In this paper, we develop the optimal minimum-energy scheduler for the adaptive joint allocation of the task sizes, computing rates, communication rates and communication powers in virtualized networked data centers (VNetDCs) that operate under hard per-job delay-constraints. The considered VNetDC platform works at the Middleware layer of the underlying protocol stack. It aims at supporting real-time stream service (such as, for example, the emerging big data stream computing (BDSC) services) by adopting the software-as-a-service (SaaS) computing model. Our objective is the minimization of the overall computing-plus-communication energy consumption. The main new contributions of the paper are the following ones: (i) the computing-plus-commu...
Cloud computing becomes an ideal computing paradigm for scientific and commercial applications. The ...
The emerging utilization of Software-as-a-Service (SaaS) Fog computing centers as an Internet virtua...
In this paper, we propose a traffic engineering-based adaptive approach to dynamically reconfigure t...
In this chapter, the authors develop the scheduler which optimizes the energy-vs.-performance trade-...
One of the major challenges that cloud providers face is minimizing power consumption of their data ...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we develop the optimal minimum-energy scheduler for the dynamic online joint allocati...
One of the major challenges that cloud providers face is minimizing power consumption of their data ...
Virtualized networked datacenters (VNDCs) are gaining considerable attention for stochastic task exe...
Performing real-time applications on top of virtualized cloud systems requires that the overall per-...
Cloud computing becomes an ideal computing paradigm for scientific and commercial applications. The ...
The emerging utilization of Software-as-a-Service (SaaS) Fog computing centers as an Internet virtua...
In this paper, we propose a traffic engineering-based adaptive approach to dynamically reconfigure t...
In this chapter, the authors develop the scheduler which optimizes the energy-vs.-performance trade-...
One of the major challenges that cloud providers face is minimizing power consumption of their data ...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose an adaptive online energy-aware scheduling algorithm by exploiting the rec...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we propose a dynamic resource provisioning scheduler to maximize the application thro...
In this paper, we develop the optimal minimum-energy scheduler for the dynamic online joint allocati...
One of the major challenges that cloud providers face is minimizing power consumption of their data ...
Virtualized networked datacenters (VNDCs) are gaining considerable attention for stochastic task exe...
Performing real-time applications on top of virtualized cloud systems requires that the overall per-...
Cloud computing becomes an ideal computing paradigm for scientific and commercial applications. The ...
The emerging utilization of Software-as-a-Service (SaaS) Fog computing centers as an Internet virtua...
In this paper, we propose a traffic engineering-based adaptive approach to dynamically reconfigure t...