Building Real-Time Fraud Detection Systems with Azure AI for Financial Services

Authors

  • Sudeep Annappa Shanubhog Tential Solutions, USA Author

DOI:

https://doi.org/10.32628/CSEIT251112319

Keywords:

Fraud Detection Systems, Azure AI, Machine Learning, Real-time Processing, Financial Security

Abstract

This article presents a comprehensive framework for implementing real-time fraud detection systems in financial services using Azure AI technologies. The article explores the integration of advanced machine learning algorithms, stream processing architectures, and security frameworks to combat increasingly sophisticated financial fraud schemes. The article details the core components of AI-powered detection architecture, including transaction pattern analysis, behavioral anomaly detection, and adaptive risk scoring methodologies. The article incorporates MLOps practices for model deployment, lambda architecture for stream processing, and zero-trust security principles for comprehensive system protection. Through extensive case studies and performance analysis, the article demonstrates how AI-enhanced fraud detection systems significantly improve detection accuracy while reducing false positives and operational overhead. The article also addresses critical challenges in regulatory compliance, data protection, and system scalability, providing practical solutions for financial institutions implementing such systems. This article contributes to the evolving field of financial security by presenting a scalable, efficient, and secure approach to real-time fraud detection. Introduction

Downloads

Download data is not yet available.

References

Haoran Jiang, "Application Technologies and Challenges of Big Data Analytics in Anti-Money Laundering and Financial Fraud Detection," IEEE Access, vol. 8, pp. 147229-147239, 2024. Application Technologies and Challenges of Big Data Analytics in Anti-Money Laundering and Financial Fraud Detection

Bello & Olufemi et al., " Artificial intelligence in fraud prevention: Exploring techniques and applications challenges and opportunities," International Journal of Scientific & Technology Research, vol. 9, no. 3, 2024. (PDF) Artificial intelligence in fraud prevention: Exploring techniques and applications challenges and opportunities

Journal of Electrical Systems, "Machine Learning Models for Fraud Detection: A Comprehensive Review and Empirical Analysis," Journal of Big Data, vol. 8, no. 163, 2024. Machine Learning Models for Fraud Detection: A Comprehensive Review and Empirical Analysis | Journal of Electrical Systems

Digital Ocean, “Understanding AI Fraud Detection and Prevention Strategies” https://www.digitalocean.com/resources/articles/ai-fraud-detection

Oluwabusayo Adijat Bello et al., "Analysing the Impact of Advanced Analytics on Fraud Detection: A Machine Learning Perspective," Journal of Financial Crime Prevention, vol. 15, no. 2, pp. 78-94, 2023. Analysing-the-Impact-of-Advanced-Analytics.pdf

Halima Oluwabunmi Bello et al., "Adaptive Machine Learning Models: Concepts for Real-time Financial Fraud Prevention in Dynamic Environments," International Journal of Neural Systems, vol. 33, no. 4, 2024. Adaptive machine learning models: Concepts for real-time financial fraud prevention in dynamic environments

Kris Sharma, "The Key to Accelerated AI Adoption in Financial Services: MLOps," Journal of Machine Learning Engineering, vol. 3, no. 2, pp. 112-128, 2023. Using MLOps to Accelerate Financial Services AI Adoption

Chloe, "Architectural Patterns for Real-Time Fraud Detection Systems," International Conference on Software Architecture (ICSA), pp. 234-249, 2024. Architectural Patterns for Real-Time Fraud Detection Systems - Moments Log

Prabin Adhikari, "Artificial Intelligence in Fraud Detection: Revolutionizing Financial Security," International Journal of Digital Banking, vol. 2, no. 3, pp. 145-162, 2024. Artificial Intelligence in fraud detection: Revolutionizing financial security

Rahul Joshi, "Zero Trust Cybersecurity for Financial Services: A Strategic Perspective," Journal of Cybersecurity Research, vol. 8, no. 2, pp. 78-95, 2024. Zero Trust Cybersecurity for Financial Services: A Strategic Perspective

Damodharan Kuttiyappan and Rajasekar V. , "AI-Enhanced Fraud Detection: Novel Approaches and Performance Analysis," Enterprise Applications and Infrastructure, vol. 15, no. 4, pp. 234-251, 2024. eai.23-11-2023.2343170

Surendra Mohan Devaraj, "Next-Generation Fraud Detection: A Technical Analysis of AI Implementation in Financial Services Security," Journal of Financial Technology, vol. 8, no. 3, pp. 167-184, 2024. 31012.pdf

Downloads

Published

18-02-2025

Issue

Section

Research Articles