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Sudipta Mondal – ProQuest LLC, 2024
Graph neural networks (GNN) are vital for analyzing real-world problems (e.g., network analysis, drug interaction, electronic design automation, e-commerce) that use graph models. However, efficient GNN acceleration faces with multiple challenges related to high and variable sparsity of input feature vectors, power-law degree distribution in the…
Descriptors: Graphs, Models, Computers, Scaling

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