import PIL.Image import gradio as gr import base64 import time import os import google.generativeai as genai import pathlib txt_model = genai.GenerativeModel('gemini-pro') vis_model = genai.GenerativeModel('gemini-pro-vision') import os GOOGLE_API_KEY=os.getenv('GOOGLE_API_KEY') genai.configure(api_key=GOOGLE_API_KEY) # Image to Base 64 Converter def image_to_base64(image_path): with open(image_path, 'rb') as img: encoded_string = base64.b64encode(img.read()) return encoded_string.decode('utf-8') # Function that takes User Inputs and displays it on ChatUI def query_message(history,txt,img): if not img: history += [(txt,None)] return history base64 = image_to_base64(img) data_url = f"data:image/jpeg;base64,{base64}" history += [(f"{txt} ![]({data_url})", None)] return history # Function that takes User Inputs, generates Response and displays on Chat UI def llm_response(history,text,img): if not img: response = txt_model.generate_content(text) history += [(None,response.text)] return history else: img = PIL.Image.open(img) response = vis_model.generate_content([text,img]) history += [(None,response.text)] return history # Interface Code- Selector method def sentence_builder(animal, place): return f"""how many {animal}s from the {place} are shown in the picture?""" # gradio block with gr.Blocks(theme='snehilsanyal/scikit-learn') as app: gr.Markdown("## MM COT ##") with gr.Row(): image_box = gr.Image(type="filepath") chatbot = gr.Chatbot( scale = 2, height=750 ) text_box = gr.Dropdown( ["what is in the image", "provide alternative title for the image", "how many birds can be seen in the picture?"], label="Animal", info="Will add more animals later!" ) btn = gr.Button("Submit") clicked = btn.click(query_message, [chatbot,text_box,image_box], chatbot ).then(llm_response, [chatbot,text_box,image_box], chatbot ) gr.Markdown(""" # Multimodal Chain-of-Thought Reasoning in Language Models
"Imagine learning a textbook without figures or tables."
Multimodal-CoT incorporates vision features in a decoupled training framework. The framework consists of two training stages: (i) rationale generation and (ii) answer inference. Both stages share the same model architecture but differ in the input and output. """) app.queue() app.launch()