import json from copy import deepcopy from typing import Any, Dict, List from flow_modules.aiflows.OpenAIChatFlowModule import OpenAIChatAtomicFlow from dataclasses import dataclass @dataclass class Command: name: str description: str input_args: List[str] class ControllerAtomicFlow(OpenAIChatAtomicFlow): def __init__(self, commands: List[Command], **kwargs): super().__init__(**kwargs) self.system_message_prompt_template = self.system_message_prompt_template.partial( commands=self._build_commands_manual(commands) ) @staticmethod def _build_commands_manual(commands: List[Command]) -> str: ret = "" for i, command in enumerate(commands): command_input_json_schema = json.dumps( {input_arg: f"YOUR_{input_arg.upper()}" for input_arg in command.input_args}) ret += f"{i + 1}. {command.name}: {command.description} Input arguments (given in the JSON schema): {command_input_json_schema}\n" return ret @classmethod def instantiate_from_config(cls, config): flow_config = deepcopy(config) kwargs = {"flow_config": flow_config} # ~~~ Set up prompts ~~~ kwargs.update(cls._set_up_prompts(flow_config)) # ~~~ Set up commands ~~~ commands = flow_config["commands"] commands = [ Command(name, command_conf["description"], command_conf["input_args"]) for name, command_conf in commands.items() ] kwargs.update({"commands": commands}) # ~~~ Instantiate flow ~~~ return cls(**kwargs) def run(self, input_data: Dict[str, Any]) -> Dict[str, Any]: hint_for_model = """ Make sure your response is in the following format: Response Format: { "thought": "thought", "reasoning": "reasoning", "plan": "- short bulleted\n- list that conveys\n- long-term plan", "criticism": "constructive self-criticism", "speak": "thoughts summary to say to user", "command": "the python function you would like to call", "command_args": { "arg name": "value" } } """ if 'goal' in input_data: input_data['goal'] += hint_for_model if 'human_feedback' in input_data: input_data['human_feedback'] += hint_for_model api_output = super().run(input_data)["api_output"].strip() try: response = json.loads(api_output) return response except json.decoder.JSONDecodeError: new_input_data = input_data.copy() new_input_data['observation'] = "" new_input_data['human_feedback'] = "The previous respond cannot be parsed with json.loads, it could be the backslashes used for escaping single quotes in the string arguments of the Python code are not properly escaped themselves within the JSON context." new_api_output = super().run(new_input_data)["api_output"].strip() return json.loads(new_api_output)