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SeminarPast EventNeuroscience

Lifelong Learning AI via neuro inspired solutions

Hava Siegelmann

Prof

University of Massachusetts Amherst

Schedule
Thursday, October 27, 2022

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Schedule

Thursday, October 27, 2022

2:00 PM Europe/London

Host: Ad hoc

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Event Information

Domain

Neuroscience

Original Event

View source

Host

Ad hoc

Duration

70 minutes

Abstract

AI embedded in real systems, such as in satellites, robots and other autonomous devices, must make fast, safe decisions even when the environment changes, or under limitations on the available power; to do so, such systems must be adaptive in real time. To date, edge computing has no real adaptivity – rather the AI must be trained in advance, typically on a large dataset with much computational power needed; once fielded, the AI is frozen: It is unable to use its experience to operate if environment proves outside its training or to improve its expertise; and worse, since datasets cannot cover all possible real-world situations, systems with such frozen intelligent control are likely to fail. Lifelong Learning is the cutting edge of artificial intelligence - encompassing computational methods that allow systems to learn in runtime and incorporate learning for application in new, unanticipated situations. Until recently, this sort of computation has been found exclusively in nature; thus, Lifelong Learning looks to nature, and in particular neuroscience, for its underlying principles and mechanisms and then translates them to this new technology. Our presentation will introduce a number of state-of-the-art approaches to achieve AI adaptive learning, including from the DARPA’s L2M program and subsequent developments. Many environments are affected by temporal changes, such as the time of day, week, season, etc. A way to create adaptive systems which are both small and robust is by making them aware of time and able to comprehend temporal patterns in the environment. We will describe our current research in temporal AI, while also considering power constraints.

Topics

DARPALifelong Learningadaptive systemsartificial intelligencecomputational methodsedge computinglifelong-learningneuro-AIreal-time learningtemporal patterns

About the Speaker

Hava Siegelmann

Prof

University of Massachusetts Amherst

Contact & Resources

Personal Website

www.cics.umass.edu/faculty/directory/siegelmann_hava

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