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authorsoryu <soryu@soryu.co>2026-01-28 02:54:17 +0000
committerGitHub <noreply@github.com>2026-01-28 02:54:17 +0000
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parentc618174e60e4632d36d7352d83399508c72b2f42 (diff)
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Add Qwen3-TTS streaming endpoint for voice synthesis (#40)
* Task completion checkpoint * Task completion checkpoint * Task completion checkpoint * Add Qwen3-TTS research document for live TTS replacement Research findings for replacing Chatterbox TTS with Qwen3-TTS-12Hz-0.6B-Base: - Current TTS: Chatterbox-Turbo-ONNX with batch-only generation, no streaming - Qwen3-TTS: 97ms end-to-end latency, streaming support, 3-second voice cloning - Voice cloning: Requires 3s reference audio + transcript (Makima voice planned) - Integration: Python service with WebSocket bridge (no ONNX export available) - Languages: 10 supported including English and Japanese Document includes: - Current architecture analysis (makima/src/tts.rs) - Qwen3-TTS capabilities and requirements - Feasibility assessment for live/streaming TTS - Audio clip requirements for voice cloning - Preliminary technical approach with architecture diagrams Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * [WIP] Heartbeat checkpoint - 2026-01-27 03:11:15 UTC * Add Qwen3-TTS research documentation Comprehensive research on replacing Chatterbox TTS with Qwen3-TTS-12Hz-0.6B-Base: - Current TTS implementation analysis (Chatterbox-Turbo-ONNX in makima/src/tts.rs) - Qwen3-TTS capabilities: 97ms streaming latency, voice cloning with 3s reference - Cross-lingual support: Japanese voice (Makima/Tomori Kusunoki) speaking English - Python microservice architecture recommendation (FastAPI + WebSocket) - Implementation phases and technical approach - Hardware requirements and dependencies Key findings: - Live/streaming TTS is highly feasible with 97ms latency - Voice cloning fully supported with 0.95 speaker similarity - Recommended: Python microservice with WebSocket streaming Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add comprehensive Qwen3-TTS integration specification This specification document defines the complete integration of Qwen3-TTS-12Hz-0.6B-Base as a replacement for the existing Chatterbox-Turbo TTS implementation. The document covers: ## Functional Requirements - WebSocket endpoint /api/v1/speak for streaming TTS - Voice cloning with default Makima voice (Japanese VA speaking English) - Support for custom voice references - Detailed client-to-server and server-to-client message protocols - Integration with Listen page for bidirectional speech ## Non-Functional Requirements - Latency targets: < 200ms first audio byte - Audio quality: 24kHz, mono, PCM16/PCM32f - Hardware requirements: CUDA GPU with 4-8GB VRAM - Scalability: 10 concurrent sessions per GPU ## Architecture Specification - Python TTS microservice with FastAPI/WebSocket - Rust proxy endpoint in makima server - Voice prompt caching mechanism (LRU cache) - Error handling and recovery strategies ## API Contract - Complete WebSocket message format definitions (TypeScript) - Error codes and responses (TTS_UNAVAILABLE, SYNTHESIS_ERROR, etc.) - Session state machine and lifecycle management ## Voice Asset Requirements - Makima voice clip specifications (5-10s WAV, transcript required) - Storage location: models/voices/makima/ - Metadata format for voice management ## Testing Strategy - Unit tests for Python TTS service and Rust proxy - Integration tests for WebSocket flow - Latency benchmarks with performance targets - Test data fixtures for various text lengths Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add Qwen3-TTS implementation plan Comprehensive implementation plan for replacing Chatterbox-TTS with Qwen3-TTS streaming TTS