Billing Data Integrity Specialist

RS Components
Warrington
3 days ago
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A leading supplier of integrated solutions based in Warrington is looking for a Billing Analyst to join their billing team. You will manage client charging cycles, validate data accuracy, and address errors in charging processes. The ideal candidate is reliable, detail-oriented, and able to work autonomously while contributing to team goals. This role requires excellent time management skills and the ability to meet deadlines, as well as a proactive approach to problem-solving. Opportunities are abundant for those who aim for greatness.
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