Full Stack Software Developer

Loughborough
8 months ago
Applications closed

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Manpower has a unique opportunity for a Full Stack Software Developer to be employed directly by our Client specialising in the healthcare sector, pioneering game-changing innovations at the intersection of health, material and data science.

With the opportunity to work from anywhere in the UK you will be responsible for developing the next generation of cloud based clinical coding solutions, contributing to discussions in the approach and design of software, ensuring technical documents are comprehensive and up to date as well as developing and maintaining thorough testing plans and support to the commercial teams, covering support tickets where necessary.

The successful candidate will have skills/ experience in the following:

Degree or higher or equivalent commercial experience
3-5 years + of professional experience in programming with C# (.Net, .Net Core, WebApi)
3-5 years + of professional experience with Angular
3-5 years + of professional backend development (libraries/ services etc.)
Previous experience in cloud, micro service-based solutions, such as AWS/ Azure
Previous experience with container-based packages and deploymentsPrevious experience with Postgres & MongoDB, Openinsight or other PICK based database systems and working in Agile/ Scrum teams within the healthcare sector would be advantageous but not essential.

The ability to travel for team meetings to the Loughborough site will be required, although this would be infrequent

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