audio-diffusion / streamlit_app.py
teticio's picture
add notebook for gradio app
02a7301
raw
history blame
1.25 kB
from io import BytesIO
import streamlit as st
import soundfile as sf
from librosa.util import normalize
from librosa.beat import beat_track
from audiodiffusion import AudioDiffusion
if __name__ == "__main__":
st.header("Audio Diffusion")
st.markdown("Generate audio using Huggingface diffusers.\
This takes about 20 minutes without a GPU, so why not make yourself a \
cup of tea in the meantime?")
model_id = st.selectbox(
"Model",
["teticio/audio-diffusion-256", "teticio/audio-diffusion-breaks-256"])
audio_diffusion = AudioDiffusion(model_id=model_id)
if st.button("Generate"):
st.markdown("Generating...")
image, (sample_rate,
audio) = audio_diffusion.generate_spectrogram_and_audio()
st.image(image, caption="Mel spectrogram")
buffer = BytesIO()
sf.write(buffer, normalize(audio), sample_rate, format="WAV")
st.audio(buffer, format="audio/wav")
audio = AudioDiffusion.loop_it(audio, sample_rate)
if audio is not None:
st.markdown("Loop")
buffer = BytesIO()
sf.write(buffer, normalize(audio), sample_rate, format="WAV")
st.audio(buffer, format="audio/wav")