Senior Strategy Analyst

Northamptonshire
£35000 - £50000 per annum + Competitive Benefits

Senior Strategy Analyst
£50,000
London

A major retail credit provider is looking to add to its Strategic Analytics function, where you will be offered flexible working (from home twice per week if required). You will also be trained in R as the team are are in the midst of implementing open source technology (R and Python) to use alongside SAS and SQL.

THE COMPANY

If you are looking for a challenging, fast paced environment within a bright, highly productive team with a company that value employee well-being this is worth exploring.

THE ROLE:

  • Provide insight into portfolio performance, customer and marketing analytics and drive growth through data analysis and strategy development / optimisation
  • Focus on growing portfolio through Acquisitions Strategies or Existing Portfolio Strategies (2 x vacancies)
  • Daily use of SAS, R, Python to analyse large sets of business customer data

YOUR SKILLS AND EXPERIENCE:

  • Strong academic background with a minimum requirement of having a numerate degree from a University
  • Experience analysing large sets of data in a retail banking or similar environment
  • Experience using SAS, SQL, Python or R on a daily basis
  • Experience driving business decisions through data in a Credit Risk, Marketing or similar environment

HOW TO APPLY:

Use the apply feature on this page

BENEFITS:

  • Up to £50,000 with flexible benefits scheme
  • Flexible working (from home twice per week and early/late flex)
  • CV impact - renowned for high quality analytics function
  • Training in open source tech (R and Python)

KEYWORDS:

Credit Risk Analytics, Marketing Analytics, Strategic Analytics, Credit Risk Strategy, Acquisitions, Customer Management, Data, Analytics, Data Analyst, SAS, SQL, R, Python

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37302N/-cl
Northamptonshire
£35000 - £50000 per annum + Competitive Benefits
  1. Permanent
  2. Portfolio Analyst

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