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The MADlib analytics library or mad skills, the SQL

journal contribution
posted on 2024-11-01, 16:26 authored by Joseph Hellerstein, Christopher Re, Florian Schoppmann, Daisy Wang, Eugene Fratkin, Aleksander Gorajek, Kee Ng, Caleb Welton, Xixuan Feng, Kun Li, Arun KumarArun Kumar
MADlib is a free, open source library of in-database analytic methods. It provides an evolving suite of SQL-based algorithms for machine learning, data mining and statistics that run at scale within a database engine, with no need for data import/export to other tools. The goal is for MADlib to eventually serve a role for scalable database systems that is similar to the CRAN library for R: a community repository of statistical methods, this time written with scale and parallelism in mind. In this paper we introduce the MADlib project, including the background that led to its beginnings, and the motivation for its open source nature. We provide an overview of the library's architecture and design patterns, and provide a description of various statistical methods in that context. We include performance and speedup results of a core design pattern from one of those methods over the Greenplum parallel DBMS on a modest-sized test cluster. We then report on two initial e orts at incorporating academic research into MADlib, which is one of the project's goals. MADlib is freely available at http://madlib.net, and the project is open for contributions of both new methods, and ports to additional database platforms.

History

Journal

Proceedings of the VLDB Endowment

Volume

5

Issue

12

Start page

1700

End page

1711

Total pages

12

Publisher

Association for Computing Machinery

Place published

New York, US

Language

English

Copyright

© 2012 VLDB Endowment

Former Identifier

2006046322

Esploro creation date

2020-06-22

Fedora creation date

2015-01-19