Dongxu Yang – NVIDIA Technical Blog News and tutorials for developers, data scientists, and IT admins 2024-04-18T20:13:55Z http://www.open-lab.net/blog/feed/ Dongxu Yang <![CDATA[Optimizing Memory and Retrieval for Graph Neural Networks with WholeGraph, Part 2]]> http://www.open-lab.net/blog/?p=80232 2024-04-18T20:13:55Z 2024-04-03T22:24:10Z Large-scale graph neural network (GNN) training presents formidable challenges, particularly concerning the scale and complexity of graph data. These challenges...]]>

Large-scale graph neural network (GNN) training presents formidable challenges, particularly concerning the scale and complexity of graph data. These challenges extend beyond the typical concerns of neural network forward and backward computations, encompassing issues such as bandwidth-intensive graph feature gathering and sampling, and the limitations of single GPU capacities.

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Dongxu Yang <![CDATA[Optimizing Memory and Retrieval for Graph Neural Networks with WholeGraph, Part 1]]> http://www.open-lab.net/blog/?p=79288 2024-04-09T23:45:29Z 2024-03-08T22:13:55Z Graph neural networks (GNNs) have revolutionized machine learning for graph-structured data. Unlike traditional neural networks, GNNs are good at capturing...]]>

Graph neural networks (GNNs) have revolutionized machine learning for graph-structured data. Unlike traditional neural networks, GNNs are good at capturing intricate relationships in graphs, powering applications from social networks to chemistry. They shine particularly in scenarios like node classification, where they predict labels for graph nodes, and link prediction, where they determine the…

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