Lead Data Analyst

SearchWorks
Manchester
1 week ago
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Hands-on leadership role owning the execution, prioritization, and quality of analytical work across stakeholder requests and Data Operations initiatives. Lead a team of Data Analysts while staying actively involved in high-impact delivery. Collaborate with leadership to align outputs with business strategy.

Key Responsibilities
  • Own intake, scoping, prioritization, and delivery of analytical work.
  • Lead and develop Data Analysts; contribute directly to complex projects.
  • Translate ambiguous questions into defined problems with clear outputs and caveats.
  • Ensure consistent, well-reasoned outputs aligned with metrics.
  • Escalate complex challenges and promote automation/AI tools.
  • Embed AI experimentation while maintaining rigour.
  • Adhere to security, quality, and health & safety policies.
Requirements
  • Strong hands-on analytics experience in commercial/operational environments.
  • Proven ability to scope, prioritize, and deliver across stakeholders.
  • Experience balancing team leadership with direct delivery.
  • Excellent analytical judgement and stakeholder communication.
  • Mentoring experience focused on quality and development.


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