Simple Games with AI
To address OpenAI Gym challenges and real-world problems, this course offers pragmatic artificial intelligence methods like Genetic Algorithms, Q-Learning, and neural network implementation.
Description for Simple Games with AI
Traveling Salesman Problem: Apply the AI framework and genetic algorithms for project uses.
Maze Navigation: Learn about Q-Learning and how it may be used to projects.
Mountain Car Challenge (OpenAI Gym): Use Keras to create neural networks and apply deep Q-learning.
Snake Game Development: Use Keras to create CNNs and apply Deep Convolutional Q-Learning.
Level: Intermediate
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Ligency team & SuperDataScience Team
Duration: 12h 24m (approximately)
Schedule: Flexible
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