Capital Market Data Analyst

YouLend
London
6 days ago
Create job alert

About YouLend YouLend is a rapidly growing FinTech that is the preferred embedded financing platform for many of the world’s leading e‑commerce platforms, tech companies, and Payment Service Providers. Our software platform enables partners to offer flexible financing products in their own branding to their merchant base without capital at risk.


The Role To meet the growing demand for our technology and services, we are now seeking a Capital Markets Data Analyst to join our Finance/Capital Markets team. Being one of the fastest growing Fintech businesses globally, we are looking for exceptionally talented and self‑motivated individuals who have a desire to build a career within the Company.


Responsibilities

  • Automate and optimize portfolio monitoring by building dashboards using visualisation tools
  • Identify trends and communicate insights to 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 cash‑flow models to support capital allocation and portfolio decision‑making

Ideal Candidate

  • 2+ years of experience in data analytics, preferably within the Finance/Fintech sector
  • Strong academic background including at least a Bachelor's degree (Mathematics, Engineering, Statistics, Computational Finance) or equivalent
  • Strong hands‑on experience with SQL, Python
  • Experience with data visualisation tools, e.g. Tableau
  • Dbt (Data build tool) experience would be beneficial (but not required)
  • Exceptional communication skills to help deliver insights to diverse stakeholders

Desirable Skills

  • Detail oriented, outcome and process focused
  • Independent, ambitious, and self‑motivated
  • Looking to make an impact

Benefits

  • Award‑Winning Workplace: Recognised as one of the "Best Places to Work in 2024 and 2025" by the Sunday Times
  • Award‑Winning Fintech: Recognised as a "Top 250 Fintech Worldwide" company by CNBC
  • High‑growth (>100% growth during 2022 and 2023), clear outlook to compensation and career growth
  • Well‑capitalised with supportive private equity backing
  • Part of Banking Circle Group with a fully licensed Luxembourg bank, supporting European expansion
  • Data‑driven culture with emphasis on speed and transparency
  • Stock Options, private medical insurance via Vitality and dental insurance with BUPA, EAP with Health Assured, enhanced Maternity and Paternity Leave, modern office space in Central London, free gym, subsidised lunch via Feedr, Deliveroo Allowance for late office work, monthly office masseuse, team and company socials, football/paddle/yoga club

We champion diversity and embrace equal opportunity employment practices. Hiring, transfer, and promotion decisions are based on qualifications, merit, and business requirements, free from discrimination based on protected characteristics.


Referrals increase your chances of interviewing at YouLend by 2x.


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