OneAdapt: Fast Configuration Adaptation for Video Analytics Applications via Backpropagation
Kuntai Du, Yuhan Liu, Yitian Hao, Qizheng Zhang, Haodong Wang, Yuyang, Huang, Ganesh Ananthanarayanan, Junchen Jiang

TL;DR
OneAdapt is a gradient-based configuration adaptation method for video analytics that efficiently optimizes resource use while maintaining or improving accuracy, applicable across various tasks and data types.
Contribution
It introduces a novel gradient-ascent approach leveraging DNN differentiability to adapt configuration knobs with minimal overhead and high accuracy.
Findings
Reduces bandwidth and GPU usage by 15-59%
Maintains comparable accuracy with resource savings
Improves accuracy by 1-5% with similar or fewer resources
Abstract
Deep learning inference on streaming media data, such as object detection in video or LiDAR feeds and text extraction from audio waves, is now ubiquitous. To achieve high inference accuracy, these applications typically require significant network bandwidth to gather high-fidelity data and extensive GPU resources to run deep neural networks (DNNs). While the high demand for network bandwidth and GPU resources could be substantially reduced by optimally adapting the configuration knobs, such as video resolution and frame rate, current adaptation techniques fail to meet three requirements simultaneously: adapt configurations (i) with minimum extra GPU or bandwidth overhead; (ii) to reach near-optimal decisions based on how the data affects the final DNN's accuracy, and (iii) do so for a range of configuration knobs. This paper presents OneAdapt, which meets these requirements by…
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