service, including: - Task breakdown with estimated hours for each phase - Phase 1: Python TTS microservice (FastAPI, WebSocket) - Phase 2: Rust proxy integration (speak.rs, tts_client.rs) - Detailed file changes and new module structure - Testing plan with unit, integration, and latency benchmarks - Risk assessment with mitigation strategies - Success criteria for each phase Based on specification in docs/specs/qwen3-tts-spec.md Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add author and research references to TTS implementation plan Add links to research documentation and author attribution. Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * [WIP] Heartbeat checkpoint - 2026-01-27 03:25:06 UTC * Add Python TTS service project structure (Phase 1.1-1.3) Create the initial makima-tts Python service directory structure with: - pyproject.toml with FastAPI, Qwen-TTS, and torch dependencies - config.py with pydantic-settings TTSConfig class - models.py with Pydantic message models (Start, Speak, Stop, Ready, etc.) This implements tasks P1.1, P1.2, and P1.3 from the Qwen3-TTS implementation plan. Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add TTS engine and voice manager for Qwen3-TTS (Phase 1.4-1.5) Implement core TTS functionality: - tts_engine.py: Qwen3-TTS wrapper with streaming audio chunk generation - voice_manager.py: Voice prompt caching with LRU eviction and TTL support Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * [WIP] Heartbeat checkpoint - 2026-01-27 03:30:06 UTC * Add TTS proxy client and message types (Phase 2.1, 2.2, 2.4) - Add tts_client.rs with TtsConfig, TtsCircuitBreaker, TtsError, TtsProxyClient, and TtsConnection structs for WebSocket proxying - Add TTS message types to messages.rs (TtsAudioEncoding, TtsPriority, TtsStartMessage, TtsSpeakMessage, TtsStopMessage, TtsClientMessage, TtsReadyMessage, TtsAudioChunkMessage, TtsCompleteMessage, TtsErrorMessage, TtsStoppedMessage, TtsServerMessage) - Export tts_client module from server mod.rs - tokio-tungstenite already present in Cargo.toml Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add TTS WebSocket handler and route (Phase 2.3, 2.5, 2.6) - Create speak.rs WebSocket handler that proxies to Python TTS service - Add TtsState fields (tts_client, tts_config) to AppState - Add with_tts() builder and is_tts_healthy() methods to AppState - Register /api/v1/speak route in the router - Add speak module export in handlers/mod.rs The handler forwards WebSocket messages bidirectionally between the client and the Python TTS microservice with proper error handling. Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add Makima voice profile assets for TTS voice cloning Creates the voice assets directory structure with: - manifest.json containing voice configuration (voice_id, speaker, language, reference audio path, and Japanese transcript placeholder) - README.md with instructions for obtaining voice reference audio Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * Add Rust-native Qwen3-TTS integration research document Research findings for integrating Qwen3-TTS-12Hz-0.6B-Base directly into the makima Rust codebase without Python. Key conclusions: - ONNX export is not viable (unsupported architecture) - Candle (HF Rust ML framework) is the recommended approach - Model weights available in safetensors format (2.52GB total) - Three components needed: LM backbone, code predictor, speech tokenizer - Crane project has Qwen3-TTS as highest priority (potential upstream) Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * [WIP] Heartbeat checkpoint - 2026-01-27 11:21:43 UTC * [WIP] Heartbeat checkpoint - 2026-01-27 11:24:19 UTC * [WIP] Heartbeat checkpoint - 2026-01-27 11:26:43 UTC * feat: implement Rust-native Qwen3-TTS using candle framework Replace monolithic tts.rs with modular tts/ directory structure: - tts/mod.rs: TtsEngine trait, TtsEngineFactory, shared types (AudioChunk, TtsError), and utility functions (save_wav, resample, argmax) - tts/chatterbox.rs: existing ONNX-based ChatterboxTTS adapted to implement TtsEngine trait with Mutex-wrapped sessions for Send+Sync - tts/qwen3/mod.rs: Qwen3Tts entry point with HuggingFace model loading - tts/qwen3/config.rs: Qwen3TtsConfig parsing from HF config.json - tts/qwen3/model.rs: 28-layer Qwen3 transformer with RoPE, GQA (16 heads, 8 KV heads), SiLU MLP, RMS norm, and KV cache - tts/qwen3/code_predictor.rs: 5-layer MTP module predicting 16 codebooks - tts/qwen3/speech_tokenizer.rs: ConvNet encoder/decoder with 16-layer RVQ - tts/qwen3/generate.rs: autoregressive generation loop with streaming support Add candle-core, candle-nn, candle-transformers, safetensors to Cargo.toml. Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * feat: integrate TTS engine into speak WebSocket handler - Update speak.rs handler to use TTS engine directly from SharedState instead of returning a stub "not implemented" error - Add TtsEngine (OnceCell lazy-loaded) to AppState in state.rs with get_tts_engine() method for lazy initialization on first connection - Implement full WebSocket protocol: client sends JSON speak/cancel/stop messages, server streams binary PCM audio chunks and audio_end signals - Create voices/makima/manifest.json for Makima voice profile configuration - All files compile successfully with zero errors Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> * feat: add /speak TTS page with WebSocket audio playback Add a new /speak frontend page for text-to-speech via WebSocket. The page accepts text input and streams synthesized PCM audio through the Web Audio API. Includes model loading indicator, cancel support, and connection status. Also adds a loading bar to the listen page ControlPanel during WebSocket connection. Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com> --------- Co-authored-by: Claude Opus 4.5 <noreply@anthropic.com>
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+//! Qwen3-TTS model configuration.
+//!
+//! Parses config.json from the HuggingFace model repository to configure
+//! the language model, code predictor, and speech tokenizer.
+
+use serde::Deserialize;
+
+use crate::tts::TtsError;
+
+/// Top-level configuration for Qwen3-TTS-12Hz-0.6B-Base.
+#[derive(Debug, Clone, Deserialize)]
+pub struct Qwen3TtsConfig {
+ /// Language model (talker) configuration.
+ #[serde(default = "Qwen3LmConfig::default")]
+ pub lm: Qwen3LmConfig,
+
+ /// Code predictor (multi-token prediction) configuration.
+ #[serde(default = "CodePredictorConfig::default")]
+ pub code_predictor: CodePredictorConfig,
+
+ /// Speech tokenizer configuration.
+ #[serde(default = "SpeechTokenizerConfig::default")]
+ pub speech_tokenizer: SpeechTokenizerConfig,
+}
+
+impl Default for Qwen3TtsConfig {
+ fn default() -> Self {
+ Self {
+ lm: Qwen3LmConfig::default(),
+ code_predictor: CodePredictorConfig::default(),
+ speech_tokenizer: SpeechTokenizerConfig::default(),
+ }
+ }
+}
+
+impl Qwen3TtsConfig {
+ /// Load from a config.json file path.
+ pub fn from_json_path(path: &std::path::Path) -> Result<Self, TtsError> {
+ let content = std::fs::read_to_string(path)
+ .map_err(|e| TtsError::Config(format!("failed to read config: {e}")))?;
+ Self::from_json_str(&content)
+ }
+
+ /// Load from a JSON string.
+ pub fn from_json_str(json: &str) -> Result<Self, TtsError> {
+ // Try to parse the full HuggingFace config.json format first
+ if let Ok(hf_config) = serde_json::from_str::<HfConfig>(json) {
+ return Ok(Self::from_hf_config(&hf_config));
+ }
+ // Fall back to direct deserialization
+ serde_json::from_str(json)
+ .map_err(|e| TtsError::Config(format!("failed to parse config: {e}")))
+ }
+
+ /// Convert from HuggingFace's config.json format.
