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DARe: DropLayer-Aware Manycore ReRAM architecture for Training Graph Neural Networks

2021 IEEE/ACM International Conference On Computer Aided Design (ICCAD)(2021)

Cited 11|Views4
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Abstract
Graph Neural Networks (GNNs) are a variant of Deep Neural Networks (DNNs) operating on graphs. GNNs have attributes of both DNNs and graph computation. However, training GNNs on manycore architectures is a challenging task because it involves heavy communication that bottlenecks performance. DropEdge and Dropout, which we collectively refer to as DropLayer, are regularization techniques that can i...
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Key words
Training,Three-dimensional displays,Social networking (online),Graphics processing units,Computer architecture,Network-on-chip,Graph neural networks
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