Lead Data Architect - Perm - UK Remote

Infused Solutions
Manchester
2 months ago
Applications closed

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Senior Data Architect - Remote (UK) - £90K + Bonus & Benefits

Remote (UK-based)
Up to £90K + Bonus & Benefits
No sponsorship available

We're looking for aSenior Data & Integration Architectto drivescalable, high-performance data solutions, connectinglegacy systemswithmodern cloud architectures. You'll work withApache Spark, Databricks, Kafka, Airflow, and Azure, leadingdata strategy, automation, and integrationacross the organisation.

Your Role

  • Develop and execute adata architecture roadmap, modernising legacy systems.
  • Builddata pipelines, integrations, and real-time streaming solutions.
  • OverseeSQL Server, Azure SQL, Power Platform, and Dataverse integrations.
  • Ensuredata security, governance, and compliance(GDPR, ISO27001, NIST CSF).
  • Work withDynamics 365 (F&O, CE)to optimise data connectivity and workflows.
  • Mentor engineers, collaborate with stakeholders, and drive innovation.

What You Bring

  • Proven expertiseindata architecture, ETL, and cloud-based solutions.
  • Strong skills inSQL Server, Azure, Databricks, Apache Spark, Kafka, and Python.
  • Deep understanding ofdata security, governance, and compliance frameworks.
  • Experience withCI/CD pipelines, Agile methodologies, and DevOpsbest practices.
  • Ability to designscalable data solutionsthat align with business objectives.

Why Join Us?

Be part of agrowing, innovative organisation, leading the way indata transformation. You'll have the opportunity to work with the latestcloud and data technologies, driving impactful projects that make a difference.

Perks & Benefits
Performance-based bonus
25 days holiday + bank holidays
Private healthcare & pension (7.5% employer contribution)
Remote & flexible working
L&D programs & career growth opportunities

Ready to make a real impact? Apply today!

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