Senior Data Scientist

F5 consultants
London
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.
Annual trip abroad
Pension scheme
Funding for relevant qualifications
RSG Plc is acting as an Employment Agency in relation to this vacancy.

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