• Corpus ID: 34058274

Predictive networking and optimization for flow-based networks

  title={Predictive networking and optimization for flow-based networks},
  author={Michael Arnold},
Artificial Neural Networks (ANNs) were used to classify neural network flows by flow size. After training the neural network was able to predict the size of a flows with 87% accuracy with a Feed Forward Neural Network. This demonstrates that flow based routers can prioritize candidate flows with a predicted large number of packets for priority insertion into hardware content-addressable memory. 

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