Senior Collections Data Analyst

EDF (UK)
Exeter
2 days ago
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About the Role

Ready to turn data into insight that helps teams make confident decisions and improve outcomes? As a Senior Collections Data Analyst, you’ll play an important role in shaping reporting and analysis that supports operational performance. At EDF, Success is Personal – your growth, your impact, your journey.


The Opportunity

In this role, you’ll help power better decision making by producing reporting and analysis that supports our Collections function. Your insight will contribute to stronger performance and better customer outcomes as we work towards An Electric Britain. You’ll join us on a salary starting of £44,800 per annum, splitting your time between home working and occasional travel into our #Exeter office. This arrangement gives you flexibility while enabling collaboration when it matters. You’ll work with structured datasets, analytical tools and operational teams to develop dashboards, improve data quality and surface trends that drive action. You’ll be supported to grow your analytical capability and play your part in strengthening our data‑driven culture.


Who You Are

We’re looking for a Collections Data Analyst who’s detail‑oriented, curious and confident working with structured datasets. Are you experienced in…?



  • Using analytical tools such as SQL, Excel, Power BI, Python and/or Alteryx
  • Applying strong numerical and analytical capability
  • Interpreting data trends and communicating findings clearly
  • Validating data and applying quality control techniques
  • Managing multiple reporting deadlines

What You’ll Be Doing

  • Developing and maintaining dashboards and reporting
  • Analysing debt, recovery and customer data
  • Supporting forecasting with structured inputs and validation
  • Conducting root cause analysis to understand performance variation
  • Ensuring consistent reporting definitions and data interpretation

Pay, Benefits And Culture

Alongside a starting salary of £44,800 per annum, potential for an annual bonus and a market‑leading pension scheme, your package will include customisable benefits such as electric vehicle leasing, discounted gym membership, life assurance, tech vouchers, experience days and more. At EDF, we believe there are multiple definitions of what it means to succeed. That’s why we offer you the freedom to develop a career that’s unique to you. Here, Success is Personal – it’s your journey, powered by us. Everyone is welcome at EDF; we’re committed to building a workforce that reflects gender balance, social mobility and inclusion of minority ethnic backgrounds, LGBTQ+ communities and those with disabilities. As a Disability Confident employer, we will support applicants requiring adjustments.


Closing date for applications is Sunday 15th March

Join us and find your success at EDF!


#SuccessIsPersonal #EDFcareers


Success is Personal. It's your journey, powered by us. Join us and drive the transition towards an Electric Britain.


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