Python Credit Data Analytics Consultant (CRA/Scorecard Modeling) - £80,000 - Hybrid (London Area)

Ventula Consulting
London
4 days ago
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Global Financial services client now requires a Data & Analytics Consultant to lead a small team and execute technical analytics and consultancy projects, designing and developing complex modelling assignments using our clients Credit Reference Agency data.


This will be a client facing role, creating new proposals to win new analytics projects and ensuring proactive client engagement throughout the entire lifecycle.


Key responsibilities:

  • Responsible for delivering technical analytics projects leveraging CRA data assets. This will center around credit strategy and model development according to client requirements.
  • The application of data tools and programming languages such as Python on SQL to prepare data and develop solutions for their clients.
  • Present proposals, statistics and results to technical and non-technical stakeholders.
  • Work with clients to understand their regulatory landscapes ensuring they receive the most applicable data solutions.


Key Requirements:

  • Strong exposure to Credit Bureau Agency/Credit Reference Agency data in a modelling environment.
  • Extensive hands-on experience developing credit risk/data models using languages such as Python and SQL.
  • Strong technical expertise with the ability to utilise statistical techniques to solve business problems.
  • Excellent communication skills with the ability to lead projects, a team and client presentations.
  • Desirable: Any experience with Machine learning tools/technologies and Cloud services (AWS, GCP).


This is a permanent opportunity which provides a base salary of up to £80,000 plus excellent benefits.


In terms of working structure, this is hybrid with 3 days per week in our clients Central London office.

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