Solution Architect (Data Architect)

AQA
Manchester
23 hours ago
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Solution Architect (Data)

Permanent

Manchester: £73,800 - £85,700

Hybrid: 2x days a week in the office

Introduction

You'll play a pivotal role in shaping how data drives AQA's future. As our Solution Architect (Data), you'll help define and implement the organisation's data strategy, working at the intersection of technology, governance and business change. Your expertise will guide how we design and build our data platforms, how we integrate data across the organisation and how we use information to improve outcomes for learners. You'll be joining at a time when AQA is modernising its technology landscape, giving you real scope to influence decision-making, introduce new thinking and create long-term impact across enterprise and assessment technology.

Purpose of the Role

You will bring deep data expertise and architectural insight to help AQA develop a coherent and effective data landscape. You will support the development of organisation-wide data platforms, help define our data strategy, and work closely with colleagues to ensure data solutions align with our broader aims to support learners across the UK.

Key Responsibilities

In this role, you'll be responsible for:

  • Leading on data-focused solution architecture across enterprise and assessment technology d...

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