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Recent efforts in learned cardinality estimation (CE) have substantially improved estimation accuracy and query plans inside query optimizers. However, achieving decent efficiency, scalability, and the support of a wide range of queries at the same time, has remained questionable. Rather than falling back to traditional approaches to trade off one criterion with another, we present a new learned approach that achieves all these. Our method, called ASM, harmonizes autoregressive models for per-table statistics estimation, sampling for merging these statistics for join queries, and multi-dimensional statistics merging that extends the sampling for estimating thousands of sub-queries, without assuming independence between join keys. Extensive experiments show that ASM significantly improves query plans under a similar or smaller overhead than the previous learned methods and supports a wider range of queries.
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Kyoungmin Kim
Hannam University
Sangoh Lee
Injung Kim
Handong Global University
Proceedings of the ACM on Management of Data
Pohang University of Science and Technology
Handong Global University
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Kim et al. (Tue,) studied this question.
synapsesocial.com/papers/68e745a8b6db6435876be98d — DOI: https://doi.org/10.1145/3639300