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import glob
import logging
import os
import re
import subprocess
import sys
import random
from datetime import datetime
from typing import List
from tools.k_means import run_kmeans
from tools.precompute_knns import run_knns
from tools.segmentation import run_seg
from training.misc import is_main_process
from training.declip import DeCLIP
from training.declip2 import DeCLIP2
from training.declip_plus import DeCLIP_PLUS,DeCLIPWithREPAProjector
from training.ablation_sam import DeCLIP_SAM_GSC, build_sam_attention_extractor
from training.ablation_sam import DeCLIPWithREPAProjector as DeCLIPWithREPAProjectorSAM
from training.ablation_ijepa import DeCLIP_IJEPA_GSC, build_ijepa_attention_extractor
from training.ablation_ijepa import DeCLIPWithREPAProjector as DeCLIPWithREPAProjectorIJEPA
from training.integrated_distill import IntegratedDistillation, IntegratedDistillationWithGradientAnalysis
from training.integrated_distill import DeCLIPWithREPAProjectorIntegrated
import numpy as np
import torch
from torch import optim
from torch.cuda.amp import GradScaler
from open_clip import create_model_and_transforms, get_tokenizer, create_model
from training.data import get_data
from training.distributed import is_master, init_distributed_device, broadcast_object
from training.logger import setup_logging
from training.params import parse_args
from training.scheduler import cosine_lr, const_lr, const_lr_cooldown
from training.train import train_one_epoch, evaluate, student_teacher_ensemble
from training.file_utils import pt_load
from .utils import freeze_parameters, build_vfm,context_adapter
from torch.utils.tensorboard import SummaryWriter
LATEST_CHECKPOINT_NAME = "epoch_latest.pt"
def random_seed(seed=42, rank=0):
torch.manual_seed(seed + rank)
np.random.seed(seed + rank)
random.seed(seed + rank)
def natural_key(string_):
"""See http://www.codinghorror.com/blog/archives/001018.html"""
return [int(s) if s.isdigit() else s for s in re.split(r'(\d+)', string_.lower())]
def get_latest_checkpoint(path: str, remote : bool):
# as writen, this glob recurses, so can pick up checkpoints across multiple sub-folders
if remote:
result = subprocess.run(["aws", "s3", "ls", path + "/"], stdout=subprocess.PIPE, stderr=subprocess.PIPE)
print(result)
if result.returncode == 1:
return None
checkpoints = [os.path.join(path, x.split(' ')[-1]) for x in result.stdout.decode().split('\n')[:-1]]
else:
checkpoints = glob.glob(path + '**/*.pt', recursive=True)
if checkpoints:
checkpoints = sorted(checkpoints, key=natural_key)
return checkpoints[-1]
return None
def main(args):
args = parse_args(args)
if torch.cuda.is_available():
# This enables tf32 on Ampere GPUs which is only 8% slower than
# float16 and almost as accurate as float32
# This was a default in pytorch until 1.12
torch.backends.cuda.matmul.allow_tf32 = True
torch.backends.cudnn.benchmark = True
torch.backends.cudnn.deterministic = False
# fully initialize distributed device environment
device = init_distributed_device(args)
# get the name of the experiments
if args.name is None:
# sanitize model name for filesystem / uri use, easier if we don't use / in name as a rule?
model_name_safe = args.model.replace('/', '-')
date_str = datetime.now().strftime("%Y_%m_%d-%H_%M_%S")
if args.distributed:
# sync date_str from master to all ranks
date_str = broadcast_object(args, date_str)
args.name = '-'.join([
date_str,
f"model_{model_name_safe}",
f"lr_{args.lr}",
f"b_{args.batch_size}",
f"j_{args.workers}",
f"p_{args.precision}",
])
log_base_path = os.path.join(args.logs, args.name)
if args.use_tensorboard:
writer = SummaryWriter(log_dir=log_base_path)
else:
writer = None
args.log_path = None
if is_master(args, local=args.log_local):
os.makedirs(log_base_path, exist_ok=True)
log_filename = f'out-{args.rank}' if args.log_local else 'out.log'
args.log_path = os.path.join(log_base_path, log_filename)
if os.path.exists(args.log_path):
print("WARNING, Experiment already exists.")
