LGAIDec 1, 2025

Accelerating Large-Scale Reasoning Model Inference with Sparse Self-Speculative Decoding

arXiv:2512.01278v11 citationsh-index: 27
Originality Incremental advance
AI Analysis

This addresses inference efficiency for large-scale reasoning models, offering incremental improvements in speculative decoding.

The paper tackles the memory bottleneck in reasoning language models during long chain-of-thought generation by introducing SparseSpec, a speculative decoding framework with a sparse attention mechanism and system optimizations, achieving up to 2.13x throughput speedup.

Reasoning language models have demonstrated remarkable capabilities on challenging tasks by generating elaborate chain-of-thought (CoT) solutions. However, such lengthy generation shifts the inference bottleneck from compute-bound to memory-bound. To generate each token, the model applies full attention to all previously generated tokens, requiring memory access to an increasingly large KV-Cache. Consequently, longer generations demand more memory access for every step, leading to substantial pressure on memory bandwidth. To address this, we introduce SparseSpec, a speculative decoding framework that reuses the same model as the draft and target models (i.e., self-speculation). SparseSpec features a novel sparse attention mechanism, PillarAttn, as the draft model, which accurately selects critical tokens via elegantly reusing information from the verification stage. Furthermore, SparseSpec co-designs self-speculation with three system innovations: (1) a unified scheduler to batch token drafting and verification, (2) delayed verification for CPU/GPU overlap, and (3) dynamic KV-Cache management to maximize memory utilization. Across various models and datasets, SparseSpec outperforms state-of-the-art solutions, with an up to 2.13x throughput speedup.

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