mode",
  40. )
  41. parser.add_argument("--seed", type=int, default=0, help="Random seed")
  42. parser.add_argument("--task_name", type=str, default="asr", help="Name for different tasks")
  43. # ddp related
  44. parser.add_argument(
  45. "--dist_backend",
  46. default="nccl",
  47. type=str,
  48. help="distributed backend",
  49. )
  50. parser.add_argument(
  51. "--dist_init_method",
  52. type=str,
  53. default="env://",
  54. help='if init_method="env://", env values of "MASTER_PORT", "MASTER_ADDR", '
  55. '"WORLD_SIZE", and "RANK" are referred.',
  56. )
  57. parser.add_argument(
  58. "--dist_world_size",
  59. type=int,
  60. default=1,
  61. help="number of nodes for distributed training",
  62. )
  63. parser.add_argument(
  64. "--dist_rank",
  65. type=int,
  66. default=None,
  67. help="node rank for distributed training",
  68. )
  69. parser.add_argument(
  70. "--local_rank",
  71. type=int,
  72. default=None,
  73. help="local rank for distributed training",
  74. )
  75. parser.add_argument(
  76. "--dist_master_addr",
  77. default=None,
  78. type=str_or_none,
  79. help="The master address for distributed training. "
  80. "This value is used when dist_init_method == 'env://'",
  81. )
  82. parser.add_argument(
  83. "--dist_master_port",
  84. default=None,
  85. type=int_or_none,
  86. help="The master port for distributed training"
  87. "This value is used when dist_init_method == 'env://'",
  88. )
  89. parser.add_argument(
  90. "--dist_launcher",
  91. default=None,
  92. type=str_or_none,
  93. choices=["slurm", "mpi", None],
  94. help="The launcher type for distributed training",
  95. )
  96. parser.add_argument(
  97. "--multiprocessing_distributed",
  98. default=True,
  99. type=str2bool,
  100. help="Use multi-processing distributed training to launch "
  101. "N processes per node, which has N GPUs. This is the "
  102. "fastest way to use PyTorch for either single node or "
  103. "multi node data parallel training",
  104. )
  105. parser.add_argument(
  106. "--unused_parameters",
  107. type=str2bool,
  108. default=False,
  109. help="Whether to use the find_unused_parameters in "
  110. "torch.nn.parallel.DistributedDataParallel ",
  111. )
  112. parser.add_argument(
  113. "--gpu_id",
  114. type=int,
  115. default=0,
  116. help="local gpu id.",
  117. )
  118. # cudnn related
  119. parser.add_argument(
  120. "--cudnn_enabled",
  121. type=str2bool,
  122. default=torch.backends.cudnn.enabled,
  123. help="Enable CUDNN",
  124. )
  125. parser.add_argument(
  126. "--cudnn_benchmark",
  127. type=str2bool,
  128. default=torch.backends.cudnn.benchmark,
  129. help="Enable cudnn-benchmark mode",
  130. )
  131. parser.add_argument(
  132. "--cudnn_deterministic",
  133. type=str2bool,
  134. default=True,
  135. help="Enable cudnn-deterministic mode",
  136. )
  137. # trainer related
  138. parser.add_argument(
  139. "--max_epoch",
  140. type=int,
  141. default=40,
  142. help="The maximum number epoch to train",
  143. )
  144. parser.add_argument(
  145. "--max_update",
  146. type=int,
  147. default=sys.maxsize,
  148. help="The maximum number update step to train",
  149. )
  150. parser.add_argument(
  151. "--batch_interval",
  152. type=int,
  153. default=10000,
  154. help="The batch interval for saving model.",
  155. )
  156. parser.add_argument(
  157. "--patience",
  158. type=int_or_none,
  159. default=None,
  160. help="Number of epochs to wait without improvement "
  161. "before stopping the training",
  162. )
  163. parser.add_argument(
  164. "--val_scheduler_criterion",
  165. type=str,
  166. nargs=2,
