Senior Business Intelligence Analyst

Marc Daniels
Slough
1 year ago
Applications closed

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A global market leading SaaS business are looking for an interim Senior Business Intelligence Analyst for 6 months to take ownership of Annual Recurring Revenue (ARR) and Net Recurring Revenue (NRR) processes. This role offers a unique opportunity to contribute to the precision and success of financial decision-making across our organization.As a Senior BI Analyst, you will work closely with the Director of Group Data and Analytics, delivering actionable insights and driving performance improvements. If you thrive in a dynamic environment and have experience delivering end-to-end solutions, we'd love to hear from you!Key Responsibilities: ARR and NRR Management: Oversee and manage the day-to-day processes for tracking and reporting ARR and NRR metrics.Project Oversight: Monitor, track, and report on project progress, ensuring alignment with governance frameworks and OKRs.Stakeholder Collaboration: Build strong relationships with sponsors, business owners, technology teams, and finance.Risk Management: Identify and address project risks and issues, escalating when necessary.High-Quality Deliverables: Work with cross-functional teams to produce and deliver impactful solutions.Performance Reporting: Provide regular updates on project performance to stakeholders.Person Requirements: Proven experience with Annual Recurring Revenue (ARR) and Net Recurring Revenue (NRR) metrics.Advanced SQL skills for data analysis and reporting.Experience within a SaaS businessExcellent analytical and problem-solving skills.Advanced proficiency in MS PowerPoint, Word, and Excel, with the ability to present compelling business cases.By applying you will be registered as a candidate with Marc Daniels Specialist Recruitment Limited. Our Privacy Policy is available on our website and explains how we will use your personal data

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