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Intelligent VNF Orchestration and Flow Scheduling via Model-Assisted Deep Reinforcement Learning

机译:智能VNF编排和流量调度通过模型辅助深度加强学习

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摘要

Hosting virtualized network functions (VNF) has been regarded as an effective way to realize network function virtualization (NFV). Considering the cost diversity in cloud computing, from the perspective of service providers, it is significant to orchestrate the VNFs and schedule the traffic flows for network utility maximization (NUM) as it implies maximal revenue. However, traditional heuristic solutions based on optimization models usually follow some assumptions, limiting their applicability. Recent studies have shown that deep reinforcement learning (DRL) is a promising way to tackle such limitations. However, DRL agent training also suffers from slow convergence problem, especially with complex control problems. We notice that optimization models actually can be applied to accelerate the DRL training. Therefore, we are motivated to design a model-assisted DRL framework for VNF orchestration in this paper. Other than letting the agent blindly explore actions, the heuristic solutions are used to guide the training process. Based on such principle, the DRL framework is also redesigned accordingly. Experiment results validate the high efficiency of our model-assisted DRL framework as it not only converges $23imes$ faster than traditional DRL algorithm, but also with higher performance at the same time.
机译:托管虚拟化网络功能(VNF)被认为是实现网络功能虚拟化(NFV)的有效方法。考虑到云计算的成本分集,从服务提供商的角度来看,协调VNFS很重要,并计划网络实用程序最大化(NUM)的流量流量,因为它意味着最大收入。然而,基于优化模型的传统启发式解决方案通常遵循一些假设,限制了他们的适用性。最近的研究表明,深增强学习(DRL)是解决这些限制的有希望的方式。然而,DRL代理培训也遭受了缓慢的收敛问题,尤其是复杂的控制问题。我们注意到优化模型实际上可以应用于加速DRL培训。因此,我们在本文中设计了设计用于VNF Orchestration的模型辅助DRL框架。除了让代理人盲目探索行动之外,启发式解决方案用于指导培训过程。基于此原则,DRL框架也相应地重新设计。实验结果验证了我们模型辅助DRL框架的高效率,因为它不仅会比传统的DRL算法更快地汇聚23美元,而且同时具有更高的性能。

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