TY - UNPB
T1 - Eon-1
T2 - A Brain-Inspired Processor for Near-Sensor Extreme Edge Online Feature Extraction
AU - Dobrita, Alexandra
AU - Yousefzadeh, Amirreza
AU - Thorpe, Simon
AU - Vadivel, Kanishkan
AU - Detterer, Paul
AU - Tang, Guangzhi
AU - van Schaik, Gert-Jan
AU - Konijnenburg, Mario
AU - Gebregiorgis, Anteneh
AU - Hamdioui, Said
AU - Sifalakis, Manolis
PY - 2024/6/25
Y1 - 2024/6/25
N2 - For Edge AI applications, deploying online learning and adaptation on resource-constrained embedded devices can deal with fast sensor-generated streams of data in changing environments. However, since maintaining low-latency and power-efficient inference is paramount at the Edge, online learning and adaptation on the device should impose minimal additional overhead for inference. With this goal in mind, we explore energy-efficient learning and adaptation on-device for streaming-data Edge AI applications using Spiking Neural Networks (SNNs), which follow the principles of brain-inspired computing, such as high-parallelism, neuron co-located memory and compute, and event-driven processing. We propose EON-1, a brain-inspired processor for near-sensor extreme edge online feature extraction, that integrates a fast online learning and adaptation algorithm. We report results of only 1% energy overhead for learning, by far the lowest overhead when compared to other SoTA solutions, while attaining comparable inference accuracy. Furthermore, we demonstrate that EON-1 is up for the challenge of low-latency processing of HD and UHD streaming video in real-time, with learning enabled.
AB - For Edge AI applications, deploying online learning and adaptation on resource-constrained embedded devices can deal with fast sensor-generated streams of data in changing environments. However, since maintaining low-latency and power-efficient inference is paramount at the Edge, online learning and adaptation on the device should impose minimal additional overhead for inference. With this goal in mind, we explore energy-efficient learning and adaptation on-device for streaming-data Edge AI applications using Spiking Neural Networks (SNNs), which follow the principles of brain-inspired computing, such as high-parallelism, neuron co-located memory and compute, and event-driven processing. We propose EON-1, a brain-inspired processor for near-sensor extreme edge online feature extraction, that integrates a fast online learning and adaptation algorithm. We report results of only 1% energy overhead for learning, by far the lowest overhead when compared to other SoTA solutions, while attaining comparable inference accuracy. Furthermore, we demonstrate that EON-1 is up for the challenge of low-latency processing of HD and UHD streaming video in real-time, with learning enabled.
KW - cs.NE
KW - cs.AI
KW - cs.ET
KW - cs.LG
U2 - 10.48550/arXiv.2406.17285
DO - 10.48550/arXiv.2406.17285
M3 - Preprint
BT - Eon-1
PB - ArXiv.org
ER -