Senior Software Developer

Portsmouth
8 months ago
Applications closed

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Senior Software Developer
C#, .Net Core, VueJS, Typescript
£55,000 - £60,000

Senior Software Developer required to join a progressive and leading company within the automotive industry.

As a Senior Software Developer you will help to transform the whole digital product suite. They want to take an API first approach and build this out in .NET. and new front ends in Vue.Js.

You will be using best practice engineering processes and approaches, and driving the capabilities of the platform, ensuring continuous product improvement.

Skills Required:

C#
.Net Core
Typescript
Experience in VueJS (Preferable), React, Angular.
MS SQL Server / T-SQL
Experience with modern CI/CD pipelines highly desirable
Understanding of Design Patterns, OOP, SOLID, and Clean Code a must
If you have the relevant skills for this role and are ready for the challenge then please send your CV to

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

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