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| #!/usr/bin/env python3 -u | |
| # 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. | |
| """ | |
| Train a new model on one or across multiple GPUs. | |
| """ | |
| import argparse | |
| import logging | |
| import math | |
| import os | |
| import sys | |
| from typing import Dict, Optional, Any, List, Tuple, Callable | |
| # We need to setup root logger before importing any fairseq libraries. | |
| logging.basicConfig( | |
| format='%(asctime)s - %(filename)s[line:%(lineno)d] - %(levelname)s: %(message)s', | |
| datefmt="%Y-%m-%d %H:%M:%S", | |
| level=os.environ.get("LOGLEVEL", "INFO").upper(), | |
| stream=sys.stdout, | |
| ) | |
| logger = logging.getLogger("fairseq_cli.train") | |
| import numpy as np | |
| import torch | |
| from fairseq import ( | |
| # checkpoint_utils, | |
| options, | |
| quantization_utils, | |
| tasks, | |
| utils, | |
| ) | |
| from fairseq.data import iterators | |
| from fairseq.data.plasma_utils import PlasmaStore | |
| from fairseq.dataclass.configs import FairseqConfig | |
| from fairseq.dataclass.utils import convert_namespace_to_omegaconf | |
| from fairseq.distributed import fsdp_enable_wrap, fsdp_wrap, utils as distributed_utils | |
| from fairseq.file_io import PathManager | |
| from fairseq.logging import meters, metrics, progress_bar | |
| from fairseq.model_parallel.megatron_trainer import MegatronTrainer | |
| # from fairseq.trainer import Trainer | |
| from omegaconf import DictConfig, OmegaConf | |
| from utils import checkpoint_utils | |
| from trainer import Trainer | |
| def main(cfg: FairseqConfig) -> None: | |
| if isinstance(cfg, argparse.Namespace): | |
| cfg = convert_namespace_to_omegaconf(cfg) | |
| utils.import_user_module(cfg.common) | |
| if distributed_utils.is_master(cfg.distributed_training) and "job_logging_cfg" in cfg: | |
| # make hydra logging work with ddp (see # see https://github.com/facebookresearch/hydra/issues/1126) | |
| logging.config.dictConfig(OmegaConf.to_container(cfg.job_logging_cfg)) | |
| assert ( | |
| cfg.dataset.max_tokens is not None or cfg.dataset.batch_size is not None | |
| ), "Must specify batch size either with --max-tokens or --batch-size" | |
| metrics.reset() | |
| if cfg.common.log_file is not None: | |
| handler = logging.FileHandler(filename=cfg.common.log_file) | |
| logger.addHandler(handler) | |
| np.random.seed(cfg.common.seed) | |
| utils.set_torch_seed(cfg.common.seed) | |
| if distributed_utils.is_master(cfg.distributed_training): | |
| checkpoint_utils.verify_checkpoint_directory(cfg.checkpoint.save_dir) | |
| # Print args | |
| logger.info(cfg) | |
| if cfg.checkpoint.write_checkpoints_asynchronously: | |
| try: | |
| import iopath # noqa: F401 | |
| except ImportError: | |
| logging.exception( | |
| "Asynchronous checkpoint writing is specified but iopath is " | |
| "not installed: `pip install iopath`" | |
| ) | |
| return | |
| # Setup task, e.g., translation, language modeling, etc. | |
| task = tasks.setup_task(cfg.task) | |
| assert cfg.criterion, "Please specify criterion to train a model" | |
| # Build model and criterion | |
| if cfg.distributed_training.ddp_backend == "fully_sharded": | |
| with fsdp_enable_wrap(cfg.distributed_training): | |
| model = fsdp_wrap(task.build_model(cfg.model)) | |
| else: | |
| model = task.build_model(cfg.model) | |
| criterion = task.build_criterion(cfg.criterion) | |
| logger.info(model) | |
| logger.info("task: {}".format(task.__class__.__name__)) | |
| logger.info("model: {}".format(model.__class__.__name__)) | |
| logger.info("criterion: {}".format(criterion.__class__.__name__)) | |
