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Deep Learning for Web Attack Detection Using Transformers (Prof. Khalid Al-Zamel)

Location:
Graduate Seminar Room S02D1141

Thesis or Project Presentation
Presenter(s):
Eng. Walaa Kabbani

Computer Engineering Department

As web applications continue to grow, the attack surface for service providers has expanded significantly due to the constant development of attack technologies. This exposes any Internet-connected node to the risk of being targeted within a very short period of its public release. In our research, we introduce an innovative approach to detect web attacks using HTTPBERT, a transformer-based model that is fine-tuned on HTTP requests using Masked Language Modeling (MLM). Our model surpasses existing research in the field and maintains consistent performance across four different datasets, demonstrating significant potential for real-world applications. Our HTTPBERT model achieves an impressive accuracy rate of 99.2% and an F1-score of 99.5% on average. Furthermore, recognizing the scarcity of recent and realistic publicly available datasets, we have developed a dataset that can serve as a foundational resource for future research in this domain.

Supervisor: Prof. Khalid Al-Zamel
Convener: Prof. Mehmet Karaata
Examination Committee: Prof. Mehmet Karaata , Prof. Mahmoud Ben Naser