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train_vq_multi_v2.py
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train_vq_multi_v2.py
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import os
import json
import torch
import torch.optim as optim
from torch.utils.tensorboard import SummaryWriter
import models.vqvae as vqvae
import utils.losses as losses
import options.option_vq as option_vq
import utils.utils_model as utils_model
from dataset import dataset_VQ, dataset_TM_eval
import utils.eval_trans as eval_trans
from options.get_eval_option import get_opt
from models.evaluator_wrapper import EvaluatorModelWrapper
import warnings
warnings.filterwarnings('ignore')
from utils.word_vectorizer import WordVectorizer
from tqdm import tqdm
from exit.utils import get_model, generate_src_mask, init_save_folder
from models.vqvae_multi import VQVAE_MULTI
def update_lr_warm_up(optimizer, nb_iter, warm_up_iter, lr):
current_lr = lr * (nb_iter + 1) / (warm_up_iter + 1)
for param_group in optimizer.param_groups:
param_group["lr"] = current_lr
return optimizer, current_lr
##### ---- Exp dirs ---- #####
args = option_vq.get_args_parser()
torch.manual_seed(args.seed)
torch.cuda.set_device(0)
args.out_dir = os.path.join(args.out_dir, f'vq') # /{args.exp_name}
# os.makedirs(args.out_dir, exist_ok = True)
init_save_folder(args)
##### ---- Logger ---- #####
logger = utils_model.get_logger(args.out_dir)
writer = SummaryWriter(args.out_dir)
logger.info(json.dumps(vars(args), indent=4, sort_keys=True))
w_vectorizer = WordVectorizer('./glove', 'our_vab')
if args.dataname == 'kit' :
dataset_opt_path = 'checkpoints/kit/Comp_v6_KLD005/opt.txt'
args.nb_joints = 21
else :
dataset_opt_path = 'checkpoints/t2m/Comp_v6_KLD005/opt.txt'
args.nb_joints = 22
logger.info(f'Training on {args.dataname}, motions are with {args.nb_joints} joints')
wrapper_opt = get_opt(dataset_opt_path, torch.device('cuda'))
eval_wrapper = EvaluatorModelWrapper(wrapper_opt)
##### ---- Dataloader ---- #####
train_loader = dataset_VQ.DATALoader(args.dataname,
args.batch_size,
window_size=args.window_size,
unit_length=2**args.down_t)
train_loader_iter = dataset_VQ.cycle(train_loader)
val_loader = dataset_TM_eval.DATALoader(args.dataname, False,
32,
w_vectorizer,
unit_length=2**args.down_t)
##### ---- Network ---- #####
net= VQVAE_MULTI(args, ## use args to define different parameters in different quantizers
args.nb_code,#8192
args.code_dim,#32
args.output_emb_width,#512
args.down_t,#2
args.stride_t,#2
args.width,#512
args.depth,#3
args.dilation_growth_rate,#3
args.vq_act,#'relu'
args.vq_norm,#None
{'mean': torch.from_numpy(train_loader.dataset.mean).cuda().float(),
'std': torch.from_numpy(train_loader.dataset.std).cuda().float()},
True)
if args.resume_pth :
logger.info('loading checkpoint from {}'.format(args.resume_pth))
ckpt = torch.load(args.resume_pth, map_location='cpu')
net.load_state_dict(ckpt['net'], strict=True)
#net = torch.nn.DataParallel(net)
net.train()
net.cuda()
##### ---- Optimizer & Scheduler ---- #####
optimizer = optim.AdamW(net.parameters(), lr=args.lr, betas=(0.9, 0.99), weight_decay=args.weight_decay)
scheduler = torch.optim.lr_scheduler.MultiStepLR(optimizer, milestones=args.lr_scheduler, gamma=args.gamma)
Loss = losses.ReConsLoss(args.recons_loss, args.nb_joints)
##### ------ warm-up ------- #####
avg_recons, avg_perplexity, avg_commit = 0., 0., 0.
for nb_iter in tqdm(range(1, args.warm_up_iter)):
optimizer, current_lr = update_lr_warm_up(optimizer, nb_iter, args.warm_up_iter, args.lr)
gt_motion = next(train_loader_iter)
gt_motion = gt_motion.cuda().float() # (bs, 64, dim)
pred_motion, loss_commit, perplexity = net(gt_motion)
loss_motion = Loss(pred_motion, gt_motion)
loss_vel = Loss.forward_joint(pred_motion, gt_motion)
loss = loss_motion + args.commit * loss_commit + args.loss_vel * loss_vel
optimizer.zero_grad()
loss.backward()
optimizer.step()
avg_recons += loss_motion.item()
avg_perplexity += perplexity.item()
avg_commit += loss_commit.item()
if nb_iter % args.print_iter == 0 :
avg_recons /= args.print_iter
avg_perplexity /= args.print_iter
avg_commit /= args.print_iter
logger.info(f"Warmup. Iter {nb_iter} : lr {current_lr:.5f} \t Commit. {avg_commit:.5f} \t PPL. {avg_perplexity:.2f} \t Recons. {avg_recons:.5f}")
avg_recons, avg_perplexity, avg_commit = 0., 0., 0.
##### ---- Training ---- #####
avg_recons, avg_perplexity, avg_commit = 0., 0., 0.
#TODO
#best_fid, best_iter, best_div, best_top1, best_top2, best_top3, best_matching, writer, logger = eval_trans.evaluation_vqvae(args.out_dir, val_loader, net, logger, writer, 0, best_fid=1000, best_iter=0, best_div=100, best_top1=0, best_top2=0, best_top3=0, best_matching=100, eval_wrapper=eval_wrapper)
for nb_iter in tqdm(range(1, args.total_iter + 1)):
#[256,64,263]
gt_motion = next(train_loader_iter)
gt_motion = gt_motion.cuda().float() # bs, nb_joints, joints_dim, seq_len
gt_motion[:,1:3] = 0
pred_motion, loss_commit, perplexity = net(gt_motion, idx_noise=0)
loss_motion = Loss(pred_motion, gt_motion)
loss_vel = Loss.forward_joint(pred_motion, gt_motion)
loss = loss_motion + args.commit * loss_commit + args.loss_vel * loss_vel
optimizer.zero_grad()
loss.backward()
optimizer.step()
scheduler.step()
avg_recons += loss_motion.item()
avg_perplexity += perplexity.item()
avg_commit += loss_commit.item()
if nb_iter % args.print_iter == 0 :
avg_recons /= args.print_iter
avg_perplexity /= args.print_iter
avg_commit /= args.print_iter
writer.add_scalar('./Train/L1', avg_recons, nb_iter)
writer.add_scalar('./Train/PPL', avg_perplexity, nb_iter)
writer.add_scalar('./Train/Commit', avg_commit, nb_iter)
logger.info(f"Train. Iter {nb_iter} : \t Commit. {avg_commit:.5f} \t PPL. {avg_perplexity:.2f} \t Recons. {avg_recons:.5f}")
avg_recons, avg_perplexity, avg_commit = 0., 0., 0.,
if nb_iter % args.eval_iter==0 :
best_fid, best_iter, best_div, best_top1, best_top2, best_top3, best_matching, writer, logger = eval_trans.evaluation_vqvae(args.out_dir, val_loader, net, logger, writer, nb_iter, best_fid, best_iter, best_div, best_top1, best_top2, best_top3, best_matching, eval_wrapper=eval_wrapper)