学习查询优化器:在人工智能驱动数据库的最前沿

Rong Zhu, Ziniu Wu, Chengliang Chai, A. Pfadler, Bolin Ding, Guoliang Li, Jingren Zhou
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引用次数: 6

摘要

利用基于ml的技术对传统数据库(AI4DB)进行优化,已成为近年来的研究热点。查询优化器(QO)的学习技术是AI4DB中的前沿。QO为机器学习技术的应用提供了最合适的实验场景,学习后的QO已经显示出了足够的优势。在本教程中,我们的目标是从算法设计、现实世界的应用和系统部署等方面对学习后的qos进行广泛而深入的回顾和分析。对于算法,我们将介绍QO中每个单独组件的学习进展,以及整个QO模块。对于系统,我们将分析将基于ml的QO部署到实际DBMS中的挑战以及一些尝试。在此基础上,我们总结了一些设计原则,并指出了未来的发展方向。我们希望本教程可以启发和指导研究QO的研究人员和工程师,以及AI4DB中的其他上下文。
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Learned Query Optimizer: At the Forefront of AI-Driven Databases
Applying ML-based techniques to optimize traditional databases, or AI4DB, has becoming a hot research spot in recent. Learned techniques for query optimizer(QO) is the forefront in AI4DB. QO provides the most suitable experimental plots for utilizing ML techniques and learned QO has exhibited superiority with enough evidence. In this tutorial, we aim at providing a wide and deep review and analysis on learned QO, ranging from algorithm design, real-world applications and system deployment. For algorithm, we would introduce the advances for learning each individual component in QO, as well as the whole QO module. For system, we would analyze the challenges, as well as some attempts, for deploying ML-based QO into actual DBMS. Based on them, we summarize some design principles and point out several future directions. We hope this tutorial could inspire and guide researchers and engineers working on learned QO, as well as other context in AI4DB.
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