| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164 |
- import asyncio
- import logging
- import os
- import re
- import nltk
- import pandas as pd
- from datasets import load_dataset
- from evaluation.utils.shared import (
- EvalMetadata,
- make_metadata,
- prepare_dataset,
- run_evaluation,
- )
- from opendevin.controller.agent import Agent
- from opendevin.controller.state.state import State
- from opendevin.core.config import config, get_llm_config_arg, parse_arguments
- from opendevin.core.logger import get_console_handler
- from opendevin.core.logger import opendevin_logger as logger
- from opendevin.core.main import run_agent_controller
- from opendevin.llm.llm import LLM
- # Only CodeActAgent can delegate to BrowsingAgent
- SUPPORTED_AGENT_CLS = {'CodeActAgent'}
- def process_instance(
- instance: pd.Series,
- metadata: EvalMetadata,
- reset_logger: bool = True,
- ):
- # Create the agent
- agent = Agent.get_cls(metadata.agent_class)(llm=LLM(llm_config=metadata.llm_config))
- env_id = instance.instance_id
- # Setup the logger properly, so you can run multi-processing to parallelize the evaluation
- if reset_logger:
- # Set up logger
- log_file = os.path.join(
- metadata.eval_output_dir, 'logs', f'instance_{env_id}.log'
- )
- # Remove all existing handlers from logger
- for handler in logger.handlers[:]:
- logger.removeHandler(handler)
- # add back the console handler to print ONE line
- logger.addHandler(get_console_handler())
- logger.info(
- f'Starting evaluation for instance {env_id}.\nHint: run "tail -f {log_file}" to see live logs in a separate shell'
- )
- # Remove all existing handlers from logger
- for handler in logger.handlers[:]:
- logger.removeHandler(handler)
- file_handler = logging.FileHandler(log_file)
- file_handler.setFormatter(
- logging.Formatter('%(asctime)s - %(levelname)s - %(message)s')
- )
- logger.addHandler(file_handler)
- else:
- logger.info(f'Starting evaluation for instance {env_id}.')
- instruction = (
- f'You can delegate browsing tasks to a browser agent. '
- f"For example, for query 'Who is the president of the United States?', you can delegate the task to a browser agent via <execute_browse> Who is the president of the United States? </execute_browse>.\n"
- f'Now, solve the following query: "{instance.instruction}"\n'
- f'NOTE: You should copy the "query" as is into the <execute_browse> tag. DO NOT change ANYTHING in the query.'
- )
- state: State | None = asyncio.run(
- run_agent_controller(
- agent,
- instruction,
- max_iterations=metadata.max_iterations,
- sid=env_id,
- )
- )
- # ======= Attempt to evaluate the agent's environment impact =======
- # 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 = state.history.compatibility_for_eval_history_pairs()
- # find the last delegate action
- last_delegate_action = None
- result = {}
- for action, _ in histories:
- if action['action'] == 'delegate':
- last_delegate_action = action
- instruction_for_delegate = action['args']['inputs']['task']
- # parse `browse_actions` from `instruction_for_delegate`
- # task = f'{thought}. I should start with: {browse_actions}'
- instruction_for_delegate = re.search(
- r'I should start with: (.*)', instruction_for_delegate
- ).group(1)
- # calculate the edit distance between the instance.instruction and the instruction_for_delegate
- edit_distance = nltk.edit_distance(
- instance.instruction, instruction_for_delegate
- )
- is_exact_match = (
- instance.instruction.strip() == instruction_for_delegate.strip()
- )
- result['edit_distance'] = edit_distance
- result['is_exact_match'] = is_exact_match
- # Save the output
- output = {
- 'instance_id': env_id,
- 'instruction': instruction,
- 'metadata': metadata.model_dump(),
- 'history': histories,
- 'metrics': metrics,
- 'error': state.last_error if state and state.last_error else None,
- 'test_result': {
- 'query': instance.instruction,
- 'action': last_delegate_action,
- 'result': result,
- },
- }
- return output
- if __name__ == '__main__':
- args = parse_arguments()
- dataset = load_dataset('OpenDevin/eval-browsing-instructions')
- dataset = dataset['train'].to_pandas()
- assert dataset.columns.tolist() == ['instance_id', 'instruction']
- id_column = 'instance_id'
- llm_config = get_llm_config_arg(args.llm_config) if args.llm_config else config.llm
- logger.info(f'Config for evaluation: {config}')
- metadata = make_metadata(
- llm_config,
- 'browsing_delegation',
- args.agent_cls,
- args.max_iterations,
- args.eval_note,
- args.eval_output_dir,
- )
- if metadata.agent_class not in SUPPORTED_AGENT_CLS:
- raise ValueError(
- f'Agent class {metadata.agent_class} not supported with AgentDelegation.'
- )
- output_file = os.path.join(metadata.eval_output_dir, 'output.jsonl')
- instances = prepare_dataset(dataset, output_file, args.eval_n_limit, id_column)
- run_evaluation(
- instances,
- metadata,
- output_file,
- args.eval_num_workers,
- process_instance,
- id_column,
- )
|