Data Architect

Warwick
3 weeks ago
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Data Architect (3–6 Month Contract)

Location: Coventry / Hybrid

Contract: 3–6 months (with potential to extend)

Our client is embarking on a major digital transformation programme to replace the fundraising CRM and finance system and bring supporter data together in a more efficient, unified way. We’re looking for an experienced Data Architect with Dynamics CRM / D365 CE expertise to guide data strategy, governance, and migration work during this critical phase.

About the Role

You’ll play a key leadership role in shaping how data is structured, managed, and migrated across the organisation, ensuring the move to Dynamics CRM / D365 CE is smooth, compliant, and future-proof.

You will:

  • Develop and deliver a supporter data strategy aligned with organisational goals.

  • Lead change management as we transition data structures into the new D365 CE environment.

  • Define datasets, standards, mapping, and migration processes.

  • Oversee all data migration activities, including audit, mapping, cleansing, validation, and volume management.

  • Ensure data integrity and accuracy across the new CRM and finance system.

  • Coordinate with internal teams and third-party partners.

  • Ensure compliance with data protection, retention and security best practice.

  • Support and upskill the Data Manager and wider data team.

  • Act as the key link between technical and non-technical stakeholders.

    About You

    You will bring:

  • Proven experience in strategic or technical data roles within CRM or digital transformation projects.

  • Hands-on experience with Dynamics CRM or D365 Customer Engagement is essential.

  • Experience within at least one CRM migration project, ideally in the charity or fundraising sector.

  • Ability to simplify complexity and engage confidently with stakeholders.

  • Strong organisational skills with a solution-focused mindset.

  • Solid understanding of data protection regulations.

    This is a fantastic opportunity to work on a digital transformation. If you would like to learn more, please send your CV, and I will call to discuss

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