2023
DOI: 10.1145/3588713
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Detect, Distill and Update: Learned DB Systems Facing Out of Distribution Data

Meghdad Kurmanji,
Peter Triantafillou

Abstract: Machine Learning (ML) is changing DBs as many DB components are being replaced by ML models. One open problem in this setting is how to update such ML models in the presence of data updates. We start this investigation focusing on data insertions (dominating updates in analytical DBs). We study how to update neural network (NN) models when new data follows a different distribution (a.k.a. it is "out-of-distribution" -- OOD), rendering previously-trained NNs inaccurate. A requirement in our problem setting is t… Show more

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Cited by 11 publications
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References 67 publications
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