DSP Engineer

CV-Library
Havant, Hampshire
12 months ago
Applications closed
Posted
18 May 2025 (12 months ago)

DSP Engineer– Contract or permanent – £60k - £75k – Havant but potentially remote
Hexwired are partnered with an exciting Aerospace company producing a range of trailblazing solutions, meaning they need to expand the existing team. They are looking to for the addition of a DSP Engineer, the ideal candidate will either have domain experience or a deep DSP background and an understanding of RF communications. This is an opportunity to work on a truly unique product catalogue working at the pinnacle of innovation with an energetic yet supporting engineering team. Now is the time to join the fold as a DSP Engineer!
Requirements for this role:

  • Extensive experience in Digital Signal Processing (DSP)
  • Comfortable with simulation and modelling MATLAB
  • A good working knowledge of Python
  • Strong comprehension of RF communications
  • Experience in Signal Intelligence is a plus
  • You must be a British passport holder, must have current SC clearance or be able to obtain it
    Preference for candidates that can commute to the office. But can consider remote for someone with very relevant skills
    Rates/ salaries are negotiable depending on experience, so if you think you have the requisite background for this DSP Engineer job, please apply today!
    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, Golang Development, C# .net, Mechanical Design, Machine Learning, AI, FPGA, Electronics, Java, Python, Data Science or Simulation contact us today

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