| import spaces |
| from kokoro import KModel, KPipeline |
| import gradio as gr |
| import os |
| import random |
| import torch |
|
|
| IS_DUPLICATE = not os.getenv('SPACE_ID', '').startswith('hexgrad/') |
| CHAR_LIMIT = None if IS_DUPLICATE else 5000 |
|
|
| CUDA_AVAILABLE = torch.cuda.is_available() |
| models = {gpu: KModel().to('cuda' if gpu else 'cpu').eval() for gpu in [False] + ([True] if CUDA_AVAILABLE else [])} |
| pipelines = {lang_code: KPipeline(lang_code=lang_code, model=False) for lang_code in 'ab'} |
| pipelines['a'].g2p.lexicon.golds['kokoro'] = 'kΛOkΙΙΉO' |
| pipelines['b'].g2p.lexicon.golds['kokoro'] = 'kΛQkΙΙΉQ' |
|
|
| @spaces.GPU(duration=30) |
| def forward_gpu(ps, ref_s, speed): |
| return models[True](ps, ref_s, speed) |
|
|
| def generate_first(text, voice='af_heart', speed=1, use_gpu=CUDA_AVAILABLE): |
| text = text if CHAR_LIMIT is None else text.strip()[:CHAR_LIMIT] |
| pipeline = pipelines[voice[0]] |
| pack = pipeline.load_voice(voice) |
| use_gpu = use_gpu and CUDA_AVAILABLE |
| for _, ps, _ in pipeline(text, voice, speed): |
| ref_s = pack[len(ps)-1] |
| try: |
| if use_gpu: |
| audio = forward_gpu(ps, ref_s, speed) |
| else: |
| audio = models[False](ps, ref_s, speed) |
| except gr.exceptions.Error as e: |
| if use_gpu: |
| gr.Warning(str(e)) |
| gr.Info('Retrying with CPU. To avoid this error, change Hardware to CPU.') |
| audio = models[False](ps, ref_s, speed) |
| else: |
| raise gr.Error(e) |
| return (24000, audio.numpy()), ps |
| return None, '' |
|
|
| |
| def predict(text, voice='af_heart', speed=1): |
| return generate_first(text, voice, speed, use_gpu=False)[0] |
|
|
| def tokenize_first(text, voice='af_heart'): |
| pipeline = pipelines[voice[0]] |
| for _, ps, _ in pipeline(text, voice): |
| return ps |
| return '' |
|
|
| def generate_all(text, voice='af_heart', speed=1, use_gpu=CUDA_AVAILABLE): |
| text = text if CHAR_LIMIT is None else text.strip()[:CHAR_LIMIT] |
| pipeline = pipelines[voice[0]] |
| pack = pipeline.load_voice(voice) |
| use_gpu = use_gpu and CUDA_AVAILABLE |
| first = True |
| for _, ps, _ in pipeline(text, voice, speed): |
| ref_s = pack[len(ps)-1] |
| try: |
| if use_gpu: |
| audio = forward_gpu(ps, ref_s, speed) |
| else: |
| audio = models[False](ps, ref_s, speed) |
| except gr.exceptions.Error as e: |
| if use_gpu: |
| gr.Warning(str(e)) |
| gr.Info('Switching to CPU') |
| audio = models[False](ps, ref_s, speed) |
| else: |
| raise gr.Error(e) |
| yield 24000, audio.numpy() |
| if first: |
| first = False |
| yield 24000, torch.zeros(1).numpy() |
|
|
| with open('en.txt', 'r') as r: |
| random_quotes = [line.strip() for line in r] |
|
|
| def get_random_quote(): |
| return random.choice(random_quotes) |
|
|
| def get_gatsby(): |
| with open('gatsby5k.md', 'r') as r: |
| return r.read().strip() |
|
|
| def get_frankenstein(): |
| with open('frankenstein5k.md', 'r') as r: |
| return r.read().strip() |
|
|
| CHOICES = { |
| 'πΊπΈ πΊ Heart β€οΈ': 'af_heart', |
| 'πΊπΈ πΊ Bella π₯': 'af_bella', |
| 'πΊπΈ πΊ Nicole π§': 'af_nicole', |
| 'πΊπΈ πΊ Aoede': 'af_aoede', |
| 'πΊπΈ πΊ Kore': 'af_kore', |
| 'πΊπΈ πΊ Sarah': 'af_sarah', |
| 'πΊπΈ πΊ Nova': 'af_nova', |
| 'πΊπΈ πΊ Sky': 'af_sky', |
| 'πΊπΈ πΊ Alloy': 'af_alloy', |
| 'πΊπΈ πΊ Jessica': 'af_jessica', |
| 'πΊπΈ πΊ River': 'af_river', |
| 'πΊπΈ πΉ Michael': 'am_michael', |
| 'πΊπΈ πΉ Fenrir': 'am_fenrir', |
| 'πΊπΈ πΉ Puck': 'am_puck', |
| 'πΊπΈ πΉ Echo': 'am_echo', |
| 'πΊπΈ πΉ Eric': 'am_eric', |
| 'πΊπΈ πΉ Liam': 'am_liam', |
| 'πΊπΈ πΉ Onyx': 'am_onyx', |
| 'πΊπΈ πΉ Santa': 'am_santa', |
| 'πΊπΈ πΉ Adam': 'am_adam', |
| 'π¬π§ πΊ Emma': 'bf_emma', |
| 'π¬π§ πΊ Isabella': 'bf_isabella', |
| 'π¬π§ πΊ Alice': 'bf_alice', |
| 'π¬π§ πΊ Lily': 'bf_lily', |
| 'π¬π§ πΉ George': 'bm_george', |
| 'π¬π§ πΉ Fable': 'bm_fable', |
| 'π¬π§ πΉ Lewis': 'bm_lewis', |
| 'π¬π§ πΉ Daniel': 'bm_daniel', |
| } |
| for v in CHOICES.values(): |
| pipelines[v[0]].load_voice(v) |
|
|
| TOKEN_NOTE = ''' |
| π‘ Customize pronunciation with Markdown link syntax and /slashes/ like `[Kokoro](/kΛOkΙΙΉO/)` |
