FP&A Systems & Business Intelligence Lead

Genius Sports
London
1 week ago
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The Role

We are looking for an experienced FP&A professional with strong systems expertise to lead the design, delivery, and continuous improvement of our planning and reporting environment. This role bridges finance and technology, you’ll own Adaptive Planning and BI reporting, drive model governance, and ensure the integrity of data and insights used across the business. The role can be based in London or New York, reporting to the Head of FP&A.


You will work closely with the FP&A teams, central BI and the central Workday/ERP team, translating business needs into scalable system solutions. This is a great opportunity to shape the future of FP&A processes and build a best-in-class reporting capability.


What You’ll Do:
  • Own the Adaptive Planning models, ensuring driver-based logic, scenario functionality, and reporting structures are robust and aligned to business needs
  • Lead the design and delivery of management dashboards and KPI reporting in collaboration with BI teams
  • Act as the first line of data integrity for FP&A, reconciling Adaptive to Workday actuals and ensuring consistency across systems
  • Partner with the Senior FP&A Manager and finance business partners to deliver budgets, forecasts, long-term models, and cashflow reporting
  • Liaise with the Workday/Internal Tools team to resolve system or mapping issues, ensuring smooth data flows and integration
  • Drive automation and process improvements, reducing manual effort and enabling faster, more accurate reporting cycles
  • Initially an individual contributor role with the potential to shape how offshore resources may support reconciliations and reporting
  • Champion best practice in planning, reporting, and systems governance across the finance organization

What You’ll Bring:
  • Strong FP&A / financial modelling background, ideally with a professional qualification (ACA/ACCA/CIMA or equivalent)
  • Hands‑on experience with Adaptive Planning (or equivalent: Anaplan, Hyperion, etc.)
  • Experience with BI / reporting tools (Power BI, Tableau, or similar)
  • Proven ability to manage system reconciliations, financial reporting packs, and dashboards
  • Excellent communication and stakeholder skills; able to translate finance requirements into system solutions
  • Takes the initiative to find solutions to problems
  • Is a great communicator & relationship builder
  • Is a team player with a hands‑on, down‑to‑earth attitude and approach

It’ll Be A Bonus if You Know:
  • Workday ERP or similar system knowledge
  • Experience mentoring analysts or working with offshore support teams
  • Track record of leading process automation or finance transformation project

The salary for this role is based on an annualized range of $120,000 - $165,000 USD for New York, and £80,000 – £110,000 for London. This role will also be eligible to take part in Genius Sports Group's benefits plan.


Let us know when you apply if you need any assistance during the recruiting process due to a disability.


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