Electronics Design Engineer

Matchtech
Edinburgh
2 months ago
Applications closed

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Our client, a distinguished entity in the Defence & Security sector, is actively seeking an Electronics Engineer (PCB) for a contract position. This role is pivotal for those who possess significant experience and a passion for developing cutting-edge technology within high-stress environments.Key Responsibilities:Hardware requirements capture and managementConcept development for complex functions and systemsPCB design for FPGAHigh speed digital design and analysisIntegration and testDesign of supporting electronics, including point of load power and analogueProduction of material for design reviewsDevelopment of test planning, integration, and design verificationMentoring and supervision of more junior team membersJob Requirements:You really must have:Proficiency with design of high-speed digital PCBs with large FPGAsExperience with design tools and lab workA passion for new technologyA desire to improve how we deliver to our customersYou will have experience in several of the following areas:Designing electronics for harsh environmentsPCB for FPGAsHigh speed digital interfaces (10 Gbps and faster)MatlabSpiceMentor DxDesignerHyperlynxKeysight SIPro/PIProIf you are an electronics engineer with a robust background in PCB and digital design, and you are eager to contribute to the Defence & Security sector, we encourage you to apply now. Join our client's dedicated and proficient team and push the boundaries of...

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