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+//! Qwen3-TTS — Pure Rust implementation using candle.
+//!
+//! Implements Qwen3-TTS-12Hz-0.6B-Base for text-to-speech synthesis
+//! with voice cloning support. No Python, no ONNX — pure Rust inference
+//! via the candle ML framework.
+//!
+//! # Architecture
+//!
+//! The model has three components:
+//! - **Language Model** (28-layer transformer): generates zeroth codebook tokens
+//! - **Code Predictor** (5-layer MTP): predicts remaining 15 codebook layers
+//! - **Speech Tokenizer** (ConvNet codec): encodes/decodes audio ↔ codes
+//!
+//! # Usage
+//!
+//! ```rust,no_run
+//! use makima::tts::qwen3::Qwen3Tts;
+//! use candle_core::Device;
+//!
+//! let device = Device::Cpu;
+//! let tts = Qwen3Tts::from_pretrained(None, &device).unwrap();
+//! // Use via TtsEngine trait or direct API
+//! ```
+
+pub mod code_predictor;
+pub mod config;
+pub mod generate;
+pub mod model;
+pub mod speech_tokenizer;
+
+use std::path::{Path, PathBuf};
+use std::sync::atomic::{AtomicBool, Ordering};
+
+use candle_core::{DType, Device};
+use candle_nn::VarBuilder;
+use hf_hub::api::sync::Api;
+use tokenizers::Tokenizer;
+
+use self::code_predictor::CodePredictor;
+use self::config::Qwen3TtsConfig;
+use self::generate::{GenerationConfig, GenerationContext};
+use self::model::Qwen3Model;
+use self::speech_tokenizer::SpeechTokenizer;
+use crate::tts::{AudioChunk, TtsEngine, TtsError, SAMPLE_RATE};
+
+/// HuggingFace model IDs.
+const LM_MODEL_ID: &str = "Qwen/Qwen3-TTS-12Hz-0.6B-Base";
+const TOKENIZER_MODEL_ID: &str = "Qwen/Qwen3-TTS-Tokenizer-12Hz";
+const DEFAULT_MODEL_DIR: &str = "models/qwen3-tts";
+
+/// Qwen3-TTS engine — pure Rust candle-based inference.
+pub struct Qwen3Tts {
+ /// The 28-layer language model.
+ model: Qwen3Model,
+ /// Multi-token prediction code predictor.
+ code_predictor: CodePredictor,
+ /// Speech tokenizer (encoder + decoder + RVQ).
+ speech_tokenizer: SpeechTokenizer,
+ /// Text tokenizer.
+ tokenizer: Tokenizer,
+ /// Model configuration.
+ config: Qwen3TtsConfig,
+ /// Compute device (CPU/CUDA/Metal).
+ device: Device,
+ /// Whether the model is fully loaded and ready.
+ ready: AtomicBool,
+}
+
+// SAFETY: All fields are either Send+Sync or behind appropriate synchronization.
+// candle tensors are Send+Sync, Tokenizer is Send+Sync, AtomicBool is Send+Sync.
+unsafe impl Send for Qwen3Tts {}
+unsafe impl Sync for Qwen3Tts {}
+
+impl Qwen3Tts {
+ /// Load from a local directory or download from HuggingFace.
+ pub fn from_pretrained(
+ model_dir: Option<&str>,
+ device: &Device,
+ ) -> Result<Self, TtsError> {
+ let model_path = PathBuf::from(model_dir.unwrap_or(DEFAULT_MODEL_DIR));
+
+ if !model_path.exists() {
+ Self::download_models(&model_path)?;
+ }
+
+ Self::load_from_path(&model_path, device)
+ }
+
+ /// Load all model components from a local directory.
+ pub fn load_from_path(model_dir: &Path, device: &Device) -> Result<Self, TtsError> {
+ let dtype = DType::F32; // Use F32 for CPU; BF16/F16 for GPU
+
+ // Load configuration
+ let config_path = model_dir.join("config.json");
+ let config = if config_path.exists() {
+ Qwen3TtsConfig::from_json_path(&config_path)?
