C# Senior Software Engineer

Manchester
6 months ago
Applications closed

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C# Senior Software Engineer 

Our client is an established software company with over 20 years of experience delivering innovative digital platforms to a wide user base. They are looking for a Senior Software Developer to join a small, collaborative team working across the full Microsoft and Azure technology stack.

This is a hands-on role offering the chance to work on both legacy and greenfield systems, contribute to architectural decisions, and support the continuous improvement of development practices.

Key responsibilities:

Develop and maintain scalable, high-quality software using C#, .NET, and Azure

Lead on coding tasks and contribute to system architecture

Perform code reviews and mentor junior developers

Collaborate across teams to deliver business-critical solutions

Provide second-line technical support as needed

Essential experience:

5+ years in commercial software development

Proficiency in C#, .NET, SQL Server, and JavaScript

Experience with Azure services and DevOps tools

Understanding of secure coding and software development best practices

Desirable experience:

Microservices, containers (Docker/Kubernetes)

Front-end frameworks such as Vue.js

Messaging systems (e.g. Service Bus, Kafka)

NoSQL databases, REST APIs, CI/CD pipelines

Benefits:

25 days holiday plus bank holidays and additional Christmas leave

Flexible 37.5-hour week

Hybrid working: 3 days/week

Performance-related bonus, pension, private medical insurance, and more

Interested? Please Click Apply Now!

C# Senior Software Engineer

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