Business Intelligence Developer

Churwell
1 week ago
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Business Intelligence Developer

Required to start: April 2026

Elliott Hudson College are seeking to recruit an inspirational colleague to the role of Business Intelligence Developer. This role is of great importance to our work as a College – the successful applicant will be expected to design, develop, and maintain data-driven applications and analytical tools that support strategic decision-making across Post-16.

The ideal applicant will have:

  • Degree in Computer Science, Data Analytics, Information Systems, or related field and equivalent experience.

  • Knowledge of scripting languages (Python, R) for data manipulation.

  • Proven experience in developing BI solutions (Power BI, Tableau, or similar).

    What we offer you:

    As a trust, we want to ensure that professionals at every stage in their career have the opportunity to enjoy expert support and training. We are pleased to offer a generous benefits package to our team – as we work together to create a rewarding future for all including:

  • Membership of a teacher or local government pension scheme, depending on the role.

  • A commitment to continued investment in our professionals, supporting every member of staff throughout their career in the trust.

  • Access to an Employee Assistance Programme which provides confidential professional advice and support 24 hours a day, 7 days a week.

  • £2k Cycle to work scheme.

  • On-Site Gym.

    About us:

    Elliott Hudson College is an ambitious and high performing 16-19 sixth form college that is committed to raising standards for young people across the Leeds City region.

    Graded as Outstanding by Ofsted (March 2018 & May 2024), our mission at Elliott Hudson College is to create a culture of excellence in which all thrive. Within GORSE, we aspire for every young person to acquire the gift of choice and at Elliott Hudson College we are committed to building a community in which all students and staff can thrive. By adopting an approach where each person in our community pushes themselves in doing a little better each day, we build a culture of excellence in which all can flourish.

    Working as part of The GORSE Academies Trust, we work hard to ensure that our students receive an exceptional education and that they successfully progress to their chosen destination.

    If you would like to know more about our college, please visit our website at Elliott Hudson College.

    Apply Now!

    Business Intelligence Developer

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