| import dataclasses
|
| import functools
|
| import logging
|
| import platform
|
| from typing import Any
|
|
|
| import etils.epath as epath
|
| import flax.nnx as nnx
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| from flax.training import common_utils
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| import flax.traverse_util as traverse_util
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| import jax
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| import jax.experimental
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| import jax.numpy as jnp
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| import numpy as np
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| import optax
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| import tqdm_loggable.auto as tqdm
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| import wandb
|
|
|
| import openpi.models.model as _model
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| import openpi.shared.array_typing as at
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| import openpi.shared.nnx_utils as nnx_utils
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| import openpi.training.checkpoints as _checkpoints
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| import openpi.training.config as _config
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| import openpi.training.data_loader as _data_loader
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| import openpi.training.optimizer as _optimizer
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| import openpi.training.sharding as sharding
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| import openpi.training.utils as training_utils
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| import openpi.training.weight_loaders as _weight_loaders
|
|
|
|
|
| def init_logging():
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| """Custom logging format for better readability."""
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| level_mapping = {"DEBUG": "D", "INFO": "I", "WARNING": "W", "ERROR": "E", "CRITICAL": "C"}
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|
|
| class CustomFormatter(logging.Formatter):
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| def format(self, record):
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| record.levelname = level_mapping.get(record.levelname, record.levelname)
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| return super().format(record)
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|
|
| formatter = CustomFormatter(
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| fmt="%(asctime)s.%(msecs)03d [%(levelname)s] %(message)-80s (%(process)d:%(filename)s:%(lineno)s)",
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| datefmt="%H:%M:%S",
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| )
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|
|
| logger = logging.getLogger()
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| logger.setLevel(logging.INFO)
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| logger.handlers[0].setFormatter(formatter)
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|
|
|
|
| def init_wandb(config: _config.TrainConfig, *, resuming: bool, log_code: bool = False, enabled: bool = True):
|
| if not enabled:
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| wandb.init(mode="disabled")
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| return
|
|
|
| ckpt_dir = config.checkpoint_dir
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| if not ckpt_dir.exists():
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| raise FileNotFoundError(f"Checkpoint directory {ckpt_dir} does not exist.")
|
| if resuming:
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| run_id = (ckpt_dir / "wandb_id.txt").read_text().strip()
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| wandb.init(id=run_id, resume="must", project=config.project_name)
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| else:
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| wandb.init(
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| name=config.exp_name,
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| config=dataclasses.asdict(config),
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| project=config.project_name,
|
| )
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| (ckpt_dir / "wandb_id.txt").write_text(wandb.run.id)
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|
|
| if log_code:
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| wandb.run.log_code(epath.Path(__file__).parent.parent)
|
|
|
|
|
| def _load_weights_and_validate(loader: _weight_loaders.WeightLoader, params_shape: at.Params) -> at.Params:
|
| """Loads and validates the weights. Returns a loaded subset of the weights."""
