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Still: Amortized KV Cache Compaction in a Single Forward Pass

Researchers introduced Still, a per-layer Perceiver model that compacts KV cache in a single forward pass, enabling efficient long-context language model deployment. On Qwen and Gemma models, Still outperformed baselines by 8–22 points on the RULER benchmark across compression ratios from 8× to 200× and context lengths up to 128k tokens. The method supports iterative application for long-horizon tasks and preserves full-context performance on summarization benchmarks.

read2 min publishedJun 14, 2026
[Submitted on 5 Jun 2026]


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Abstract:The KV cache is the memory bottleneck of long-horizon language model deployment. Practically, a deployable compactor must be lightweight enough to call during inference, expressive enough to preserve context under constraint, and reusable across a trajectory. Existing compaction methods satisfy only part of this requirement: selection methods are lightweight but subset-bound, while synthesis methods are expressive but rely on per-context optimization. Here we introduce Still, a small per-layer Perceiver trained once against a frozen base model that produces compact keys and values in a single forward pass. On Qwen and Gemma models, Still occupies the favorable side of the speed--quality frontier across compression ratios from $8\times$ to $200\times$ and context lengths from $8$k to $128$k. On the long-context RULER grid, Still exceeds the strongest baseline by 8--22 points. The same compact cache also supports free-form summarization, preserving most of the full-context gain on HELMET and winning a pairwise LongBench summarization comparison against KV-Distill. Because compaction is a forward pass, Still can be applied iteratively, entering a long-horizon regime unavailable to per-context methods. We show that amortization makes long-context cache compaction tractable, and synthesis makes its compact state useful at extreme compression.

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