Why AI is harder than we think
Published:Jul 25, 2021 15:40
•1 min read
•ML Street Talk Pod
Analysis
The article discusses the cyclical nature of AI development, highlighting periods of optimism followed by disappointment. It attributes this to a limited understanding of intelligence, as explained by Professor Melanie Mitchell. The piece focuses on the challenges in realizing long-promised AI technologies like self-driving cars and conversational companions.
Key Takeaways
- •AI development has experienced cycles of optimism and disappointment.
- •The difficulty in achieving promised AI technologies is a key issue.
- •A limited understanding of intelligence is a contributing factor to these challenges.
Reference
“Professor Melanie Mitchell thinks one reason for these repeating cycles is our limited understanding of the nature and complexity of intelligence itself.”