Application of Deep Learning on Integrating Prediction, Provenance, and Optimization

Application of Deep Learning on Integrating Prediction, Provenance, and Optimization

Application of Deep Learning on Integrating Prediction, Provenance, and Optimization

In this research, we investigated two approaches to detect job anomalies and/or contention for large scale computing efforts: 

  1. Preemptive job scheduling using binomial classification long short-term memory networks
  2. Forecasting intra-node computing loads from the active jobs and additional job(s) 

For approach 1, we achieved a 14% improvement in computational resources utilization and an overall classification accuracy of 85% on real tasks executed in a High Energy Physics computing workflow. For this paper, we present the preliminary results used in second approach.