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From: "Ciavaglia, Laurent (Nokia - FR/Paris-Saclay)" <laurent.ciavaglia@nokia.com>
To: "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: IEEE INFOCOM 2019 - 2nd International Workshop on Network Intelligence: Machine Learning for Networking
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Subject: [Idnet] IEEE INFOCOM 2019 - 2nd International Workshop on Network Intelligence: Machine Learning for Networking
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Dear all,

This Infocom 2019 Workshop might be of interest to the IDNET community.

Best regards, Laurent.

------------------------------------------   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/>

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 o=
n Cognitive Networking, Technical Committee on Big Data, IEEE Network Intel=
ligence 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 Qu=
ality of Experience (QoE) and guarantee service availability, also allowing=
 better agility, resiliency, faster customization and security. This concep=
t inherits the solid background of autonomic networking, cognitive manageme=
nt, and artificial intelligence. It is envisioned as mandatory to manage, p=
ilot and operate the forthcoming network built upon SDN, NFV and cloud.
The main goal of the Network Intelligence Workshop is to present state-of-t=
he-art research results and experience reports in the area of network intel=
ligence, addressing topics such as artificial intelligence techniques and m=
odels for network and service management; smart service orchestration and d=
elivery, dynamic Service Function Chaining, Intent and policy based managem=
ent, centralized vs. distributed control of SDN/NFV based networks, analyti=
cs and big data approaches, knowledge creation and decision making. This wo=
rkshop offers a timely venue for researchers and industry partners to prese=
nt 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 le=
arning techniques become increasingly popular and achieve remarkable succes=
s nowadays in many application domains, e.g., speech recognition, bioinform=
atics and computer vision. Machine learning is capable to exploit the hidde=
n relationship from voluminous input data to complicated system outputs, es=
pecially for some advanced techniques, like the deep learning. Moreover, so=
me other techniques, e.g., reinforcement learning, could further adapt the =
learning results in the new environments to evolve automatically. These fea=
tures 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 ne=
tworking. 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 techniqu=
es and frameworks capable of collecting and analyzing both online and offli=
ne massive datasets, open issues related to the application of machine lear=
ning 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 i=
n 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 networ=
ks

*       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 operationa=
l 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 operationa=
l 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 Bi=
g Data.



Authors of the top-ranked papers accepted for publication in the NI 2019 wo=
rkshop proceedings will be invited to submit an extended version of their p=
apers to the IEEE Transactions on Network and Service Management (TNSM) jou=
rnal.




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 IEE=
E double-column format (10-pt font). Papers should neither have been publis=
hed elsewhere nor being currently under review by another conference or jou=
rnal. The reviews will be single blind. At least one of the authors of ever=
y accepted paper must register and present the paper at the workshop. Accep=
ted papers will be published in the combined INFOCOM 2019 Workshop proceedi=
ngs and will be submitted to IEEE Xplore.

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





Important dates

  *   Paper submission deadline:   December 30, 2018
  *   Acceptance notification:       February 18, 2019
  *   Camera ready due:                March 7, 2019



General Chairs:

  *   M=E9rouane Debbah (CentraleSup=E9lec, 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 (Universit=E8 du Quebec, Canada)





NI Steering Committee:

  *   Imen Grida Ben Yahia<mailto:imen.gridabenyahia@orange.com?Subject=3D%=
5BNI%5D> (Orange Labs, France)
  *   Laurent Ciavaglia<mailto:laurent.ciavaglia@nokia-bell-labs.com?Subjec=
t=3D%5BNI%5D> (Nokia Bell Labs, France)
  *   Weverton Cordeiro <mailto:wevertoncordeiro@gmail.com?Subject=3D%5BNI%=
5D> (UFRGS, Brazil)
  *   M=E9rouane Debbah (CentraleSup=E9lec, France)
  *   Laura Galluccio (University of Catania, Italy)
  *   Baochun Li (University of Toronto)
  *   Noura Limam<mailto:n2limam@uwaterloo.ca?Subject=3D%5BNI%5D> (Universi=
ty of Waterloo, Canada)
  *   Giovanni Schembra (University of Catania, Italy)
  *   Dapeng Oliver Wu (University of Florida)
  *   Mohamed Faten Zhani<mailto:mfzhani@etsmtl.ca?Subject=3D%5BNI%5D> (=C9=
cole de Technologie Sup=E9rieure, Canada)







