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| import asyncio | |
| import os | |
| from typing import Any | |
| import pandas as pd | |
| from datasets import load_dataset | |
| from tqdm import tqdm | |
| from evaluation.utils.shared import ( | |
| EvalMetadata, | |
| EvalOutput, | |
| codeact_user_response, | |
| compatibility_for_eval_history_pairs, | |
| get_default_sandbox_config_for_eval, | |
| make_metadata, | |
| prepare_dataset, | |
| reset_logger_for_multiprocessing, | |
| run_evaluation, | |
| update_llm_config_for_completions_logging, | |
| ) | |
| from openhands.controller.state.state import State | |
| from openhands.core.config import ( | |
| OpenHandsConfig, | |
| get_llm_config_arg, | |
| get_parser, | |
| ) | |
| from openhands.core.logger import openhands_logger as logger | |
| from openhands.core.main import create_runtime, run_controller | |
| from openhands.events.action import CmdRunAction, MessageAction | |
| from openhands.events.observation import CmdOutputObservation | |
| from openhands.runtime.base import Runtime | |
| from openhands.utils.async_utils import call_async_from_sync | |
| AGENT_CLS_TO_FAKE_USER_RESPONSE_FN = { | |
| 'CodeActAgent': codeact_user_response, | |
| } | |
| LOCAL_DATASET_PATH = os.path.join(os.path.dirname(__file__), 'benchmark') | |
| def format_task_dict(example, use_knowledge): | |
| task = { | |
| 'instance_id': example['instance_id'], | |
| 'task_inst': example['task_inst'], | |
| 'dataset_path': '/benchmark/datasets/' | |
| + example['dataset_folder_tree'].split('\n')[0][4:], | |
| 'dataset_folder_tree': example['dataset_folder_tree'], | |
| 'dataset_preview': example['dataset_preview'], | |
| 'pred_program_name': 'pred_' + example['gold_program_name'], | |
| } | |
| if use_knowledge: | |
| task['task_inst'] += '\n' + str(example['domain_knowledge']) | |
| return task | |
| def get_config( | |
| metadata: EvalMetadata, | |
| instance_id: str, | |
| ) -> OpenHandsConfig: | |
| sandbox_config = get_default_sandbox_config_for_eval() | |
| sandbox_config.base_container_image = ( | |
| 'docker.io/xingyaoww/openhands-eval-scienceagentbench' | |
| ) | |
| config = OpenHandsConfig( | |
| default_agent=metadata.agent_class, | |
| run_as_openhands=False, | |
| runtime=os.environ.get('RUNTIME', 'docker'), | |
| max_budget_per_task=4, | |
| max_iterations=metadata.max_iterations, | |
| sandbox=sandbox_config, | |
| # do not mount workspace | |
| workspace_base=None, | |
| workspace_mount_path=None, | |
| ) | |
| config.set_llm_config( | |
| update_llm_config_for_completions_logging( | |
| metadata.llm_config, | |
| metadata.eval_output_dir, | |
| instance_id, | |
| ) | |
| ) | |
| return config | |
| def initialize_runtime( | |
| runtime: Runtime, | |
| instance: pd.Series, # this argument is not required | |
| ): | |
| """Initialize the runtime for the agent. | |
| This function is called before the runtime is used to run the agent. | |
| """ | |
| logger.info(f'{"-" * 50} BEGIN Runtime Initialization Fn {"-" * 50}') | |
| obs: CmdOutputObservation | |
| # Set up workspace directories | |
| action = CmdRunAction(command='mkdir -p /workspace/pred_programs') | |
| logger.info(action, extra={'msg_type': 'ACTION'}) | |
| obs = runtime.run_action(action) | |
| assert obs.exit_code == 0 | |
| action = CmdRunAction(command='mkdir -p /workspace/pred_results') | |
| logger.info(action, extra={'msg_type': 'ACTION'}) | |
| obs = runtime.run_action(action) | |
| assert obs.exit_code == 0 | |
| dataset_name = instance['dataset_folder_tree'].split('\n')[0][4:].rstrip('/') | |
| # Copy the dataset to the workspace | |
| dataset_dir = os.path.join( | |
| LOCAL_DATASET_PATH, | |
| 'datasets', | |
| dataset_name, | |
| ) | |
| runtime.copy_to(dataset_dir, '/workspace/benchmark/datasets', recursive=True) | |
| # Check the dataset exists | |
| action = CmdRunAction(command='cd /workspace/benchmark/datasets && ls') | |
| obs = runtime.run_action(action) | |
| logger.info(obs, extra={'msg_type': 'OBSERVATION'}) | |
| assert obs.exit_code == 0 | |
| assert dataset_name in obs.content | |
| logger.info(f'{"-" * 50} END Runtime Initialization Fn {"-" * 50}') | |
| def complete_runtime( | |
| runtime: Runtime, | |
| instance: pd.Series, | |
| ) -> dict[str, Any]: | |
| """Complete the runtime for the agent. | |
| This function is called before the runtime is used to run the agent. | |
| If you need to do something in the sandbox to get the correctness metric after | |
| the agent has run, modify this function. | |
| """ | |
| logger.info(f'{"-" * 50} BEGIN Runtime Completion Fn {"-" * 50}') | |
| obs: CmdOutputObservation | |
| test_result = {} | |
| action = CmdRunAction(command='cd /workspace') | |
| logger.info(action, extra={'msg_type': 'ACTION'}) | |
| obs = runtime.run_action(action) | |
| assert obs.exit_code == 0 | |
| action = CmdRunAction(command=f'cat pred_programs/{instance.pred_program_name}') | |
| logger.info(action, extra={'msg_type': 'ACTION'}) | |
