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Audio Embedded Software Engineer

London
4 weeks ago
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My market leading client has a superb new opening for an Audio Embedded Software Engineer to join them on a permanent basis.

This role is working heavily remote with occasional visits to their UK office. Due to contractual reasons, candidates must be based in the UK.

Candidates must have at least 5 years proven C++ experience engineering software through the full software development life cycle. Candidates must have the ability to design software and implement design patterns.

Day-to-day you will be engineering embedded software for high-speed audio interfaces.

Previous experience handling real-time audio is essential.

Salary to £65,000, dependent on experience.

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g2 Recruitment are committed to equality of opportunity for all applications from individuals are encouraged regardless of age, disability, sex, gender reassignment, sexual orientation, pregnancy and maternity, race, religion or belief and marriage and civil partnerships or any other characteristic protected by law

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