Data Architect

Datatech Analytics
London
3 days ago
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DV Cleared Data Engineers & Data Architects

UK | Hybrid | Multiple levels


At Datatech Analytics, we’re supporting a leading UK technology and consulting organisation delivering mission critical data and AI platforms across defence and national security programmes.


We’re looking to speak with DV-cleared Data Engineers and Data Architects who want to work on complex, high impact programmes where modern data platforms, AI and advanced analytics drive real operational outcomes.


These roles sit within multidisciplinary teams combining engineering, data science and AI expertise, helping organisations transform complex data into secure, scalable and production-ready platforms.


What the work involves

Designing and building production-grade data pipelines across ingestion, processing and consumption.

Working with large structured and unstructured datasets across modern cloud and big data environments.


Architecting secure, scalable data platforms that support analytics and AI-driven decision making.

Collaborating with engineering teams and stakeholders to solve complex technical challenges.


Technology exposure

  • Typical environments include:
  • Python, SQL and modern data engineering tooling
  • Spark, Databricks and distributed data platforms
  • AWS, Azure and Google Cloud
  • Modern data lake and data warehouse architectures


Who we’re keen to speak with

Active DV clearance is essential.


We’re interested in strong engineers and architects across all levels, from hands-on data engineers through to senior architects leading complex platform programmes.

If you enjoy solving complex problems, working with modern data and AI platforms, and operating in fast-paced technical environments, we’d love to hear from you.


If you’re DV cleared and open to hearing about new opportunities, feel free to reach out for a confidential conversation.

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