+ fn from_hf_config(hf: &HfConfig) -> Self {
+ Self {
+ lm: Qwen3LmConfig {
+ hidden_size: hf.hidden_size.unwrap_or(1024),
+ num_hidden_layers: hf.num_hidden_layers.unwrap_or(28),
+ num_attention_heads: hf.num_attention_heads.unwrap_or(16),
+ num_key_value_heads: hf.num_key_value_heads.unwrap_or(8),
+ intermediate_size: hf.intermediate_size.unwrap_or(3072),
+ head_dim: hf.head_dim.unwrap_or(128),
+ vocab_size: hf.vocab_size.unwrap_or(151_936),
+ max_position_embeddings: hf.max_position_embeddings.unwrap_or(32_768),
+ rms_norm_eps: hf.rms_norm_eps.unwrap_or(1e-6),
+ rope_theta: hf.rope_theta.unwrap_or(1_000_000.0),
+ use_sliding_window: hf.use_sliding_window.unwrap_or(false),
+ sliding_window: hf.sliding_window,
+ hidden_act: hf.hidden_act.clone().unwrap_or_else(|| "silu".to_string()),
+ },
+ code_predictor: CodePredictorConfig {
+ hidden_size: hf.code_predictor_hidden_size.unwrap_or(1024),
+ num_layers: hf.code_predictor_num_layers.unwrap_or(5),
+ num_attention_heads: hf
+ .code_predictor_num_attention_heads
+ .unwrap_or(16),
+ num_code_groups: hf.num_code_groups.unwrap_or(16),
+ codebook_vocab_size: hf.codebook_vocab_size.unwrap_or(2048),
+ rms_norm_eps: hf.rms_norm_eps.unwrap_or(1e-6),
+ },
+ speech_tokenizer: SpeechTokenizerConfig::default(),
+ }
+ }
+}
+
+/// Language model configuration (28-layer Qwen3 transformer).
+#[derive(Debug, Clone, Deserialize)]
+pub struct Qwen3LmConfig {
+ /// Hidden dimension of transformer layers.
+ pub hidden_size: usize,
+ /// Number of transformer layers.
+ pub num_hidden_layers: usize,
+ /// Number of attention heads.
+ pub num_attention_heads: usize,
+ /// Number of key-value heads (GQA).
+ pub num_key_value_heads: usize,
+ /// Feed-forward intermediate size.
+ pub intermediate_size: usize,
+ /// Dimension per attention head.
+ pub head_dim: usize,
+ /// Text vocabulary size.
+ pub vocab_size: usize,
+ /// Maximum sequence length for RoPE.
+ pub max_position_embeddings: usize,
+ /// RMS normalization epsilon.
+ pub rms_norm_eps: f64,
+ /// RoPE theta parameter.
+ pub rope_theta: f64,
+ /// Whether to use sliding window attention.
+ pub use_sliding_window: bool,
+ /// Sliding window size (if enabled).
+ pub sliding_window: Option<usize>,
+ /// Activation function name.
+ pub hidden_act: String,
+}
+
+impl Default for Qwen3LmConfig {
+ fn default() -> Self {
+ Self {
+ hidden_size: 1024,
+ num_hidden_layers: 28,
+ num_attention_heads: 16,
+ num_key_value_heads: 8,
+ intermediate_size: 3072,
+ head_dim: 128,
+ vocab_size: 151_936,
+ max_position_embeddings: 32_768,
+ rms_norm_eps: 1e-6,
+ rope_theta: 1_000_000.0,
+ use_sliding_window: false,
+ sliding_window: None,
+ hidden_act: "silu".to_string(),
+ }
+ }
+}
+
+impl Qwen3LmConfig {
+ /// Number of key-value head groups for GQA.
+ pub fn num_kv_groups(&self) -> usize {
+ self.num_attention_heads / self.num_key_value_heads
+ }
+}
+
+/// Code predictor (multi-token prediction) configuration.
+#[derive(Debug, Clone, Deserialize)]
+pub struct CodePredictorConfig {
+ /// Hidden size (matches LM hidden size).
+ pub hidden_size: usize,
+ /// Number of predictor transformer layers.
+ pub num_layers: usize,
+ /// Number of attention heads.
+ pub num_attention_heads: usize,
+ /// Number of codebook groups (residual codebooks).
+ pub num_code_groups: usize,
+ /// Vocabulary size per codebook.
