European Journal of Computer Science and Information Technology (EJCSIT)

EA Journals

MLOps

The Role of AI and Machine Learning in Financial Data Engineering (Published)

The integration of artificial intelligence and machine learning technologies is fundamentally reshaping financial data engineering practices, enabling institutions to process complex structured and unstructured data while deriving more accurate predictive insights. This comprehensive exploration examines how AI-powered systems have transformed data processing efficiency, enhanced decision accuracy, and reduced regulatory compliance costs across the financial sector. The discussion progresses through the integration of AI/ML models into financial data pipelines, highlighting improvements in predictive analytics, credit scoring, and portfolio management. Despite these advancements, significant challenges persist in model training and data quality management, including temporal dependencies, class imbalance issues, and data inconsistencies. The emergence of MLOps as a critical discipline addresses deployment challenges in production environments by facilitating comprehensive documentation, version control, and automated monitoring. Looking forward, emerging trends such as federated learning, quantum computing, explainable AI, and transformer-based architectures are poised to further revolutionize financial data engineering, creating more autonomous systems with enhanced privacy protection, computational capabilities, and regulatory compliance.

 

Keywords: Artificial Intelligence, Financial data engineering, MLOps, federated learning, machine learning

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