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A proximal algorithm for joint resource allocation and minimizing carbon footprint in geo-distributed fog computing

机译:地理分布式雾计算中用于联合资源分配和最小化碳足迹的近端算法

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Large-scale Internet applications, such as content distribution networks, are deployed in a geographically distributed manner and emit massive amounts of carbon footprint at the data center. To provide uniform low access latencies, Cisco has introduced Fog computing as a new paradigm which can transform the network edge into a distributed computing infrastructure for applications. Fog nodes are geographically distributed and the deployment size at each location reflects the regional demand for the application. Thus, we need to control the fraction of user traffic to data center to maximize the social welfare. In this paper, we consider the emerging problem of joint resource allocation and minimizing carbon footprint problem for video streaming service in Fog computing. To solve the largescale optimization, we develop a distributed algorithm based on the proximal algorithm and alternating direction method of multipliers (ADMM). The numerical results show that our algorithm converges to near optimum within fifteen iterations, and is insensitive to step sizes.
机译:诸如内容分发网络之类的大规模Internet应用程序以地理分布的方式进行部署,并在数据中心释放大量的碳足迹。为了提供统一的低访问延迟,Cisco引入了Fog计算作为一种新范例,可以将网络边缘转变为适用于应用程序的分布式计算基础架构。雾节点在地理上分布,并且每个位置的部署大小反映了对该应用程序的区域需求。因此,我们需要控制到数据中心的用户流量比例,以最大程度地提高社会福利。在本文中,我们考虑了在Fog计算中出现的联合资源分配问题和最小化视频流服务的碳足迹问题。为了解决大规模优化问题,我们基于近端算法和乘数交替方向法(ADMM)开发了一种分布式算法。数值结果表明,我们的算法在15次迭代中收敛至最佳状态,并且对步长不敏感。

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