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1 Parent(s): 87747f8

Delete demo.py

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  1. demo.py +0 -440
demo.py DELETED
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- from original import *
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- import shutil, glob
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- from easyfuncs import download_from_url, CachedModels
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- os.makedirs("dataset",exist_ok=True)
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- model_library = CachedModels()
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- from infer.modules.vc.modules import VC
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-
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- with gr.Blocks(title="easygui v2",theme="Blane187/fuchsia") as app:
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- with gr.Row():
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- gr.Markdown("# EasyGUI V2")
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- with gr.Tabs():
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- with gr.TabItem("Inference"):
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- with gr.Row():
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- voice_model = gr.Dropdown(label="Model Voice", choices=sorted(names), value=lambda:sorted(names)[0] if len(sorted(names)) > 0 else '', interactive=True)
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- refresh_button = gr.Button("Refresh", variant="primary")
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- spk_item = gr.Slider(
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- minimum=0,
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- maximum=2333,
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- step=1,
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- label="Speaker ID",
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- value=0,
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- visible=False,
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- interactive=True,
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- )
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- vc_transform0 = gr.Number(
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- label="Pitch",
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- value=0
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- )
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- but0 = gr.Button(value="Convert", variant="primary")
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- with gr.Row():
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- with gr.Column():
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- with gr.Row():
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- dropbox = gr.File(label="Drop your audio here & hit the Reload button.")
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- with gr.Row():
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- record_button=gr.Audio(source="microphone", label="OR Record audio.", type="filepath")
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- with gr.Row():
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- paths_for_files = lambda path:[os.path.abspath(os.path.join(path, f)) for f in os.listdir(path) if os.path.splitext(f)[1].lower() in ('.mp3', '.wav', '.flac', '.ogg')]
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- input_audio0 = gr.Dropdown(
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- label="Input Path",
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- value=paths_for_files('audios')[0] if len(paths_for_files('audios')) > 0 else '',
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- choices=paths_for_files('audios'), # Only show absolute paths for audio files ending in .mp3, .wav, .flac or .ogg
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- allow_custom_value=True
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- )
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- with gr.Row():
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- audio_player = gr.Audio()
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- input_audio0.change(
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- inputs=[input_audio0],
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- outputs=[audio_player],
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- fn=lambda path: {"value":path,"__type__":"update"} if os.path.exists(path) else None
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- )
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- record_button.stop_recording(
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- fn=lambda audio:audio, #TODO save wav lambda
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- inputs=[record_button],
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- outputs=[input_audio0])
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- dropbox.upload(
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- fn=lambda audio:audio.name,
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- inputs=[dropbox],
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- outputs=[input_audio0])
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- with gr.Column():
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- with gr.Accordion("Change Index", open=False):
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- file_index2 = gr.Dropdown(
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- label="Change Index",
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- choices=sorted(index_paths),
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- interactive=True,
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- value=sorted(index_paths)[0] if len(sorted(index_paths)) > 0 else ''
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- )
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- index_rate1 = gr.Slider(
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- minimum=0,
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- maximum=1,
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- label="Index Strength",
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- value=0.5,
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- interactive=True,
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- )
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- vc_output2 = gr.Audio(label="Output")
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- with gr.Accordion("General Settings", open=False):
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- f0method0 = gr.Radio(
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- label="Method",
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- choices=["pm", "harvest", "crepe", "rmvpe", "dio", "fcpe"]
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- if config.dml == False
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- else ["pm", "harvest", "rmvpe", "dio", "fcpe"],
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- value="rmvpe",
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- interactive=True,
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- )
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- filter_radius0 = gr.Slider(
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- minimum=0,
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- maximum=7,
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- label="Breathiness Reduction (Harvest only)",
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- value=3,
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- step=1,
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- interactive=True,
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- )
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- resample_sr0 = gr.Slider(
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- minimum=0,
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- maximum=48000,
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- label="Resample",
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- value=0,
