codeact_agent.py 22 KB

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  1. import json
  2. import os
  3. from collections import deque
  4. from litellm import ModelResponse
  5. import openhands.agenthub.codeact_agent.function_calling as codeact_function_calling
  6. from openhands.controller.agent import Agent
  7. from openhands.controller.state.state import State
  8. from openhands.core.config import AgentConfig
  9. from openhands.core.logger import openhands_logger as logger
  10. from openhands.core.message import ImageContent, Message, TextContent
  11. from openhands.events.action import (
  12. Action,
  13. AgentDelegateAction,
  14. AgentFinishAction,
  15. BrowseInteractiveAction,
  16. BrowseURLAction,
  17. CmdRunAction,
  18. FileEditAction,
  19. IPythonRunCellAction,
  20. MessageAction,
  21. )
  22. from openhands.events.observation import (
  23. AgentDelegateObservation,
  24. BrowserOutputObservation,
  25. CmdOutputObservation,
  26. FileEditObservation,
  27. IPythonRunCellObservation,
  28. UserRejectObservation,
  29. )
  30. from openhands.events.observation.error import ErrorObservation
  31. from openhands.events.observation.observation import Observation
  32. from openhands.events.serialization.event import truncate_content
  33. from openhands.llm.llm import LLM
  34. from openhands.runtime.plugins import (
  35. AgentSkillsRequirement,
  36. JupyterRequirement,
  37. PluginRequirement,
  38. )
  39. from openhands.utils.prompt import PromptManager
  40. class CodeActAgent(Agent):
  41. VERSION = '2.2'
  42. """
  43. The Code Act Agent is a minimalist agent.
  44. The agent works by passing the model a list of action-observation pairs and prompting the model to take the next step.
  45. ### Overview
  46. This agent implements the CodeAct idea ([paper](https://arxiv.org/abs/2402.01030), [tweet](https://twitter.com/xingyaow_/status/1754556835703751087)) that consolidates LLM agents’ **act**ions into a unified **code** action space for both *simplicity* and *performance* (see paper for more details).
  47. The conceptual idea is illustrated below. At each turn, the agent can:
  48. 1. **Converse**: Communicate with humans in natural language to ask for clarification, confirmation, etc.
  49. 2. **CodeAct**: Choose to perform the task by executing code
  50. - Execute any valid Linux `bash` command
  51. - Execute any valid `Python` code with [an interactive Python interpreter](https://ipython.org/). This is simulated through `bash` command, see plugin system below for more details.
  52. ![image](https://github.com/All-Hands-AI/OpenHands/assets/38853559/92b622e3-72ad-4a61-8f41-8c040b6d5fb3)
  53. """
  54. sandbox_plugins: list[PluginRequirement] = [
  55. # NOTE: AgentSkillsRequirement need to go before JupyterRequirement, since
  56. # AgentSkillsRequirement provides a lot of Python functions,
  57. # and it needs to be initialized before Jupyter for Jupyter to use those functions.
  58. AgentSkillsRequirement(),
  59. JupyterRequirement(),
  60. ]
  61. def __init__(
  62. self,
  63. llm: LLM,
  64. config: AgentConfig,
  65. ) -> None:
  66. """Initializes a new instance of the CodeActAgent class.
  67. Parameters:
  68. - llm (LLM): The llm to be used by this agent
  69. """
  70. super().__init__(llm, config)
  71. self.reset()
  72. self.mock_function_calling = False
  73. if not self.llm.is_function_calling_active():
  74. logger.info(
  75. f'Function calling not enabled for model {self.llm.config.model}. '
  76. 'Mocking function calling via prompting.'
