Data Analyst

Cactus Search
Gloucester
3 weeks ago
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We are looking for Data Analyst to join its Credit Risk team in the South West. This role focuses on using data to understand customer debt, revenue, and collections performance, helping the business reduce bad debt and make better decisions.

1 day onsite per week (South West)

What you’ll do
Analyse customer debt and revenue data
Identify trends and root causes of debt build-up
Produce simple, clear insights to support collections activity
Build and maintain SQL-based reports
Work with stakeholders to support decision-making
Support improvements to data and reporting processesWhat you’ll need
ESSENTIAL SQL skills (extracting, joining, and analysing data)
Experience working with debt, revenue, credit risk, or collections data
Ability to explain findings to non-technical people
Experience managing analysis tasks or projectsDesirable (but not essential)
Experience in Utilities or Financial Services
Exposure to cloud data platforms (e.g. Azure, AWS)
Knowledge of predictive or risk-based analysisThis is a great opportunity for someone who enjoys turning data into practical insight and wants to make a real impact on debt and revenue performance.

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