Artificial Intelligence Strategies for Business Process Optimization

Main Article Content

Prof. Dr. Yuvraj Lahoti

Abstract

This research paper investigates the profound impact of Artificial Intelligence (AI) strategies on Business Process Optimization (BPO) and the challenges encountered during their implementation. Through a quantitative approach, data was gathered from 229 managers across various industries, revealing significant positive outcomes in efficiency, decision-making precision, cost reduction, and overall output quality due to AI-driven BPO. However, challenges such as technical complexities, skill shortages, data management, organizational resistance, and privacy concerns emerged as substantial impediments. The study underscores the transformative potential of AI in reshaping business operations while highlighting the imperative for strategic solutions to address implementation challenges effectively.

Article Details

How to Cite
Prof. Dr. Yuvraj Lahoti. (2023). Artificial Intelligence Strategies for Business Process Optimization. Journal for ReAttach Therapy and Developmental Diversities, 6(1), 1643–1654. https://doi.org/10.53555/jrtdd.v6i1.2841
Section
Articles
Author Biography

Prof. Dr. Yuvraj Lahoti

Professor, Vishwakarma University, Pune. 

References

Anute N, Gupta S (2015) Online Advertising With Google Adwords In Pune City, International Journal of Business and Administration Research Review, E- ISSN -2347-856X ISSN -2348-0653 Vol. 2 Issue.10, (2015) Page no. 237-240.

Bharadiya, J. P. (2023). Machine learning and AI in business intelligence: Trends and opportunities. International Journal of Computer (IJC), 48(1), 123-134.

Davenport, T. H. (2018). From analytics to artificial intelligence. Journal of Business Analytics, 1(2), 73-80.

Kalyankar V, Anute N (2022) A Study on the Effectiveness of Google Analytics on the Business Growth of E-Commerce Companies in India, Journal of Information Technology and Sciences, e-ISSN: 2581-849X, Volume-8, Issue-3, Page no. 1-7

Kasych, A., Yakovenko, Y., & Tarasenko, I. (2019, September). Optimization of business processes with the use of industrial digitalization. In 2019 IEEE International Conference on Modern Electrical and Energy Systems (MEES) (pp. 522-525). IEEE.

Liu, T., Gao, Z., & Guan, H. (2021). Educational information system optimization for artificial intelligence teaching strategies. Complexity, 2021, 1-13.

Mishra, A. N., & Pani, A. K. (2021). Business value appropriation roadmap for artificial intelligence. VINE Journal of Information and Knowledge Management Systems, 51(3), 353-368.

Mithas, S., Chen, Z. L., Saldanha, T. J., & De Oliveira Silveira, A. (2022). How will artificial intelligence and Industry 4.0 emerging technologies transform operations management?. Production and Operations Management, 31(12), 4475-4487.

Sakyoud, Z., Aaroud, A., & Akodadi, K. (2023). Optimization of purchasing business process in Moroccan public universities based on COBIT and artificial intelligence techniques. Kybernetes.

Unhelkar, B., & Gonsalves, T. (2021). Artificial Intelligence for Business Optimization: Research and Applications. CRC Press.

Vergidis, K., Tiwari, A., & Majeed, B. (2007). Business process analysis and optimization: Beyond reengineering. IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews), 38(1), 69-82.

Wamba-Taguimdje, S. L., Fosso Wamba, S., Kala Kamdjoug, J. R., & Tchatchouang Wanko, C. E. (2020). Influence of artificial intelligence (AI) on firm performance: the business value of AI-based transformation projects. Business Process Management Journal, 26(7), 1893-1924.