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test_avss_resize.py
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test_avss_resize.py
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import os
import sys
import argparse
import random
import time
import numpy
import torch
import torch.backends.cudnn as cudnn
import torch.distributed as dist
import torch.multiprocessing as mp
import torch.nn as nn
import torch.optim
import torch.utils.data
import torch.utils.data.distributed
import wandb
from config.flags import add_tag, load_args_and_config
from easydict import EasyDict
from loguru import logger
from models.audio.audio_network import AudioModel
from models.visual.visual_network import VisualModel
from torch.nn.parallel import DistributedDataParallel as DDP
from tqdm import tqdm
from engine.engine import Engine
from engine.lr_policy import WarmUpPolyLR
from engine.utils import group_weight
from utils import ddp_utils
import warnings
warnings.simplefilter(action='ignore', category=FutureWarning)
def add_tag(tags, key):
if len(tags) != 0:
tags.append(key)
else:
tags = [key]
return tags
def seed_it(seed):
random.seed(seed)
os.environ["PYTHONSEED"] = str(seed)
numpy.random.seed(seed)
torch.cuda.manual_seed(seed)
torch.cuda.manual_seed_all(seed)
torch.backends.cudnn.deterministic = True
torch.backends.cudnn.benchmark = True
torch.backends.cudnn.enabled = True
torch.manual_seed(seed)
def set_group_lr(model_v, hyp_param_):
param_lists_v = []
# 8
for module in model_v.segment.business_layer:
param_lists_v = group_weight(
param_lists_v, module, torch.nn.BatchNorm2d, hyp_param_.lr * hyp_param_.lrs_seg
)
#
param_lists_v = group_weight(
param_lists_v,
model_v.backbone,
norm_layer=torch.nn.BatchNorm2d,
lr=hyp_param_.lr * hyp_param_.lrs_bkb,
)
if not hyp_param_.use_baseline:
param_lists_v.append(
{"params": model_v.visual_projector.parameters(), "lr": hyp_param_.lr}
)
param_lists_v.append(
{"params": model_v.cross_att.parameters(), "lr": hyp_param_.lr}
)
return param_lists_v
def main(local_rank, ngpus_per_node, hyp_param_):
hyp_param_.local_rank = local_rank
engine = Engine(custom_arg=hyp_param_, logger=logger)
ddp_utils.supress_printer(hyp_param_.ddp, local_rank)
if hyp_param_.local_rank <= 0:
from utils.tensor_board import Tensorboard
wandb_ = Tensorboard(hyp_param_)
else:
wandb_ = None
hyp_param_.num_classes = (
hyp_param_.vpo_num_classes if hyp_param_.use_vpo else hyp_param_.num_classes
)
if hyp_param_.use_baseline:
model_v = VisualModel(
hyp_param_.visual_backbone,
hyp_param_.visual_backbone_pretrain_path,
num_classes=hyp_param_.num_classes,
seg_model=hyp_param_.seg_model,
last_three_dilation_stride=hyp_param_.last_three_dilation_stride,
)
model_a = AudioModel(
hyp_param_.audio_backbone,
hyp_param_.audio_backbone_pretrain_path,
out_plane=2048 if hyp_param_.visual_backbone == 50 else 512,
)
else:
from models.cavp_model import CAVP
model_v = CAVP(
hyp_param_.visual_backbone,
hyp_param_.visual_backbone_pretrain_path,
num_classes=hyp_param_.num_classes,
audio_backbone_pretrain_path=hyp_param_.audio_backbone_pretrain_path,
visual_backbone=hyp_param_.visual_backbone,
args=hyp_param_,
)
model_a = model_v.audio_backbone
num_param = sum(p.numel() for p in model_v.parameters() if p.requires_grad)
MODEL_PARAMS = numpy.round(num_param / 1e6, 4)
logger.warning("Number of trainable parameters: {}M".format(MODEL_PARAMS))
if local_rank <= 0:
wandb_.tensor_board.config.update({"MODEL_PARAMS": MODEL_PARAMS})
param_lists_v = set_group_lr(model_v, hyp_param_)
optimizer_v = torch.optim.SGD(
param_lists_v,
lr=hyp_param_.lr,
momentum=hyp_param_.momentum,
weight_decay=hyp_param_.weight_decay,
)
optimizer_a = torch.optim.Adam(params=model_a.parameters(), lr=hyp_param_.lr_aud)
if hyp_param_.ddp:
torch.cuda.set_device(hyp_param_.local_rank)
model_v.cuda(hyp_param_.local_rank)
visual_model = nn.SyncBatchNorm.convert_sync_batchnorm(model_v)
model_v = DDP(
visual_model,
device_ids=[hyp_param_.local_rank],
find_unused_parameters=True,
)
model_a.cuda(hyp_param_.local_rank)
