Managing Consultant, Customer Data Analytics/Data Science

Salt
London
4 days ago
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Job Title: Managing Consultant - Customer Data Analytics/Data Science

Salary: £77,000-£88,000 + ~£8,000 bonus

Location: Hybrid (UK-based)

Type: Permanent

About the Role

We're partnering with a global consultancy at the intersection of data, AI, and design to appoint a Managing Consultant - Customer Data Analytics/Data Science. This role is ideal for a data leader who combines strong analytics expertise with the ability to inspire teams and shape client success.

You'll lead customer analytics and Generative AI projects, develop people, and contribute to business growth while keeping hands-on involvement with advanced data solutions.

What You'll Do

  • Lead the delivery of customer data and AI-driven analytics projects, ensuring quality and impact.
  • Manage and mentor junior consultants and data scientists, supporting their professional development.
  • Apply LLM and Generative AI techniques to real-world marketing and customer use cases.
  • Collaborate with senior stakeholders to shape proposals, refine scopes, and identify new opportunities.
  • Translate business challenges into scalable, data-driven solutions using Python and ML methods (predictive, classification, forecasting, deep learning).


What You'll Bring

  • 6+ years' experience in data science, analytics, or consulting.
  • Proven success operating at manager level, leading teams or workstreams.

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