diff options
| author | soryu <soryu@soryu.co> | 2026-01-28 02:54:17 +0000 |
|---|---|---|
| committer | GitHub <noreply@github.com> | 2026-01-28 02:54:17 +0000 |
| commit | eabd1304cce0e053cd32ec910d2f0ea429e8af14 (patch) | |
| tree | fca3b08810a1dc0c0c610a8189a466cc23d5c547 /docs/research/rust-native-tts-research.md | |
| parent | c618174e60e4632d36d7352d83399508c72b2f42 (diff) | |
| download | soryu-eabd1304cce0e053cd32ec910d2f0ea429e8af14.tar.gz soryu-eabd1304cce0e053cd32ec910d2f0ea429e8af14.zip | |
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>
Diffstat (limited to 'docs/research/rust-native-tts-research.md')
| -rw-r--r-- | docs/research/rust-native-tts-research.md | 297 |
1 files changed, 297 insertions, 0 deletions
diff --git a/docs/research/rust-native-tts-research.md b/docs/research/rust-native-tts-research.md new file mode 100644 index 0000000..5bc75f7 --- /dev/null +++ b/docs/research/rust-native-tts-research.md @@ -0,0 +1,297 @@ +# Rust-Native Qwen3-TTS Integration Research + +## Executive Summary + +This document researches integrating **Qwen3-TTS-12Hz-0.6B-Base** directly into the makima Rust codebase, replacing the current Chatterbox TTS implementation. The goal is a **pure Rust** solution — no Python, no separate microservice. + +**Bottom line:** A Rust-native integration is feasible but requires significant implementation work. The most viable path is using **candle** (HuggingFace's Rust ML framework) to implement the model architecture natively, loading safetensors weights directly. The existing ONNX-based approach used for Chatterbox TTS is **not viable** for Qwen3-TTS due to architecture incompatibilities with ONNX exporters. + +--- + +## 1. Current TTS Implementation Analysis + +The existing Chatterbox TTS in `makima/src/tts.rs` uses: + +- **ONNX Runtime** via the `ort` crate (v2.0.0-rc.10) +- **Four ONNX model files**: `speech_encoder.onnx`, `embed_tokens.onnx`, `language_model.onnx`, `conditional_decoder.onnx` +- **tokenizers** crate for text tokenization +- **ndarray** for tensor manipulation +- **hf-hub** for model downloading +- **Pipeline**: encode voice → tokenize text → autoregressive token generation with KV cache → decode tokens to waveform +- **Architecture constants**: 24 layers, 16 KV heads, 64 head dim, 24kHz sample rate + +The pattern is well-established: download ONNX models from HuggingFace, load sessions, run inference with manual KV cache management. + +### STT Pattern (listen.rs) + +The Listen/STT handler in `makima/src/server/handlers/listen.rs` demonstrates the broader ML pattern: +- WebSocket-based streaming +- Lazy model loading via `SharedState::get_ml_models()` +- Models held behind `tokio::sync::Mutex` for async access +- `parakeet-rs` local crate for STT, `sortformer` for diarization +- All models are Rust-native with ONNX backends + +--- + +## 2. Qwen3-TTS-12Hz-0.6B-Base Architecture + +### Model Overview + +| Property | Value | +|----------|-------| +| **Parameters** | 0.6B | +| **Architecture** | `Qwen3TTSForConditionalGeneration` | +| **Output Sample Rate** | 24,000 Hz | +| **Token Frame Rate** | 12.5 Hz (~80ms per token) | +| **Model Format** | SafeTensors (1.83 GB main + 682 MB tokenizer) | +| **Total Size** | ~2.52 GB | +| **Precision** | bfloat16/float16 | + +### Components + +The model has **three distinct components**: + +#### A. Main Language Model (Talker) — 1.83 GB safetensors +- Hidden size: 1024 +- Layers: 28 +- Attention heads: 16 (8 KV heads) +- Intermediate size: 3072 +- Head dimension: 128 +- Text vocab size: 151,936 +- Max position embeddings: 32,768 +- Autoregressive transformer predicting speech token sequences from text + +#### B. Code Predictor (Multi-Token Prediction) — embedded