The Artificial Intelligence Ontology
This ontology models classes and relationships describing deep learning networks, their component layers and activation functions, as well as potential biases.
README
Artificial Intelligence Ontology (AIO) An ontology modeling classes and relationships describing deep learning networks, their component layers and activation functions, machine learning methods, as well as AI/ML potential biases. More information can be found at or on BioPortal at Versions Stable release versions The latest version of the ontology can always be found in this repository in aio.owl Editors' version Editors of this ontology should use the edit version, src/ontology/aio-edit.owl…
Source attribution
- GitHub — github.com/berkeleybop/artificial-intelligence-ontology
- Bioregistry — aio
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