| logger.info( | |
| "num. shared model params: {:,} (num. trained: {:,})".format( | |
| sum(p.numel() for p in model.parameters() if not getattr(p, "expert", False)), | |
| sum(p.numel() for p in model.parameters() if not getattr(p, "expert", False) and p.requires_grad) | |
| ) | |
| ) | |
| logger.info( | |
| "num. expert model params: {} (num. trained: {})".format( | |
| sum(p.numel() for p in model.parameters() if getattr(p, "expert", False)), | |
| sum(p.numel() for p in model.parameters() if getattr(p, "expert", False) and p.requires_grad), | |
| ) | |
| ) | |
| # Load valid dataset (we load training data below, based on the latest checkpoint) | |
| # We load the valid dataset AFTER building the model | |
| # data_utils.raise_if_valid_subsets_unintentionally_ignored(cfg) | |
| if cfg.dataset.combine_valid_subsets: | |
| task.load_dataset("valid", combine=True, epoch=1) | |
| else: | |
| for valid_sub_split in cfg.dataset.valid_subset.split(","): | |
| task.load_dataset(valid_sub_split, combine=False, epoch=1) | |
| # (optionally) Configure quantization | |
| if cfg.common.quantization_config_path is not None: | |
| quantizer = quantization_utils.Quantizer( | |
| config_path=cfg.common.quantization_config_path, | |
| max_epoch=cfg.optimization.max_epoch, | |
| max_update=cfg.optimization.max_update, | |
| ) | |
| else: | |
| quantizer = None | |
| # Build trainer | |
| if cfg.common.model_parallel_size == 1: | |
| trainer = Trainer(cfg, task, model, criterion, quantizer) | |
| else: | |
| trainer = MegatronTrainer(cfg, task, model, criterion) | |
| logger.info( | |
| "training on {} devices (GPUs/TPUs)".format( | |
| cfg.distributed_training.distributed_world_size | |
| ) | |
| ) | |
| logger.info( | |
| "max tokens per device = {} and max sentences per device = {}".format( | |
| cfg.dataset.max_tokens, | |
| cfg.dataset.batch_size, | |
| ) | |
| ) | |
| # Load the latest checkpoint if one is available and restore the | |
| # corresponding train iterator | |
| extra_state, epoch_itr = checkpoint_utils.load_checkpoint( | |
| cfg.checkpoint, | |
| trainer, | |
| # don't cache epoch iterators for sharded datasets | |
| disable_iterator_cache=task.has_sharded_data("train"), | |
| ) | |
| if cfg.common.tpu: | |
| import torch_xla.core.xla_model as xm | |
| xm.rendezvous("load_checkpoint") # wait for all workers | |
| max_epoch = cfg.optimization.max_epoch or math.inf | |
| if max_epoch > 0: | |
| num_iter_per_epoch = (len(epoch_itr) + cfg.distributed_training.distributed_world_size - 1) \ | |
| // cfg.distributed_training.distributed_world_size | |
| trainer.lr_reinit(num_iter_per_epoch * max_epoch, trainer.get_num_updates()) | |
| lr = trainer.get_lr() | |
| train_meter = meters.StopwatchMeter() | |
| train_meter.start() | |
| while epoch_itr.next_epoch_idx <= max_epoch: | |
| if lr <= cfg.optimization.stop_min_lr: | |
| logger.info( | |
| f"stopping training because current learning rate ({lr}) is smaller " | |
| "than or equal to minimum learning rate " | |
| f"(--stop-min-lr={cfg.optimization.stop_min_lr})" | |
| ) | |
| break | |
| # train for one epoch | |
| valid_losses, should_stop = train(cfg, trainer, task, epoch_itr) | |
| if should_stop: | |
| break | |
| # only use first validation loss to update the learning rate | |
| lr = trainer.lr_step(epoch_itr.epoch, valid_losses[0]) | |
| epoch_itr = trainer.get_train_iterator( | |
| epoch_itr.next_epoch_idx, | |
| # sharded data: get train iterator for next epoch | |
| load_dataset=True, | |
| # don't cache epoch iterators for sharded datasets | |
| disable_iterator_cache=task.has_sharded_data("train"), | |
| ) | |
| train_meter.stop() | |