in main model +- Hidden size: 1024 +- Layers: 5 +- Attention heads: 16 +- Number of code groups: 16 +- Codebook vocab size: 2048 +- Predicts residual codebooks (16 layers) after the main LM predicts the zeroth codebook + +#### C. Speech Tokenizer (Qwen3-TTS-Tokenizer-12Hz) — 682 MB safetensors +- Separate model in `speech_tokenizer/` directory +- GAN-based codec: encoder + decoder +- 16-layer multi-codebook RVQ (Residual Vector Quantization) +- First codebook: semantic (WavLM-guided) +- Remaining 15: acoustic details +- **Decoder**: lightweight causal ConvNet (no DiT/diffusion needed) +- Encodes reference audio → discrete codes, decodes codes → waveform + +### Inference Pipeline + +``` +Text Input + Reference Audio + ↓ +[Speech Tokenizer Encoder] → reference audio codes + speaker embedding + ↓ +[Text Tokenizer] → text token IDs + ↓ +[Language Model] → autoregressive generation of zeroth codebook tokens + ↓ +[Code Predictor / MTP] → predict remaining 15 codebook layers + ↓ +[Speech Tokenizer Decoder / Causal ConvNet] → waveform output (24kHz) +``` + +--- + +## 3. ONNX Export Feasibility — NOT VIABLE + +### Status: No ONNX support exists + +- **No official ONNX export** from Qwen team +- **No community ONNX conversion** for Qwen3-TTS +- The Qwen3 architecture is **not supported** by HuggingFace Optimum's ONNX exporter +- Users attempting export get: `ValueError: Trying to export a qwen3 model, that is a custom or unsupported architecture, but no custom onnx configuration was passed` +- Even for base Qwen3 LLMs (non-TTS), ONNX export has significant issues with MoE routing, hybrid attention, and novel architecture components + +### Why ONNX Won't Work for Qwen3-TTS + +1. **Custom architecture** — `Qwen3TTSForConditionalGeneration` is not a standard transformer; it combines LM + code predictor + speech tokenizer +2. **Multi-codebook MTP module** — the code predictor generates 16 codebook layers, a non-standard operation +3. **Causal ConvNet decoder** — the speech tokenizer's decoder is a custom GAN-trained ConvNet, not a standard vocoder +4. **Dynamic control flow** — dual-track streaming architecture with conditional branching +5. **No Optimum support** — would require writing a custom ONNX config from scratch for each sub-component + +**Verdict: The ONNX path (matching our Chatterbox approach) is a dead end for Qwen3-TTS.** + +--- + +## 4. Rust-Native Inference Options + +### Option A: Candle (HuggingFace) — RECOMMENDED + +[candle](https://github.com/huggingface/candle) is HuggingFace's minimalist Rust ML framework. + +**Why candle is the best fit:** + +| Factor | Assessment | +|--------|------------| +| **Qwen model support** | ✅ Has `qwen2` module in candle-transformers; Qwen3 variants supported | +| **SafeTensors loading** | ✅ Native first-class support (safetensors is a Rust crate) | +| **GPU support** | ✅ CUDA backend, Metal (macOS), CPU with MKL | +| **Tokenizer support** | ✅ Uses the same `tokenizers` crate makima already depends on | +| **Audio models** | ✅ Supports EnCodec, Whisper, MetaVoice, Parler-TTS | +| **KV cache** | ✅ Well-established patterns in existing model implementations | +| **Community** | ✅ Active; Crane project already lists Qwen3-TTS as "highest priority" | +| **Binary size** | ✅ Compiles to single binary, no Python dependency | + +**What needs to be implemented:** + +1. **Qwen3-TTS transformer layers** — extend existing `qwen2` model code for the 28-layer LM with TTS-specific modifications (speaker encoder concatenation, code predictor output heads) +2. **Code Predictor (MTP)** — 5-layer module that generates 16 codebook predictions from the LM hidden states +3. **Speech Tokenizer Encoder** — ConvNet encoder