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path: root/hrm/pretrain.py
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from typing import Optional, Any, Sequence, List
from dataclasses import dataclass, replace
import os
import math
import yaml
import shutil

import torch
import torch.distributed as dist
from torch import nn
from torch.utils.data import DataLoader

import tqdm
import wandb
import coolname
import hydra
import pydantic
from omegaconf import DictConfig
from adam_atan2 import AdamATan2

from puzzle_dataset import PuzzleDataset, PuzzleDatasetConfig, PuzzleDatasetMetadata
from utils.functions import load_model_class, get_model_source_path
from models.sparse_embedding import CastedSparseEmbeddingSignSGD_Distributed


class LossConfig(pydantic.BaseModel):
    model_config = pydantic.ConfigDict(extra='allow')
    
    name: str


class ArchConfig(pydantic.BaseModel):
    model_config = pydantic.ConfigDict(extra='allow')

    name: str
    loss: LossConfig


class PretrainConfig(pydantic.BaseModel):
    # Config
    arch: ArchConfig
    # Data
    data_path: str

    # Hyperparams
    global_batch_size: int
    epochs: int

    lr: float
    lr_min_ratio: float
    lr_warmup_steps: int

    weight_decay: float
    beta1: float
    beta2: float

    # Puzzle embedding
    puzzle_emb_lr: float
    puzzle_emb_weight_decay: float

    # Names
    project_name: Optional[str] = None
    run_name: Optional[str] = None
    checkpoint_path: Optional[str] = None

    # Extras
    seed: int = 0
    checkpoint_every_eval: bool = False
    eval_interval: Optional[int] = None
    eval_save_outputs: List[str] = []

    trajectory_augment: bool = False
    trajectory_n: int = 4
    trajectory_noise_std: float = 1e-3
    trajectory_noise_min: Optional[float] = None
    trajectory_noise_max: Optional[float] = None
    trajectory_noise_sampling: str = "loguniform"
    trajectory_sigma_start: Optional[float] = 0.0
    trajectory_sigma_ramp_steps: int = 5000
    trajectory_perturb: str = "both"
    trajectory_micro_batch: int = 0
    trajectory_parallel: bool = False


@dataclass
class TrainState:
    model: nn.Module
    optimizers: Sequence[torch.optim.Optimizer]
    optimizer_lrs: Sequence[float]
    carry: Any

    step: int
    total_steps: int


def create_dataloader(config: PretrainConfig, split: str, rank: int, world_size: int, **kwargs):
    dataset = PuzzleDataset(PuzzleDatasetConfig(
        seed=config.seed,

        dataset_path=config.data_path,

        rank=rank,
        num_replicas=world_size,
        
        **kwargs
    ), split=split)
    dataloader = DataLoader(
        dataset,
        batch_size=None,

        num_workers=1,
        prefetch_factor=8,

        pin_memory=True,
        persistent_workers=True
    )
    return dataloader, dataset.metadata


def create_model(config: PretrainConfig, train_metadata: PuzzleDatasetMetadata, world_size: int):
    model_batch_size = config.global_batch_size // world_size
    if config.trajectory_augment and config.trajectory_parallel:
        model_batch_size *= config.trajectory_n

    model_cfg = dict(
        **config.arch.__pydantic_extra__,  # type: ignore

        batch_size=model_batch_size,

        vocab_size=train_metadata.vocab_size,
        seq_len=train_metadata.seq_len,
        num_puzzle_identifiers=train_metadata.num_puzzle_identifiers,
        causal=False  # Non-autoregressive
    )

    # Instantiate model with loss head
    model_cls = load_model_class(config.arch.name)
    loss_head_cls = load_model_class(config.arch.loss.name)

    with torch.device("cuda"):
        model: nn.Module = model_cls(model_cfg)
        model = loss_head_cls(model, **config.arch.loss.__pydantic_extra__)  # type: ignore
        if "DISABLE_COMPILE" not in os.environ:
            model = torch.compile(model, dynamic=False)  # type: ignore

        # Broadcast parameters from rank 0
        if world_size > 1:
            with torch.no_grad():
                for param in list(model.parameters()) + list(model.buffers()):
                    dist.broadcast(param, src=0)

