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"ACM SIGCHI General Interest Announcements (Mailing List)" <[log in to unmask]>
Date:
Wed, 8 Jan 2020 15:00:08 +0400
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Moayad Aloqaily <[log in to unmask]>
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Moayad Aloqaily <[log in to unmask]>
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----------------------
Call For Papers
------------------------
IEEE INFOCOM 2020 The Second International Workshop on Intelligent Cloud
Computing and Networking (ICCN)
https://infocom2020.ieee-infocom.org/workshop-intelligent-cloud-computing-and-networking

Important Dates
Paper submission: *January 15, 2020 (Firm)*
Author notification: February 15, 2020
Camera ready: March 6, 2020

Cloud computing, as well as Cloud-inspired business models, enables
on-demand access to a shared pool of resources, namely computing, storage,
networks, services, and applications. With the advent of Cloud-based
systems, cloud operators have been aiming at reliable, secured,
privacy-preserving and cost-efficient cloud design and management. As the
Cloud infrastructure aims at offering various IT resources as services,
requirements of Cloud applications vary based on the resources which are
requested as services. Thus, the resources may refer to heavy computation
resources, massive storage resources, and high-capacity network resources
and so on. The heterogeneity of cloud applications leads to the challenge
of holistic design of a robust Cloud system which can oversee and handle
the diverse needs of numerous types of applications. On the other hand, the
new computation technologies, such as big data analytics, machine learning,
and blockchain, have great influence on the cloud and network. These
challenges enforce cooperation of various players in the Cloud system, each
of which focuses on a different segment such as computing, network,
applications, and systems.

The Second International Workshop on Intelligent Cloud Computing and
Networking (ICCN-2020) is the evolution of the previous 7 editions CCSNA
(Cloud Computing Systems, Networks, and Applications) and further 1 edition
ICCN workshop, starting in IEEE Globecom 2013. It aims at the crossroads
between scientists, researchers, practitioners and students from diverse
domains in Cloud computing research. The Workshop aims at attracting
contributions of system and network design that can support existing and
future applications and services. Researchers are encouraged to submit
original research contributions in all major areas, which include, but not
limited to:

Cloud computing system and network design
Cloud network protocol design and management
Optimization for cloud computing, networking, and applications
Green cloud system design
Cloud storage design and networking
Cloud system and storage security
Cloud network virtualization techniques
Modeling for cloud system, network and storage
Performance analysis for cloud system, network and storage
Big data storage and networking in the Clouds
Intra-cloud computing and networking
Mobile Cloud system design
Cloud media and storage design
Real-time resource reporting and monitoring for cloud management
Cloud system interoperability
Cloud data center design
Utility computing solutions in Cloud systems
Cloud forensics
Networking for cloud computing
Machine learning, data mining for cloud computing
Edge, fog, and mobile edge computing
Security, privacy, trust for cloud computing
Machine learning for cloud resource management
Machine learning for traffic engineering and congestion control
Machine learning for network measurement
Data-driven methodology and architecture
Networking for machine learning systems
Resource management and device placement for machine learning systems
Measurement and diagnosis for machine learning systems
Blockchain with cloud

Keynote Speakers:
1. Prof. Masayuki Murata, IEICE Fellow, Osaka University, Japan
Title: Brain-inspired Computing and Networking

2. Prof. Song Guo, IEEE Fellow, The Hong Kong Polytechnic University, China
Title: Distributed Edge Learning for Big Data Analytics: Challenges and
Trends


Paper submission:
EDAS link: https://edas.info/newPaper.php?c=26862&track=99580

Committee:

General Chairs
Jie Li, Shanghai Jiao Tong University, China
Alfredo Grieco, Politecnico di Bari, Italy
Ruidong Li, National Institute of Information and Communications Technology
(NICT), Japan

Technical Program Committee Chairs
Deze Zeng, China University of Geosciences, China
Rami Langar, University Paris Est, France
Ruiting Zhou, Wuhan University, China

Keynote and Panel Chair
Zhi Zhou, Sun Yat-sen University, China

Publicity Chairs
Moayad Aloqaily, Gnowit Inc. Ottawa, Canada
William Liu, Auckland University of Technology, New Zealand
Oznur Ozkasap, Koc University, Istanbul, Turkey
Ka-Cheong Leung, Harbin Institute of Technology, Shenzhen, China
Xiaohua Xu, Kennesaw State University, USA

Steering Committee
Hitoshi Asaeda, NICT, Japan
Jiannong Cao, The Hong Kong Polytechnic Univ, Hong Kong
Niklas Carlsson, Linkoping University, Sweden
Xiaoming Fu, University of Gottingen, Germany
Chuan Heng Foh, University of Surrey, UK
Volker Hilt, Nokia Bell Labs, Germany
Yaser Jararweh, Duquesne University, USA
Zongpeng Li, Wuhan University, China & University of Calgary, Canada
Jie Wu, Temple University, USA
Jinsong Wu, Universidad de Chile, Chile

*Best Regards*
*Moayad Aloqaily, Ph.D., P.Eng.*

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