mirror of
https://github.com/twitter/the-algorithm-ml.git
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317 lines
11 KiB
Python
317 lines
11 KiB
Python
"""Torch and torchrec specific training and evaluation loops.
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Features (go/100_enablements):
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- CUDA data-fetch, compute, gradient-push overlap
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- Large learnable embeddings through torchrec
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- On/off-chief evaluation
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- Warmstart/checkpoint management
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- go/dataset-service 0-copy integration
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"""
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import datetime
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import os
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from typing import Callable, Dict, Iterable, List, Mapping, Optional
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from tml.common import log_weights
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import tml.common.checkpointing.snapshot as snapshot_lib
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from tml.core.losses import get_global_loss_detached
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from tml.ml_logging.torch_logging import logging # type: ignore[attr-defined]
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from tml.core.train_pipeline import TrainPipelineSparseDist
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import tree
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import torch
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import torch.distributed as dist
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from torch.optim.lr_scheduler import _LRScheduler
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import torchmetrics as tm
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def get_new_iterator(iterable: Iterable):
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"""
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This obtain a new iterator from the iterable. If the iterable uses tf.data.Dataset internally,
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getting a new iterator each N steps will avoid memory leak. To avoid the memory leak
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calling iter(iterable) should return a "fresh" iterator using a fresh
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(new instance of) tf.data.Iterator.
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In particular, iterable can be a torch.utils.data.IterableDataset or a
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torch.utils.data.DataLoader.
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When using DDS, performing this reset does not change the order in which elements are received
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(excluding elements already prefetched) provided that iter(iterable) internally uses
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a new instance of tf.data.Dataset created by calling from_dataset_id.
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This requirement is satisfied by RecapDataset.
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:param iterable:
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:return:
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"""
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return iter(iterable)
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def _get_step_fn(pipeline, data_iterator, training: bool):
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def step_fn():
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# It turns out that model.train() and model.eval() simply switch a single field inside the model
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# class,so it's somewhat safer to wrap in here.
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if training:
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pipeline._model.train()
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else:
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pipeline._model.eval()
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outputs = pipeline.progress(data_iterator)
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return tree.map_structure(lambda elem: elem.detach(), outputs)
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return step_fn
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@torch.no_grad()
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def _run_evaluation(
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pipeline,
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dataset,
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eval_steps: int,
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metrics: tm.MetricCollection,
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eval_batch_size: int,
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logger=None,
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):
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"""Runs the evaluation loop over all evaluation iterators."""
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dataset = get_new_iterator(dataset)
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step_fn = _get_step_fn(pipeline, dataset, training=False)
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last_time = datetime.datetime.now()
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logging.info(f"Starting {eval_steps} steps of evaluation.")
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for _ in range(eval_steps):
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outputs = step_fn()
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metrics.update(outputs)
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eval_ex_per_s = (
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eval_batch_size * eval_steps / (datetime.datetime.now() - last_time).total_seconds()
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)
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logging.info(f"eval examples_per_s : {eval_ex_per_s}")
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metrics_result = metrics.compute()
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# Resetting at end to release metrics memory not in use.
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# Reset metrics to prevent accumulation between multiple evaluation splits and not report a
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# running average.
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metrics.reset()
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return metrics_result
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def train(
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model: torch.nn.Module,
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optimizer: torch.optim.Optimizer,
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device: str,
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save_dir: str,
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logging_interval: int,
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train_steps: int,
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checkpoint_frequency: int,
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dataset: Iterable,
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worker_batch_size: int,
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num_workers: Optional[int] = 0,
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enable_amp: bool = False,
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initial_checkpoint_dir: Optional[str] = None,
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gradient_accumulation: Optional[int] = None,
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logger_initializer: Optional[Callable] = None,
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scheduler: _LRScheduler = None,
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metrics: Optional[tm.MetricCollection] = None,
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parameters_to_log: Optional[Dict[str, Callable]] = None,
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tables_to_log: Optional[List[str]] = None,
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) -> None:
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"""Runs training and eval on the given TrainPipeline
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Args:
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dataset: data iterator for the training set
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evaluation_iterators: data iterators for the different evaluation sets
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scheduler: optional learning rate scheduler
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output_transform_for_metrics: optional transformation functions to transorm the model
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output and labels into a format the metrics can understand
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"""
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train_pipeline = TrainPipelineSparseDist(
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model=model,
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optimizer=optimizer,
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device=device,
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enable_amp=enable_amp,
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grad_accum=gradient_accumulation,
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) # type: ignore[var-annotated]
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# We explicitly initialize optimizer state here so that checkpoint will work properly.
