NFL

Author:

Wu Shangyu1,Cui Yufei1,Yu Jinghuan1,Sun Xuan1,Kuo Tei-Wei2,Xue Chun Jason1

Affiliation:

1. City University of Hong Kong, Hong Kong

2. National Taiwan University, Taiwan

Abstract

Recent works on learned index open a new direction for the indexing field. The key insight of the learned index is to approximate the mapping between keys and positions with piece-wise linear functions. Such methods require partitioning key space for a better approximation. Although lots of heuristics are proposed to improve the approximation quality, the bottleneck is that the segmentation overheads could hinder the overall performance. This paper tackles the approximation problem by applying a distribution transformation to the keys before constructing the learned index. A two-stage Normalizing-Flow-based Learned index framework (NFL) is proposed, which first transforms the original complex key distribution into a near-uniform distribution, then builds a learned index leveraging the transformed keys. For effective distribution transformation, we propose a Numerical Normalizing Flow (Numerical NF). Based on the characteristics of the transformed keys, we propose a robust After-Flow Learned Index (AFLI). To validate the performance, comprehensive evaluations are conducted on both synthetic and real-world workloads, which shows that the proposed NFL produces the highest throughput and the lowest tail latency compared to the state-of-the-art learned indexes.

Publisher

Association for Computing Machinery (ACM)

Subject

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

Reference46 articles.

1. ArtFlow: Unbiased Image Style Transfer via Reversible Neural Flows

2. Antonio Boffa , Paolo Ferragina , and Giorgio Vinciguerra . 2021. A Learned Approach to Design Compressed Rank/Select Data Structures. ACM Transactions on Algorithms (TALG) ( 2021 ). Antonio Boffa, Paolo Ferragina, and Giorgio Vinciguerra. 2021. A Learned Approach to Design Compressed Rank/Select Data Structures. ACM Transactions on Algorithms (TALG) (2021).

3. Nicola De Cao , Wilker Aziz , and Ivan Titov . 2019 . Block Neural Autoregressive Flow . In Proceedings of the Thirty-Fifth Conference on Uncertainty in Artificial Intelligence (UAI) , Vol. 115 . 1263--1273. Nicola De Cao, Wilker Aziz, and Ivan Titov. 2019. Block Neural Autoregressive Flow. In Proceedings of the Thirty-Fifth Conference on Uncertainty in Artificial Intelligence (UAI), Vol. 115. 1263--1273.

4. How Does Updatable Learned Index Perform on Non-Volatile Main Memory?

5. Benchmarking cloud serving systems with YCSB

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