Data Engineer (Sc Cleared)

Fortice
London
6 days ago
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About the Opportunity


Fortice are recruiting on behalf of a fast-growing AI and data engineering scale-up operating on complex, mission-critical programmes for government and enterprise clients.


The business sits at the intersection of data engineering, advanced analytics, and applied AI, delivering solutions that support real operational decision-making in high-stakes environments. The company has recently entered its next phase of growth following a strategic acquisition by a global consulting and technology partner, bringing scale and long-term programme stability while retaining an engineering-led, delivery-focused culture.


The Role


Forward Deployed Data Engineer (security cleared)


We are hiring Forward Deployed Data Engineers across multiple levels (Junior through Senior Manager).


This is a hands-on, client-embedded engineering role. You will work close to operational users, helping them solve messy, ambiguous problems by designing and building robust data pipelines, workflows, and decision-support tooling.


You are not just “building data platforms” in isolation;
you are deploying engineering capability directly into client environments and adapting solutions to real constraints.


What You’ll Do


  • Buddy up with clients: Work directly alongside stakeholders to understand operational challenges and translate them into technical solutions.
  • Design under ambiguity: Break down poorly defined problem spaces and design pragmatic, scalable architectures.
  • Engineer data pipelines: Build and maintain ETL pipelines that support operational and analytical use cases.
  • Develop workflows: Create decision-support tools and operational workflows that real users rely on.
  • Apply AI where it counts: Collaborate on deploying AI and ML models that solve real problems, not experiments.
  • Write production code: Deliver clean, reliable, maintainable software across the stack.
  • Raise standards: Mentor peers, contribute to internal best practice, and help set the engineering bar.
  • Build trust: Earn credibility with clients through delivery, judgment, and consistency.


What We’re Looking For


  • Strong experience in Python, SQL, and TypeScript.
  • Solid grounding in data engineering, ETL pipelines, and workflow orchestration.
  • Experience with enterprise data platforms used in operational settings (Palantir experience is a strong plus, but not mandatory).
  • Comfort operating in complex, high-pressure client environments.
  • Interest in applied AI / machine learning with a practical mindset.
  • Clear communicator who can bridge technical and non-technical audiences.
  • Curious, adaptable, and delivery-focused.


Why This Role


  • Work on mission-critical programmes with real operational impact.
  • Be trusted to operate close to the problem, not shielded from it.
  • Build rare experience as a forward-deployed engineer, not a back-office implementer.
  • Access large-scale programmes and long-term career progression through a globally backed organisation.
  • Join a culture that values engineering judgement, accountability, and hard work over hype.

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