Data Analyst

Intellect Group
City of London
2 days ago
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Data Analyst – Private Credit Intelligence (Forecasting & Simulation Support)

Location: London (Hybrid)

Salary: £45,000 – £55,000 + Benefits (plus meaningful equity participation)

Start Date: ASAP


About the Opportunity:

We’re recruiting on behalf of an ambitious, high-growth organisation building an intelligence platform for private credit — turning large-scale, real-world financial behaviour into forward-looking insight for fintechs and investors.


This is a Master’s-level Data Analyst role for candidates with up to 2 years’ experience post-Master’s. You’ll sit close to the core analytics and modelling roadmap—supporting forecasting and simulation work through high-quality datasets, scalable reporting, and reliable pipelines—while also owning key BAU data and reporting responsibilities.


What You’ll Be Doing:

  • Owning BAU analytics and reporting: recurring KPI packs, portfolio/credit performance reporting, trend analysis, and stakeholder updates
  • Building and maintaining clean, analysis-ready datasets from messy real-world sources (portfolio, transaction, performance, behavioural and macro/market inputs)
  • Supporting forecasting/simulation initiatives by:
  • Preparing modelling tables, features, and cohort definitions
  • Producing validation checks, back-testing support, and monitoring metrics
  • Documenting assumptions and ensuring outputs are reproducible
  • Developing scalable data workflows in SQL + Python (ingestion, cleaning, transformation, QA)
  • Improving data quality: reconciliation, anomaly detection, root-cause analysis, and automated checks
  • Building and maintaining dashboards for multiple stakeholders, ensuring data is accurate, timely, and clearly presented
  • Collaborating with data science/engineering to push reliable datasets into production and reduce manual effort


What We’re Looking For:

  • MSc completed in a quantitative discipline (e.g., Data Science, Statistics, Mathematics, Computer Science, Physics, Econometrics, OR)
  • 0–3 years professional experience post-Master’s in a data analyst / analytics role (internships/placements welcome in addition)
  • Strong SQL skills and confidence working with relational data and large datasets
  • Strong Python for analysis/automation (pandas, NumPy; good coding hygiene)
  • Essential: Dashboarding experience in Power BI, Tableau, or Looker (building and maintaining stakeholder-facing dashboards)
  • Solid understanding of analytics fundamentals: data cleaning, joining/aggregation logic, basic statistics, and QA approaches
  • Comfort working in a fast-paced environment with a mix of BAU and project-based work
  • Clear communication skills and a proactive, process-improvement mindset
  • Full right to work in the UK (visa sponsorship not available)


Desirable (Not Essential):

  • Exposure to credit / lending / risk / portfolio datasets
  • Time series familiarity (trend/seasonality, cohorts over time, monitoring)
  • Experience with data tools such as dbt, Airflow, Snowflake/BigQuery/Databricks (or similar)
  • Experience creating automated data quality frameworks or reconciliation checks


Benefits:

  • £45,000 – £55,000 salary
  • Hybrid working in London
  • Strong benefits package (details shared during process)
  • Meaningful equity participation
  • High-impact role working with real-world private credit data and a product-led roadmap


How to Apply:

Please apply with your most up-to-date CV and I’ll be in touch ASAP to arrange an initial call and share further details.

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