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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >Innovative Schemes for Resource Allocation in the Cloud for Media Streaming Applications
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Innovative Schemes for Resource Allocation in the Cloud for Media Streaming Applications

机译:用于媒体流应用程序的云中资源分配的创新方案

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Media streaming applications have recently attracted a large number of users in the Internet. With the advent of these bandwidth-intensive applications, it is economically inefficient to provide streaming distribution with guaranteed QoS relying only on central resources at a media content provider. Cloud computing offers an elastic infrastructure that media content providers (e.g., Video on Demand (VoD) providers) can use to obtain streaming resources that match the demand. Media content providers are charged for the amount of resources allocated (reserved) in the cloud. Most of the existing cloud providers employ a pricing model for the reserved resources that is based on non-linear time-discount tariffs (e.g., Amazon CloudFront and Amazon EC2). Such a pricing scheme offers discount rates depending non-linearly on the period of time during which the resources are reserved in the cloud. In this case, an open problem is to decide on both the right amount of resources reserved in the cloud, and their reservation time such that the financial cost on the media content provider is minimized. We propose a simple—easy to implement—algorithm for resource reservation that maximally exploits discounted rates offered in the tariffs, while ensuring that sufficient resources are reserved in the cloud. Based on the prediction of demand for streaming capacity, our algorithm is carefully designed to reduce the risk of making wrong resource allocation decisions. The results of our numerical evaluations and simulations show that the proposed algorithm significantly reduces the monetary cost of resource allocations in the cloud as compared to other conventional schemes.
机译:媒体流应用程序最近吸引了Internet上的大量用户。随着这些带宽密集型应用的出现,仅依靠媒体内容提供商处的中央资源来提供具有保证的QoS的流分发在经济上效率低下。云计算提供了一种弹性的基础架构,媒体内容提供商(例如,视频点播(VoD)提供商)可以用来获取与需求匹配的流资源。媒体内容提供商需要为云中分配(保留)的资源量付费。现有的大多数云提供商都采用基于非线性时间折扣费率的预留资源定价模型(例如Amazon CloudFront和Amazon EC2)。这样的定价方案非线性地提供折扣率,该折扣率取决于在云中保留资源的时间段。在这种情况下,一个开放的问题是要决定在云中保留的资源的正确数量及其保留时间,以使媒体内容提供者的财务成本最小化。我们提出了一种简单,易于实施的资源预留算法,该算法最大程度地利用了关税中提供的折现率,同时确保在云中预留了足够的资源。基于对流容量需求的预测,我们的算法经过精心设计,以减少做出错误的资源分配决策的风险。我们的数值评估和仿真结果表明,与其他常规方案相比,该算法显着降低了云中资源分配的货币成本。

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