Ten Hard Problems in Artificial Intelligence We Must Get Right (2402.04464v2)
Abstract: We explore the AI2050 "hard problems" that block the promise of AI and cause AI risks: (1) developing general capabilities of the systems; (2) assuring the performance of AI systems and their training processes; (3) aligning system goals with human goals; (4) enabling great applications of AI in real life; (5) addressing economic disruptions; (6) ensuring the participation of all; (7) at the same time ensuring socially responsible deployment; (8) addressing any geopolitical disruptions that AI causes; (9) promoting sound governance of the technology; and (10) managing the philosophical disruptions for humans living in the age of AI. For each problem, we outline the area, identify significant recent work, and suggest ways forward. [Note: this paper reviews literature through January 2023.]
- Gavin Leech (7 papers)
- Simson Garfinkel (4 papers)
- Misha Yagudin (2 papers)
- Alexander Briand (1 paper)
- Aleksandr Zhuravlev (1 paper)