Litcius/Paper detail

The graph neural networking challenge

José Suárez‐Varela, Miquel Ferriol-Galmés, Albert València López, Paul Almasan, Guillermo Bernárdez, David Pujol-Perich, Krzysztof Rusek, Loïck Bonniot, Christoph Neumann, François Schnitzler, François Taı̈ani, Martin Happ, Christian Maier, Jia Lei Du, Matthias Herlich, Peter Dorfinger, Nick Vincent Hainke, Stefan Venz, J. Wegener, Henrike Wissing, Bo Wu, Shihan Xiao, Pere Barlet‐Ros, Albert Cabellos‐Aparicio

2021ACM SIGCOMM Computer Communication Review28 citationsDOIOpen Access PDF

Abstract

During the last decade, Machine Learning (ML) has increasingly become a hot topic in the field of Computer Networks and is expected to be gradually adopted for a plethora of control, monitoring and management tasks in real-world deployments. This poses the need to count on new generations of students, researchers and practitioners with a solid background in ML applied to networks. During 2020, the International Telecommunication Union (ITU) has organized the "ITU AI/ML in 5G challenge", an open global competition that has introduced to a broad audience some of the current main challenges in ML for networks. This large-scale initiative has gathered 23 different challenges proposed by network operators, equipment manufacturers and academia, and has attracted a total of 1300+ participants from 60+ countries. This paper narrates our experience organizing one of the proposed challenges: the "Graph Neural Networking Challenge 2020". We describe the problem presented to participants, the tools and resources provided, some organization aspects and participation statistics, an outline of the top-3 awarded solutions, and a summary with some lessons learned during all this journey. As a result, this challenge leaves a curated set of educational resources openly available to anyone interested in the topic.

Topics & Concepts

Computer scienceField (mathematics)GraphCompetition (biology)Set (abstract data type)Control (management)Artificial intelligenceArtificial neural networkScale (ratio)TelecommunicationsData scienceTheoretical computer sciencePure mathematicsBiologyPhysicsProgramming languageMathematicsQuantum mechanicsEcologyAdvanced Memory and Neural ComputingAdvanced Graph Neural NetworksIoT and Edge/Fog Computing