Revenue Assurance Data Analyst (Maternity Cover)

ENSEK
Nottingham
4 days ago
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We are a technology business operating in the global energy sector.


ENSEK have become the go-to option for top energy suppliers across the globe. Why? Because our technology is a significant step change away from the legacy systems that have historically dominated the market. It’s also massively cheaper to adopt the ENSEK solution, with no loss in customer service or standards.


But by far the biggest reason why ENSEK is the best choice in energy supplier software, is because of the people who work here and their endless enthusiasm, energy, and the way they support their colleagues. All our clients comment on what great people we have. Our people are our superpower.


That is where you come in.


Role Summary

The Revenue Assurance Data Analyst plays a key role in driving improvements across revenue controls and billing processes. The role requires a mix of analytical expertise, stakeholder management and problem‑solving skills. They are the go‑to expert for revenue assurance reporting, working with internal teams to push through critical change to products, collaborating with external clients to address revenue leakage and ensuring continuous improvements elemento pela revenue assurance processes. They influence change and drive best practices. Key


Responsibilities

  • Owns and develops the revenue assurance reporting suite, ensuring accuracy, efficiency and actionable insights
  • Conducts detailed data analysis, identifying trends, risks and opportunities to improve revenue performance
  • Translates complex datasets into clear, digestible insights for both internal and external stakeholders
  • Works closely with internal teams to create action plans based on revenue assurance findings.
  • Acts as a trusted advisor to senior management internally, providing clear updates on revenue leakage and corrective actions
  • Collaborates with external clients, discussing revenue leaking positions and igba recommending improvements
  • Works cross‑functionally with billing, finance and operational teams to implement sustainable solutions
  • Pushes through changes to the product teams, ensuring accuracy and reducing revenue leakage
  • Works with the business to ensure system fixes and enhancements are correctly prioritised and implemented, through insightful analysis and valuation
  • Develops and refines key revenue assurance controls, ensuring alignment with best practices
  • Identifies opportunities for automation and efficiency gains while reporting and within revenue control processes

Competency Requirements
Behaviours

  • Delivers work reliably, with accountability for quality and deadlines
  • Seeks and applies feedback to improve performance
  • Balances execution of tasks with small process or efficiency improvements
  • Raises challenges early, with suggested options
  • Seeks clarity when faced with uncertainty, adjusting approach when needed

Knowledge

  • Deep subject matter knowledge within their area
  • Applies established processes, methods and tools effectively
  • Competent in using reporting/analytics to inform own work
  • Understands compliance, governance and operational standards for their role
  • Adapts methods of working as priorities shift

Discipline Requirements

  • Strong stakeholder management skills with the ability to engage and influence senior internal and external stakeholders
  • Exceptional communication skills, explaining complex data and issues in a clear, concise manner
  • Highly analytical mindset with the ability to see the big picture from detailed datasets, turning insights into action
  • Collaboration‑focused, thriving in a cross‑functional environment and enjoying working with multiple teams
  • Commercially aware, understanding the financial impact of revenue leakage and how to mitigate it
  • Proficiency in data visualisation tools and analytics platforms (Looker, PowerBI, SQL)
  • 633 Gods of Understando of billing systems and revenue controls


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