DeepCache: Principled Cache for Mobile Deep Vision
Abstract
We present DeepCache, a principled cache design for deep learning inference in continuous mobile vision. DeepCache benefits model execution efficiency by exploiting temporal locality in input video streams. It addresses a key challenge raised by mobile vision: the cache must operate under video scene variation, while trading off among cacheability, overhead, and loss in model accuracy. At the input of a model, DeepCache discovers video temporal locality by exploiting the video's internal structure, for which it borrows proven heuristics from video compression; into the model, DeepCache propagates regions of reusable results by exploiting the model's internal structure. Notably, DeepCache eschews applying video heuristics to model internals which are not pixels but high-dimensional, difficult-to-interpret data. Our implementation of DeepCache works with unmodified deep learning models, requires zero developer's manual effort, and is therefore immediately deployable on off-the-shelf mobile devices. Our experiments show that DeepCache saves inference execution time by 18% on average and up to 47%. DeepCache reduces system energy consumption by 20% on average.
Cite
@article{arxiv.1712.01670,
title = {DeepCache: Principled Cache for Mobile Deep Vision},
author = {Mengwei Xu and Mengze Zhu and Yunxin Liu and Felix Xiaozhu Lin and Xuanzhe Liu},
journal= {arXiv preprint arXiv:1712.01670},
year = {2020}
}
Comments
Accepted for publication in the MobiCom 2018, copyright the ACM, posted with permission