Role of Intelligent Machines learning for the Successful Implementation of Business Model

  • Melitina Tecoalu Krida Wacana Christian University - Indonesia
  • Phong Thanh Nguyen Ho Chi Minh City Open University - Vietnam
  • E. Laxmi Lydia Vignan’s Institute of Information Technology - Indonesia
  • K. Shankar Alagappa University, Karaikudi - Indonesia
Keywords: technical industry, inteligent machine learning, artificial intelligence, business world.

Abstract

In the technical industry machine learning and intelligent machine learning are becoming a hot topic for research. Intelligent machine learning is also known as artificial intelligence (AI). Intelligent machine learning is affecting the business world more than our daily routine lives. It can seem that intelligent machine learning is everywhere like maintaining the complex information, gaming station, etc. for making the machines in the form so that can respond to real-time stations and can act like a human, the scientists and computer engineering are working extremely hard. The role of intelligent machine learning in the business world is studied in this paper. The corporate world is highly getting influenced by artificial intelligence or intelligent machine learning.   

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Published
2019-09-30
How to Cite
Tecoalu, M., Thanh Nguyen, P., Lydia, E. L., & Shankar, K. (2019). Role of Intelligent Machines learning for the Successful Implementation of Business Model. Religación, 4(19), 256-261. Retrieved from https://revista.religacion.com/index.php/religacion/article/view/713