VLDB2025

ScaleCache: Scalable and Production-grade Buffer Management for Disk-based Database Systems

Mingyu Liu, Junbin Kang, Kai Wang, Lu Zhang, Haibo Chen, Xiuchang Li, Tianhong Ding

被引用 1 次

摘要

Buffer management is critical for DBMSs but often suffers from scalability bottlenecks and poor cache locality, which stems from centralized reference counting in page access and intensive locking in page-to-buffer translation. However, prior radical approaches like pointer swizzling or optimistic lock can hardly be adopted in production-grade DBMSs due to its inherent complexity and incompatibility.

This paper proposes ScaleCache , a scalable, highly-efficient and production-grade buffer management system with three key designs. ScaleCache first incorporates a novel compact per-group buffer reference counting technique, which enables scalable buffer pinning and unpinning by concurrent threads on many-core servers. It then devised a novel read-write lock based on copy-on-write and per-group reference counting, which is suitable for B-link tree. At last, we propose an optimistic, CPU-cache friendly and SIMD-accelerated hash table for fast and scalable page-to-buffer translation, which eliminates most contention on modern many-core hardware. ScaleCache has been adopted in Huawei GaussDB , a commercial high-performance DBMS. Evaluation on a 128-core server demonstrates that ScaleCache exhibits near-linear scalability and can significantly improve index query throughput of both classic B-link tree index and complex graph-based vector index.