Papers
arxiv:2602.05929

KV-CoRE: Benchmarking Data-Dependent Low-Rank Compressibility of KV-Caches in LLMs

Published on Feb 5
· Submitted by
Jian Chen
on Feb 10
Authors:
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Abstract

KV-CoRE method evaluates kv-cache compressibility through SVD-based low-rank approximation, revealing patterns linking compressibility to model architecture and training data across multiple languages and domains.

AI-generated summary

Large language models rely on kv-caches to avoid redundant computation during autoregressive decoding, but as context length grows, reading and writing the cache can quickly saturate GPU memory bandwidth. Recent work has explored KV-cache compression, yet most approaches neglect the data-dependent nature of kv-caches and their variation across layers. We introduce KV-CoRE KV-cache Compressibility by Rank Evaluation), an SVD-based method for quantifying the data-dependent low-rank compressibility of kv-caches. KV-CoRE computes the optimal low-rank approximation under the Frobenius norm and, being gradient-free and incremental, enables efficient dataset-level, layer-wise evaluation. Using this method, we analyze multiple models and datasets spanning five English domains and sixteen languages, uncovering systematic patterns that link compressibility to model architecture, training data, and language coverage. As part of this analysis, we employ the Normalized Effective Rank as a metric of compressibility and show that it correlates strongly with performance degradation under compression. Our study establishes a principled evaluation framework and the first large-scale benchmark of kv-cache compressibility in LLMs, offering insights for dynamic, data-aware compression and data-centric model development.

Community

KV-CoRE introduces a clean, data-dependent framework for measuring (not just applying) KV-cache compression in LLMs. By performing incremental SVD directly on cached key/value activations, the paper provides a principled, layer-wise view of low-rank structure across models, datasets, and languages. The proposed Normalized Effective Rank (NER) strongly correlates with perplexity and GPT-based quality under compression, making it a practical diagnostic for dynamic, data-aware KV-cache optimization and for analyzing representational under-utilization in multilingual and low-resource settings.

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