| obs = runtime.run_action(action) | |
| if obs.exit_code == 0: | |
| test_result = {'program': obs.content} | |
| else: | |
| test_result = {'program': 'ERROR'} | |
| logger.info(f'{"-" * 50} END Runtime Completion Fn {"-" * 50}') | |
| return test_result | |
| def process_instance( | |
| instance: pd.Series, | |
| metadata: EvalMetadata, | |
| reset_logger: bool = True, | |
| ) -> EvalOutput: | |
| instance_id = instance.instance_id.replace('/', '__') | |
| config = get_config(metadata, instance_id) | |
| # Set up the logger properly, so you can run multi-processing to parallelize the evaluation | |
| if reset_logger: | |
| log_dir = os.path.join(metadata.eval_output_dir, 'infer_logs') | |
| reset_logger_for_multiprocessing(logger, instance_id, log_dir) | |
| else: | |
| logger.info(f'Starting evaluation for instance {instance_id}.') | |
| instruction = f"""You are an expert Python programming assistant that helps scientist users to write high-quality code to solve their tasks. | |
| Given a user request, you are expected to write a complete program that accomplishes the requested task and save any outputs to `/workspace/pred_results/` in the correct format. | |
| Here's the user request you need to work on: | |
| {instance.task_inst} | |
| You can access the dataset at `{instance.dataset_path}`. Here is the directory structure of the dataset: | |
| ``` | |
| {instance.dataset_folder_tree} | |
| ``` | |
| Here are some helpful previews for the dataset file(s): | |
| {instance.dataset_preview} | |
| Please save your program as `/workspace/pred_programs/{instance.pred_program_name}`. | |
| Then, please run the program to check and fix any errors. | |
| Please do NOT run the program in the background. | |
| If the program uses some packages that are incompatible, please figure out alternative implementations and do NOT restart the environment. | |
| """ | |
| runtime = create_runtime(config) | |
| call_async_from_sync(runtime.connect) | |
| initialize_runtime(runtime, instance) | |
| # Here's how you can run the agent (similar to the `main` function) and get the final task state | |
| state: State | None = asyncio.run( | |
| run_controller( | |
| config=config, | |
| initial_user_action=MessageAction(content=instruction), | |
| runtime=runtime, | |
| fake_user_response_fn=AGENT_CLS_TO_FAKE_USER_RESPONSE_FN.get( | |
| metadata.agent_class | |
| ), | |
| ) | |
| ) | |
| # ======= Attempt to evaluate the agent's edits ======= | |
| test_result = complete_runtime(runtime, instance) | |
| # If you are working on some simpler benchmark that only evaluates the final model output (e.g., in a MessageAction) | |
| # You can simply get the LAST `MessageAction` from the returned `state.history` and parse it for evaluation. | |
| if state is None: | |
| raise ValueError('State should not be None.') | |
| metrics = state.metrics.get() if state.metrics else None | |
| # history is now available as a stream of events, rather than list of pairs of (Action, Observation) | |
| # for compatibility with the existing output format, we can remake the pairs here | |
| # remove when it becomes unnecessary | |
| histories = compatibility_for_eval_history_pairs(state.history) | |
| # Save the output | |
| output = EvalOutput( | |
| instance_id=instance.instance_id, | |
| instruction=instruction, | |
| metadata=metadata, | |
| history=histories, | |
| metrics=metrics, | |
| error=state.last_error if state and state.last_error else None, | |
| test_result=test_result, | |
| ) | |
| return output | |
| if __name__ == '__main__': | |
| parser = get_parser() | |
| parser.add_argument( | |
| '--use-knowledge', | |
| type=str, | |
| default='false', | |
| choices=['true', 'false'], | |
| help='use expert-provided knowledge or not', | |
| ) | |
| args, _ = parser.parse_known_args() | |
| sab_dataset = load_dataset('osunlp/ScienceAgentBench', split='validation') | |
| dataset_processed = [] | |
| for example in tqdm(sab_dataset): | |
| dataset_processed.append( | |
| format_task_dict(example, args.use_knowledge == 'true') | |
| ) | |
| dataset = pd.DataFrame(dataset_processed) | |
| llm_config = None | |
| if args.llm_config: | |
| llm_config = get_llm_config_arg(args.llm_config) | |
| # modify_params must be False for evaluation purpose, for reproducibility and accurancy of results | |
| llm_config.modify_params = False | |
| if llm_config is None: | |
| raise ValueError(f'Could not find LLM config: --llm_config {args.llm_config}') | |
| metadata = make_metadata( | |
| llm_config, | |
| 'ScienceAgentBench', | |
| args.agent_cls, | |
| args.max_iterations, | |
| args.eval_note, | |
| args.eval_output_dir, | |
| ) | |
| output_file = os.path.join(metadata.eval_output_dir, 'output.jsonl') | |
| dataset['instance_id'] = dataset['instance_id'].apply(str) | |
| instances = prepare_dataset(dataset, output_file, args.eval_n_limit) | |
| run_evaluation( | |
| instances, metadata, output_file, args.eval_num_workers, process_instance | |
| ) | |