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Episode 39 — Philosophical Perspectives on AI and Consciousness
Episode 39

Episode 39 — Philosophical Perspectives on AI and Consciousness

Certified - Introduction to AI Audio Course

September 10, 202534m 39s

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Show Notes

Beyond technical and practical questions, AI raises profound philosophical debates. This episode begins with Alan Turing’s foundational question — can machines think? — and examines the Turing Test as an early benchmark. We contrast it with John Searle’s Chinese Room argument, which challenges whether machines truly “understand” or merely manipulate symbols. Philosophical perspectives such as functionalism, dualism, and embodied cognition are introduced to frame questions about whether intelligence requires consciousness or physical embodiment.

We then explore contemporary debates. Does scaling up large language models bring us closer to genuine understanding, or does it simply produce more convincing imitation? Can AI be considered a moral agent, responsible for its actions, or even a candidate for rights or personhood? Comparisons to animal intelligence and creativity debates about AI-generated art highlight the difficulty of defining consciousness and originality. Religious and cultural views add further dimensions, raising questions about the soul, human uniqueness, and posthuman futures. By the end of this episode, listeners will appreciate that AI is not only a technological project but also a philosophical one, challenging our definitions of mind, intelligence, and what it means to be human. Produced by BareMetalCyber.com, where you’ll find more cyber prepcasts, books, and information to strengthen your certification path.

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