Software Engineer (Remote in UK)

Orange Logic
Bolton
2 months ago
Applications closed

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For more than two decades, Orange Logic has empowered a wide range of clients with its digital asset management system, Orange Logic Platform. We’ve worked with almost every industry, from Finance to NGOs, Media giants to educational institutions, securing and organizing their assets. The Software Engineer will enhance Orange Logic’s software by participating in the design, development, maintenance and testing process.


What you can expect in your role:

  • Taking ownership of projects and having the opportunity to further your knowledge by exploring machine learning, security, DevOps, and more.
  • Developing scalable new features for our software product that exceeds our customer’s needs.
  • Building architecture for our platform to ensure optimal performance.
  • Obtaining requirement feedback from internal teams/clients to maintain/support the product development.
  • Write the Unit Tests for robust development.
  • Performing code reviews on other team member’s work.


You are:

  • Proficient with English (both verbal and written).
  • Have 3+ years’ practical experience on a web-based application.
  • Proficient with any backend programming languages (e.g. .NET, Java, Python, etc.).
  • A strong fundamental understanding of software development.
  • An understanding of complex algorithms and data structures, as well as a passion for intellectual challenges.
  • Strong self-discipline for delivering well-tested, complete features/modules under a tight schedule and the capability for rational thinking.
  • Experience with the database management tool SQL is a plus, but not mandatory.
  • Obtained bachelor’s degree in any relevant major (e.g. Information Technology, Computer Science, etc.).


Perks of joining the team:

  • Competitive compensation & benefits package
  • Remote Work Environment


How to get started:

If you’re up for the challenge to be part of a growing engineering team we’d like to hear from you. Apply today!


By submitting this application, I certify that all information provided herein is true, accurate, and complete to the best of my knowledge. I understand that any false or misleading information may result in disqualification from consideration or, if discovered after acceptance, may lead to immediate dismissal.


Orange Logic is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all our employees.

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