AI Bibliography

WIKINDX Resources  

Li, E., Zeng, L., Zhou, Z., & Chen, X. (2019). Edge ai: On-demand accelerating deep neural network inference via edge computing. IEEE Transactions on Wireless Communications, 19(1), 447–457. 
Resource type: Journal Article
BibTeX citation key: Li2019
View all bibliographic details
Categories: Artificial Intelligence, Computer Science, Data Sciences, Engineering, General, Military Science
Subcategories: Big data, Cloud computing, Command and control, Cross-domain deterrence, Deep learning, Doctrine, Edge AI, Internet of things, JADC2, Machine intelligence, Machine learning, Mosaic warfare, Neural nets, Q-learning
Creators: Chen, Li, Zeng, Zhou
Publisher:
Collection: IEEE Transactions on Wireless Communications
Attachments  
Abstract

As a key technology of enabling Artificial Intel- ligence (AI) applications in 5G era, Deep Neural Networks (DNNs) have quickly attracted widespread attention. However, it is challenging to run computation-intensive DNN-based tasks on mobile devices due to the limited computation resources. What’s worse, traditional cloud-assisted DNN inference is heavily hindered by the significant wide-area network latency, lead- ing to poor real-time performance as well as low quality of user experience. To address these challenges, in this paper, we propose Edgent, a framework that leverages edge computing for DNN collaborative inference through device-edge synergy. Edgent exploits two design knobs: (1) DNN partitioning that adaptively partitions computation between device and edge for purpose of coordinating the powerful cloud resource and the proximal edge resource for real-time DNN inference; (2) DNN right-sizing that further reduces computing latency via early exiting inference at an appropriate intermediate DNN layer. In addition, considering the potential network fluctuation in real- world deployment, Edgent is properly design to specialize for both static and dynamic network environment. Specifically, in a static environment where the bandwidth changes slowly, Edgent derives the best configurations with the assist of regression- based prediction models, while in a dynamic environment where the bandwidth varies dramatically, Edgent generates the best execution plan through the online change point detection algo- rithm that maps the current bandwidth state to the optimal configuration. We implement Edgent prototype based on the Raspberry Pi and the desktop PC and the extensive experimental evaluations demonstrate Edgent’s effectiveness in enabling on-demand low-latency edge intelligence.


  
WIKINDX 6.7.0 | Total resources: 1621 | Username: -- | Bibliography: WIKINDX Master Bibliography | Style: American Psychological Association (APA)