Modeling the Impact of Workload on Cloud Resource Scaling

  • Anshul Gandhi IBM T. J. Watson Research Center Yorktown Heights / University Stony Brook
  • Parijat Dube IBM T. J. Watson Research Center Yorktown Heights
  • Alexei Karve IBM T. J. Watson Research Center Yorktown Heights
  • Andrzej Kochut IBM T. J. Watson Research Center Yorktown Heights
  • Li Zhang IBM T. J. Watson Research Center Yorktown Heights

Resumo


Cloud computing offers the flexibility to dynamically size the infrastructure in response to changes in workload demand. While both horizontal and vertical scaling of infrastructure is supported by major cloud providers, these scaling options differ significantly in terms of their cost, provisioning time, and their impact on workload performance. Importantly, the efficacy of horizontal and vertical scaling critically depends on the workload characteristics, such as the workload's parallelizability and its core scalability. In today's cloud systems, the scaling decision is left to the users, requiring them to fully understand the tradeoffs associated with the different scaling options. In this paper, we present our solution for optimizing the resource scaling of cloud deployments via implementation in OpenStack. The key component of our solution is the modelling engine that characterizes the workload and then quantitatively evaluates different scaling options for that workload. Our modelling engine leverages Amdahl's Law to model service time scaling in scaleup environments and queueing-theoretic concepts to model performance scaling in scale-out environments. We further employ Kalman filtering to account for inaccuracies in the model-based methodology, and to dynamically track changes in the workload and cloud environment.
Palavras-chave: Mathematical model, Time factors, Kalman filters, Engines, Monitoring, Load modeling, Equations
Publicado
22/10/2014
GANDHI, Anshul; DUBE, Parijat; KARVE, Alexei; KOCHUT, Andrzej; ZHANG, Li. Modeling the Impact of Workload on Cloud Resource Scaling. In: INTERNATIONAL SYMPOSIUM ON COMPUTER ARCHITECTURE AND HIGH PERFORMANCE COMPUTING (SBAC-PAD), 26. , 2014, Paris/FR. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2014 . p. 310-317.