# Setup text logger
args.log_level = logging.DEBUG if args.debug else logging.INFO
setup_logging(args.log_path, args.log_level)
args.checkpoint_path = os.path.join(log_base_path, "checkpoints")
if args.precision == 'fp16':
logging.warning(
'It is recommended to use AMP mixed-precision instead of FP16. '
'FP16 support needs further verification and tuning, especially for train.')
elif args.distributed:
logging.info(
f'Running in distributed mode with multiple processes. Device: {args.device}.'
f'Process (global: {args.rank}, local {args.local_rank}), total {args.world_size}.')
else:
logging.info(f'Running with a single process. Device {args.device}.')
if isinstance(args.force_image_size, (tuple, list)) and len(args.force_image_size) == 1:
# arg is nargs, single (square) image size list -> int
args.force_image_size = args.force_image_size[0]
random_seed(args.seed, 0)
student_model, preprocess_train, preprocess_val = create_model_and_transforms(
args.model,
args.pretrained,
precision=args.precision,
device=device,
jit=args.torchscript,
force_quick_gelu=args.force_quick_gelu,
force_custom_text=args.force_custom_text,
force_patch_dropout=args.force_patch_dropout,
force_image_size=args.force_image_size,
pretrained_image=args.pretrained_image,
image_mean=args.image_mean,
image_std=args.image_std,
aug_cfg=args.aug_cfg,
output_dict=True,
cache_dir=args.cache_dir if args.cache_dir else None,
det_image_size=args.det_image_size,
dataset_type=args.dataset_type,
args=args
)
random_seed(args.seed, args.rank)
teacher_model = create_model(
args.model,
args.pretrained,
device=device,
precision=args.precision,
output_dict=True,
cache_dir=args.cache_dir).to(args.device)
for p in teacher_model.parameters():
p.requires_grad = False
if 'Tiny' in args.model:
for p in student_model.parameters():
p.requires_grad = False
if hasattr(student_model, 'visual'):
args.input_size = student_model.visual.image_size
elif hasattr(student_model, 'vision_model'):
args.input_size = student_model.vision_model.image_size
else:
raise ValueError("student_model must have either 'visual' or 'vision_model' attribute")
if args.lock_image:
student_model.lock_image_tower(
unlocked_groups=args.lock_image_unlocked_groups,
freeze_bn_stats=args.lock_image_freeze_bn_stats,)
if args.grad_checkpointing:
student_model.set_grad_checkpointing()
student_model = freeze_parameters(student_model,args)
if args.context_adapter:
context_adapter(student_model,args)
if args.use_vfm:
vfm_model = build_vfm(args)
if isinstance(vfm_model,List):
vfm_model=[model.to(args.device) for model in vfm_model]
else:
vfm_model = vfm_model.to(args.device)
else:
vfm_model = None
if args.repa_layer_idx!=-1:
if args.version == "ablation_sam":
student_model = DeCLIPWithREPAProjectorSAM(student_model, args=args).to(args.device)
elif args.version == "ablation_ijepa":
student_model = DeCLIPWithREPAProjectorIJEPA(student_model, args=args).to(args.device)
elif args.version in ["integrated", "integrated_grad_analysis"]:
student_model = DeCLIPWithREPAProjectorIntegrated(student_model, args=args).to(args.device)
else:
student_model = DeCLIPWithREPAProjector(student_model, args=args).to(args.device)
if args.version == "declip+":
method = DeCLIP_PLUS()
elif args.version == "declip2":
method = DeCLIP2()
elif args.version == "ablation_sam":
sam_extractor = build_sam_attention_extractor(args)