that converts reference audio to discrete multi-codebook tokens + speaker embeddings +4. **Speech Tokenizer Decoder** — causal ConvNet that reconstructs waveforms from discrete codes +5. **Multi-codebook handling** — manage 16 parallel codebook sequences + +**Estimated effort:** Medium-High. The LM backbone can reuse existing Qwen2/3 code. The speech tokenizer (encoder + decoder) is the most novel component. + +**Key crate dependencies to add:** +```toml +candle-core = "0.8" +candle-nn = "0.8" +candle-transformers = "0.8" +# Keep existing: tokenizers, hf-hub, ndarray (for compatibility) +``` + +### Option B: Crane (Candle-based TTS Engine) + +[Crane](https://github.com/lucasjinreal/Crane) is a pure Rust LLM inference engine built on candle, specifically designed for multi-modal models including TTS. + +**Key facts:** +- Already supports Spark-TTS (codec-based TTS with similar architecture) +- **Qwen3-TTS is listed as "Highest Priority" on their roadmap** +- Handles multi-module architectures (codec + LLM pipelines) +- Supports Qwen2.5, Moonshine ASR +- Claims 50x faster than PyTorch on Apple Silicon + +**Strategy:** Monitor Crane's Qwen3-TTS implementation. If they ship it, we could either: +- Use Crane as a dependency directly +- Port their implementation into makima's codebase +- Contribute to Crane and depend on it + +**Risk:** Crane is a relatively new project; depending on it adds supply chain risk. + +### Option C: qwen3-rs (Educational Reference) + +[qwen3-rs](https://github.com/reinterpretcat/qwen3-rs) is an educational project implementing Qwen3 inference from scratch in Rust. + +**Useful for:** Reference implementation of Qwen3 transformer layers, tokenization, KV cache, and safetensors loading — all without heavy ML framework dependencies. However, it only implements the base LLM, not the TTS-specific components. + +### Option D: Direct ort (ONNX Runtime) with Custom Export — FALLBACK + +If we could manually export each sub-component to ONNX: + +1. Export the 28-layer LM backbone (similar complexity to Chatterbox) +2. Export the code predictor separately +3. Export the speech tokenizer encoder/decoder + +This would match our existing Chatterbox pattern but requires Python scripting for the one-time export, and the Qwen3 architecture is explicitly unsupported by standard exporters. **Not recommended unless ONNX support materializes upstream.** + +### Option E: PyTorch C++ (libtorch) via FFI — NOT RECOMMENDED + +Using libtorch via Rust FFI bindings (`tch-rs` crate). This would: +- Add a ~2GB libtorch dependency +- Require complex build setup +- Introduce C++ dependency management +- Defeat the purpose of a pure Rust solution + +--- + +## 5. Recommended Approach + +### Phase 1: Candle-Based Implementation + +**Architecture:** + +``` +makima/src/tts/ +├── mod.rs // TTS trait + factory (select Chatterbox vs Qwen3) +├── chatterbox.rs // Existing ONNX-based Chatterbox (moved from tts.rs) +├── qwen3/ +│ ├── mod.rs // Qwen3TTS public API +│ ├── model.rs // Qwen3 LM transformer (28 layers) +│ ├── code_predictor.rs // MTP module (5 layers, 16 codebooks) +│ ├── speech_tokenizer.rs // Encoder + Decoder (causal ConvNet) +│ ├── config.rs // Model config from config.json +│ └── generate.rs // Autoregressive generation loop with KV cache +``` + +**Key implementation details:** + +1. **Load safetensors directly** — candle's `safetensors` support reads the 1.83GB main model and 682MB speech tokenizer +2. **Reuse Qwen2 attention** — candle-transformers already has `qwen2::Model` with RoPE, GQA, and KV cache +3. **Implement ConvNet codec** — the speech tokenizer's encoder/decoder is a causal 1D ConvNet; candle has `Conv1d` layers +4. **Multi-codebook RVQ** — implement