This web page provides the artifacts related to our ESWC 2024 publication
entitled
“MLSea: A Semantic Layer for Discoverable Machine Learning”.
The resource includes:
MLSO: A machine learning ontology that reuses and extends state-of-the-art ontologies to describe ML workflows, configurations, experimental results, models, datasets and software implementations.
MLST: Eights Simple Knowledge Organization System (SKOS) taxonomies of ML-related concepts (e.g., task types, evaluation measures) with a combined total of 4532 SKOS concepts.
MLSea-KG: A declaratively constructed and regularly updated KG with more than 1.44 billion RDF triples of ML experiments, regarding datasets used in ML experiments, tasks, implementations and related hyper-parameters, experiment executions, their configuration settings and evaluation results, code notebooks and repositories, algorithms, publications, models, scientists and practitioners.