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Energy Efficient In-memory Hyperdimensional Encoding for Spatio-temporal Signal Processing

Emerging Technologies 2021-06-23 v1

Abstract

The emerging brain-inspired computing paradigm known as hyperdimensional computing (HDC) has been proven to provide a lightweight learning framework for various cognitive tasks compared to the widely used deep learning-based approaches. Spatio-temporal (ST) signal processing, which encompasses biosignals such as electromyography (EMG) and electroencephalography (EEG), is one family of applications that could benefit from an HDC-based learning framework. At the core of HDC lie manipulations and comparisons of large bit patterns, which are inherently ill-suited to conventional computing platforms based on the von-Neumann architecture. In this work, we propose an architecture for ST signal processing within the HDC framework using predominantly in-memory compute arrays. In particular, we introduce a methodology for the in-memory hyperdimensional encoding of ST data to be used together with an in-memory associative search module. We show that the in-memory HDC encoder for ST signals offers at least 1.80x energy efficiency gains, 3.36x area gains, as well as 9.74x throughput gains compared with a dedicated digital hardware implementation. At the same time it achieves a peak classification accuracy within 0.04% of that of the baseline HDC framework.

Keywords

Cite

@article{arxiv.2106.11654,
  title  = {Energy Efficient In-memory Hyperdimensional Encoding for Spatio-temporal Signal Processing},
  author = {Geethan Karunaratne and Manuel Le Gallo and Michael Hersche and Giovanni Cherubini and Luca Benini and Abu Sebastian and Abbas Rahimi},
  journal= {arXiv preprint arXiv:2106.11654},
  year   = {2021}
}