# Amphion Text-to-Speech (TTS) Recipe ## Quick Start We provide a **[beginner recipe](VALLE/)** to demonstrate how to train a cutting edge TTS model. Specifically, it is Amphion's re-implementation for [Vall-E](https://arxiv.org/abs/2301.02111), which is a zero-shot TTS architecture that uses a neural codec language model with discrete codes. ## Supported Model Architectures Until now, Amphion TTS supports the following models or architectures, - **[FastSpeech2](FastSpeech2)**: A non-autoregressive TTS architecture that utilizes feed-forward Transformer blocks. - **[VITS](VITS)**: An end-to-end TTS architecture that utilizes conditional variational autoencoder with adversarial learning - **[Vall-E](VALLE)**: A zero-shot TTS architecture that uses a neural codec language model with discrete codes. - **[NaturalSpeech2](NaturalSpeech2)** (👨‍💻 developing): An architecture for TTS that utilizes a latent diffusion model to generate natural-sounding voices. ## Amphion TTS Demo Here are some [TTS samples](https://openhlt.github.io/Amphion_TTS_Demo/) from Amphion (👨‍💻 developing).