import streamlit as st import os import whisper import soundfile as sf # Assuming you have your .env file configured with necessary API keys or configurations # load_dotenv() # Initialize the model outside the main app function to load it only once model = whisper.load_model("base") def transcribe_audio(audio_file): # Save the audio file to a temporary file with open("temp_audio_file", "wb") as f: f.write(audio_file.getbuffer()) # Transcribe the audio file using the Whisper model result = model.transcribe("temp_audio_file") return result["text"] # Streamlit app def main(): st.title('USE ME TO TRANSCRIBE') # Audio file uploader uploaded_file = st.file_uploader("Upload an audio file", type=["wav", "mp3", "m4a", "ogg", "flac"]) if uploaded_file is not None: # Show a button to start the transcription process if st.button('Transcribe'): # Show a message while transcribing with st.spinner('Transcribing...'): text = transcribe_audio(uploaded_file) # Show the transcription st.subheader('Transcription:') st.write(text) else: st.write('Upload an audio file to get started.') if __name__ == "__main__": main()