    # Optimizers and lr
    optimizers = [
        CastedSparseEmbeddingSignSGD_Distributed(
            model.model.puzzle_emb.buffers(),  # type: ignore
            
            lr=0,  # Needs to be set by scheduler
            weight_decay=config.puzzle_emb_weight_decay,

            world_size=world_size
        ),
        AdamATan2(
            model.parameters(),

            lr=0,  # Needs to be set by scheduler
            weight_decay=config.weight_decay,
            betas=(config.beta1, config.beta2)
        )
    ]
    optimizer_lrs = [
        config.puzzle_emb_lr,
        config.lr
    ]

    return model, optimizers, optimizer_lrs


def cosine_schedule_with_warmup_lr_lambda(
    current_step: int, *, base_lr: float, num_warmup_steps: int, num_training_steps: int, min_ratio: float = 0.0, num_cycles: float = 0.5
):
    if current_step < num_warmup_steps:
        return base_lr * float(current_step) / float(max(1, num_warmup_steps))

    progress = float(current_step - num_warmup_steps) / float(max(1, num_training_steps - num_warmup_steps))
    return base_lr * (min_ratio + max(0.0, (1 - min_ratio) * 0.5 * (1.0 + math.cos(math.pi * float(num_cycles) * 2.0 * progress))))


def init_train_state(config: PretrainConfig, train_metadata: PuzzleDatasetMetadata, world_size: int):
    # Estimated total training steps
    total_steps = int(config.epochs * train_metadata.total_groups * train_metadata.mean_puzzle_examples / config.global_batch_size)

    # Model
    model, optimizers, optimizer_lrs = create_model(config, train_metadata, world_size=world_size)

    return TrainState(
        step=0,
        total_steps=total_steps,

        model=model,
        optimizers=optimizers,
        optimizer_lrs=optimizer_lrs,
        carry=None
    )


def save_train_state(config: PretrainConfig, train_state: TrainState):
    # FIXME: Only saved model.
    if config.checkpoint_path is None:
        return

    os.makedirs(config.checkpoint_path, exist_ok=True)
    torch.save(train_state.model.state_dict(), os.path.join(config.checkpoint_path, f"step_{train_state.step}"))


def compute_lr(base_lr: float, config: PretrainConfig, train_state: TrainState):
    return cosine_schedule_with_warmup_lr_lambda(
        current_step=train_state.step,
        base_lr=base_lr,
        num_warmup_steps=round(config.lr_warmup_steps),
        num_training_steps=train_state.total_steps,
        min_ratio=config.lr_min_ratio
    )


def _unwrap_loss_head(model: nn.Module):
    return getattr(model, "_orig_mod", model)


def _unit_noise_like(tensor: torch.Tensor, sampling: str):
    if sampling == "uniform":
        return ((2.0 * torch.rand(tensor.shape, device=tensor.device, dtype=torch.float32) - 1.0) * math.sqrt(3.0)).to(tensor.dtype)
    return torch.randn(tensor.shape, device=tensor.device, dtype=torch.float32).to(tensor.dtype)


def _trajectory_noise_target(config: PretrainConfig, step: int) -> float:
    if config.trajectory_sigma_ramp_steps <= 0:
        return config.trajectory_noise_std
    start = config.trajectory_sigma_start if config.trajectory_sigma_start is not None else config.trajectory_noise_std
    frac = min(max(step / config.trajectory_sigma_ramp_steps, 0.0), 1.0)
    return float(start + frac * (config.trajectory_noise_std - start))


def _sample_noise_stds(config: PretrainConfig, batch_size: int, device: torch.device, step: int):
    target = _trajectory_noise_target(config, step)
    if target <= 0:
        return torch.zeros(batch_size, device=device, dtype=torch.float32)
    if config.trajectory_noise_sampling == "loguniform":
        scale = 1.0 if config.trajectory_noise_std <= 0 else target / config.trajectory_noise_std
        hi = float(config.trajectory_noise_max if config.trajectory_noise_max is not None else config.trajectory_noise_std) * scale
        lo = float(config.trajectory_noise_min if config.trajectory_noise_min is not None else max(hi / 10.0, 1e-8)) * scale
        hi = max(hi, 1e-12)
        lo = max(min(lo, hi), 1e-12)
        u = torch.rand(batch_size, device=device, dtype=torch.float32)
        return torch.exp(math.log(lo) + u * (math.log(hi) - math.log(lo)))
    return torch.full((batch_size,), target, device=device, dtype=torch.float32)


