Senior Full Stack Data Engineer

JR United Kingdom
Glasgow
8 months ago
Applications closed

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Senior Data Engineer

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Senior Full Stack Data Engineer, Glasgow

Client:

Location: Glasgow, United Kingdom

Job Category: Other

EU work permit required: Yes

Job Views: 2Posted: 08.05.2025Expiry Date: 22.06.2025Job Description:

UK remote (willing to travel to Glasgow office once per quarter)

Eden Scottis recruiting aSenior Full Stack Data EngineerforAmicito develop a cutting-edge platform. With significant growth and an ambitious technology roadmap, Amici seeks an engineer skilled inJava, Python, and datato shape the future of theMyAmiciplatform.

Why Join Us?

You'll work in an agile, collaborative environment, leveraging modern technology stacks to build and optimize a powerful data platform and search engine. Explorevector search, machine learning, and large-scale data processingusingApache Lucene, Solr, or Elasticsearch. This is a permanent, full-time remote role with quarterly visits to the Glasgow office.

What You’ll Do:

  • Design, build, and optimize a high-performance data platform and search solution.
  • Develop robust search capabilities usingApache Lucene, Solr, or Elasticsearch.
  • Engineer scalable data pipelines inJava or Python.
  • Collaborate with Business Analysts, Data Engineers, and UI Developers.
  • Work across the full stack, fromReact/TypeScript front-endtoJava-based search services.
  • Contribute to DevOps practices, code reviews, and system optimizations.

What We’re Looking For:

  • Strong experience inJava developmentand exposure toPython.
  • Experience with large-scale data processing and search technologies.
  • Expertise inApache Lucene, Solr, Elasticsearch, or willingness to learn.
  • Hands-on experience withSQL and NoSQL databases.
  • Experience in Agile environments with modern DevOps and CI/CD practices.
  • A degree in Computer Science/Software Engineering or equivalent experience.
  • Familiarity with writing automated tests and maintaining high code quality.

About Amici:

Founded in 2005, Amici provides a cloud-based purchasing and inventory management platform for biotech and life sciences organizations. TheMyAmiciplatform supports scientists in their research by handling supply chain and procurement needs. The Innovation Team ensures MyAmici remains at the forefront of technology.

What’s In It for You?

  • Work in an intrapreneurial and innovative environment.
  • A company culture valuing growth, collaboration, and continuous improvement.
  • A fantastic suite of benefits.

Join us to be part of a high-impact team transforming the biotech industry.

Interested? Let’s talk! Contact our recruitment partners atEden Scottfor an informal discussion:

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