2024
DOI: 10.1145/3630266
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PArtNNer: Platform-Agnostic Adaptive Edge-Cloud DNN Partitioning for Minimizing End-to-End Latency

Soumendu Kumar Ghosh,
Arnab Raha,
Vijay Raghunathan
et al.

Abstract: The last decade has seen the emergence of Deep Neural Networks (DNNs) as the de facto algorithm for various computer vision applications. In intelligent edge devices, sensor data streams acquired by the device are processed by a DNN application running on either the edge device itself or in the cloud. However, ‘edge-only’ and ‘cloud-only’ execution of State-of-the-Art DNNs may not meet an application’s latency requirements due to the limited compute, memory, and energy resources in edge devices, dynamically va… Show more

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