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Dynamic Index Construction with Deep Reinforcement Learning

机译:基于深度强化学习的动态指数构建

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摘要

Thanks to the rapid advances in artificial intelligence, a brand new venue for database performance optimization is through deep neural networks and the reinforcement learning paradigm. Alongside the long literature in this regime, an iconic and crucial problem is the index structure building. For this problem, the prior works have largely adopted a pure learning-based solution replacing the traditional methods such as a B-tree and Hashing. While this line of research has drawn much attention in the field, they ubiquitously abandon the semantic guarantees and also suffer from performance loss in certain scenarios. In this work, we propose the Neural Index Search (NIS) framework. The core to this framework is to train a search policy to find a near optimal combination plan over the existing index structures, together with the required configuration parameters associated with each index structure in the plan. We argue that compared against the pure learning approaches, NIS enjoys the advantages brought by the chosen conventional index structures and further robustly enhances the performance from any singular index structure. Extensive empirical results demonstrate that our framework achieves state-of-the-art performances on several benchmarks.
机译:由于人工智能的快速发展,通过深度神经网络和强化学习范式,为数据库性能优化提供了一个全新的场所。除了这个制度的长篇文献外,一个标志性和关键的问题是索引结构的建立。对于这个问题,之前的工作主要采用了一种纯基于学习的解决方案,取代了传统的方法,如B树和哈希。虽然这一系列的研究在该领域引起了广泛关注,但它们无处不在地放弃了语义保证,并且在某些情况下还遭受了性能损失。在这项工作中,我们提出了神经索引搜索(NIS)框架。此框架的核心是训练搜索策略,以在现有索引结构上找到接近最优的组合计划,以及与计划中每个索引结构关联的必需配置参数。我们认为,与纯学习方法相比,NIS享有所选择的传统指数结构带来的优势,并进一步稳健地提高了任何单一指数结构的性能。大量的实证结果表明,我们的框架在多个基准上都实现了最先进的性能。

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