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train_videoQA.py
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train_videoQA.py
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"""
Copyright (c) Microsoft Corporation.
Licensed under the MIT license.
Training Video QA
"""
from collections import defaultdict
import os
from os.path import exists, join
from time import time
import torch
from torch.nn.utils import clip_grad_norm_
from tqdm import tqdm
from apex import amp
from horovod import torch as hvd
from data import QaQueryTokLmdb, PrefetchLoader, MetaLoader
from load_data import (
get_video_ids, load_video_sub_dataset, build_downstream_dataloaders)
from model.videoQA import HeroForVideoQA
from optim import get_lr_sched
from optim.misc import build_optimizer
from utils.logger import LOGGER, TB_LOGGER, RunningMeter, add_log_to_file
from utils.distributed import (all_reduce_and_rescale_tensors, all_gather_list,
broadcast_tensors)
from utils.save import ModelSaver, save_training_meta, TrainingRestorer
from utils.misc import NoOp, set_dropout, set_random_seed
from utils.const import VFEAT_DIM, MAX_FRM_SEQ_LEN
from utils.basic_utils import save_json
from config.config import shared_configs
from eval_videoQA import validate_videoQA
def main(opts):
hvd.init()
n_gpu = hvd.size()
device = torch.device("cuda", hvd.local_rank())
torch.cuda.set_device(hvd.local_rank())
opts.n_gpu = n_gpu
LOGGER.info("device: {} n_gpu: {}, rank: {}, "
"16-bits training: {}".format(
device, n_gpu, hvd.rank(), opts.fp16))
if hvd.rank() != 0:
LOGGER.disabled = True
set_random_seed(opts.seed)
# train_examples = None
LOGGER.info(f"Loading the whole video dataset {opts.sub_txt_db}, "
f"{opts.vfeat_db}")
video_db = load_video_sub_dataset(
opts.vfeat_db, opts.sub_txt_db, opts.vfeat_interval, opts)
# data loaders
# train
LOGGER.info(f"Loading the train QA dataset {opts.train_query_txt_db}")
video_ids = get_video_ids(opts.train_query_txt_db)
train_q_txt_db = QaQueryTokLmdb(opts.train_query_txt_db,
opts.max_txt_len)
train_dataloaders = build_downstream_dataloaders(
[opts.task], video_db, video_ids,
True, opts, q_txt_db=train_q_txt_db,
shuffle=True)
meta_loader = MetaLoader(train_dataloaders,
accum_steps=opts.gradient_accumulation_steps,
distributed=n_gpu > 1)
meta_loader = PrefetchLoader(meta_loader)
# val
LOGGER.info(f"Loading the val QA dataset {opts.val_query_txt_db}")
video_ids = get_video_ids(opts.val_query_txt_db)
val_q_txt_db = QaQueryTokLmdb(opts.val_query_txt_db, -1)
val_dataloaders = build_downstream_dataloaders(
[opts.task], video_db, video_ids,
False, opts, q_txt_db=val_q_txt_db)
if opts.test_query_txt_db:
LOGGER.info(f"Loading the test QA dataset {opts.test_query_txt_db}")
video_ids = get_video_ids(opts.test_query_txt_db)
test_q_txt_db = QaQueryTokLmdb(opts.test_query_txt_db, -1)
test_dataloaders = build_downstream_dataloaders(
[opts.task], video_db, video_ids,
False, opts, q_txt_db=test_q_txt_db)
# Prepare model
if opts.checkpoint:
checkpoint = torch.load(opts.checkpoint)
else:
checkpoint = {}
img_pos_embed_weight_key = "v_encoder.f_encoder.img_embeddings" +\
".position_embeddings.weight"
if img_pos_embed_weight_key in checkpoint:
max_frm_seq_len = len(checkpoint[img_pos_embed_weight_key])
else:
max_frm_seq_len = MAX_FRM_SEQ_LEN
model = HeroForVideoQA.from_pretrained(
opts.model_config,
state_dict=checkpoint,
vfeat_dim=VFEAT_DIM,
max_frm_seq_len=max_frm_seq_len)
model.to(device)
# make sure every process has same model parameters in the beginning
broadcast_tensors([p.data for p in model.parameters()], 0)
set_dropout(model, opts.dropout)
# Prepare optimizer
optimizer = build_optimizer(model, opts)
task2scaler = {t: i for i, t in enumerate(train_dataloaders.keys())}
model, optimizer = amp.initialize(model, optimizer,
num_losses=len(task2scaler),
enabled=opts.fp16, opt_level='O2')
restorer = TrainingRestorer(opts, model, optimizer)
global_step = restorer.global_step
TB_LOGGER.global_step = global_step
if hvd.rank() == 0:
save_training_meta(opts)
TB_LOGGER.create(join(opts.output_dir, 'log'))
pbar = tqdm(total=opts.num_train_steps)
model_saver = ModelSaver(join(opts.output_dir, 'ckpt'))
if not exists(join(opts.output_dir, 'results')):
# store tvqa predictions
os.makedirs(join(opts.output_dir, 'results'))
add_log_to_file(join(opts.output_dir, 'log', 'log.txt'))
else:
LOGGER.disabled = True