def _add_initial_noise(config: PretrainConfig, inner_carry: Any, noise_stds: torch.Tensor):
    if noise_stds.numel() == 0 or float(noise_stds.max().item()) <= 0:
        return inner_carry
    view_shape = (noise_stds.shape[0],) + (1,) * (inner_carry.z_H.ndim - 1)
    scale = noise_stds.view(view_shape)
    perturb = config.trajectory_perturb.lower()
    z_h = inner_carry.z_H
    z_l = inner_carry.z_L

    if perturb == "h":
        z_h = z_h + scale.to(z_h.dtype) * _unit_noise_like(z_h, config.trajectory_noise_sampling)
    elif perturb == "l":
        z_l = z_l + scale.to(z_l.dtype) * _unit_noise_like(z_l, config.trajectory_noise_sampling)
    elif perturb == "both":
        z_h = z_h + scale.to(z_h.dtype) * _unit_noise_like(z_h, config.trajectory_noise_sampling)
        z_l = z_l + scale.to(z_l.dtype) * _unit_noise_like(z_l, config.trajectory_noise_sampling)
    elif perturb in ("joint", "both_norm", "joint_norm"):
        joint_scale = scale / math.sqrt(2.0)
        z_h = z_h + joint_scale.to(z_h.dtype) * _unit_noise_like(z_h, config.trajectory_noise_sampling)
        z_l = z_l + joint_scale.to(z_l.dtype) * _unit_noise_like(z_l, config.trajectory_noise_sampling)
    else:
        raise ValueError(f"Unknown trajectory_perturb={config.trajectory_perturb!r}; expected h, l, both, or joint")

    return replace(inner_carry, z_H=z_h, z_L=z_l)


def _token_loss(loss_fn, logits, labels, mask):
    kwargs = {"ignore_index": -100}
    code = getattr(loss_fn, "__code__", None)
    arg_names = code.co_varnames[: code.co_argcount + code.co_kwonlyargcount] if code is not None else ()
    if "valid_mask" in arg_names:
        kwargs["valid_mask"] = mask
    return loss_fn(logits, labels, **kwargs)


def _fixed_unroll_branch_loss(config: PretrainConfig, head: nn.Module, batch: Any, noise_stds: Optional[torch.Tensor]):
    base = head.model  # type: ignore[attr-defined]
    with torch.device("cuda"):
        carry = base.initial_carry(batch)
    reset_flag = torch.ones_like(carry.halted)
    inner_carry = base.inner.reset_carry(reset_flag, carry.inner_carry)
    if noise_stds is not None:
        inner_carry = _add_initial_noise(config, inner_carry, noise_stds)

    batch_size = batch["inputs"].shape[0]
    loss_sum = torch.zeros((), device=batch["inputs"].device, dtype=torch.float32)
    last_exact = torch.zeros((), device=batch["inputs"].device, dtype=torch.float32)
    for act_step in range(base.config.halt_max_steps):
        inner_carry, logits, (q_halt_logits, q_continue_logits) = base.inner(inner_carry, batch)
        labels = batch["labels"]
        with torch.no_grad():
            mask = labels != -100
            loss_counts = mask.sum(-1)
            loss_divisor = loss_counts.clamp_min(1).unsqueeze(-1)
            is_correct = mask & (torch.argmax(logits, dim=-1) == labels)
            seq_is_correct = is_correct.sum(-1) == loss_counts
            last_exact = seq_is_correct.to(torch.float32).sum()

        lm_loss = (_token_loss(head.loss_fn, logits, labels, mask) / loss_divisor).sum()
        q_halt_loss = torch.nn.functional.binary_cross_entropy_with_logits(
            q_halt_logits,
            seq_is_correct.to(q_halt_logits.dtype),
            reduction="sum",
        )
        q_continue_loss = torch.zeros_like(q_halt_loss)
        with torch.no_grad():
            next_q_halt_logits, next_q_continue_logits = base.inner(inner_carry, batch)[-1]
            is_last = act_step + 1 >= base.config.halt_max_steps
            target_q_continue = torch.sigmoid(
                torch.where(
                    torch.full_like(next_q_halt_logits, is_last, dtype=torch.bool),
                    next_q_halt_logits,
                    torch.maximum(next_q_halt_logits, next_q_continue_logits),
                )
            )
        q_continue_loss = torch.nn.functional.binary_cross_entropy_with_logits(q_continue_logits, target_q_continue, reduction="sum")
        loss_sum = loss_sum + lm_loss + 0.5 * (q_halt_loss + q_continue_loss)