  167. default=("valid", "loss"),
  168. help="The criterion used for the value given to the lr scheduler. "
  169. 'Give a pair referring the phase, "train" or "valid",'
  170. 'and the criterion name. The mode specifying "min" or "max" can '
  171. "be changed by --scheduler_conf",
  172. )
  173. parser.add_argument(
  174. "--early_stopping_criterion",
  175. type=str,
  176. nargs=3,
  177. default=("valid", "loss", "min"),
  178. help="The criterion used for judging of early stopping. "
  179. 'Give a pair referring the phase, "train" or "valid",'
  180. 'the criterion name and the mode, "min" or "max", e.g. "acc,max".',
  181. )
  182. parser.add_argument(
  183. "--best_model_criterion",
  184. nargs="+",
  185. default=[
  186. ("train", "loss", "min"),
  187. ("valid", "loss", "min"),
  188. ("train", "acc", "max"),
  189. ("valid", "acc", "max"),
  190. ],
  191. help="The criterion used for judging of the best model. "
  192. 'Give a pair referring the phase, "train" or "valid",'
  193. 'the criterion name, and the mode, "min" or "max", e.g. "acc,max".',
  194. )
  195. parser.add_argument(
  196. "--keep_nbest_models",
  197. type=int,
  198. nargs="+",
  199. default=[10],
  200. help="Remove previous snapshots excluding the n-best scored epochs",
  201. )
  202. parser.add_argument(
  203. "--nbest_averaging_interval",
  204. type=int,
  205. default=0,
  206. help="The epoch interval to apply model averaging and save nbest models",
  207. )
  208. parser.add_argument(
  209. "--grad_clip",
  210. type=float,
  211. default=5.0,
  212. help="Gradient norm threshold to clip",
  213. )
  214. parser.add_argument(
  215. "--grad_clip_type",
  216. type=float,
  217. default=2.0,
  218. help="The type of the used p-norm for gradient clip. Can be inf",
  219. )
  220. parser.add_argument(
  221. "--grad_noise",
  222. type=str2bool,
  223. default=False,
  224. help="The flag to switch to use noise injection to "
  225. "gradients during training",
  226. )
  227. parser.add_argument(
  228. "--accum_grad",
  229. type=int,
  230. default=1,
  231. help="The number of gradient accumulation",
  232. )
  233. parser.add_argument(
  234. "--resume",
  235. type=str2bool,
  236. default=False,
  237. help="Enable resuming if checkpoint is existing",
  238. )
  239. parser.add_argument(
  240. "--train_dtype",
  241. default="float32",
  242. choices=["float16", "float32", "float64"],
  243. help="Data type for training.",
  244. )
  245. parser.add_argument(
  246. "--use_amp",
  247. type=str2bool,
  248. default=False,
  249. help="Enable Automatic Mixed Precision. This feature requires pytorch>=1.6",
  250. )
  251. parser.add_argument(
  252. "--log_interval",
  253. default=None,
  254. help="Show the logs every the number iterations in each epochs at the "
  255. "training phase. If None is given, it is decided according the number "
  256. "of training samples automatically .",
  257. )
  258. parser.add_argument(
  259. "--use_tensorboard",
  260. type=str2bool,
  261. default=True,
  262. help="Enable tensorboard logging",
  263. )
  264. # pretrained model related
  265. parser.add_argument(
  266. "--init_param",
  267. type=str,
  268. action="append",
  269. default=[],
  270. help="Specify the file path used for initialization of parameters. "
  271. "The format is '<file_path>:<src_key>:<dst_key>:<exclude_keys>', "
  272. "where file_path is the model file path, "
  273. "src_key specifies the key of model states to be used in the model file, "
  274. "dst_key specifies the attribute of the model to be initialized, "
  275. "and exclude_keys excludes keys of model states for the initialization."
