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Interim Senior Data Analyst- Healthcare

GatenbySanderson
Nottingham
4 days ago
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Interim Senior Data Analyst – Healthcare

Location: England (on-site part-time)

Duration: Approx. 6 months

Day Rate: £500–£700

Start: Within the next month


We’re supporting an NHS Provider with the delivery of a Financial Recovery Plan, and they’re looking to bring in a highly experienced Senior Data Analyst to join the project management delivery team.


Key Deliverables:

  • Analyse complex healthcare data to identify gaps, trends, and opportunities for financial efficiencies
  • Track activity and performance across care groups
  • Build dashboards and visualise key metrics
  • Manipulate data to provide meaningful insights and impact
  • Collaborate with finance teams and operational leads
  • Support reporting and tracking within the Financial Recovery Plan


Essential Experience:

  • NHS provider experience is essential
  • Strong understanding of PLICS (Patient-Level Information and Costing System)
  • Experience working in financially challenged environments
  • Strong BI background


If this sounds like something you’d be interested in, or if you know someone who might be a good fit, feel free to reach out directly.

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