Bio-KGvec2go: Serving up-to-date Dynamic Biomedical Knowledge Graph Embeddings
- URL: http://arxiv.org/abs/2509.07905v1
- Date: Tue, 09 Sep 2025 16:46:47 GMT
- Title: Bio-KGvec2go: Serving up-to-date Dynamic Biomedical Knowledge Graph Embeddings
- Authors: Hamid Ahmad, Heiko Paulheim, Rita T. Sousa,
- Abstract summary: We present Bio-vec2go, an extension of the KGvec2go Web API, designed to generate and serve knowledge graph embeddings.<n>By offering up-to-date embeddings with minimal effort required from computational users, Bio-vec2go is efficient and timely biomedical research.
- Score: 3.0778023655689144
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Knowledge graphs and ontologies represent entities and their relationships in a structured way, having gained significance in the development of modern AI applications. Integrating these semantic resources with machine learning models often relies on knowledge graph embedding models to transform graph data into numerical representations. Therefore, pre-trained models for popular knowledge graphs and ontologies are increasingly valuable, as they spare the need to retrain models for different tasks using the same data, thereby helping to democratize AI development and enabling sustainable computing. In this paper, we present Bio-KGvec2go, an extension of the KGvec2go Web API, designed to generate and serve knowledge graph embeddings for widely used biomedical ontologies. Given the dynamic nature of these ontologies, Bio-KGvec2go also supports regular updates aligned with ontology version releases. By offering up-to-date embeddings with minimal computational effort required from users, Bio-KGvec2go facilitates efficient and timely biomedical research.
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