Data Analyst - London

Grayce
London
6 days ago
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Contract: 12- month FTC (with possibility of extension)


About the Role

Join Grayce and work on high-profile projects for leading organisations. You’ll apply your expertise in data analysis and business analysis while continuing to develop through our structured learning programme. This role offers exposure to complex challenges, industry-recognised accreditations, and the chance to make a real impact from day one.


As a Data Analyst, you’ll play a key role in supporting a major transformation programme for a world-leading organisation in the asset management sector. You’ll focus on data migration analysis, working closely with stakeholders to understand current systems and ensure accurate transfer of critical data to new platforms. This is a 12-month+ opportunity for an experienced analyst who thrives in a fast-paced environment.


What We’re Looking For

  • Significant experience as a Data Analyst, with strong Business Analysis capability preferred.
  • Proven experience in Asset Management.
  • Strong analytical and problem-solving skills with the ability to interpret complex business needs.
  • Proficiency in Excel and SQL; Power BI experience is a plus.
  • Ability to gather and document business requirements and engage with end-users.Confident communicator with excellent stakeholder engagement skills.
  • Ability to work on-site 3 days per week in London.
  • Right to work in the UK for the duration of the contract

Why Grayce?

For over a decade, Grayce has partnered with FTSE 100 and 250 organisations to deliver impactful change and transformation. Joining Grayce means combining real client delivery with a structured development journey designed to accelerate your career.


What you’ll gain:

  • Continuous Development: Our Accelerated Development Programme gives you access to industry-recognised accreditations and tailored learning pathways.
  • Career Progression: Clear routes for advancement, supported by mentoring and coaching.
  • Impactful Work: Work on projects that shape the future for major organisations.
  • Support & Wellbeing: Competitive package plus benefits designed to help you thrive.

Grayce is not on the UK Border Agency's Sponsor Register and is unable to sponsor work visas for international applicants.


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