the 16-codebook residual vector quantization lookup +5. **Speaker embedding** — extract from reference audio via the speech tokenizer encoder +6. **Streaming support** — the 12Hz model's causal architecture enables token-by-token waveform generation + +### Phase 2: Voice Assets + +The model supports voice cloning with reference audio. For the default Makima voice: +- Need 5-15 second Japanese-accented English audio clip +- Reference audio + transcript fed to speech tokenizer encoder +- Speaker embedding cached for reuse + +### Phase 3: Integration with Listen Page + +Following the pattern in `listen.rs`: +- TTS model loaded lazily via `SharedState` +- Protected behind `tokio::sync::Mutex` (or `RwLock` for concurrent reads) +- WebSocket endpoint for streaming TTS (emit audio chunks as tokens are generated) +- Bidirectional: STT (listen) → process → TTS (speak) loop + +--- + +## 6. Comparison Matrix + +| Criteria | ONNX (current pattern) | Candle | Crane | libtorch | +|----------|----------------------|--------|-------|----------| +| Pure Rust | ✅ (ort crate) | ✅ | ✅ | ❌ (C++ FFI) | +| Qwen3-TTS support | ❌ No export | ⚠️ Needs impl | ⚠️ Planned | ✅ (full PyTorch) | +| Single binary | ✅ | ✅ | ✅ | ❌ | +| GPU acceleration | ✅ | ✅ | ✅ | ✅ | +| SafeTensors loading | ❌ (needs ONNX) | ✅ | ✅ | ✅ | +| Streaming TTS | ✅ | ✅ | ✅ | ✅ | +| Maintenance burden | Low | Medium | Low (if adopted) | High | +| Implementation effort | N/A (blocked) | Medium-High | Low (if available) | Medium | +| Dependency size | ~50MB | ~5MB | ~5MB | ~2GB | + +--- + +## 7. Risk Assessment + +| Risk | Likelihood | Impact | Mitigation | +|------|-----------|--------|------------| +| Candle implementation takes longer than expected | Medium | Medium | Reference Crane's Spark-TTS implementation; use qwen3-rs as LM reference | +| Speech tokenizer ConvNet is complex to port | Medium | High | Study the PyTorch source in qwen-tts package; ConvNet layers are simpler than transformers | +| Model quality differs from reference PyTorch | Low | High | Validate with reference audio samples; ensure bfloat16 precision | +| Crane ships Qwen3-TTS before we finish | Medium | Positive | Adopt their implementation | +| GPU memory issues on target hardware | Low | Medium | 0.6B model is small (~2.5GB); fits in 4GB VRAM with float16 | + +--- + +## 8. Next Steps + +1. **Immediate:** Add `candle-core`, `candle-nn`, `candle-transformers` to Cargo.toml +2. **Week 1:** Implement Qwen3 LM backbone in candle (extend existing qwen2 model) +3. **Week 2:** Implement speech tokenizer encoder/decoder (ConvNet + RVQ) +4. **Week 2:** Implement code predictor (MTP module) +5. **Week 3:** Integration testing with reference audio; validate output quality +6. **Week 3:** Wire into makima server as TTS endpoint +7. **Ongoing:** Monitor Crane project for Qwen3-TTS implementation + +--- + +## Sources + +- [Qwen3-TTS-12Hz-0.6B-Base on HuggingFace](https://huggingface.co/Qwen/Qwen3-TTS-12Hz-0.6B-Base) +- [Qwen3-TTS Technical Report (arXiv)](https://arxiv.org/html/2601.15621v1) +- [Qwen3-TTS GitHub Repository](https://github.com/QwenLM/Qwen3-TTS) +- [Candle — HuggingFace Rust ML Framework](https://github.com/huggingface/candle) +- [Crane — Rust LLM Inference Engine](https://github.com/lucasjinreal/Crane) +- [qwen3-rs — Educational Qwen3 Rust Implementation](https://github.com/reinterpretcat/qwen3-rs) +- [candle-transformers Qwen2 model](https://docs.rs/candle-transformers/latest/candle_transformers/models/qwen2/index.html) +- [Qwen3-TTS-Tokenizer-12Hz on HuggingFace](https://huggingface.co/Qwen/Qwen3-TTS-Tokenizer-12Hz) +- [ONNX export issues for Qwen3](https://huggingface.co/onnx-community/Qwen3-1.7B-ONNX/discussions/1) |
