Italian community on Software Defined Networking

[sdn-it] [NI 2019: Network Intelligence - Machine Learning for Networking] - Deadline extension


Cronologico Percorso di conversazione 
  • From: "Giovanni Schembra" < >
  • To: < >
  • Subject: [sdn-it] [NI 2019: Network Intelligence - Machine Learning for Networking] - Deadline extension
  • Date: Mon, 31 Dec 2018 09:50:27 +0100

Dear colleagues,

The deadline for paper submission to the Infocom workshop NI 2019 has been extended to January 16, 2019. The new date is a firm deadline.

May the New Year bring to you peace and joy and, why not, to the network a lot of artificial intelligence.

Happy new year

Giovanni Schembra

 

------------------- ------------------- ------------------- -------------------

 [Apologies for cross and multiple postings]

------------------- ------------------- ------------------- -------------------

 

 

 

------------------------------------------   Call for Papers ------------------------------------------

 

The 2nd International Workshop on Network Intelligence

NI 2019

“Machine Learning for Networking”

 

in conjunction with IEEE Infocom 2019

 

http://infocom2019.ieee-infocom.org/workshop-network-intelligence

http://ni.committees.comsoc.org/ni-workshop-2019/


29 April – 2 May 2019 – Paris, France

 

Technically Sponsored by IEEE Communications Society, Technical Committee on Cognitive Networking, Technical Committee on Big Data, IEEE Network Intelligence Emerging Technologies initiative

(IEEE NI ETI)

--------------------------------------------------------------------------------------------------------------------------

 

Network Intelligence considers the embedding of Artificial Intelligence (AI) in future networks to fasten service delivery and operations, leverage Quality of Experience (QoE) and guarantee service availability, also allowing better agility, resiliency, faster customization and security. This concept inherits the solid background of autonomic networking, cognitive management, and artificial intelligence. It is envisioned as mandatory to manage, pilot and operate the forthcoming network built upon SDN, NFV and cloud.

The main goal of the Network Intelligence Workshop is to present state-of-the-art research results and experience reports in the area of network intelligence, addressing topics such as artificial intelligence techniques and models for network and service management; smart service orchestration and delivery, dynamic Service Function Chaining, Intent and policy based management, centralized vs. distributed control of SDN/NFV based networks, analytics and big data approaches, knowledge creation and decision making. This workshop offers a timely venue for researchers and industry partners to present and discuss their latest results in Network Intelligence.

The main topic of this NI 2019 edition is “Machine Learning for Networking” which puts the attention on the particular application of machine learning tools to the optimization of next generation networks. Machine and deep learning techniques become increasingly popular and achieve remarkable success nowadays in many application domains, e.g., speech recognition, bioinformatics and computer vision. Machine learning is capable to exploit the hidden relationship from voluminous input data to complicated system outputs, especially for some advanced techniques, like the deep learning. Moreover, some other techniques, e.g., reinforcement learning, could further adapt the learning results in the new environments to evolve automatically. These features perfectly match the complex, dynamic and time-varying nature of today’s networking systems.

This workshop presents state-of-the-art research in machine learning for networking. Both theoretical and system papers will be considered, to present novel contributions in the field of machine learning,  deep learning and, in general, network intelligent tools, including scalable analytic techniques and frameworks capable of collecting and analyzing both online and offline massive datasets, open issues related to the application of machine learning into communications and networking problems and to share new ideas and techniques for machine learning in communication systems and networks. The topics of interest include (but not limited to):

 

