AI RESEARCH
NOMAD: Generating Embeddings for Massive Distributed Graphs
arXiv CS.LG
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ArXi:2604.09419v1 Announce Type: new Successful machine learning on graphs or networks requires embeddings that not only represent nodes and edges as low-dimensional vectors but also preserve the graph structure. Established methods for generating embeddings require flexible exploration of the entire graph through repeated use of random walks that capture graph structure with samples of nodes and edges. These methods create scalability challenges for massive graphs with millions-to-billions of edges because single-node solutions have inadequate memory and processing capabilities.