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Investment Data Analyst – Urgent Hire (Big 4 Profiles) - Hedge Fund - London

Mondrian Alpha
London
3 days ago
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Overview

Investment Data Analyst – First Tech Hire at a High-Performing Investment Fund

This range is provided by Mondrian Alpha. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

We’re supporting a top-performing, high-conviction investment firm as they make their first full-time hire into data and technology. This is a rare opportunity to work directly with the COO and senior leadership, shaping the future of analytics and tooling at a boutique fund managing over £1bn AUM.

What Makes This Special

  • Be the first internal hire focused on technology and data — full ownership and visibility.
  • Partner directly with the COO and investment team to transform internal research and reporting workflows.
  • Broad exposure across investments, operations, compliance, and sales.
  • Significant runway for career progression in a lean, entrepreneurial environment.
Responsibilities
  • Take ownership of the firm’s internal analytics platform (Power BI) — enhancing and scaling it.
  • Build a proprietary AI-powered natural language search tool for querying historical models and research notes.
  • Develop dashboards and visualisation tools to support fund managers, client reporting, and internal stakeholders.
  • Work with senior leadership to identify automation opportunities and solve data workflow challenges.
  • Manage third-party vendors and consultants; oversee outsourced builds as needed.
Core Skill Requirements
  • Power BI: Strong experience building dashboards and data models.
  • SQL: Comfortable writing and optimising queries for complex datasets.
  • Python (or other scripting languages): Exposure ideal; willingness to learn expected.
  • Excel: Fluent, particularly for modelling and cross-functional reporting.
  • Ability to translate business problems into technical solutions, working autonomously and with non-technical stakeholders.
Who We’re Looking For
  • 2–4 years’ experience in data analysis, consulting, fintech, or financial services.
  • A First-Class or high 2:1 degree from a Russell Group university — preferably in a STEM or quantitative field.
  • A sharp, commercially aware mind — someone who can engage with investment logic, not just data.
  • Strong communication skills and a collaborative, delivery-focused mindset.
  • Someone who thrives in high-trust, high-autonomy environments.
Why Apply?
  • Unique chance to build the internal data capability at a growing fund from the ground up.
  • High exposure to decision-making and meaningful, business-wide impact.
  • A commercial, hands-on role in a collegiate, five-day office culture.
  • Strong bonus potential and a long-term path for growth and responsibility.

If you're looking for real ownership, complex problems, and close collaboration with senior stakeholders — this is the one.

Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Information Technology and Engineering
  • Industries: Investment Management, Financial Services, and Data Infrastructure and Analytics

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