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Data Analyst & Continuous Improvement Lead

Eden Scott
Edinburgh
2 days ago
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Base pay range

Salary up to £56k base

Direct message the job poster from Eden Scott

Technology Recruitment - Software, Cloud, AI, ML - Eden Scott

Full-time, Permanent

Hybrid - 2 days office, Edinburgh City Centre

The Company

This position is with a large, asset-backed public sector pensions organisation serving tens of thousands of members across multiple employers. With billions in managed assets and a strong funding position, the organisation plays a vital role in supporting long-term financial wellbeing for its members

It’s a growing, vibrant workplace that values flexibility, professional development, and community. Employees benefit from a blended working model, combining remote work with a modern city centre office, and enjoy a wide range of wellbeing and social initiatives.

The Job

This is a mixed role with a strong technical element combined with a need for someone with a keen eye for improving processes & bringing other along for that journey.

Looking for an experienced technical data analyst with strengths in building dashboards, data visualisation, & bringing data; as well as generating insights from the data itself.

The ideal candidate will also have some experience of improving processes & enjoy the stakeholder engagement & team collaboration aspects of continuous improvement

  • Translate complex data into clear, compelling visualisations for stakeholders
  • Monitor trends and identify anomalies
  • Build and refine forecast models for staff workload and service demand
  • Apply continuous improvement methodologies to streamline processes
  • Mentor & train operational staff to improve data-literacy & efficiency

The Skills / Experience Required

  • SQL & Excel
  • Tableau is advantageous but not required. Similar / alternate tools are interesting too (Power BI, QlikView etc).
  • Knowledge of Lean / Continuous Improvement methodologies. Eg, Lean Six Sigma, Kaizen, TQM, TOC, BPR (don’t require any specific one of these).
  • Statistical modelling & forecasting ability

Please apply with CV to be considered. More details will be provided during first conversation.

Our client is an equal opportunities employer & values the unique perspective a diverse workforce brings to what they do.

This job description should be seen as a guideline to the skillset & qualifications required. Your experience does not have to fit perfectly with every requirement (successful candidates' are rarely a perfect match for every requirement). Please do still apply if you feel some of your experience could be relevant.


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