Philosophical and Practical fundamentals of Artificial Intelligence

Vladimeri Napetvaridze

Abstract


The 21st century is the age of modern technology. The evolution of digital technologies has revolutionized all areas of human activity. With the  development of the Internet, have emerged, terms such as big data, blockchain technologies, e-government, etc. terms that are playing an increasingly important role in the daily lives of mankind. The emergence of new and important phenomena has led to the need to create new academic directions, although the fact that the speed of development of digital technologies exceeds the speed of development of the relevant scientific field is causing shortcoming in the research process.

Due to the fact that the process of publishing scientific research and an article based on a research outcome sometimes takes years, and technological progress is becoming more and more noticeable, the scientific literature, at the moment it is published is often outdated and does not reflect the current situation.

The main purpose of this article is to identify similarities and differences between the approaches to AI technology based on a comparative analysis of the latest scientific literature about artificial intelligence. Reflect on what scientific visions existed about artificial intelligence technology, how it has changed over time, and what the latest scientific approaches are. 


Keywords


Key words: Artificial intelligence; Social Science; Theoretical Framework.

Full Text:

PDF

References


Aditya Shah - blog.google (2018), “Fighting fire with machine learning: two students use TensorFlow to predict wildfires” Retriewed at: https://www.blog.google/technology/ai/fighting-fire-machine-learning-two-students-use-tensorflow-predict-wildfires/

Brian Sullivan: blog.google (2016): “Mapping global fishing activity with machine learning”. Retriewed at: https://www.blog.google/products/maps/mapping-global-fishing-activity-machine-learning/

Centre for Data Ethics and Innovation – (The CDEI) (2020). Review into bias in algorithmic decision-making

Dafoe, A. (2018). AI governance: a research agenda. Governance of AI Program, Future of Humanity Institute, University of Oxford: Oxford, UK, 1442, 1443.

Di Franco, G., & Santurro, M. (2020). Machine learning, artificial neural networks and social research. Quality & quantity, 55(3), 1007-1025.

Dick, S. (2019). Artificial Intelligence. Harvard Data Science Review, 1(1). https://doi.org/10.1162/99608f92.92fe150c

Emma Farge – Reuters (2021), : U.N. talks adjourn without deal to regulate 'killer robots'. Retriewed at: https://www.reuters.com/article/us-un-disarmament-idAFKBN2IW1UJ

Fred Alcober- blog.google (2018), “AI takes root, helping farmers identify diseased plants”. Retriewed at: https://www.blog.google/technology/ai/ai-takes-root-helping-farmers-identity-diseased-plants/

Health, N. (2018) What is AI? Everything you need to know about Artificial Intelligence, ZDNet, Retrieved from http://www.zdnet.com/article/what-is-ai-everything-you-need-to-know-about-artificial-intelligence/

HRW- Human Rights Watch (2018),: “Heed the Call - A Moral and Legal Imperative to Ban Killer Robots”. Retriewed at: https://www.hrw.org/report/2018/08/21/heed-call/moral-and-legal-imperative-ban-killer-robots

Husbands, P., Holland, O., Wheeler, M, eds. (2008). The Mechanical Mind in History. Cambridge, MA: MIT Press.

IDFI – Institute for Development of Freedom of Information Artificial Intelligence (2021) “International Tendencies and Georgia - Legislation and Practice”

Julie Cattiau - blog.google (2018) „A tale of a whale song“. Retriewed at: https://blog.google/technology/ai/tale-whale-song/

McCarthy, J., Minsky, M. L., Rochester, N., & Shannon, C. E. (2006). A proposal for the dartmouth summer research project on artificial intelligence, august 31, 1955. AI magazine, 27(4), 12-12.

Molina, M. D., & Garip, F. (2019). Machine learning for sociology.

Parson, E., Re, R., Solow-Niederman, A., & Zeide, E. (2019). Artificial intelligence in strategic context: an introduction.

Radford, J., & Joseph, K. (2020). Theory in, theory out: the uses of social theory in machine learning for social science. Frontiers in big Data, 3, 18.

VALLADÃO, A. G. (2018). Artificial Intelligence and Political Science. OCP Policy Paper.

Wang, W., & Siau, K. (2018). Artificial intelligence: a study on governance, policies, and regulations. MWAIS 2018 proceedings, 40.

Yi, Z. (2017) Robots bring Asia into the AI research ethics debate, COSMOS, Retrieved from https://cosmosmagazine.com/physics/robots-bring-asia-into-the-ai-research-ethics-debate

Zeichner, D. (2017) ATM will change the world, and we must get its governance right, Retrieved from https://www.theguardian.com/science/political-science/2017/dec/15/data-will-change-the-world-and-we-must-get-its-governance-right .


Refbacks

  • There are currently no refbacks.


ISSN: 2449-2833 (online)

ISSN: 2449-2825 (print)