Provenance Information for Materials Science Ontology
This is the Provenance Information for Materials Science (PRIMA) Ontology, version 3.0, aligned with PMDco v3 and based on BFO (Basic Formal Ontology). This complete module imports all PRIMA modules (core, data-analysis-lifecycle, dataset, experiment, and computational) in their v3.0 versions. [from https://purls.helmholtz-metadaten.de/prima/complete]
README
The PRIMA Ontology This repository collects the ongoing work towards the development of the top-level ontology based on common terms defined for the Joint Lab "Integrated Model and Data Driven Materials Characterization" (MDMC) and for the "Nanoscience Foundries and Fine Analysis Europe Pilot" (NEP). The top-level glossary defining the terms is available (as a living document which can be constantly updated) on the NEP website: https://www.nffa.eu/apply/data-policy/glossary The aim of this…
Source attribution
- Bioregistry — prima
- Bioregistry — prima.computational
- Bioregistry — prima.dataset
- Bioregistry — prima.core
- Bioregistry — prima.dal
- GitHub — github.com/materials-data-science-and-informatics/mdmc-nep-top-level-ontology
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