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Poster Abstract: C-Continuum: Edge-to-Cloud computing for distributed AI | IEEE Conference Publication | IEEE Xplore

Poster Abstract: C-Continuum: Edge-to-Cloud computing for distributed AI


Abstract:

Mobile autonomous systems are supposed to deeply impact in manufacturing, space exploration, rescue, defense, transportation, and everyday life. Autonomous air-ground veh...Show More

Abstract:

Mobile autonomous systems are supposed to deeply impact in manufacturing, space exploration, rescue, defense, transportation, and everyday life. Autonomous air-ground vehicles, for example, will become normal tools in the next few years, providing a natural platform for distributed artificial intelligence applications including, for example, disaster rescue and recovery, area surveying, autonomous driving, etc. The raise of autonomous cooperating robots will pose new challenges in networking, distributed systems and resource management. Heavy computational tasks will be dispatched to the closest edge node for processing and the core-cloud will be involved as last resort in an effort to reduce latency and increase the global system capacity leveraging application and resource locality. Massive amounts of data and computations will be required. For example, in the autonomous driving scenario Intel estimates that each driver-less vehicle will produce over 4 TeraBytes of data each day1. While most of this data is consumed in-car, cooperating autonomous vehicles will have to exchange some percentage of the 4TB and eventually offload some computation and data to the local edge or the core-cloud. This is particularly relevant when locally gathered and labeled data can be used to refine the model and ultimately increase the global “intelligence”. This approach is often taken by autonomous driving automakers.
Date of Conference: 29 April 2019 - 02 May 2019
Date Added to IEEE Xplore: 23 September 2019
ISBN Information:
Conference Location: Paris, France
References is not available for this document.

Introduction

Mobile autonomous systems are supposed to deeply impact in manufacturing, space exploration, rescue, defense, transportation, and everyday life. Autonomous air-ground vehicles, for example, will become normal tools in the next few years, providing a natural platform for distributed artificial intelligence applications including, for example, disaster rescue and recovery, area surveying, autonomous driving, etc. The raise of autonomous cooperating robots will pose new challenges in networking, distributed systems and resource management. Heavy computational tasks will be dispatched to the closest edge node for processing and the core-cloud will be involved as last resort in an effort to reduce latency and increase the global system capacity leveraging application and resource locality. Massive amounts of data and computations will be required. For example, in the autonomous driving scenario Intel estimates that each driver-less vehicle will produce over 4 TeraBytes of data each day

https://newsroom.intel.com/editorials/self-driving-cars-big-meaning-behind-one-number-4-terabytes

. While most of this data is consumed in-car, cooperating autonomous vehicles will have to exchange some percentage of the 4TB and eventually offload some computation and data to the local edge or the core-cloud. This is particularly relevant when locally gathered and labeled data can be used to refine the model and ultimately increase the global “intelligence”. This approach is often taken by autonomous driving automakers.

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1.
C. Tschudin and M. Sifalakis, "Named functions and cached computations", 2014 IEEE 11th Consumer Communications and Networking Conference (CCNC), pp. 851-857, Jan. 2014.
2.
Davide Pesavento, Giulio Grassi, Giovanni Pau, Paramvir Bahl and Serge Fdida, "Demo: Car-Fi: Opportunistic V2I by Exploiting Dual-Access Wi-Fi Networks", Proceedings of the 21st Annual International Conference on Mobile Computing and Networking. MobiCom ‘15, pp. 173-175, 2015.
3.
G. Grassi, D. Pesavento, G. Pau, L. Zhang and S. Fdida, "Navigo: Interest forwarding by geolocations in vehicular Named Data Networking", 2015 IEEE 16th International Symposium on A World of Wireless Mobile and Multimedia Networks (WoWMoM), pp. 1-10, June 2015.
4.
Giulio Grassi, Kyle Jamieson, Paramvir Bahl and Giovanni Pau, "Parkmaster: An In-vehicle Edge-based Video Analytics Service for Detecting Open Parking Spaces in Urban Environments", Proceedings of the Second ACM/IEEE Symposium on Edge Computing. SEC ‘17, pp. 16:1-16:14, 2017.

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References

References is not available for this document.