    return loss_sum / max(base.config.halt_max_steps, 1), last_exact, batch_size


def _prepare_noisy_stream_carry(config: PretrainConfig, base: nn.Module, carry: Any, batch: Any, step: int):
    reset_mask = carry.halted
    new_inner = base.inner.reset_carry(reset_mask, carry.inner_carry)
    noise_stds = _sample_noise_stds(config, batch["inputs"].shape[0], batch["inputs"].device, step)
    noise_stds = torch.where(reset_mask, noise_stds, torch.zeros_like(noise_stds))
    new_inner = _add_initial_noise(config, new_inner, noise_stds)
    new_steps = torch.where(reset_mask, 0, carry.steps)
    view = reset_mask.view((-1,) + (1,) * (batch["inputs"].ndim - 1))
    new_current_data = {
        k: torch.where(reset_mask.view((-1,) + (1,) * (batch[k].ndim - 1)), batch[k], v)
        for k, v in carry.current_data.items()
    }
    return replace(
        carry,
        inner_carry=new_inner,
        steps=new_steps,
        halted=torch.zeros_like(reset_mask),
        current_data=new_current_data,
    )


def _merge_trajectory_carries(carries: Sequence[Any]):
    inner_type = type(carries[0].inner_carry)
    inner_fields = carries[0].inner_carry.__dataclass_fields__.keys()
    inner_carry = inner_type(**{
        name: torch.cat([getattr(c.inner_carry, name) for c in carries], dim=0)
        for name in inner_fields
    })
    current_data = {
        k: torch.cat([c.current_data[k] for c in carries], dim=0)
        for k in carries[0].current_data
    }
    return replace(
        carries[0],
        inner_carry=inner_carry,
        steps=torch.cat([c.steps for c in carries], dim=0),
        halted=torch.cat([c.halted for c in carries], dim=0),
        current_data=current_data,
    )


def _split_trajectory_carry(carry: Any, branch_size: int, num_branches: int):
    inner_type = type(carry.inner_carry)
    inner_fields = carry.inner_carry.__dataclass_fields__.keys()
    inner_chunks = {
        name: [chunk.contiguous() for chunk in getattr(carry.inner_carry, name).split(branch_size, dim=0)]
        for name in inner_fields
    }
    steps_chunks = [chunk.contiguous() for chunk in carry.steps.split(branch_size, dim=0)]
    halted_chunks = [chunk.contiguous() for chunk in carry.halted.split(branch_size, dim=0)]
    data_chunks = {
        k: [chunk.contiguous() for chunk in v.split(branch_size, dim=0)]
        for k, v in carry.current_data.items()
    }
    return [
        replace(
            carry,
            inner_carry=inner_type(**{name: inner_chunks[name][idx] for name in inner_fields}),
            steps=steps_chunks[idx],
            halted=halted_chunks[idx],
            current_data={k: chunks[idx] for k, chunks in data_chunks.items()},
        )
        for idx in range(num_branches)
    ]


def _repeat_batch_for_trajectories(batch: Any, num_branches: int):
    return {
        k: torch.cat([v for _ in range(num_branches)], dim=0)
        for k, v in batch.items()
    }


def _split_outputs(outputs: Any, branch_size: int, num_branches: int):
    return [
        {
            k: v.narrow(0, idx * branch_size, branch_size)
            for k, v in outputs.items()
        }
        for idx in range(num_branches)
    ]


def _branch_metrics_and_loss(head: nn.Module, carry: Any, outputs: Any):
    labels = carry.current_data["labels"]
    with torch.no_grad():
        mask = labels != -100
        loss_counts = mask.sum(-1)
        loss_divisor = loss_counts.clamp_min(1).unsqueeze(-1)
        is_correct = mask & (torch.argmax(outputs["logits"], dim=-1) == labels)
        seq_is_correct = is_correct.sum(-1) == loss_counts
        valid_metrics = carry.halted & (loss_counts > 0)
        metrics = {
            "count": valid_metrics.sum(),
            "accuracy": torch.where(valid_metrics, (is_correct.to(torch.float32) / loss_divisor).sum(-1), 0).sum(),
            "exact_accuracy": (valid_metrics & seq_is_correct).sum(),
            "q_halt_accuracy": (valid_metrics & ((outputs["q_halt_logits"] >= 0) == seq_is_correct)).sum(),
            "steps": torch.where(valid_metrics, carry.steps, 0).sum(),
        }