       Deep and Reinforcement learning for networking and communications in networks

       Data mining and big data analytics in networking

       Protocol design and optimization using AI/ML

       Self-learning and adaptive networking protocols and algorithms

       Intent & Policy-based management for intelligent networks

       Innovative architectures and infrastructures for intelligent networks

       AI/ML for network management and orchestration

       AI/ML for network slicing optimization in networking

       AI/ML for service placement and dynamic Service Function Chaining

       AI/ML for C-RAN resource management and medium access control

       Decision making mechanisms

       Routing optimization based on flow prediction network systems

       Bio-inspired learning for networking and communications

       Protocol design and optimization using machine learning

       Data analytics for network and wireless measurements mining

       Big data analysis frameworks for network monitoring data

       Novel context-aware, emotion-aware networking services

       Methodologies for network problem diagnosis, anomaly detection and prediction

       Network Security based on AI/ML techniques

       AI/ML for multimedia networking

       AI/ML support for ultra-low latency applications

       AI/ML for IoT

       Open-source networking optimization tools for AI/ML applications

       Experiences and best-practices using machine learning in operational networks

       Machine learning for user behavior prediction

       Modeling and performance evaluation for Intelligent Network

       Intelligent energy-aware/green communications

       Machine learning and data mining for networking

       Transfer learning and reinforcement learning for networking system

       Network anomaly diagnosis through big networking data and wireless

       Machine learning and big data analytics for network management

       Big data analytics and visualization for traffic analysis

       Fault-tolerant network protocols using machine learning

       Experiences and best-practices using machine learning in operational networks

 

 

This workshop is supported by IEEE ComSoc Emerging Technical Initiative on Network Intelligence, technically sponsored by IEEE Communications Society, Technical Committee on Cognitive Networking, and Technical Committee on Big Data.

 

 

 

Authors of the top-ranked papers accepted for publication in the NI 2019 workshop proceedings will be invited to submit an extended version of their papers to the IEEE Transactions on Network and Service Management (TNSM) journal.

 

 

 

SUBMISSION LINK

Papers must be submitted electronically as PDF files, formatted for 8.5x11-inch paper. The length of the paper must be no more than 6 pages in the IEEE double-column format (10-pt font). Papers should neither have been published elsewhere nor being currently under review by another conference or journal. The reviews will be single blind. At least one of the authors of every accepted paper must register and present the paper at the workshop. Accepted papers will be published in the combined INFOCOM 2019 Workshop proceedings and will be submitted to IEEE Xplore.

 

EDAS link for paper submission: http://edas.info/N25585

 

 

 

Important dates

·         Paper submission deadline:   December 30, 2018  January 16, 2019 (FIRM DEADLINE)

·         Acceptance notification:       February 18, 2019

·         Camera ready due:                March 7, 2019

 

 

General Chairs:

·         Mérouane Debbah (CentraleSupélec, France)

·         Baochun Li (University of Toronto)

·         Giovanni Schembra (University of Catania, Italy)

·         Dapeng Oliver Wu (University of Florida)

 

 

Technical Program Committee Chairs:

·         Laura Galluccio (University of Catania, Italy)

·         Qiuyuan Huang (Microsoft Research, Redmond, USA)

·         Yunhuai Liu (Peking University, China)

·         Mohamed Faten Zhani (Universitè du Quebec, Canada)

 

 

NI Steering Committee:

·         " target="_top">Imen Grida Ben Yahia (Orange Labs, France)

·         " target="_top">Laurent Ciavaglia (Nokia Bell Labs, France)

·         " target="_top">Weverton Cordeiro (UFRGS, Brazil)

·         Mérouane Debbah (CentraleSupélec, France)

·         Laura Galluccio (University of Catania, Italy)

·         Baochun Li (University of Toronto)

·         " target="_top">Noura Limam (University of Waterloo, Canada)

·         Giovanni Schembra (University of Catania, Italy)

·         Dapeng Oliver Wu (University of Florida)

·         " target="_top">Mohamed Faten Zhani (École de Technologie Supérieure, Canada)

 

 

 

 

 

 

Attachment: NI2019_CfP.PDF
Description: Adobe PDF document



  • [sdn-it] [NI 2019: Network Intelligence - Machine Learning for Networking] - Deadline extension, Giovanni Schembra

Archivio con motore MhonArc 2.6.16.

§