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- step=1,
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- interactive=True,
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- visible=False
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- )
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- rms_mix_rate0 = gr.Slider(
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- minimum=0,
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- maximum=1,
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- label="Volume Normalization",
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- value=0,
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- interactive=True,
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- )
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- protect0 = gr.Slider(
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- minimum=0,
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- maximum=0.5,
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- label="Breathiness Protection (0 is enabled, 0.5 is disabled)",
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- value=0.33,
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- step=0.01,
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- interactive=True,
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- )
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- if voice_model != None: vc.get_vc(voice_model.value,protect0,protect0)
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- file_index1 = gr.Textbox(
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- label="Index Path",
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- interactive=True,
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- visible=False#Not used here
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- )
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- refresh_button.click(
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- fn=change_choices,
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- inputs=[],
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- outputs=[voice_model, file_index2],
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- api_name="infer_refresh",
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- )
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- refresh_button.click(
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- fn=lambda:{"choices":paths_for_files('audios'),"__type__":"update"}, #TODO check if properly returns a sorted list of audio files in the 'audios' folder that have the extensions '.wav', '.mp3', '.ogg', or '.flac'
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- inputs=[],
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- outputs = [input_audio0],
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- )
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- refresh_button.click(
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- fn=lambda:{"value":paths_for_files('audios')[0],"__type__":"update"} if len(paths_for_files('audios')) > 0 else {"value":"","__type__":"update"}, #TODO check if properly returns a sorted list of audio files in the 'audios' folder that have the extensions '.wav', '.mp3', '.ogg', or '.flac'
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- inputs=[],
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- outputs = [input_audio0],
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- )
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- with gr.Row():
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- f0_file = gr.File(label="F0 Path", visible=False)
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- with gr.Row():
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- vc_output1 = gr.Textbox(label="Information", placeholder="Welcome!",visible=False)
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- but0.click(
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- vc.vc_single,
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- [
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- spk_item,
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- input_audio0,
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- vc_transform0,
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- f0_file,
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- f0method0,
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- file_index1,
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- file_index2,
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- index_rate1,
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- filter_radius0,
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- resample_sr0,
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- rms_mix_rate0,
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- protect0,
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- ],
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- [vc_output1, vc_output2],
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- api_name="infer_convert",
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- )
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- voice_model.change(
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- fn=vc.get_vc,
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- inputs=[voice_model, protect0, protect0],
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- outputs=[spk_item, protect0, protect0, file_index2, file_index2],
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- api_name="infer_change_voice",
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- )
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- with gr.TabItem("Download Models"):
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- with gr.Row():
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- url_input = gr.Textbox(label="URL to model", value="",placeholder="https://...", scale=6)
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- name_output = gr.Textbox(label="Save as", value="",placeholder="MyModel",scale=2)
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- url_download = gr.Button(value="Download Model",scale=2)
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- url_download.click(
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- inputs=[url_input,name_output],
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- outputs=[url_input],
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- fn=download_from_url,
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- )
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- with gr.Row():
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- model_browser = gr.Dropdown(choices=list(model_library.models.keys()),label="OR Search Models (Quality UNKNOWN)",scale=5)
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- download_from_browser = gr.Button(value="Get",scale=2)
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- download_from_browser.click(
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- inputs=[model_browser],
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- outputs=[model_browser],
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- fn=lambda model: download_from_url(model_library.models[model],model),
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- )
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- with gr.TabItem("Train"):
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- with gr.Row():
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- with gr.Column():
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- training_name = gr.Textbox(label="Name your model", value="My-Voice",placeholder="My-Voice")
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- np7 = gr.Slider(
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- minimum=0,
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- maximum=config.n_cpu,
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- step=1,
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- label="Number of CPU processes used to extract pitch features",
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- value=int(np.ceil(config.n_cpu / 1.5)),