        lm_loss = (head.loss_fn(outputs["logits"], labels, ignore_index=-100) / loss_divisor).sum()
        q_halt_loss = torch.nn.functional.binary_cross_entropy_with_logits(
            outputs["q_halt_logits"],
            seq_is_correct.to(outputs["q_halt_logits"].dtype),
            reduction="sum",
        )
        q_continue_loss = torch.zeros_like(q_halt_loss)
        if "target_q_continue" in outputs:
            q_continue_loss = torch.nn.functional.binary_cross_entropy_with_logits(
                outputs["q_continue_logits"],
                outputs["target_q_continue"],
                reduction="sum",
            )
        metrics.update({
            "lm_loss": lm_loss,
            "q_halt_loss": q_halt_loss,
        })
        if "target_q_continue" in outputs:
            metrics["q_continue_loss"] = q_continue_loss
        total_loss = lm_loss + 0.5 * (q_halt_loss + q_continue_loss)
    return metrics, total_loss


def train_batch_trajectory_aug_parallel(config: PretrainConfig, train_state: TrainState, batch: Any, global_batch_size: int, rank: int, world_size: int):
    if world_size != 1:
        raise NotImplementedError("trajectory_parallel currently expects single-GPU baseline configs")
    train_state.step += 1
    if train_state.step > train_state.total_steps:
        return

    batch = {k: v.cuda() for k, v in batch.items()}
    head = _unwrap_loss_head(train_state.model)
    base = head.model  # type: ignore[attr-defined]
    num_branches = max(config.trajectory_n, 1)
    branch_size = batch["inputs"].shape[0]

    if train_state.carry is None or not isinstance(train_state.carry, list):
        with torch.device("cuda"):
            train_state.carry = [train_state.model.initial_carry(batch) for _ in range(num_branches)]  # type: ignore

    for optim in train_state.optimizers:
        optim.zero_grad()

    carries = []
    for branch_idx, carry in enumerate(train_state.carry):
        if branch_idx > 0:
            carry = _prepare_noisy_stream_carry(config, base, carry, batch, train_state.step)
        carries.append(carry)

    parallel_carry = _merge_trajectory_carries(carries)
    parallel_batch = _repeat_batch_for_trajectories(batch, num_branches)
    return_keys = ["logits", "q_halt_logits", "q_continue_logits", "target_q_continue"]
    parallel_carry, loss, _metrics, outputs, _ = train_state.model(
        carry=parallel_carry,
        batch=parallel_batch,
        return_keys=return_keys,
    )
    train_state.carry = _split_trajectory_carry(parallel_carry, branch_size, num_branches)
    (loss / (global_batch_size * num_branches)).backward()

    lr_this_step = None
    for optim, base_lr in zip(train_state.optimizers, train_state.optimizer_lrs):
        lr_this_step = compute_lr(base_lr, config, train_state)
        for param_group in optim.param_groups:
            param_group["lr"] = lr_this_step
        optim.step()
        optim.zero_grad()

    if rank == 0 and outputs is not None:
        split_outputs = _split_outputs(outputs, branch_size, num_branches)
        clean_metrics, clean_loss = _branch_metrics_and_loss(head, train_state.carry[0], split_outputs[0])
        noisy_loss = 0.0
        for branch_idx in range(1, num_branches):
            _, branch_loss = _branch_metrics_and_loss(head, train_state.carry[branch_idx], split_outputs[branch_idx])
            noisy_loss += float(branch_loss.detach().cpu())

