Pillar 2: Machine Learning for Controlling Technology
Technical systems often consist of physical as well as digital software components. The field of cyber-physical systems appreciates this fact and explores its implications for the development of technology. The components of a cyber-physical system typically interact through sensors and actuators and thereby generate highly complex processes. Equipped with machine learning algorithms, these processes can be shaped towards desired functions, which potentially incorporate synergistic interactions with the user. This kind of control of technical processes highlights a close connection between cyber-physical systems, robotics, and embodied cognitive systems. In order to make use of this connection, however, the notion of a body has to be extended from being connected and spatially restricted to a disconnected and spatially distributed system. Learning then relates to the field of federated machine learning and edge AI.