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if hasattr(train_pipeline._optimizer, "init_state"):
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train_pipeline._optimizer.init_state()
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save_state = {
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"model": train_pipeline._model,
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"optimizer": train_pipeline._optimizer,
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"scaler": train_pipeline._grad_scaler,
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}
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chosen_checkpoint = None
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checkpoint_handler = snapshot_lib.Snapshot(
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save_dir=save_dir,
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state=save_state,
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)
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if save_dir:
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chosen_checkpoint = snapshot_lib.get_checkpoint(save_dir=save_dir, missing_ok=True)
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start_step = 0
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start_walltime = 0.0
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if chosen_checkpoint:
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# Skip restoration and exit if we should be finished.
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chosen_checkpoint_global_step = snapshot_lib.step_from_checkpoint(chosen_checkpoint)
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if not chosen_checkpoint_global_step < dist.get_world_size() * train_steps:
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logging.info(
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"Not restoring and finishing training as latest checkpoint "
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f"{chosen_checkpoint} found "
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f"at global_step ({chosen_checkpoint_global_step}) >= "
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f"train_steps ({dist.get_world_size() * train_steps})"
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)
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return
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logging.info(f"Restoring latest checkpoint from global_step {chosen_checkpoint_global_step}")
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checkpoint_handler.restore(chosen_checkpoint)
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start_step = checkpoint_handler.step
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start_walltime = checkpoint_handler.walltime
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elif initial_checkpoint_dir:
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base, ckpt_step = os.path.split(initial_checkpoint_dir)
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warmstart_handler = snapshot_lib.Snapshot(
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save_dir=base,
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state=save_state,
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)
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ckpt = snapshot_lib.get_checkpoint(save_dir=base, missing_ok=False, global_step=int(ckpt_step))
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logging.info(
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f"Restoring from initial_checkpoint_dir: {initial_checkpoint_dir}, but keeping starting step as 0."
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)
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warmstart_handler.restore(ckpt)
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train_logger = logger_initializer(mode="train") if logger_initializer else None
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train_step_fn = _get_step_fn(train_pipeline, get_new_iterator(dataset), training=True)
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# Counting number of parameters in the model directly when creating it.
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nb_param = 0
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for p in model.parameters():
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nb_param += p.numel()
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logging.info(f"Model has {nb_param} parameters")
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last_time = datetime.datetime.now()
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start_time = last_time
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last_pending_snapshot = None
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for step in range(start_step, train_steps + 1):
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checkpoint_handler.step = step
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outputs = train_step_fn()
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step_done_time = datetime.datetime.now()
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checkpoint_handler.walltime = (step_done_time - start_time).total_seconds() + start_walltime
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if scheduler:
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scheduler.step()
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if step % logging_interval == 0:
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interval_time = (step_done_time - last_time).total_seconds()
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steps_per_s = logging_interval / interval_time
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worker_example_per_s = steps_per_s * worker_batch_size
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global_example_per_s = worker_example_per_s * (1 + (num_workers or 0))
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global_step = step
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log_values = {
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"global_step": global_step,
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"loss": get_global_loss_detached(outputs["loss"]),
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"steps_per_s": steps_per_s,
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"global_example_per_s": global_example_per_s,
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"worker_examples_per_s": worker_example_per_s,
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"active_training_walltime": checkpoint_handler.walltime,
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}
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if parameters_to_log:
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log_values.update(
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log_weights.weights_to_log(
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model=model,
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how_to_log=parameters_to_log,
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)
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)
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log_values = tree.map_structure(lambda elem: torch.as_tensor(elem).cpu(), log_values)
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if tables_to_log:
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log_values.update(
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log_weights.log_ebc_norms(
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model_state_dict=train_pipeline._model.state_dict(),
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ebc_keys=tables_to_log,
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)
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)
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if train_logger:
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train_logger.log(log_values, step=global_step)
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log_line = ", ".join(f"{name}: {value}" for name, value in log_values.items())
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logging.info(f"Step: {step}, training. {log_line}")
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last_time = step_done_time
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# If we just restored, do not save again.
