[Apologies for cross-posting]
1st GNNet Workshop
Graph Neural Networking Workshop
Co-located with ACM CoNEXT 2022
December 9, 2022
https://bnn.upc.edu/workshops/gnnet2022/
We are glad to announce the first edition of the
“Graph Neural Networking Workshop 2022”, which is organized as
part of ACM CoNEXT 2022, to be held in Rome, Italy.
All accepted papers will be included in
the conference proceedings and be made available in the ACM
Digital Library.
SPECIAL SESSION
==============
GNNet would include a dedicated special session
where the top teams competing at the third edition of the Graph
Neural Networking Challenge (https://bnn.upc.edu/challenge/gnnet2022/)
would be invited to present the winning solutions of the
challenge, providing an excellent complement to the main program.
IMPORTANT DATES
================
Paper registration deadline: September 9, 2022
Paper submission deadline: September 16, 2022
Paper acceptance notifications: October 17, 2022
Camera ready due: October 25, 2022
Submissions’ site --
https://conext-gnnet2022.hotcrp.com/
MOTIVATION
===========
While AI/ML is today mainstream in domains such
as computer vision and speech recognition, traditional AI/ML
approaches have produced below-par results in many networking
applications. Proposed AI/ML solutions in networking do not
properly generalize, can be unreliable and ineffective in
real-network deployments, and are in general unable to properly
deal with the strong dynamics and changes (i.e., concept drift)
occurring in networking applications.
Graphs are emerging as an abstraction to
represent complex data. Computer Networks are fundamentally
graphs, and many of their relevant characteristics – such as
topology and routing – are represented as graph-structured data.
Machine learning, especially deep representation learning, on
graphs is an emerging field with a wide array of applications.
Within this field, Graph Neural Networks (GNNs) have been recently
proposed to model and learn over graph-structured data. Due to
their unique ability to generalize over graph data, GNNs are a
central tool to apply AI/ML techniques to networking applications.
GOALS
======
The goal of GNNet is to leverage graph data
representations and modern GNN technology to advance the
application of AI/ML in networking. GNNet provides the first
dedicated venue to present and discuss the latest advancements on
GNNs and general AI/ML on graphs applied to networking problems.
GNNet will bring together leaders from academia and industry to
showcase recent methodological advances of GNNs and their
application to networking problems, covering a wide range of
applications and practical challenges for large-scale training and
deployment.
We expect GNNet would serve as the meeting point
for the growing community on this fascinating domain, which has
currently not a specific forum for sharing and discussion.
The GNNet workshop seeks for contributions in the
field of GNNs and graph-based learning applied to data
communication networking problems, including the analysis of
on-line and off-line massive datasets, network traffic traces,
topological data, cybersecurity, performance measurements, and
more. GNNet also encourages novel and out-of-the-box approaches
and use cases related to the application of GNNs in networking.
The workshop will allow researchers and practitioners to discuss
the open issues related to the application of GNNs and graph-based
learning to networking problems and to share new ideas and
techniques for big data analysis and AI/ML in data communication
networks.
TOPICS OF INTEREST
=================
We encourage both mature and positioning
submissions describing systems, platforms, algorithms and
applications addressing all facets of the application of GNNs and
Machine learning on graphs to the analysis of data communication
networks. We are particularly interesting in disruptive and novel
ideas that permit to unleash the power of GNNs in the networking
domain. The following is a non-exhaustive list of topics:
- GNNs and graph-based learning in
networking applications
- Representation Learning on
networking-related graphs
- Application of GNNs to network
and service management
- Application of GNNs to network
security and anomaly detection
- Application of GNNs to detection
of malware, botnets, intrusions, phishing, and abuse detection
- Adversarial learning for
GNN-driven networking applications
- GNNs for data generation and
digital twining in networking
- Temporal and dynamic GNNs in
networking
- Graph-based analytics for
visualization of complex networking applications
- Libraries, benchmarks, and
datasets for GNN-based networking applications
- Scalability of GNNs for
networking applications
- Explainability, fairness,
accountability, transparency, and privacy issues in GNN-based
networking
- Challenges, pitfalls, and
negative results in applying GNNs to networking applications
SUBMISSION INSTRUCTIONS
=======================
Submissions must be original, unpublished work,
and not under consideration at another conference or journal.
Submitted papers must be at most six (6) pages long, including all
figures, tables, references, and appendices in two-column 10pt ACM
format. Papers must include authors names and affiliations for
single-blind peer reviewing by the PC. Authors of accepted papers
are expected to present their papers at the workshop.
All accepted papers will be included in the
conference proceedings and be made available in the ACM Digital
Library.
WORKSHOP CHAIRS
================
- Pere Barlet-Ros, BNN-UPC, Spain
- Pedro Casas, AIT, Austria
- Franco Scarselli, University of
Siena, Italy
- Xiangle Cheng, Huawei, China
- Albert Cabellos, BNN-UPC, Spain
PROGRAM COMMITTEE
===================
- Lilian Berton, University of Sao
Paulo, Brazil
- Albert Bifet, Télécom ParisTech
& University of Waikato, New Zealand
- Laurent Ciavaglia, Rakuten,
Japan
- Constantine Dovrolis, Georgia
Tech, USA
- Lluís Fàbrega, UdG, Spain
- Jerome François, INRIA, France
- Fabien Geyer, Technical
University of Munich, Germany
- Matthias Herlich, Salzburg
Research, Austria
- Zied Ben Houidi, Huawei
Technologies, France
- Wolfgang Kellerer, Technical
University of Munich, Germany
- Federico Larroca, Universidad de la
República, Uruguay
- Alina Lazar, Youngstown State
University, USA
- Gonzalo Mateos, University of
Rochester, USA
- Christoph Neumann, Broadpeak,
France
- Diego Perino, Telefonica
Research, Spain
- Alejandro Ribeiro, University of
Pennsylvania, USA
- Dario Rossi, Huawei
Technologies, France
- Krzysztof Rusek, AGH University
of Science and Technology, Poland
- José Suárez-Varela. BNN-UPC,
Spain
- Stefano Traverso, Ermes Cyber
Security, Italy
Thanks,
Jordi Paillissé