Late Breaking Results: Energy-Efficient Printed Machine Learning Classifiers with Sequential SVMs
This work addresses energy efficiency for battery-powered printed electronics systems, representing an incremental improvement in a domain-specific context.
The paper tackled the problem of high power, area, and energy overheads in printed machine learning classifiers by designing sequential printed bespoke SVM circuits, achieving 6.5x energy savings while maintaining higher accuracy compared to state-of-the-art.
Printed Electronics (PE) provide a mechanically flexible and cost-effective solution for machine learning (ML) circuits, compared to silicon-based technologies. However, due to large feature sizes, printed classifiers are limited by high power, area, and energy overheads, which restricts the realization of battery-powered systems. In this work, we design sequential printed bespoke Support Vector Machine (SVM) circuits that adhere to the power constraints of existing printed batteries while minimizing energy consumption, thereby boosting battery life. Our results show 6.5x energy savings while maintaining higher accuracy compared to the state of the art.