Digital Design Engineer - High Speed Digital Design

Winchester
8 months ago
Applications closed

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Digital Design Engineer - High Speed Digital Design

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

  • Altium, Hyperlynx

  • 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.

    As an Electronic Digital Design Engineer, you will play a pivotal role in designing and developing cutting-edge digital electronics for defence and electromagnetic warfare applications. You will have the opportunity to work on challenging projects that make a significant impact on electromagnetic warfare technology.

    Responsibilities:

    Design, simulate, and implement digital and analogue electronic circuits and systems tailored for electromagnetic warfare applications and defence-related projects
    Collaborate with cross-functional teams to define project requirements and specifications, with a strong emphasis on electromagnetic warfare requirements.
    Conduct hands-on testing, troubleshooting, and debugging of digital and analogue designs to optimize their performance.
    Guarantee compliance with industry standards and safety regulations for all electronic designs.
    Participate in design reviews and provide valuable technical input to enhance project outcomes.
    Document design specifications, test plans, and results for compliance evidence, with a focus on electromagnetic warfare technology and capabilities.
    Foster a positive and productive work environment, setting with the team clear goals, to effectively guide the team towards success.
    Provide mentoring, feedback, and development opportunities to assess and support the team's professional growth.
    Contribute to define, implement and maintain the Company policies to create a strong and supportive work environment.

    Qualifications:

    Bachelor's or Master's degree in Electronics Engineering, or a related field.
    Experience in digital electronic design
    Knowledge of analogue circuit design desirable.
    Knowledge/use of digital design tools (e.g., PCB CAD Spice simulation, HyperLynx signal integrity, Altium).
    Experience with hardware verification and debugging techniques

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