We're excited to introduce Chatterbox, Resemble AI's first production-grade open source TTS model. Licensed under MIT, Chatterbox has been benchmarked against leading closed-source systems like ElevenLabs, and is consistently preferred in side-by-side evaluations.
Whether you're working on memes, videos, games, or AI agents, Chatterbox brings your content to life. It's also the first open source TTS model to support emotion exaggeration control, a powerful feature that makes your voices stand out. Try it now on our Hugging Face Gradio app.
If you like the model but need to scale or tune it for higher accuracy, check out our competitively priced TTS service (link). It delivers reliable performance with ultra-low latency of sub 200ms—ideal for production use in agents, applications, or interactive media.
We developed and tested Chatterbox on Python 3.11 on Debain 11 OS; the versions of the dependencies are pinned in pyproject.toml to ensure consistency. You can modify the code or dependencies in this installation mode.
Usage
import torchaudio as ta
from chatterbox.tts import ChatterboxTTS
model = ChatterboxTTS.from_pretrained(device="cuda")text ="Ezreal and Jinx teamed up with Ahri, Yasuo, and Teemo to take down the enemy's Nexus in an epic late-game pentakill."wav = model.generate(text)ta.save("test-1.wav", wav, model.sr)# If you want to synthesize with a different voice, specify the audio promptAUDIO_PROMPT_PATH ="YOUR_FILE.wav"wav = model.generate(text, audio_prompt_path=AUDIO_PROMPT_PATH)ta.save("test-2.wav", wav, model.sr)
See example_tts.py and example_vc.py for more examples.
Every audio file generated by Chatterbox includes Resemble AI's Perth (Perceptual Threshold) Watermarker - imperceptible neural watermarks that survive MP3 compression, audio editing, and common manipulations while maintaining nearly 100% detection accuracy.
Watermark extraction
You can look for the watermark using the following script.
import perth
import librosa
AUDIO_PATH ="YOUR_FILE.wav"# Load the watermarked audiowatermarked_audio, sr = librosa.load(AUDIO_PATH, sr=None)# Initialize watermarker (same as used for embedding)watermarker = perth.PerthImplicitWatermarker()# Extract watermarkwatermark = watermarker.get_watermark(watermarked_audio, sample_rate=sr)print(f"Extracted watermark: {watermark}")# Output: 0.0 (no watermark) or 1.0 (watermarked)
Official Discord
đź‘‹ Join us on Discord and let's build something awesome together!
Disclaimer
Don't use this model to do bad things. Prompts are sourced from freely available data on the internet.