×

AI-Driven Data Analytics For Enterprise Applications

Author : Zulkifli Hassan Journa Name: International Journal for Novel Research in Economics, Finance and Management Volume: 4 issue: 2 Year: Volume-4-issue-2 Views : 13
Abstract:
The rapid growth of data in modern enterprises has created both opportunities and challenges for organizations seeking actionable insights. Artificial intelligence (AI)-driven data analytics has emerged as a transformative approach for extracting meaningful patterns, making predictions, and supporting decision-making across enterprise applications. This study explores the integration of AI techniques—including machine learning, deep learning, and natural language processing—into enterprise data analytics frameworks. It highlights how AI-driven analytics enhances business intelligence, customer relationship management, supply chain optimization, and financial forecasting by enabling real-time, predictive, and prescriptive insights. The study also examines key enablers such as cloud computing, big data platforms, and data lakes that support scalable AI analytics. Additionally, it addresses critical challenges, including data quality, model interpretability, privacy concerns, and integration with legacy systems, and discusses potential solutions. Through practical applications and industry examples, the study demonstrates that AI-driven data analytics is essential for enterprises aiming to achieve operational efficiency, strategic advantage, and data-driven innovation in a competitive digital landscape.

Related Indexing Platform

Indexed

Zenodo Logo
Zenodo
Research Data Repository
https://zenodo.org/records/19654926
DOI
DOI Resolver
Global Persistent Identifier
https://doi.org/10.5281/zenodo.19654926
GS
Google Scholar
Search this title on Scholar
Search on Google Scholar
SS
Semantic Scholar
Search this title
Search on Semantic Scholar
Lens
Lens.org
Check citations via DOI
Search on Lens.org
Leave Your Comment

Related Reviewers