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# chain_recommendations.py | |
import json | |
from typing import Dict | |
from langchain import PromptTemplate, LLMChain | |
from models import chat_model | |
improved_recommend_prompt_template = PromptTemplate( | |
input_variables=["problems"], | |
template=( | |
"You are a wellness recommendation assistant. Given the following problem severity percentages:\n" | |
"{problems}\n\n" | |
"Based on these percentages and the available wellness packages:\n" | |
"1. Fitness & Mobility | Tagline: 'Enhance Mobility. Boost Fitness.'\n" | |
"2. No More Insomnia | Deep Rest | Tagline: 'Reclaim Your Sleep. Restore Your Mind.'\n" | |
"3. Focus Flow | Clarity Boost | Tagline: 'Stay Focused. Stay Productive.'\n" | |
"4. Boost Energy | Tagline: 'Fuel Your Day. Boost Your Energy.'\n" | |
"5. Chronic Care | Chronic Support | Tagline: 'Ongoing Support for Chronic Wellness.'\n" | |
"6. Mental Wellness | Calm Mind | Tagline: 'Find Peace of Mind, Every Day.'\n\n" | |
"Carefully analyze these percentages and consider nuanced differences between the areas. " | |
"Your goal is to recommend the most appropriate wellness packages based on a detailed assessment of these numbers, " | |
"not just fixed thresholds. Consider the following guidelines:\n\n" | |
"- If one area is extremely high (above 70) while others are lower, prioritize a package targeting that area.\n" | |
"- If multiple areas are high or near high (e.g., above 60), consider recommending multiple specialized packages or a comprehensive program.\n" | |
"- If all areas are moderate (between 30 and 70), recommend a balanced wellness package that addresses overall health.\n" | |
"- If all areas are low, a general wellness package might be sufficient.\n" | |
"- Consider borderline cases and recommend packages that address both current issues and preventive measures.\n\n" | |
"Return the recommended wellness packages in a JSON array format. " | |
"Each item should be exactly one of the following package names: " | |
"\"Fitness & Mobility\", \"No More Insomnia\", \"Focus Flow\", \"Boost Energy\", \"Chronic Care\", \"Mental Wellness\"." | |
) | |
) | |
recommend_chain = LLMChain(llm=chat_model, prompt=improved_recommend_prompt_template) | |
def generate_recommendations(problems: Dict[str, float]) -> str: | |
recommendations = recommend_chain.run(problems=json.dumps(problems)) | |
return recommendations.strip() | |