##################################### ## ##################################### from langchain_community.llms import HuggingFaceHub ###### other models: # "Trelis/Llama-2-7b-chat-hf-sharded-bf16" # "bn22/Mistral-7B-Instruct-v0.1-sharded" # "HuggingFaceH4/zephyr-7b-beta" # function for loading 4-bit quantized model def load_model( ): model = HuggingFaceHub( repo_id="mistralai/Mixtral-8x7B-Instruct-v0.1", model_kwargs={"max_length": 1048, "temperature":0.2, "max_new_tokens":256, "top_p":0.95, "repetition_penalty":1.0}, ) return model ################################################## ## vs chat ################################################## import torch from transformers import AutoModelForCausalLM, AutoTokenizer, BitsAndBytesConfig, pipeline from langchain_core.messages import AIMessage, HumanMessage from langchain_community.document_loaders import WebBaseLoader from langchain.text_splitter import RecursiveCharacterTextSplitter from langchain_community.vectorstores import Chroma from langchain_community.embeddings import HuggingFaceBgeEmbeddings from langchain.vectorstores.faiss import FAISS from dotenv import load_dotenv from langchain_core.prompts import ChatPromptTemplate, MessagesPlaceholder from langchain.chains import create_history_aware_retriever, create_retrieval_chain from langchain.chains.combine_documents import create_stuff_documents_chain load_dotenv() def get_vectorstore(): ''' FAISS A FAISS vector store containing the embeddings of the text chunks. ''' model = "BAAI/bge-base-en-v1.5" encode_kwargs = { "normalize_embeddings": True } # set True to compute cosine similarity embeddings = HuggingFaceBgeEmbeddings( model_name=model, encode_kwargs=encode_kwargs, model_kwargs={"device": "cpu"} ) # load from disk vector_store = Chroma(persist_directory="/home/user/.cache/chroma_db", embedding_function=embeddings) return vector_store def get_vectorstore_from_url(url): # get the text in document form loader = WebBaseLoader(url) document = loader.load() # split the document into chunks text_splitter = RecursiveCharacterTextSplitter() document_chunks = text_splitter.split_documents(document) ####### ''' FAISS A FAISS vector store containing the embeddings of the text chunks. ''' model = "BAAI/bge-base-en-v1.5" encode_kwargs = { "normalize_embeddings": True } # set True to compute cosine similarity embeddings = HuggingFaceBgeEmbeddings( model_name=model, encode_kwargs=encode_kwargs, model_kwargs={"device": "cpu"} ) # load from disk #vector_store = Chroma(persist_directory="/home/user/.cache/chroma_db", embedding_function=embeddings) #vectorstore = FAISS.from_texts(texts=text_chunks, embedding=embeddings) vector_store = Chroma.from_documents(document_chunks, embeddings, persist_directory="/home/user/.cache/chroma_db") all_documents = vector_store.get()['documents'] total_records = len(all_documents) print("Total records in the collection: ", total_records) return vector_store def get_context_retriever_chain(vector_store): llm = load_model( ) retriever = vector_store.as_retriever() prompt = ChatPromptTemplate.from_messages([ MessagesPlaceholder(variable_name="chat_history"), ("user", "{input}"), ("user", "Given the above conversation, generate a search query to look up in order to get information relevant to the conversation") ]) retriever_chain = create_history_aware_retriever(llm, retriever, prompt) return retriever_chain def get_conversational_rag_chain(retriever_chain): llm = load_model( ) prompt = ChatPromptTemplate.from_messages([ ("system", "Du bist eine freundlicher Mitarbeiterin Namens Susie und arbeitest in einenm Call Center. Du beantwortest basierend auf dem Context. Benutze nur den Inhalt des Context. Füge wenn möglich die Quelle hinzu. Antworte mit: Ich bin mir nicht sicher. Wenn die Antwort nicht aus dem Context hervorgeht. Antworte auf Deutsch, bitte? CONTEXT:\n\n{context}"), MessagesPlaceholder(variable_name="chat_history"), ("user", "{input}"), ]) stuff_documents_chain = create_stuff_documents_chain(llm,prompt) return create_retrieval_chain(retriever_chain, stuff_documents_chain) ################### ################### import gradio as gr chat_history = [] # Set your chat history here # Define your function here def get_response(user_input): vs = get_vectorstore() chat_history =[] retriever_chain = get_context_retriever_chain(vs) conversation_rag_chain = get_conversational_rag_chain(retriever_chain) response = conversation_rag_chain.invoke({ "chat_history": chat_history, "input": user_input }) #print("get_response " +response) res = response['answer'] parts = res.split(" Assistant: ") last_part = parts[-1] return last_part ############### ##### ##### ##### #### from fastapi import FastAPI from fastapi.middleware.cors import CORSMiddleware app = FastAPI() # middlewares to allow cross orgin communications app.add_middleware( CORSMiddleware, allow_origins=['*'], allow_credentials=True, allow_methods=['*'], allow_headers=['*'], ) @app.post("/generate/") def generate(user_input): print("----yuhu -----") return get_response(user_input) ################## def history_to_dialog_format(chat_history: list[str]): dialog = [] if len(chat_history) > 0: for idx, message in enumerate(chat_history[0]): role = "user" if idx % 2 == 0 else "assistant" dialog.append({ "role": role, "content": message, }) return dialog def get_response(message, history): dialog = history_to_dialog_format(history) dialog.append({"role": "user", "content": message}) # Define the prompt as a ChatPromptValue object #user_input = ChatPromptValue(user_input) # Convert the prompt to a tensor #input_ids = user_input.tensor #vs = get_vectorstore_from_url(user_url, all_domain) vs = get_vectorstore() history =[] retriever_chain = get_context_retriever_chain(vs) conversation_rag_chain = get_conversational_rag_chain(retriever_chain) response = conversation_rag_chain.invoke({ "chat_history": history, "input": message + " Assistant: ", "chat_message": message + " Assistant: " }) #print("get_response " +response) res = response['answer'] parts = res.split(" Assistant: ") last_part = parts[-1] return last_part#[-1]['generation']['content'] ###### ######## import requests from bs4 import BeautifulSoup from urllib.parse import urlparse, urljoin def get_links_from_page(url, visited_urls, domain_links): if url in visited_urls: return if len(visited_urls) > 25: return visited_urls.add(url) print(url) response = requests.get(url) if response.status_code == 200: soup = BeautifulSoup(response.content, 'html.parser') base_url = urlparse(url).scheme + '://' + urlparse(url).netloc links = soup.find_all('a', href=True) for link in links: href = link.get('href') absolute_url = urljoin(base_url, href) parsed_url = urlparse(absolute_url) if parsed_url.netloc == urlparse(url).netloc: domain_links.add(absolute_url) get_links_from_page(absolute_url, visited_urls, domain_links) else: print(f"Failed to retrieve content from {url}. Status code: {response.status_code}") def get_all_links_from_domain(domain_url): visited_urls = set() domain_links = set() get_links_from_page(domain_url, visited_urls, domain_links) return domain_links def simple(text:str): return text +" hhhmmm " fe_app = gr.ChatInterface( fn=get_response, #fn=simple, # inputs=["text"], # outputs="text", title="Chat with Websites", description="Schreibe hier deine Frage rein...", #allow_flagging=False retry_btn=None, undo_btn=None, clear_btn=None ) fe_app.launch(debug=True, share=True) # load the model asynchronously on startup and save it into memory @app.on_event("startup") async def startup(): domain_url = 'https://globl.contact/' links = get_all_links_from_domain(domain_url) print("Links from the domain:", links) ######### # Assuming visited_urls is a list of URLs for url in links: vs = get_vectorstore_from_url(url) #load_model()