IEEE Publishes Comprehensive Survey of Bottom-Up and Top-Down Neural Processing System Design | Synced

It’s no secret that today’s increasingly powerful artificial neural networks (ANNs) bring with them increasing powerful computational appetites. The Open AI paper AI and Compute estimates the compute used by 2018’s AlphaGo Zero was some 300,000 times higher than 2012’s AlexNet. Human brains meanwhile are much more efficient: Stanford Professor of Neurology and Neurosurgery RobertContinue Reading

Keywords: survey
Date: 2021/06/10 15:32

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