method = DeCLIP_SAM_GSC(sam_extractor)
elif args.version == "ablation_ijepa":
ijepa_extractor = build_ijepa_attention_extractor(args)
method = DeCLIP_IJEPA_GSC(ijepa_extractor)
elif args.version == "integrated":
method = IntegratedDistillation()
elif args.version == "integrated_grad_analysis":
# 设置梯度分析结果保存目录(与训练日志在同一目录)
gradient_save_dir = os.path.join("logs", args.name) if args.name else "logs/gradient_analysis"
# 传入 rank,只有 rank=0 时保存文件
method = IntegratedDistillationWithGradientAnalysis(save_dir=gradient_save_dir, rank=args.rank)
else:
method = DeCLIP()
student_model_without_ddp = student_model
if is_master(args):
logging.info("Model:")
logging.info(f"{str(student_model)}")
logging.info("Params:")
params_file = os.path.join(args.logs, args.name, "params.txt")
with open(params_file, "w") as f:
for name in sorted(vars(args)):
val = getattr(args, name)
logging.info(f" {name}: {val}")
f.write(f"{name}: {val}\n")
if args.distributed:
if args.use_bn_sync:
if args.repa_layer_idx!=-1:
student_model.model = torch.nn.SyncBatchNorm.convert_sync_batchnorm(student_model.model)
else:
student_model = torch.nn.SyncBatchNorm.convert_sync_batchnorm(student_model)
ddp_args = {}
if args.ddp_static_graph:
# this doesn't exist in older PyTorch, arg only added if enabled
ddp_args['static_graph'] = True
student_model = torch.nn.parallel.DistributedDataParallel(student_model, device_ids=[device], **ddp_args)
student_model_without_ddp=student_model.module
# create optimizer and scaler
optimizer = None
scaler = None
if args.train_data:
exclude = lambda n, p: p.ndim < 2 or "bn" in n or "ln" in n or "bias" in n or 'logit_scale' in n
include = lambda n, p: not exclude(n, p)
named_parameters = list(student_model_without_ddp.named_parameters())
gain_or_bias_params = [p for n, p in named_parameters if exclude(n, p) and p.requires_grad]
rest_params = [p for n, p in named_parameters if include(n, p) and p.requires_grad]
optimizer = optim.AdamW(
[
{"params": gain_or_bias_params, "weight_decay": 0.},
{"params": rest_params, "weight_decay": args.wd},
],
lr=args.lr,
betas=(args.beta1, args.beta2),
eps=args.eps,
)
scaler = GradScaler() if args.precision == "amp" else None
# optionally resume from a checkpoint
start_epoch = 0
if args.resume is not None:
checkpoint = pt_load(args.resume, map_location='cpu')
sd = checkpoint["state_dict"]
if 'epoch' in checkpoint:
# resuming a train checkpoint w/ epoch and optimizer state
start_epoch = checkpoint["epoch"]
student_model_without_ddp.load_state_dict(sd)
if args.dataset_type == "froster":
teacher_model.load_state_dict(sd)
if optimizer is not None:
optimizer.load_state_dict(checkpoint["optimizer"])
if scaler is not None and 'scaler' in checkpoint:
scaler.load_state_dict(checkpoint['scaler'])
if is_main_process():
logging.info(f"=> resuming checkpoint '{args.resume}' (epoch {start_epoch})")
else:
# loading a bare (model only) checkpoint for fine-tune or evaluation
student_model_without_ddp.load_state_dict(sd)
if args.dataset_type == "froster":
teacher_model.load_state_dict(checkpoint)
if is_main_process():
logging.info(f"=> loaded checkpoint '{args.resume}' (epoch {start_epoch})")
# initialize datasets
data = get_data(args, (preprocess_train, preprocess_val), epoch=start_epoch, tokenizer=get_tokenizer(args.model))
assert len(data), 'At least one train or eval dataset must be specified.'
