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import sys
import time
import hydra
import torch
import datetime
from types import MethodType
from functools import partial
from tqdm import tqdm as tqdm_
from lightning import seed_everything
from contextlib import contextmanager
from torch.utils.tensorboard import SummaryWriter
from omegaconf import OmegaConf, DictConfig, ListConfig
from torch.profiler import ProfilerActivity, profile, record_function
from jutils import NullObject
from jutils import instantiate_from_config
from jutils import count_parameters, exists
import patch_flow # dummy to add omegaconf resolver
from patch_flow.dataloader import CUDAPrefetchIterator
from accelerate import Accelerator
from accelerate.utils import DistributedDataParallelKwargs
# tqdm bar format
BAR_FORMAT = "{l_bar}{bar}| {n_fmt}/{total_fmt} [{elapsed}<{remaining}, {rate_noinv_fmt}{postfix}]"
tqdm = partial(tqdm_, bar_format=BAR_FORMAT, dynamic_ncols=True)
# recursive check for `_target_` used with hydra's instantiate (not yet implemented)
def check_for_instantiate_key(cfg_node, path=""):
if isinstance(cfg_node, dict) or isinstance(cfg_node, DictConfig):
for k, v in cfg_node.items():
full_path = f"{path}.{k}" if path else k
if k == "_target_":
raise NotImplementedError(
f"Unexpected '_target_' key found in config at: '{full_path}'. Hydra instantiate not yet implemented."
)
check_for_instantiate_key(v, full_path)
elif isinstance(cfg_node, (list, ListConfig)):
for i, item in enumerate(cfg_node):
check_for_instantiate_key(item, f"{path}[{i}]")
def check_config(cfg):
if cfg.get("auto_requeue", False):
raise NotImplementedError("Auto-requeuing not working yet!")
if exists(cfg.get("resume_checkpoint", None)) and exists(cfg.get("load_weights", None)):
raise ValueError("Can't resume checkpoint and load weights at the same time.")
if "experiment" in cfg:
raise ValueError("Experiment config not merged successfully!")
if cfg.use_wandb and cfg.use_wandb_offline:
raise ValueError("Decide either for Online or Offline wandb, not both.")
check_for_instantiate_key(cfg)
# check for quick_train missing features
assert cfg.use_wandb is False, "Wandb is not supported in quick_train.py"
assert cfg.use_wandb_offline is False, "Wandb is not supported in quick_train.py"
assert cfg.trainer.params.get("log_grad_norm", False) is False, "Log grad norm is not supported in quick_train.py"
assert cfg.auto_requeue is False, "Auto-requeue is not supported in quick_train.py"
assert cfg.deepspeed_stage == 0, "Deepspeed is not supported in quick_train.py"
""" lightning replacement functions """
def log_accelerate(name, value, step=None, writer=None, **kwargs):
assert exists(writer), "Writer not passed to log function."
if isinstance(value, torch.Tensor):
value = value.item()
if isinstance(value, (float, int)):
writer.add_scalar(name, value, global_step=step)
def add_global_step_setter(lightning_module):
"""
Add a global step setter to the lightning module, s.t. we can
use `self.global_step` within the module hooks.
"""
@property
def global_step(self):
return self._global_step
@global_step.setter
def global_step(self, value):
self._global_step = value
# apply new property to the instance
lightning_module.__class__.global_step = global_step
@contextmanager
def temporary_logger(module, logger):
"""create subclass with property override for self.logger"""
original_class = module.__class__
def get_logger(self):
return logger
TempClass = type(f"Patched{original_class.__name__}", (original_class,), {"logger": property(get_logger)})
module.__class__ = TempClass
try:
yield module
finally:
# Restore the original class
module.__class__ = original_class
def unwrap_model(model: torch.nn.Module) -> torch.nn.Module:
"""
Recursively unwraps a model from potential containers (as used in distributed training).
