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YouTube

MetaLDC: Meta Learning of Low-Dimensional Computing Classifiers for Fast On-Device Adaptation

EDGE AI FOUNDATION via YouTube

Overview

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Watch a 15-minute research symposium presentation exploring MetaLDC, a novel approach for enabling fast model updates on edge devices through meta-learning of low-dimensional computing classifiers. Learn how PhD student Yejia LIU from UC Riverside addresses the challenges of limited computational power in intelligent edge devices by combining brain-inspired ultra-efficient low-dimensional computing with meta-training techniques. Discover the framework's two-stage process: offline meta-training of representations and fast adaptation using closed-form gradients during meta-testing. Examine experimental results demonstrating MetaLDC's superior performance in accuracy, robustness against random bit errors, and computational efficiency compared to state-of-the-art baselines. Gain insights into vector symbolic architecture, hyper-dimensional computing, and low-dimensional classifiers while understanding their practical applications in edge AI development.

Syllabus

Intro
Background: Vector symbolic architecture (VSA)
Background: Hyper-dimensional computing (HDC/VSA)
Background: Low-dimensional classifier (LDC)
MetaLDC framework
Experimental Setup
Key results: Accuracy
Key results: Inference cost
Key results: Robustness against hardware bit errors
Additional analysis: Efficacy of the learned representation
Summary & Takeaways

Taught by

EDGE AI FOUNDATION

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