Chatterbox is a family of three state-of-the-art, open-source text-to-speech models by Resemble AI.
We are excited to introduce Chatterbox-Turbo, our most efficient model yet. Built on a streamlined 350M parameter architecture, Turbo delivers high-quality speech with less compute and VRAM than our previous models. We have also distilled the speech-token-to-mel decoder, previously a bottleneck, reducing generation from 10 steps to just one, while retaining high-fidelity audio output.
Paralinguistic tags are now native to the Turbo model, allowing you to use [cough], [laugh], [chuckle], and more to add distinct realism. While Turbo was built primarily for low-latency voice agents, it excels at narration and creative workflows.
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.
⚡ Model Zoo
Choose the right model for your application.
Model
Size
Languages
Key Features
Best For
🤗
Examples
Chatterbox-Turbo
350M
English
Paralinguistic Tags ([laugh]), Lower Compute and VRAM
We developed and tested Chatterbox on Python 3.11 on Debian 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
Chatterbox-Turbo
import torchaudio as ta
import torch
from chatterbox.tts_turbo import ChatterboxTurboTTS
# Load the Turbo model
model = ChatterboxTurboTTS.from_pretrained(device="cuda")
# Generate with Paralinguistic Tags
text = "Hi there, Sarah here from MochaFone calling you back [chuckle], have you got one minute to chat about the billing issue?"
# Generate audio (requires a reference clip for voice cloning)
wav = model.generate(text, audio_prompt_path="your_10s_ref_clip.wav")
ta.save("test-turbo.wav", wav, model.sr)
Chatterbox and Chatterbox-Multilingual
import torchaudio as ta
from chatterbox.tts import ChatterboxTTS
from chatterbox.mtl_tts import ChatterboxMultilingualTTS
# English example
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-english.wav", wav, model.sr)
# Multilingual examples
multilingual_model = ChatterboxMultilingualTTS.from_pretrained(device=device)
french_text = "Bonjour, comment ça va? Ceci est le modèle de synthèse vocale multilingue Chatterbox, il prend en charge 23 langues."
wav_french = multilingual_model.generate(spanish_text, language_id="fr")
ta.save("test-french.wav", wav_french, model.sr)
chinese_text = "你好,今天天气真不错,希望你有一个愉快的周末。"
wav_chinese = multilingual_model.generate(chinese_text, language_id="zh")
ta.save("test-chinese.wav", wav_chinese, model.sr)
# If you want to synthesize with a different voice, specify the audio prompt
AUDIO_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.
Supported Languages
Arabic (ar) • Danish (da) • German (de) • Greek (el) • English (en) • Spanish (es) • Finnish (fi) • French (fr) • Hebrew (he) • Hindi (hi) • Italian (it) • Japanese (ja) • Korean (ko) • Malay (ms) • Dutch (nl) • Norwegian (no) • Polish (pl) • Portuguese (pt) • Russian (ru) • Swedish (sv) • Swahili (sw) • Turkish (tr) • Chinese (zh)
Original Chatterbox Tips
General Use (TTS and Voice Agents):
Ensure that the reference clip matches the specified language tag. Otherwise, language transfer outputs may inherit the accent of the reference clip’s language. To mitigate this, set cfg_weight to 0.
The default settings (exaggeration=0.5, cfg_weight=0.5) work well for most prompts across all languages.
If the reference speaker has a fast speaking style, lowering cfg_weight to around 0.3 can improve pacing.
Expressive or Dramatic Speech:
Try lower cfg_weight values (e.g. ~0.3) and increase exaggeration to around 0.7 or higher.
Higher exaggeration tends to speed up speech; reducing cfg_weight helps compensate with slower, more deliberate pacing.
Built-in PerTh Watermarking for Responsible AI
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 audio
watermarked_audio, sr = librosa.load(AUDIO_PATH, sr=None)
# Initialize watermarker (same as used for embedding)
watermarker = perth.PerthImplicitWatermarker()
# Extract watermark
watermark = watermarker.get_watermark(watermarked_audio, sample_rate=sr)
print(f"Extracted watermark: {watermark}")
# Output: 0.0 (no watermark) or 1.0 (watermarked)
Official Discord
👋 Join us on Discord and let’s build something awesome together!
Chatterbox TTS
_Made with ♥️ by
Chatterbox is a family of three state-of-the-art, open-source text-to-speech models by Resemble AI.
We are excited to introduce Chatterbox-Turbo, our most efficient model yet. Built on a streamlined 350M parameter architecture, Turbo delivers high-quality speech with less compute and VRAM than our previous models. We have also distilled the speech-token-to-mel decoder, previously a bottleneck, reducing generation from 10 steps to just one, while retaining high-fidelity audio output.
Paralinguistic tags are now native to the Turbo model, allowing you to use
[cough],[laugh],[chuckle], and more to add distinct realism. While Turbo was built primarily for low-latency voice agents, it excels at narration and creative workflows.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.
⚡ Model Zoo
Choose the right model for your application.
[laugh]), Lower Compute and VRAMInstallation
Alternatively, you can install from source:
We developed and tested Chatterbox on Python 3.11 on Debian 11 OS; the versions of the dependencies are pinned in
pyproject.tomlto ensure consistency. You can modify the code or dependencies in this installation mode.Usage
Chatterbox-Turbo
Chatterbox and Chatterbox-Multilingual
See
example_tts.pyandexample_vc.pyfor more examples.Supported Languages
Arabic (ar) • Danish (da) • German (de) • Greek (el) • English (en) • Spanish (es) • Finnish (fi) • French (fr) • Hebrew (he) • Hindi (hi) • Italian (it) • Japanese (ja) • Korean (ko) • Malay (ms) • Dutch (nl) • Norwegian (no) • Polish (pl) • Portuguese (pt) • Russian (ru) • Swedish (sv) • Swahili (sw) • Turkish (tr) • Chinese (zh)
Original Chatterbox Tips
General Use (TTS and Voice Agents):
cfg_weightto0.exaggeration=0.5,cfg_weight=0.5) work well for most prompts across all languages.cfg_weightto around0.3can improve pacing.Expressive or Dramatic Speech:
cfg_weightvalues (e.g.~0.3) and increaseexaggerationto around0.7or higher.exaggerationtends to speed up speech; reducingcfg_weighthelps compensate with slower, more deliberate pacing.Built-in PerTh Watermarking for Responsible AI
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.
Official Discord
👋 Join us on Discord and let’s build something awesome together!
Acknowledgements
Citation
If you find this model useful, please consider citing.
Disclaimer
Don’t use this model to do bad things. Prompts are sourced from freely available data on the internet.