"""
if hasattr(model, "module"):
return unwrap_model(model.module)
else:
return model
""" main function """
@hydra.main(config_path="configs", config_name="config", version_base=None)
def main(cfg: DictConfig):
"""Check config"""
cfg = OmegaConf.create(OmegaConf.to_container(cfg, resolve=True))
check_config(cfg)
""" Setup accelerate """
# translate precision of lightning to accelerate
lightning_to_accelerate_prec = {
"16-mixed": "fp16",
16: "fp16",
"32-true": "no",
32: "no",
"bf16": "bf16",
"bf16-mixed": "bf16",
}
# ddp kwargs
ddp_kwargs = DistributedDataParallelKwargs(
find_unused_parameters=cfg.ddp_kwargs.get("find_unused_parameters", False),
gradient_as_bucket_view=cfg.ddp_kwargs.get("gradient_as_bucket_view", False),
bucket_cap_mb=cfg.ddp_kwargs.get("bucket_cap_mb", 25),
broadcast_buffers=cfg.ddp_kwargs.get("broadcast_buffers", True),
)
accelerator = Accelerator(
mixed_precision=lightning_to_accelerate_prec[cfg.train_params.precision],
gradient_accumulation_steps=cfg.train_params.accumulate_grad_batches,
kwargs_handlers=[ddp_kwargs],
)
seed_everything(2025 + accelerator.process_index)
is_rank0 = accelerator.is_main_process
device = accelerator.device
""" Setup Logging """
# we store the experiment under: logs/<cfg.name>/<day>/<slurm-id OR timestamp>
day = datetime.datetime.now().strftime("%Y-%m-%d")
postfix = str(cfg.slurm_id) if exists(cfg.slurm_id) else datetime.datetime.now().strftime("T%H%M%S")
exp_name = os.path.join(cfg.name, day, postfix)
log_dir = os.path.join("logs", exp_name)
ckpt_dir = os.path.join(log_dir, "checkpoints")
os.makedirs(ckpt_dir, exist_ok=True)
if is_rank0:
logger = SummaryWriter(log_dir=log_dir)
else:
logger = NullObject()
""" Setup dataloader """
data = instantiate_from_config(cfg.data)
if hasattr(data, "prepare_data"):
data.prepare_data()
if hasattr(data, "setup"):
data.setup(None)
train_loader = data.train_dataloader()
val_loader = data.val_dataloader()
""" Setup module """
module = instantiate_from_config(cfg.trainer)
module = module.to(device).train()
""" Patch lightning logging methods """
add_global_step_setter(module)
# printing
def patched_print(self, *args, **kwargs):
accelerator.print(*args, **kwargs)
module.print = MethodType(patched_print, module)
# logging
def patched_log(self, name, value, **kwargs):
log_accelerate(name, value, step=self.global_step, writer=logger, **kwargs)
module.log = MethodType(patched_log, module)
""" Setup optimizer """
out = module.configure_optimizers()
optimizer = out["optimizer"]
scheduler = out.get("lr_scheduler", None)
""" Load from checkpoint """
resume_step = 0
if exists(cfg.resume_checkpoint):
ckpt = torch.load(cfg.resume_checkpoint, map_location=device, weights_only=False)
resume_step = ckpt["global_step"]
module.load_state_dict(ckpt["state_dict"], strict=cfg.get("load_strict", True))
assert len(ckpt["optimizer_states"]) == 1, "Checkpoint should only contain one optimizer state dict."
optimizer.load_state_dict(ckpt["optimizer_states"][0])
if exists(scheduler) and len(ckpt["lr_schedulers"]) > 0:
assert len(ckpt["lr_schedulers"]) == 1, "Checkpoint should only contain one scheduler state dict."
scheduler.load_state_dict(ckpt["lr_schedulers"][0])
print(
f"Rank {accelerator.process_index} ({accelerator.num_processes}): Resumed from checkpoint at step {resume_step}"
)
if exists(cfg.load_weights):
ckpt = torch.load(cfg.load_weights, map_location=device, weights_only=False)
module.load_state_dict(ckpt["state_dict"], strict=cfg.get("load_strict", True))
print(f"Rank {accelerator.process_index} ({accelerator.num_processes}): Loaded weights from {cfg.load_weights}")
if "resume_step" in cfg and cfg.resume_step > 0:
resume_step = cfg.resume_step
print(f"Rank {accelerator.process_index} ({accelerator.num_processes}): Set resume step to {resume_step}")
""" Setup DDP """
module, optimizer, train_loader, val_loader = accelerator.prepare(module, optimizer, train_loader, val_loader)
""" Profiling """
profile_fn = NullObject()
profile_record_fn = NullObject()
if cfg.profile:
profile_fn = partial(
profile,
activities=[
*((ProfilerActivity.CPU,) if cfg.profiling.cpu else ()),
*((ProfilerActivity.CUDA,) if cfg.profiling.cuda else ()),
],
record_shapes=cfg.profiling.record_shapes,
profile_memory=cfg.profiling.profile_memory,
with_flops=cfg.profiling.with_flops,
with_stack=True,
)
profile_record_fn = record_function
""" print information """
# log trainer module
if is_rank0:
print("-" * 40)
print(OmegaConf.to_yaml(cfg.trainer))
bs = cfg.data.params.batch_size
bs = bs * accelerator.num_processes # num nodes * num gpus
bs = bs * cfg.train_params.accumulate_grad_batches # global batch size
assert accelerator.num_processes % cfg.num_nodes == 0, "Processes not divisible by nodes."
