Data Strategy Consultant

Bristol
1 month ago
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Data Strategy Consultant

Step into a pivotal role with a forward-thinking consultancy known for driving transformation and innovation in the public sector. As a Data Strategy Consultant, you'll join a seasoned team with a reputation for flexibility and impact, working on high-stakes projects across Central Government, Defence, Intelligence, and Emergency Services. This role offers a dynamic portfolio of programs where your expertise can directly influence mission-critical initiatives.

You'll be working at the heart of strategic data initiatives—focusing on data modelling, cloud analytics, and cross-government digital transformation. This role requires someone with the confidence and advisory skills to dive right in, providing critical insight and guidance to our clients.

Experience Needed:

  • 5+ years in Data Strategy; additional knowledge in Business, Applications, and Infrastructure is advantageous.

  • Consultancy experience, with a strong focus on stakeholder engagement and effective communication.

  • Proficiency with TOGAF, ArchiMate, BizzDesign, or Sparx EA.

  • Proven track record in Public Sector programs and strong data architecture and technical design experience.

  • Expertise in data principles, policies, and standards.

  • Hands-on experience with data and technology procurement.

  • Familiarity with Power BI, Qlik Sense, and big data tools.

  • Involvement in business transformation and change programs.

    A solid background across varied projects and a STEM degree are preferred. More importantly, we’re seeking candidates who can adapt and evolve to meet our clients' needs. UK Security Clearance eligibility is a must for this position.

    Ready to make a real difference? Join us and bring your talents to critical national programs with transformative impact

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