Using Grid Cells as a Predictive-Enabling Basis (Follow up) - December 23, 2020
Marcus Lewis discusses and elaborates some of the ideas he explored and proposed on using grid cells as a prediction-enabling basis in a previous meeting. He first details the frameworks of the grid cell module and neural network. The team then asks questions on the technique used and evaluates the technique’s constraints and potentials. This is an informal continuation of the research meeting on December 21, 2020.
Dec 21's meeting: https://youtu.be/7tF-ofr7VUo
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Видео Using Grid Cells as a Predictive-Enabling Basis (Follow up) - December 23, 2020 канала Numenta
Dec 21's meeting: https://youtu.be/7tF-ofr7VUo
- - - - -
Numenta is leading the new era of machine intelligence. Our deep experience in theoretical neuroscience research has led to tremendous discoveries on how the brain works. We have developed a framework called the Thousand Brains Theory of Intelligence that will be fundamental to advancing the state of artificial intelligence and machine learning. By applying this theory to existing deep learning systems, we are addressing today’s bottlenecks while enabling tomorrow’s applications.
Subscribe to our News Digest for the latest news about neuroscience and artificial intelligence:
https://tinyurl.com/NumentaNewsDigest
Subscribe to our Newsletter for the latest Numenta updates:
https://tinyurl.com/NumentaNewsletter
Our Social Media:
https://twitter.com/Numenta
https://www.facebook.com/OfficialNumenta
https://www.linkedin.com/company/numenta
Our Open Source Resources:
https://github.com/numenta
https://discourse.numenta.org/
Our Website:
https://numenta.com/
Видео Using Grid Cells as a Predictive-Enabling Basis (Follow up) - December 23, 2020 канала Numenta
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