Applications Manager

Whiteley
4 days ago
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Applications Manager - £55k - £70k– Semi remote – Whiteley

Hexwired Recruitment has partnered with a rapidly expanding Electronics manufacturer in Whiteley now seeking an Applications Manager with solid background in Maths and simulation algorithm design.

The company have gone through a large transition, and are now seeking an Applications Manager to help lead the design and integration of their brand new range of bespoke systems.

As an Applications Manager, the company are seeking Engineers with a solid background in Thermodynamics, CFD or similar, as well as experience leading either technical or Applications teams. They are looking for Applications Manager who can competently take these engineering principles and apply them directly to the companies products and customers solutions.

Key Skills:

  • Bachelors or higher in Maths, Physics, Mechanical Design or similar

  • 2+ years commercial experience in a Mechanical design or research role for Modelling software

  • 2+ years experience In a customer facing role (preferably liaising with technical teams)

  • Previous experience in a Lead or management role

  • Excellent written and verbal communication skills

  • Willingness to travel internationally once or twice a year.

    Exposure to The company are rapidly expanding and are at the forefront of their industry. They are looking to pay circa £70k plus an excellent benefits package. If you’re interested in this Application Manager role, please apply.

    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, FPGA, Power, analogue, Electronics, Golang Development, C# .net, Mechanical Design, Machine Learning, Data Science or Simulation contact us today

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