  77. )
  78. self.mock_function_calling = True
  79. # Function calling mode
  80. self.tools = codeact_function_calling.get_tools(
  81. codeact_enable_browsing=self.config.codeact_enable_browsing,
  82. codeact_enable_jupyter=self.config.codeact_enable_jupyter,
  83. codeact_enable_llm_editor=self.config.codeact_enable_llm_editor,
  84. )
  85. logger.debug(
  86. f'TOOLS loaded for CodeActAgent: {json.dumps(self.tools, indent=2)}'
  87. )
  88. self.prompt_manager = PromptManager(
  89. microagent_dir=os.path.join(os.path.dirname(__file__), 'micro')
  90. if self.config.use_microagents
  91. else None,
  92. prompt_dir=os.path.join(os.path.dirname(__file__), 'prompts'),
  93. disabled_microagents=self.config.disabled_microagents,
  94. )
  95. self.pending_actions: deque[Action] = deque()
  96. def get_action_message(
  97. self,
  98. action: Action,
  99. pending_tool_call_action_messages: dict[str, Message],
  100. ) -> list[Message]:
  101. """Converts an action into a message format that can be sent to the LLM.
  102. This method handles different types of actions and formats them appropriately:
  103. 1. For tool-based actions (AgentDelegate, CmdRun, IPythonRunCell, FileEdit) and agent-sourced AgentFinish:
  104. - In function calling mode: Stores the LLM's response in pending_tool_call_action_messages
  105. - In non-function calling mode: Creates a message with the action string
  106. 2. For MessageActions: Creates a message with the text content and optional image content
  107. Args:
  108. action (Action): The action to convert. Can be one of:
  109. - CmdRunAction: For executing bash commands
  110. - IPythonRunCellAction: For running IPython code
  111. - FileEditAction: For editing files
  112. - BrowseInteractiveAction: For browsing the web
  113. - AgentFinishAction: For ending the interaction
  114. - MessageAction: For sending messages
  115. pending_tool_call_action_messages (dict[str, Message]): Dictionary mapping response IDs
  116. to their corresponding messages. Used in function calling mode to track tool calls
  117. that are waiting for their results.
  118. Returns:
  119. list[Message]: A list containing the formatted message(s) for the action.
  120. May be empty if the action is handled as a tool call in function calling mode.
  121. Note:
  122. In function calling mode, tool-based actions are stored in pending_tool_call_action_messages
  123. rather than being returned immediately. They will be processed later when all corresponding
  124. tool call results are available.
  125. """
  126. # create a regular message from an event
  127. if isinstance(
  128. action,
  129. (
  130. AgentDelegateAction,
  131. IPythonRunCellAction,
  132. FileEditAction,
  133. BrowseInteractiveAction,
  134. BrowseURLAction,
  135. ),
  136. ) or (isinstance(action, CmdRunAction) and action.source == 'agent'):
  137. tool_metadata = action.tool_call_metadata
  138. assert tool_metadata is not None, (
  139. 'Tool call metadata should NOT be None when function calling is enabled. Action: '
  140. + str(action)
  141. )
  142. llm_response: ModelResponse = tool_metadata.model_response
  143. assistant_msg = llm_response.choices[0].message
  144. # Add the LLM message (assistant) that initiated the tool calls
  145. # (overwrites any previous message with the same response_id)
  146. pending_tool_call_action_messages[llm_response.id] = Message(
  147. role=assistant_msg.role,
  148. # tool call content SHOULD BE a string
  149. content=[TextContent(text=assistant_msg.content or '')]
  150. if assistant_msg.content is not None
  151. else [],
  152. tool_calls=assistant_msg.tool_calls,
  153. )
  154. return []
  155. elif isinstance(action, AgentFinishAction):
  156. role = 'user' if action.source == 'user' else 'assistant'
  157. # when agent finishes, it has tool_metadata
  158. # which has already been executed, and it doesn't have a response
  159. # when the user finishes (/exit), we don't have tool_metadata
  160. tool_metadata = action.tool_call_metadata
  161. if tool_metadata is not None:
  162. # take the response message from the tool call
  163. assistant_msg = tool_metadata.model_response.choices[0].message
  164. content = assistant_msg.content or ''
  165. # save content if any, to thought
  166. if action.thought:
  167. if action.thought != content:
  168. action.thought += '\n' + content
  169. else:
  170. action.thought = content
  171. # remove the tool call metadata
  172. action.tool_call_metadata = None
  173. return [
  174. Message(
  175. role=role,
  176. content=[TextContent(text=action.thought)],
  177. )
  178. ]
  179. elif isinstance(action, MessageAction):
  180. role = 'user' if action.source == 'user' else 'assistant'
  181. content = [TextContent(text=action.content or '')]
  182. if self.llm.vision_is_active() and action.image_urls:
  183. content.append(ImageContent(image_urls=action.image_urls))
  184. return [
  185. Message(
  186. role=role,
  187. content=content,
  188. )
  189. ]
  190. elif isinstance(action, CmdRunAction) and action.source == 'user':
  191. content = [
  192. TextContent(text=f'User executed the command:\n{action.command}')
  193. ]
  194. return [
  195. Message(
  196. role='user',
  197. content=content,
  198. )
  199. ]
  200. return []
  201. def get_observation_message(
  202. self,
  203. obs: Observation,
  204. tool_call_id_to_message: dict[str, Message],
  205. ) -> list[Message]:
  206. """Converts an observation into a message format that can be sent to the LLM.
