RF Design Engineer - LNAs, Design from LF to X Band

Winchester
2 weeks ago
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RF Design Engineer - LNAs, Design from LF to X Band

  • New project work - looking for an experienced RF Design Engineer

  • LNAs, Design at LF to X Band, High Powered Amplifiers

  • E2E Design & Verification

  • Salary up to £85k + Excellent benefits, relocation and hybrid working when possible

  • Hampshire based

    The Company:

    Our client has evolved into a leading innovator in defense, national security, and advanced engineering. that specializes in cutting-edge technologies such as electronic sensors, communications systems, artificial intelligence, machine learning, and cyber security. With a team of over 1,000 engineers and scientists, they continue to drive innovation for both government and commercial clients worldwide.

    You will:

    Design, simulate, and implement RF and analogue electronic circuits and systems for defence-related projects (in domains such as electromagnetic warfare, positioning and timing, and survivability) with cutting-edge solutions
    Conduct hands-on integration, testing, troubleshooting, and debugging of RF and analogue electronic circuits, systems and components, to optimize their performance (e.g., impedance, VSWR, wideband operation)
    Participate in design reviews and provide valuable technical input to enhance project outcomes.
    Prepare and maintain technical documentation and reports with highest quality (e.g., design specifications, test plans, and results for compliance evidence) with a focus on RF and analogue electronic circuits and systems.
    Provide technical support to the Technical Lead (e.g., risk management, input to customer meetings).
    Provide mentoring and feedback to junior engineers, in support of the team's professional growth.
    Proactively communicate and collaborate with stakeholders, within and outside the project team.Desirable knowledge:

    Excellent skills in using Microwave Office
    Excellent skills in using Altium
    Design at frequencies from LF up to X Band
    Design of Low Noise Amplifiers
    Design of receivers
    Working with high-power amplifiers

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RF Design Engineer - LNAs, Design from LF to X Band

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