ICT Express (Mar 2022)

Data preprocessing for machine-learning-based adaptive data center transmission

  • Kamran Keykhosravi,
  • Ahad Hamednia,
  • Houman Rastegarfar,
  • Erik Agrell

Journal volume & issue
Vol. 8, no. 1
pp. 37 – 43

Abstract

Read online

To enable optical interconnect fluidity in next-generation data centers, we propose adaptive transmission based on machine learning in a wavelength-routing network. We consider programmable transmitters that can apply N possible code rates to connections based on predicted bit error rate (BER) values. To classify the BER, we employ a preprocessing algorithm to feed the traffic data to a neural network classifier. We demonstrate the significance of our proposed preprocessing algorithm and the classifier performance for different values of N and switch port count.

Keywords