Leveraging Transprecision Computing for Machine Vision Applications at the Edge

Machine vision tasks present challenges for resource constrained edge devices, particularly as they execute multiple tasks with variable workloads. A robust approach that can dynamically adapt in runt

Leveraging Transprecision Computing for Machine Vision Applications at the Edge

Machine vision tasks present challenges for resource constrained edge devices, particularly as they execute multiple tasks with variable workloads. A robust approach that can dynamically adapt in runtime while maintaining the maximum quality of service (QoS) within resource constraints, is needed. The paper presents a lightweight approach that monitors the runtime workload constraint and leverages accuracy-throughput trade-off. Optimisation techniques are included which find the configurations for each task for optimal accuracy, energy and memory and manages transparent switching between configurations. For an accuracy drop of 1%, we show a 1.6× higher achieved frame processing rate with further improvements possible at lower accuracy.


📜 Original Paper Content

🚀 Synchronizing high-quality layout from 1TB storage...