Senior C++ Software Engineer, Stats, Maths

Spectrum IT Recruitment
Southampton
1 year ago
Applications closed

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Senior C++ Software Engineer required by a successful software company located in Southampton. The company requires a Senior C++ Software Engineer to join a niche internal C++ software engineering team specialising in complex, statistical C++ software programming.The successful Senior C++ Software Engineer will likely have a relevant degree in Mathematics, Physics or similar and will have proven commercial experience with C++ programming with a statistical or mathematical bias.The successful Senior C++ Software Engineer will be tasked with understanding complex mathematical and statistical research papers and then implementing those algorithms in code in a scalable fashion.Key experienceC++ programming on Windows and/or LinuxMathematical algorithms eg statistical / machine learning / econometric time seriesAny of the following would be advantageousPhD in Maths or similar subjectExperience in both research and commercial software environmentsMATLABRPythonThis is an opportunity to join a highly successful, expanding company offering the chance to work on complex, interesting C++ programming in a relaxed atmosphere. If you are looking for an opportunity of this nature please get in touch.

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