Data Quality Administrator

Lancaster
2 days ago
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Data Quality Administrator

Are you a reliable and flexible worker with excellent attention to detail? Do you have the computer skills necessary for accurate and efficient data management?

Working in College Information Services, within a supportive team, you will input student, exam and course information ensuring we deliver a high-quality service, liaising with other departments as required and producing data for internal and external stakeholders.

You should hold GCSE’s Grade 4/C or above in Maths and English and have experience of using computerised systems within a work environment.

Benefits of this post include:

  • Membership of the Local Government Pension Scheme (employer contribution 17.2%);

  • Generous leave entitlement (28 days, plus Bank Holidays and College Closure Days)

  • Cycle to Work scheme;

  • Opportunities for continuing professional development;

  • Strong staff support services.

    Lancaster and Morecambe College are a thriving FE College and justifiably proud of the strong links with our local community. Located between Lancaster and Morecambe, we are proud to be our community’s provider of technical, professional and creative education.

    All posts are subject to a DBS Disclosure in line with our policy of safeguarding and promoting the welfare of learners. Any specific Safeguarding duties applicable to this post are outlined in the job description.

    Closing date: Wednesday, 18th March 2026

    Our reference: SE4099

    Vacancy: Data Quality Administrator

    Location: Lancaster

    Salary: £24,932 per annum

    Hours: Full time, 37 hours per week

    Smart Hire are advertising on behalf of Lancaster and Morecambe College

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