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Introduction to Graph Neural Networks and What We Can Implement in the Wolfram Language
Mike Yeh
I will give a quick review of the ideas of graph neural networks (GNN), then overview the potential types of GNN and show more details of algorithms that can be implemented in the Wolfram Language. I will then show how to implement these types of GNN in the Wolfram Language.
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Channels: Technology Conference
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