# create scheduler if train
scheduler = None
if 'train' in data and optimizer is not None:
total_steps = (data["train"].dataloader.num_batches // args.accum_freq) * args.epochs
if args.lr_scheduler == "cosine":
scheduler = cosine_lr(optimizer, args.lr, args.warmup, total_steps)
elif args.lr_scheduler == "const":
scheduler = const_lr(optimizer, args.lr, args.warmup, total_steps)
elif args.lr_scheduler == "const-cooldown":
assert args.epochs_cooldown is not None,\
"Please specify the number of cooldown epochs for this lr schedule."
cooldown_steps = (data["train"].dataloader.num_batches // args.accum_freq) * args.epochs_cooldown
scheduler = const_lr_cooldown(
optimizer, args.lr, args.warmup, total_steps,
cooldown_steps, args.lr_cooldown_power, args.lr_cooldown_end)
else:
logging.error(
f'Unknown scheduler, {args.lr_scheduler}. Available options are: cosine, const, const-cooldown.')
exit(1)
# determine if this worker should save logs and checkpoints. only do so if it is rank == 0
args.save_logs = args.logs and args.logs.lower() != 'none' and is_master(args)
os.makedirs(args.checkpoint_path, exist_ok=True)
if 'train' not in data or args.eval or args.precompute_knn:
del teacher_model
if args.k_means:
del vfm_model
run_kmeans(student_model_without_ddp if args.repa_layer_idx ==-1 else student_model_without_ddp.model,data,args)
elif args.run_seg:
del vfm_model
run_seg(student_model_without_ddp if args.repa_layer_idx ==-1 else student_model_without_ddp.model ,data,args)
elif args.precompute_knn:
del student_model
run_knns(vfm_model,data,args)
else:
del vfm_model
evaluate(student_model_without_ddp if args.repa_layer_idx ==-1 else student_model_without_ddp.model, data, start_epoch, args)
return
if not args.skip_first_eval:
if is_main_process():
logging.info('Evaluate before training')
evaluate(student_model_without_ddp if args.repa_layer_idx ==-1 else student_model_without_ddp.model, data, start_epoch, args)
for epoch in range(start_epoch, args.epochs):
if is_master(args):
logging.info(f'Start epoch {epoch}')
train_one_epoch(student_model,
teacher_model,
vfm_model,
method,
data,epoch,optimizer, scaler, scheduler, writer, args)
completed_epoch = epoch + 1
student_state_dict = student_model_without_ddp.state_dict() if args.repa_layer_idx ==-1 else student_model_without_ddp.model.state_dict()
if args.alpha < 1.0:
teacher_state_dict = teacher_model.state_dict()
target_state_dict = student_teacher_ensemble(student_state_dict, teacher_state_dict, args.alpha)
else:
target_state_dict = student_state_dict
if is_master(args):
# Saving checkpoints.
checkpoint_dict = {
"epoch": completed_epoch,
"name": args.name,
"state_dict": target_state_dict,
"optimizer": optimizer.state_dict()}
if scaler is not None:
checkpoint_dict["scaler"] = scaler.state_dict()
if completed_epoch == args.epochs or (
args.save_frequency > 0 and (completed_epoch % args.save_frequency) == 0
):
torch.save(
checkpoint_dict,
os.path.join(args.checkpoint_path, f"epoch_{completed_epoch}.pt"),
)
if args.delete_previous_checkpoint:
previous_checkpoint = os.path.join(args.checkpoint_path, f"epoch_{completed_epoch - 1}.pt")
if os.path.exists(previous_checkpoint):
os.remove(previous_checkpoint)
if args.save_most_recent:
# try not to corrupt the latest checkpoint if save fails
tmp_save_path = os.path.join(args.checkpoint_path, "tmp.pt")
latest_save_path = os.path.join(args.checkpoint_path, LATEST_CHECKPOINT_NAME)
torch.save(checkpoint_dict, tmp_save_path)
os.replace(tmp_save_path, latest_save_path)
if completed_epoch % args.zeroshot_frequency == 0:
test_model = create_model(
args.model,
args.pretrained,
device=device,
precision=args.precision,
output_dict=True,
cache_dir=args.cache_dir)
incompatible_keys = test_model.load_state_dict(target_state_dict, strict=False)
logging.info(f"eval find incompatible_keys.missing_keys: {incompatible_keys.missing_keys}")
evaluate(test_model, data, completed_epoch, args)
del test_model
if writer is not None:
writer.close()
if __name__ == "__main__":
main(sys.argv[1:])