import streamlit as st import os import pathlib import textwrap from PIL import Image import google.generativeai as genai genai.configure(api_key='AIzaSyAA_R5VXv1qjJ5jDMObkluREA8BxJO67RU') ## Function to load OpenAI model and get respones def get_gemini_response(input,image,prompt): model = genai.GenerativeModel('gemini-pro-vision') response = model.generate_content([input,image[0],prompt]) return response.text def input_image_setup(uploaded_file): # Check if a file has been uploaded if uploaded_file is not None: # Read the file into bytes bytes_data = uploaded_file.getvalue() image_parts = [ { "mime_type": uploaded_file.type, # Get the mime type of the uploaded file "data": bytes_data } ] return image_parts else: raise FileNotFoundError("No file uploaded") ##initialize our streamlit app st.set_page_config(page_title="Gemini Image Demo") st.header("Generative AI : Invoice Reader") input=st.text_input("Input Prompt: ",key="input") uploaded_file = st.file_uploader("Choose an image...", type=["jpg", "jpeg", "png"]) image="" if uploaded_file is not None: image = Image.open(uploaded_file) st.image(image, caption="Uploaded Image.", use_column_width=True) submit=st.button("Tell me about the image") input_prompt = """ You are an expert in understanding invoices. You will receive input images as invoices & you will have to answer questions based on the input image """ ## If ask button is clicked if submit: image_data = input_image_setup(uploaded_file) response=get_gemini_response(input_prompt,image_data,input) st.subheader("The Response is") st.write(response)