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Machine Learning for Dynamic Resource Allocation in Network Function Virtualization

机译:网络功能虚拟化中用于动态资源分配的机器学习

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Network function virtualization (NFV) proposes to replace physical middleboxes with more flexible virtual network functions (VNFs). To dynamically adjust to ever-changing traffic demands, VNFs have to be instantiated and their allocated resources have to be adjusted on demand. Deciding the amount of allocated resources is non-trivial. Existing optimization approaches often assume fixed resource requirements for each VNF instance. However, this can easily lead to either waste of resources or bad service quality if too many or too few resources are allocated. To solve this problem, we train machine learning models on real VNF data, containing measurements of performance and resource requirements. For each VNF, the trained models can then accurately predict the required resources to handle a certain traffic load. We integrate these machine learning models into an algorithm for joint VNF scaling and placement and evaluate their impact on resulting VNF placements. Our evaluation based on real-world data shows that using suitable machine learning models effectively avoids over- and under-allocation of resources, leading to up to 12 times lower resource consumption and better service quality with up to 4.5 times lower total delay than using standard fixed resource allocation.
机译:网络功能虚拟化(NFV)建议用更灵活的虚拟网络功能(VNF)代替物理中间盒。为了动态调整以适应不断变化的流量需求,必须实例化VNF,并且必须根据需要调整其分配的资源。确定分配的资源数量并非易事。现有的优化方法通常假定每个VNF实例的资源需求都是固定的。但是,如果分配的资源太多或太少,很容易导致资源浪费或服务质量下降。为了解决这个问题,我们在真实的VNF数据上训练了机器学习模型,其中包含性能和资源需求的度量。然后,对于每个VNF,经过训练的模型可以准确地预测所需的资源以处理特定的流量负载。我们将这些机器学习模型集成到用于联合VNF缩放和放置的算法中,并评估它们对生成的VNF放置的影响。我们根据实际数据进行的评估表明,使用合适的机器学习模型可以有效避免资源的过度分配和分配不足,从而导致资源消耗降低多达12倍,服务质量更好,总延迟比使用标准降低4.5倍固定资源分配。

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