  207. This method handles different types of observations and formats them appropriately:
  208. - CmdOutputObservation: Formats command execution results with exit codes
  209. - IPythonRunCellObservation: Formats IPython cell execution results, replacing base64 images
  210. - FileEditObservation: Formats file editing results
  211. - AgentDelegateObservation: Formats results from delegated agent tasks
  212. - ErrorObservation: Formats error messages from failed actions
  213. - UserRejectObservation: Formats user rejection messages
  214. In function calling mode, observations with tool_call_metadata are stored in
  215. tool_call_id_to_message for later processing instead of being returned immediately.
  216. Args:
  217. obs (Observation): The observation to convert
  218. tool_call_id_to_message (dict[str, Message]): Dictionary mapping tool call IDs
  219. to their corresponding messages (used in function calling mode)
  220. Returns:
  221. list[Message]: A list containing the formatted message(s) for the observation.
  222. May be empty if the observation is handled as a tool response in function calling mode.
  223. Raises:
  224. ValueError: If the observation type is unknown
  225. """
  226. message: Message
  227. max_message_chars = self.llm.config.max_message_chars
  228. if isinstance(obs, CmdOutputObservation):
  229. # if it doesn't have tool call metadata, it was triggered by a user action
  230. if obs.tool_call_metadata is None:
  231. text = truncate_content(
  232. f'\nObserved result of command executed by user:\n{obs.content}',
  233. max_message_chars,
  234. )
  235. else:
  236. text = truncate_content(
  237. obs.content + obs.interpreter_details, max_message_chars
  238. )
  239. text += f'\n[Command finished with exit code {obs.exit_code}]'
  240. message = Message(role='user', content=[TextContent(text=text)])
  241. elif isinstance(obs, IPythonRunCellObservation):
  242. text = obs.content
  243. # replace base64 images with a placeholder
  244. splitted = text.split('\n')
  245. for i, line in enumerate(splitted):
  246. if '![image](data:image/png;base64,' in line:
  247. splitted[i] = (
  248. '![image](data:image/png;base64, ...) already displayed to user'
  249. )
  250. text = '\n'.join(splitted)
  251. text = truncate_content(text, max_message_chars)
  252. message = Message(role='user', content=[TextContent(text=text)])
  253. elif isinstance(obs, FileEditObservation):
  254. text = truncate_content(str(obs), max_message_chars)
  255. message = Message(role='user', content=[TextContent(text=text)])
  256. elif isinstance(obs, BrowserOutputObservation):
  257. text = obs.get_agent_obs_text()
  258. message = Message(
  259. role='user',
  260. content=[TextContent(text=text)],
  261. )
  262. elif isinstance(obs, AgentDelegateObservation):
  263. text = truncate_content(
  264. obs.outputs['content'] if 'content' in obs.outputs else '',
  265. max_message_chars,
  266. )
  267. message = Message(role='user', content=[TextContent(text=text)])
  268. elif isinstance(obs, ErrorObservation):
  269. text = truncate_content(obs.content, max_message_chars)