+ } else {
+ Qwen3TtsConfig::default()
+ };
+
+ // Load text tokenizer
+ let tokenizer_path = model_dir.join("tokenizer.json");
+ let tokenizer = Tokenizer::from_file(&tokenizer_path)
+ .map_err(|e| TtsError::Tokenizer(format!("failed to load tokenizer: {e}")))?;
+
+ // Load LM weights from safetensors
+ let lm_weights_path = model_dir.join("model.safetensors");
+ let lm_data = std::fs::read(&lm_weights_path).map_err(|e| {
+ TtsError::ModelLoad(format!(
+ "failed to read LM weights from {}: {e}",
+ lm_weights_path.display()
+ ))
+ })?;
+ let lm_vb = VarBuilder::from_buffered_safetensors(
+ lm_data,
+ dtype,
+ device,
+ ).map_err(|e| TtsError::ModelLoad(format!("failed to create LM VarBuilder: {e}")))?;
+
+ // Build language model
+ let model = Qwen3Model::new(&config.lm, lm_vb.clone()).map_err(|e| {
+ TtsError::ModelLoad(format!("failed to build LM model: {e}"))
+ })?;
+
+ // Build code predictor (weights are in the same safetensors file)
+ let code_predictor =
+ CodePredictor::new(&config.code_predictor, &config.lm, lm_vb).map_err(|e| {
+ TtsError::ModelLoad(format!("failed to build code predictor: {e}"))
+ })?;
+
+ // Load speech tokenizer from separate safetensors
+ let st_weights_path = model_dir.join("speech_tokenizer.safetensors");
+ let st_data = std::fs::read(&st_weights_path).map_err(|e| {
+ TtsError::ModelLoad(format!(
+ "failed to read speech tokenizer weights from {}: {e}",
+ st_weights_path.display()
+ ))
+ })?;
+ let st_vb = VarBuilder::from_buffered_safetensors(
+ st_data,
+ dtype,
+ device,
+ ).map_err(|e| {
+ TtsError::ModelLoad(format!(
+ "failed to create speech tokenizer VarBuilder: {e}"
+ ))
+ })?;
+
+ let speech_tokenizer =
+ SpeechTokenizer::new(&config.speech_tokenizer, st_vb, device).map_err(|e| {
+ TtsError::ModelLoad(format!("failed to build speech tokenizer: {e}"))
+ })?;
+
+ Ok(Self {
+ model,
+ code_predictor,
+ speech_tokenizer,
+ tokenizer,
+ config,
+ device: device.clone(),
+ ready: AtomicBool::new(true),
+ })
+ }
+
+ /// Generate audio from text with optional voice reference.
+ pub fn generate_speech(
+ &self,
+ text: &str,
+ reference_audio: Option<&[f32]>,
+ gen_config: Option<GenerationConfig>,
+ ) -> Result<Vec<AudioChunk>, TtsError> {
+ let config = gen_config.unwrap_or_default();
+
+ let ctx = GenerationContext::new(
+ &self.model,
+ &self.code_predictor,
+ &self.speech_tokenizer,
+ &self.tokenizer,
+ &self.device,
+ config,
+ );
+
+ ctx.generate(text, reference_audio)
+ }
+
+ /// Download model files from HuggingFace Hub.
+ fn download_models(target_dir: &Path) -> Result<(), TtsError> {
+ std::fs::create_dir_all(target_dir)?;
+
+ let api = Api::new().map_err(|e| TtsError::ModelLoad(e.to_string()))?;
+
+ // Download LM model files
+ println!("Downloading Qwen3-TTS language model...");
+ let lm_repo = api.model(LM_MODEL_ID.to_string());
+
+ let lm_files = [
+ "model.safetensors",
+ "config.json",
+ "tokenizer.json",
+ "tokenizer_config.json",
+ ];
+
+ for file in &lm_files {
+ println!(" Downloading {file}...");
+ let downloaded = lm_repo
+ .get(file)
+ .map_err(|e| TtsError::ModelLoad(format!("failed to download {file}: {e}")))?;
+
+ let target = target_dir.join(file);
+ if !target.exists() {
+ std::fs::copy(&downloaded, &target)?;
+ }
+ }
+
+ // Download speech tokenizer
+ println!("Downloading Qwen3-TTS speech tokenizer...");
+ let st_repo = api.model(TOKENIZER_MODEL_ID.to_string());
+
+ let st_file = "model.safetensors";
+ let downloaded = st_repo
+ .get(st_file)
+ .map_err(|e| {
+ TtsError::ModelLoad(format!("failed to download speech tokenizer: {e}"))
+ })?;
+
+ let target = target_dir.join("speech_tokenizer.safetensors");
+ if !target.exists() {
+ std::fs::copy(&downloaded, &target)?;
+ }
+
+ println!("All models downloaded to {}", target_dir.display());
+ Ok(())
+ }
+
+ /// Get the model configuration.
+ pub fn config(&self) -> &Qwen3TtsConfig {
+ &self.config
+ }
+
+ /// Get the compute device.
+ pub fn device(&self) -> &Device {
+ &self.device
+ }
+}
+
+#[async_trait::async_trait]
+impl TtsEngine for Qwen3Tts {
+ async fn generate(
+ &self,
+ text: &str,
+ reference_audio: Option<&[f32]>,
+ _reference_sample_rate: Option<u32>,
+ ) -> Result<Vec<AudioChunk>, TtsError> {
+ // Note: reference audio should already be resampled to 24kHz
+ // by the caller. If a different sample rate is provided,
+ // the caller should resample using `resample_to_24k()`.
+ self.generate_speech(text, reference_audio, None)
+ }
+
+ fn is_ready(&self) -> bool {
+ self.ready.load(Ordering::Relaxed)
+ }
+
+ fn sample_rate(&self) -> u32 {
+ SAMPLE_RATE
+ }
+}
+
+#[cfg(test)]
+mod tests {
+ use super::*;
+
+ #[test]
+ fn test_default_config() {
+ let config = Qwen3TtsConfig::default();
+ assert_eq!(config.lm.hidden_size, 1024);
+ assert_eq!(config.lm.num_hidden_layers, 28);
+ assert_eq!(config.code_predictor.num_code_groups, 16);
+ assert_eq!(config.speech_tokenizer.sample_rate, 24_000);
+ }
+
+ #[test]
+ fn test_model_ids() {
+ assert_eq!(LM_MODEL_ID, "Qwen/Qwen3-TTS-12Hz-0.6B-Base");
+ assert_eq!(TOKENIZER_MODEL_ID, "Qwen/Qwen3-TTS-Tokenizer-12Hz");
+ }
+}