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Data Engineer - AI Projects

Henderson Scott
Stevenage
1 week ago
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๐Ÿš€ Data Engineer - Generative AI Projects
๐Ÿ“ Hybrid | 2-3 Days On-Site | Up to ยฃ55,000 + Bonus + Package
๐Ÿ”’ British Citizens Only | BPSS Clearance Required

We're hiring a Data Engineer with a passion for automation, clean pipelines, and the future of AI. This is your chance to shape how data powers Generative AI and NLP tools in a secure, high-tech organisation working on projects that matter.

If you're keen to work on innovative internal use-cases - from AI assistants to intelligent search and document automation - this is the perfect next step.

๐Ÿ”ง What You'll Be Doing

  • Building and maintaining data pipelines across structured & unstructured sources

  • Collaborating with internal teams to support Generative AI and NLP projects

  • Ensuring data is secure, compliant, high-quality, and easy to access

  • Bringing your ideas to the table as we explore new tools and technologies

  • Supporting internal customers across multiple teams and functions

๐Ÿง  What You'll Bring

  • Experience with SQL & NoSQL databases (e.g. MS SQL, MongoDB, Neo4J)

  • Python skills for scripting and automation

  • ETL and data exchange experience (e.g. APIs, ESB tools)

  • Knowledge of Big Data (e.g. Hadoop)

  • Curiosity about AI, particularly NLP, OCR or Generative AI

๐ŸŒŸ Bonus Points For

  • Docker/containerisation experience

  • Any previous work in industrial, aerospace or secure environments

  • Exposure to tools like LLMs, OCR engines, or knowledge graphs

๐Ÿ’ฐ What's On Offer

  • Salary up to ยฃ55,000 + bonus up to ยฃ2,500

  • Up to 14% pension contribution

  • 15 days flexi-leave + enhanced parental leave

  • Paid overtime opportunities

  • Free parking, subsidised meals, excellent on-site facilities

  • Hybrid working (2-3 days on-site per week)

This is a fantastic opportunity to apply your data engineering skills to something bigger than business-as-usual. You'll be joining a team that values learning, experimentation, and making a real impact.

๐Ÿ“ฉ Apply now or reach out for a confidential chat

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