Abstract :
In the current business environment, managers are facing challenges in managing different kinds of people. They find it difficult to track, evaluate, and manage employees in a fast-paced work setting. Machine learning is an emerging concept that deals with unsupervised and supervised learning of a machine to provide a usable system. In this matter, this paper aims to investigate how companies can leverage the use of machine learning in people management and in improving the performance, productivity, and motivation of employees and managers. Thus, the research used both qualitative and quantitative research approaches to examine the impact of machine learning in an organizational setting.
Keywords :
Artificial Intelligence, Big Data, Business Environment, Machine learningReferences :
- Swamynathan, M. (2019). Mastering Machine Learning with Python in Six Steps: A Practical Implementation Guide to Predictive Data Analytics Using Python. Apress.
- Jordan, M., & Mitchell, T. (2015). Machine Learning: Trends, Perspectives, and Prospects. Science, 349(6245), 255-260.
- Auth Alpaydin, E. (2021). Machine Learning. Cambridge: MIT Press.
- Camastra, F., & Vinciarelli, A. (2015). Machine Learning for Audio, Image and Video Analysis: Theory and Applications. London, UK: Springer.
- Edgar, T., & Manz, D. (2017). What is Machine Learning? Research Methods for Cyber Security.
- McCarthy, J. (2007). What is Artificial Intelligence? Technical Report. Standford University.
- Anbu, D. (2019). The Role of Leaders and Managers in Business Organizations. Asian Journal of Management, 10(3), 225-228.
- Helm, J. M., Swiergosz, A., Haeberle, H., Karnuta, J., Schaffer, J., & Krebs, V. (2020). Machine Learning and Artificial Intelligence: Definitions, Applications, and Future Directions. Current Reviews in Musculoskeletal Medicine, 13(1), 69-76.
- Das, S., Dey, A., Pal, A., & Roy, N. (2015). Applications of Artificial Intelligence in Machine Learning: Review and Prospect. International Journal of Computer Applications, 115(9).
- Sjardin, B., Massaron, L., & Boschetti, A. (2016). Large-scale Machine Learning with Python: Learn to Build Powerful Machine Learning Models Quickly and Deploy Large-scale Predictive Applications. Birmingham, UK: Packt Publishing Ltd.
- Zhang, C., & Ma, Y. (2012). Ensemble Machine Learning: Methods and Applications. New York, NY: Springer.
- Bell, J. (2015). Machine Learning: Hands-on for Developers and Technical Professionals. Hoboken, NJ: John Wiley & Sons, Inc.
- Sugiyama, M., & Kawanabe, M. (2012). Machine Learning in Non-stationary Environments: Introduction to Covariate Shift Adaptation. Cambridge, MA: MIT Press.
- Murphy, K. (2012). Machine Learning: A Probabilistic Perspective. Cambridge, MA: MIT Press.
- Raschka, S. (2015). Python Machine Learning: Unlock Deeper Insights into Machine Learning with this Vital Guide to Cutting-edge Predictive Analytics. Birmingham, UK: Packt Publishing.