        reduced_metrics = {f"train/{k}": float(v.detach().cpu()) for k, v in clean_metrics.items()}
        count = max(reduced_metrics.get("train/count", 1.0), 1.0)
        reduced_metrics = {
            k: v / (global_batch_size if k.endswith("loss") else count)
            for k, v in reduced_metrics.items()
        }
        reduced_metrics["train/lr"] = lr_this_step
        reduced_metrics["train/trajectory_clean_loss"] = float(clean_loss.detach().cpu()) / global_batch_size
        reduced_metrics["train/trajectory_noisy_loss"] = noisy_loss / max(num_branches - 1, 1) / global_batch_size
        reduced_metrics["train/trajectory_sigma"] = _trajectory_noise_target(config, train_state.step)
        reduced_metrics["train/trajectory_parallel"] = 1.0
        return reduced_metrics


def train_batch_trajectory_aug(config: PretrainConfig, train_state: TrainState, batch: Any, global_batch_size: int, rank: int, world_size: int):
    if config.trajectory_parallel:
        return train_batch_trajectory_aug_parallel(config, train_state, batch, global_batch_size, rank, world_size)
    if world_size != 1:
        raise NotImplementedError("trajectory_augment currently expects single-GPU baseline configs")
    train_state.step += 1
    if train_state.step > train_state.total_steps:
        return

    batch = {k: v.cuda() for k, v in batch.items()}
    head = _unwrap_loss_head(train_state.model)
    base = head.model  # type: ignore[attr-defined]

    if train_state.carry is None or not isinstance(train_state.carry, list):
        with torch.device("cuda"):
            train_state.carry = [train_state.model.initial_carry(batch) for _ in range(config.trajectory_n)]  # type: ignore

    for optim in train_state.optimizers:
        optim.zero_grad()

    clean_metrics = None
    clean_loss_value = 0.0
    noisy_loss_value = 0.0
    for branch_idx in range(config.trajectory_n):
        carry = train_state.carry[branch_idx]
        if branch_idx > 0:
            carry = _prepare_noisy_stream_carry(config, base, carry, batch, train_state.step)
        carry, loss, metrics, _, _ = train_state.model(carry=carry, batch=batch, return_keys=[])
        train_state.carry[branch_idx] = carry
        (loss / (global_batch_size * max(config.trajectory_n, 1))).backward()
        if branch_idx == 0:
            clean_metrics = metrics
            clean_loss_value = float(loss.detach().cpu())
        else:
            noisy_loss_value += float(loss.detach().cpu())

    lr_this_step = None
    for optim, base_lr in zip(train_state.optimizers, train_state.optimizer_lrs):
        lr_this_step = compute_lr(base_lr, config, train_state)
        for param_group in optim.param_groups:
            param_group["lr"] = lr_this_step
        optim.step()
        optim.zero_grad()

    if rank == 0 and clean_metrics is not None:
        reduced_metrics = {f"train/{k}": float(v.detach().cpu()) for k, v in clean_metrics.items()}
        count = max(reduced_metrics.get("train/count", 1.0), 1.0)
        reduced_metrics = {
            k: v / (global_batch_size if k.endswith("loss") else count)
            for k, v in reduced_metrics.items()
        }
        reduced_metrics["train/lr"] = lr_this_step
        reduced_metrics["train/trajectory_clean_loss"] = clean_loss_value / global_batch_size
        reduced_metrics["train/trajectory_noisy_loss"] = noisy_loss_value / max(config.trajectory_n - 1, 1) / global_batch_size
        reduced_metrics["train/trajectory_sigma"] = _trajectory_noise_target(config, train_state.step)
        return reduced_metrics


def train_batch(config: PretrainConfig, train_state: TrainState, batch: Any, global_batch_size: int, rank: int, world_size: int):
    if config.trajectory_augment:
        return train_batch_trajectory_aug(config, train_state, batch, global_batch_size, rank, world_size)

    train_state.step += 1
    if train_state.step > train_state.total_steps:  # At most train_total_steps
        return

    # To device
    batch = {k: v.cuda() for k, v in batch.items()}

    # Init carry if it is None
    if train_state.carry is None:
        with torch.device("cuda"):
            train_state.carry = train_state.model.initial_carry(batch)  # type: ignore

    # Forward
    train_state.carry, loss, metrics, _, _ = train_state.model(carry=train_state.carry, batch=batch, return_keys=[])

    ((1 / global_batch_size) * loss).backward()

    # Allreduce
    if world_size > 1:
        for param in train_state.model.parameters():
            if param.grad is not None:
                dist.all_reduce(param.grad)
            