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| loaded_params = loader.load(params_shape)
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| at.check_pytree_equality(expected=params_shape, got=loaded_params, check_shapes=True, check_dtypes=True)
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|
|
|
|
| return traverse_util.unflatten_dict(
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| {k: v for k, v in traverse_util.flatten_dict(loaded_params).items() if not isinstance(v, jax.ShapeDtypeStruct)}
|
| )
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|
|
|
|
| @at.typecheck
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| def init_train_state(
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| config: _config.TrainConfig, init_rng: at.KeyArrayLike, mesh: jax.sharding.Mesh, *, resume: bool
|
| ) -> tuple[training_utils.TrainState, Any]:
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| tx = _optimizer.create_optimizer(config.optimizer, config.lr_schedule, weight_decay_mask=None)
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|
|
| def init(rng: at.KeyArrayLike, partial_params: at.Params | None = None) -> training_utils.TrainState:
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| rng, model_rng = jax.random.split(rng)
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|
|
| model = config.model.create(model_rng)
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|
|
|
|
| if partial_params is not None:
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| graphdef, state = nnx.split(model)
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|
|
| state.replace_by_pure_dict(partial_params)
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| model = nnx.merge(graphdef, state)
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|
|
| params = nnx.state(model)
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|
|
| params = nnx_utils.state_map(params, config.freeze_filter, lambda p: p.replace(p.value.astype(jnp.bfloat16)))
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|
|
| return training_utils.TrainState(
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| step=0,
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| params=params,
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| model_def=nnx.graphdef(model),
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| tx=tx,
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| opt_state=tx.init(params.filter(config.trainable_filter)),
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| ema_decay=config.ema_decay,
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| ema_params=None if config.ema_decay is None else params,
|
| )
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|
|
| train_state_shape = jax.eval_shape(init, init_rng)
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| state_sharding = sharding.fsdp_sharding(train_state_shape, mesh, log=True)
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|
|
| if resume:
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| return train_state_shape, state_sharding
|
|
|
| partial_params = _load_weights_and_validate(config.weight_loader, train_state_shape.params.to_pure_dict())
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| replicated_sharding = jax.sharding.NamedSharding(mesh, jax.sharding.PartitionSpec())
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|
|
|
|
| train_state = jax.jit(
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| init,
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| donate_argnums=(1,),
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| in_shardings=replicated_sharding,
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| out_shardings=state_sharding,
|
| )(init_rng, partial_params)
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|
|
| return train_state, state_sharding
|
|
|
|
|
| @at.typecheck
|
| def train_step(
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| config: _config.TrainConfig,
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| rng: at.KeyArrayLike,
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| state: training_utils.TrainState,
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| batch: tuple[_model.Observation, _model.Actions],
|
| ) -> tuple[training_utils.TrainState, dict[str, at.Array]]:
|
| model = nnx.merge(state.model_def, state.params)
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| model.train()
|
|
|
| @at.typecheck
|
| def loss_fn(
|
| model: _model.BaseModel, rng: at.KeyArrayLike, observation: _model.Observation, actions: _model.Actions
|
| ):
|
| chunked_loss = model.compute_loss(rng, observation, actions, train=True)
|
| return jnp.mean(chunked_loss)
|
|
|
| train_rng = jax.random.fold_in(rng, state.step)
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| observation, actions = batch
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|
|
|
|
| diff_state = nnx.DiffState(0, config.trainable_filter)
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| loss, grads = nnx.value_and_grad(loss_fn, argnums=diff_state)(model, train_rng, observation, actions)
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|
|
| params = state.params.filter(config.trainable_filter)
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| updates, new_opt_state = state.tx.update(grads, state.opt_state, params)
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| new_params = optax.apply_updates(params, updates)
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|
|
|
|
| nnx.update(model, new_params)
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| new_params = nnx.state(model)
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|
|
| new_state = dataclasses.replace(state, step=state.step + 1, params=new_params, opt_state=new_opt_state)
|
| if state.ema_decay is not None:
|
| new_state = dataclasses.replace(
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| new_state,
|
| ema_params=jax.tree.map(
|
| lambda old, new: state.ema_decay * old + (1 - state.ema_decay) * new, state.ema_params, new_params
|
| ),
|
| )
|
|
|
|
|
| kernel_params = nnx.state(
|
| model,
|
| nnx.All(
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| nnx.Param,
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| nnx.Not(nnx_utils.PathRegex(".*/(bias|scale|pos_embedding|input_embedding)")),
|
| lambda _, x: x.value.ndim > 1,
|
| ),
|
| )
|
| info = {
|
| "loss": loss,
|
| "grad_norm": optax.global_norm(grads),
|
| "param_norm": optax.global_norm(kernel_params),
|
| }
|
| return new_state, info
|
|
|
|
|
| def main(config: _config.TrainConfig):
|
| init_logging()
|
| logging.info(f"Running on: {platform.node()}")
|
|
|
| if config.batch_size % jax.device_count() != 0:
|
| raise ValueError(
|
| f"Batch size {config.batch_size} must be divisible by the number of devices {jax.device_count()}."
