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Lunar.Lander.Asteroids.Continual.Self.Play is a Game AI application designed to simulate and play a combination of the classic Lunar Lander and Asteroids arcade games in continual self-play mode. The game involves guiding a spacecraft to land safely on the Moon's surface while dodging and destroying incoming asteroids. The AI-powered system automates the gameplay, allowing for continuous, unassisted play and providing insights into AI decision-making and problem-solving strategies.
What is the purpose of the self-play mode?
The self-play mode allows the AI to practice and improve its gameplay strategies without human intervention, enabling continuous learning and adaptation.
Can I customize the game difficulty during play?
Yes, users can adjust game parameters such as asteroid speed and density before or during sessions to test the AI's limits and adaptability.
How does the AI improve its performance over time?
The AI improves through repeated gameplay sessions, analyzing its decisions and outcomes to refine its strategies and enhance performance metrics like landing success and asteroid destruction accuracy.
Can I save and reuse specific game configurations?
Yes, users can save their preferred game settings and reload them for future sessions, ensuring consistent testing conditions or replaying challenging scenarios.
What happens if the AI fails to land the spacecraft?
If the AI fails to land successfully, the game session ends, and the AI analyzes the failure to improve its strategies for future attempts.