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TurboQuant

#24 in KI-Inferenz-Hardware

google · siet Preprint arXiv: 28. April 2025; Google Research Blog-Ankündigung: 24. März 2026; ICLR 2026 Konferenzpräsentation: April · 11× · tolest 30. Juni 2026

16
Momentum

TurboQuant is a vector quantization algorithm developed by Google Research that compresses the KV cache of large language models down to 3–4 bits. The method combines PolarQuant (rotation-based scalar quantization) with a 1-bit QJL residual correction step, achieving at least 6× KV cache memory reduction with no measurable accuracy loss according to Google. TurboQuant is training-free and calibration-free and works on any transformer architecture. No official Google reference implementation has been released as of Q2 2026; community implementations exist for PyTorch, vLLM, and llama.cpp.

Momentum-Verloop
04.04.03.07.

Features

LicenseNo official Google open-source release (as of Q2 2026); community implementations under MIT license
PlatformModel-agnostic (any transformer architecture); benchmarks on NVIDIA H100; community ports: PyTorch, vLLM, MLX/Apple Silicon, llama.cpp
PriceNot a commercial product; algorithm freely available as a research paper
Compute Performance (FLOPS/TOPS)Up to 8x speedup in attention logit computation (4-bit TurboQuant vs. 32-bit unquantized) on NVIDIA H100
Release DatearXiv preprint: Apr 28, 2025; Google Research Blog: Mar 24, 2026; ICLR 2026 conference: Apr 2026
MemoryKV cache compression to 3-4 bits/value; at least 6x reduction vs. FP16 (e.g., Llama 3.1 70B 128k: ~40 GB → ~7.5 GB KV cache)
AvailabilityAlgorithm/paper: public (arXiv 2504.19874, ICLR 2026); official Google implementation: not yet released; community implementations: PyPI/GitHub (not from Google)

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