š® Researchers developed an AI system called Deep Q-Network (DQN) to excel at Atari games.
š§ DQN outperformed human professionals in games like 'Pong' and 'Boxing'.
ā However, DQN struggled to play the game 'Montezuma's Revenge'.
š® Playing video games like Atari involves directed learning and a reward system based on points.
š¢ The goal of the game is to learn which buttons to press and when to press them to earn the most points.
š¤ Some systems use predictive models to anticipate future outcomes based on the current screen images.
š® Learning through trial and error is essential for improving at video games.
š¶ Babies' behavior of looking longer at unfamiliar images is used to teach AI systems.
š” Researchers have cleverly applied this preference to train AI to excel at a specific game.
The video discusses how babies approach video games and their different strategies.
Babies are curious and motivated to explore their surroundings in games.
The focus on rewards based on creativity can sometimes create more problems than solutions.
š® Artificial intelligence researchers are turning to human intelligence to find ideas on how to improve at video games.
š¤ AI provides new insights into the psychological aspects of gaming, including boredom, depression, addiction, curiosity, creativity, and play.
iOS 17 - 24 Settings You NEED to Change Immediately!
Working With Todoist | Ep 187 | The Best Way To Use The 2+8 Prioritisation System
Working With Todoist | Ep152 | 3 Ways To Focus On The Important
Working With Todoist | Ep 163 | Prioritising The Eisenhower Way
Working With Todoist | Ep 157 | 5 Ways To Get Faster With Todoist
''FaƧo MAIS DE 100 MIL Reais Todo MĆŖs'' | Higor Neves - Kiwicast #44