Senior Data Scientist

Career Choices Dewis Gyrfa Ltd
Manchester
4 days ago
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Overview

As a senior data scientist at JDAC you will lead data science projects in high profile policy areas.


Recent Projects

  • Modelling public perception of local areas
  • Building AI tools to assist colleagues who work with parliament
  • Development of a web app for advanced geospatial processing
  • Developing a Django-based platform for orchestrating reproducible analytical pipelines

Additional Responsibilities

The role will also involve building data science capability amongst the wider analytical team, and embedding and maintaining good coding practices and quality assurance. This is primarily a technical G7 role with limited line management responsibilities (you may manage one junior member of staff), giving you the opportunity to use and develop your technical skills.


Person Specification

You must be enthusiastic about using code to solve analytical problems and have an ability to learn new tools and techniques.


Proud member of the Disability Confident employer scheme


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