+ pub codebook_vocab_size: usize,
+ /// RMS norm epsilon.
+ pub rms_norm_eps: f64,
+}
+
+impl Default for CodePredictorConfig {
+ fn default() -> Self {
+ Self {
+ hidden_size: 1024,
+ num_layers: 5,
+ num_attention_heads: 16,
+ num_code_groups: 16,
+ codebook_vocab_size: 2048,
+ rms_norm_eps: 1e-6,
+ }
+ }
+}
+
+/// Speech tokenizer (ConvNet codec) configuration.
+#[derive(Debug, Clone, Deserialize)]
+pub struct SpeechTokenizerConfig {
+ /// Number of RVQ codebooks.
+ pub num_codebooks: usize,
+ /// Codebook embedding dimension.
+ pub codebook_dim: usize,
+ /// Codebook vocabulary size per layer.
+ pub codebook_size: usize,
+ /// Encoder/decoder hidden channels.
+ pub hidden_channels: usize,
+ /// Output sample rate.
+ pub sample_rate: u32,
+ /// Token frame rate (Hz).
+ pub frame_rate: f32,
+ /// HuggingFace model ID for the speech tokenizer.
+ pub model_id: String,
+}
+
+impl Default for SpeechTokenizerConfig {
+ fn default() -> Self {
+ Self {
+ num_codebooks: 16,
+ codebook_dim: 256,
+ codebook_size: 2048,
+ hidden_channels: 512,
+ sample_rate: 24_000,
+ frame_rate: 12.5,
+ model_id: "Qwen/Qwen3-TTS-Tokenizer-12Hz".to_string(),
+ }
+ }
+}
+
+/// HuggingFace config.json format (partial, fields we need).
+#[derive(Debug, Deserialize)]
+struct HfConfig {
+ hidden_size: Option<usize>,
+ num_hidden_layers: Option<usize>,
+ num_attention_heads: Option<usize>,
+ num_key_value_heads: Option<usize>,
+ intermediate_size: Option<usize>,
+ head_dim: Option<usize>,
+ vocab_size: Option<usize>,
+ max_position_embeddings: Option<usize>,
+ rms_norm_eps: Option<f64>,
+ rope_theta: Option<f64>,
+ use_sliding_window: Option<bool>,
+ sliding_window: Option<usize>,
+ hidden_act: Option<String>,
+ // Code predictor specific fields
+ code_predictor_hidden_size: Option<usize>,
+ code_predictor_num_layers: Option<usize>,
+ code_predictor_num_attention_heads: Option<usize>,
+ num_code_groups: Option<usize>,
+ codebook_vocab_size: Option<usize>,
+}
+
+#[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.lm.num_attention_heads, 16);
+ assert_eq!(config.lm.num_key_value_heads, 8);
+ assert_eq!(config.lm.head_dim, 128);
+ assert_eq!(config.lm.num_kv_groups(), 2);
+ assert_eq!(config.code_predictor.num_layers, 5);
+ assert_eq!(config.code_predictor.num_code_groups, 16);
+ assert_eq!(config.speech_tokenizer.num_codebooks, 16);
+ }
+
+ #[test]
+ fn test_config_from_json() {
+ let json = r#"{
+ "hidden_size": 1024,
+ "num_hidden_layers": 28,
+ "num_attention_heads": 16,
+ "num_key_value_heads": 8,
+ "intermediate_size": 3072,
+ "vocab_size": 151936,
+ "max_position_embeddings": 32768,
+ "rms_norm_eps": 1e-6,
+ "rope_theta": 1000000.0,
+ "hidden_act": "silu"
+ }"#;
+
+ let config = Qwen3TtsConfig::from_json_str(json).unwrap();
+ assert_eq!(config.lm.hidden_size, 1024);
+ assert_eq!(config.lm.num_hidden_layers, 28);
+ assert_eq!(config.lm.vocab_size, 151_936);
+ }
+}