Data Science Manager

SR2 | Socially Responsible Recruitment | Certified B Corporation
London
4 months ago
Applications closed

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Data Science Manager (GenAI)

Data Science Manager (GenAI)

Data Science Manager (GenAI)

Data Science Manager - Consultancy - London - Up to £90k

(Must hold valid SC)


I’m partnered with a leading UK data & technology consultancy in the national security and defence sector, looking for an experienced Data Scientist with strong client-facing and leadership skills.


You’ll lead end-to-end data projects — from discovery and proof-of-concept through to delivery — helping clients tackle complex data challenges and make smarter, faster decisions. Expect to work across diverse datasets, shape technical strategy, and guide small teams in agile, collaborative environments.


What you'll be doing:

  • Leading client projects and acting as a subject matter expert across data science and analytics initiatives.
  • Working in agile, cross-functional teams from PoC through MVP and production stages.
  • Translating messy, complex data into clear, actionable insights using robust, evidence-based techniques.


We’re looking for someone with:

  • 5+ years’ experience in data science or analytics (consultancy or engineering background ideal)
  • Proven experience leading projects and managing stakeholders
  • Strong Python, SQL/NoSQL, and cloud (AWS/Azure/GCP) skills
  • The ability to communicate technical insights clearly and confidently


Hybrid – 2–3 days per week from London or on client site.


If you hold valid SC clearance and want to lead meaningful, mission-driven data work across the UK’s most secure environments — let’s chat.


Data Science Manager - Consultancy - London - Up to £90k

(Must hold valid SC)

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