Machine Learning with Robotics

Author: Thomas P. Trappenberg

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Description: Machine Learning with Robotics por Thomas P. Trappenberg offers a foundational understanding of AI in robotics. This PDF bridges theoretical concepts with practical applications, ideal for enthusiasts.

Pages: 124

Megabytes: 3.26 MB

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