Brains@Bay Meetup - Exploring Neuromodulators and How They Might Impact AI (Apr 13, 2022)
Follow-up Q&A and slides will be posted soon - check the meetup page for updates.
Slides: https://numenta.com/resources/videos/brainsatbay-neuromodulators-and-ai
Link to meetup: https://www.meetup.com/Brains-Bay/events/284481247/
In this Brains@Bay meetup, we discuss how the principles of neuromodulators in the brain can lead to more flexible and robust machine learning systems.
First, Skrikanth Ramaswamy (Newcastle University) gave an overview of the biological organizing principles of neuromodulators in adaptive cognition and highlight the competition and cooperation across neuromodulators.
Then, Jie Mei (the Brain and Mind Institute) discussed ongoing research on bio-inspired mechanisms of neuromodulatory function in DNNs, and propose a computational framework to inspire new architectures of “neuromodulation-aware” DNNs.
Finally, Thomas Miconi (ML Collective) talked about his work on evolving neural networks, endowed with plastic connections and reward-based neuromodulation, based on a computational neuroscience framework.
To learn more about Brains@Bay, visit our Meetup page: https://www.meetup.com/Brains-Bay/
0:00 Introduction
1:39 Skrikanth Ramaswamy: A primer on neuromodulatory systems
33:19 Jie Mei: Implementing multi-scale neuromodulation in artificial neural networks
1:07:54 Thomas Miconi: How to evolve your own lab rat
1:33:22 Discussion + Q&A
- - - - -
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://numenta.com/news-digest/
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 Brains@Bay Meetup - Exploring Neuromodulators and How They Might Impact AI (Apr 13, 2022) канала Numenta
Slides: https://numenta.com/resources/videos/brainsatbay-neuromodulators-and-ai
Link to meetup: https://www.meetup.com/Brains-Bay/events/284481247/
In this Brains@Bay meetup, we discuss how the principles of neuromodulators in the brain can lead to more flexible and robust machine learning systems.
First, Skrikanth Ramaswamy (Newcastle University) gave an overview of the biological organizing principles of neuromodulators in adaptive cognition and highlight the competition and cooperation across neuromodulators.
Then, Jie Mei (the Brain and Mind Institute) discussed ongoing research on bio-inspired mechanisms of neuromodulatory function in DNNs, and propose a computational framework to inspire new architectures of “neuromodulation-aware” DNNs.
Finally, Thomas Miconi (ML Collective) talked about his work on evolving neural networks, endowed with plastic connections and reward-based neuromodulation, based on a computational neuroscience framework.
To learn more about Brains@Bay, visit our Meetup page: https://www.meetup.com/Brains-Bay/
0:00 Introduction
1:39 Skrikanth Ramaswamy: A primer on neuromodulatory systems
33:19 Jie Mei: Implementing multi-scale neuromodulation in artificial neural networks
1:07:54 Thomas Miconi: How to evolve your own lab rat
1:33:22 Discussion + Q&A
- - - - -
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://numenta.com/news-digest/
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 Brains@Bay Meetup - Exploring Neuromodulators and How They Might Impact AI (Apr 13, 2022) канала Numenta
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
![A Zoom Conversation with Numenta CEO Subutai Ahmad](https://i.ytimg.com/vi/_L1RBJmSBHk/default.jpg)
![HTM Hackers' Hangout - Apr 15, 2016](https://i.ytimg.com/vi/ovbGYTsHIjc/default.jpg)
![HTM Hackers' Hangout - Apr 5, 2019](https://i.ytimg.com/vi/e9iYLiXOHjU/default.jpg)
![BHTMS - Refactoring, cleanup, React mouse hover interactions for simple scalar encoder](https://i.ytimg.com/vi/wUToWUqkj2w/default.jpg)
![Backprop-Trained Permanences (NRM Feb 10, 2020)](https://i.ytimg.com/vi/J6VVZdfMBmE/default.jpg)
![HTM Minute: 2 Minute History of HTM (by Matt Taylor)](https://i.ytimg.com/vi/BgX39PTZ4PU/default.jpg)
![NuPIC Sprint Planning - Dec 6, 2013](https://i.ytimg.com/vi/wBcOMQprXro/default.jpg)
![Freeman42's anomaly model params question part 1](https://i.ytimg.com/vi/FDtnWHTTSu4/default.jpg)
![Using Grid Cells as a Predictive-Enabling Basis (Follow up) - December 23, 2020](https://i.ytimg.com/vi/uZ4qC2SltXA/default.jpg)
![OpenAI Paper Review: GPU Kernels for Block-Sparse Weights](https://i.ytimg.com/vi/ALdx1tVDTYI/default.jpg)
![Niels Leadholm on Grid Cells for Visual Object Recognition - December 2, 2020](https://i.ytimg.com/vi/y6IDt9EY4-g/default.jpg)
![ReWork AI Summit Day Two Recap](https://i.ytimg.com/vi/uq30VXFk3FQ/default.jpg)
![BHTMS: Describing the Minicolumn Competition](https://i.ytimg.com/vi/eCfIgtGjC9Y/default.jpg)
![BHTMS: Spatial Pooling Potential Pools Diagram D3js / Reactjs](https://i.ytimg.com/vi/clRulM4bezY/default.jpg)
!["Learning Physical Graph Representations from Visual Scenes" Paper Review - December 22, 2021](https://i.ytimg.com/vi/KElvHDn7Mpw/default.jpg)
![STREAMER: Streaming Representation Learning and Event Segmentation in a Hierarchical Manner](https://i.ytimg.com/vi/3jZtqTiLRtM/default.jpg)
![Numenta Research Meeting, Nov 20, 2019](https://i.ytimg.com/vi/gwV9MmCbUUQ/default.jpg)
!["Improved Expressivity Through Dendritic Neural Networks" Paper Review - June 8, 2020](https://i.ytimg.com/vi/WZ5tpqWx158/default.jpg)
![Paper Reviews on Multiscale Representation and Representational Drift in the Neocortex -Jul 12, 2021](https://i.ytimg.com/vi/06xXlPBTAow/default.jpg)
![NuPIC Development Progress Review - Oct 31, 2014](https://i.ytimg.com/vi/NP9bKxyswFI/default.jpg)
![Timing in the cortical column SMI circuits, whiteboard chat, neuroscience, artificial intelligence](https://i.ytimg.com/vi/sVgSPOe3aKM/default.jpg)