import os import json import bcrypt from typing import List from pathlib import Path from langchain_huggingface import HuggingFaceEmbeddings from langchain_huggingface import HuggingFaceEndpoint from langchain.prompts import ChatPromptTemplate, MessagesPlaceholder from langchain.schema import StrOutputParser from operator import itemgetter from pinecone import Pinecone from langchain_pinecone import PineconeVectorStore from langchain_community.chat_message_histories import ChatMessageHistory from langchain.memory import ConversationBufferMemory from langchain.schema.runnable import Runnable, RunnablePassthrough, RunnableConfig, RunnableLambda from langchain.callbacks.base import BaseCallbackHandler from langchain.chains import ( StuffDocumentsChain, ConversationalRetrievalChain ) from langchain_core.tracers.context import tracing_v2_enabled import chainlit as cl from chainlit.input_widget import TextInput, Select, Switch, Slider from chainlit.playground.config import add_llm_provider from chainlit.playground.providers.langchain import LangchainGenericProvider from deep_translator import GoogleTranslator @cl.password_auth_callback def auth_callback(username: str, password: str): auth = json.loads(os.environ['CHAINLIT_AUTH_LOGIN']) ident = next(d['ident'] for d in auth if d['ident'] == username) pwd = next(d['pwd'] for d in auth if d['ident'] == username) resultLogAdmin = bcrypt.checkpw(username.encode('utf-8'), bcrypt.hashpw(ident.encode('utf-8'), bcrypt.gensalt())) resultPwdAdmin = bcrypt.checkpw(password.encode('utf-8'), bcrypt.hashpw(pwd.encode('utf-8'), bcrypt.gensalt())) resultRole = next(d['role'] for d in auth if d['ident'] == username) if resultLogAdmin and resultPwdAdmin and resultRole == "admindatapcc": return cl.User( identifier=ident + " : đ§âđŒ Admin Datapcc", metadata={"role": "admin", "provider": "credentials"} ) elif resultLogAdmin and resultPwdAdmin and resultRole == "userdatapcc": return cl.User( identifier=ident + " : đ§âđ User Datapcc", metadata={"role": "user", "provider": "credentials"} ) def LLModel(): os.environ['HUGGINGFACEHUB_API_TOKEN'] = os.environ['HUGGINGFACEHUB_API_TOKEN'] repo_id = "mistralai/Mixtral-8x7B-Instruct-v0.1" llm = HuggingFaceEndpoint( repo_id=repo_id, max_new_tokens=5500, temperature=1.0, task="text2text-generation", streaming=True ) add_llm_provider( LangchainGenericProvider( # It is important that the id of the provider matches the _llm_type id=llm._llm_type, # The name is not important. It will be displayed in the UI. name="Mistral 8x7b Instruct", # This should always be a Langchain llm instance (correctly configured) llm=llm, # If the LLM works with messages, set this to True is_chat=True ) ) return llm def VectorDatabase(categorie): if categorie != "year": index_name = "all-venus" embeddings = HuggingFaceEmbeddings() vectorstore = PineconeVectorStore( index_name=index_name, embedding=embeddings, pinecone_api_key=os.getenv('PINECONE_API_KEY') ) else: index_name = "all-jdlp" embeddings = HuggingFaceEmbeddings() vectorstore = PineconeVectorStore( index_name=index_name, embedding=embeddings, pinecone_api_key=os.getenv('PINECONE_API_KEYJDLP') ) return vectorstore def Retriever(categorie): vectorstore = VectorDatabase(categorie) if categorie != "year": retriever = vectorstore.as_retriever(search_type="similarity_score_threshold", search_kwargs={"score_threshold": .7, "k": 150,"filter": {'categorie': {'$eq': categorie}}}) else: retriever = vectorstore.as_retriever(search_type="similarity_score_threshold", search_kwargs={"score_threshold": .7, "k": 6,"filter": {'year': {'$gte': 2019}}}) #search = vectorstore.similarity_search(query,k=50, filter={"categorie": {"$eq": "bibliographie-OPP-DGDIN"}, 'Source': {'$eq': 'Source : PersĂ©e'}}) return retriever def Search(input, categorie): vectorstore = VectorDatabase(categorie) results = [] test = [] sources_text = "" verbatim_text = "" count = 0 if categorie != "year": search = vectorstore.similarity_search(input,k=50, filter={"categorie": {"$eq": categorie}}) for i in range(0,len(search)): if search[i].metadata['Lien'] not in test: if count <= 15: count = count + 1 test.append(search[i].metadata['Lien']) sources_text = sources_text + str(count) + ". " + search[i].metadata['Titre'] + ', ' + search[i].metadata['Auteurs'] + ', ' + search[i].metadata['Lien'] + "\n" verbatim_text = verbatim_text + "
" + str(count) + ". " + search[i].metadata['Phrase'] + "
" else: search = vectorstore.similarity_search(input,k=50, filter={"year": {"$gte": 2019}}) for i in range(0,len(search)): if count <= 15: count = count + 1 sources_text = sources_text + str(count) + ". " + search[i].metadata['title'] + ' (JDLP : ' + str(search[i].metadata['year']) + '), ' + search[i].metadata['author'] + ', https://cipen.univ-gustave-eiffel.fr/fileadmin/CIPEN/OPP/' + search[i].metadata['file'] + "\n" verbatim_text = verbatim_text + "
" + str(count) + ". JDLP : " + search[i].metadata['jdlp'] + "
" + search[i].page_content + "
" results = [sources_text, verbatim_text] return results @cl.on_chat_start async def on_chat_start(): await cl.Message(f"> REVIEWSTREAM").send() #await cl.Message(f"Nous avons le plaisir de vous accueillir dans l'application de recherche et d'analyse des publications.").send() res = await cl.AskActionMessage( content=" Hal Archives Ouvertes : Une archive ouverte est un réservoir numérique contenant des documents issus de la recherche scientifique, généralement déposés par leurs auteurs, et permettant au grand public d'y accéder gratuitement et sans contraintes.
Persée : offre un accÚs libre et gratuit à des collections complÚtes de publications scientifiques (revues, livres, actes de colloques, publications en série, sources primaires, etc.) associé à une gamme d'outils de recherche et d'exploitation.