How to build Intelligent control systems using new tools from Microsoft and simulations by Mathworks

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In this video, engineers can learn how to build autonomous systems even with no previous experience in AI. Project Bonsai is Microsoft’s new service to help engineers developing intelligent control systems. In partnership with MathWorks we show how Project Bonsai can be used to control a small balancing robot called Project Moab. Project Moab enables engineers to explore classic control theory problems and go beyond a simple proportional–integral–derivative controller (PID controller or three-term controller).

Steve from MathWorks will show how you can build a simulation model of Project Moab using Simulink and Simscape that can be used with Project Bonsai. Keen, from Microsoft, will then use this simulation model to build an intelligent controller in three easy steps. (1) Integrate simulation model with the service (2) Train an AI agent to control the device that's modeled in the simulation (3) Export the brain into a device or simulation or wherever it is needed. Project Moab is available today in Project Bonsai as a simulator, implemented in both Simulink and Python. The Python simulation provides software developers the opportunity to learn how to use Project Bonsai and introduces them to simulation technology in an easy and accessible way.

Learn more here: https://www.microsoft.com/en-us/ai/autonomous-systems-platform




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