Efficient resource placement in cloud computing and network applications
We address the problem of resource placement in general networking applications, in
particular cloud computing. We consider a large-scale service faced by regionally distributed
demands for various resources. The service aims at placing the resources across regions to
maximize profit, accounting for demand granting revenues minus resource placement costs.
Cloud computing and online services, utilizing regional datacenters and facing the problem
of where and how much to place various servers, naturally fall under this paradigm. The …
particular cloud computing. We consider a large-scale service faced by regionally distributed
demands for various resources. The service aims at placing the resources across regions to
maximize profit, accounting for demand granting revenues minus resource placement costs.
Cloud computing and online services, utilizing regional datacenters and facing the problem
of where and how much to place various servers, naturally fall under this paradigm. The …
We address the problem of resource placement in general networking applications, in particular cloud computing. We consider a large-scale service faced by regionally distributed demands for various resources. The service aims at placing the resources across regions to maximize profit, accounting for demand granting revenues minus resource placement costs. Cloud computing and online services, utilizing regional datacenters and facing the problem of where and how much to place various servers, naturally fall under this paradigm.
The main challenge posed by this setting is the need to deal with arbitrary multi-dimensional stochastic demands. We show that, despite the challenging stochastic combinatorial complexity, one can optimize the system operation using fairly efficient algorithms.
ACM Digital Library