VP of Data Transformation - Private Equity

Harnham
London
3 days ago
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Job Description

Do you want to lead data transformation across PE-backed financial services businesses?

Have you advised C-suite leaders on data strategy, diligence, and value creation?

Are you ready to drive measurable impact across a portfolio, not just one company?


A specialist private equity firm focused on the financial technology sector is hiring a VP-level Data Strategy & Transformation Lead to join its value creation and innovation arm. The firm invests across banking, payments, capital markets, insurance, and investment management, working hands-on with portfolio companies to unlock growth through data and technology.


This role sits within the firm’s internal value creation team, partnering directly with investment professionals and portfolio leadership to assess, design, and execute data transformation initiatives across the fund.


Role Summary

This is a high-impact, client-facing VP role for a data strategy leader with strong consulting DNA and deep financial services experience. You will lead data diligence, define value creation plans, and support execution across multiple portfolio companies.


Key Responsibilities

  • Lead data diligence for new investments and portfolio companies
  • De...

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