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<body lang=3D"EN-US" link=3D"#0563C1" vlink=3D"#954F72">
<div class=3D"WordSection1">
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;He=
lvetica&quot;,sans-serif;color:black">Dear all,<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;He=
lvetica&quot;,sans-serif;color:black"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;He=
lvetica&quot;,sans-serif;color:black">This Infocom 2019 Workshop might be o=
f interest to the IDNET community.<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;He=
lvetica&quot;,sans-serif;color:black"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;He=
lvetica&quot;,sans-serif;color:black">Best regards, Laurent.<o:p></o:p></sp=
an></p>
<p class=3D"MsoNormal"><span style=3D"font-size:11.0pt;font-family:&quot;Ca=
libri&quot;,sans-serif;color:#1F497D"><o:p>&nbsp;</o:p></span></p>
<table class=3D"MsoNormalTable" border=3D"0" cellspacing=3D"0" cellpadding=
=3D"0" style=3D"border-collapse:collapse">
<tbody>
<tr>
<td width=3D"775" valign=3D"top" style=3D"width:581.2pt;padding:0in 5.4pt 0=
in 5.4pt">
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><span s=
tyle=3D"font-size:10.0pt;color:black">-------------------------------------=
-----&nbsp;
</span><b><span style=3D"font-size:28.0pt;color:black">&nbsp;Call for Paper=
s</span></b><span style=3D"font-size:10.0pt;color:black"> -----------------=
-------------------------<o:p></o:p></span></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><span s=
tyle=3D"font-size:10.0pt;color:black"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt">The 2nd International Workshop on Network Inte=
lligence<o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:16.0pt">NI 2019</span></b><b><span lang=3D"EN" style=
=3D"font-size:16.0pt"><o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:16.0pt">&#8220;Machine Learning for Networking&#8221;<=
o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt"><o:p>&nbsp;</o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt">in conjunction with IEEE
<a href=3D"http://infocom2019.ieee-infocom.org/">Infocom 2019</a><o:p></o:p=
></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt"><o:p>&nbsp;</o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt"><a href=3D"http://infocom2019.ieee-infocom.org=
/workshop-network-intelligence">http://infocom2019.ieee-infocom.org/worksho=
p-network-intelligence</a>
<o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><a href=
=3D"http://ni.committees.comsoc.org/ni-workshop-2019/"><b><span style=3D"fo=
nt-size:10.0pt">http://ni.committees.comsoc.org/ni-workshop-2019/</span></b=
></a><b><span style=3D"font-size:10.0pt">
<o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt"><br>
29 April &#8211; 2 May 2019 &#8211; Paris, France<o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><span l=
ang=3D"EN" style=3D"font-size:8.0pt;color:black"><o:p>&nbsp;</o:p></span></=
p>
<p class=3D"MsoTitle" align=3D"center" style=3D"text-align:center"><b><span=
 style=3D"font-size:10.0pt;line-height:115%;font-family:&quot;Times New Rom=
an&quot;,serif">Technically Sponsored by IEEE Communications Society,&nbsp;=
Technical Committee on Cognitive Networking, Technical
 Committee on Big Data, IEEE Network Intelligence Emerging Technologies ini=
tiative<o:p></o:p></span></b></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><b><spa=
n style=3D"font-size:10.0pt">(IEEE NI ETI)</span></b><span lang=3D"EN" styl=
e=3D"font-size:8.0pt;color:black"><o:p></o:p></span></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><span s=
tyle=3D"font-size:10.0pt;color:black">-------------------------------------=
---------------------------------------------------------------------------=
----------<o:p></o:p></span></p>
<p class=3D"MsoNormal" align=3D"center" style=3D"text-align:center"><span s=
tyle=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue&quot;;color:black"=
><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"margin-bottom:7.5pt;text-align:justify"><sp=
an style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;">Networ=
k Intelligence considers the embedding of Artificial Intelligence (AI) in f=
