Data Analyst

Royal Berkshire Nhs Foundation Trust
Reading
3 days ago
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The Data Analyst sits in the Digital Data & Technology (DDaT) Operations team, adding value for our patients through improving and developinginformation services across the Trust and wider health and care system.

To ensure the information is an effective component of the Trust's DigitalData & Technology (DDaT) target operating model, working alongsideothers, delivering continuous overall improvement.

This role is part of supporting the 'engine room' of DDaT operations,transitioning from outsourced arrangements to an in-house delivery model., The post holder will support the Senior Information Analyst to ensure thatthe information team is able to successfully deliver on its service levelrequirements, working to transform trust data into timely accurateinformation.

The post is to provide analytical support, innovative ways of presentinginformation and develop new analyses to inform in the monitoring andimprovement of performance within the Trust. Supporting the provision of acomprehensive information and analysis service, ensuring the highestquality information is available for all internal and external corporatereporting requirements. This will involve complex analysis and interpretationof all aspects of health information.

You will support health care activities within the NHS, clinical disparatesystems and understand case mix and patient flows and operationalprocesses to support divisional objectives.

Diversity makes us interesting... Inclusion is what will make us outstanding.

Inequality exists and the journey to eliminate it is not easy. Every step we take will be a purposeful step forward to deliver a truly inclusive culture where all our people are enabled to deliver outstanding care, where background is no barrier, and where everyone can be their authentic self and we truly represent our patient community.


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