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import logging |
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import os |
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import time |
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from datetime import datetime |
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import gradio as gr |
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import torchaudio |
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from model import get_pretrained_model, language_to_models, sample_rate |
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languages = sorted(language_to_models.keys()) |
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def convert_to_wav(in_filename: str) -> str: |
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"""Convert the input audio file to a wave file""" |
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out_filename = in_filename + ".wav" |
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logging.info(f"Converting '{in_filename}' to '{out_filename}'") |
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_ = os.system(f"ffmpeg -hide_banner -i '{in_filename}' '{out_filename}'") |
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return out_filename |
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def build_html_output(s: str, style: str = "result_item_success"): |
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return f""" |
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<div class='result'> |
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<div class='result_item {style}'> |
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{s} |
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</div> |
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</div> |
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""" |
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def process_uploaded_file( |
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in_filename: str, |
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language: str, |
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repo_id: str, |
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decoding_method: str, |
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num_active_paths: int, |
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): |
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if in_filename is None or in_filename == "": |
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return "", build_html_output( |
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"Please first upload a file and then click " |
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'the button "submit for recognition"', |
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"result_item_error", |
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) |
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logging.info(f"Processing uploaded file: {in_filename}") |
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try: |
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return process( |
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in_filename=in_filename, |
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language=language, |
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repo_id=repo_id, |
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decoding_method=decoding_method, |
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num_active_paths=num_active_paths, |
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) |
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except Exception as e: |
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logging.info(str(e)) |
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return "", build_html_output(str(e), "result_item_error") |
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def process_microphone( |
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in_filename: str, |
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language: str, |
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repo_id: str, |
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decoding_method: str, |
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num_active_paths: int, |
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): |
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if in_filename is None or in_filename == "": |
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return "", build_html_output( |
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"Please first click 'Record from microphone', speak, " |
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"click 'Stop recording', and then " |
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"click the button 'submit for recognition'", |
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"result_item_error", |
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) |
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logging.info(f"Processing microphone: {in_filename}") |
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try: |
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return process( |
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in_filename=in_filename, |
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language=language, |
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repo_id=repo_id, |
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decoding_method=decoding_method, |
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num_active_paths=num_active_paths, |
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) |
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except Exception as e: |
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logging.info(str(e)) |
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return "", build_html_output(str(e), "result_item_error") |
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def process( |
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in_filename: str, |
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language: str, |
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repo_id: str, |
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decoding_method: str, |
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num_active_paths: int, |
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): |
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logging.info(f"in_filename: {in_filename}") |
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logging.info(f"language: {language}") |
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logging.info(f"repo_id: {repo_id}") |
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logging.info(f"decoding_method: {decoding_method}") |
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logging.info(f"num_active_paths: {num_active_paths}") |
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filename = convert_to_wav(in_filename) |
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now = datetime.now() |
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date_time = now.strftime("%Y-%m-%d %H:%M:%S.%f") |
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logging.info(f"Started at {date_time}") |
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start = time.time() |
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wave, wave_sample_rate = torchaudio.load(filename) |
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if wave_sample_rate != sample_rate: |
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logging.info( |
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f"Expected sample rate: {sample_rate}. Given: {wave_sample_rate}. " |
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f"Resampling to {sample_rate}." |
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) |
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wave = torchaudio.functional.resample( |
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wave, |
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orig_freq=wave_sample_rate, |
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new_freq=sample_rate, |
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) |
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wave = wave[0] |
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hyp = get_pretrained_model(repo_id).decode_waves( |
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[wave], |
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decoding_method=decoding_method, |
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num_active_paths=num_active_paths, |
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)[0] |
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date_time = now.strftime("%Y-%m-%d %H:%M:%S.%f") |
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end = time.time() |
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duration = wave.shape[0] / sample_rate |
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rtf = (end - start) / duration |
