Data Analyst

FDM Group
Coventry
4 days ago
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About The Role

FDM is a global business and technology consultancy seeking a Data Analyst to work with our client in the Energy sector. This is an initial 6-month contract with strong potential for extension and will operate as a hybrid role based in Coventry (1 day per week onsite).

Our client is delivering a major regulatory change programme centred on Market Half Hourly Settlement (MHHS). This role provides the opportunity to play a key part in shaping and delivering data-led capabilities across settlement, billing and wider operational processes. You will work closely with regulatory, operational, commercial and technology teams to build robust data monitoring frameworks and reporting tools that support decision making and compliance.

Responsibilities

  • Develop and maintain data monitoring solutions to support MHHS and wider regulatory change initiatives
  • Build dashboards, automated reports and analytical tools using market data from settlement, billing and operational sources
  • Analyse data quality issues, identify trends and provide insights to business and technical stakeholders
  • Document data flows, business rules and reporting requirements to support programme delivery
  • Collaborate with business teams, technology teams and third party suppliers to ensure accurate, timely and consistent data
  • Support the design and implementation of reporting s...

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