  276. "e.g.\n"
  277. " # Load all parameters"
  278. " --init_param some/where/model.pb\n"
  279. " # Load only decoder parameters"
  280. " --init_param some/where/model.pb:decoder:decoder\n"
  281. " # Load only decoder parameters excluding decoder.embed"
  282. " --init_param some/where/model.pb:decoder:decoder:decoder.embed\n"
  283. " --init_param some/where/model.pb:decoder:decoder:decoder.embed\n",
  284. )
  285. parser.add_argument(
  286. "--ignore_init_mismatch",
  287. type=str2bool,
  288. default=False,
  289. help="Ignore size mismatch when loading pre-trained model",
  290. )
  291. parser.add_argument(
  292. "--freeze_param",
  293. type=str,
  294. default=[],
  295. action="append",
  296. help="Freeze parameters",
  297. )
  298. # dataset related
  299. parser.add_argument(
  300. "--dataset_type",
  301. type=str,
  302. default="small",
  303. help="whether to use dataloader for large dataset",
  304. )
  305. parser.add_argument(
  306. "--dataset_conf",
  307. action=NestedDictAction,
  308. default=dict(),
  309. help=f"The keyword arguments for dataset",
  310. )
  311. parser.add_argument(
  312. "--data_dir",
  313. type=str,
  314. default=None,
  315. help="root path of data",
  316. )
  317. parser.add_argument(
  318. "--train_set",
  319. type=str,
  320. default="train",
  321. help="train dataset",
  322. )
  323. parser.add_argument(
  324. "--valid_set",
  325. type=str,
  326. default="validation",
  327. help="dev dataset",
  328. )
  329. parser.add_argument(
  330. "--data_file_names",
  331. type=str,
  332. default="wav.scp,text",
  333. help="input data files",
  334. )
  335. parser.add_argument(
  336. "--speed_perturb",
  337. type=float,
  338. nargs="+",
  339. default=None,
  340. help="speed perturb",
  341. )
  342. parser.add_argument(
  343. "--use_preprocessor",
  344. type=str2bool,
  345. default=True,
  346. help="Apply preprocessing to data or not",
  347. )
  348. # optimization related
  349. parser.add_argument(
  350. "--optim",
  351. type=lambda x: x.lower(),
  352. default="adam",
  353. help="The optimizer type",
  354. )
  355. parser.add_argument(
  356. "--optim_conf",
  357. action=NestedDictAction,
  358. default=dict(),
  359. help="The keyword arguments for optimizer",
  360. )
  361. parser.add_argument(
  362. "--scheduler",
  363. type=lambda x: str_or_none(x.lower()),
  364. default=None,
  365. help="The lr scheduler type",
  366. )
  367. parser.add_argument(
  368. "--scheduler_conf",
  369. action=NestedDictAction,
  370. default=dict(),
  371. help="The keyword arguments for lr scheduler",
  372. )
  373. # most task related
  374. parser.add_argument(
  375. "--init",
  376. type=lambda x: str_or_none(x.lower()),
  377. default=None,
  378. help="The initialization method",
  379. choices=[
  380. "chainer",
  381. "xavier_uniform",
  382. "xavier_normal",
  383. "kaiming_uniform",
  384. "kaiming_normal",
  385. None,
  386. ],
  387. )
  388. parser.add_argument(
  389. "--token_list",
  390. type=str_or_none,
  391. default=None,
  392. help="A text mapping int-id to token",
  393. )
  394. parser.add_argument(
  395. "--token_type",
  396. type=str,
  397. default="bpe",
  398. choices=["bpe", "char", "word"],
  399. help="",
  400. )
  401. parser.add_argument(
  402. "--bpemodel",
  403. type=str_or_none,
  404. default=None,
  405. help="The model file fo sentencepiece",
  406. )
  407. parser.add_argument(
  408. "--cleaner",
  409. type=str_or_none,
  410. choices=[None, "tacotron", "jaconv", "vietnamese"],
  411. default=None,
  412. help="Apply text cleaning",
  413. )
  414. parser.add_argument(
  415. "--g2p",
  416. type=str_or_none,
  417. choices=g2p_choices,
  418. default=None,
  419. help="Specify g2p method if --token_type=phn",
  420. )
  421. # pai related
  422. parser.add_argument(
  423. "--use_pai",
  424. type=str2bool,
  425. default=False,
  426. help="flag to indicate whether training on PAI",
  427. )
  428. parser.add_argument(
  429. "--simple_ddp",
  430. type=str2bool,
  431. default=False,
  432. )
  433. parser.add_argument(
  434. "--num_worker_count",
  435. type=int,
  436. default=1,
  437. help="The number of machines on PAI.",
  438. )
  439. parser.add_argument(
  440. "--access_key_id",
  441. type=str,
  442. default=None,
  443. help="The username for oss.",
  444. )
  445. parser.add_argument(
  446. "--access_key_secret",
