import os, sys, json
import gradio as gr
import openai
from openai import OpenAI
from langchain.chains import LLMChain, RetrievalQA
from langchain.chat_models import ChatOpenAI
from langchain.document_loaders import PyPDFLoader, WebBaseLoader
from langchain.document_loaders.blob_loaders.youtube_audio import YoutubeAudioLoader
from langchain.document_loaders.generic import GenericLoader
from langchain.document_loaders.parsers import OpenAIWhisperParser
from langchain.embeddings.openai import OpenAIEmbeddings
from langchain.prompts import PromptTemplate
from langchain.text_splitter import RecursiveCharacterTextSplitter
from langchain.vectorstores import Chroma
#from langchain.vectorstores import MongoDBAtlasVectorSearch
#from pymongo import MongoClient
from dotenv import load_dotenv, find_dotenv
_ = load_dotenv(find_dotenv())
# Schnittstellen hinzubinden und OpenAI Key holen aus den Secrets
#client = OpenAI(
#api_key=os.getenv("OPENAI_API_KEY"),
#)
#nur bei ersten Anfrage splitten der Dokumente
splittet = False
#Für MongoDB statt Chroma als Vektorstore
#MONGODB_URI = os.environ["MONGODB_ATLAS_CLUSTER_URI"]
#client = MongoClient(MONGODB_URI)
#MONGODB_DB_NAME = "langchain_db"
#MONGODB_COLLECTION_NAME = "gpt-4"
#MONGODB_COLLECTION = client[MONGODB_DB_NAME][MONGODB_COLLECTION_NAME]
#MONGODB_INDEX_NAME = "default"
template = """Antworte in deutsch, wenn es nicht explizit anders gefordert wird. Wenn du die Antwort nicht kennst, antworte einfach, dass du es nicht weißt. Versuche nicht, die Antwort zu erfinden oder aufzumocken. Halte die Antwort so kurz aber exakt."""
llm_template = "Beantworte die Frage am Ende. " + template + "Frage: {question} Hilfreiche Antwort: "
rag_template = "Nutze die folgenden Kontext Teile, um die Frage zu beantworten am Ende. " + template + "{context} Frage: {question} Hilfreiche Antwort: "
LLM_CHAIN_PROMPT = PromptTemplate(input_variables = ["question"],
template = llm_template)
RAG_CHAIN_PROMPT = PromptTemplate(input_variables = ["context", "question"],
template = rag_template)
OAI_API_KEY=os.getenv("OPENAI_API_KEY")
#Pfad, wo Docs abgelegt werden können - lokal, also hier im HF Space (sonst auf eigenem Rechner)
PATH_WORK = "."
CHROMA_DIR = "/chroma"
YOUTUBE_DIR = "/youtube"
PDF_URL = "https://arxiv.org/pdf/2303.08774.pdf"
WEB_URL = "https://openai.com/research/gpt-4"
YOUTUBE_URL_1 = "https://www.youtube.com/watch?v=--khbXchTeE"
YOUTUBE_URL_2 = "https://www.youtube.com/watch?v=hdhZwyf24mE"
YOUTUBE_URL_3 = "https://www.youtube.com/watch?v=vw-KWfKwvTQ"
#MODEL_NAME = "gpt-3.5-turbo-16k"
MODEL_NAME ="gpt-4"
def document_loading_splitting():
global splittet
# Document loading
docs = []
# Load PDF
loader = PyPDFLoader(PDF_URL)
docs.extend(loader.load())
# Load Web
loader = WebBaseLoader(WEB_URL)
docs.extend(loader.load())
# Load YouTube
loader = GenericLoader(YoutubeAudioLoader([YOUTUBE_URL_1,
YOUTUBE_URL_2,
YOUTUBE_URL_3], PATH_WORK + YOUTUBE_DIR),
OpenAIWhisperParser())
docs.extend(loader.load())
# Document splitting
text_splitter = RecursiveCharacterTextSplitter(chunk_overlap = 150,
chunk_size = 1500)
splits = text_splitter.split_documents(docs)
#nur bei erster Anfrage mit "choma" wird gesplittet...
splittet = True
return splits
def document_storage_chroma(splits):
Chroma.from_documents(documents = splits,
embedding = OpenAIEmbeddings(disallowed_special = ()),
persist_directory = PATH_WORK + CHROMA_DIR)
def document_storage_mongodb(splits):
MongoDBAtlasVectorSearch.from_documents(documents = splits,
embedding = OpenAIEmbeddings(disallowed_special = ()),
collection = MONGODB_COLLECTION,
index_name = MONGODB_INDEX_NAME)
def document_retrieval_chroma(llm, prompt):
embeddings = OpenAIEmbeddings()
#Alternative Embedding - für Vektorstore, um Ähnlichkeitsvektoren zu erzeugen
#embeddings = HuggingFaceInstructEmbeddings(model_name="sentence-transformers/all-MiniLM-L6-v2", model_kwargs={"device": "cpu"})
db = Chroma(embedding_function = embeddings,
persist_directory = PATH_WORK + CHROMA_DIR)
return db
def document_retrieval_mongodb(llm, prompt):
db = MongoDBAtlasVectorSearch.from_connection_string(MONGODB_URI,
MONGODB_DB_NAME + "." + MONGODB_COLLECTION_NAME,
OpenAIEmbeddings(disallowed_special = ()),
index_name = MONGODB_INDEX_NAME)
return db
def llm_chain(llm, prompt):
llm_chain = LLMChain(llm = llm, prompt = LLM_CHAIN_PROMPT)
result = llm_chain.run({"question": prompt})
return result
def rag_chain(llm, prompt, db):
rag_chain = RetrievalQA.from_chain_type(llm,
chain_type_kwargs = {"prompt": RAG_CHAIN_PROMPT},
retriever = db.as_retriever(search_kwargs = {"k": 3}),
return_source_documents = True)
result = rag_chain({"query": prompt})
return result["result"]
def invoke(openai_api_key, rag_option, prompt):
global splittet
if (openai_api_key == "" or openai_api_key == "sk-"):
#raise gr.Error("OpenAI API Key is required.")
openai_api_key= OAI_API_KEY
if (rag_option is None):
raise gr.Error("Retrieval Augmented Generation ist erforderlich.")
if (prompt == ""):
raise gr.Error("Prompt ist erforderlich.")
try:
llm = ChatOpenAI(model_name = MODEL_NAME,
openai_api_key = openai_api_key,
temperature = 0)
if (rag_option == "Chroma"):
#muss nur einmal ausgeführt werden...
if not splittet:
splits = document_loading_splitting()
document_storage_chroma(splits)
db = document_retrieval_chroma(llm, prompt)
result = rag_chain(llm, prompt, db)
elif (rag_option == "MongoDB"):
#splits = document_loading_splitting()
#document_storage_mongodb(splits)
db = document_retrieval_mongodb(llm, prompt)
result = rag_chain(llm, prompt, db)
else:
result = llm_chain(llm, prompt)
except Exception as e:
raise gr.Error(e)
return result
description = """Überblick: Hier wird ein Large Language Model (LLM) mit
Retrieval Augmented Generation (RAG) auf externen Daten demonstriert.\n\n
Genauer: Folgende externe Daten sind als Beispiel gegeben:
YouTube, PDF, and Web.
Alle neueren Datums!.