Abstract
This paper investigates the energy savings that near-subthreshold processors can obtain in edge AI applications and proposes strategies to improve them while maintaining the accuracy of the application. The selected processors deploy adaptive voltage scaling techniques in which the frequency and voltage levels of the processor core are determined at the run-time. In these systems, embedded RAM and flash memory size is typically limited to less than 1 megabyte to save power. This limited memory imposes restrictions on the complexity of the neural networks model that can be mapped to these devices and the required trade-offs between accuracy and battery life. To address these issues, we propose and evaluate alternative ‘big–little’ neural network strategies to improve battery life while maintaining prediction accuracy. The strategies are applied to a human activity recognition application selected as a demonstrator that shows that compared to the original network, the best configurations obtain an energy reduction measured at 80% while maintaining the original level of inference accuracy.
Subject
Electrical and Electronic Engineering
Reference39 articles.
1. Edge Intelligence: Paving the Last Mile of Artificial Intelligence With Edge Computing
2. Deep Learning With Edge Computing: A Review
3. Edge TPU
https://coral.ai/docs/edgetpu/faq/
4. Apollo3 Blue Datasheet
https://cdn.sparkfun.com/assets/learn_tutorials/9/0/9/Apollo3_Blue_MCU_Data_Sheet_v0_9_1.pdf
5. Eta Compute ECM3532 AI Sensor Product Brief
https://media.digikey.com/pdf/Data%20Sheets/Eta%20Compute%20PDFs/ECM3532-AI-Vision-Product-Brief-1.0.pdf
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