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- interactive=True,
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- )
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- sr2 = gr.Radio(
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- label="Sampling Rate",
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- choices=["40k", "32k"],
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- value="32k",
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- interactive=True,
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- visible=False
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- )
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- if_f0_3 = gr.Radio(
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- label="Will your model be used for singing? If not, you can ignore this.",
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- choices=[True, False],
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- value=True,
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- interactive=True,
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- visible=False
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- )
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- version19 = gr.Radio(
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- label="Version",
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- choices=["v1", "v2"],
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- value="v2",
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- interactive=True,
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- visible=False,
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- )
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- dataset_folder = gr.Textbox(
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- label="dataset folder", value='dataset'
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- )
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- easy_uploader = gr.Files(label="Drop your audio files here",file_types=['audio'])
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- but1 = gr.Button("1. Process", variant="primary")
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- info1 = gr.Textbox(label="Information", value="",visible=True)
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- easy_uploader.upload(inputs=[dataset_folder],outputs=[],fn=lambda folder:os.makedirs(folder,exist_ok=True))
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- easy_uploader.upload(
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- fn=lambda files,folder: [shutil.copy2(f.name,os.path.join(folder,os.path.split(f.name)[1])) for f in files] if folder != "" else gr.Warning('Please enter a folder name for your dataset'),
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- inputs=[easy_uploader, dataset_folder],
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- outputs=[])
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- gpus6 = gr.Textbox(
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- label="Enter the GPU numbers to use separated by -, (e.g. 0-1-2)",
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- value=gpus,
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- interactive=True,
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- visible=F0GPUVisible,
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- )
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- gpu_info9 = gr.Textbox(
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- label="GPU Info", value=gpu_info, visible=F0GPUVisible
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- )
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- spk_id5 = gr.Slider(
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- minimum=0,
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- maximum=4,
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- step=1,
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- label="Speaker ID",
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- value=0,
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- interactive=True,
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- visible=False
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- )
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- but1.click(
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- preprocess_dataset,
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- [dataset_folder, training_name, sr2, np7],
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- [info1],
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- api_name="train_preprocess",
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- )
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- with gr.Column():
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- f0method8 = gr.Radio(
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- label="F0 extraction method",
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- choices=["pm", "harvest", "dio", "rmvpe", "rmvpe_gpu"],
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- value="rmvpe_gpu",
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- interactive=True,
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- )
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- gpus_rmvpe = gr.Textbox(
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- label="GPU numbers to use separated by -, (e.g. 0-1-2)",
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- value="%s-%s" % (gpus, gpus),
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- interactive=True,
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- visible=F0GPUVisible,
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- )
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- but2 = gr.Button("2. Extract Features", variant="primary")
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- info2 = gr.Textbox(label="Information", value="", max_lines=8)
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- f0method8.change(
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- fn=change_f0_method,
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- inputs=[f0method8],
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- outputs=[gpus_rmvpe],
272
- )
273
- but2.click(
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- extract_f0_feature,
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- [
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- gpus6,
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- np7,
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- f0method8,
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- if_f0_3,
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- training_name,
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- version19,
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- gpus_rmvpe,
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- ],
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- [info2],
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- api_name="train_extract_f0_feature",
286
- )
287
- with gr.Column():
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- total_epoch11 = gr.Slider(
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- minimum=2,
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- maximum=1000,
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- step=1,
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- label="Epochs (more epochs may improve quality but takes longer)",
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- value=150,
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- interactive=True,
295
- )
296
- but4 = gr.Button("3. Train Index", variant="primary")
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- but3 = gr.Button("4. Train Model", variant="primary")
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- info3 = gr.Textbox(label="Information", value="", max_lines=10)
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- with gr.Accordion(label="General Settings", open=False):
300
- gpus16 = gr.Textbox(
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- label="GPUs separated by -, (e.g. 0-1-2)",
