/SmartCab

Applied reinforcement learning to build a simulated vehicle navigation agent. This project involved modeling a complex control problem in terms of limited available inputs and designing a scheme to automatically learn an optimal driving strategy based on rewards and penalties. The final agent had a safety rating of A+ and a reliability rating of A.

Primary LanguageJupyter Notebook

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