Senior Software Developer - Algorithms, Mathematics

Bracknell
1 year ago
Applications closed

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Senior Software Developer - Algorithms, Mathematics

Senior Software Developer required by a Global Cloud Technology company based in Bracknell, Berkshire. The company have been going through a significant growth phase over the past few years and as they continue to do so, they require a Senior Software Developer specialising in algorithm development.

The successful Senior Software Developer will have a relevant degree in Mathematics, Physics, Computer Science or similar and will have proven commercial experience developing algorithms, ideally using C#.

The company operate on a hybrid model which involves 3 days a week in the office, therefore candidates must be local to Bracknell, or happy to relocate to the area.

Essential experience:

Masters or PhD in Mathematics, Physics, Computer Science or similar, preferably from a Russell Group university
2+ years algorithm development experience ideally in C#, or at least happy to pick up C# moving forwards
AgileAny experience in the following would be advantageous:

Artificial Intelligence
.NET 6
JavaScript/TypeScript

This is a great opportunity to be part of a market-leading company as they continue to grow and hire top talent. If you are looking for an opportunity of this nature, please apply or contact or call (phone number removed).

Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy

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