CacheSolidarity: Preventing Prefix Caching Side Channels in Multi-tenant LLM Serving Systems
This addresses a security vulnerability in LLM serving systems that affects multi-tenant environments, offering a solution that balances security and performance without being purely incremental.
The paper tackles the problem of timing side channels introduced by Automatic Prefix Caching in multi-tenant LLM serving systems, which attackers can exploit to infer sensitive information, and presents CacheSolidarity, a system that secures against these side channels while achieving up to 70% higher cache reuse and 30% lower inference latency compared to existing defenses.
Large Language Models (LLMs) rely on optimizations like Automatic Prefix Caching (APC) to accelerate inference. APC works by reusing previously computed states for the beginning part of a request (prefix), when another request starts with the same text. While APC improves throughput, it introduces timing side channels: cache hits are faster than misses, creating observable latency differences. In multi-tenant systems, attackers can exploit these differences to infer sensitive information, e.g., by incrementally reconstructing another user's request by observing hit/miss patterns. Current defenses take a sledgehammer approach: they disable APC and cache sharing, isolating users, and sacrificing efficiency for regular users. This paper presents CacheSolidarity, a system that secures multi-tenant LLM serving systems against APC side channels without sacrificing performance and efficiency. CacheSolidarity monitors cache reuse across users, flags suspicious sharing, and selectively isolates prefixes, restricting their reuse only when necessary. Evaluation shows that CacheSolidarity enables up to 70% higher cache reuse and 30% lower inference latency compared to existing defenses that isolate users. CacheSolidarity's lightweight design demonstrates how security in LLM serving does not have to come at the cost of unnecessarily reduced performance or unbearable overheads.