Benchmarking learned indexes

Author:

Marcus Ryan1,Kipf Andreas2,van Renen Alexander3,Stoian Mihail3,Misra Sanchit4,Kemper Alfons3,Neumann Thomas3,Kraska Tim2

Affiliation:

1. MIT CSAIL / Intel Labs

2. MIT CSAIL

3. TUM

4. Intel Labs

Abstract

Recent advancements in learned index structures propose replacing existing index structures, like B-Trees, with approximate learned models. In this work, we present a unified benchmark that compares well-tuned implementations of three learned index structures against several state-of-the-art "traditional" baselines. Using four real-world datasets, we demonstrate that learned index structures can indeed outperform non-learned indexes in read-only in-memory workloads over a dense array. We investigate the impact of caching, pipelining, dataset size, and key size. We study the performance profile of learned index structures, and build an explanation for why learned models achieve such good performance. Finally, we investigate other important properties of learned index structures, such as their performance in multi-threaded systems and their build times.

Publisher

VLDB Endowment

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

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