import numpy as np def image_classifier(inp): confidence_scores = np.random.rand(3) confidence_scores/= np.sum(confidence_scores) classes= ['cable','case', 'cpu'] result= {classes[i]: confidence_scores[i] for i in range(3)} return result import gradio as gr demo = gr.Interface(fn=image_classifier, inputs = "image", outputs = "label") demo.launch()