This episode of Eye on AI is sponsored by Citrusx.
Unlock reliable AI with Citrusx! Our platform simplifies validation and risk management, empowering you to make smarter decisions and stay compliant. Detects and mitigate AI vulnerabilities, biases, and errors with ease.
Visit http://email.citrusx.ai/eyeonai to download our free fairness use case and see the solution in action.
In this episode of the Eye on AI podcast, Terry Sejnowski, a pioneer in neural networks and computational neuroscience, joins Craig Smith to discuss the future of AI, the evolution of ChatGPT, and the challenges of understanding intelligence.
Terry, a key figure in the deep learning revolution, shares insights into how neural networks laid the foundation for modern AI, including ChatGPT’s groundbreaking generative capabilities. From its ability to mimic human-like creativity to its limitations in true understanding, we explore what makes ChatGPT remarkable and what it still lacks compared to human cognition.
We also dive into fascinating topics like the debate over AI sentience, the concept of "hallucinations" in AI models, and how language models like ChatGPT act as mirrors reflecting user input rather than possessing intrinsic intelligence. Terry explains how understanding language and meaning in AI remains one of the field’s greatest challenges.
Additionally, Terry shares his perspective on nature-inspired AI and what it will take to develop systems that go beyond prediction to exhibit true autonomy and decision-making.
Learn why AI models like ChatGPT are revolutionary yet incomplete, how generative AI might redefine creativity, and what the future holds for AI as we continue to push its boundaries.
Don’t miss this deep dive into the fascinating world of AI with Terry Sejnowski. Like, subscribe, and hit the notification bell for more cutting-edge AI insights!
Stay Updated:
Craig Smith Twitter: https://twitter.com/craigss
Eye on A.I. Twitter: https://twitter.com/EyeOn_AI
(00:00) Introduction to Terry Sejnowski and His Work
(03:02) The Origins of Modern AI and Neural Networks
(05:29) The Deep Learning Revolution and ImageNet
(07:11) Understanding ChatGPT and Generative AI
(12:34) Exploring AI Creativity
(16:03) Lessons from Gaming AI: AlphaGo and Backgammon
(18:37) Early Insights into AI’s Affinity for Language
(24:48) Syntax vs. Semantics: The Purpose of Language
(30:00) How Written Language Transformed AI Training
(35:10) Can AI Become Sentient?
(41:37) AI Agents and the Next Frontier in Automation
(45:43) Nature-Inspired AI: Lessons from Biology
(50:02) Digital vs. Biological Computation: Key Differences
(54:29) Will AI Replace Jobs?
(57:07) The Future of AI