.NET Engineer

Spark Intel
London
2 months ago
Applications closed

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We're Spark. We're a cutting-edge tech and AI-driven provider of intelligent lending solutions for UK SMEs.

Spark Finance is a leading provider of innovative financial solutions, empowering businesses to achieve their full potential. We leverage cutting-edge technology to deliver a robust suite of financial products and services, helping our clients navigate the complexities of the modern financial landscape.

The Role

We're seeking a talented .NET Engineer to join our growing engineering team. In this role, you'll play a key part in developing and maintaining our high-quality software solutions. You'll work closely with senior engineers and collaborate with cross-functional teams to deliver impactful features.

  • This role will be based out of our London office
  • We operate a hybrid working policy with flexible working from home for 2/3 days per week.

Key Responsibilities

  • Develop, test, and maintain high-quality software solutions .NET Core and related technologies.
  • Collaborate with senior engineers on the design and implementation of new features.
  • Participate in code reviews and provide constructive feedback to other team members.
  • Write clean, maintainable, and well-documented code.
  • Troubleshoot and debug software issues effectively.

Requirements

Required

  • Proven experience in .NET development with a solid understanding of .NET Core.
  • Experience with SQL databases.
  • Experience with unit testing.
  • Excellent problem-solving and debugging skills.
  • Good communication and collaboration skills.
  • A strong work ethic and a passion for learning, and continuous improvement.

Technical Requirements

  • Experience in .NET development primarily ASP.NET Core
  • Blazor experience would be a bonus

Nice to have

  • Experience with event-driven architectures (AWS SNS/SQS)
  • Docker knowledge
  • Experience with micro-services

Seniority level

Entry level

Employment type

Full-time

Job function

Engineering and Information Technology

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