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Data Analyst, Multinational Investment Bank, London, UK - PER, Private Equity Recruitment

PER, Private Equity Recruitment
London
1 day ago
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About our client

We are partnering with a leading multinational investment bank to hire a Data Analyst for their London office. In this role, you will collaborate with senior specialists within the Financial Sponsors Group, supporting data processing, migrations, and performance analytics. You will work closely with senior bankers on client engagement, onboarding initiatives, and marketing efforts, contributing to the team's data-driven insights and strategic decision-making. This is an outstanding opportunity to join a highly respected global firm, gain exposure to data applications in private markets, and add tangible value through your analytical expertise. What the job involves

  • Prepare and deliver sponsor-specific information packages for FSG bankers' client meetings using market intelligence, private equity websites, and Salesforce
  • Support opportunity tracking, including distributing reports, documenting calls, managing follow-ups, and tracking progress
  • Create and maintain Salesforce reports, dashboards, and FSG banker-specific reports (call activity, coverage, opportunity tracking)
  • Coordinate with senior bankers on sponsor-related requests, including onboarding support and industry-specific research
  • Process and update private equity data in internal databases/CRMs from internal and external sources (e.g., Unquote Data, PitchBook, Mergermarket)
  • Maintain sponsor databases, updating investment criteria, contact details, portfolio company information, and pitch commentary
  • Assist with research on private equity firms and support deal teams with sponsor activity analysis
  • Support preparation of FSG marketing materials

Who we are looking for

  • Strong communication, organisational, and administrative skills
  • Attention to detail with the ability to deliver accurate work under tight deadlines
  • Proactive, reliable, and collaborative team player
  • Ability to thrive in a fast-paced, dynamic environment
  • Proficient in MS Office; CRM experience and familiarity with search tools or AI tools advantageous
  • Some administrative or data experience in investment banking or similar deadline-driven environments preferred

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