TY - JOUR
T1 - In-Context Adaptation to Concept Drift for Learned Database Operations
AU - Zhu, Jiaqi
AU - Cai, Shaofeng
AU - Shen, Yanyan
AU - Chen, Gang
AU - Deng, Fang
AU - Ooi, Beng Chin
N1 - Publisher Copyright:
© 2025 by the author(s).
PY - 2025
Y1 - 2025
N2 - Machine learning has demonstrated transformative potential for database operations, such as query optimization and in-database data analytics. However, dynamic database environments, characterized by frequent updates and evolving data distributions, introduce concept drift, which leads to performance degradation for learned models and limits their practical applicability. Addressing this challenge requires efficient frameworks capable of adapting to shifting concepts while minimizing the overhead of retraining or fine-tuning. In this paper, we propose FLAIR, an online adaptation framework that introduces a new paradigm called in-context adaptation for learned database operations. FLAIR leverages the inherent property of data systems, i.e., immediate availability of execution results for predictions, to enable dynamic context construction. By formalizing adaptation as f:(x|Ct)→y, with Ct representing a dynamic context memory, FLAIR delivers predictions aligned with the current concept, eliminating the need for runtime parameter optimization. To achieve this, FLAIR integrates two key modules: a Task Featurization Module for encoding task-specific features into standardized representations, and a Dynamic Decision Engine, pre-trained via Bayesian meta-training, to adapt seamlessly using contextual information at runtime. Extensive experiments across key database tasks demonstrate that FLAIR outperforms state-of-the-art baselines, achieving up to 5.2× faster adaptation and reducing error by 22.5% for cardinality estimation.
AB - Machine learning has demonstrated transformative potential for database operations, such as query optimization and in-database data analytics. However, dynamic database environments, characterized by frequent updates and evolving data distributions, introduce concept drift, which leads to performance degradation for learned models and limits their practical applicability. Addressing this challenge requires efficient frameworks capable of adapting to shifting concepts while minimizing the overhead of retraining or fine-tuning. In this paper, we propose FLAIR, an online adaptation framework that introduces a new paradigm called in-context adaptation for learned database operations. FLAIR leverages the inherent property of data systems, i.e., immediate availability of execution results for predictions, to enable dynamic context construction. By formalizing adaptation as f:(x|Ct)→y, with Ct representing a dynamic context memory, FLAIR delivers predictions aligned with the current concept, eliminating the need for runtime parameter optimization. To achieve this, FLAIR integrates two key modules: a Task Featurization Module for encoding task-specific features into standardized representations, and a Dynamic Decision Engine, pre-trained via Bayesian meta-training, to adapt seamlessly using contextual information at runtime. Extensive experiments across key database tasks demonstrate that FLAIR outperforms state-of-the-art baselines, achieving up to 5.2× faster adaptation and reducing error by 22.5% for cardinality estimation.
UR - https://www.scopus.com/pages/publications/105023566582
M3 - Conference article
AN - SCOPUS:105023566582
SN - 2640-3498
VL - 267
SP - 79699
EP - 79726
JO - Proceedings of Machine Learning Research
JF - Proceedings of Machine Learning Research
T2 - 42nd International Conference on Machine Learning, ICML 2025
Y2 - 13 July 2025 through 19 July 2025
ER -