|
| )
|
|
|
| jax.config.update("jax_compilation_cache_dir", str(epath.Path("~/.cache/jax").expanduser()))
|
|
|
| rng = jax.random.key(config.seed)
|
| train_rng, init_rng = jax.random.split(rng)
|
|
|
| mesh = sharding.make_mesh(config.fsdp_devices)
|
| data_sharding = jax.sharding.NamedSharding(mesh, jax.sharding.PartitionSpec(sharding.DATA_AXIS))
|
| replicated_sharding = jax.sharding.NamedSharding(mesh, jax.sharding.PartitionSpec())
|
|
|
| checkpoint_manager, resuming = _checkpoints.initialize_checkpoint_dir(
|
| config.checkpoint_dir,
|
| keep_period=config.keep_period,
|
| overwrite=config.overwrite,
|
| resume=config.resume,
|
| )
|
| init_wandb(config, resuming=resuming, enabled=config.wandb_enabled)
|
|
|
| data_loader = _data_loader.create_data_loader(
|
| config,
|
| sharding=data_sharding,
|
| shuffle=True,
|
| )
|
| data_iter = iter(data_loader)
|
| batch = next(data_iter)
|
| logging.info(f"Initialized data loader:\n{training_utils.array_tree_to_info(batch)}")
|
|
|
|
|
| images_to_log = [
|
| wandb.Image(np.concatenate([np.array(img[i]) for img in batch[0].images.values()], axis=1))
|
| for i in range(min(5, len(next(iter(batch[0].images.values())))))
|
| ]
|
| wandb.log({"camera_views": images_to_log}, step=0)
|
|
|
| train_state, train_state_sharding = init_train_state(config, init_rng, mesh, resume=resuming)
|
| jax.block_until_ready(train_state)
|
| logging.info(f"Initialized train state:\n{training_utils.array_tree_to_info(train_state.params)}")
|
|
|
| if resuming:
|
| train_state = _checkpoints.restore_state(checkpoint_manager, train_state, data_loader)
|
|
|
| ptrain_step = jax.jit(
|
| functools.partial(train_step, config),
|
| in_shardings=(replicated_sharding, train_state_sharding, data_sharding),
|
| out_shardings=(train_state_sharding, replicated_sharding),
|
| donate_argnums=(1,),
|
| )
|
|
|
| start_step = int(train_state.step)
|
| pbar = tqdm.tqdm(
|
| range(start_step, config.num_train_steps),
|
| initial=start_step,
|
| total=config.num_train_steps,
|
| dynamic_ncols=True,
|
| )
|
|
|
| infos = []
|
| for step in pbar:
|
| with sharding.set_mesh(mesh):
|
| train_state, info = ptrain_step(train_rng, train_state, batch)
|
| infos.append(info)
|
| if step % config.log_interval == 0:
|
| stacked_infos = common_utils.stack_forest(infos)
|
| reduced_info = jax.device_get(jax.tree.map(jnp.mean, stacked_infos))
|
| info_str = ", ".join(f"{k}={v:.4f}" for k, v in reduced_info.items())
|
| pbar.write(f"Step {step}: {info_str}")
|
| wandb.log(reduced_info, step=step)
|
| infos = []
|
| batch = next(data_iter)
|
|
|
| if (step % config.save_interval == 0 and step > start_step) or step == config.num_train_steps - 1:
|
| _checkpoints.save_state(checkpoint_manager, train_state, data_loader, step)
|
|
|
| logging.info("Waiting for checkpoint manager to finish")
|
| checkpoint_manager.wait_until_finished()
|
|
|
|
|
| if __name__ == "__main__":
|
| main(_config.cli())
|
|
|