Optimizing Business Processes with Advanced Analytics: Techniques for Efficiency and Productivity Improvement

Abayomi Abraham Adesina 1, *, Toluwalase Vanessa Iyelolu 2 and Patience Okpeke Paul 3

1 Independent Researcher, Ohio, USA.
2 Financial analyst, Texas USA.
3 Henry Jackson Foundation Medical Research International Ltd/Gte, Nigeria.
Review Article
World Journal of Advanced Research and Reviews, 2024, 22(03), 1917–1926
Article DOI10.30574/wjarr.2024.22.3.1960
Publication history: 
Received on 20 May 2024; revised on 26 June 2024; accepted on 28 June 2024
This paper examines the role of advanced analytics in optimizing business processes, focusing on techniques, implementation strategies, benefits, and challenges. Advanced analytics, encompassing data mining, machine learning, predictive and prescriptive analytics, is increasingly integrated into business processes to drive efficiency, productivity, and competitiveness. Techniques such as process mining, predictive analytics, prescriptive analytics, automation, and AI are discussed, along with implementation strategies, including strategic planning, change management, technology infrastructure, training, and continuous monitoring. The paper highlights the benefits of advanced analytics in business processes, such as efficiency gains, productivity improvements, and enhanced decision-making, supported by case examples from various industries. However, challenges such as data privacy issues, integration hurdles, and resistance to change are also identified. Recommendations for future research include exploring emerging technologies like artificial intelligence and machine learning, addressing data privacy concerns, and fostering a culture of data-driven decision-making.
Advanced Analytics; Business Processes; Optimization; Productivity Improvement
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