Leveraging Machine Learning and Data Engineering for Enhanced Decision-Making in Enterprise Solutions

Authors

  • Ankur Mehra, Sachin Bhatt, Ashwini Shivarudra, Swethasri Kavuri, Balachandar Paulraj

Keywords:

machine learning; data engineering; enterprise solutions; decision-making; predictive analytics; big data; artificial intelligence; business intelligence

Abstract

This comprehensive study explores the integration of machine learning (ML) and data engineering techniques to enhance decision-making processes in enterprise solutions. As organizations grapple with increasingly complex data landscapes, the need for sophisticated analytical tools and methodologies has become paramount. This research investigates how ML algorithms, coupled with robust data engineering practices, can be leveraged to extract actionable insights, improve operational efficiency, and drive strategic decision-making across various business domains. Through a combination of literature review, case studies, and empirical analysis, we demonstrate the transformative potential of these technologies in areas such as predictive analytics, customer behavior modeling, supply chain optimization, and risk management. Our findings highlight the critical success factors, challenges, and best practices in implementing ML-driven decision support systems within enterprise environments. Furthermore, we propose a novel framework for integrating ML and data engineering processes that addresses common pitfalls and maximizes the value derived from organizational data assets. This research contributes to the growing body of knowledge on data-driven decision-making and provides practical guidelines for enterprises seeking to harness the power of ML and data engineering to gain a competitive edge in today's data-rich business landscape.

Downloads

Published

2024-09-09

How to Cite

Ankur Mehra, Sachin Bhatt, Ashwini Shivarudra, Swethasri Kavuri, Balachandar Paulraj. (2024). Leveraging Machine Learning and Data Engineering for Enhanced Decision-Making in Enterprise Solutions. International Journal of Communication Networks and Information Security (IJCNIS), 16(2), 135–150. Retrieved from https://ijcnis.org/index.php/ijcnis/article/view/6989

Issue

Section

Research Articles