Forecasting & Planning Lead - Data Analytics

NHS Scotland
Edinburgh
3 days ago
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A public healthcare organization in Edinburgh is seeking a Principal Information Analyst for a 12-month fixed term role focusing on forecasting and planning. The successful candidate will lead a team, enhancing service delivery through high-quality data analysis and strategic planning. Experience in SQL, R, and data visualization is essential. The position offers flexible work options, including home, office, or hybrid arrangements.
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