微服务架构中的API流量异常检测

M. Sowmya, Ankith Rai, V. Spoorthi, Md Irfan, Prasad B. Honnavalli, S. Nagasundari
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引用次数: 0

摘要

在当前的数字时代,数据是一项重要资产,经常成为网络攻击的目标。攻击者利用应用程序设计中的漏洞来执行数据窃取。因此,需要实现特定于应用程序体系结构的入侵检测机制。微服务体系结构主要被组织用来开发他们的软件应用程序。此应用程序设计体系结构是一组通过应用程序编程接口(api)进行交互的独立服务。随着API端点数量的增加,黑客利用应用程序的攻击面也在增加。可以监视这些端点和API调用的活动,以检查异常情况,这表明异常行为。API调用指的是向API端点发出的请求。服务之间的多个API调用在应用程序中生成API流量。可以分析此流量以检测异常行为。本文提出了一种基于机器学习的API流量异常检测(API- tad)技术,该技术可以在两个级别检测API流量中的异常-一个通用级别和一个特定应用级别。这使得它不仅在OSI模型的网络层,而且在应用层都能进行更加高效和准确的异常检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
API Traffic Anomaly Detection in Microservice Architecture
In the current Digital Age, data is an important asset that is constantly targeted in cyberattacks. Attackers make use of vulnerabilities in the application design to perform data theft. Therefore, there is a need to implement an intrusion detection mechanism that is specific to the application architecture. The Microservices Architecture is predominantly used by organizations to develop their software applications. This application design architecture is a group of individual services that interact through Application Programming Interfaces (APIs). As the number of API endpoints increases, there is an increase in the attack surface for hackers to exploit the application. The activity at these endpoints and API calls can be monitored to check for anomalies, which indicates abnormal behaviour. An API call refers to a request made to an API endpoint. Multiple API calls among the services generate API traffic in the application. This traffic can be analyzed for detecting unusual behaviour. In this paper, a machine-learning based technique, API Traffic Anomaly Detection (API-TAD), that detects anomalies in API traffic at two levels – a generalized level, and an application-specific level is proposed. This makes it a more efficient and accurate anomaly detection, not only in the network layer of the OSI model, but also in the application layer.
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