    # Apply optimizer
    lr_this_step = None    
    for optim, base_lr in zip(train_state.optimizers, train_state.optimizer_lrs):
        lr_this_step = compute_lr(base_lr, config, train_state)

        for param_group in optim.param_groups:
            param_group['lr'] = lr_this_step
            
        optim.step()
        optim.zero_grad()

    # Reduce metrics
    if len(metrics):
        assert not any(v.requires_grad for v in metrics.values())

        metric_keys = list(sorted(metrics.keys()))  # Sort keys to guarantee all processes use the same order.
        # Reduce and reconstruct
        metric_values = torch.stack([metrics[k] for k in metric_keys])
        if world_size > 1:
            dist.reduce(metric_values, dst=0)

        if rank == 0:
            metric_values = metric_values.cpu().numpy()
            reduced_metrics = {k: metric_values[i] for i, k in enumerate(metric_keys)}
            
            # Postprocess
            count = max(reduced_metrics["count"], 1)  # Avoid NaNs
            reduced_metrics = {f"train/{k}": v / (global_batch_size if k.endswith("loss") else count) for k, v in reduced_metrics.items()}

            reduced_metrics["train/lr"] = lr_this_step
            return reduced_metrics


def evaluate(config: PretrainConfig, train_state: TrainState, eval_loader: torch.utils.data.DataLoader, eval_metadata: PuzzleDatasetMetadata, rank: int, world_size: int):
    with torch.inference_mode():
        set_ids = {k: idx for idx, k in enumerate(eval_metadata.sets)}
        
        all_preds = {}

        metric_keys = []
        metric_values = None
        metric_global_batch_size = [0 for _ in range(len(set_ids))]
        
        carry = None
        for set_name, batch, global_batch_size in eval_loader:
            # To device
            batch = {k: v.cuda() for k, v in batch.items()}
            with torch.device("cuda"):
                carry = train_state.model.initial_carry(batch)  # type: ignore

            # Forward
            while True:
                carry, _, metrics, preds, all_finish = train_state.model(carry=carry, batch=batch, return_keys=config.eval_save_outputs)
                
                if all_finish:
                    break

            for collection in (batch, preds):
                for k, v in collection.items():
                    if k in config.eval_save_outputs:
                        all_preds.setdefault(k, [])
                        all_preds[k].append(v.cpu())  # Move to CPU for saving GPU memory
                        
            del carry, preds, batch, all_finish

            # Aggregate
            set_id = set_ids[set_name]
            
            if metric_values is None:
                metric_keys = list(sorted(metrics.keys()))  # Sort keys to guarantee all processes use the same order.
                metric_values = torch.zeros((len(set_ids), len(metrics.values())), dtype=torch.float32, device="cuda")
                
            metric_values[set_id] += torch.stack([metrics[k] for k in metric_keys])
            metric_global_batch_size[set_id] += global_batch_size

        if len(all_preds) and config.checkpoint_path is not None:
            all_preds = {k: torch.cat(v, dim=0) for k, v in all_preds.items()}

            os.makedirs(config.checkpoint_path, exist_ok=True)
            torch.save(all_preds, os.path.join(config.checkpoint_path, f"step_{train_state.step}_all_preds.{rank}"))

        # Logging
        # Reduce to rank 0
        if metric_values is not None:
            if world_size > 1:
                dist.reduce(metric_values, dst=0)
            
            if rank == 0:
                reduced_metrics = metric_values.cpu().numpy()
                reduced_metrics = {set_name: {metric_name: reduced_metrics[set_id, metric_id] for metric_id, metric_name in enumerate(metric_keys)}
                                   for set_id, set_name in enumerate(set_ids)}
                
                # Postprocess
                for set_name, metrics in reduced_metrics.items():
                    count = metrics.pop("count")
                    reduced_metrics[set_name] = {k: v / count for k, v in metrics.items()}

                return reduced_metrics


def save_code_and_config(config: PretrainConfig):
    if config.checkpoint_path is None or wandb.run is None:
        return

    os.makedirs(config.checkpoint_path, exist_ok=True)

    # Copy code
    code_list = [
        get_model_source_path(config.arch.name),
        get_model_source_path(config.arch.loss.name)
    ]
    for code_file in code_list:
        if code_file is not None:
            code_name = os.path.basename(code_file)

            shutil.copy(code_file, os.path.join(config.checkpoint_path, code_name))