uture networks to fasten service delivery and operations,
 leverage Quality of Experience (QoE) and guarantee service availability, a=
lso allowing better agility, resiliency, faster customization and security.=
 This concept inherits the solid background of autonomic networking, cognit=
ive management, and artificial intelligence.
 It is envisioned as mandatory to manage, pilot and operate the forthcoming=
 network built upon SDN, NFV and cloud.<o:p></o:p></span></p>
<p class=3D"MsoNormal" style=3D"margin-bottom:7.5pt;text-align:justify"><sp=
an style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;">The ma=
in 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 intelli=
gence techniques and models for network and service management; smart servi=
ce orchestration and delivery, dynamic Service Function Chaining, Intent an=
d policy based management, centralized
 vs. distributed control of SDN/NFV based networks, analytics and big data =
approaches, knowledge creation and decision making.
<span style=3D"color:black">This workshop offers a timely venue for researc=
hers and industry partners to present and discuss their latest results in N=
etwork Intelligence.
<o:p></o:p></span></span></p>
<p class=3D"MsoNormal" style=3D"margin-bottom:7.5pt;text-align:justify"><sp=
an style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:b=
lack">The main topic
</span><span style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quo=
t;">of this NI 2019 edition is &#8220;Machine Learning for Networking&#8221=
; which puts the attention on the particular application of machine learnin=
g tools to the optimization of next generation networks.
 Machine and deep learning techniques become increasingly popular and achie=
ve remarkable success nowadays in many application domains, e.g., speech re=
cognition, bioinformatics and computer vision. Machine learning is capable =
to exploit the hidden relationship
 from voluminous input data to complicated system outputs, especially for s=
ome advanced techniques, like the deep learning. Moreover, some other techn=
iques, e.g., reinforcement learning, could further adapt the learning resul=
ts in the new environments to evolve
 automatically. These features perfectly match the complex, dynamic and tim=
e-varying nature of today&#8217;s networking systems.
<o:p></o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;mso-fareast-l=
anguage:IT;font-weight:normal">This workshop presents state-of-the-art rese=
arch in machine learning for networking. Both theoretical
 and system papers will be considered, to present novel contributions in th=
e field of machine learning,&nbsp; deep learning and, in general, network i=
ntelligent tools, including scalable analytic techniques and frameworks cap=
able of collecting and analyzing both
 online and offline massive datasets, open issues related to the applicatio=
n of machine learning into communications and networking problems and to sh=
are new ideas and techniques for machine learning in communication systems =
and networks. The topics of interest
 include (but not limited to):<o:p></o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:11.0pt;font-family:&quot;Calibri&quot;,sans-serif;mso-farea=
st-language:IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<table class=3D"MsoNormalTable" border=3D"0" cellspacing=3D"0" cellpadding=
=3D"0" width=3D"623" style=3D"width:467.5pt;border-collapse:collapse">
<tbody>
<tr>
<td width=3D"324" valign=3D"top" style=3D"width:242.7pt;padding:0in 5.4pt 0=
in 5.4pt">
<p class=3D"MsoNormalCxSpFirst" style=3D"margin-left:22.95pt;mso-add-space:=
auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Deep and Reinforcem=
ent learning for networking and communications in networks<o:p></o:p></span=
></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Data mining and big=
 data analytics in networking<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Protocol design and=
 optimization using AI/ML
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Self-learning and a=
daptive networking protocols and algorithms
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Intent &amp; Policy=
-based management for intelligent networks<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Innovative architec=
