Data Quality Officer Position at University of Sheffield

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Sheffield
1 month ago
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Join Our University Health Service Team

Location: Sheffield

Salary: £25,742 to £29,605 Grade 5, per annum; potential to progress to £32,332 pa through sustained exceptional contribution

Hours: Full Time

Contract Type: Permanent

Placed On: 1st March 2024

Closes: 17th March 2024

Job Ref: UOS040286

Summary:

We are excited to present an opportunity for a Data Quality Officer at the University Health Service. The ideal candidate will have excellent communication skills, a team-oriented mindset, and a dedication to providing outstanding service to colleagues and patients. The role involves coding clinical and administrative data into electronic patient records, engaging with patients via phone, email, or text to schedule medical reviews, and serving as an IT Champion to assist colleagues with hardware/software challenges.

If you are passionate about student health and thrive in a collaborative environment, we encourage you to apply.

What We Offer:

  • 38 days annual leave (including closure days and Bank Holidays), with the option to purchase up to ten additional days.
  • Up to 5 days paid time off for emergency caring responsibilities.
  • Flexible working opportunities and hybrid options where feasible.
  • Highly competitive pension scheme.
  • Discounts at participating shops and cinemas, cycle-to-work scheme.
  • Development programs, learning modules, and mentoring schemes.
  • An inclusive and diverse workplace.
  • Support for wellbeing, including confidential emotional support, assistance during fertility treatments, paid leave for IVF, and more.

For more details on benefits, visit here.

About the Department:

The University Health Service operates as an NHS GP practice, serving The University of Sheffield students and dependents. Our team includes GPs, Nurse Practitioners, Practice Nurses, Healthcare Assistants, pharmacists, physiotherapists, and other healthcare professionals, supported by administration teams. We deliver tailored NHS services and are proud of our “Outstanding” CQC rating for student services and an overall “Good” rating, with high patient satisfaction scores.

We value diversity and believe in building inclusive teams that harness the strengths of people from different backgrounds, enhancing our research, teaching, and student experience.

Ready to make a difference? Click the “Apply” button at the top of your screen and join us on this rewarding journey.


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