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Quantitative Product Specialist - Private Market Data

Scientific Infra & Private Assets (SIPA)
City of London
2 weeks ago
Applications closed

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Job Description

Job Title: Quantitative Product Specialist - Private Market Data

Location: London

Type: Full-time


About Scientific Infra & Private Assets

Scientific Infra & Private Assets is a global leader in data and analytics for private infrastructure and private equity markets. We transform academic excellence into investment-grade indices, tools, and insights that bring transparency and scientific rigor to historically opaque markets. Our indices – such as infraMetrics® and privateMetrics® – serve investors managing hundreds of billions in AUM and are ESMA-registered.


Role Overview

We are seeking a Product Specialist with strong quantitative skills and professional writing experience to contribute to thought leadership and applied research in infrastructure and private assets. This role is ideal for candidates with a passion for private markets, financial economics, and data analytics. The successful candidate will develop high-quality publications, lead analytical research, and present findings to global institutional investors and industry forums.


Key Responsibilities

  • Design and implement quantitative research studies on private infrastructure and private equity using SIPA data platforms (infraMetrics®, pr...

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