Senior Data Analyst

E.ON
Nottingham
3 months ago
Applications closed

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We are looking for a Senior Data Analyst to join our Credit Risk Portfolio Management team - a key function responsible for understanding and forecasting the financial health of the customer base. The role requires the use of advanced analytics to provide deep insights into credit risk and performance to inform our risk management strategy.

This role is ideal for a proven senior analyst with strong technical and mathematical skills combined with the commercial acumen needed to translate insights into action.

Here's a taste of what you'll be doing

  • Partnering with Finance to develop and maintain debt forecasts to track performance vs. plan, forecast risk and deep dive into the drivers of variations to plan

  • Developing scenario models to enable data-based decisioning within operational and strategic planning cycles

  • Staying up to date with emerging analytical techniques and technologies, partnering with Data Science to deliver advanced segmentation and behavioural analysis

  • Delivering and consulting on the advanced analytics required to support project delivery across the wider Credit Management function e.g. simulation models, data pipeline mock ups, statistically robust testing

  • Translating analytical outputs into clear recommendations for business stakeholders, influencing decisions across debt prevention and collections strategy ...

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