license: apache-2.0
language:
- en
- hi
library_name: onnxruntime-genai
tags:
- text-to-speech
- tts
- hindi
- english
- llama
- audio
- speech
- india
- int4
- onnx
- onnxruntime
- onnxruntime-genai
datasets:
- proprietary
base_model_relation: quantized
pipeline_tag: text-to-speech
base_model: maya-research/Veena
co2_eq_emissions:
emissions: 0
source: Not specified
training_type: unknown
geographical_location: unknown
Veena - Text to Speech for Indian Languages
Veena is a state-of-the-art neural text-to-speech (TTS) model specifically designed for Indian languages, developed by Maya Research. Built on a Llama architecture backbone, Veena generates natural, expressive speech in Hindi and English with remarkable quality and ultra-low latency.
Model Overview
Veena is a 3B parameter autoregressive transformer model based on the Llama architecture. It is designed to synthesize high-quality speech from text in Hindi and English, including code-mixed scenarios. The model outputs audio at a 24kHz sampling rate using the SNAC neural codec.
- Model type: Autoregressive Transformer
- Base Architecture: Llama (3B parameters)
- Languages: Hindi, English
- Audio Codec: SNAC @ 24kHz
- License: Apache 2.0
- Developed by: Maya Research
- Model URL: https://huggingface.co/maya-research/veena
Key Features
- 4 Distinct Voices:
kavya,agastya,maitri, andvinaya- each with unique vocal characteristics. - Multilingual Support: Native Hindi and English capabilities with code-mixed support.
- Ultra-Fast Inference: Sub-80ms latency on H100-80GB GPUs.
- High-Quality Audio: 24kHz output with the SNAC neural codec.
- Production-Ready: Optimized for real-world deployment with 4-bit quantization support.
How to Get Started with the Model
Installation
To use Veena, you need to install the transformers, torch, torchaudio, snac, and bitsandbytes libraries.
pip install transformers torch torchaudio
pip install snac bitsandbytes # For audio decoding and quantization
Basic Usage
The following Python code demonstrates how to generate speech from text using Veena with 4-bit quantization for efficient inference.
Uses
Veena is ideal for a wide range of applications requiring high-quality, low-latency speech synthesis for Indian languages, including:
- Accessibility: Screen readers and voice-enabled assistance for visually impaired users.
- Customer Service: IVR systems, voice bots, and automated announcements.
- Content Creation: Dubbing for videos, e-learning materials, and audiobooks.
- Automotive: In-car navigation and infotainment systems.
- Edge Devices: Voice-enabled smart devices and IoT applications.
Technical Specifications
Architecture
Veena leverages a 3B parameter transformer-based architecture with several key innovations:
- Base Architecture: Llama-style autoregressive transformer (3B parameters)
- Audio Codec: SNAC (24kHz) for high-quality audio token generation
- Speaker Conditioning: Special speaker tokens (
<spk_kavya>,<spk_agastya>,<spk_maitri>,<spk_vinaya>) - Parameter-Efficient Training: LoRA adaptation with differentiated ranks for attention and FFN modules.
- Context Length: 2048 tokens
Training
Training Infrastructure
- Hardware: 8× NVIDIA H100 80GB GPUs
- Distributed Training: DDP with optimized communication
- Precision: BF16 mixed precision training with gradient checkpointing
- Memory Optimization: 4-bit quantization with NF4 + double quantization
Training Configuration
- LoRA Configuration:
lora_rank_attention: 192lora_rank_ffn: 96lora_alpha: 2× rank (384 for attention, 192 for FFN)lora_dropout: 0.05target_modules:["q_proj", "k_proj", "v_proj", "o_proj", "gate_proj", "up_proj", "down_proj"]modules_to_save:["embed_tokens"]
- Optimizer Configuration:
optimizer: AdamW (8-bit)optimizer_betas: (0.9, 0.98)optimizer_eps: 1e-5learning_rate_peak: 1e-4lr_scheduler: cosinewarmup_ratio: 0.02
- Batch Configuration:
micro_batch_size: 8gradient_accumulation_steps: 4effective_batch_size: 256
Training Data
Veena was trained on proprietary, high-quality datasets specifically curated for Indian language TTS.
- Data Volume: 15,000+ utterances per speaker (60,000+ total)
- Languages: Native Hindi and English utterances with code-mixed support
- Speaker Diversity: 4 professional voice artists with distinct characteristics
- Audio Quality: Studio-grade recordings at 24kHz sampling rate
- Content Diversity: Conversational, narrative, expressive, and informational styles
Note: The training datasets are proprietary and not publicly available.
Performance Benchmarks
| Metric | Value |
|---|---|
| Latency (H100-80GB) | <80ms |
| Latency (A100-40GB) | ~120ms |
| Latency (RTX 4090) | ~200ms |
| Real-time Factor | 0.05x |
| Throughput | ~170k tokens/s (8×H100) |
| Audio Quality (MOS) | 4.2/5.0 |
| Speaker Similarity | 92% |
| Intelligibility | 98% |
Risks, Limitations and Biases
- Language Support: Currently supports only Hindi and English. Performance on other Indian languages is not guaranteed.
- Speaker Diversity: Limited to 4 speaker voices, which may not represent the full diversity of Indian accents and dialects.
- Hardware Requirements: Requires a GPU for real-time or near-real-time inference. CPU performance will be significantly slower.
- Input Length: The model is limited to a maximum input length of 2048 tokens.
- Bias: The model's performance and voice characteristics are a reflection of the proprietary training data. It may exhibit biases present in the data.
Future Updates
We are actively working on expanding Veena's capabilities:
- Support for Tamil, Telugu, Bengali, Marathi, and other Indian languages.
- Additional speaker voices with regional accents.
- Emotion and prosody control tokens.
- Streaming inference support.
- CPU optimization for edge deployment.
Citing
If you use Veena in your research or applications, please cite:
@misc{veena2025,
title={Veena: Open Source Text-to-Speech for Indian Languages},
author={Maya Research Team},
year={2025},
publisher={HuggingFace},
url={[https://huggingface.co/maya-research/veena-tts](https://huggingface.co/maya-research/veena-tts)}
}
Acknowledgments
We thank the open-source community and all contributors who made this project possible. Special thanks to the voice artists who provided high-quality recordings for training.