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MLPerf Mobile Inference Benchmark

3 December 2020
Vijay Janapa Reddi
David Kanter
Peter Mattson
Jared Duke
Thai Nguyen
Ramesh Chukka
Kenneth Shiring
Koan-Sin Tan
M. Charlebois
William Chou
Mostafa El-Khamy
Jungwook Hong
T. S. John
Cindy Trinh
Michael H. C. Buch
Mark Mazumder
Relja Markovic
Thomas Atta-fosu
Fatih Çakir
Masoud Charkhabi
Xiaodong Chen
Cheng-Ming Chiang
Dave Dexter
Terry Heo
ArXiv (abs)PDFHTML
Abstract

This paper presents the first industry-standard open-source machine learning (ML) benchmark to allow perfor mance and accuracy evaluation of mobile devices with different AI chips and software stacks. The benchmark draws from the expertise of leading mobile-SoC vendors, ML-framework providers, and model producers. It comprises a suite of models that operate with standard data sets, quality metrics and run rules. We describe the design and implementation of this domain-specific ML benchmark. The current benchmark version comes as a mobile app for different computer vision and natural language processing tasks. The benchmark also supports non-smartphone devices, such as laptops and mobile PCs. Benchmark results from the first two rounds reveal the overwhelming complexity of the underlying mobile ML system stack, emphasizing the need for transparency in mobile ML performance analysis. The results also show that the strides being made all through the ML stack improve performance. Within six months, offline throughput improved by 3x, while latency reduced by as much as 12x. ML is an evolving field with changing use cases, models, data sets and quality targets. MLPerf Mobile will evolve and serve as an open-source community framework to guide research and innovation for mobile AI.

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