Search Results for author: Michael Lomnitz

Found 6 papers, 0 papers with code

Learning with Local Gradients at the Edge

no code implementations17 Aug 2022 Michael Lomnitz, Zachary Daniels, David Zhang, Michael Piacentino

To enable learning on edge devices with fast convergence and low memory, we present a novel backpropagation-free optimization algorithm dubbed Target Projection Stochastic Gradient Descent (tpSGD).

Real-time Hyper-Dimensional Reconfiguration at the Edge using Hardware Accelerators

no code implementations10 Jun 2022 Indhumathi Kandaswamy, Saurabh Farkya, Zachary Daniels, Gooitzen van der Wal, Aswin Raghavan, Yuzheng Zhang, Jun Hu, Michael Lomnitz, Michael Isnardi, David Zhang, Michael Piacentino

In this paper we present Hyper-Dimensional Reconfigurable Analytics at the Tactical Edge (HyDRATE) using low-SWaP embedded hardware that can perform real-time reconfiguration at the edge leveraging non-MAC (free of floating-point MultiplyACcumulate operations) deep neural nets (DNN) combined with hyperdimensional (HD) computing accelerators.

Few-Shot Learning Quantization

A general approach to bridge the reality-gap

no code implementations3 Sep 2020 Michael Lomnitz, Zigfried Hampel-Arias, Nina Lopatina, Felipe A. Mejia

Employing machine learning models in the real world requires collecting large amounts of data, which is both time consuming and costly to collect.

BIG-bench Machine Learning Data Augmentation +2

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