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if checkpoint_frequency and step > start_step and step % checkpoint_frequency == 0:
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if last_pending_snapshot and not last_pending_snapshot.done():
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logging.warning(
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"Begin a new snapshot and the last one hasn't finished. That probably indicates "
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"either you're snapshotting really often or something is wrong. Will now block and "
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"wait for snapshot to finish before beginning the next one."
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)
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last_pending_snapshot.wait()
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last_pending_snapshot = checkpoint_handler.save(global_step=step * dist.get_world_size())
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# Save if we did not just save.
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if checkpoint_frequency and step % checkpoint_frequency != 0:
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# For the final save, wait for the checkpoint to write to make sure the process doesn't finish
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# before its completed.
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last_pending_snapshot = checkpoint_handler.save(global_step=step * dist.get_world_size())
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logging.info(f"Finished training steps: {step}, global_steps: {step * dist.get_world_size()}")
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if last_pending_snapshot:
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logging.info(f"Waiting for any checkpoints to finish.")
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last_pending_snapshot.wait()
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def log_eval_results(
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results,
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eval_logger,
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partition_name: str,
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step: int,
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):
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results = tree.map_structure(lambda elem: torch.as_tensor(elem).cpu(), results)
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logging.info(f"Step: {step}, evaluation ({partition_name}).")
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for metric_name, metric_value in results.items():
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logging.info(f"\t{metric_name}: {metric_value:1.4e}")
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if eval_logger:
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eval_logger.log(results, step=step, commit=True)
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def only_evaluate(
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model: torch.nn.Module,
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optimizer: torch.optim.Optimizer,
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device: str,
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save_dir: str,
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num_train_steps: int,
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dataset: Iterable,
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eval_batch_size: int,
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num_eval_steps: int,
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eval_timeout_in_s: int,
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eval_logger: Callable,
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partition_name: str,
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metrics: Optional[tm.MetricCollection] = None,
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):
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logging.info(f"Evaluating on partition {partition_name}.")
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logging.info("Computing metrics:")
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logging.info(metrics)
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eval_pipeline = TrainPipelineSparseDist(model, optimizer, device) # type: ignore[var-annotated]
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save_state = {
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"model": eval_pipeline._model,
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"optimizer": eval_pipeline._optimizer,
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}
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checkpoint_handler = snapshot_lib.Snapshot(
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save_dir=save_dir,
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state=save_state,
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)
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for checkpoint_path in snapshot_lib.checkpoints_iterator(save_dir, timeout=eval_timeout_in_s):
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checkpoint_handler.restore(checkpoint_path)
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step = checkpoint_handler.step
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dataset = get_new_iterator(dataset)
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results = _run_evaluation(
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pipeline=eval_pipeline,
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dataset=dataset,
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eval_steps=num_eval_steps,
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eval_batch_size=eval_batch_size,
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metrics=metrics,
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)
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log_eval_results(results, eval_logger, partition_name, step=step)
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rank = dist.get_rank() if dist.is_initialized() else 0
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if rank == 0:
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snapshot_lib.mark_done_eval(checkpoint_path, partition_name)
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if step >= num_train_steps:
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return
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