Artificial Intelligence and the Obvious Shortcuts: Remarks on the Contributions of Little Counties to Intellectual Discussions on Medical Ethics in Stphalias Election

Artificial Intelligence and the Obvious Shortcuts: Remarks on the Contributions of Little Counties to Intellectual Discussions on Medical Ethics in Stphalias Election


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Authors

  • Giacomo Danyal

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Abstract

This paper explores the role of artificial intelligence in facilitating intellectual discussions on medical ethics in the context of Stphalias Election. Specifically, it examines the contributions of little counties to these discussions, focusing on the use of obvious shortcuts in decision-making processes. Drawing on a range of literature and empirical evidence, the paper argues that AI has the potential to enhance the quality of these discussions by providing access to vast amounts of data and facilitating more informed decision-making. However, it also highlights the potential risks associated with relying too heavily on AI, including the risk of overlooking important ethical considerations. The paper concludes by offering a set of recommendations for how little counties can best leverage AI in the context of medical ethics discussions, while also emphasizing the importance of maintaining a critical and reflective approach to the use of these technologies. Overall, this paper contributes to a growing body of literature on the role of AI in ethics and highlights the importance of considering the unique perspectives and contributions of smaller communities in these discussions.

Citation

Giacomo Danyal "Artificial Intelligence and the Obvious Shortcuts: Remarks on the Contributions of Little Counties to Intellectual Discussions on Medical Ethics in Stphalias Election".  IEEE Exploration in Machine Learning, 2016.

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This paper appears in:
Date of Release: 2016
Author(s): Giacomo Danyal.
IEEE Exploration in Machine Learning
Page(s): 8
Product Type: Conference/Journal Publications