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CHORUS: Foundation Models for Unified Data Discovery and Exploration

About

We apply foundation models to data discovery and exploration tasks. Foundation models include large language models (LLMs) that show promising performance on a range of diverse tasks unrelated to their training. We show that these models are highly applicable to the data discovery and data exploration domain. When carefully used, they have superior capability on three representative tasks: table-class detection, column-type annotation and join-column prediction. On all three tasks, we show that a foundation-model-based approach outperforms the task-specific models and so the state of the art. Further, our approach often surpasses human-expert task performance. We investigate the fundamental characteristics of this approach including generalizability to several foundation models and the impact of non-determinism on the outputs. All in all, this suggests a future direction in which disparate data management tasks can be unified under foundation models.

Moe Kayali, Anton Lykov, Ilias Fountalis, Nikolaos Vasiloglou, Dan Olteanu, Dan Suciu• 2023

Related benchmarks

TaskDatasetResultRank
Semantic Type AnnotationSOTABsch
Micro-F10.603
12
Semantic Type AnnotationSOTAB sch-s
Micro-F160.3
12
Semantic Type AnnotationSOTAB dbp
Micro-F164.8
12
Semantic Type AnnotationWikiTable
Micro F1 Score15.3
12
Semantic Type AnnotationT2D
Micro-F183.4
12
Semantic Type AnnotationLimaye
Micro-F187.4
10
Semantic Type AnnotationEfthymiou
Micro-F182.5
10
Column Type AnnotationSOTAB-27
Micro-F10.585
9
Column Type AnnotationD4-11
Micro-F175
9
Column Type AnnotationPubchem-20+
Micro F168.3
9
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