2022
DOI: 10.48550/arxiv.2207.08544
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Hardware-agnostic Computation for Large-scale Knowledge Graph Embeddings

Abstract: Knowledge graph embedding research has mainly focused on learning continuous representations of knowledge graphs towards the link prediction problem. Recently developed frameworks can be effectively applied in research related applications. Yet, these frameworks do not fulfill many requirements of real-world applications. As the size of the knowledge graph grows, moving computation from a commodity computer to a cluster of computers in these frameworks becomes more challenging. Finding suitable hyperparameter … Show more

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