More about HKUST
Towards Online Aggregation for SPJ Queries
MPhil Thesis Defence Title: "Towards Online Aggregation for SPJ Queries" By Mr. Yuan QIU Abstract Select-Project-Join (SPJ) Queries are essential building blocks of general queries. Efficiently estimating their output sizes critically affects the effectiveness of Cost-Based Optimizers (CBOs) in generating optimal query plans. Despite a rich literature in selection and join size estimation techniques, estimating the result size of a distinct projection remains an open problem when arbitrary filter and join conditions are present. In this thesis, we provide an efficient online aggregation algorithm for accurately estimating the result size of SPJ queries, equivalently the distinct count. By continuously sampling paths from the join, our algorithm quickly converges to the exact value. Comprehensive experiments are conducted to prove the new algorithm outperforms existing ones by orders of magnitudes. Date: Tuesday, 27 August 2019 Time: 3:00pm - 5:00pm Venue: Room 3494 Lifts 25/26 Committee Members: Prof. Ke Yi (Supervisor) Dr. Qiong Luo (Chairperson) Dr. Kai Chen **** ALL are Welcome ****