# val batch size
bs_val = cfg.data.params.get("val_batch_size", cfg.data.params.batch_size)
bs_val = bs_val * accelerator.num_processes
bs_val = bs_val * cfg.train_params.limit_val_batches
some_info = {
"Command": " ".join(["python"] + sys.argv),
"Name": exp_name,
"Log dir": log_dir,
"Trainer Module": cfg.trainer.target,
"Params": count_parameters(module),
"Data": cfg.data.get("name", "not set"),
"Batchsize": cfg.data.params.batch_size,
"Devices": accelerator.num_processes // cfg.num_nodes,
"Num nodes": cfg.num_nodes,
"Gradient accum": cfg.train_params.accumulate_grad_batches,
"Global batchsize": bs,
"Val samples": bs_val,
"LR": cfg.trainer.params.lr,
"LR scheduler": cfg.lr_scheduler.get("name", "no name") if "lr_scheduler" in cfg else "None",
"Resume ckpt": cfg.resume_checkpoint,
"Load weights": cfg.load_weights,
"Profiling": f"Step {cfg.profiling.warmup}" if cfg.profile else "None",
"Precision": cfg.train_params.precision,
}
if is_rank0:
OmegaConf.save(cfg, f"{log_dir}/config.yaml")
# log hyperparameters to tensorboard
logger.add_text("config", OmegaConf.to_yaml(cfg))
logger.add_text("summary", OmegaConf.to_yaml(some_info))
# print and write some info to the config
with open(f"{log_dir}/config.yaml", "a") as f:
f.write("\n\n")
def flush_txt(txt):
print(f"{txt}")
f.write(f"# {txt}\n")
flush_txt("-" * 40)
for k, v in some_info.items():
if isinstance(v, float):
flush_txt(f"{k:<16}: {v:.5f}")
elif isinstance(v, int):
flush_txt(f"{k:<16}: {v:,}")
elif isinstance(v, bool):
flush_txt(f"{k:<16}: {'True' if v else 'False'}")
else:
flush_txt(f"{k:<16}: {v}")
flush_txt("-" * 40)
""" Setup training loop """
global_step = resume_step
max_steps = cfg.train_params.get("max_steps", -1)
use_cuda_prefetch = bool(cfg.get("cuda_prefetch", False)) and device.type == "cuda"
train_iterable = (
CUDAPrefetchIterator(
iterator=iter(train_loader),
device=device,
enabled=True,
prefetch_factor=cfg.get("cuda_prefetch_factor", 2),
)
if use_cuda_prefetch
else train_loader
)
# Loop
for step, batch in enumerate(
tqdm(train_iterable, desc="Training", miniters=cfg.tqdm_refresh_rate, disable=(not is_rank0))
):
if max_steps > 0 and global_step >= max_steps:
accelerator.print(f"Finish training after {global_step} steps.")
accelerator.wait_for_everyone()
break
t0 = time.time()
# ===================== #
# Training #
# ===================== #
with profile_fn() if cfg.profile and global_step == cfg.profiling.warmup else NullObject() as prof:
with accelerator.accumulate(module):
# forward
with profile_record_fn(f"step_{global_step}/fwd"):
with accelerator.autocast():
if not use_cuda_prefetch:
batch = {
k: v.to(device, non_blocking=True) if isinstance(v, torch.Tensor) else v
for k, v in batch.items()
}
loss = module.forward(batch)
if isinstance(loss, tuple):
assert len(loss) == 2, "Loss tuple should be of length 2, shall be (loss, dict)."
