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
Edge-SD-SR: Low Latency and Parameter Efficient On-device Super-Resolution with Stable Diffusion via Bidirectional Conditioning
Mehdi Noroozi, Isma Hadji, Victor Escorcia, Anestis Zaganidis, Brais Martinez, Georgios Tzimiropoulos
Edge Delayed Deep Deterministic Policy Gradient: efficient continuous control for edge scenarios
Alberto Sinigaglia, Niccolò Turcato, Ruggero Carli, Gian Antonio Susto