Open Access Open Access  Restricted Access Subscription or Fee Access

A Review on Artificial Intelligence and Robotic Process Automation

Shweta V.

Abstract


Artificial intelligence (AI) is the counterfeit of human intelligence in computers that have been programmed to understand and act in human-like ways. The phrase can also attribute to any machine that determine human-like characteristics like learning and problem-solving. There used to be divers kinds of jobs that could only be done by humans. There were no machines or technologies like there are now. Science had not progressed, and technology had not been invented at the time. As a result, the working is completely reliant on people, and humans have realized that “today’s science is tomorrow’s technology.” Artificial Intelligence is a term that has been coined to describe adaptive inventions that have been developed for the purpose of decreasing human labour and ensuring a bright future. Digital computers are capable of doing the same numerical and symbolic manipulations as a human, but at a faster and more reliable rate. Artificial intelligence is intelligence on display by machines, as opposed to natural intelligence, which would be concluded by humans and animals and cover consciousness and emotionality. This paper represents review general concepts of artificial intelligence and its applications.

Keywords


Robotic process automation, digital computers, artificial intelligence, software robot, machine learning

Full Text:

PDF

References


T.S. Anantharman, M.S. Campbell, F.-h. Hsu, Singular extensions: Adding selectivity to bruteforce searching, Artificial Intelligence 43 (1) (1990) 99–110. Also published in: ICCA J. 11 (4)

(1988) 135–143.

Niklas Lavesson. Evaluation and Analysis of Supervised Learning Algorithms and Classifiers.

Blekinge Institute of Technology Licentiate Dissertation Series No 2006:04, ISSN 1650-2140,

ISBN 91-7295-083-8.

Hopgood A. A (2002), Intelligent Systems for Engineers and Scientists, CRC Press, pp 158-175,

–233.

S. Mukkamala and A. H. Sung, A comparative study of techniques for intrusion detection, In

Proceedings of 15th IEEE International Conference on Tools with Artificial Intelligence, pages

–577. IEEE Press, 3–5 Nov. 2003.

Wotawa F. Debugging VHDL designs using model-based reasoning. Artificial Intelligence in

Engineering 14 (2000) 331–351.

Weiss S.M., Kulikowski C.A., Amarel S. and Safir A., A model-based method for computer-aided

medical decision making, Artificial Intelligence 1978; 11: 145–72.

B. Kitchenham, P. Pretorius, D. Budgen et al. Systematic literature reviews in software

engineering–a tertiary study. Information and software technology, vol. 52, no. 8, pp. 792–805,

A. Flogie and B. Aberšek. Transdisciplinary approach of science, technology, engineering and

mathematics education. Journal of Baltic Science Education, vol. 14, no. 6, pp. 779–790, 2015.

Y.-T. Wu, H.-T. Hou, F.-K. Hwang et al. A review of intervention studies on technology-assisted

instruction from 2005–2010. Journal of Educational Technology & Society, vol. 16, no. 3, pp.

–203, 2013.

I. Magnisalis, S. Demetriadis, and A. Karakostas. Adaptive and intelligent systems for

collaborative learning support: a review of the field. IEEE Transactions on Learning

Technologies, vol. 4, no. 1, pp. 5–20, 2011.

A. Casamayor, A. Amandi, and M. Campo. Intelligent assistance for teachers in collaborative Elearning environments. Computers & Education, vol. 53, no. 4, pp. 1147–1154, 2009.

A. Gogoulou, E. Gouli, and M. Grigoriadou. Adapting and personalizing the communication in a

synchronous communication tool. Journal of Computer Assisted Learning, vol. 24, no. 3, pp. 203–

, 2008.




DOI: https://doi.org/10.37628/ijra.v7i2.1369

Refbacks

  • There are currently no refbacks.