loss, loss_dict = loss
else:
loss_dict = {}
# backward
with profile_record_fn(f"step_{global_step}/bwd"):
accelerator.backward(loss)
# optimizer step
with profile_record_fn(f"step_{global_step}/opt"):
if accelerator.sync_gradients:
grad_norm = accelerator.clip_grad_norm_(
module.parameters(), max_norm=cfg.train_params.clip_grad_norm
)
optimizer.step()
optimizer.zero_grad()
if accelerator.sync_gradients:
if exists(scheduler):
scheduler.step()
unwrap_model(module).on_train_batch_end(loss, batch, step) # no sync needed
global_step += 1
module.global_step = global_step
step_time = time.time() - t0
# logging
if accelerator.sync_gradients and global_step % cfg.train_params.log_every_n_steps == 0:
logger.add_scalar("train/loss", loss.item(), global_step=global_step)
for k, v in loss_dict.items():
logger.add_scalar(f"train/{k}", v.item(), global_step=global_step)
logger.add_scalar("train/grad_norm", grad_norm.item(), global_step=global_step)
logger.add_scalar("train/step_time", step_time, global_step=global_step)
logger.add_scalar("train/it_per_sec", 1.0 / step_time, global_step=global_step)
logger.add_scalar("train/throughput", bs / step_time, global_step=global_step)
if exists(scheduler):
logger.add_scalar("train/lr-AdamW", scheduler.get_last_lr()[0], global_step=global_step)
if not accelerator.sync_gradients:
continue
# ===================== #
# Profiling #
# ===================== #
if cfg.profile and not isinstance(prof, NullObject):
accelerator.wait_for_everyone()
if is_rank0:
print(f"[Profiling] Enabled after {cfg.profiling.warmup} steps.")
fn = os.path.join(log_dir, cfg.profiling.filename)
prof.export_chrome_trace(fn)
print(f"[Profiling] Exported '{fn}'")
accelerator.wait_for_everyone()
break
# ===================== #
# Checkpoint #
# ===================== #
if global_step % cfg.checkpoint_params.every_n_train_steps == 0 and global_step > 0:
accelerator.wait_for_everyone()
if is_rank0:
fn = os.path.join(ckpt_dir, f"step{global_step:06d}.ckpt")
lightning_module = unwrap_model(module)
lightning_module.eval()
# align with lightning checkpoints
checkpoint = {
"epoch": 0,
"global_step": global_step,
"pytorch-lightning_version": "2.5.0.post0",
"state_dict": lightning_module.state_dict(),
# 'loops': {}, # TODO
# 'callbacks': {}, # TODO
"optimizer_states": [optimizer.state_dict()],
"lr_schedulers": [scheduler.state_dict()] if exists(scheduler) else [],
"hparams_name": "kwargs",
"hyper_parameters": OmegaConf.to_object(cfg.trainer.params),
}
torch.save(checkpoint, fn)
print(f"Save checkpoint to {fn}")
# symlink latest checkpoint
last_ckpt_symlink = os.path.join(ckpt_dir, "last.ckpt")
try:
if os.path.islink(last_ckpt_symlink) or os.path.exists(last_ckpt_symlink):
os.remove(last_ckpt_symlink)
relative_ckpt_path = os.path.relpath(fn, start=ckpt_dir)
os.symlink(relative_ckpt_path, last_ckpt_symlink)
except OSError as e:
print(f"Failed to update symlink for last.ckpt: {e}")
lightning_module.train()
accelerator.wait_for_everyone()
# ===================== #
# Validation #
# ===================== #
if global_step % cfg.train_params.val_check_interval == 0 and global_step > 0:
module.eval()
n_val_steps = cfg.train_params.limit_val_batches
sample_module = unwrap_model(module)
sample_module.global_step = global_step
for val_step, val_batch in enumerate(
tqdm(val_loader, desc=f"Validation {global_step}", disable=(not is_rank0), total=n_val_steps)
):
if val_step == n_val_steps:
break
val_batch = {k: v.to(device) if isinstance(v, torch.Tensor) else v for k, v in val_batch.items()}
with torch.no_grad(), accelerator.autocast():
sample_module.validation_step(val_batch, val_step)
# gather metrics and log them
with temporary_logger(sample_module, logger):
sample_module.on_validation_epoch_end()
accelerator.wait_for_everyone()
module.train()
accelerator.wait_for_everyone()
accelerator.end_training()
if __name__ == "__main__":
torch.backends.cuda.matmul.allow_tf32 = True
torch.backends.cudnn.allow_tf32 = True
from einops._torch_specific import allow_ops_in_compiled_graph
allow_ops_in_compiled_graph()
try:
main()
except KeyboardInterrupt:
print("[KeyboardInterrupt] Interrupted by user.")
exit()
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