111 research outputs found
Exact Solutions for M/M/c/Setup Queues
Recently multiserver queues with setup times have been extensively studied
because they have applications in power-saving data centers. The most
challenging model is the M/M//Setup queue where a server is turned off when
it is idle and is turned on if there are some waiting jobs. Recently, Gandhi et
al.~(SIGMETRICS 2013, QUESTA 2014) present the recursive renewal reward
approach as a new mathematical tool to analyze the model. In this paper, we
derive exact solutions for the same model using two alternative methodologies:
generating function approach and matrix analytic method. The former yields
several theoretical insights into the systems while the latter provides an
exact recursive algorithm to calculate the joint stationary distribution and
then some performance measures so as to give new application insights.Comment: Submitted for revie
Single server retrial queues with speed scaling: analysis and performance evaluation
Recently, queues with speed scaling have received considerable attention due to their applicability to data centers, enabling a better balance between performance and energy consumption. This paper proposes a new model where blocked customers must leave the service area and retry after a random time, with retrial rate either varying proportionally to the number of retrying customers (linear retrial rate) or non-varying (constant retrial rate). For both, we first study a basic case and then subsequently incorporate the concepts of a setup time and a deactivation time in extended versions of the model. In all cases, we obtain a full characterization of the stationary queue length distribution. This allows us to evaluate the performance in terms of the mentioned balance between performance and energy, using an existing cost function as well as a newly proposed variant thereof. This paper presents the derivation of the stationary distribution as well as several numerical examples of the cost-based performance evaluation
Design and Analysis of Deadline and Budget Constrained Autoscaling (DBCA) Algorithm for 5G Mobile Networks
In cloud computing paradigm, virtual resource autoscaling approaches have been intensively studied recent years. Those approaches dynamically scale in/out virtual resources to adjust system performance for saving operation cost. However, designing the autoscaling algorithm for desired performance with limited budget, while considering the existing capacity of legacy network equipment, is not a trivial task. In this paper, we propose a Deadline and Budget Constrained Autoscaling (DBCA) algorithm for addressing the budget-performance tradeoff. We develop an analytical model to quantify the tradeoff and cross-validate the model by extensive simulations. The results show that the DBCA can significantly improve system performance given the budget upper-bound. In addition, the model provides a quick way to evaluate the budget-performance tradeoff and system design without wide deployment, saving on cost and time
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