Data Analyst

Harnham - Data & Analytics Recruitment
London
1 month ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst (FTC) London or Milton Park, hybrid working Up to £55,000 plus benefits
This is a standout opportunity to join a growing analytics function where your work directly shapes regulatory decision making. You will play a meaningful role in high-impact programmes, using your SQL expertise to support fair customer outcomes and contribute to business-critical reporting.
The Company They are a forward-thinking financial services organisation committed to delivering simple, transparent products and exceptional customer experiences. With a strong focus on inclusion and development, they create an environment where you can thrive and progress. Their analytics team sits at the heart of the business, supporting key programmes that drive transparency and customer fairness. Collaboration is central to their culture, with a balance of office connection and flexible working.
The Role * Deliver SQL-led analysis, maintaining established scripts and adapting them to meet tight deadlines. * Produce accurate data extracts for operational, complaints and legal workflows. * Manage and refresh customer data populations and segments used across regulatory programmes. * Own external and regulatory reporting requirements with a focus on precision and timeliness. * Support correspondence-driven processes, including case management and tracking activity.
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