Dr. Fabien Geyer
My current personal homepage with latest updates is here: fabgeyer.github.io.
Selected publications
Last update: July 2022
-
Data-Driven Network Architectures and Protocols
Fabien Geyer
Habilitation thesis, Technische Universität München, April 2022
ISBN: 978-3-937201-74-0
[pdf] -
Network Synthesis under Delay Constraints: The Power of Network Calculus Differentiability
Fabien Geyer, Steffen Bondorf
In Proceedings of the 41th IEEE International Conference on Computer Communications (INFOCOM 2022), May 2022
[pdf] [dataset]. -
Tightening Network Calculus Delay Bounds by Predicting Flow Prolongations in the FIFO Analysis
Fabien Geyer, Alexander Scheffler, Steffen Bondorf
In Proceedings of the 27th IEEE Real-Time and Embedded Technology and Applications Symposium (RTAS 2021), May 2021
doi:10.1109/RTAS52030.2021.00021
[pdf] [dataset]. -
Experimental UAV Data Traffic Modeling and Network Performance Analysis
Aygün Baltaci, Markus Klügel, Fabien Geyer, Svetoslav Duhovnikov, Vaibhav Bajpai, Jörg Ott, Dominic Schupke
In Proceedings of the 40th IEEE International Conference on Computer Communications (INFOCOM 2021), May 2021
[pdf] [code]. -
Graph-based Deep Learning for Fast and Tight Network Calculus Analyses
Fabien Geyer, Steffen Bondorf
In IEEE Transactions on Network Science and Engineering, January 2021
doi:10.1109/TNSE.2020.3025806
[pdf] [dataset]. -
Virtual Cross-Flow Detouring in the Deterministic Network Calculus Analysis
Steffen Bondorf, Fabien Geyer
In IFIP Networking 2020, June 2020
ISBN: 978-3-903176-28-7
[pdf]. -
Cryptographic Hashing in P4 Data Planes
Dominik Scholz, Andreas Oeldemann, Fabien Geyer, Sebastian Gallenmüller, Henning Stubbe, Thomas Wild, Andreas Herkersdorf, Georg Carle
In Proceedings of the 2nd P4 Workshop In Europe (EuroP4 2019), September 2019
doi:10.1109/ANCS.2019.8901886
[pdf] [slides]. -
Reproducible Measurements of TCP BBR Congestion Control
Benedikt Jaeger, Dominik Scholz, Daniel Raumer, Fabien Geyer, Georg Carle
In Computer Communications, Elsevier BV, May 2019
doi:10.1016/j.comcom.2019.05.011
[pdf] [code]. -
DeepTMA: Predicting Effective Contention Models for Network Calculus using Graph Neural Networks
Fabien Geyer, Steffen Bondorf
In Proceedings of the 38th IEEE International Conference on Computer Communications (INFOCOM 2019), April 2019
doi:10.1109/INFOCOM.2019.8737496
[pdf] [dataset]. -
DeepComNet: Performance Evaluation of Network Topologies using Graph-Based Deep Learning
Fabien Geyer
In Performance Evaluation, April 2019
doi:10.1016/j.peva.2018.12.003
[pdf]. -
Learning and Generating Distributed Routing Protocols Using Graph-Based Deep Learning
Fabien Geyer, Georg Carle
In Proceedings of the 2018 SIGCOMM Workshop on Big Data Analytics and Machine Learning For Data Communication Networks (Big-dama 2018), August 2018
doi:10.1145/3229607.3229610
[pdf]. -
Towards a Deeper Understanding of TCP BBR Congestion Control
Dominik Scholz, Benedikt Jaeger, Lukas Schwaighofer, Daniel Raumer, Fabien Geyer, Georg Carle
In IFIP Networking 2018, May 2018
doi:10.23919/IFIPNetworking.2018.8696830
[pdf] [code]. -
Performance Evaluation of Network Topologies using Graph-Based Deep Learning
Fabien Geyer
In Proceedings of the 11th International Conference on Performance Evaluation Methodologies and Tools (VALUETOOLS 2017), December 2017
doi:10.1145/3150928.3150941
[pdf]. -
End-to-End Flow-Level Quality-of-Service Guarantees for Switched Networks
Fabien Geyer
PhD thesis, Technische Universität München, July 2015
ISBN: 978-3-937201-49-8
[pdf].