Data Analyst | Northern Lincolnshire & Goole NHS Foundation Trust

Northern Lincolnshire and Goole NHS Trust
Grimsby
3 days ago
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Role Overview

An exciting opportunity has arisen for an experienced Data Analyst to join our cross‑site Neonatal Teams.


The role involves meeting the day‑to‑day clinical information needs of the Neonatal unit by collating and recording data onto the neonatal clinical information system (BadgerNet) in a timely and accurate way. The post holder will be trained in the use of BadgerNet and will generate reports based on the data stored within the system.


Responsibilities

  • Collate and record patient, staffing and cot availability data onto BadgerNet promptly and accurately.
  • Support medical and nursing staff to input data relating to patient care, staffing levels and cot availability using various sources on the neonatal unit.
  • Generate reports relating to data held within BadgerNet.
  • Ensure all activity on the Neonatal Unit, Post‑Natal Ward and Transitional Care wards are captured and up to date on the BadgerNet system.
  • Work independently on a daily basis in accordance with departmental requirements, with support from the nursing and medical team.
  • Achieve the expected standards of work and support others to do the same.
  • Ensure data is collected and reported upon in a timely and accurate manner, enabling real‑time data from admission through to discharge.

For more detailed information, please read the job description linked below.


To learn more about Northern Lincolnshire and Goole NHS Foundation Trust, and discover the unique benefits on offer to employees, view our latest videos and more, please visit our recruitment website https://join.humberhealthpartnership.nhs.uk/


Equality and Diversity

We strongly value the different perspectives and ideas a diverse workforce brings to deliver better outcomes for our patients. We welcome applications irrespective of people’s age, disability, sex, gender identity and gender expression, race or ethnicity, religion or belief, sexual orientation, or other personal circumstances.


Data Protection

In line with the General Data Protection Regulation (GDPR), the Recruitment & Workforce team will use and hold your personal data for the intended purpose and in line with the Recruitment & Workforce Privacy Statement.


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