  270. text += '\n[Error occurred in processing last action]'
  271. message = Message(role='user', content=[TextContent(text=text)])
  272. elif isinstance(obs, UserRejectObservation):
  273. text = 'OBSERVATION:\n' + truncate_content(obs.content, max_message_chars)
  274. text += '\n[Last action has been rejected by the user]'
  275. message = Message(role='user', content=[TextContent(text=text)])
  276. else:
  277. # If an observation message is not returned, it will cause an error
  278. # when the LLM tries to return the next message
  279. raise ValueError(f'Unknown observation type: {type(obs)}')
  280. # Update the message as tool response properly
  281. if (tool_call_metadata := obs.tool_call_metadata) is not None:
  282. tool_call_id_to_message[tool_call_metadata.tool_call_id] = Message(
  283. role='tool',
  284. content=message.content,
  285. tool_call_id=tool_call_metadata.tool_call_id,
  286. name=tool_call_metadata.function_name,
  287. )
  288. # No need to return the observation message
  289. # because it will be added by get_action_message when all the corresponding
  290. # tool calls in the SAME request are processed
  291. return []
  292. return [message]
  293. def reset(self) -> None:
  294. """Resets the CodeAct Agent."""
  295. super().reset()
  296. def step(self, state: State) -> Action:
  297. """Performs one step using the CodeAct Agent.
  298. This includes gathering info on previous steps and prompting the model to make a command to execute.
  299. Parameters:
  300. - state (State): used to get updated info
  301. Returns:
  302. - CmdRunAction(command) - bash command to run
  303. - IPythonRunCellAction(code) - IPython code to run
  304. - AgentDelegateAction(agent, inputs) - delegate action for (sub)task
  305. - MessageAction(content) - Message action to run (e.g. ask for clarification)
  306. - AgentFinishAction() - end the interaction
  307. """
  308. # Continue with pending actions if any
  309. if self.pending_actions:
  310. return self.pending_actions.popleft()
  311. # if we're done, go back
  312. latest_user_message = state.get_last_user_message()
  313. if latest_user_message and latest_user_message.content.strip() == '/exit':
  314. return AgentFinishAction()
  315. # prepare what we want to send to the LLM
  316. messages = self._get_messages(state)
  317. params: dict = {
  318. 'messages': self.llm.format_messages_for_llm(messages),
  319. }
  320. params['tools'] = self.tools
  321. if self.mock_function_calling:
  322. params['mock_function_calling'] = True
  323. response = self.llm.completion(**params)
  324. actions = codeact_function_calling.response_to_actions(response)
  325. for action in actions:
  326. self.pending_actions.append(action)
  327. return self.pending_actions.popleft()
  328. def _get_messages(self, state: State) -> list[Message]:
  329. """Constructs the message history for the LLM conversation.
  330. This method builds a structured conversation history by processing events from the state
  331. and formatting them into messages that the LLM can understand. It handles both regular
  332. message flow and function-calling scenarios.
