Solution Architect (Data Architect)

AQA Recruiting
Manchester
1 week ago
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At AQA, we’re committed to advancing education and we’re committed to our people. As the largest provider of academic qualifications in the UK, we mark over 10 million exam papers each year and it’s our people who make this happen.* Leading on data-focused solution architecture across enterprise and assessment technology domains.* Designing and guiding delivery of data platforms and data integrations that meet business needs.* Shaping AQA’s data strategy and contributing to data governance bodies such as the Data Council.* Experience in architecture with a strong data background.* Familiarity with TOGAF, Zachman or similar frameworks.* Ability to present clearly and confidently up to C-suite level.* Strong analytical mindset with a focus on practical delivery.* Excellent stakeholder engagement and communication skills.AQA is an independent charity that sets and marks over half of all GCSEs and A-levels in the UK every year. Our purpose is to advance education by helping students and teachers to realise their potential. As part of AQA, you’ll very quickly appreciate the determination and unwavering passion to deliver this goal in everything we do. To help drive these ambitions, AQA invests in the development of its people by offering a range of professional development and learning opportunities leading to over 50% of our permanent roles being filled internally.Reasonable AdjustmentsIf you have any requirements for reasonable adjustments in relation to the application, interview or the prospective job, please contact Faye Harrison (she/her) at **** or on **. We are asking for this information to make the process as equitable as possible for each candidate. Please note that Faye will not be able to assist you with enquiries regarding Temporary vacancies or non-recruitment enquiries. If you have query regarding Temporary vacancies, please contact: Smart WorkingWe’re operating a smart working model. This allows for our colleagues to work from two days a week in one of our offices across England.Equality, diversity **and inclusionAQA is an equal opportunity employer committed to fostering an inclusive and diverse workplace where everyone - regardless of religion, ethnicity, gender identity or expression, age, disability, sexual orientation, or background - is valued, respected, and supported to thrive.Conflict of InterestPlease note that due to the confidential nature of our work, we are unable to employ people for our temporary roles who are currently a candidate for Key Stage 4 and 5 public examinations.SafeguardingAQA is committed to the safeguarding of children and adults at risk. We’re dedicated to reducing the risk of employing or contracting any person intent on abusing their position of trust, along with identifying and responding to any incident of alleged abuse from its employees or associates fairly and swiftly.For more information on safeguarding at AQA please visit the AQA website .ContactTemporary roles: Permanent and Fixed Term roles:
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