tures and infrastructures for intelligent networks<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for network m=
anagement and orchestration
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for network s=
licing optimization in networking<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for service p=
lacement and dynamic Service Function Chaining
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for C-RAN res=
ource management and medium access control<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Decision making mec=
hanisms<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Routing optimizatio=
n based on flow prediction network systems<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Bio-inspired learni=
ng for networking and communications<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Protocol design and=
 optimization using machine learning<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Data analytics for =
network and wireless measurements mining<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Big data analysis f=
rameworks for network monitoring data
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Novel context-aware=
, emotion-aware networking services<o:p></o:p></span></p>
</td>
<td width=3D"300" valign=3D"top" style=3D"width:224.8pt;padding:0in 5.4pt 0=
in 5.4pt">
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Methodologies for n=
etwork problem diagnosis, anomaly detection and prediction
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Network Security ba=
sed on AI/ML techniques<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for multimedi=
a networking
<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML support for u=
ltra-low latency applications<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">AI/ML for IoT<o:p><=
/o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Open-source network=
ing optimization tools for AI/ML applications<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Experiences and bes=
t-practices using machine learning in operational networks<o:p></o:p></span=
></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Machine learning fo=
r user behavior prediction<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Modeling and perfor=
mance evaluation for Intelligent Network<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Intelligent energy-=
aware/green communications<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Machine learning an=
d data mining for networking<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Transfer learning a=
nd reinforcement learning for networking system<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Network anomaly dia=
gnosis through big networking data and wireless<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Machine learning an=
d big data analytics for network management<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Big data analytics =
and visualization for traffic analysis<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Fault-tolerant netw=
ork protocols using machine learning<o:p></o:p></span></p>
<p class=3D"MsoNormalCxSpMiddle" style=3D"margin-left:22.95pt;mso-add-space=
:auto;text-indent:-13.95pt;line-height:115%;mso-list:l2 level1 lfo1">
<![if !supportLists]><span style=3D"font-size:9.0pt;line-height:115%;font-f=
amily:&quot;Calibri&quot;,sans-serif;color:black"><span style=3D"mso-list:I=
gnore">&#8226;<span style=3D"font:7.0pt &quot;Times New Roman&quot;">&nbsp;=
&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;
</span></span></span><![endif]><span style=3D"font-size:9.0pt;line-height:1=
15%;font-family:&quot;Helvetica Neue&quot;;color:black">Experiences and bes=
t-practices using machine learning in operational networks<o:p></o:p></span=
></p>
</td>
</tr>
</tbody>
</table>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span style=3D"font-s=
ize:11.0pt;font-family:&quot;Calibri&quot;,sans-serif;mso-fareast-language:=
IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
lang=3D"EN" style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot=
