在云环境中高效和有效的网络事件检测和响应的人工智能驱动系统

Mohammed Ashfaaq M. Farzaan;Mohamed Chahine Ghanem;Ayman El-Hajjar;Deepthi N. Ratnayake
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引用次数: 0

摘要

云环境中日益复杂和频繁的网络威胁需要创新和自动化的解决方案,以保持有效和高效的事件响应。本研究通过引入专门为云平台设计的尖端人工智能驱动的网络事件响应系统来解决这一紧迫问题。与传统方法不同,我们的系统采用先进的人工智能(AI)和机器学习(ML)技术,与谷歌云和微软Azure等平台提供准确、可扩展和无缝的集成。关键特性包括一个自动化的管道,它将网络流量分类、Web入侵检测和事后恶意软件分析集成到一个通过Flask应用程序实现的内聚框架中。为了验证该系统的有效性,我们使用三个重要的数据集进行了测试:NSL-KDD, UNSW-NB15和CIC-IDS-2017。随机森林模型在网络流量分类方面分别达到了90%、75%和99%的准确率,而在恶意软件分析方面达到了96%的准确率。此外,基于神经网络的恶意软件分析模型设定了新的基准,准确率高达99%。通过将深度学习模型与基于云的gpu和tpu相结合,我们展示了如何在不影响效率的情况下满足高计算需求。此外,容器化确保了系统在广泛的云环境中既可扩展又可移植。通过减少事件响应时间,降低操作风险,并提供经济高效的部署,我们的系统为组织提供了一个强大的工具来主动保护他们的云基础设施。这种人工智能和容器化架构的创新集成不仅在威胁检测方面树立了新的基准,而且还显著推进了网络安全的最新发展,有望为关键行业带来变革性的好处。这项研究通过展示人工智能模型和云基础设施的强大结合,填补了网络事件响应的关键空白,为人工智能驱动的网络安全领域做出了重大贡献。我们的研究结果强调了随机森林和深度学习模型在准确识别和分类网络威胁方面的卓越性能,为云环境中的实际部署设定了新的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Powered System for an Efficient and Effective Cyber Incidents Detection and Response in Cloud Environments
The growing complexity and frequency of cyber threats in cloud environments call for innovative and automated solutions to maintain effective and efficient incident response. This study tackles this urgent issue by introducing a cutting-edge AI-driven cyber incident response system specifically designed for cloud platforms. Unlike conventional methods, our system employs advanced Artificial Intelligence (AI) and Machine Learning (ML) techniques to provide accurate, scalable, and seamless integration with platforms like Google Cloud and Microsoft Azure. Key features include an automated pipeline that integrates Network Traffic Classification, Web Intrusion Detection, and Post-Incident Malware Analysis into a cohesive framework implemented via a Flask application. To validate the effectiveness of the system, we tested it using three prominent datasets: NSL-KDD, UNSW-NB15, and CIC-IDS-2017. The Random Forest model achieved accuracies of 90%, 75%, and 99%, respectively, for the classification of network traffic, while it attained 96% precision for malware analysis. Furthermore, a neural network-based malware analysis model set a new benchmark with an impressive accuracy rate of 99%. By incorporating deep learning models with cloud-based GPUs and TPUs, we demonstrate how to meet high computational demands without compromising efficiency. Furthermore, containerisation ensures that the system is both scalable and portable across a wide range of cloud environments. By reducing incident response times, lowering operational risks, and offering cost-effective deployment, our system equips organizations with a robust tool to proactively safeguard their cloud infrastructure. This innovative integration of AI and containerised architecture not only sets a new benchmark in threat detection but also significantly advances the state-of-the-art in cybersecurity, promising transformative benefits for critical industries. This research makes a significant contribution to the field of AI-powered cybersecurity by showcasing the powerful combination of AI models and cloud infrastructure to fill critical gaps in cyber incident response. Our findings emphasise the superior performance of Random Forest and deep learning models in accurately identifying and classifying cyber threats, setting a new standard for real-world deployment in cloud environments.
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