Embedded Linux Engineer

Oxford
1 week ago
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Embedded Linux Engineer – £75k – semi remote - Oxford

Hexwired Recruitment is recruiting for a rapidly expanding solutions provider based in Oxford now seeking an Embedded Linux Engineer to help deliver key projects within Audio and media solutions!

The company are expanding to meet the demands of their clients and are seeking an Embedded Linux Engineer ideally with experience working within Broadcast, video or similar. You will be working with customers internationally utilising the latest technologies including Yocto, Rust and more!

This is an Embedded Linux Engineer job focusing primarily on Yocto distributions and low latency Kernel work.

Key Skills:

  • 5+ commercial Embedded software experience

  • Good commercial Embedded Linux experience

  • Experience or knowledge of Yocto

  • Experience working on Video or Video streaming products is highly desirable but not essential

    The company are looking to offer circa £75k along with an excellent benefits package, remote work and the chance to work on a diverse range of products. If you’re interested in this Embedded Linux engineer job, 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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