LinkML: An Open Data Modeling Framework
Sierra A.T. Moxon, Harold Solbrig, Nomi L. Harris, Patrick Kalita, Mark A. Miller, Sujay Patil, Kevin Schaper, Chris Bizon, J. Harry Caufield, Silvano Cirujano Cuesta, Corey Cox, Frank Dekervel, Damion M. Dooley, William D. Duncan, Tim Fliss, Sarah Gehrke, Adam S.L. Graefe

TL;DR
LinkML is an open, flexible framework that simplifies creating, validating, and sharing standardized data models across diverse scientific and technical domains, enhancing data interoperability and reuse.
Contribution
It introduces a versatile, syntax-agnostic language for defining, importing, and managing complex data schemas, promoting interoperability and FAIR compliance.
Findings
Adoption across multiple scientific fields
Supports complex, interrelated data models
Reduces heterogeneity in data modeling
Abstract
Scientific research relies on well-structured, standardized data; however, much of it is stored in formats such as free-text lab notebooks, non-standardized spreadsheets, or data repositories. This lack of structure challenges interoperability, making data integration, validation, and reuse difficult. LinkML (Linked Data Modeling Language) is an open framework that simplifies the process of authoring, validating, and sharing data. LinkML can describe a range of data structures, from flat, list-based models to complex, interrelated, and normalized models that utilize polymorphism and compound inheritance. It offers an approachable syntax that is not tied to any one technical architecture and can be integrated seamlessly with many existing frameworks. The LinkML syntax provides a standard way to describe schemas, classes, and relationships, allowing modelers to build well-defined, stable,…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsBiomedical Text Mining and Ontologies · Environmental Monitoring and Data Management · Semantic Web and Ontologies
