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