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logging.info(f"Finished at {date_time} s. Elapsed: {end - start: .3f} s") |
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info = f""" |
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Wave duration : {duration: .3f} s <br/> |
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Processing time: {end - start: .3f} s <br/> |
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RTF: {end - start: .3f}/{duration: .3f} = {(end - start)/duration:.3f} <br/> |
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""" |
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logging.info(info) |
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logging.info(f"hyp:\n{hyp}") |
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return hyp, build_html_output(info) |
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title = "# Automatic Speech Recognition with Next-gen Kaldi" |
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description = """ |
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This space shows how to do automatic speech recognition with Next-gen Kaldi. |
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See more information by visiting the following links: |
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- <https://github.com/k2-fsa/icefall> |
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- <https://github.com/k2-fsa/sherpa> |
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- <https://github.com/k2-fsa/k2> |
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- <https://github.com/lhotse-speech/lhotse> |
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""" |
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css = """ |
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.result {display:flex;flex-direction:column} |
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.result_item {padding:15px;margin-bottom:8px;border-radius:15px;width:100%} |
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.result_item_success {background-color:mediumaquamarine;color:white;align-self:start} |
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.result_item_error {background-color:#ff7070;color:white;align-self:start} |
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""" |
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def update_model_dropdown(language: str): |
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if language in language_to_models: |
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choices = language_to_models[language] |
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return gr.Dropdown.update(choices=choices, value=choices[0]) |
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raise ValueError(f"Unsupported language: {language}") |
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demo = gr.Blocks(css=css) |
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with demo: |
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gr.Markdown(title) |
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language_choices = list(language_to_models.keys()) |
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language_radio = gr.Radio( |
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label="Language", |
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choices=language_choices, |
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value=language_choices[0], |
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) |
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model_dropdown = gr.Dropdown( |
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choices=language_to_models[language_choices[0]], |
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label="Select a model", |
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value=language_to_models[language_choices[0]][0], |
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) |
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language_radio.change( |
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update_model_dropdown, |
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inputs=language_radio, |
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outputs=model_dropdown, |
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) |
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decoding_method_radio = gr.Radio( |
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label="Decoding method", |
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choices=["greedy_search", "modified_beam_search"], |
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value="greedy_search", |
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) |
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num_active_paths_slider = gr.Slider( |
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minimum=1, |
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value=4, |
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step=1, |
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label="Number of active paths for modified_beam_search", |
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) |
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with gr.Tabs(): |
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with gr.TabItem("Upload from disk"): |
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uploaded_file = gr.Audio( |
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source="upload", |
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type="filepath", |
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optional=False, |
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label="Upload from disk", |
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) |
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upload_button = gr.Button("Submit for recognition") |
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uploaded_output = gr.Textbox(label="Recognized speech from uploaded file") |
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uploaded_html_info = gr.HTML(label="Info") |
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with gr.TabItem("Record from microphone"): |
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microphone = gr.Audio( |
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source="microphone", |
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type="filepath", |
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optional=False, |
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label="Record from microphone", |
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) |
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record_button = gr.Button("Submit for recognition") |
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recorded_output = gr.Textbox(label="Recognized speech from recordings") |
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recorded_html_info = gr.HTML(label="Info") |
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upload_button.click( |
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process_uploaded_file, |
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inputs=[ |
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uploaded_file, |
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language_radio, |
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model_dropdown, |
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decoding_method_radio, |
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num_active_paths_slider, |
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], |
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outputs=[uploaded_output, uploaded_html_info], |
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) |
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record_button.click( |
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process_microphone, |
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inputs=[ |
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microphone, |
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language_radio, |
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model_dropdown, |
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decoding_method_radio, |
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num_active_paths_slider, |
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], |
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outputs=[recorded_output, recorded_html_info], |
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) |
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gr.Markdown(description) |
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if __name__ == "__main__": |
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formatter = "%(asctime)s %(levelname)s [%(filename)s:%(lineno)d] %(message)s" |
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logging.basicConfig(format=formatter, level=logging.INFO) |
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demo.launch() |
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