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LogQuant: Log-Distributed 2-Bit Quantization of KV Cache with Superior Accuracy Preservation

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We introduce LogQuant, a groundbreaking 2-bit quantization technique for KV Cache in large language model (LLM) inference, delivering substantial memory savings while preserving superior performance. Previous methods either assume that later tokens are more important or attempt to predict important tokens based on earlier attention patterns. Both approaches, however, can result in performance bottlenecks or frequent mispredictions. LogQuant takes a different approach. By applying a log-based filtering mechanism, it selectively compresses the KV Cache across the entire context, achieving better performance with the same or even reduced memory footprint compared to existing methods. In benchmark tests, it enhances throughput by 25% and boosts batch size by 60% without increasing memory consumption. For challenging tasks such as Math and Code Completion, LogQuant improves accuracy by 40% to 200% at the same compression ratio, outperforming comparable techniques.LogQuant integrates effortlessly with popular inference frameworks like Python's transformers library. Implementation can be available in https://github.com/Concyclics/LogQuantKV.

Han Chen, Zicong Jiang, Zining Zhang, Bingsheng He, Pingyi Luo, Mian Lu, Yuqiang Chen• 2025

Related benchmarks

TaskDatasetResultRank
Multi-document Question AnsweringLongBench--
45
Long-context Language UnderstandingLongBench
Math Performance63.31
15
Single-Doc QALongBench--
12
Code CompletionLongBench Code Completion
Accuracy59.57
5
Few-shot LearningLongBench Few-shot Learning
Accuracy61.21
5
SummarizationLongBench Summarization
Accuracy17.92
5
Synthetic TasksLongBench Synthetic Tasks
Accuracy67.68
5
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