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Deep Reinforcement Learning based Load Balancing Policy for balancing network traffic in datacenter environment

机译:基于深度强化学习的负载均衡策略,用于平衡数据中心环境中的网络流量

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Load balancer plays important role in handling a huge amount of network traffic by routing the request/traffic in such a way that clients get immediate response to their requests. But traffic management in this era of bigdata is becoming a challenging task and to maintain them with human support is becoming more expensive. We can address this challenge by applying Deep reinforcement learning for a network load balancer which will be both time and cost effective. Deep reinforcement learning understands and adjusts continuously with dynamic environment. Which can be used to optimize the performance of load balancer.
机译:负载平衡器在路由大量请求/流量时,在处理大量网络流量方面起着重要作用,使客户端能够立即对其请求做出响应。但是,在这个大数据时代,流量管理正成为一项具有挑战性的任务,在人工支持下进行维护变得越来越昂贵。我们可以通过将深度强化学习应用于网络负载平衡器来解决此挑战,这既节省时间又节省成本。深度强化学习了解动态环境并不断进行调整。可以用来优化负载均衡器的性能。

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