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Investment Operations Data Analyst

Mondrian Alpha
London
1 week ago
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We’re supporting a top-performing investment firm as they look to grow their data and technology team. This is a rare opportunity to work directly with the Head of Data and senior leadership, shaping the future of analytics and tooling at a boutique fund managing over £1bn AUM. My client has a preference for Data Engineers working at a consultancy, onsite across Financial Services (PWC, Accenture, Deloitte, or EY).

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.



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.

Work with senior leadership to identify automation opportunities and solve data workflow challenges.

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; Excel : Fluent, particularly for modelling and cross-functional reporting.

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.

~ Unique chance to build the internal data capability at a growing fund from the ground up.

A commercial, hands-on role in a collegiate, five-day office culture.

Strong bonus potential and a long-term path for growth and responsibility.

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