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Main Authors: Ganesh Arote, Pratham Bhosale, Vaishnavi Singh, Ravi Khatri
Format: Recurso digital
Language:English
Published: Zenodo 2026
Online Access:https://doi.org/10.5281/zenodo.19552974
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author Ganesh Arote
Pratham Bhosale
Vaishnavi Singh
Ravi Khatri
author_facet Ganesh Arote
Pratham Bhosale
Vaishnavi Singh
Ravi Khatri
contents <p class="MsoNormal"><span>The fact that cyber attacks are getting more complicated shows that perimeter-based security models don't do a good job of protecting complicated systems. This paper talks about a next-generation firewall (NGFW) that uses AI to help find new threats and make Zero Trust Architectures (ZTA) work better. The proposed solution uses advanced AI and machine learning to go beyond the usual static rule-based filtering of network traffic and user behavior. It analyzes each instance in real time.</span></p> <p class="MsoNormal"><span>The main goal of the study is to create a smart security framework based on the principle of "never trust, always verify." This is achieved by building deep learning models to detect anomalies and potential intrusions, which improves accuracy and lowers false positives. The thesis also looks into using automated logging on the blockchain for unchangeable auditing and the application of automated threat response systems. The study shows that an AI-powered approach greatly boosts an organization's security stance, offering a scalable and flexible solution to current cybersecurity challenges faced by enterprises.</span></p>
format Recurso digital
id zenodo_https___doi_org_10_5281_zenodo_19552974
institution Zenodo
language eng
publishDate 2026
publisher Zenodo
record_format zenodo
spellingShingle AI-Driven Next-Generation Firewall For Dynamic Threat Detection
Ganesh Arote
Pratham Bhosale
Vaishnavi Singh
Ravi Khatri
<p class="MsoNormal"><span>The fact that cyber attacks are getting more complicated shows that perimeter-based security models don't do a good job of protecting complicated systems. This paper talks about a next-generation firewall (NGFW) that uses AI to help find new threats and make Zero Trust Architectures (ZTA) work better. The proposed solution uses advanced AI and machine learning to go beyond the usual static rule-based filtering of network traffic and user behavior. It analyzes each instance in real time.</span></p> <p class="MsoNormal"><span>The main goal of the study is to create a smart security framework based on the principle of "never trust, always verify." This is achieved by building deep learning models to detect anomalies and potential intrusions, which improves accuracy and lowers false positives. The thesis also looks into using automated logging on the blockchain for unchangeable auditing and the application of automated threat response systems. The study shows that an AI-powered approach greatly boosts an organization's security stance, offering a scalable and flexible solution to current cybersecurity challenges faced by enterprises.</span></p>
title AI-Driven Next-Generation Firewall For Dynamic Threat Detection
url https://doi.org/10.5281/zenodo.19552974