| logger.info("done training in {:.1f} seconds".format(train_meter.sum)) | |
| # ioPath implementation to wait for all asynchronous file writes to complete. | |
| if cfg.checkpoint.write_checkpoints_asynchronously: | |
| logger.info( | |
| "ioPath PathManager waiting for all asynchronous checkpoint " | |
| "writes to finish." | |
| ) | |
| PathManager.async_close() | |
| logger.info("ioPath PathManager finished waiting.") | |
| def should_stop_early(cfg: DictConfig, valid_loss: float) -> bool: | |
| # skip check if no validation was done in the current epoch | |
| if valid_loss is None: | |
| return False | |
| if cfg.checkpoint.patience <= 0: | |
| return False | |
| def is_better(a, b): | |
| return a > b if cfg.checkpoint.maximize_best_checkpoint_metric else a < b | |
| prev_best = getattr(should_stop_early, "best", None) | |
| if prev_best is None or is_better(valid_loss, prev_best): | |
| should_stop_early.best = valid_loss | |
| should_stop_early.num_runs = 0 | |
| return False | |
| else: | |
| should_stop_early.num_runs += 1 | |
| if should_stop_early.num_runs >= cfg.checkpoint.patience: | |
| logger.info( | |
| "early stop since valid performance hasn't improved for last {} runs".format( | |
| cfg.checkpoint.patience | |
| ) | |
| ) | |
| return True | |
| else: | |
| return False | |
| def train( | |
| cfg: DictConfig, trainer: Trainer, task: tasks.FairseqTask, epoch_itr | |
| ) -> Tuple[List[Optional[float]], bool]: | |
| """Train the model for one epoch and return validation losses.""" | |
| # Initialize data iterator | |
| itr = epoch_itr.next_epoch_itr( | |
| fix_batches_to_gpus=cfg.distributed_training.fix_batches_to_gpus, | |
| shuffle=(epoch_itr.next_epoch_idx > cfg.dataset.curriculum), | |
| ) | |
| update_freq = ( | |
| cfg.optimization.update_freq[epoch_itr.epoch - 1] | |
| if epoch_itr.epoch <= len(cfg.optimization.update_freq) | |
| else cfg.optimization.update_freq[-1] | |
| ) | |
| itr = iterators.GroupedIterator(itr, update_freq) | |
| if cfg.common.tpu: | |
| itr = utils.tpu_data_loader(itr) | |
| progress = progress_bar.progress_bar( | |
| itr, | |
| log_format=cfg.common.log_format, | |
| log_file=cfg.common.log_file, | |
| log_interval=cfg.common.log_interval, | |
| epoch=epoch_itr.epoch, | |
| tensorboard_logdir=( | |
| cfg.common.tensorboard_logdir | |
| if distributed_utils.is_master(cfg.distributed_training) | |
| else None | |
| ), | |
| default_log_format=("tqdm" if not cfg.common.no_progress_bar else "simple"), | |
| wandb_project=( | |
| cfg.common.wandb_project | |
| if distributed_utils.is_master(cfg.distributed_training) | |
| else None | |
| ), | |
| wandb_run_name=os.environ.get( | |
| "WANDB_NAME", os.path.basename(cfg.checkpoint.save_dir) | |
| ), | |
| azureml_logging=( | |
| cfg.common.azureml_logging | |
| if distributed_utils.is_master(cfg.distributed_training) | |
| else False | |
| ), | |
| ) | |
| progress.update_config(_flatten_config(cfg)) | |
| trainer.begin_epoch(epoch_itr.epoch) | |
| valid_subsets = cfg.dataset.valid_subset.split(",") | |
| should_stop = False | |
| num_updates = trainer.get_num_updates() | |
| logger.info("Start iterating over samples") | |
| for i, samples in enumerate(progress): | |
| with metrics.aggregate("train_inner"), torch.autograd.profiler.record_function( | |
| "train_step-%d" % i | |
| ): | |
| log_output = trainer.train_step(samples) | |
| if log_output is not None: # not OOM, overflow, ... | |
| # log mid-epoch stats | |
| num_updates = trainer.get_num_updates() | |
| if num_updates % cfg.common.log_interval == 0: | |
| stats = get_training_stats(metrics.get_smoothed_values("train_inner")) | |
