Skip to end of metadata
Go to start of metadata

You are viewing an old version of this page. View the current version.

Compare with Current View Page History

Version 1 Next »

Speakers

Andreas Wild (Intel)

Danielle Rager (Deactivated) (Intel)

Elvin Hajizada (Intel)

Joe Hays (US Naval Research Lab)

Description

Online Continual Learning for Loihi 2 (Intel)

Understand how local, online learning as supported by Intel Loihi 2 works, what kinds of applications might take advantage of it, and how to use online learning rules in Lava.

A Case for Continual Learning (US Naval Research Lab)

Tune into this INRC special guest talk by NRL to understand WHY and HOW to use continual learning, with connections to robotic and space applications. This effort leads into research on differentiable plasticity, a breakthrough feature enabling the combination of fast GPU-based model training with flexible Loihi-based online learning. To support differentiable plasticity, NRL researchers will discuss their work to close the gaps between plasticity simulations in Lava and their on-chip counterparts.

Schedule

10:30 PT / 13:30 ET / 19:30 CET
Thursday, July 20th, 2023

11:15 PT / 14:15 ET / 20:15 CET
Friday, July 21st, 2023

Recording

Link to Presentation

Not Yet Available

  • No labels