import os from langchain.agents import tool from langchain_community.chat_models import ChatOpenAI import pandas as pd from config import settings def get_embeddings(text_list): encoded_input = settings.tokenizer( text_list, padding=True, truncation=True, return_tensors="pt" ) # encoded_input = {k: v.to(device) for k, v in encoded_input.items()} encoded_input = {k: v for k, v in encoded_input.items()} model_output = settings.model(**encoded_input) cls_pool = model_output.last_hidden_state[:, 0] return cls_pool def reg(chat): question_embedding = get_embeddings([chat]).cpu().detach().numpy() scores, samples = settings.dataset.get_nearest_examples( "embeddings", question_embedding, k=5 ) samples_df = pd.DataFrame.from_dict(samples) print(samples_df.columns) samples_df["scores"] = scores samples_df.sort_values("scores", ascending=False, inplace=True) return samples_df[['title', 'cover_image', 'referral_link', 'category_id']] @tool("MOXICASTS-questions", return_direct=True) def moxicast(prompt: str) -> str: """this function is used when user wants to know about MOXICASTS feature.MOXICASTS is a feature of BMoxi for Advice and guidance on life topics. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MOXICASTS is a feature of BMoxi for Advice and guidance on life topics." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("PEP-TALKPODS-questions", return_direct=True) def peptalks(prompt: str) -> str: """this function is used when user wants to know about PEP TALK PODS feature.PEP TALK PODS: Quick audio pep talks for boosting mood and motivation. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. PEP TALK PODS: Quick audio pep talks for boosting mood and motivation." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("SOCIAL-SANCTUARY-questions", return_direct=True) def sactury(prompt: str) -> str: """this function is used when user wants to know about SOCIAL SANCTUARY feature.THE SOCIAL SANCTUARY Anonymous community forum for support and sharing. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. THE SOCIAL SANCTUARY Anonymous community forum for support and sharing." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("POWER-ZENS-questions", return_direct=True) def power_zens(prompt: str) -> str: """this function is used when user wants to know about POWER ZENS feature. POWER ZENS Mini meditations for emotional control. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. POWER ZENS Mini meditations for emotional control." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("MY-CALENDAR-questions", return_direct=True) def my_calender(prompt: str) -> str: """this function is used when user wants to know about MY CALENDAR feature.MY CALENDAR: Visual calendar for tracking self-care rituals and moods. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MY CALENDAR: Visual calendar for tracking self-care rituals and moods." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("PUSH-AFFIRMATIONS-questions", return_direct=True) def affirmations(prompt: str) -> str: """this function is used when user wants to know about PUSH AFFIRMATIONS feature.PUSH AFFIRMATIONS: Daily text affirmations for positive thinking. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. PUSH AFFIRMATIONS: Daily text affirmations for positive thinking." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("HOROSCOPE-questions", return_direct=True) def horoscope(prompt: str) -> str: """this function is used when user wants to know about HOROSCOPE feature.SELF-LOVE HOROSCOPE: Weekly personalized horoscope readings. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. SELF-LOVE HOROSCOPE: Weekly personalized horoscope readings." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("INFLUENCER-POSTS-questions", return_direct=True) def influencer_post(prompt: str) -> str: """this function is used when user wants to know about INFLUENCER POSTS feature.INFLUENCER POSTS: Exclusive access to social media influencer advice (coming soon). Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. INFLUENCER POSTS: Exclusive access to social media influencer advice (coming soon)." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("MY-VIBECHECK-questions", return_direct=True) def my_vibecheck(prompt: str) -> str: """this function is used when user wants to know about MY VIBECHECK feature. MY VIBECHECK: Monitor and understand emotional patterns. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MY VIBECHECK: Monitor and understand emotional patterns." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("MY-RITUALS-questions", return_direct=True) def my_rituals(prompt: str) -> str: """this function is used when user wants to know about MY RITUALS feature.MY RITUALS: Create personalized self-care routines. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MY RITUALS: Create personalized self-care routines." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("MY-REWARDS-questions", return_direct=True) def my_rewards(prompt: str) -> str: """this function is used when user wants to know about MY REWARDS feature.MY REWARDS: Earn points for self-care, redeemable for gift cards. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MY REWARDS: Earn points for self-care, redeemable for gift cards." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("mentoring-questions", return_direct=True) def mentoring(prompt: str) -> str: """this function is used when user wants to know about 1-1 mentoring feature. 1:1 MENTORING: Personalized mentoring (coming soon). Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. 1:1 MENTORING: Personalized mentoring (coming soon)." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("MY-JOURNAL-questions", return_direct=True) def my_journal(prompt: str) -> str: """this function is used when user wants to know about MY JOURNAL feature.MY JOURNAL: Guided journaling exercises for self-reflection. Args: prompt (string): user query Returns: string: answer of the query """ context = "BMOXI app is designed for teenage girls where they can listen some musics explore some contents had 1:1 mentoring sessions with all above features for helping them in their hard times. MY JOURNAL: Guided journaling exercises for self-reflection." llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are going to make answer only using this context not use any other information context : {context} Input: {input} """ response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("recommandation_tool", return_direct=True) def recommand_podcast(prompt: str) -> str: """ this function is used when your best friend want any recommandation and tips. also you feel that this is the best time for any recommandation or your friend. Args: prompt (string): user query Returns: string: answer of the query """ df = reg(prompt) context = """""" for index, row in df.iterrows(): 'title', 'cover_image', 'referral_link', 'category_id' context+= f"Row {index + 1}: Title: {row['title']} image: {row['cover_image']} referral_link: {row['referral_link']} category_id: {row['category_id']}" llm = ChatOpenAI(model=settings.OPENAI_MODEL, openai_api_key=settings.OPENAI_KEY, temperature=0.7) # Define the system prompt system_template = """ you are give the recommandation of podcast. also you are giving referal link of podcast. you must use the context only not any other information. context : {context} Input: {input} """ print(system_template.format(context=context, input=prompt)) response = llm.invoke(system_template.format(context=context, input=prompt)) return response.content @tool("set-chat-bot-name", return_direct=True) def set_chatbot_name(name: str) -> str: """ this function is used when your best friend want to give you new name. Args: name (string): new name of you. Returns: string: response after setting new name. """ return "Okay, from now my name will be "+ name