import sys sys.stdout = open(sys.stdout.fileno(), mode="w", buffering=1) sys.stderr = open(sys.stderr.fileno(), mode="w", buffering=1) import numpy as np import os import pathlib import click import hydra import torch import dill import wandb import json import random from omegaconf import open_dict, OmegaConf # os.environ["LD_LIBRARY_PATH"] = "/hpc2hdd/home/jfeng644/.mujoco/mujoco210/bin:/usr/lib/nvidia:" + os.environ.get("LD_LIBRARY_PATH", "") from unified_video_action.workspace.base_workspace import BaseWorkspace from unified_video_action.utils.load_env import load_env_runner @click.command() @click.option("-c", "--checkpoint", required=True) @click.option("-o", "--output_dir", required=True) @click.option("-d", "--device", default="cuda:0") @click.option("--config-override", default='unified_video_action/config/task/libero10.yaml', help="Path to additional config file to override settings") @click.option("--view-key", default="agentview_340_image", help="View key for testing") def main(checkpoint, output_dir, device, config_override, view_key): pathlib.Path(output_dir).mkdir(parents=True, exist_ok=True) # load checkpoint payload = torch.load(open(checkpoint, "rb"), pickle_module=dill) cfg = payload["cfg"] # # Update config with additional config file if provided # if config_override is not None: # override_cfg = OmegaConf.load(config_override) # # 确保task键存在,如果不存在就创建 # if 'task' not in cfg: # cfg['task'] = OmegaConf.create({}) # # 递归地确保所有嵌套键都存在 # def ensure_keys_exist(base_cfg, override_cfg): # for key, value in override_cfg.items(): # if key not in base_cfg: # base_cfg[key] = OmegaConf.create({}) # if isinstance(value, dict) and isinstance(base_cfg[key], dict): # ensure_keys_exist(base_cfg[key], value) # else: # base_cfg[key] = value # ensure_keys_exist(cfg['task'], override_cfg) # ensure_keys_exist(cfg['model']['policy']['shape_meta'], override_cfg['shape_meta']) # print(f"Updated config with override file: {config_override}") # config_2 = 'unified_video_action/config/vpp_libero10.yaml' # override_cfg = OmegaConf.load(config_2) # del override_cfg['defaults'] # ensure_keys_exist(cfg, override_cfg) # config_3 = 'unified_video_action/config/model/vpp.yaml' # override_cfg = OmegaConf.load(config_3) # ensure_keys_exist(cfg['model'], override_cfg) # print(f"Updated config with override file: {config_3}") # print(f"Updated config with override file: {config_2}") # set seed seed = cfg.training.seed torch.manual_seed(seed) np.random.seed(seed) random.seed(seed) with open_dict(cfg): cfg.output_dir = output_dir # 设置view_key参数 cfg.task.env_runner.view_key = view_key # configure workspace cls = hydra.utils.get_class(cfg.model._target_) workspace = cls(cfg, output_dir=output_dir) workspace: BaseWorkspace print("Loaded checkpoint from %s" % checkpoint) workspace.load_payload(payload, exclude_keys=None, include_keys=None) # get policy from workspace policy = workspace.ema_model policy.to(device) policy.eval() env_runners = load_env_runner(cfg, output_dir) if "libero" in cfg.task.name: step_log = {} for env_runner in env_runners: runner_log = env_runner.run(policy) step_log.update(runner_log) print(step_log) assert "test_mean_score" not in step_log all_test_mean_score = { k: v for k, v in step_log.items() if "test/" in k and "_mean_score" in k } step_log["test_mean_score"] = np.mean(list(all_test_mean_score.values())) runner_log = step_log else: env_runner = env_runners runner_log = env_runner.run(policy) # dump log to json json_log = dict() for key, value in runner_log.items(): if isinstance(value, wandb.sdk.data_types.video.Video): json_log[key] = value._path else: json_log[key] = value for k, v in json_log.items(): print(k, v) out_path = os.path.join(output_dir, f'eval_log_{checkpoint.split("/")[-1]}.json') print("Saving log to %s" % out_path) json.dump(json_log, open(out_path, "w"), indent=2, sort_keys=True) if __name__ == "__main__": main()