Deep learning trends and future perspectives of web security and vulnerabilities

Web applications play a vital role in modern digital world. Their pervasiveness is mainly underpinned by numerous technological advances that can often lead to misconfigurations, thereby opening a way for a variety of attack vectors. The rapid development of E-commerce, big data, cloud computing and...

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Veröffentlicht in:Journal of high speed networks 2024-01, Vol.30 (1), p.115-146
Hauptverfasser: Chughtai, Muhammad Saad, Bibi, Irfana, Karim, Shahid, Shah, Syed Wajid Ali, Laghari, Asif Ali, Khan, Abdullah Ayub
Format: Artikel
Sprache:eng
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Zusammenfassung:Web applications play a vital role in modern digital world. Their pervasiveness is mainly underpinned by numerous technological advances that can often lead to misconfigurations, thereby opening a way for a variety of attack vectors. The rapid development of E-commerce, big data, cloud computing and other technologies, further enterprise services are entering to the internet world and have increasingly become the key targets of network attacks. Therefore, the appropriate remedies are essential to maintain the very fabric of security in digital world. This paper aims to identify such vulnerabilities that need to be addressed for ensuring the web security. We identify and compare the static, dynamic, and hybrid tools that can counter the prevalent attacks perpetrated through the identified vulnerabilities. Additionally, we also review the applications of AI in intrusion detection and pinpoint the research gaps. Finally, we cross-compare the various security models and highlight the relevant future research directions.
ISSN:0926-6801
1875-8940
DOI:10.3233/JHS-230037