Work place: Adeel Solutions LLC, Dubai, United Arab Emirates.
E-mail: shmadeelibrahim@gmail.com
Website: https://orcid.org/0009-0005-2952-7847
Research Interests:
Biography
Adeel Shaik Muhammad is the founder of Adeel Solutions LLC, Dubai, United Arab Emirates. He is
currently pursuing a Doctorate in Business Administration (DBA) in Cybersecurity from the Swiss School of
Management (SSM), Zurich, Switzerland. He holds an MS in Cybersecurity from EC-Council University
(ECCU) and a BS in Telecommunication Engineering (Networks). He holds the CISSP, PMP, and CISO
certifications, along with more than 50 industry credentials. With over 15 years of experience across
information security and IT, he has led cybersecurity consulting and presales engineering roles at Saxon
Software (Keystrike), CGC, and Omnix across the Middle East. He is an international speaker and author of
two books focused on AI and security. His research interests include AI-powered cybersecurity compliance,
responsible AI governance, vCISO services, SOC building, and the evolving role of AI in security operations.
By Karimulla Syed Elijah Falode Adeel Shaik Muhammad
DOI: https://doi.org/10.5815/ijeme.2026.02.01, Pub. Date: 8 Apr. 2026
Identity and Access Management (IAM) is critical for securing digital assets, particularly in financial technology (FinTech) systems, where unauthorized access can lead to significant financial losses. Three formal research questions guide this work: (RQ1) Do AI-driven models statistically significantly outperform traditional rule-based IAM systems in anomaly detection accuracy? (RQ2) Which AI model best balances precision and recall for real-time insider-threat detection under class-imbalanced IAM log conditions? (RQ3) Are the observed performance gains robust and stable across cross-validated experimental folds? This study evaluates the performance of AI-driven anomaly detection models, including autoencoders, random forests, and support vector machines, in detecting unusual user activities and potential insider threats. The Autoencoder model achieved the highest overall accuracy of 94.2% (+/- 0.8% across five-fold cross-validation) with a precision of 92.8% and recall of 91.5%. The Random Forest attained a slightly lower accuracy (92.5%) but excelled in recall (93.2%), highlighting its strength in identifying actual malicious activities. Compared to traditional rule-based IAM methods, which achieved only 78.4% accuracy, AI models significantly improved anomaly detection, particularly for subtle or previously unseen threats. McNemar's tests confirm that all accuracy improvements over the baseline are statistically significant (p < 0.001). The Autoencoder also demonstrated the lowest latency (120 ms), making it suitable for real-time deployment. These results confirm that AI-enhanced IAM systems can effectively strengthen security and operational efficiency in FinTech environments, within the scope of the simulated and publicly available datasets employed in this study.
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