CAPoW: Context-Aware AI-Assisted Proof of Work based DDoS Defense

Trisha Chakraborty, Shaswata Mitra, Sudip Mittal
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引用次数: 1

Abstract

Critical servers can be secured against distributed denial of service (DDoS) attacks using proof of work (PoW) systems assisted by an Artificial Intelligence (AI) that learns contextual network request patterns. In this work, we introduce CAPoW, a context-aware anti-DDoS framework that injects latency adaptively during communication by utilizing context-aware PoW puzzles. In CAPoW, a security professional can define relevant request context attributes which can be learned by the AI system. These contextual attributes can include information about the user request, such as IP address, time, flow-level information, etc., and are utilized to generate a contextual score for incoming requests that influence the hardness of a PoW puzzle. These puzzles need to be solved by a user before the server begins to process their request. Solving puzzles slow down the volume of incoming adversarial requests. Additionally, the framework compels the adversary to incur a cost per request, hence making it expensive for an adversary to prolong a DDoS attack. We include the theoretical foundations of the CAPoW framework along with a description of its implementation and evaluation.
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CAPoW:基于上下文感知的ai辅助工作量证明的DDoS防御
使用由人工智能(AI)辅助的工作量证明(PoW)系统,可以保护关键服务器免受分布式拒绝服务(DDoS)攻击,人工智能(AI)可以学习上下文网络请求模式。在这项工作中,我们介绍了CAPoW,这是一个上下文感知的反ddos框架,通过利用上下文感知的PoW谜题,在通信过程中自适应地注入延迟。在CAPoW中,安全专业人员可以定义AI系统可以学习的相关请求上下文属性。这些上下文属性可以包括有关用户请求的信息,例如IP地址、时间、流级别信息等,并用于为影响PoW难题难度的传入请求生成上下文分数。在服务器开始处理他们的请求之前,用户需要解决这些难题。解决谜题可以减缓传入的对抗性请求的数量。此外,该框架迫使攻击者为每个请求付出代价,从而使攻击者延长DDoS攻击的代价高昂。我们包括CAPoW框架的理论基础以及对其实现和评估的描述。
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