Nietzschean Language Models and Philosophical Chatbots: Outline of a Critique of AI

Authors

  • Anthony Kosar Albert-Ludwigs-Universität Freiburg

DOI:

https://doi.org/10.33182/agon.v18i1.3261

Keywords:

Nietzsche; generative AI, LLMs, metaphysics of language, common philosophy of grammar

Abstract

Developers of the deep learning algorithms known as large language models (LLMs) sometimes give the impression that they are producing a likeness to the human brain: data-processing ‘neural networks’ are ‘taught’ to recognize patterns in language and then, based on this pattern recognition, create or generate new content in the form of natural, humanlike speech, writing, images, etc. The results have been unsettling to some; less appreciated are the metaphysical assumptions underlying the attribution of any meaningful agency whatsoever to an algorithm. In this essay, Nietzsche’s thoughts on the “seduction of grammar” form the basis of one possible critique of generative AI – a critique, moreover, which exposes our society’s current fixation with LLMs for what it is: a fetishization and humanization of new technologies.

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Author Biography

Anthony Kosar, Albert-Ludwigs-Universität Freiburg

Anthony Kosar works in the history of philosophy and has long-standing interests in European intellectual history, cultural and historical philosophy (Geschichtsphilosophie), ethics, and the philosophies of Friedrich Nietzsche. His writing on these topics, which he has presented at international conferences abroad, has been published in the series Nietzsche-Lektüren. He is currently a doctoral candidate in Philosophy at the Albert-Ludwigs-Universität Freiburg with a dissertation on Nietzsche, the “metaphysics of language” and morality. He lives in New Jersey with his wife and their two sons.

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Published

2024-06-04

How to Cite

Kosar, A. (2024). Nietzschean Language Models and Philosophical Chatbots: Outline of a Critique of AI . The Agonist, 18(1), 7–17. https://doi.org/10.33182/agon.v18i1.3261

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