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Data Quality Assistant

North Cumbria Integrated Care NHS Foundation Trust
Carlisle
1 week ago
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Data Quality Assistant – Overview

Join to apply for the Data Quality Assistant role at North Cumbria Integrated Care NHS Foundation Trust. Fixed term/secondment until end of March 2027.

Responsibilities
  • Validate and cleanse waiting list data as part of the EPR project.
  • Identify, process and correct data quality issues in clinical systems.
  • Implement processes with data quality facilitators to ensure accurate data entry by clinical and administrative teams.
  • Provide advice and guidance to managers and clinical teams on data quality and escalating up to facilitators.
Qualifications
  • Experience in data validation and cleaning.
  • Strong analytical and problem‑solving skills.
  • Excellent communication skills.
Benefits
  • 27‑day holiday scheme rising to 33 after 10 years.
  • Flexible working scheme.
  • Competitive NHS pension scheme.
  • Competitive NHS salary scheme.
Sponsorship

Due to changes in UK immigration policy, individuals requiring a Health and Care Visa or Skilled Worker Visa may no longer be eligible for sponsorship. Applicants must check eligibility prior to applying.

Additional Information

Relocation assistance may be available for successful applicants. This post is subject to the Rehabilitation of Offenders Act (Exceptions Order) 1975 and requires Disclosure and Barring Service check. DBS charges deducted from salary over a 4 month period.


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