Remote .NET Developer

Luton
4 weeks ago
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Avanti Recruitment is currently partnered with an established and growing company in the specialized automotive aftermarket/personalization industry that currently has an exciting opportunity for Mid-Senior .NET Developer to join the team.

This position can be fully remote. The company works with a modern technical stack of C#, .NET 6, Docker, Elastic Search, RabbitMQ, Microservices, Docker, Kubernetes and more.

Their offices are based near Luton and are a social team that do hold meet ups, but they are able to look at fully remote working.

The company holds training and certifications in a number of technologies and are a team that are passionate about working with the latest and greatest technologies.

You will be working on developing a new .NET Core microservices-based sales platform and a ASP.NET Core website.
This is a great opportunity for someone who loves to get stuck into a challenge and is a keen problem solver.

Required

  • .NET Core

  • C#, MVC & RESTful Web Services

  • HTML5 & CSS3

  • TSQL, Entity Framework & LINQ

  • Git version control

  • Event Bus / Container Experience

    Advantageous

  • RabbitMQ (with MassTransit)

  • Docker + Compose & Kubernetes

  • Redis, NoSQL & other data store technologies

  • Microservice Architectures

  • Hangfire / CRON

  • Elastic Stack (ELK)

  • Machine Learning & Large Language Models

    The role is paying up to £55,000, 9-5 working, 25 days holiday plus BH, healthcare and a standard pension

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