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Data Analyst

Verto
City of London
1 week ago
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About Verto

At Verto, we are on a mission to democratise global finance and empower businesses in Emerging Markets to reach the world. Founded by British‑Nigerian entrepreneurs Ola Oyetayo and Anthony Oduu, our roots in Africa gave us a firsthand understanding of the challenges businesses face with cross‑border payments, from illiquid currencies and high fees to slow transactions. This insight drives our focus on Africa as we bridge the gap between emerging and developed markets and foster global economic growth.

Role Overview

This role is critical for building a best‑in‑class data‑led culture, leveraging advanced analytics to drive strategic decisions, influence Verto’s product roadmap, and enable long‑term scalability.

About the Role

We are seeking a driven and results‑oriented Data Analyst to take ownership of key analytics projects, from building predictive models for LTV and churn to enabling business teams to make confident, data‑backed decisions.

What You’ll Be Doing
  • Own the full lifecycle of data analytics projects, from scoping and design to execution and communicating conclusions to stakeholders.
  • Conceptualise, build, and iterate on advanced analytics models for LTV, retention, and churn to drive business strategy.
  • Design, build, and maintain KPI trees and supporting dashboards to track north‑star metrics and democratise access to insights.
  • Contribute to analytics engineering responsibilities, including the maintenance and improvement of data models and tables, particularly using dbt.
  • Collaborate with Product, Engineering, and other business teams to define data requirements, measure feature performance, and ensure data integrity.
  • Define and champion best practices in data analysis, visualisation, storytelling, and overall data culture.
What You Need
  • 3+ years of professional data analytics experience or equivalent.
  • Expert proficiency in SQL, including query efficiency and optimisation.
  • Expertise with data visualisation tools (e.g., Tableau, Looker, Power BI).
  • Proven experience designing and executing A/B tests and providing statistical analysis.
  • Proven experience with dbt and version control using Git.
  • Strong foundation in statistical analysis and/or machine learning principles.
  • Experience working with cloud data warehouses (e.g., Snowflake, BigQuery, Redshift).
  • Professional experience within the FinTech or Finance industry.
Best If You Have
  • Experience with Python for data analysis (e.g., Pandas, NumPy, Scikit‑learn).
  • Specific domain experience within the Foreign Exchange (FX) industry.
  • Familiarity with the Snowflake data stack.
Perks
  • Competitive salary and yearly salary review based on inflation, personal and business performance.
  • Comprehensive health and wellness benefits.
  • Flexible working arrangements.
  • Opportunities for professional development and growth.
  • Dynamic and inclusive company culture.
  • Regular team social events.
Fit
  • Love asking “why?”
  • Value solving problems over just completing tasks.
  • Understand sync vs. async communication practices.
  • Thrive in ambiguity and change.
  • Actively seek feedback.
  • Prioritise impact over activity.
  • Are fun to work with – we love good humour!
Interview Process

The process typically includes a chat with the talent team, an online assessment round, a hiring manager interview round, and a panel round (with a case study).


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