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Neuroscience / Science / Perceptron / Artificial neural network / Biological neural network / Confabulation / Brain / Consciousness / Strong AI / Neural networks / Computational neuroscience / Mind
Date: 2010-11-06 17:32:14
Neuroscience
Science
Perceptron
Artificial neural network
Biological neural network
Confabulation
Brain
Consciousness
Strong AI
Neural networks
Computational neuroscience
Mind

Thalamocortical Algorithms in Space!

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