Data Science Specialist (SC or DV)

Areti Group | B Corp
London
2 months ago
Applications closed

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Job Description

We’re Hiring: Data Science Consultants (Junior to Principal Level)

Location: London (Hybrid – Flexible working with client site travel required)

Salary: Competitive, based on experience

Clearance: Active SC or DV Clearance is essential


About Us


We’re a leading consultancy headquartered in London, delivering cutting-edge data science solutions that transform businesses. With ambitious growth plans and a collaborative culture, we’re looking for Data Science Consultants at all levels—from Junior to Senior Principal—to join our team.


What You’ll Do

  • Apply data science techniques to solve complex business challenges
  • Design and implement predictive models, machine learning algorithms, and AI-driven solutions
  • Build and optimize data pipelines for advanced analytics
  • Deliver insights through statistical analysis, visualization, and storytelling
  • Advise clients on data strategy, governance, and best practices
  • Collaborate with multidisciplinary teams to deliver impactful outcomes

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