Leuven | More than two weeks ago
You will leverage the power of ML to boost wireless signal processing performance
The wireless networks of tomorrow (6G) will be even more complex than today’s (5G) networks, featuring advanced techniques such as cell-free MIMO, advanced/distributed beamforming, new waveforms, etc. New use cases will set very tough requirements on the networks in terms of throughput, latency, user density and interference.
We envision PHY signal processing to naturally evolve towards more machine learning based algorithms when model-based approaches will start to fail. This will typically be when statistical assumptions are violated, when non-linearities are present and in interference scenarios.
The successful PhD candidate will be part of a large IMEC team working on the research, implementation and prototyping of future communications systems: experts in digital, analog and mm-wave ASIC design, wireless communications, PHY processing, MAC and higher layers, machine learning. This is a unique opportunity to develop innovative, multi-disciplinary technology and shape future wireless networks. You will publish your research in top-level journals and conferences.
Required background: Electrical Engineering, Signal Processing for Communications, Machine Learning and Artificial Intelligence
Type of work: 80% modelling/simulation, 10% experimental, 10% literature
Supervisor: Adnan Shahid
Co-supervisor: Ingrid Moerman
Daily advisor: Andre Bourdoux, Mamoun Guenach
The reference code for this position is 2025-083. Mention this reference code on your application form.