Capital Markets Data Analyst

Robert Half
City of London
3 days ago
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Hiring - Capital Markets Data Analyst


Capital Markets Data Analyst | FinTech Scale‑Up | £50,000–£60,000

Robert Half is partnering with a high‑growth, private‑equity‑backed FinTech to recruit a Capital Markets Data Analyst. The business delivers embedded financing solutions for leading e‑commerce and payment platforms.


Key responsibilities

Automate and optimize portfolio monitoring by building dashboards using visualisation tools.

Identify trends and communicate insights to the senior executives.

Build database tables alongside data-engineering teams to enable automation.

Assess and manage the performance of underlying capital mandates.

Perform financial analysis and develop cashflow models to support capital allocation and portfolio decision-making.


Your profile

2+ years of data analytics experience, ideally within financial services or FinTech.

Undergraduate degree or higher in a relevant discipline (e.g., mathematics, engineering, statistics, computational finance).

Proficiency in SQL.

Experience with data visualisation techniques and tools (e.g. PowerBI, Tableau).

Bonus: experience with data build tool.


Why apply?

Opportunity to join a rapidly scaling FinTech with clear progression and real impact.

Competitive salary range plus benefits and share options.

Modern Central London office with hybrid work options and a collaborative, data‑driven culture.

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