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Improved Data Encoding for Emerging Computing Paradigms: From Stochastic to Hyperdimensional Computing
by
M Hassan Najafi
, Moghadam, Mehran Shoushtari
, Aygun, Sercan
in
Coding
/ Computation
/ Hardware
/ Random numbers
/ Randomness
/ Sequences
2025
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Improved Data Encoding for Emerging Computing Paradigms: From Stochastic to Hyperdimensional Computing
by
M Hassan Najafi
, Moghadam, Mehran Shoushtari
, Aygun, Sercan
in
Coding
/ Computation
/ Hardware
/ Random numbers
/ Randomness
/ Sequences
2025
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Improved Data Encoding for Emerging Computing Paradigms: From Stochastic to Hyperdimensional Computing
Paper
Improved Data Encoding for Emerging Computing Paradigms: From Stochastic to Hyperdimensional Computing
2025
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Overview
Data encoding is a fundamental step in emerging computing paradigms, particularly in stochastic computing (SC) and hyperdimensional computing (HDC), where it plays a crucial role in determining the overall system performance and hardware cost efficiency. This study presents an advanced encoding strategy that leverages a hardware-friendly class of low-discrepancy (LD) sequences, specifically powers-of-2 bases of Van der Corput (VDC) sequences (VDC-2^n), as sources for random number generation. Our approach significantly enhances the accuracy and efficiency of SC and HDC systems by addressing challenges associated with randomness. By employing LD sequences, we improve correlation properties and reduce hardware complexity. Experimental results demonstrate significant improvements in accuracy and energy savings for SC and HDC systems. Our solution provides a robust framework for integrating SC and HDC in resource-constrained environments, paving the way for efficient and scalable AI implementations.
Publisher
Cornell University Library, arXiv.org
Subject
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