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import spaces
import torch
import re
import gradio as gr
from transformers import AutoTokenizer, AutoModelForCausalLM
from PIL import Image

if torch.cuda.is_available():
    device, dtype = "cuda", torch.float16
else:
    device, dtype = "cpu", torch.float32

model_id = "vikhyatk/moondream2"
revision = "2024-04-02"
tokenizer = AutoTokenizer.from_pretrained(model_id, revision=revision)
moondream = AutoModelForCausalLM.from_pretrained(
    model_id, trust_remote_code=True, revision=revision, torch_dtype=dtype
).to(device=device)
moondream.eval()

@spaces.GPU
def answer_questions(image_tuples, prompt_text):
    result = ""
    Q_and_A = ""
    prompts = [p.strip() for p in prompt_text.split(',')]  # Splitting and cleaning prompts
    print(f"prompts: {prompts}\n")
    image_embeds = [img[0] for img in image_tuples if img[0] is not None]  # Extracting images from tuples, ignoring None

    answers = []
    for prompt in prompts:
        image_answers = moondream.batch_answer(
            images=[img.convert("RGB") for img in image_embeds],
            prompts=[prompt] * len(image_embeds),
            tokenizer=tokenizer,
        )
        answers.append(image_answers)
            
    data = []
    for i in range(len(image_tuples)):
        image_name = f"image{i+1}"
        image_answers = [answer[i] for answer in answers]
        print(f"image{i+1}_answers \n {image_answers} \n")
        data.append([image_name] + image_answers)
        
    for question, answer in zip(prompts, answers):
        Q_and_A += (f"Q: {question}\nA: {answer}\n\n")
    print(f"\n\n{Q_and_A}\n\n")
    
    result = {'headers': prompts, 'data': data}
    return Q_and_A, result

with gr.Blocks() as demo:
    gr.Markdown("# moondream2 unofficial batch processing demo")
    gr.Markdown("1. Select images\n2. Enter one or more prompts separated by commas. Ex: Describe this image, What is in this image?\n\n")
    gr.Markdown("**Currently each image will be sent as a batch with the prompts thus asking each promp on each image**")
    gr.Markdown("*Running on free CPU space tier currently so results may take a bit to process compared to duplicating space and using GPU space hardware*")
    gr.Markdown("## πŸŒ” moondream2\nA tiny vision language model. [GitHub](https://github.com/vikhyatk/moondream)")
    with gr.Row():
        img = gr.Gallery(label="Upload Images", type="pil")
    with gr.Row():
        prompt = gr.Textbox(label="Input Prompts", placeholder="Enter prompts (one prompt for each image provided) separated by commas. Ex: Describe this image, What is in this image?", lines=8)
    with gr.Row():
        submit = gr.Button("Submit")
    output = gr.TextArea(label="Questions and Answers", lines=30)
    output2 = gr.Dataframe(label="Structured Dataframe", type="array",wrap=True)
    submit.click(answer_questions, [img, prompt], output, output2)

demo.queue().launch()