PlanGeneratorFlowModule / PlanGeneratorAtomicFlow.py
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import json
from copy import deepcopy
from typing import Any, Dict
from flow_modules.aiflows.ChatFlowModule import ChatAtomicFlow
class PlanGeneratorAtomicFlow(ChatAtomicFlow):
"""Generates one function with docstrings to finish the given goal (from the controller).
"""
def __init__(self, **kwargs):
super().__init__(**kwargs)
self.hint_for_model = """
Make sure your response is in the following format:
Response Format:
{
"plan": "A step-by-step plan to finish the given goal",
}
"""
@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 backend ~~~
kwargs.update(cls._set_up_backend(flow_config))
# ~~~ Instantiate flow ~~~
return cls(**kwargs)
def _update_prompts_and_input(self, input_data: Dict[str, Any]):
if 'goal' in input_data:
input_data['goal'] += self.hint_for_model
def run(self, input_data: Dict[str, Any]) -> Dict[str, Any]:
self._update_prompts_and_input(input_data)
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['goal'] += ("The previous respond cannot be parsed with json.loads. "
"Make sure your next response is in JSON format.")
new_api_output = super().run(new_input_data)["api_output"].strip()
return json.loads(new_api_output)