Data Analyst

Practicus
London
3 days ago
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Career-Defining Data Analyst Opportunity: Powering a FinTech Scale-Up's Credit Strategy


Are you a proactive, highly proficient Data Analyst ready to step into a pivotal role and drive real-time business decisions?


An award-winning, high-growth FinTech collective is seeking an ambitious analyst to join their Credit Risk team. Backed by major UK finance investors, this is an opportunity to fill a critical resource gap, directly influence strategic operations, and define your career trajectory in a meritocratic, flexible environment.


The Opportunity: Influence and Impact

This isn't just a standard entry-level role. We are looking for a self-starter who can quickly become the go to data expert for the business, sitting primarily within Credit Risk but functioning as a shared resource supporting diverse stakeholders, especially the high growth Originations teams.


Your Core Focus Will Be:

  • SQL Data Mastery: Spend most of your time autonomously handling a diverse range of ad-hoc data requests (80-90% SQL-based) to support rapid business needs.
  • Business Enablement: Support all originations, including volume analysis, new product launches, and ensuring data quality and availability across the platform.
  • Actionable Insight Generation: Build and maintain reports and dashboards to help stakeholders self-serve and investigate critical data anomalies.


Essential skills and Experience:

  • SQL Proficiency is Paramount: 1-2 years of practical, day-to-day experience using SQL in a professional capacity. You must be ready to hit the ground running.
  • Quantitative Background: A top-class university degree with a strong quantitative component.
  • Visualisation Skills: Proven experience building reports and dashboards using any modern visualisation tool (e.g., Tableau, Power BI, QuickSight).
  • Adaptable & Agile: You thrive on variety, are comfortable switching between multiple small tasks quickly, and prefer a fast-paced environment over single, long-term projects.
  • Proactive Self-Starter: You actively seek answers, propose solutions, and are results-driven.


Desirable skills:

  • Experience with SAS and/or Python is beneficial.
  • Prior background in Financial Services, Consumer Finance, or Retail Banking.
  • Knowledge of Cloud-based databases (e.g., Redshift/Azure) or automation tools (e.g., Airflow).


Compensation, Benefits, and Recruitment Timeline

  • Salary: £40,000
  • Bonus Scheme: Annual bonus.
  • Working Pattern: Hybrid – typically 3 days in office, 2 days from home, with flexibility to discuss a lighter office schedule


Key Benefits:

  • 25 days annual leave (increasing up to 28 days with service).
  • Private Medical Insurance (Bupa).
  • Life Cover (4x basic salary).
  • 5% company pension contribution.
  • Dental Scheme and Income Protection.
  • Generous Family Leave and optional Paid Volunteering Time.


Ready to use your SQL expertise to drive success at an industry-leading FinTech?

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