A very simple yet serious gobang game AI based on Monte-Carlo Tree Search and implemented in pure Python
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Updated
May 20, 2017
A very simple yet serious gobang game AI based on Monte-Carlo Tree Search and implemented in pure Python
The example of using reinforcement learning algorithms in the business, specifically finding what ads to use in our campaign.
All codes, both created and optimized for best results from the SuperDataScience Course
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