Full Stack Developer - C#.Net, React, SQL - Kent / Sussex

Royal Tunbridge Wells
6 days ago
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C#.NET, .Net Core, TDD, Entity, MVC, SQL Server, Azure, React, Angular

We have a great opportunity that needs a capable full-stack developer.

Based in the Tunbridge Wells area of West Kent/East Sussex.

As the role is HYBRID, you do need to live within commuting distance of Tunbridge Wells (Kent, East Sussex, West Sussex, Surrey)

This role would ideally suit:

  • A developer/software engineer with 2-3 years+ .NET development experience

  • Someone with full-stack experience, although our client will consider those with a 60/40 split for front/backend

    It is a permanent role only.

    There is no sponsorship or visa transfer on offer

    If you are unsure of your job security, seeking a new role, or keen to work in the financial sector, then please contact Roger at Jump IT today

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