Senior Ruby Engineer - (SaaS / Tech4Good / GIS Data) - Remote-First Team 

Future Talent Group
Leeds
1 year ago
Applications closed

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Senior Ruby Engineer - (SaaS / Tech4Good / GIS Data) - Remote-First Team


Salary:£80,000 - £85,000

Location:Remote, with team meet-ups in the UK several times per year

Industry:GIS Data and PropTech


Would you like to join a growing scale-up that is not only disrupting an entire industry in a positive way but also creating real benefits for its platform users? You’ll work alongside leading specialists in GIS data, Data Engineering, and SaaS to build cutting-edge solutions.


Responsibilities:

  • Develop and maintain robust, scalable, and secure Ruby-based applications.
  • Build APIs and integrations to power our platform and deliver seamless user experiences.
  • Collaborate with cross-functional teams, including Product, Design, and DevOps, to ship features quickly and efficiently.
  • Write clean, maintainable, and testable code following best practices and coding standards.


Technical Skills:

  • Proven expertise as a Ruby/Ruby on Rails developer in a fast-paced environment.
  • Strong understanding of RESTful APIs, database design, and system architecture.
  • Experience working as part of an agile team, utilising TDD and DevOps practices.
  • Proficiency in modern development tools and practices (e.g., Git, CI/CD pipelines).
  • Knowledge of front-end technologies (e.g., JavaScript, HTML, CSS) is a plus.
  • Familiarity with cloud platforms, ideally AWS.


If this opportunity excites you, please apply or feel free to reach out directly at

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