Data Architect DV Cleared

Datatech Analytics
Manchester
2 days ago
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DV Cleared Data Architects & Data Platform Engineers

UK | Hybrid | Multiple Levels

Datatech Analytics is supporting a leading UK technology and consulting organisation delivering mission-critical data and AI platforms across defence and national security programmes.

We are particularly keen to speak with DV-cleared Data Architects who enjoy designing modern, secure data platforms that underpin advanced analytics, AI and operational intelligence.

These roles sit within multidisciplinary teams of architects, engineers and data scientists, working on complex programmes where scalable data architecture and resilient infrastructure are critical to real-world outcomes.

The work

• Designing modern data platform architectures across cloud and distributed environments

• Defining data models, platform standards and architectural patterns for large-scale data ecosystems

• Architecting secure, scalable environments that support analytics, machine learning and AI workloads

• Working closely with engineering teams to translate architecture into production-ready platforms

• Solving complex data challenges across highly secure and technically demanding environments

Technology exposure

Typical environments include:

• Python and SQL

• Spark, Databricks and distributed data processing platforms

• AWS, Azure and Google Cloud

• Modern data lake, lakehouse and warehouse architectures

Who we’re keen to speak with

Active DV clearance is essential.

We are particularly interested in:

• Data Architects designing modern cloud data platforms

• Principal or Lead Engineers stepping into architecture roles

• Senior Data Engineers with strong platform design experience

If you enjoy designing large-scale data ecosystems and working on programmes where architecture and engineering genuinely matter, we would love to speak with you.

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

Justin Toomey

Datatech Analytics

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