Lead Data Analyst - Hybrid - Permanent

Tenth Revolution Group
Newcastle upon Tyne
5 days ago
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Lead Data Analyst - Hybrid - Permanent Role Overview

Lead the delivery of end-to-end analytics solutions across data platforms and transformation programmes. You will manage cross-functional teams, engage stakeholders, and ensure high-quality analytical outputs that drive business value.

Key Responsibilities

  • Own and deliver the analytics roadmap within broader data programmes.

  • Lead teams of analysts, data engineers, and analytics engineers to deliver data workflows, platforms, and reporting solutions.

  • Define standards for requirements, documentation, code quality, and release management.

  • Partner with stakeholders to prioritise work, run workshops, and drive adoption.

  • Ensure quality through validation, reconciliation, and clear "definition of done."

  • Contribute to pre-sales, proposals, and development of reusable analytics assets.

Required Experience

  • Experience leading analytics delivery in complex environments (3+ years).

  • Proven delivery on modern data platforms (cloud DWH, lakehouse, BI modernisation).

  • Strong stakeholder management and team leadership experience.

  • Experience with data validation, controls, and go-live readiness.

Core Skills

  • Advanced SQL and Python

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