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                  principles derived from neural networks, fuzzy systems, evolutionary computation,
                  quantum computing, and brain information processing could lead to more efficient
                  information technologies, leading to brain-like AI [6].



                  ACKNOWLEDGMENT
                  The work on this paper is supported by the Knowledge Engineering and Discovery Research
                  Institute (KEDRI, http://www.kedri.aut.ac.nz) under a SRIFT AUT grant. A video presentation
                  supporting this chapter and giving more details can be found on: https://www.youtube.com/
                  watch?v¼fphrAVA_GbY&t¼1988s. The NeuCube software, along with data and case studies
                  of brain-inspired AI demo systems are presented in: http://www.kedri.aut.ac.nz/neucube/
                  and in [6].



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