posted on 2016-12-09, 16:15authored byC. H. G. Ferreira, J. C. Estrella, L. H. Nunes, Stephan Reiff-Marganiec, B. G. Batista, L. H. V. Nakamura, D. Leite, M. Peixoto, R. M. D. O. Libardi
This paper presents a cloud approach for low cost capacity
planning evaluations. To perform these evaluations we
have to specify and measure the workload on the target system
to discover issues and make the necessary adjustments.
However, due to high costs, these evaluations are usually
done using simulations, which does not consider stochastic
effects. We propose to use a tool named PEESOS, a generic
and flexible approach to apply real workloads and measure
used resources on these real systems. As a proof of concept,
our case study use a real ticket sales service to evaluate the
influence of scalability in the resource provisioning to show
how PEESOS can lower the cost of such real evaluations.
The results show the efficiency and savings that we can obtain
using PEESOS for large-scale capacity planning evaluations
before the real services are deployed. This approach
can avoid several problems that real services faces when they
launch.
Funding
The authors would like to thank National Council for Scientific
and Technological Development (CNPQ, process 139917/2014-
4) and S˜ao Paulo Research Fundation (FAPESP, processes
11/09524-7, 13/26420-6, 11/12670-5), for the support of this
research.
History
Citation
IEEE International Conference on Communications 21-25 May 2017, Paris, France Bridging People, Communities, and Cultures
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Computer Science
Source
IEEE International Conference on Communications 21-25 May 2017, Paris, France Bridging People, Communities, and Cultures
Version
AM (Accepted Manuscript)
Published in
IEEE International Conference on Communications 21-25 May 2017
Publisher
Institute of Electrical and Electronics Engineers (IEEE)