| progress.log(stats, tag="train_inner", step=num_updates) | |
| # reset mid-epoch stats after each log interval | |
| # the end-of-epoch stats will still be preserved | |
| metrics.reset_meters("train_inner") | |
| end_of_epoch = not itr.has_next() | |
| valid_losses, should_stop = validate_and_save( | |
| cfg, trainer, task, epoch_itr, valid_subsets, end_of_epoch | |
| ) | |
| if should_stop: | |
| break | |
| # log end-of-epoch stats | |
| logger.info("end of epoch {} (average epoch stats below)".format(epoch_itr.epoch)) | |
| stats = get_training_stats(metrics.get_smoothed_values("train")) | |
| progress.print(stats, tag="train", step=num_updates) | |
| # reset epoch-level meters | |
| metrics.reset_meters("train") | |
| return valid_losses, should_stop | |
| def _flatten_config(cfg: DictConfig): | |
| config = OmegaConf.to_container(cfg) | |
| # remove any legacy Namespaces and replace with a single "args" | |
| namespace = None | |
| for k, v in list(config.items()): | |
| if isinstance(v, argparse.Namespace): | |
| namespace = v | |
| del config[k] | |
| if namespace is not None: | |
| config["args"] = vars(namespace) | |
| return config | |
| def validate_and_save( | |
| cfg: DictConfig, | |
| trainer: Trainer, | |
| task: tasks.FairseqTask, | |
| epoch_itr, | |
| valid_subsets: List[str], | |
| end_of_epoch: bool, | |
| ) -> Tuple[List[Optional[float]], bool]: | |
| num_updates = trainer.get_num_updates() | |
| max_update = cfg.optimization.max_update or math.inf | |
| # Stopping conditions (and an additional one based on validation loss later | |
| # on) | |
| should_stop = False | |
| if num_updates >= max_update: | |
| should_stop = True | |
| logger.info( | |
| f"Stopping training due to " | |
| f"num_updates: {num_updates} >= max_update: {max_update}" | |
| ) | |
| training_time_hours = trainer.cumulative_training_time() / (60 * 60) | |
| if ( | |
| cfg.optimization.stop_time_hours > 0 | |
| and training_time_hours > cfg.optimization.stop_time_hours | |
| ): | |
| should_stop = True | |
| logger.info( | |
| f"Stopping training due to " | |
| f"cumulative_training_time: {training_time_hours} > " | |
| f"stop_time_hours: {cfg.optimization.stop_time_hours} hour(s)" | |
| ) | |
| do_save = ( | |
| (end_of_epoch and epoch_itr.epoch % cfg.checkpoint.save_interval == 0) | |
| or should_stop | |
| or ( | |
| cfg.checkpoint.save_interval_updates > 0 | |
| and num_updates > 0 | |
| and num_updates % cfg.checkpoint.save_interval_updates == 0 | |
| and num_updates >= cfg.dataset.validate_after_updates | |
| ) | |
| ) | |
| do_validate = ( | |
| (not end_of_epoch and do_save) # validate during mid-epoch saves | |
| or (end_of_epoch and epoch_itr.epoch % cfg.dataset.validate_interval == 0) | |
| or should_stop | |
| or ( | |
| cfg.dataset.validate_interval_updates > 0 | |
| and num_updates > 0 | |
| and num_updates % cfg.dataset.validate_interval_updates == 0 | |
| ) | |
| ) and not cfg.dataset.disable_validation and num_updates >= cfg.dataset.validate_after_updates | |
| # Validate | |
| valid_losses = [None] | |
| if do_validate: | |
| valid_losses = validate(cfg, trainer, task, epoch_itr, valid_subsets) | |
| should_stop |= should_stop_early(cfg, valid_losses[0]) | |
| # Save checkpoint | |
| if do_save or should_stop: | |
| checkpoint_utils.save_checkpoint( | |
| cfg.checkpoint, trainer, epoch_itr, valid_losses[0] | |
| ) | |
| return valid_losses, should_stop | |
| def get_training_stats(stats: Dict[str, Any]) -> Dict[str, Any]: | |
| stats["wall"] = round(metrics.get_meter("default", "wall").elapsed_time, 0) | |
| return stats | |
| def validate( | |
| cfg: DictConfig, | |
| trainer: Trainer, | |
| task: tasks.FairseqTask, | |