;;color:black"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoTitle" style=3D"text-align:justify"><span lang=3D"EN" style=
=3D"font-size:10.0pt;line-height:115%;font-family:&quot;Helvetica Neue&quot=
;;color:black">This workshop is supported by IEEE ComSoc Emerging Technical=
 Initiative on Network Intelligence, technically sponsored
 by IEEE Communications Society,&nbsp;Technical Committee on Cognitive Netw=
orking, and Technical Committee on Big Data.<o:p></o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;"><o:p>&nbs=
p;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:11.0pt;font-family:&quot;Calibri&quot;,sans-serif"><o:p>=
&nbsp;</o:p></span></p>
<table class=3D"MsoNormalTable" border=3D"0" cellspacing=3D"0" cellpadding=
=3D"0" style=3D"border-collapse:collapse">
<tbody>
<tr>
<td width=3D"760" valign=3D"top" style=3D"width:569.9pt;border:solid window=
text 1.0pt;padding:0in 5.4pt 0in 5.4pt">
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:blac=
k"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:blac=
k">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 <b><i>IEEE Transactions on Netw=
ork and Service Management (TNSM)</i></b> journal.</span><span style=3D"fon=
t-size:11.0pt;font-family:&quot;Calibri&quot;,sans-serif"><o:p></o:p></span=
></p>
<p class=3D"MsoNormal" style=3D"text-align:justify"><span style=3D"font-siz=
e:11.0pt;font-family:&quot;Calibri&quot;,sans-serif"><o:p>&nbsp;</o:p></spa=
n></p>
</td>
</tr>
</tbody>
</table>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:11.0pt;font-family:&quot;Calibri&quot;,sans-serif"><o:p>=
&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:11.0pt;font-family:&quot;Calibri&quot;,sans-serif"><o:p>=
&nbsp;</o:p></span></p>
<p class=3D"MsoNormal" style=3D"background:white"><b><span style=3D"font-si=
ze:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black">SUBMISSION LI=
NK<o:p></o:p></span></b></p>
<p class=3D"MsoNormal"><span style=3D"font-size:10.0pt;font-family:&quot;He=
lvetica Neue&quot;;color:black">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 n=
or being currently under review by another conference or journal. The revie=
ws will be single blind. At least one of the authors of every accepted pape=
r must register and present the
 paper at the workshop. Accepted papers will be published in the combined I=
NFOCOM 2019 Workshop proceedings and will be submitted to IEEE Xplore.</spa=
n><span lang=3D"EN" style=3D"font-size:10.0pt;font-family:&quot;Helvetica N=
eue&quot;;color:black"><o:p></o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:10.0pt;font-family:&quot;He=
lvetica Neue&quot;;color:black"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span style=3D"font-size:10.0pt;font-family:&quot;He=
lvetica Neue&quot;;color:black">EDAS link for paper submission:
<a href=3D"http://edas.info/N25585">http://edas.info/N25585</a> </span><spa=
n style=3D"font-family:&quot;Arial&quot;,sans-serif"><o:p></o:p></span></p>
<p class=3D"MsoNormal" style=3D"text-align:justify;background:white"><span =
style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:blac=
k"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span style=3D"font-s=
ize:9.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;font-weight:no=
rmal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span style=3D"font-s=
ize:11.0pt;font-family:&quot;Helvetica Neue&quot;"><o:p>&nbsp;</o:p></span>=
</p>
<p class=3D"MsoNormal" style=3D"background:white"><b><span lang=3D"EN" styl=
e=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black">I=
mportant dates<o:p></o:p></span></b></p>
<ul style=3D"margin-top:0in" type=3D"disc">
<li class=3D"MsoNormalCxSpMiddle" style=3D"color:black;margin-right:-138.4p=
t;mso-add-space:auto;mso-list:l1 level1 lfo2;background:white">
<span style=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue&quot;">Pape=
r submission deadline:&nbsp;&nbsp; December 30, 2018<o:p></o:p></span></li>=
<li class=3D"MsoNormal" style=3D"color:black;mso-list:l1 level1 lfo2;backgr=
ound:white">
<span style=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue&quot;">Acce=
ptance notification:&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp; February 18, 2019<=
o:p></o:p></span></li><li class=3D"MsoNormal" style=3D"color:black;mso-list=
