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Scaling-up action learning neuro-controllers with GPUs

Martin Peniak, Angelo Cangelosi

Year
2014
Citations
3

Abstract

Neural networks have been used in many different robot motor-control experiments, however, so far the complexity of these neuro-controllers have remained at the similar level. The focus of this paper is to demonstrate that it is possible to scale-up these neuro-robotic controllers with GPUs leading to richer, more realistic and more complex motor control.

Keywords

Computer scienceScalingFocus (optics)Artificial neural networkAction (physics)Artificial intelligenceRobotRobotic armMotor controlScale (ratio)

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