Extreme Edge
"Extreme edge" research focuses on deploying computationally intensive machine learning models and algorithms on resource-constrained edge devices, prioritizing efficiency and real-time performance without sacrificing accuracy. Current efforts concentrate on optimizing existing architectures like transformers and convolutional neural networks through techniques such as quantization, pruning, knowledge distillation, and novel attention mechanisms, alongside developing lightweight alternatives. This field is crucial for enabling AI applications in diverse areas like robotics, healthcare, and environmental monitoring, where immediate processing and limited power are critical constraints.
Papers
ED-ViT: Splitting Vision Transformer for Distributed Inference on Edge Devices
Xiang Liu, Yijun Song, Xia Li, Yifei Sun, Huiying Lan, Zemin Liu, Linshan Jiang, Jialin Li
PaSTe: Improving the Efficiency of Visual Anomaly Detection at the Edge
Manuel Barusco, Francesco Borsatti, Davide Dalle Pezze, Francesco Paissan, Elisabetta Farella, Gian Antonio Susto
SHAKTI: A 2.5 Billion Parameter Small Language Model Optimized for Edge AI and Low-Resource Environments
Syed Abdul Gaffar Shakhadri, Kruthika KR, Rakshit Aralimatti
ABBA-VSM: Time Series Classification using Symbolic Representation on the Edge
Meerzhan Kanatbekova, Shashikant Ilager, Ivona Brandic
Edge Unlearning is Not "on Edge"! An Adaptive Exact Unlearning System on Resource-Constrained Devices
Xiaoyu Xia, Ziqi Wang, Ruoxi Sun, Bowen Liu, Ibrahim Khalil, Minhui Xue