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train.py
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train.py
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import torch
import os
import deepspeed
import wandb
from torch.utils.data import random_split, ConcatDataset
from torch.optim import AdamW
from tqdm import tqdm
from functools import partial
from magma.datasets import (
collate_fn,
ImgCptDataset,
)
from magma.magma import (
Magma,
)
from magma.utils import (
is_main,
cycle,
parse_args,
wandb_log,
wandb_init,
save_model,
load_model,
print_main,
configure_param_groups,
)
from magma.train_loop import (
eval_step,
inference_step,
train_step,
)
def _load_img_cpt_datasets(dataset_dir, tokenizer, transforms):
if isinstance(dataset_dir, (list, tuple)):
return ConcatDataset(
[_load_img_cpt_datasets(d, tokenizer, transforms) for d in dataset_dir]
)
elif isinstance(dataset_dir, str):
return ImgCptDataset(dataset_dir, tokenizer=tokenizer, transforms=transforms)
else:
raise TypeError("dataset dir wrong type")
def get_pretraining_datasets(config, tokenizer, transforms):
# if config.train_dataset_dir is a list, load all datasets + join together
train_dataset = _load_img_cpt_datasets(
config.train_dataset_dir, tokenizer, transforms
)
# if no dedicated eval sets are given, use a percentage of the train dataset
if config.eval_dataset_dir is None:
eval_len = int(len(train_dataset) * config.eval_dataset_pct)
train_len = len(train_dataset) - eval_len
print(
f"Randomly splitting train_dataset into two datasets of length {train_len} and {eval_len}"
)
train_dataset, eval_dataset = random_split(train_dataset, [train_len, eval_len])
else:
eval_dataset = _load_img_cpt_datasets(
config.eval_dataset_dir, tokenizer, transforms
)
print_main(f"Loaded train dataset with {len(train_dataset)} samples")
print_main(f"Loaded eval dataset with {len(eval_dataset)} samples")
return train_dataset, eval_dataset
# tell tokenizers not to do parallelism
os.environ["TOKENIZERS_PARALLELISM"] = "false"
if __name__ == "__main__":
# parse command line arguments:
args = parse_args()
deepspeed.init_distributed()
# load model + tokenizer:
model = Magma(
args.config,
device=torch.device("cuda", args.local_rank)
) # for finetuning one might want to load the model via Magma.from_checkpoint(...) here
tokenizer, config, transforms = model.tokenizer, model.config, model.transforms
# filter frozen from trainable parameters:
trainable_parameters = configure_param_groups(model, config)
# load data:
train_dataset, eval_dataset = get_pretraining_datasets(
config, tokenizer, transforms
)
print_main(f"Loaded train dataset with {len(train_dataset)} samples")
print_main(f"Loaded eval dataset with {len(eval_dataset)} samples")
opt = AdamW(
trainable_parameters,
config.lr,
betas=(0.9, 0.95),
weight_decay=config.weight_decay,
)
model_engine, opt, train_loader, lr_scheduler = deepspeed.initialize(
args=args,
model=model,
optimizer=opt,
model_parameters=trainable_parameters,
training_data=train_dataset,
collate_fn=partial(collate_fn, seq_len=model.seq_len),
config_params=config.deepspeed_config_params,
)
eval_loader = cycle(model_engine.deepspeed_io(eval_dataset))
train_loader = cycle(train_loader)
# initialize training
global_step = 0
if config.load:
# loads a deepspeed checkpoint if provided. For finetuning, set load_optimizer to false
previous_global_step = load_model(
model_engine,
config.load,
load_optimizer_states=config.load_optimizer,
load_lr_scheduler_states=config.load_optimizer,
)
if config.load_optimizer:
global_step = previous_global_step
pbar = tqdm(
range(0, config.train_steps),
desc="training...",
initial=global_step,
total=config.train_steps,
disable=not is_main(),
)
wandb_init(
project=config.wandb_project,
name=config.name or wandb.util.generate_id(),
config=config,
)
# training loop
for i in pbar:
if global_step >= config.train_steps:
break
##### train step
loss = train_step(config, train_loader, model_engine)
global_step += 1
if global_step % config.log_every == 0:
pbar.set_description(f"training... Step: {global_step} Loss: {loss}")
current_lr = (
[lr for lr in lr_scheduler.get_lr()]
if lr_scheduler is not None
else config.lr
)
to_log = {"train/loss": loss, "train/lr": current_lr}
wandb_log(to_log, step=global_step)
##### Evaluation phase
if global_step % config.eval_every == 0:
model_engine.eval()
with torch.no_grad():
##### eval step:
eval_loss = eval_step(config, eval_loader, model_engine)
wandb_log({"eval/loss": eval_loss}, step=global_step)
pbar.set_description(
f"evaluating... Step: {global_step} Eval Loss: {eval_loss}"
)
##### inference:
image_grid, caption = inference_step(config, eval_loader, model_engine)
wandb_log(
{"inference/image": wandb.Image(image_grid, caption=caption)},
step=global_step,
)
model_engine.train()
##### Save model
if global_step % config.save_every == 0:
if config.save is not None:
save_model(model_engine, config.save, global_step)
print_main(f"saving model at step {global_step}")
##### Save model after training is finished
if config.save is not None:
save_model(model_engine, config.save, global_step)
print_main(f"saving model at end of training (step {global_step})")