:l1 level1 lfo2;background:white">
<span style=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue&quot;">Came=
ra ready due:&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&n=
bsp;&nbsp;&nbsp;&nbsp;&nbsp; March 7, 2019<o:p></o:p></span></li></ul>
<p class=3D"MsoNormal" style=3D"background:white"><span style=3D"font-size:=
9.0pt;font-family:&quot;Helvetica Neue&quot;;color:black"><o:p>&nbsp;</o:p>=
</span></p>
<p class=3D"MsoNormal" style=3D"background:white"><span style=3D"font-size:=
9.0pt;font-family:&quot;Helvetica Neue&quot;;color:black"><o:p>&nbsp;</o:p>=
</span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT">General Chairs:<o:p></o:p></span></p>
<ul style=3D"margin-top:0in" type=3D"disc">
<li class=3D"MsoNormalCxSpFirst" style=3D"color:black;margin-bottom:1.55pt;=
mso-add-space:auto;line-height:115%;mso-list:l0 level1 lfo3">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">M=E9rouane Debbah (CentraleSup=E9lec, France)</span><span lang=
=3D"EN" style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helveti=
ca Neue&quot;"><o:p></o:p></span></li><li class=3D"MsoNormal" style=3D"colo=
r:black;text-align:justify;mso-list:l0 level1 lfo3">
<span lang=3D"EN" style=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue=
&quot;;mso-fareast-language:IT">Baochun Li (University of Toronto)<o:p></o:=
p></span></li><li class=3D"MsoNormalCxSpMiddle" style=3D"color:black;margin=
-bottom:1.55pt;mso-add-space:auto;line-height:115%;mso-list:l0 level1 lfo3"=
>
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Giovanni Schembra (University of Catania, Italy)<o:p></o:p></s=
pan></li><li class=3D"MsoNormal" style=3D"color:black;text-align:justify;ms=
o-list:l0 level1 lfo3">
<span lang=3D"EN" style=3D"font-size:9.0pt;font-family:&quot;Helvetica Neue=
&quot;;mso-fareast-language:IT">Dapeng Oliver Wu (University of Florida)<o:=
p></o:p></span></li></ul>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT">Technical Program Committee Chairs:<o:p></o:p></spa=
n></p>
<ul style=3D"margin-top:0in" type=3D"disc">
<li class=3D"MsoNormalCxSpFirst" style=3D"color:black;margin-bottom:1.55pt;=
mso-add-space:auto;text-align:justify;line-height:115%;mso-list:l0 level1 l=
fo3">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Laura Galluccio (University of Catania, Italy)<o:p></o:p></spa=
n></li><li class=3D"MsoNormalCxSpMiddle" style=3D"color:black;margin-bottom=
:1.55pt;mso-add-space:auto;line-height:115%;mso-list:l0 level1 lfo3">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Qiuyuan Huang (Microsoft Research, Redmond, USA)</span><span l=
ang=3D"EN" style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helv=
etica Neue&quot;"><o:p></o:p></span></li><li class=3D"MsoNormalCxSpMiddle" =
style=3D"color:black;margin-bottom:1.55pt;mso-add-space:auto;line-height:11=
5%;mso-list:l0 level1 lfo3">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Yunhuai Liu (Peking University, China)<o:p></o:p></span></li><=
li class=3D"MsoNormalCxSpLast" style=3D"color:black;margin-bottom:1.55pt;ms=
o-add-space:auto;line-height:115%;mso-list:l0 level1 lfo3">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Mohamed Faten Zhani (Universit=E8 du Quebec, Canada)<o:p></o:p=
></span></li></ul>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"EN" sty=
le=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;color:black;m=
so-fareast-language:IT;font-weight:normal"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoBodyText" align=3D"left" style=3D"text-align:left"><span lan=
g=3D"EN" style=3D"font-size:10.0pt;font-family:&quot;Helvetica Neue&quot;;c=
olor:black;mso-fareast-language:IT">NI Steering Committee:<o:p></o:p></span=
></p>
<ul style=3D"margin-top:0in" type=3D"disc">
<li class=3D"MsoNormal" style=3D"color:black;line-height:115%;mso-list:l3 l=
evel1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;;color:windowtext"><a href=3D"mailto:imen.gridabenyahia@orange.c=
om?Subject=3D%5BNI%5D" target=3D"_top"><span style=3D"color:black;text-deco=
ration:none">Imen Grida Ben Yahia</span></a></span><span style=3D"font-size=
:9.0pt;line-height:115%;font-family:&quot;Helvetica Neue&quot;">&nbsp;(Oran=
ge
