Software Developer

Gatehead
9 months ago
Applications closed

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Senior Data Scientist (Applied AI)

LYNK has partnered with an IT Managed Services Provider to recruit a Software Developer. The business is well established, around 30 years old with a headcount of 50 and a current development team of 3.
  
You’ll work on developing innovative healthcare applications, such as the migration of a cross-platform application from Xamarin to .NET MAUI, helping clinicians deliver better patient care. The role would also support in providing ad-hoc website builds/maintenance, albeit this would not be the main focus of the work.
  
WHAT'S IN IT FOR YOU?

Salary of £26,000 - £45,000
Employee Profit Share Scheme (£1000 - £2000 pa, after tax)
Support towards Professional Development/Training
33 Days Holiday
Health and Benefits App - Access to 24/7 GP Cover, discounts etc   
KEY RESPONSIBILITIES

Migrate existing applications from Xamarin to .NET MAUI
Develop and maintain healthcare applications using C#, .NET Core/Framework, and ASP.NET
Build and support RESTful APIs and backend services
Securely manage healthcare data using MySQL and Entity Framework
Integrate with clinical systems including EMIS, Vision, and SystmOne
Deploy and support cloud-native applications on Microsoft Azure
Provide third-line support and ongoing maintenance of existing systems
Collaborate with cross-functional teams including data science and compliance   
REQUIREMENTS

Experience with the Microsoft development stack (C#, .NET, ASP.NET)
MySQL Experience
Strong problem-solving skills and a focus on clean, maintainable code
Comfortable taking ownership of complex technical challenges   
DESIRABLE

Experience in healthcare IT
Hands-on experience with .NET MAUI and/or Xamarin
Solid front-end skills with JavaScript, jQuery, and CSS   
Interested? Apply now or reach out to (url removed) for more information

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