Head of Data Visualization & Enterprise Reporting

NHS
Ashton-under-Lyne
1 month ago
Applications closed

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A public health organization in the UK is seeking a Head of Information and Reporting to lead strategic development in data visualization and reporting. The role involves managing a multi-disciplinary team to ensure high-quality data reporting and compliance for regulatory bodies. Ideal candidates will have significant experience in informatics, particularly within the public sector, and strong leadership skills. A robust knowledge of data visualisation tools and statistical techniques is essential, along with experience in managing data architecture and ETL systems. Flexible working opportunities and a supportive environment are offered.
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