| π¬ To adjust intonation, try punctuation `;:,.!?ββ¦"()ββ` or stress `Λ` and `Λ` |
| β¬οΈ Lower stress `[1 level](-1)` or `[2 levels](-2)` |
| β¬οΈ Raise stress 1 level `[or](+2)` 2 levels (only works on less stressed, usually short words) |
| ''' |
|
|
| with gr.Blocks() as generate_tab: |
| out_audio = gr.Audio(label='Output Audio', interactive=False, streaming=False, autoplay=True) |
| generate_btn = gr.Button('Generate', variant='primary') |
| with gr.Accordion('Output Tokens', open=True): |
| out_ps = gr.Textbox(interactive=False, show_label=False, info='Tokens used to generate the audio, up to 510 context length.') |
| tokenize_btn = gr.Button('Tokenize', variant='secondary') |
| gr.Markdown(TOKEN_NOTE) |
| predict_btn = gr.Button('Predict', variant='secondary', visible=False) |
|
|
| STREAM_NOTE = ['β οΈ There is an unknown Gradio bug that might yield no audio the first time you click `Stream`.'] |
| if CHAR_LIMIT is not None: |
| STREAM_NOTE.append(f'βοΈ Each stream is capped at {CHAR_LIMIT} characters.') |
| STREAM_NOTE.append('π Want more characters? You can [use Kokoro directly](https://huggingface.co/hexgrad/Kokoro-82M#usage) or duplicate this space:') |
| STREAM_NOTE = '\n\n'.join(STREAM_NOTE) |
|
|
| with gr.Blocks() as stream_tab: |
| out_stream = gr.Audio(label='Output Audio Stream', interactive=False, streaming=True, autoplay=True) |
| with gr.Row(): |
| stream_btn = gr.Button('Stream', variant='primary') |
| stop_btn = gr.Button('Stop', variant='stop') |
| with gr.Accordion('Note', open=True): |
| gr.Markdown(STREAM_NOTE) |
| gr.DuplicateButton() |
|
|
| BANNER_TEXT = ''' |
| [***Kokoro*** **is an open-weight TTS model with 82 million parameters.**](https://huggingface.co/hexgrad/Kokoro-82M) |
| As of January 31st, 2025, Kokoro was the most-liked [**TTS model**](https://huggingface.co/models?pipeline_tag=text-to-speech&sort=likes) and the most-liked [**TTS space**](https://huggingface.co/spaces?sort=likes&search=tts) on Hugging Face. |
| This demo only showcases English, but you can directly use the model to access other languages. |
| ''' |
| API_OPEN = os.getenv('SPACE_ID') != 'hexgrad/Kokoro-TTS' |
| API_NAME = None if API_OPEN else False |
| with gr.Blocks() as app: |
| with gr.Row(): |
| gr.Markdown(BANNER_TEXT, container=True) |
| with gr.Row(): |
| with gr.Column(): |
| text = gr.Textbox(label='Input Text', info=f"Up to ~500 characters per Generate, or {'β' if CHAR_LIMIT is None else CHAR_LIMIT} characters per Stream") |
| with gr.Row(): |
| voice = gr.Dropdown(list(CHOICES.items()), value='af_heart', label='Voice', info='Quality and availability vary by language') |
| use_gpu = gr.Dropdown( |
| [('ZeroGPU π', True), ('CPU π', False)], |
| value=CUDA_AVAILABLE, |
| label='Hardware', |
| info='GPU is usually faster, but has a usage quota', |
| interactive=CUDA_AVAILABLE |
| ) |
| speed = gr.Slider(minimum=0.5, maximum=2, value=1, step=0.1, label='Speed') |
| random_btn = gr.Button('π² Random Quote π¬', variant='secondary') |
| with gr.Row(): |
| gatsby_btn = gr.Button('π₯ Gatsby π', variant='secondary') |
| frankenstein_btn = gr.Button('π Frankenstein π', variant='secondary') |
| with gr.Column(): |
| gr.TabbedInterface([generate_tab, stream_tab], ['Generate', 'Stream']) |
| random_btn.click(fn=get_random_quote, inputs=[], outputs=[text], api_name=API_NAME) |
| gatsby_btn.click(fn=get_gatsby, inputs=[], outputs=[text], api_name=API_NAME) |
| frankenstein_btn.click(fn=get_frankenstein, inputs=[], outputs=[text], api_name=API_NAME) |
| generate_btn.click(fn=generate_first, inputs=[text, voice, speed, use_gpu], outputs=[out_audio, out_ps], api_name=API_NAME) |
| tokenize_btn.click(fn=tokenize_first, inputs=[text, voice], outputs=[out_ps], api_name=API_NAME) |
| stream_event = stream_btn.click(fn=generate_all, inputs=[text, voice, speed, use_gpu], outputs=[out_stream], api_name=API_NAME) |
| stop_btn.click(fn=None, cancels=stream_event) |
| predict_btn.click(fn=predict, inputs=[text, voice, speed], outputs=[out_audio], api_name=API_NAME) |
|
|
| if __name__ == '__main__': |
| app.queue(api_open=API_OPEN).launch(show_api=API_OPEN, ssr_mode=True) |