from transformers import pipeline model_id = "arham061/distilhubert-finetuned-PASCAL_Dataset_Augmented" pipe = pipeline("audio-classification", model=model_id) def classify_audio(filepath): preds = pipe(filepath) outputs = {} for p in preds: outputs[p["label"]] = p["score"] return outputs import gradio as gr demo = gr.Interface( fn=classify_audio, inputs=gr.Audio(type="filepath"), outputs="label", examples = ['normal.wav', 'murmur.wav', 'extra_systole.wav', 'extra_hystole.wav', 'artifact.wav'], ) demo.launch(debug=True)