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Data Quality Assurance Officer (Apprentice) | Frimley Health NHS Foundation Trust

Frimley Health NHS Foundation Trust
Slough
1 week ago
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Be Part of Improving Healthcare Through Better Data

AtFrimley Health NHS Foundation Trust, we understand that accurate, high-quality data is vital to delivering safe, effective patient care. We are currently seeking a committed and detail-oriented individual to join our Data Quality Assurance Department as a Data Quality Support Officer.


This post also includes study support towards a Level 4 Data Analyst Apprenticeship (via Multiverse), offering an excellent opportunity for long-term development.


What We're Looking For

  • Comfortable working with data and has strong IT skills
  • Able to analyse reports and extract actionable insights
  • Organised, self‑motivated, and able to manage a busy workload
  • A confident communicator with excellent interpersonal skills
  • Ideally experienced in a healthcare or NHS environment (not essential)
  • Familiar with the National Care Record Summary (NCRS) – desirable but not required
  • Keen to grow professionally while contributing to meaningful improvements in healthcare

Benefits

Frimley Health NHS Foundation Trust is committed to being an inclusive and disability confident employer and has been awarded the Gold for the Armed Forces Employment Recognition Scheme. We provide first class development opportunities for all staff and have a wide range of professional, management and leadership, and clinical skills training available. Here at Frimley Health NHS Foundation Trust, we know how important it is to have a healthy work life balance; this benefits not only individuals but the patients we care for too.


Role Responsibilities

  • Running and interpreting scheduled reports to address data quality concerns
  • Supporting the implementation and maintenance of the EPIC programme
  • Investigating and resolving duplicated or confused patient records
  • Liaising with colleagues across multiple sites to correct data anomalies
  • Assisting in audits related to Inpatient, Outpatient, and Waiting List data
  • Managing monthly data challenges and national data tracing processes
  • Supporting specialist teams in Cancer and Acute Services with record resolution
  • Maintaining accurate and well‑structured spreadsheets
  • Using Trust IT systems confidently and effectively

Please read the full Job Description and Person Specification before applying.


Important Information: Sponsorship is not available for this role.


This vacancy may close early once a sufficient number of applications have been received.


This advert closes on Thursday 23 Oct 2025.


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