Principal Electrical Engineer

Piper Maddox
Newcastle upon Tyne
1 year ago
Applications closed

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Principal Electrical Engineer (Low Voltage)


Hybrid (minimum 3 days a week in the office)


The client?

Renowned Engineering organisation with a rich heritage of pushing the boundaries of innovation in complex, high-performance systems.


We are seeking a Principal Electrical Engineer to join a leading engineering team within the marine sector. This role offers the opportunity to contribute to the design and optimisation of bespoke Low Voltage Power Distribution Systems and Equipment.


Responsibilities:


  • Lead the design, development, and testing of bespoke electrical power systems
  • Provide technical guidance and manage small teams when required
  • Collaborate with stakeholders to align technical outcomes with business objectives
  • Author and review technical documentation


Requirements:


  • Degree in Electrical Engineering (or equivalent) with extensive experience in electrical design techniques
  • Comprehensive understanding of electrical power distribution systems (AC and DC)
  • Strong communication and influencing skills
  • Working knowledge of marine and electrical standards (e.g., Class Society rules, IEC61439, Def Stans)
  • AutoCAD Electrical, MATLAB, Paladin, ETAP, and Mathcad
  • Chartered Engineer status or actively working towards professional registration
  • Security Check (SC) clearance and UK nationality


Competitive salary and benefits, including hybrid working arrangements, bonus schemes, and structured career development opportunities.


If you’re ready to redefine energy efficiency and achieve sustainability targets, apply now!

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