Senior Test Engineer

Fleet
1 month ago
Applications closed

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Senior Test Engineer – Fleet – Semi remote - £60k - £65k

Hexwired Recruitment has partnered with a rapidly expanding Electronics manufacturer based near Fleet who are now seeking a Senior Test Engineer to help develop and automate the companies development processes for a range of projects.

The company are in a highly lucrative industry and are expanding to meet customer requirements. You will be working closely with stake holders, and the engineering team as a whole to improve their development performance.

As Senior Test Engineer, they are keen to find candidates building Frameworks for Embedded software and C++ code. Due to the nature of the work, this will be mostly onsite.

Key Requirements:

  • 3+ years commercial Test experience for non web projects (Desktop, Embedded, Systems etc)

  • Experience Building Automation frameworks for C++ code

  • Good experience working with version control tools

  • Good commercial Automation test experience using Python

    The company are looking to offer circa £55k along with an excellent benefits package. If you’re interested in this Senior Test engineer role, please apply.

    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, Golang Development, Machine Learning, Data Science or Simulation contact us today

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