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- value="0",
303
- interactive=True,
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- visible=True
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- )
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- save_epoch10 = gr.Slider(
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- minimum=1,
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- maximum=50,
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- step=1,
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- label="Weight Saving Frequency",
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- value=25,
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- interactive=True,
313
- )
314
- batch_size12 = gr.Slider(
315
- minimum=1,
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- maximum=40,
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- step=1,
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- label="Batch Size",
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- value=default_batch_size,
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- interactive=True,
321
- )
322
- if_save_latest13 = gr.Radio(
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- label="Only save the latest model",
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- choices=["yes", "no"],
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- value="yes",
326
- interactive=True,
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- visible=False
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- )
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- if_cache_gpu17 = gr.Radio(
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- label="If your dataset is UNDER 10 minutes, cache it to train faster",
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- choices=["yes", "no"],
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- value="no",
333
- interactive=True,
334
- )
335
- if_save_every_weights18 = gr.Radio(
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- label="Save small model at every save point",
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- choices=["yes", "no"],
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- value="yes",
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- interactive=True,
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- )
341
- with gr.Accordion(label="Change pretrains", open=False):
342
- pretrained = lambda sr, letter: [os.path.abspath(os.path.join('assets/pretrained_v2', file)) for file in os.listdir('assets/pretrained_v2') if file.endswith('.pth') and sr in file and letter in file]
343
- pretrained_G14 = gr.Dropdown(
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- label="pretrained G",
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- # Get a list of all pretrained G model files in assets/pretrained_v2 that end with .pth
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- choices = pretrained(sr2.value, 'G'),
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- value=pretrained(sr2.value, 'G')[0] if len(pretrained(sr2.value, 'G')) > 0 else '',
348
- interactive=True,
349
- visible=True
350
- )
351
- pretrained_D15 = gr.Dropdown(
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- label="pretrained D",
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- choices = pretrained(sr2.value, 'D'),
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- value= pretrained(sr2.value, 'D')[0] if len(pretrained(sr2.value, 'G')) > 0 else '',
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- visible=True,
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- interactive=True
357
- )
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- with gr.Row():
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- download_model = gr.Button('5.Download Model')
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- with gr.Row():
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- model_files = gr.Files(label='Your Model and Index file can be downloaded here:')
362
- download_model.click(
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- fn=lambda name: os.listdir(f'assets/weights/{name}') + glob.glob(f'logs/{name.split(".")[0]}/added_*.index'),
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- inputs=[training_name],
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- outputs=[model_files, info3])
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- with gr.Row():
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- sr2.change(
368
- change_sr2,
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- [sr2, if_f0_3, version19],
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- [pretrained_G14, pretrained_D15],
371
- )
372
- version19.change(
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- change_version19,
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- [sr2, if_f0_3, version19],
375
- [pretrained_G14, pretrained_D15, sr2],
376
- )
377
- if_f0_3.change(
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- change_f0,
379
- [if_f0_3, sr2, version19],
380
- [f0method8, pretrained_G14, pretrained_D15],
381
- )
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- with gr.Row():
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- but5 = gr.Button("1 Click Training", variant="primary", visible=False)
384
- but3.click(
385
- click_train,
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- [
387
- training_name,
388
- sr2,
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- if_f0_3,
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- spk_id5,
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- save_epoch10,
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- total_epoch11,
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- batch_size12,
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- if_save_latest13,
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- pretrained_G14,
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- pretrained_D15,
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- gpus16,
398
- if_cache_gpu17,
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- if_save_every_weights18,
400
- version19,
401
- ],
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- info3,
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- api_name="train_start",
404
- )
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- but4.click(train_index, [training_name, version19], info3)
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- but5.click(
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- train1key,
408
- [
409
- training_name,
410
- sr2,
411
- if_f0_3,
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- dataset_folder,
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- spk_id5,
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- np7,
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- f0method8,
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- save_epoch10,
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- total_epoch11,
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- batch_size12,
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- if_save_latest13,
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- pretrained_G14,
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- pretrained_D15,
422
- gpus16,
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- if_cache_gpu17,
424
- if_save_every_weights18,
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- version19,
426
- gpus_rmvpe,
427
- ],
428
- info3,
429
- api_name="train_start_all",
430
- )
431
-
432
- if config.iscolab:
433
- app.queue(concurrency_count=511, max_size=1022).launch(share=True)
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- else:
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- app.queue(concurrency_count=511, max_size=1022).launch(
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- server_name="0.0.0.0",
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- inbrowser=not config.noautoopen,
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- server_port=config.listen_port,
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- quiet=True,
440
- )