Spaces:
Sleeping
Sleeping
from langchain_core.runnables import Runnable | |
from langchain_core.callbacks import BaseCallbackHandler | |
from fastapi import FastAPI, Request, Depends | |
from sse_starlette.sse import EventSourceResponse | |
from langserve.serialization import WellKnownLCSerializer | |
from typing import List | |
from sqlalchemy.orm import Session | |
import schemas | |
from chains import simple_chain | |
import crud, models, schemas | |
from database import SessionLocal, engine | |
from callbacks import LogResponseCallback | |
models.Base.metadata.create_all(bind=engine) | |
app = FastAPI() | |
# def get_db(): | |
# db = SessionLocal() | |
# try: | |
# yield db | |
# finally: | |
# db.close() | |
async def generate_stream(input_data: schemas.BaseModel, runnable: Runnable, callbacks: List[BaseCallbackHandler]=[]): | |
for output in runnable.stream(input_data.dict(), config={"callbacks": callbacks}): | |
data = WellKnownLCSerializer().dumps(output).decode("utf-8") | |
yield {'data': data, "event": "data"} | |
yield {"event": "end"} | |
async def simple_stream(request: Request): | |
data = await request.json() | |
user_question = schemas.UserQuestion(**data['input']) | |
return EventSourceResponse(generate_stream(user_question, simple_chain)) | |
# @app.post("/formatted/stream") | |
# async def formatted_stream(request: Request): | |
# # TODO: use the formatted_chain to implement the "/formatted/stream" endpoint. | |
# raise NotImplemented | |
# def get_db(): | |
# db = SessionLocal() | |
# try: | |
# yield db | |
# finally: | |
# db.close() | |
# @app.post("/history/stream") | |
# async def history_stream(request: Request, db: Session = Depends(get_db)): | |
# # TODO: Let's implement the "/history/stream" endpoint. The endpoint should follow those steps: | |
# # - The endpoint receives the request | |
# # - The request is parsed into a user request | |
# # - The user request is used to pull the chat history of the user | |
# # - We add as part of the user history the current question by using add_message. | |
# # - We create an instance of HistoryInput by using format_chat_history. | |
# # - We use the history input within the history chain. | |
# raise NotImplemented | |
# @app.post("/rag/stream") | |
# async def rag_stream(request: Request, db: Session = Depends(get_db)): | |
# # TODO: Let's implement the "/rag/stream" endpoint. The endpoint should follow those steps: | |
# # - The endpoint receives the request | |
# # - The request is parsed into a user request | |
# # - The user request is used to pull the chat history of the user | |
# # - We add as part of the user history the current question by using add_message. | |
# # - We create an instance of HistoryInput by using format_chat_history. | |
# # - We use the history input within the rag chain. | |
# raise NotImplemented | |
# @app.post("/filtered_rag/stream") | |
# async def filtered_rag_stream(request: Request, db: Session = Depends(get_db)): | |
# # TODO: Let's implement the "/filtered_rag/stream" endpoint. The endpoint should follow those steps: | |
# # - The endpoint receives the request | |
# # - The request is parsed into a user request | |
# # - The user request is used to pull the chat history of the user | |
# # - We add as part of the user history the current question by using add_message. | |
# # - We create an instance of HistoryInput by using format_chat_history. | |
# # - We use the history input within the filtered rag chain. | |
# raise NotImplemented | |
if __name__ == "__main__": | |
import uvicorn | |
uvicorn.run("main:app", host="localhost", reload=True, port=8000) |