GRACEFUL: A Learned Cost Estimator For UDFs

March 31, 2025 Β· Declared Dead Β· πŸ› IEEE International Conference on Data Engineering

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Authors Johannes Wehrstein, Tiemo Bang, Roman Heinrich, Carsten Binnig arXiv ID 2503.23863 Category cs.DB: Databases Citations 2 Venue IEEE International Conference on Data Engineering Last Checked 4 months ago
Abstract
User-Defined-Functions (UDFs) are a pivotal feature in modern DBMS, enabling the extension of native DBMS functionality with custom logic. However, the integration of UDFs into query optimization processes poses significant challenges, primarily due to the difficulty of estimating UDF execution costs. Consequently, existing cost models in DBMS optimizers largely ignore UDFs or rely on static assumptions, resulting in suboptimal performance for queries involving UDFs. In this paper, we introduce GRACEFUL, a novel learned cost model to make accurate cost predictions of query plans with UDFs enabling optimization decisions for UDFs in DBMS. For example, as we show in our evaluation, using our cost model, we can achieve 50x speedups through informed pull-up/push-down filter decisions of the UDF compared to the standard case where always a filter push-down is applied. Additionally, we release a synthetic dataset of over 90,000 UDF queries to promote further research in this area.
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