Blending computational and experimental neuroscience

The launch of the United States' BRAIN Initiative brings with it a new era in systems neuroscience that is being driven by innovative neurotechnologies, increases in computational power and network-style artificial intelligence. A new conceptual framework for understanding cognitive behaviours based on the dynamical patterns of activity in large populations of neurons is emerging.

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