Senior Software Developer

Oscar Technology
Preston
1 week ago
Applications closed

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Senior Software Developer | .Net, Azure, Kubernetes | £70K DOE | Lancashire | 1 day in the office

Our client are a high-growth, innovation-led software company delivers full-stack development solutions across a wide range of sectors, with a strong focus on AI, machine learning, and image recognition technologies. Known for outperforming larger competitors, the company is agile, fast-moving, and highly adaptable to client needs.

The company has established a strong footprint in the UK and is expanding into Europe and the United States. Sectors served include mass participation events, law enforcement, defence, and more.

The role

We are seeking a highly skilled and experienced Full Stack Developer to join its small, collaborative team. This role requires someone who can contribute across both front-end and back-end development, lead projects, and support junior team members. The ideal candidate is curious, solutions-driven, and excited by cutting-edge technologies.

Key Responsibilities:

Designing, building, and maintaining full-stack software applications Leading development on client projects, from architecture to deployment Participating in agile processes, including daily stand-ups and sprints Conducting code reviews and mentoring junior developers Staying up to date with emerging tech, especially in AI and machine learning

Candidate Requirements:

Proven experience with Microsoft .NET Core, Web API, C#, and C Hands-on knowledge of Azure DevOps, Kubernetes, and Microsoft SQL Server Strong full-stack development skills (front-end and back-end) A keen interest in or prior experience with AI, machine learning, and recognition technologies Excellent problem-solving, communication, and collaboration skills Ability to work independently and manage time effectively Confident communicator

What the Company Offers:

Hybrid work model: remote with 1 day per week in-office Competitive salary between £55,-£70, (dependent on experience) 28 days holiday bank holidays Company pension scheme A collaborative environment working with cutting-edge technology Close engagement with leadership and real opportunities for growth A merit-based culture that rewards performance and initiative In-person team meetups in exciting locations for project reviews and team-building

Security Requirements
Due to the nature of the work and client base, the successful candidate will need to pass a DBS check and may be required to obtain security clearance. Applicants must hold a full British passport.

Senior Software Developer | .Net, Azure, Kubernetes | £70K DOE | Lancashire | 1 day in the office

Oscar Associates (UK) Limited is acting as an Employment Agency in relation to this vacancy.

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