Senior Data Engineer

N-able Technologies Ltd.
Edinburgh
3 days ago
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Overview

At N-able, we’re redefining what it means to be cyber resilient. Our end-to-end platform blends AI-powered capabilities and flexible tech stacks, so customers can manage, secure, and recover with confidence. The real power behind it all is our people. We’re a global crew of N-ablites who love solving complex problems, sharing knowledge, and delivering solutions that actually make a difference. If you're into meaningful work, fast growth, and a team that’s got your back, you’ll be surrounded by people who believe in what they do—and in you.


We are looking to hire a Senior Data Engineer for our AI Team in our Edinburgh hub. Data is the fuel for AI – if you want to be part of building a cutting edge AI system, then this could be the perfect next career move.


The role is hybrid, requiring 2 days a week in our Edinburgh office.


What You'll Do

  • Design and build data pipelines
  • Develop production standard data-science code in Go and Python
  • Conduct and participate in code reviews to ensure code quality and consistency
  • Mentor and coach junior engineers, helping them improve their technical skills and grow in their careers
  • Help shorten feedback loops to allow the team to shape future development based on valuable insights gained from usage data

What You'll Bring

  • Ideally several years of experience as a data engineer or as a software engineer working on data projects
  • Experience leading the design and delivery of data projects
  • Experience with a range of databases, including handling large data. We currently use: PostgreSQL, ElasticSearch, Snowflake, and Redis
  • AI or data-science experience
  • A good understanding of mathematics / data-science, including statistical expertise
  • A strong understanding of LLMs, agents and AI testing principles
  • High skill level in coding and software design, in test automation, and in software architecture
  • Professional experience in writing code. The current tech stack is GO, Angular, Terraform. GO experience is desirable but not essential provided you can learn programming languages quickly

"DW1" dial up or down to fit N-Able norms


Purple Perks

  • Medical, dental and vision coverage
  • Generous PTO and observed holidays
  • 2 Paid Volunteer Days per year
  • Employee Stock Purchase Program
  • Fund-raising opportunities as part of our giving program
  • N-ablite Learning – custom learning experience as part of our investment in you
  • The Way We Work – our hybrid working model based on trust and flexibility

About N-able

At N-able, our mission is to protect businesses against evolving cyberthreats with an end-to-end cyber resilience platform to manage, secure, and recover. Our scalable technology infrastructure includes AI-powered capabilities, market-leading third-party integrations, and the flexibility to employ technologies of choice—to transform workflows and deliver critical security outcomes. Our partner-first approach combines our products with experts, training, and peer-led events that empower our customers to be secure, resilient, and successful.


#LI-NK1 #LI-Hybrid


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