Leveraging cloud data to mitigate user experience from ‘breaking bad’

@article{James2016LeveragingCD,
  title={Leveraging cloud data to mitigate user experience from ‘breaking bad’},
  author={Nicholas A. James and A. Kejariwal and D. Matteson},
  journal={2016 IEEE International Conference on Big Data (Big Data)},
  year={2016},
  pages={3499-3508}
}
Low latency and high availability of an app or a web service are key, amongst other factors, to the overall user experience (which in turn directly impacts the bottoniline). Exogenic and/or endogenic factors often give rise to breakouts in cloud data which makes maintaining high availability and delivering high performance very challenging. Existing breakout detection techniques are not suitable for cloud data owing to not being robust in the presence of anomalies. To this end, we developed a… Expand
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