Lead Software Developer

Brighton
5 months ago
Applications closed

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We have an exciting opportunity for Principal Developer to join an excellent client's team based in Brighton. The successful candidate will be strong technically, but will also need to be comfortable being involved on the product side of things and dealing with customers when required. You will quickly become a vital part of an already successful software team and will be given the opportunity to contribute ideas which impact the direction of the software. The successful principal developer will be expected to be heavily involved on the architectural side of things and will of course be required to mentor more junior developers within the team.

This can be a mainly remote role but candidate must be based within 2 hours of Brighton for occasional office visits. As well as good salaries, our client offers a comprehensive benefits package which includes a bonus.

Skills required:

5+ years experience within Senior/Lead Developer roles
C#, .NET Core
Excellent knowledge of Angular
Strong database knowledge - SQL Server
Azure DevOps
Agile development methodologies
Deployment of software to the AWS and Azure platforms

If you feel you have the skills and experience for this opportunity, please contact Oliver Wilson on (phone number removed) or email (url removed)

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

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