Senior Data Scientist

F5
Bristol
2 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

  • Bristol/Hybrid
  • Salary: £50,000-£55,000
  • Must be eligible for SC Clearance

The Role:

Join a 100+ employee scale-up digital transformation consultancy as a Senior Data Scientist.

This role is a blend of remote working, office-based collaboration in Bristol City Centre, and expensed client site visits around South West England.

What you'll do

  • Work on end-to-end data science projects for various clients, including those in the Defence industry.
  • Use advanced analytics to analyse complex datasets
  • Conduct statistical analysis and hypothesis testing
  • Build and deploy predictive ML models
  • Mentor junior team members

What you'll bring

  • 4+ years' experience in data science
  • Strong Python skills (pandas, numpy, PyTorch etc.)
  • Experience with traditional ML techniques and statistical analysis
  • Solid consulting skills - communication, problem-solving, stakeholder engagement
  • Eligible for SC Security Check clearance

Benefits:

  • Private medical insurance
  • 26 days of annual leave plus UK bank holidays, increasing with tenure
  • Additional leave for members of the Reserve Forces and CFAV....

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