Senior 6G Wireless Expert (3GPP)

European Tech Recruit
London
11 months ago
Applications closed

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Senior 6G Wireless Expert


We are currently working with a world leader searching for a Senior level position as a 6G Wireless Expert, within this opportunity you will be working at the forefront of Wireless technology research & standardization. The goal is to identify future technology needs, develop, and learn from proof-of-concept prototypes as this project will be at the leading edge of 6G research.


The company are looking to bring on board a highly motivated Wireless Engineer to design, simulate and prototype 6G technologies. You will provide proof of concept for systems which are driving 6G research including technology generation, link-level simulation bench development towards cutting-edge wireless technologies and system aspects to enable advanced RAN technologies through patents and publications in this domain.


Requirements & Skills needed for this opportunity:

  • Ph.D. in Electrical Engineering, Wireless Communications, Telecommunications or related Discipline.
  • 5-10 years of industry or research work in the field of Physical Layer, MAC Layer or Air-interface design, with focus on 5G & 6G.
  • Proficiency with MATLAB is a must, whilst familiarity with GitHub or other version control tools is beneficial.
  • Experience in link level (L1/PHY) simulations required, including simulation of propagation channels, PHY layer algorithm modeling.
  • Prior working knowledge & experience in; Modulation and coding techniques, Advanced waveform designs, Information theory, Signal processing, or PHY and MAC layer design.
  • Exposure to 3GPP 4G LTE and 5G/NR preferred.
  • Strong background and experience in 3GPP and cellular systems, wireless protocol development and wireless communications fundamentals: mmWave, sub-THz, beamforming, RF/EM propagation, channel modeling, Advanced waveform design. Knowledge of 3GPP stochastic channel model and Near-Field is a plus.


Key Words:6G / 5G & Beyond / Simulation / Wireless / Telecommunications / Matlab / Link Level / Layer 1 / Physical Layer / PHY / Layer 2 / MAC Layer / Algorithmic Development / 5G NR / 3GPP / Standardization / 4G LTE / Waveform Design / mmWave / Channel Modeling


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