model_a = nn.SyncBatchNorm.convert_sync_batchnorm(model_a)
model_a = DDP(
model_a, device_ids=[hyp_param_.local_rank], find_unused_parameters=True
)
else:
model_v = nn.DataParallel(model_v, device_ids=["cuda:0"])
model_a = nn.DataParallel(model_a, device_ids=["cuda:0"])
# from dataset.avss.avss_datasets import AVSSDataset
# from dataset.avss.color_dataloader import V2Dataset
# train_dataset_avss = AVSSDataset(args=hyp_param_, mode="train")
# test_dataset = AVSSDataset(args=hyp_param_, mode="test")
if hyp_param_.avsbench_split == "v1s":
from dataset.avsbench_s4 import S4Dataset as AVSBENCH_DATA
from trainer.trainer_cavp_avs_obj import CAVP_TRAINER
elif hyp_param_.avsbench_split == "v1m":
from dataset.avsbench_ms import MS3Dataset as AVSBENCH_DATA
# from trainer.trainer_cavp_revise_ms import BASELINE
from trainer.trainer_cavp_avs_obj import CAVP_TRAINER
else:
raise ValueError("Unknown avsbench split")
train_dataset = AVSBENCH_DATA('train', hyp_param_)
test_dataset = AVSBENCH_DATA('test', hyp_param_)
train_sampler = (
torch.utils.data.distributed.DistributedSampler(train_dataset)
if hyp_param_.ddp
else None
)
train_loader = torch.utils.data.DataLoader(
train_dataset,
batch_size=hyp_param_.batch_size,
shuffle=(train_sampler is None),
drop_last=True,
num_workers=hyp_param_.num_workers,
pin_memory=True,
sampler=train_sampler,
)
test_loader = torch.utils.data.DataLoader(
test_dataset,
batch_size=1,
shuffle=False,
drop_last=False,
num_workers=hyp_param_.num_workers,
pin_memory=True,
)
from trainer.trainer_cavp_avs_obj import CAVP_TRAINER
final_batch_size = hyp_param_.batch_size * hyp_param_.gpus
lr_policy = WarmUpPolyLR(
hyp_param_.lr,
hyp_param_.lr_power,
int(len(train_dataset) / final_batch_size) * hyp_param_.epochs,
len(train_dataset) // final_batch_size * hyp_param_.warm_up_epoch,
)
#from trainer.trainer_cavp_avss_image import CAVP_TRAINER
final_batch_size = hyp_param_.batch_size * hyp_param_.gpus
lr_policy = WarmUpPolyLR(
hyp_param_.lr,
hyp_param_.lr_power,
int(len(train_dataset) / final_batch_size) * hyp_param_.epochs,
len(train_dataset) // final_batch_size * hyp_param_.warm_up_epoch,
)
trainer = CAVP_TRAINER(
hyp_param_,
train_loader,
engine=engine,
visual_tool=wandb_,
lr_scheduler=lr_policy,
)
ckpt = torch.load("./cavp_avsobj_ss.pth")['model']
# ckpt = torch.load("./cavp_avsobj_ms.pth")['model']
model_v.load_state_dict(ckpt, strict=False)
trainer.test(model_v, model_a, -1, test_loader)
if hyp_param_.local_rank <= 0:
wandb_.finish()
if __name__ == "__main__":
logger.warning("RUNNING MONO-CHANGE-WAVEFORM")
args, config = load_args_and_config()
args.tags = add_tag(args.tags, "CAVP")
hyp_param = EasyDict(config)
# hyp_param = EasyDict({**vars(args), **config})
hyp_param.update(**vars(args))
# adjust value for multi-gpus training.
hyp_param.lr *= hyp_param.gpus
hyp_param.ddp = True if hyp_param.gpus > 1 else False
hyp_param.world_size = hyp_param.gpus * hyp_param.nodes
if hyp_param.avsbench_split == "all":
hyp_param.num_classes = 71
""" Pretrains """
if hyp_param.seg_model == "HRNet":
hyp_param.visual_backbone = "HRNet-W48"
elif hyp_param.seg_model == "OCR":
hyp_param.visual_backbone = "HRNet-W48"
seed_it(hyp_param.seed + hyp_param.local_rank)
if args.debug:
logger.critical("DEBUG MODE ACTIVATED")
hyp_param.wandb_mode = "disabled"
hyp_param.experiment_name = "dummpy_test"
hyp_param.image_width = 128
hyp_param.image_height = 128
logger.critical(f"NUM-CLASSES: {hyp_param.num_classes}")
logger.critical(f"SETUP: {hyp_param.setup}")
logger.critical(f"EPOCH: {hyp_param.epochs}")
logger.critical(f"BACKBONE: {hyp_param.visual_backbone}")
logger.critical(f"BATCH SIZE: {hyp_param.batch_size}")
logger.critical(f"LR: {hyp_param.lr}")
logger.critical(f"lrs_seg: {hyp_param.lrs_seg}")
logger.critical(f"lrs_bkb: {hyp_param.lrs_bkb}")
logger.critical(f"WEIGHT DECAY: {hyp_param.weight_decay}")
logger.critical(f"loss_w: {hyp_param.loss_w}")
if hyp_param.ddp:
mp.spawn(main, nprocs=hyp_param.gpus, args=(hyp_param.gpus, hyp_param))
else:
main(0, hyp_param.gpus, hyp_param)