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Health Data Scientist

Harnham
Leeds
8 months ago
Applications closed

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IMMEDIATE START DATE

We are working with a health care company looking to add a Senior Data Scientist to their team to work on a modern contraception project across Western Africa. The data will look into drivers and barriers of people using contraception in these areas and will require a senior data scientist to analyse the data and create actionable models from the findings.

Requirements:

  • Strong R experience
  • Regression, Segmentation and Causal Modeling experience
  • Experience working with large, unstructured data sets
  • Experience working with health data
  • PhD

Desired Skills and Experience

R, Regression, Segmentation, Data Analysis, Health Data, Data Science

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