• Why Machines Can’t Replace Us w/ Neil Lawrence

  • Feb 3 2025
  • Duración: 1 h y 10 m
  • Podcast

Why Machines Can’t Replace Us w/ Neil Lawrence

  • Resumen

  • Computer Scientist Neil Lawrence shares his insights on what machine intelligence can teach us about being human, the risks of relying on technologies that prioritise efficiency and scalability over ethics, and the hubris of efforts to extend or upload human consciousness using AI.

    Neil Lawrence is the inaugural DeepMind Professor of Machine Learning at the University of Cambridge. He has been working on machine learning models for over 20 years. He recently returned to academia after three years as Director of Machine Learning at Amazon. His main interest is the interaction of machine learning with the physical world. This interest was triggered by deploying machine learning in the African context, where ‘end-to-end’ solutions are normally required. This has inspired new research directions at the interface of machine learning and systems research, this work is funded by a Senior AI Fellowship from the Alan Turing Institute. Neil is also visiting Professor at the University of Sheffield and the co-host of Talking Machines.

    ABOUT THE HOST

    Luke Robert Mason is a British-born futures theorist who is passionate about engaging the public with emerging scientific theories and technological developments.

    He hosts documentaries for Futurism, and has contributed to BBC Radio, BBC One, The Guardian, Discovery Channel, VICE Motherboard and Wired Magazine.

    CREDITS

    Producer & Host: Luke Robert Mason

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    Follow Luke Robert Mason on Twitter at @LukeRobertMason

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