FP&A Data Analyst - 6 Months Contract

Churchill Howard Limited
Leicester
1 day ago
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A high-impact FP&A Data Analyst role at the heart of a large, complex UK business, focused on deep data analysis rather than traditional reporting. This role supports commercial decision-making by building robust data models, automating insight, and transforming large datasets into clear, actionable performance intelligence.

You'll work with finance and business stakeholders to design scalable FP&A datasets, develop advanced analytics, and create scenario models across profitability, pricing, cost, working capital and long-term planning. Expect heavy data crunching, automation and coding, with a strong focus on accuracy, speed and insight.

Ideal for someone with serious analytical firepower - strong SQL/Python (or similar), advanced Excel, BI tools, and a passion for turning complex financial data into powerful decision-making insight.

Data & Analytics

Build, maintain, and optimise large FP&A datasets by integrating financial, operational, and commercial data from multiple source systems.

Write and maintain production-quality code (e.g. SQL, Python, or similar) to clean, transform, and model data.

Develop scalable data pipelines and analytical models to support forecasting, planning, and performance analysis.

Ensure data accuracy, integrity, and consistency across all FP&A outputs.

Advanced FP&A Insight

Deliver deep analytical insight across profitability, pr...

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