Spaces:
Configuration error
Configuration error
| # EfficientViT: Multi-Scale Linear Attention for High-Resolution Dense Prediction | |
| # Han Cai, Junyan Li, Muyan Hu, Chuang Gan, Song Han | |
| # International Conference on Computer Vision (ICCV), 2023 | |
| import os | |
| import time | |
| from copy import deepcopy | |
| import torch.backends.cudnn | |
| import torch.distributed | |
| import torch.nn as nn | |
| from src.efficientvit.apps.data_provider import DataProvider | |
| from src.efficientvit.apps.trainer.run_config import RunConfig | |
| from src.efficientvit.apps.utils import (dist_init, dump_config, | |
| get_dist_local_rank, get_dist_rank, | |
| get_dist_size, init_modules, is_master, | |
| load_config, partial_update_config, | |
| zero_last_gamma) | |
| from src.efficientvit.models.utils import (build_kwargs_from_config, | |
| load_state_dict_from_file) | |
| __all__ = [ | |
| "save_exp_config", | |
| "setup_dist_env", | |
| "setup_seed", | |
| "setup_exp_config", | |
| "setup_data_provider", | |
| "setup_run_config", | |
| "init_model", | |
| ] | |
| def save_exp_config(exp_config: dict, path: str, name="config.yaml") -> None: | |
| if not is_master(): | |
| return | |
| dump_config(exp_config, os.path.join(path, name)) | |
| def setup_dist_env(gpu: str or None = None) -> None: | |
| if gpu is not None: | |
| os.environ["CUDA_VISIBLE_DEVICES"] = gpu | |
| if not torch.distributed.is_initialized(): | |
| dist_init() | |
| torch.backends.cudnn.benchmark = True | |
| torch.cuda.set_device(get_dist_local_rank()) | |
| def setup_seed(manual_seed: int, resume: bool) -> None: | |
| if resume: | |
| manual_seed = int(time.time()) | |
| manual_seed = get_dist_rank() + manual_seed | |
| torch.manual_seed(manual_seed) | |
| torch.cuda.manual_seed_all(manual_seed) | |
| def setup_exp_config( | |
| config_path: str, recursive=True, opt_args: dict or None = None | |
| ) -> dict: | |
| # load config | |
| if not os.path.isfile(config_path): | |
| raise ValueError(config_path) | |
| fpaths = [config_path] | |
| if recursive: | |
| extension = os.path.splitext(config_path)[1] | |
| while os.path.dirname(config_path) != config_path: | |
| config_path = os.path.dirname(config_path) | |
| fpath = os.path.join(config_path, "default" + extension) | |
| if os.path.isfile(fpath): | |
| fpaths.append(fpath) | |
| fpaths = fpaths[::-1] | |
| default_config = load_config(fpaths[0]) | |
| exp_config = deepcopy(default_config) | |
| for fpath in fpaths[1:]: | |
| partial_update_config(exp_config, load_config(fpath)) | |
| # update config via args | |
| if opt_args is not None: | |
| partial_update_config(exp_config, opt_args) | |
| return exp_config | |
| def setup_data_provider( | |
| exp_config: dict, | |
| data_provider_classes: list[type[DataProvider]], | |
| is_distributed: bool = True, | |
| ) -> DataProvider: | |
| dp_config = exp_config["data_provider"] | |
| dp_config["num_replicas"] = get_dist_size() if is_distributed else None | |
| dp_config["rank"] = get_dist_rank() if is_distributed else None | |
| dp_config["test_batch_size"] = ( | |
| dp_config.get("test_batch_size", None) or dp_config["base_batch_size"] * 2 | |
| ) | |
| dp_config["batch_size"] = dp_config["train_batch_size"] = dp_config[ | |
| "base_batch_size" | |
| ] | |
| data_provider_lookup = { | |
| provider.name: provider for provider in data_provider_classes | |
| } | |
| data_provider_class = data_provider_lookup[dp_config["dataset"]] | |
| data_provider_kwargs = build_kwargs_from_config(dp_config, data_provider_class) | |
| data_provider = data_provider_class(**data_provider_kwargs) | |
| return data_provider | |
| def setup_run_config(exp_config: dict, run_config_cls: type[RunConfig]) -> RunConfig: | |
| exp_config["run_config"]["init_lr"] = ( | |
| exp_config["run_config"]["base_lr"] * get_dist_size() | |
| ) | |
| run_config = run_config_cls(**exp_config["run_config"]) | |
| return run_config | |
| def init_model( | |
| network: nn.Module, | |
| init_from: str or None = None, | |
| backbone_init_from: str or None = None, | |
| rand_init="trunc_normal", | |
| last_gamma=None, | |
| ) -> None: | |
| # initialization | |
| init_modules(network, init_type=rand_init) | |
| # zero gamma of last bn in each block | |
| if last_gamma is not None: | |
| zero_last_gamma(network, last_gamma) | |
| # load weight | |
| if init_from is not None and os.path.isfile(init_from): | |
| network.load_state_dict(load_state_dict_from_file(init_from)) | |
| print(f"Loaded init from {init_from}") | |
| elif backbone_init_from is not None and os.path.isfile(backbone_init_from): | |
| network.backbone.load_state_dict(load_state_dict_from_file(backbone_init_from)) | |
| print(f"Loaded backbone init from {backbone_init_from}") | |
| else: | |
| print(f"Random init ({rand_init}) with last gamma {last_gamma}") | |