go back

Volume 15, No. 3

APEX: A High-Performance Learned Index on Persistent Memory

Authors:
Baotong Lu (Chinese University of Hong Kong)* Jialin Ding (MIT) Eric Lo (Chinese University of Hong Kong) Umar Farooq Minhas (Microsoft Research) Tianzheng Wang (Simon Fraser University)

Abstract

The recently released persistent memory (PM) offers high performance, persistence, and is cheaper than DRAM. This opens up new possibilities for indexes that operate and persist data directly on the memory bus. Recent learned indexes exploit data distribution and have shown great potential for some workloads. However, none support persistence or instant recovery, and existing PM-based indexes typically evolve B+-trees without considering learned indexes. This paper proposes APEX, a new PM-optimized learned index that offers high performance, persistence, concurrency and instant recovery. APEX is based on ALEX, a recent updatable learned index, to combine and adapt the best of past PM optimizations and learned indexes, allowing it to reduce PM accesses while still exploiting machine learning. Our evaluation on Intel DCPMM shows that APEX can perform up to ∼15X better than existing PM indexes and can recover from failures in ~42ms.

PVLDB is part of the VLDB Endowment Inc.

Privacy Policy