Query processing and optimisation research is a key research area within data management and data science that focuses on efficiently retrieving and managing data in databases. This field explores how queries are interpreted, transformed, and executed to improve performance and resource use in database management systems (DBMS). Understanding query processing and optimization in DBMS is essential for reliable data handling and faster information retrieval. JoVE Visualize enriches this knowledge by pairing relevant PubMed articles with JoVE’s experiment videos, offering researchers and students clear insights into methods and results.
Traditional approaches to query processing in DBMS often involve parsing, query rewriting, and cost-based optimization using established algorithms like dynamic programming and heuristic methods. These techniques focus on optimizing query execution plans to reduce response time and computational overhead. Common examples include SQL query optimization, indexing strategies, and join algorithms. Understanding what are the four steps of query processing—parsing, translation, optimization, and execution—is fundamental in this domain and frequently explored in research and practical applications.
Recent research highlights innovative methods such as adaptive query processing, machine learning-based optimization, and cloud-native query execution frameworks. Advances in distributed databases and big data environments have introduced novel optimizations that enhance scalability and efficiency. Techniques addressing query processing and optimisation in SQL Server and other modern database platforms are also gaining attention. Additionally, researchers are investigating automated tuning and real-time plan adjustments to meet evolving data demands more effectively.
İrem Giray, Ausaf A Farooqui
Xianglei Pan, Ke Cui, Aoran Zheng, Zhongjie Ren, Jun Ma, Rihong Zhu
Fatemeh Yavari, Ali Motie Nasrabadi, Fereidoun Nowshiravan Rahatabad, Mahmood Amiri
Xue Dong, Yubo Lan, Zongmin Zhao, Chang Cai, Zhiming Zhou, Tong Zhang, Pingli Han, Meng Xiang, Jinpeng Liu, Peiyue Xie, Fei Liu
Atsushi Eda, Toya Fujita, Hiromasa Oku
Weiqi Liu, Minghui Zhang, Jin Qi, Tao Wang
Mingze Wu, Yiming Bian, Junhui Li, Song Yu, Yichen Zhang
Yifei Chen, Qinnan Zhang, Tianyun Liu, Jiaosheng Li