NeuroRVQ: Multi-Scale Biosignal Tokenization for Generative Foundation Models
-
Updated
May 19, 2026 - Python
NeuroRVQ: Multi-Scale Biosignal Tokenization for Generative Foundation Models
KAE : KAN-based AutoEncoder (AE, VAE, VQ-VAE, RVQ, etc.)
Unofficial PyTorch implementation of Higgs Audio V2 Tokenizer with HuBERT semantic features. Complete training pipeline for semantic-acoustic audio tokenization with 960x downsampling and 8-layer RVQ.
On the Limits of Discrete Representations for Neural Control. A systematic empirical study of tokenization, quantization, and inductive bias in BCI (aka documented failures)
First-of-its-kind MIDI PCA RVQ VAE implementation and models
Vectorial language for digital consciousness - RVQ-based emotion encoding (DeepSeek R1 validated)
Build pure-Rust NeuroRVQ inference to tokenize EEG, ECG, and EMG signals with Burn 0.20 and zero Python dependencies
AI-powered ultra-low bitrate audio codec CLI built on SNAC — Compress audio at 0.98-2.6 kbps with near-original quality (392:1 ratio vs WAV)
APU-Codec: Neural audio codec from source, optimized for AMD APU tri-processor inference (NPU encoder, GPU decoder)
Pytorch implementation of a Moshi-inspired audio LM based on multiple backbones, inlcuding Qwen and a transformer decoder.
Add a description, image, and links to the rvq topic page so that developers can more easily learn about it.
To associate your repository with the rvq topic, visit your repo's landing page and select "manage topics."