This Reintegration Panel proposal, CYBERNETS, focuses on the study of Cybernetic Communication Networks (CCN). CCNs are wireless networks that are context-aware, possess learning capabilities and artificial intelligence to guarantee reliability, efficiency and resilience to changes, failures or attacks via autonomous, self-configuring and self-healing individual and network behavior. Typical examples of CCNs are critical communication systems, e.g. law enforcement, disaster relief, body-area, medical instruments, space, and indoor/outdoor commercial applications. Within this context the objectives of this project are: (1)To determine the fundamental limits of data transmission rates in fully distributed CCNs in which feedback is implemented. In particular, fundamental channels in which more than two transmitter-receiver pairs interact subject to mutual interference. (2) To identify and explore alternatives for allowing transmitter-receiver pairs to learn equilibrium strategies in the decentralized interference channel with and without feedback. (3) To study the impact of knowledge on scenarios derived from the malicious behavior of one of the receivers of the interference channel with feedback. That is, to identify the scenarios in which malicious behavior of one of the receivers of the interference channel can be combated by providing more knowledge about the network state.