Toward Knowledge as a Service Over Networks: A Deep Learning Model Communication Paradigm

The advent of artificial intelligence and Internet of Things has led to the seamless transition turning the big data into the big knowledge. The deep learning models, which assimilate knowledge from large-scale data, can be regarded as an alternative but promising modality of knowledge for artificia...

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Veröffentlicht in:IEEE journal on selected areas in communications 2019-06, Vol.37 (6), p.1349-1363
Hauptverfasser: Chen, Ziqian, Duan, Ling-Yu, Wang, Shiqi, Lou, Yihang, Huang, Tiejun, Wu, Dapeng Oliver, Gao, Wen
Format: Artikel
Sprache:eng
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Zusammenfassung:The advent of artificial intelligence and Internet of Things has led to the seamless transition turning the big data into the big knowledge. The deep learning models, which assimilate knowledge from large-scale data, can be regarded as an alternative but promising modality of knowledge for artificial intelligence services. Yet, the compression, storage, and communication of the deep learning models towards better knowledge services, especially over networks, pose a set of challenging problems on both industrial and academic realms. This paper presents the deep learning model communication paradigm based on multiple model compression, which greatly exploits the redundancy among multiple deep learning models in different application scenarios. We analyze the potential and demonstrate the promise of the compression strategy for deep learning model communication through a set of experiments. Moreover, the interoperability in deep learning model communication, which is enabled based on the standardization of compact deep learning model representation, is also discussed and envisioned.
ISSN:0733-8716
1558-0008
DOI:10.1109/JSAC.2019.2904360