a16z Podcast

a16z Podcast: The History and Future of Machine Learning

Jun 19, 2019
Tom Mitchell, a distinguished professor from Carnegie Mellon University and a pioneer in machine learning, takes listeners on a historical journey through the evolution of AI. He discusses past innovations, like the challenges of early planning systems, and dives into current trends in deep learning. The conversation highlights how neuroscience informs recognition technologies and examines the ethical dimensions of AI, including fairness and accountability. Tune in for insights on the implications of automation on the workforce and the future of machine learning.
Ask episode
AI Snips
Chapters
Transcript
Episode notes
ANECDOTE

Banana in the Tailpipe

  • Early AI planning systems struggled with the "banana in the tailpipe" problem.
  • These systems couldn't account for unexpected real-world issues, hindering their practicality.
INSIGHT

Brain's Parallel Processing

  • The brain recognizes information quickly despite slow neuron speeds.
  • This suggests parallel processing is essential, inspiring early neural network development.
ANECDOTE

Predicting Brain Images

  • fMRI studies show common neural patterns when people think about common nouns.
  • A machine learning system could predict brain images for nouns with 80% accuracy.
Get the Snipd Podcast app to discover more snips from this episode
Get the app