Talaya Farasat, Muhammad Ahmad Rathore, JongWon Kim
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引用次数: 1
摘要
安全是现代网络基础设施有效运行的基本要素。OF@TEIN游乐场over TEIN (Trans-Eurasia Information Network),是一个多站点的云,具有分布式的边缘节点,给安全带来了挑战。为了应对分布式边缘节点的安全挑战,最近推出了SmartX Multi-Sec框架。但是,它基于基于签名的网络威胁检测机制。基于当前网络流量规模不断增加的复杂性和异构性,机器学习能力比传统的基于签名的方法更有效地识别网络流量的隐藏和复杂模式。此外,为了应对当前安全解决方案的弱点,零信任模型操纵没有网络是可靠的。因此,云运营商应该持续监控和验证所有网络流量。因此,考虑到上述挑战,我们将通过专注于零信任并将机器学习技术用于网络威胁检测(特别是DDoS攻击)来增强SmartX多秒框架。此外,其原型版本已在OF@TEIN游乐场上实现,以显示其有效性。
Integrating Machine Learning for Network Threat Detection with SmartX Multi-Sec Framework
Security is an essential element for the effective operation of modern network infrastructures. OF@TEIN playground over TEIN (Trans-Eurasia Information Network), is a multi-site cloud with distributed edge nodes has brought the security challenges. In order to address the security challenges of distributed edge nodes, recently, SmartX Multi-Sec framework has been launched. However, it is based on a signature-based network threat detection mechanism. Depending on the current complex and heterogeneous nature of network traffic which is continuously increasing in scale, machine learning capabilities are more effective to recognize hidden and complex patterns of network traffic than traditional signature-based methods. Moreover, in response to the weaknesses of current security solutions, the zero-trust model manipulates that no network is reliable. Therefore, cloud operators should monitor and verify all network traffic continuously. So, by considering the above challenges, we are going to enhance the SmartX Multi-Sec framework by focusing on zero trust and incorporating machine learning techniques for network threat detection (specifically DDoS attacks). Moreover, its prototype version has been realized on the OF@TEIN playground to show its effectiveness.