Phie Ambo, Mechanical Love,

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Phie Ambo, Mechanical Love, 2008 www.mechanicallove.dk

Two languages Observed behavior Inner mechanism

Pattie Maes: Modelling Adaptive Autonomous Agents. An agent is a system that tries to fulfill a set of goals in a complex, dynamic environment. An agent is called autonomous if it operates completely autonomously, i.e. If it decides itself how to relate its sensor data to motor commands in such a way that its goals are attended successfully Adaptive means that the agent improves its goal-achieving competence over time

Elmer and Elsie Grey Walter, An Imitation of Life, Scientific American, 1950. Grey Walter, A Machine That Learns, Scientific American, 1951.

Rodney Brooks, A Robot That Walks: Emergent Behaviours from a Carefully Evolved Network, 1989.

Rodney Brooks, A Robot That Walks: Emergent Behaviours from a Carefully Evolved Network, 1989.

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