RF Data Scientist / Research Engineer

RedTech Recruitment
Saffron Walden
2 days ago
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RF Data Scientist / Research Engineer

An exciting opportunity for an RF-focused Data Scientist / Research Engineer to join a stealth-mode start-up developing novel UAV/detection systems. This role offers the chance to work at the cutting edge of RF hardware, software-defined radio, and intelligent signal processing helping shape the next generation of real-world RF sensing systems.

This company is tackling some of the worlds most pressing challenges, founded by a team of exceptional Engineers who have already realised success with other ventures. The environment is one of deep tech innovation and collaborative problem solving.

Location: Saffron Walden, UK primarily on-site due to the hands-on nature of the work (some hybrid flexibility may be considered depending on the individual and stage of development)
Salary: Up to £65,000 per annum (may be more for an exceptional candidate)

Requirements for RF Data Scientist / Research Engineer:
  • Strong Python skills for data analysis and prototyping (e.g. NumPy, SciPy, matplotlib, PyTorch, scikit-learn)
  • Excellent understanding of digital signal processing techniques including FFTs, resampling, modulation, and filtering
  • Hands-on experience working with SDR platforms such as bladeRF,...

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