F-IVM: analytics over relational databases under updates

Author:

Kara Ahmet,Nikolic Milos,Olteanu DanORCID,Zhang Haozhe

Abstract

AbstractThis article describes F-IVM, a unified approach for maintaining analytics over changing relational data. We exemplify its versatility in four disciplines: processing queries with group-by aggregates and joins; learning linear regression models using the covariance matrix of the input features; building Chow-Liu trees using pairwise mutual information of the input features; and matrix chain multiplication. F-IVM has three main ingredients: higher-order incremental view maintenance; factorized computation; and ring abstraction. F-IVM reduces the maintenance of a task to that of a hierarchy of simple views. Such views are functions mapping keys, which are tuples of input values, to payloads, which are elements from a ring. F-IVM supports efficient factorized computation over keys, payloads, and updates. It treats uniformly seemingly disparate tasks: While in the key space, all tasks require general joins and variable marginalization, in the payload space, tasks differ in the definition of the sum and product ring operations. We implemented F-IVM on top of DBToaster and show that it can outperform classical first-order and fully recursive higher-order incremental view maintenance by orders of magnitude while using less memory.

Funder

European Research Council

Publisher

Springer Science and Business Media LLC

Subject

Hardware and Architecture,Information Systems

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1. Recent Increments in Incremental View Maintenance;Companion of the 43rd Symposium on Principles of Database Systems;2024-06-09

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