Senior Director, Head of Business Intelligence

Data Freelance Hub
London
6 days ago
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Senior Director, Head Of Business Intelligence

This is a 12-month fixed‑term contract position offering a competitive pay rate. Candidates must have experience in an operational environment and data analysis, along with skills in leadership, stakeholder management, and operational insight generation.


Location: London, United Kingdom


Deadline: December 28, 2025


Job type: Fixed term, duration more than 6 months


Are you curious, motivated, and forward‑thinking? At Worldpay you’ll have the opportunity to work on some of the most challenging and relevant issues in financial services and technology. Our talented people empower us, and we believe in being part of a team that is open, collaborative, entrepreneurial, passionate and, above all, fun.


About The Team

The Enterprise Operations Enablement team is a best‑in‑class organisation, supporting Worldpay’s Enterprise customers through managing their payments risk portfolio. The team is laser‑focused on ensuring the highest standards are maintained in relation to customer experience and Risk & Compliance.


What You Will Be Doing

  • Oversee reporting and insights for the Enterprise Operations organisation.
  • Lead a small specialist team of highly talented data and insight professionals, supporting them with development, coaching and prioritisation.
  • Act as a collaborative business partner to the Enterprise Operations Leadership team and other key stakeholders across the business.
  • Drive consistency, governance and alignment in terms of key metrics, partnering with leaders to agree definitions and targets where applicable.
  • Enable operations leaders with relevant data and reporting to drive and improve operational control and performance.
  • Support key initiatives and projects with analysis, reporting & data readiness through change, defining and tracking of success metrics, sizing of resource requirements.

What You Bring

  • Experienced data & insights leader with experience leading and developing a team with varied levels of experience.
  • Strong stakeholder management and business partnering skills.
  • Ability to be hands‑on with analysis as required.
  • Experience working in an operational environment and enabling operational improvements through reporting and insights.
  • Ability to thrive in a fast‑paced environment where speed to delivery and flexibility are critical.

What We Offer

  • A multifaceted job with a high degree of responsibility and a broad spectrum of opportunities.
  • A modern, international work environment and a dedicated and motivated team.
  • Time to support charities and give back in your community.
  • A fantastic range of benefits designed to help support your lifestyle and wellbeing.
  • A broad range of professional education and personal development opportunities.
  • A work environment built on collaboration, flexibility and respect.

Privacy statement and recruitment model details omitted – not required for the job posting.


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