Health Data Analyst — Hybrid, Flexible Hours

Optimum Patient Care Global Limited
Norwich
4 days ago
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A global research organization in the UK is seeking a Data Analyst to support data-focused projects and contribute to high-impact health research. The successful candidate will need strong SQL/T-SQL skills and experience with large databases. Hybrid working is available, offering flexibility with office presence required on certain days. This position includes responsibilities in data collection, analysis, and team development, aiming to improve patient outcomes through evidence-based decisions.
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