Data Architect

Stable Resources Ltd
Reading
2 days ago
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Data Architect

24 months – until December 2027

Hybrid – occasional travel to Reading

Rate TBD

Role Requirements:

  • Subject to clearance requirements

  • Experience: Proven track record as a Data Architect in complex, multinational environments.

  • Technical Expertise: Strong knowledge of Azure services (Data Lake, Data Factory, Synapse) and familiarity with emerging cloud technologies.

  • Security Awareness: Ability to design architectures with strict security boundaries, protective markings, export-control constraints, and multi-tenant segregation.

  • Collaboration: Comfortable working in greenfield projects and multinational defence contexts with varying data access classifications.

    Key Responsibilities:

  • Define and implement end-to-end data architecture across multiple business areas.

  • Ensure architectural consistency across nations and business domains in collaboration with the Data Architect Manager.

  • Evaluate and adopt new technologies to support secure multinational collaboration.

  • Design and maintain distributed data environments and modern data warehousing patterns.

  • Implement solutions that comply with security, regulatory, and export-control requirements.

  • Extensive experience in Data standards

  • ISO 10303 experience

  • Experience in working with engineering data integration

    Desirable Skills:

  • Hands-on experience with tools such as Databricks and Hadoop, and distributed data platforms.

  • Knowledge of modern data warehousing and big data processing frameworks.

  • Ability to work with Azure-based ecosystems and integrate emerging services.

  • Strong understanding of data governance in highly regulated environments.

  • Excellent communication and stakeholder management skills.

  • ERP

  • PLM

  • Manufacturing

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