 Labs, France)<o:p></o:p></span></li><li class=3D"MsoNormal" style=3D"color=
:black;line-height:115%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;;color:windowtext"><a href=3D"mailto:laurent.ciavaglia@nokia-bel=
l-labs.com?Subject=3D%5BNI%5D" target=3D"_top"><span style=3D"color:black;t=
ext-decoration:none">Laurent Ciavaglia</span></a></span><span style=3D"font=
-size:9.0pt;line-height:115%;font-family:&quot;Helvetica Neue&quot;">&nbsp;=
(Nokia
 Bell Labs, France)<o:p></o:p></span></li><li class=3D"MsoNormal" style=3D"=
color:black;line-height:115%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;;color:windowtext"><a href=3D"mailto:wevertoncordeiro@gmail.com?=
Subject=3D%5BNI%5D" target=3D"_top"><span style=3D"color:black;text-decorat=
ion:none">Weverton Cordeiro&nbsp;</span></a></span><span style=3D"font-size=
:9.0pt;line-height:115%;font-family:&quot;Helvetica Neue&quot;">(UFRGS,
 Brazil)</span><span lang=3D"EN" style=3D"font-size:9.0pt;line-height:115%;=
font-family:&quot;Helvetica Neue&quot;"><o:p></o:p></span></li><li class=3D=
"MsoNormalCxSpMiddle" style=3D"color:black;margin-bottom:1.55pt;mso-add-spa=
ce:auto;line-height:115%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">M=E9rouane Debbah (CentraleSup=E9lec, France)<o:p></o:p></span=
></li><li class=3D"MsoNormalCxSpMiddle" style=3D"color:black;margin-bottom:=
1.55pt;mso-add-space:auto;line-height:115%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Laura Galluccio (University of Catania, Italy)<o:p></o:p></spa=
n></li><li class=3D"MsoNormal" style=3D"color:black;mso-list:l3 level1 lfo4=
"><span lang=3D"EN" style=3D"font-size:9.0pt;font-family:&quot;Helvetica Ne=
ue&quot;;mso-fareast-language:IT">Baochun Li (University of Toronto)<o:p></=
o:p></span></li><li class=3D"MsoNormal" style=3D"color:black;line-height:11=
5%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;;color:windowtext"><a href=3D"mailto:n2limam@uwaterloo.ca?Subjec=
t=3D%5BNI%5D" target=3D"_top"><span style=3D"color:black;text-decoration:no=
ne">Noura Limam</span></a></span><span style=3D"font-size:9.0pt;line-height=
:115%;font-family:&quot;Helvetica Neue&quot;">&nbsp;(University
 of Waterloo, Canada)</span><span lang=3D"EN" style=3D"font-size:9.0pt;line=
-height:115%;font-family:&quot;Helvetica Neue&quot;"><o:p></o:p></span></li=
><li class=3D"MsoNormalCxSpMiddle" style=3D"color:black;margin-bottom:1.55p=
t;mso-add-space:auto;line-height:115%;mso-list:l3 level1 lfo4">
<span style=3D"font-size:9.0pt;line-height:115%;font-family:&quot;Helvetica=
 Neue&quot;">Giovanni Schembra (University of Catania, Italy)<o:p></o:p></s=
pan></li><li class=3D"MsoNormal" style=3D"color:black;mso-list:l3 level1 lf=
o4"><span lang=3D"EN" style=3D"font-size:9.0pt;font-family:&quot;Helvetica =
Neue&quot;;mso-fareast-language:IT">Dapeng Oliver Wu (University of Florida=
)<o:p></o:p></span></li><li class=3D"MsoNormal" style=3D"color:black;mso-li=
st:l3 level1 lfo4"><span lang=3D"EN" style=3D"font-size:9.0pt;font-family:&=
quot;Helvetica Neue&quot;;mso-fareast-language:IT"><a href=3D"mailto:mfzhan=
i@etsmtl.ca?Subject=3D%5BNI%5D" target=3D"_top"><span lang=3D"FR" style=3D"=
color:black;text-decoration:none">Mohamed
 Faten Zhani</span></a></span><span lang=3D"FR" style=3D"font-size:9.0pt;fo=
nt-family:&quot;Helvetica Neue&quot;;mso-fareast-language:IT">&nbsp;(=C9col=
e de Technologie Sup=E9rieure, Canada)</span><span lang=3D"FR" style=3D"fon=
t-size:9.0pt;font-family:&quot;Helvetica Neue&quot;"><o:p></o:p></span></li=
></ul>
<p class=3D"MsoBodyText" style=3D"text-align:justify"><span lang=3D"FR" sty=
le=3D"font-size:11.0pt;font-family:&quot;Helvetica Neue&quot;"><o:p>&nbsp;<=
/o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"FR" style=3D"font-size:11.0pt;font-fam=
ily:&quot;Calibri&quot;,sans-serif;color:#1F497D"><o:p>&nbsp;</o:p></span><=
/p>
</td>
</tr>
</tbody>
</table>
<p class=3D"MsoNormal"><span lang=3D"FR" style=3D"font-size:11.0pt;font-fam=
ily:&quot;Calibri&quot;,sans-serif;color:#1F497D"><o:p>&nbsp;</o:p></span><=
/p>
<p class=3D"MsoNormal"><span lang=3D"FR" style=3D"font-size:11.0pt;font-fam=
ily:&quot;Calibri&quot;,sans-serif"><o:p>&nbsp;</o:p></span></p>
</div>
</body>
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