  447. type=str,
  448. default=None,
  449. help="The password for oss.",
  450. )
  451. parser.add_argument(
  452. "--endpoint",
  453. type=str,
  454. default=None,
  455. help="The endpoint for oss.",
  456. )
  457. parser.add_argument(
  458. "--bucket_name",
  459. type=str,
  460. default=None,
  461. help="The bucket name for oss.",
  462. )
  463. parser.add_argument(
  464. "--oss_bucket",
  465. default=None,
  466. help="oss bucket.",
  467. )
  468. parser.add_argument(
  469. "--enable_lora",
  470. type=str2bool,
  471. default=False,
  472. help="Apply lora for finetuning.",
  473. )
  474. parser.add_argument(
  475. "--lora_bias",
  476. type=str,
  477. default="none",
  478. help="lora bias.",
  479. )
  480. return parser
  481. if __name__ == '__main__':
  482. parser = get_parser()
  483. args, extra_task_params = parser.parse_known_args()
  484. if extra_task_params:
  485. args = build_args(args, parser, extra_task_params)
  486. # set random seed
  487. set_all_random_seed(args.seed)
  488. torch.backends.cudnn.enabled = args.cudnn_enabled
  489. torch.backends.cudnn.benchmark = args.cudnn_benchmark
  490. torch.backends.cudnn.deterministic = args.cudnn_deterministic
  491. # ddp init
  492. os.environ['CUDA_VISIBLE_DEVICES'] = str(args.gpu_id)
  493. args.distributed = args.ngpu > 1 or args.dist_world_size > 1
  494. distributed_option = build_distributed(args)
  495. # for logging
  496. if not distributed_option.distributed or distributed_option.dist_rank == 0:
  497. logging.basicConfig(
  498. level="INFO",
  499. format=f"[{os.uname()[1].split('.')[0]}]"
  500. f" %(asctime)s (%(module)s:%(lineno)d) %(levelname)s: %(message)s",
  501. )
  502. else:
  503. logging.basicConfig(
  504. level="ERROR",
  505. format=f"[{os.uname()[1].split('.')[0]}]"
  506. f" %(asctime)s (%(module)s:%(lineno)d) %(levelname)s: %(message)s",
  507. )
  508. # prepare files for dataloader
  509. prepare_data(args, distributed_option)
  510. model = build_model(args)
  511. model = model.to(
  512. dtype=getattr(torch, args.train_dtype),
  513. device="cuda" if args.ngpu > 0 else "cpu",
  514. )
  515. if args.enable_lora:
  516. mark_only_lora_as_trainable(model, args.lora_bias)
  517. for t in args.freeze_param:
  518. for k, p in model.named_parameters():
  519. if k.startswith(t + ".") or k == t:
  520. logging.info(f"Setting {k}.requires_grad = False")
  521. p.requires_grad = False
  522. optimizers = build_optimizer(args, model=model)
  523. schedulers = build_scheduler(args, optimizers)
  524. logging.info("world size: {}, rank: {}, local_rank: {}".format(distributed_option.dist_world_size,
  525. distributed_option.dist_rank,
  526. distributed_option.local_rank))
  527. logging.info(pytorch_cudnn_version())
  528. logging.info("Args: {}".format(args))
  529. logging.info(model_summary(model))
  530. logging.info("Optimizer: {}".format(optimizers))
  531. logging.info("Scheduler: {}".format(schedulers))
  532. # dump args to config.yaml
  533. if not distributed_option.distributed or distributed_option.dist_rank == 0:
  534. os.makedirs(args.output_dir, exist_ok=True)
  535. with open(os.path.join(args.output_dir, "config.yaml"), "w") as f:
  536. logging.info("Saving the configuration in {}/{}".format(args.output_dir, "config.yaml"))
  537. if args.use_pai:
  538. buffer = BytesIO()
  539. torch.save({"config": vars(args)}, buffer)
  540. args.oss_bucket.put_object(os.path.join(args.output_dir, "config.dict"), buffer.getvalue())
  541. else:
  542. yaml_no_alias_safe_dump(vars(args), f, indent=4, sort_keys=False)
  543. for p in args.init_param:
  544. logging.info(f"Loading pretrained params from {p}")
  545. load_pretrained_model(
  546. model=model,
  547. init_param=p,
  548. ignore_init_mismatch=args.ignore_init_mismatch,
  549. map_location=f"cuda:{torch.cuda.current_device()}"
  550. if args.ngpu > 0
  551. else "cpu",
  552. oss_bucket=args.oss_bucket,
  553. )
  554. # dataloader for training/validation
  555. train_dataloader, valid_dataloader = build_dataloader(args)
  556. # Trainer, including model, optimizers, etc.
  557. trainer = build_trainer(
  558. args=args,
  559. model=model,
  560. optimizers=optimizers,
  561. schedulers=schedulers,
  562. train_dataloader=train_dataloader,
  563. valid_dataloader=valid_dataloader,
  564. distributed_option=distributed_option
  565. )
  566. trainer.run()