Data Scientist - SC Cleared

Hays Specialist Recruitment Limited
London
1 day ago
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Your new companyOne of the most influential Central Government Organisations in the current economic climateYour new roleData Scientist - SC Cleared - SQL, Python & RWhat you'll need to succeedMy client is looking for an Analytical Data Scientist, leading/working alongside a team of data scientists to deliver key outputs for commissioned projects (use cases). You will also support the development of GSCIP through developing tools, data visualisations, and data available for analysis. You will have the opportunity to work on bespoke data science projects to improve understanding and interpretation of the data, and enhance use case delivery capability.This role can only be offered to candidates with Active and Existing SC or DV Clearance. Essential Criteria:

  • Experience of delivering high-quality coding projects that make use of at least two of: SQL, Python & R
  • Experience of engaging with stakeholders across government to scope and deliver impactful analysis
  • Experience of leading teams through complex data science projects - a track record of delivering complex data science projects on time to meet user needs, and overcoming any challenges
  • A demonstrable commitment to developing your knowledge and expertise
  • Significant technical data science knowledge

Desirable Criteria:

  • Understanding of supply chain data sources
  • ...

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