  333. The method performs the following steps:
  334. 1. Initializes with system prompt and optional initial user message
  335. 2. Processes events (Actions and Observations) into messages
  336. 3. Handles tool calls and their responses in function-calling mode
  337. 4. Manages message role alternation (user/assistant/tool)
  338. 5. Applies caching for specific LLM providers (e.g., Anthropic)
  339. 6. Adds environment reminders for non-function-calling mode
  340. Args:
  341. state (State): The current state object containing conversation history and other metadata
  342. Returns:
  343. list[Message]: A list of formatted messages ready for LLM consumption, including:
  344. - System message with prompt
  345. - Initial user message (if configured)
  346. - Action messages (from both user and assistant)
  347. - Observation messages (including tool responses)
  348. - Environment reminders (in non-function-calling mode)
  349. Note:
  350. - In function-calling mode, tool calls and their responses are carefully tracked
  351. to maintain proper conversation flow
  352. - Messages from the same role are combined to prevent consecutive same-role messages
  353. - For Anthropic models, specific messages are cached according to their documentation
  354. """
  355. messages: list[Message] = [
  356. Message(
  357. role='system',
  358. content=[
  359. TextContent(
  360. text=self.prompt_manager.get_system_message(),
  361. cache_prompt=self.llm.is_caching_prompt_active(),
  362. )
  363. ],
  364. )
  365. ]
  366. example_message = self.prompt_manager.get_example_user_message()
  367. if example_message:
  368. messages.append(
  369. Message(
  370. role='user',
  371. content=[TextContent(text=example_message)],
  372. cache_prompt=self.llm.is_caching_prompt_active(),
  373. )
  374. )
  375. pending_tool_call_action_messages: dict[str, Message] = {}
  376. tool_call_id_to_message: dict[str, Message] = {}
  377. events = list(state.history)
  378. for event in events:
  379. # create a regular message from an event
  380. if isinstance(event, Action):
  381. messages_to_add = self.get_action_message(
  382. action=event,
  383. pending_tool_call_action_messages=pending_tool_call_action_messages,
  384. )
  385. elif isinstance(event, Observation):
  386. messages_to_add = self.get_observation_message(
  387. obs=event,
  388. tool_call_id_to_message=tool_call_id_to_message,
  389. )
  390. else:
  391. raise ValueError(f'Unknown event type: {type(event)}')
  392. # Check pending tool call action messages and see if they are complete
  393. _response_ids_to_remove = []
  394. for (
  395. response_id,
  396. pending_message,
  397. ) in pending_tool_call_action_messages.items():
  398. assert pending_message.tool_calls is not None, (
  399. 'Tool calls should NOT be None when function calling is enabled & the message is considered pending tool call. '
  400. f'Pending message: {pending_message}'
  401. )
  402. if all(
  403. tool_call.id in tool_call_id_to_message
  404. for tool_call in pending_message.tool_calls
  405. ):
  406. # If complete:
  407. # -- 1. Add the message that **initiated** the tool calls
  408. messages_to_add.append(pending_message)
  409. # -- 2. Add the tool calls **results***
  410. for tool_call in pending_message.tool_calls:
  411. messages_to_add.append(tool_call_id_to_message[tool_call.id])
  412. tool_call_id_to_message.pop(tool_call.id)
  413. _response_ids_to_remove.append(response_id)
  414. # Cleanup the processed pending tool messages
  415. for response_id in _response_ids_to_remove:
  416. pending_tool_call_action_messages.pop(response_id)
  417. for message in messages_to_add:
  418. if message:
  419. if message.role == 'user':
  420. self.prompt_manager.enhance_message(message)
  421. # handle error if the message is the SAME role as the previous message
  422. # litellm.exceptions.BadRequestError: litellm.BadRequestError: OpenAIException - Error code: 400 - {'detail': 'Only supports u/a/u/a/u...'}
  423. # there shouldn't be two consecutive messages from the same role
  424. # NOTE: we shouldn't combine tool messages because each of them has a different tool_call_id
  425. if (
  426. messages
  427. and messages[-1].role == message.role
  428. and message.role != 'tool'
  429. ):
  430. messages[-1].content.extend(message.content)
  431. else:
  432. messages.append(message)
  433. if self.llm.is_caching_prompt_active():
  434. # NOTE: this is only needed for anthropic
  435. # following logic here:
  436. # https://github.com/anthropics/anthropic-quickstarts/blob/8f734fd08c425c6ec91ddd613af04ff87d70c5a0/computer-use-demo/computer_use_demo/loop.py#L241-L262
  437. breakpoints_remaining = 3 # remaining 1 for system/tool
  438. for message in reversed(messages):
  439. if message.role == 'user' or message.role == 'tool':
  440. if breakpoints_remaining > 0:
  441. message.content[
  442. -1
  443. ].cache_prompt = True # Last item inside the message content
  444. breakpoints_remaining -= 1
  445. else:
  446. break
  447. return messages