Machine intelligence: a chimera

  title={Machine intelligence: a chimera},
  author={Mihai Nadin},
  journal={AI \& SOCIETY},
  • M. Nadin
  • Published 1 June 2019
  • Computer Science
The notion of computation has changed the world more than any previous expressions of knowledge. [] Key Result A proper understanding of complexity, as well as the need to distinguish between the reactive nature of the artificial and the anticipatory nature of the living are suggested as practical responses to the challenges posed by machine theology.
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