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Home/Authors/Ahmed Sabbah

Ahmed Sabbah

5 indexed papers

Recent (6 mo)
5
With code
0
Influential cites
0
Benchmarked
0

Publications per year

5
26

Top categories

Crypto×5ML×5AI×4

Frequent co-authors

David Mohaisen5×
Mohammad Alkhanafseh4×
Mohammed Kharma3×
Radi Jarrar3×
Samer Zein2×
Mohammed F. Kharma1×

Research Timeline

2026
A Quasi-Experimental Developer Study of Security Training in LLM-Assisted Web Application Development

The study found that providing developers with a layer-based security training package significantly reduces the number and severity of security vulnerabilities in LLM-assisted web application development.

Enhancing Reliability in LLM-Based Secure Code Generation

The paper introduces the Mitigation-Aware Chain-of-Thought (MA-CoT) framework, which significantly enhances the security reliability of code generated by LLMs across multiple languages and models.

An Empirical Evaluation of LLM-Generated Code Security Across Prompting Methods

The paper empirically evaluates the security quality of LLM-generated code across various prompting methods, finding that while prompting alters the structure of weaknesses, it is insufficient to reliably reduce overall vulnerability levels.

Concept Drift Adaptation Using Self-Supervised and Reinforcement Learning In Android Malware Detection

The paper proposes a cost-aware, adaptive maintenance framework using Reinforcement Learning (RL) and self-supervised learning to mitigate performance degradation (concept drift) in Android malware detectors without requiring full retraining.

Adversarial Vulnerability Under Temporal Concept Drift: A Longitudinal Study of Android Malware Detection

This study longitudinally evaluates the adversarial robustness of Android malware detection systems over a decade, finding that temporal separation significantly degrades robustness due to concept drift.

Highlighted terms show continued research focus across papers

Papers

cs.CRcs.AIcs.LGRecentMay 22, 2026

Enhancing Reliability in LLM-Based Secure Code Generation

Mohammed F. Kharma, Mohammad Alkhanafseh, Ahmed Sabbah, David Mohaisen

The paper introduces the Mitigation-Aware Chain-of-Thought (MA-CoT) framework, which significantly enhances the security reliability of code generated by LLMs across multiple languages and models.

View →
cs.CRcs.AIcs.LGRecentMay 22, 2026

An Empirical Evaluation of LLM-Generated Code Security Across Prompting Methods

Mohammed Kharma, Ahmed Sabbah, Mohammad Alkhanafseh, Mohammad Hammoudeh +1 more

The paper empirically evaluates the security quality of LLM-generated code across various prompting methods, finding that while prompting alters the structure of weaknesses, it is insufficient to reli…

View →
cs.CRcs.AIcs.LGRecentMay 22, 2026

Concept Drift Adaptation Using Self-Supervised and Reinforcement Learning In Android Malware Detection

Ahmed Sabbah, Mohammad Kharma, Mohammad Alkhanafseh, Radi Jarrar +2 more

The paper proposes a cost-aware, adaptive maintenance framework using Reinforcement Learning (RL) and self-supervised learning to mitigate performance degradation (concept drift) in Android malware de…

View →
cs.CRcs.AIcs.LGRecentMay 22, 2026

Adversarial Vulnerability Under Temporal Concept Drift: A Longitudinal Study of Android Malware Detection

Ahmed Sabbah, Mohammed Kharma, Radi Jarrar, Samer Zein +1 more

This study longitudinally evaluates the adversarial robustness of Android malware detection systems over a decade, finding that temporal separation significantly degrades robustness due to concept dri…

View →
cs.CRcs.LGRecentApr 20, 2026

A Quasi-Experimental Developer Study of Security Training in LLM-Assisted Web Application Development

Mohammed Kharma, Ahmed Sabbah, Radi Jarrar, Samer Zain +2 more

The study found that providing developers with a layer-based security training package significantly reduces the number and severity of security vulnerabilities in LLM-assisted web application develop…

View →