English

Towards Enhancing Database Education: Natural Language Generation Meets Query Execution Plans

Databases 2021-03-04 v3

Abstract

The database systems course is offered as part of an undergraduate computer science degree program in many major universities. A key learning goal of learners taking such a course is to understand how SQL queries are processed in a RDBMS in practice. Since a query execution plan (QEP) describes the execution steps of a query, learners can acquire the understanding by perusing the QEPs generated by a RDBMS. Unfortunately, in practice, it is often daunting for a learner to comprehend these QEPs containing vendor-specific implementation details, hindering her learning process. In this paper, we present a novel, end-to-end, generic system called lantern that generates a natural language description of a qep to facilitate understanding of the query execution steps. It takes as input an SQL query and its QEP, and generates a natural language description of the execution strategy deployed by the underlying RDBMS. Specifically, it deploys a declarative framework called pool that enables subject matter experts to efficiently create and maintain natural language descriptions of physical operators used in QEPs. A rule-based framework called RULE-LANTERN is proposed that exploits pool to generate natural language descriptions of QEPs. Despite the high accuracy of RULE-LANTERN, our engagement with learners reveal that, consistent with existing psychology theories, perusing such rule-based descriptions lead to boredom due to repetitive statements across different QEPs. To address this issue, we present a novel deep learning-based language generation framework called NEURAL-LANTERN that infuses language variability in the generated description by exploiting a set of paraphrasing tools and word embedding. Our experimental study with real learners shows the effectiveness of lantern in facilitating comprehension of QEPs.

Keywords

Cite

@article{arxiv.2103.00740,
  title  = {Towards Enhancing Database Education: Natural Language Generation Meets Query Execution Plans},
  author = {Weiguo Wang and Sourav S Bhowmick and Hui Li and Shafiq R Joty and Siyuan Liu and Peng Chen},
  journal= {arXiv preprint arXiv:2103.00740},
  year   = {2021}
}

Comments

16 pages, 10 figures, SIGMOD2021

R2 v1 2026-06-23T23:36:05.223Z