| epoch_itr, | |
| subsets: List[str], | |
| ) -> List[Optional[float]]: | |
| """Evaluate the model on the validation set(s) and return the losses.""" | |
| if cfg.dataset.fixed_validation_seed is not None: | |
| # set fixed seed for every validation | |
| utils.set_torch_seed(cfg.dataset.fixed_validation_seed) | |
| trainer.begin_valid_epoch(epoch_itr.epoch) | |
| valid_losses = [] | |
| for subset in subsets: | |
| logger.info('begin validation on "{}" subset'.format(subset)) | |
| # Initialize data iterator | |
| itr = trainer.get_valid_iterator(subset).next_epoch_itr( | |
| shuffle=False, set_dataset_epoch=False # use a fixed valid set | |
| ) | |
| if cfg.common.tpu: | |
| itr = utils.tpu_data_loader(itr) | |
| progress = progress_bar.progress_bar( | |
| itr, | |
| log_format=cfg.common.log_format, | |
| log_interval=cfg.common.log_interval, | |
| epoch=epoch_itr.epoch, | |
| prefix=f"valid on '{subset}' subset", | |
| tensorboard_logdir=( | |
| cfg.common.tensorboard_logdir | |
| if distributed_utils.is_master(cfg.distributed_training) | |
| else None | |
| ), | |
| default_log_format=("tqdm" if not cfg.common.no_progress_bar else "simple"), | |
| wandb_project=( | |
| cfg.common.wandb_project | |
| if distributed_utils.is_master(cfg.distributed_training) | |
| else None | |
| ), | |
| wandb_run_name=os.environ.get( | |
| "WANDB_NAME", os.path.basename(cfg.checkpoint.save_dir) | |
| ), | |
| ) | |
| # create a new root metrics aggregator so validation metrics | |
| # don't pollute other aggregators (e.g., train meters) | |
| with metrics.aggregate(new_root=True) as agg: | |
| for i, sample in enumerate(progress): | |
| if cfg.dataset.max_valid_steps is not None and i > cfg.dataset.max_valid_steps: | |
| break | |
| trainer.valid_step(sample) | |
| # log validation stats | |
| if hasattr(task, 'get_valid_stats'): | |
| stats = task.get_valid_stats(cfg, trainer, agg.get_smoothed_values()) | |
| else: | |
| stats = agg.get_smoothed_values() | |
| stats = get_valid_stats(cfg, trainer, stats) | |
| if hasattr(task, "post_validate"): | |
| task.post_validate(trainer.get_model(), stats, agg) | |
| progress.print(stats, tag=subset, step=trainer.get_num_updates()) | |
| valid_losses.append(stats[cfg.checkpoint.best_checkpoint_metric]) | |
| return valid_losses | |
| def get_valid_stats( | |
| cfg: DictConfig, trainer: Trainer, stats: Dict[str, Any] | |
| ) -> Dict[str, Any]: | |
| stats["num_updates"] = trainer.get_num_updates() | |
| if hasattr(checkpoint_utils.save_checkpoint, "best"): | |
| key = "best_{0}".format(cfg.checkpoint.best_checkpoint_metric) | |
| best_function = max if cfg.checkpoint.maximize_best_checkpoint_metric else min | |
| stats[key] = best_function( | |
| checkpoint_utils.save_checkpoint.best, | |
| stats[cfg.checkpoint.best_checkpoint_metric], | |
| ) | |
| return stats | |
| def cli_main( | |
| modify_parser: Optional[Callable[[argparse.ArgumentParser], None]] = None | |
| ) -> None: | |
| parser = options.get_training_parser() | |
| args = options.parse_args_and_arch(parser, modify_parser=modify_parser) | |
| cfg = convert_namespace_to_omegaconf(args) | |
| if cfg.common.use_plasma_view: | |
| server = PlasmaStore(path=cfg.common.plasma_path) | |
| logger.info(f"Started plasma server pid {server.server.pid} {cfg.common.plasma_path}") | |
| if args.profile: | |
| with torch.cuda.profiler.profile(): | |
| with torch.autograd.profiler.emit_nvtx(): | |
| distributed_utils.call_main(cfg, main) | |
| else: | |
| distributed_utils.call_main(cfg, main) | |
| # if cfg.common.use_plasma_view: | |
| # server.server.kill() | |
| if __name__ == "__main__": | |
| cli_main() | |