Learning Reduced Order Dynamics via Geometric Representations
Imran Nasim, Melanie Weber
SCML 2024
Cloud-computing shares a common pool of resources across customers at a scale that is orders of magnitude larger than traditional multiuser systems. Constituent physical compute servers are allocated multiple 'virtual machines' (VMs) to serve simultaneously. EachVMuser should ideally be unaffected by others'demand. Naturally, this environment produces new challenges for the service providers in meeting customer expectations while extracting an efficient utilization from server resources. We study a newcloud service metric that measures prolonged latency or delay suffered by customers. We model the workload process of a cloud server and analyze the process as the customer population grows. The capacity required to ensure that the average workload does not exceed a threshold over long segments is characterized. This can be used by cloud operators to provide service guarantees on avoiding long durations of latency. As part of the analysis, we provide a uniform large deviation principle for collections of random variables that is of independent interest. © Applied Probability Trust 2012.
Imran Nasim, Melanie Weber
SCML 2024
Satoshi Hada
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences
Sankar Basu
Journal of the Franklin Institute
J.R.M. Hosking, Ramesh Natarajan, et al.
Appl Stochastic Models Bus Indus