    # Dump config as yaml
    config_file = os.path.join(config.checkpoint_path, "all_config.yaml")
    with open(config_file, "wt") as f:
        yaml.dump(config.model_dump(), f)

    # Log code
    wandb.run.log_code(config.checkpoint_path)


def load_synced_config(hydra_config: DictConfig, rank: int, world_size: int) -> PretrainConfig:
    objects = [None]
    if rank == 0:
        config = PretrainConfig(**hydra_config)  # type: ignore

        # Naming
        if config.project_name is None:
            config.project_name = f"{os.path.basename(config.data_path).capitalize()} ACT-torch"
        if config.run_name is None:
            config.run_name = f"{config.arch.name.split('@')[-1]} {coolname.generate_slug(2)}"
        if config.checkpoint_path is None:
            config.checkpoint_path = os.path.join("checkpoints", config.project_name, config.run_name)

        objects = [config]

    if world_size > 1:
        dist.broadcast_object_list(objects, src=0)

    return objects[0]  # type: ignore


@hydra.main(config_path="config", config_name="cfg_pretrain", version_base=None)
def launch(hydra_config: DictConfig):
    RANK = 0
    WORLD_SIZE = 1

    # Initialize distributed training if in distributed environment (e.g. torchrun)
    if "LOCAL_RANK" in os.environ:
        # Initialize distributed, default device and dtype
        dist.init_process_group(backend="nccl")

        RANK = dist.get_rank()
        WORLD_SIZE = dist.get_world_size()

        torch.cuda.set_device(int(os.environ["LOCAL_RANK"]))
        
    # Load sync'ed config
    config = load_synced_config(hydra_config, rank=RANK, world_size=WORLD_SIZE)

    # Seed RNGs to ensure consistency
    torch.random.manual_seed(config.seed + RANK)

    # Dataset
    train_epochs_per_iter = config.eval_interval if config.eval_interval is not None else config.epochs
    total_iters = config.epochs // train_epochs_per_iter

    assert config.epochs % train_epochs_per_iter == 0, "Eval interval must be a divisor of total epochs."

    train_loader, train_metadata = create_dataloader(config, "train", test_set_mode=False, epochs_per_iter=train_epochs_per_iter, global_batch_size=config.global_batch_size, rank=RANK, world_size=WORLD_SIZE)
    eval_loader,  eval_metadata  = create_dataloader(config, "test", test_set_mode=True, epochs_per_iter=1, global_batch_size=config.global_batch_size, rank=RANK, world_size=WORLD_SIZE)

    # Train state
    train_state = init_train_state(config, train_metadata, world_size=WORLD_SIZE)

    # Progress bar and logger
    progress_bar = None
    if RANK == 0:
        progress_bar = tqdm.tqdm(total=train_state.total_steps)

        wandb.init(project=config.project_name, name=config.run_name, config=config.model_dump(), settings=wandb.Settings(_disable_stats=True))  # type: ignore
        wandb.log({"num_params": sum(x.numel() for x in train_state.model.parameters())}, step=0)
        save_code_and_config(config)

    # Training Loop
    for _iter_id in range(total_iters):
        print (f"[Rank {RANK}, World Size {WORLD_SIZE}]: Epoch {_iter_id * train_epochs_per_iter}")

        ############ Train Iter
        train_state.model.train()
        for set_name, batch, global_batch_size in train_loader:
            metrics = train_batch(config, train_state, batch, global_batch_size, rank=RANK, world_size=WORLD_SIZE)

            if RANK == 0 and metrics is not None:
                wandb.log(metrics, step=train_state.step)
                progress_bar.update(train_state.step - progress_bar.n)  # type: ignore

        ############ Evaluation
        train_state.model.eval()
        metrics = evaluate(config, train_state, eval_loader, eval_metadata, rank=RANK, world_size=WORLD_SIZE)

        if RANK == 0 and metrics is not None:
            wandb.log(metrics, step=train_state.step)
            
        ############ Checkpointing
        if RANK == 0 and (config.checkpoint_every_eval or (_iter_id == total_iters - 1)):
            save_train_state(config, train_state)

    # finalize
    if dist.is_initialized():
        dist.destroy_process_group()
    wandb.finish()


if __name__ == "__main__":
    launch()