Senior Data Analytics Advisor

Harnham - Data & Analytics Recruitment
London
6 days ago
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Senior Data Analyst London (Hybrid) | FTC | Up to £60,000 + benefits
Join a high-impact data team where your analysis directly shapes industry thinking, public policy discussions, and senior stakeholder decisions. This is a great opportunity if you enjoy turning complex data into clear, influential insight and want a role that balances technical work with meaningful stakeholder engagement.
The Company
They are a well-established UK membership organisation within the financial services sector, known for their influential work on policy, regulation, and market issues. Their members include many household-name firms, and they are trusted to provide robust analysis and insight that informs key decisions. They foster a collaborative culture where data, policy, and communications teams work closely together. You will join a supportive environment that values curiosity, ownership, and continuous learning.
The Role As Senior Data Analyst, you will be a core member of the data analytics team, responsible for turning member and third-party data into actionable insight. Your work will support internal policy specialists, senior leaders, and external stakeholders.
You will:
  • Lead on the collection, cleaning, and analysis of data from member organisations and external sources.
  • Use SQL and Excel as core tools to manipulate large, c...

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