from base64 import b64decode, b64encode | |
from io import BytesIO | |
from fastapi import FastAPI, File, Form | |
from PIL import Image | |
from transformers import pipeline | |
import streamlit as st | |
# description = """ | |
# ## DocQA with π€ transformers, FastAPI, and Docker | |
# This app shows how to do Document Question Answering using | |
# FastAPI in a Docker Space π | |
# Check out the docs for the `/predict` endpoint below to try it out! | |
# """ | |
# NOTE - we configure docs_url to serve the interactive Docs at the root path | |
# of the app. This way, we can use the docs as a landing page for the app on Spaces. | |
#app = FastAPI(docs_url="/", description=description) | |
pipe = pipeline("document-question-answering", model="impira/layoutlm-document-qa") | |
image = 'https://templates.invoicehome.com/invoice-template-us-neat-750px.png' | |
question = "What is the invoice number?" | |
output = pipe(image, question) | |
st.write(output) | |
# @app.post("/predict") | |
# def predict(image_file: bytes = File(...), question: str = Form(...)): | |
# """ | |
# Using the document-question-answering pipeline from `transformers`, take | |
# a given input document (image) and a question about it, and return the | |
# predicted answer. The model used is available on the hub at: | |
# [`impira/layoutlm-document-qa`](https://huggingface.co/impira/layoutlm-document-qa). | |
# """ | |
# image = Image.open(BytesIO(image_file)) | |
# output = pipe(image, question) | |
# return output | |
# @app.get("/hello") | |
# def read_root(): | |
# return {"Hello": "World"} |