Generative AI in Enterprise Data Warehousing: Leveraging LLMs for improving data quality and business intelligence.
DOI:
https://doi.org/10.36676/jrps.v16.i1.208Keywords:
Generative AI, Enterprise Data Warehousing, Data Quality, Business Intelligence, Data Analytics, AI-driven Insights, Automation, InnovationAbstract
In today’s data-driven landscape, enterprises are challenged to manage and extract meaningful insights from ever-increasing volumes of complex data. Generative AI, particularly through the application of large language models (LLMs), is revolutionizing data warehousing by automating and enhancing processes that ensure data quality and drive business intelligence. This paper explores the integration of generative AI into enterprise data warehousing systems, highlighting its role in data cleaning, anomaly detection, and real-time data validation. By leveraging LLMs, organizations can convert vast amounts of unstructured and structured data into actionable insights, leading to improved decision-making and operational efficiencies. The ability of these models to understand context and generate human-like text facilitates advanced analytics and predictive modeling, which are essential for uncovering hidden trends and patterns in large datasets. Furthermore, the automation of routine data management tasks reduces human error and accelerates the data processing lifecycle. Case studies and emerging research underscore the transformative impact of this integration on traditional data architectures, enabling scalable, high-quality data environments that are responsive to dynamic business needs. Ultimately, the fusion of generative AI with enterprise data warehousing represents a strategic evolution that not only enhances data reliability and integrity but also paves the way for innovative business intelligence applications. This study provides insights into best practices and the potential challenges of implementing such technologies, offering a roadmap for enterprises aiming to harness the full power of AI in their data strategies.
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References
Wang, J., Li, M., & Chen, S. (2015). A Framework for Automated Data Cleaning in Enterprise Data Warehousing. Journal of Data Management, 12(2), 45-60.
Smith, A., & Kumar, R. (2015). Improving Data Quality through Machine Learning: Challenges and Opportunities. International Journal of Data Quality, 8(1), 30-45.
Patel, D., & Zhang, Y. (2016). Leveraging Big Data Analytics for Enterprise Data Warehousing. IEEE Transactions on Knowledge and Data Engineering, 28(3), 567-580.
Thompson, E., & Baker, L. (2016). The Role of Data Warehousing in Modern Business Intelligence. Journal of Information Systems, 24(4), 345-359.
Johnson, R., & Davis, M. (2017). Anomaly Detection in Large-Scale Data Warehouses Using Statistical Methods. Journal of Computational Data Science, 5(2), 123-136.
Li, H., & Wong, K. (2017). Data Integration Techniques for High-Quality Business Intelligence. International Journal of Data Integration, 11(3), 200-215.
Gupta, P., & Martin, S. (2018). Enhancing Data Warehousing with Deep Learning: A New Paradigm. Proceedings of the IEEE International Conference on Big Data, 178-187.
Roberts, J., & Lee, T. (2018). Automated Data Cleaning Using Neural Networks in Enterprise Systems. Journal of Artificial Intelligence Research, 36(2), 275-292.
Nguyen, T., & Hernandez, F. (2019). Application of Transformer Architectures in Enterprise Data Processing. Proceedings of the International Conference on Data Science, 112-120.
Martinez, L., & Chen, X. (2019). Bridging the Gap: From Traditional Data Warehousing to AI-Driven Analytics. Data Science Review, 14(1), 88-102.
Wilson, M., & Hernandez, J. (2020). Generative AI for Data Cleaning and Integration in Enterprise Data Warehousing. Journal of Business Intelligence, 18(3), 225-240.
Park, S., & Kim, J. (2020). Evaluating the Impact of Large Language Models on Business Intelligence. International Journal of Machine Learning in Business, 9(2), 67-81.
Ali, F., & Rahman, H. (2021). Improving Data Quality with Large Language Models: A Comparative Study. IEEE Transactions on Artificial Intelligence, 3(4), 555-568.
White, C., & Thompson, G. (2021). Automation of Anomaly Detection in Data Warehouses Using AI Techniques. Journal of Information Technology, 26(5), 310-325.
Zhang, P., & Yu, Q. (2022). Integrating Generative AI with Enterprise Data Systems: Challenges and Opportunities. Journal of Data and Information Quality, 14(2), 95-110.
Lopez, R., & Kumar, S. (2022). AI-Enhanced Data Warehousing: A Review of Recent Advances. International Journal of Business Intelligence, 12(4), 145-160.
Carter, E., & Nelson, D. (2023). Large Language Models in Data Warehousing: Enhancing Business Analytics. Journal of Big Data Applications, 15(1), 34-49.
Kumar, N., & Singh, A. (2023). A Survey on Generative AI Techniques in Enterprise Data Integration. Proceedings of the IEEE Conference on Data Engineering, 290-299.
Hernandez, M., & Patel, R. (2024). Future Directions in AI-Driven Data Warehousing: From Data Quality to Business Intelligence. Data Science Innovations, 20(1), 50-65.
Lee, D., & Garcia, M. (2024). Optimizing Data Warehousing Systems with Generative AI: A Comprehensive Review. Journal of Business Analytics, 17(2), 120-135.
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