pbar = NoOp()
model_saver = NoOp()
restorer = NoOp()
if global_step > 0:
pbar.update(global_step)
LOGGER.info(f"***** Running training with {n_gpu} GPUs *****")
LOGGER.info(" Batch size = %d", opts.train_batch_size)
LOGGER.info(" Accumulate steps = %d", opts.gradient_accumulation_steps)
LOGGER.info(" Num steps = %d", opts.num_train_steps)
task2loss = {task: RunningMeter(f'loss/{task}')
for task in train_dataloaders.keys()}
for obj in (f'{opts.task}_qa', f'{opts.task}_st_ed'):
task2loss[obj] = RunningMeter(f'loss/{obj}')
model.train()
n_examples = defaultdict(int)
start = time()
# quick hack for amp delay_unscale bug
optimizer.zero_grad()
if global_step == 0:
optimizer.step()
for step, (task, batch) in enumerate(meta_loader):
n_examples[task] += opts.train_batch_size
loss = model(batch, task=task, compute_loss=True)
loss_qa, loss_st_ed = loss
loss = loss_qa + opts.lw_st_ed * loss_st_ed
for n, ls in (('st_ed', loss_st_ed),
('qa', loss_qa)):
ls = ls.item()
task2loss[f'{task}_{n}'](ls)
loss = loss.mean()
task2loss[task](loss.item())
delay_unscale = (step+1) % opts.gradient_accumulation_steps != 0
with amp.scale_loss(loss, optimizer, delay_unscale=delay_unscale,
loss_id=task2scaler[task]) as scaled_loss:
scaled_loss.backward()
if not delay_unscale:
# gather gradients from every processes
# do this before unscaling to make sure every process uses
# the same gradient scale
grads = [p.grad.data for p in model.parameters()
if p.requires_grad and p.grad is not None]
all_reduce_and_rescale_tensors(grads, float(1))
if (step + 1) % opts.gradient_accumulation_steps == 0:
global_step += 1
# learning rate scheduling
lr_this_step = get_lr_sched(global_step, opts)
for i, param_group in enumerate(optimizer.param_groups):
if i == 0 or i == 1:
param_group['lr'] = lr_this_step * opts.lr_mul
elif i == 2 or i == 3:
param_group['lr'] = lr_this_step
else:
raise ValueError()
TB_LOGGER.add_scalar('lr', lr_this_step, global_step)
TB_LOGGER.log_scaler_dict({temp_loss.name: temp_loss.val
for temp_loss in task2loss.values()
if temp_loss.val is not None})
TB_LOGGER.step()
# update model params
if opts.grad_norm != -1:
grad_norm = clip_grad_norm_(amp.master_params(optimizer),
opts.grad_norm)
TB_LOGGER.add_scalar('grad_norm', grad_norm, global_step)
optimizer.step()
optimizer.zero_grad()
restorer.step()
pbar.update(1)
if global_step % 100 == 0:
# monitor training throughput
LOGGER.info('-------------------------------------------')
LOGGER.info(f'Step {global_step}:')
for t in train_dataloaders.keys():
tot_ex = sum(all_gather_list(n_examples[t]))
ex_per_sec = int(tot_ex / (time()-start))
LOGGER.info(f'{t}: {tot_ex} examples trained at '
f'{ex_per_sec} ex/s')
TB_LOGGER.add_scalar(f'perf/{t}_ex_per_s', ex_per_sec,
global_step)
if global_step % opts.valid_steps == 0:
LOGGER.info('===========================================')
LOGGER.info(f"Step {global_step}: start running validation")
validate(model, val_dataloaders, "val",
opts, global_step=global_step)
if opts.test_query_txt_db:
validate(model, test_dataloaders, "test",
opts, global_step=global_step)
LOGGER.info('===========================================')
model_saver.save(model, global_step)
if global_step >= opts.num_train_steps:
break
LOGGER.info('===========================================')
if global_step % opts.valid_steps != 0:
LOGGER.info('===========================================')
LOGGER.info(f"Step {global_step}: start running validation")
validate(model, val_dataloaders, "val",
opts, global_step=global_step)
if opts.test_query_txt_db:
validate(model, test_dataloaders, "test",
opts, global_step=global_step)
LOGGER.info('===========================================')
model_saver.save(model, f'{global_step}_final')
def validate(model, val_dataloaders, split, opts, global_step=0):
model.eval()
task = opts.task
loader = val_dataloaders[task]
LOGGER.info(f"validate on {task} task, split {split}")
val_log, results, _ = validate_videoQA(
model, loader, task=task, split=split,
save_logits=False)
save_json(
results,
f'{opts.output_dir}/results/'
f'{split}_results_{global_step}'
f'_rank{hvd.rank()}.json')
val_log = {f'{task}_{split}_{k}': v for k, v in val_log.items()}
TB_LOGGER.log_scaler_dict(
{f'{split}_{task}/{k}': v for k, v in val_log.items()})
model.train()
if __name__ == "__main__":
args = shared_configs.get_videoQA_args()
main(args)