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QuantSpec: Self-Speculative Decoding with Hierarchical Quantized KV Cache

Abstract

Large Language Models (LLMs) are increasingly being deployed on edge devices for long-context settings, creating a growing need for fast and efficient long-context inference. In these scenarios, the Key-Value (KV) cache is the primary bottleneck in terms of both GPU memory and latency, as the full KV cache must be loaded for each decoding step. While speculative decoding is a widely accepted technique to accelerate autoregressive decoding, existing methods often struggle to achieve significant speedups due to inefficient KV cache optimization strategies and result in low acceptance rates. To address these challenges, we propose a novel self-speculative decoding framework, QuantSpec, where the draft model shares the architecture of the target model but employs a hierarchical 4-bit quantized KV cache and 4-bit quantized weights for acceleration. QuantSpec maintains high acceptance rates (>>90%) and reliably provides consistent end-to-end speedups upto 2.5×\sim2.5\times, outperforming other self-speculative decoding methods that use sparse KV cache for long-context LLM inference. QuantSpec also reduces the memory requirements by 1.3×\sim 1.3\times compared to these alternatives.

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@article{tiwari2025_2502.10424,
  title={ QuantSpec: Self-Speculative Decoding with Hierarchical Quantized KV Cache },
  author={ Rishabh Tiwari and Haocheng Xi and Aditya Tomar and Coleman Hooper and Sehoon Kim and Maxwell Horton and Mahyar Najibi and Michael W. Mahoney and Kurt Keutzer and Amir Gholami },
  journal={arXiv preprint arXiv:2502.10424},
  year={ 2025 }
}
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