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This repository includes the code base used in the paper "Is Your Learned Query Optimizer Behaving As You Expect? A Machine Learning Perspective", accepted at VLDB2024, the 50th International Conference on Very Large Databases.
☆18Feb 22, 2024Updated last year
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