Toward Next-Generation Artificial Intelligence: Catalyzing the NeuroAI
Revolution
- URL: http://arxiv.org/abs/2210.08340v1
- Date: Sat, 15 Oct 2022 17:18:37 GMT
- Title: Toward Next-Generation Artificial Intelligence: Catalyzing the NeuroAI
Revolution
- Authors: Anthony Zador, Blake Richards, Bence \"Olveczky, Sean Escola, Yoshua
Bengio, Kwabena Boahen, Matthew Botvinick, Dmitri Chklovskii, Anne
Churchland, Claudia Clopath, James DiCarlo, Surya Ganguli, Jeff Hawkins,
Konrad Koerding, Alexei Koulakov, Yann LeCun, Timothy Lillicrap, Adam
Marblestone, Bruno Olshausen, Alexandre Pouget, Cristina Savin, Terrence
Sejnowski, Eero Simoncelli, Sara Solla, David Sussillo, Andreas S. Tolias,
Doris Tsao
- Abstract summary: Neuroscience has long been an important driver of progress in artificial intelligence (AI)
We propose that to accelerate progress in AI, we must invest in fundamental research in NeuroAI.
- Score: 102.45290975132406
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Neuroscience has long been an important driver of progress in artificial
intelligence (AI). We propose that to accelerate progress in AI, we must invest
in fundamental research in NeuroAI.
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