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import asyncio |
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import os |
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import re |
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import time |
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import json |
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import chainlit as cl |
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from langchain import hub |
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from langchain_openai import OpenAI |
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from langchain.chains import LLMChain, APIChain |
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from langchain_core.prompts import PromptTemplate |
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from langchain.memory.buffer import ConversationBufferMemory |
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from langchain.memory import ConversationTokenBufferMemory |
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from langchain.memory import ConversationSummaryMemory |
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from api_docs_mck import api_docs_str |
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from personvernspolicy import instruction_text_priv, personvernspolicy_data |
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from frequently_asked_questions import instruction_text_faq, faq |
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OPENAI_API_KEY = os.environ.get("OPENAI_API_KEY") |
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daysoff_assistant_template = """ |
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You are a customer support assistant (’kundeservice AI assistent’) for Daysoff. |
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By default, you respond in Norwegian language, using a warm, direct, and professional tone. |
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Your expertise is exclusively in retrieving booking information for a given booking id and answering |
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questions about firmahytteorning and personvernspolicy. |
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If a question does not involve booking information for a given booking id, ask: "Gjelder spørsmålet firmahytteordning?", |
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upon user confirmation, do your best to try to answer accordingly by referring to {instruction_text_faq} and {faq}. |
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If a query does not involve booking information for a given booking id or firmahytteordning, ask: "Gjelder spørsmålet personvernspolicy?" |
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upon user confirmation, do your best to provide a precise privacy-related response by referring to: {instruction_text_priv} and {personvernspolicy_data}. |
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If the query does not involve booking information for a given booking id, firmahytteordning or personvernspolicy, |
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respond with: "Jeg driver faktisk kun med henvendelser omkring bestillingsinformasjon og ofte-stilte-spørsmål i forbindelse |
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med DaysOff firmahytteordning (inkludert personvernspolicyn). Gjelder det andre henvendelser, må du nok kontakte kundeservice på [email protected]😊" |
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Chat History: {chat_history} |
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Question: {question} |
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Answer: |
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""" |
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daysoff_assistant_prompt = PromptTemplate( |
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input_variables=['chat_history', 'question', "instruction_text_faq", "faq", "instruction_text_priv", "personvernspolicy_data"], |
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template=daysoff_assistant_template |
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) |
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api_url_template = """ |
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Given the following API Documentation for Daysoff's official |
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booking information API: {api_docs} |
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Your task is to construct the most efficient API URL to answer |
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the user's question, ensuring the |
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call is optimized to include only the necessary information. |
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Question: {question} |
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API URL: |
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""" |
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api_url_prompt = PromptTemplate(input_variables=['api_docs', 'question'], |
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template=api_url_template) |
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api_response_template = """ |
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With the API Documentation for Daysoff's official API: {api_docs} in mind, |
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and the specific user question: {question}, |
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and given this API URL: {api_url} for querying, |
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and response from Daysoff's API: {api_response}, |
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never refer the user to the API URL as your answer! |
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You should always provide a clear and concise summary (in Norwegian) of the booking information retrieved. |
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This way you directly address the user's question in a manner that reflects the professionalism and warmth |
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of a human customer service agent. |
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Summary: |
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""" |
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api_response_prompt = PromptTemplate( |
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input_variables=['api_docs', 'question', 'api_url', 'api_response'], |
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template=api_response_template |
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) |
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@cl.on_chat_start |
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def setup_multiple_chains(): |
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llm = OpenAI( |
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model='gpt-3.5-turbo-instruct', |
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temperature=0.7, |
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openai_api_key=OPENAI_API_KEY, |
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max_tokens=2048, |
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top_p=0.9, |
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frequency_penalty=0.1, |
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presence_penalty=0.1 |
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) |
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conversation_memory = ConversationBufferMemory(memory_key="chat_history", |
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max_len=30, |
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return_messages=True, |
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) |
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llm_chain = LLMChain(llm=llm, |
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prompt=daysoff_assistant_prompt, |
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memory=conversation_memory, |
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instruction_text_faq=instruction_text_faq, |
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faq=faq, |
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instruction_text_priv=instruction_text_priv, |
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personvernspolicy_data=personvernspolicy_data |
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) |
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cl.user_session.set("llm_chain", llm_chain) |
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api_chain = APIChain.from_llm_and_api_docs( |
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llm=llm, |
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api_docs=api_docs_str, |
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api_url_prompt=api_url_prompt, |
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api_response_prompt=api_response_prompt, |
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verbose=True, |
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limit_to_domains=None |
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) |
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cl.user_session.set("api_chain", api_chain) |
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@cl.on_message |
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async def handle_message(message: cl.Message): |
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user_message = message.content |
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llm_chain = cl.user_session.get("llm_chain") |
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api_chain = cl.user_session.get("api_chain") |
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booking_pattern = r'\b[A-Z]{6}\d{6}\b' |
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endpoint_url = "https://670dccd0073307b4ee447f2f.mockapi.io/daysoff/api/V1/booking" |
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if re.search(booking_pattern, user_message): |
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bestillingskode = re.search(booking_pattern, user_message).group(0) |
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question = f"Retrieve information for booking ID {endpoint_url}?search={bestillingskode}" |
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response = await api_chain.acall( |
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{ |
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"bestillingskode": bestillingskode, |
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"question": question |
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}, |
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callbacks=[cl.AsyncLangchainCallbackHandler()]) |
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else: |
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response = await llm_chain.acall(user_message, callbacks=[cl.AsyncLangchainCallbackHandler()]) |
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response_key = "output" if "output" in response else "text" |
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await cl.Message(response.get(response_key, "")).send() |
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return message.content |
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