Lead Data Scientist (Defence) - Onsite UK Clients

Harnham
City of London
2 days ago
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Are you ready to apply data science where it matters most?

Do you want your models to drive real-world outcomes in mission-critical settings?

Do you enjoy working onsite with a variety of invested clients?


A leading UK consultancy is building a dedicated AI & Data Science team to strengthen its delivery capability in Defence. They’re known for outcome-driven transformation work and operate a genuinely hands-on model where technical teams embed with client stakeholders to make change stick. The business has a strong track record across complex, high-stakes environments, and is now scaling its DS capability to deliver ML, GenAI and simulation solutions end-to-end. For high performers, there’s clear progression and the chance to shape the direction of a growing AI practice.


You’ll work directly with end users and senior stakeholders to shape solutions from concept through to embedded impact. This is a high-trust, high-autonomy role where you’ll own both technical delivery and stakeholder engagement - all within a deeply collaborative consulting environment.


They're hiring at Lead (3-5 years of experience) to Principal level (5-10+ years of experience).


Key Responsibilities

  • Build and deploy machine learning models and simulation tooling in secure environments
  • Lead technical delivery across multi-disciplinary teams, including consultants and engineers
  • Work closely with client stakeholders on-site to co-design and iterate on solutions
  • Translate complex analytics into strategic business outcomes with measurable value


Key Details

Salary: £80,000 - £150,000

Working model: On-site 4–5 days/week across UK client locations in England & Scotland (travel required)

Tech Stack: Python, MLflow, Databricks, Docker, Azure OpenAI, simulation frameworks

Clearance: British citizenship / Security Clearance eligibility required

Visa: This role cannot sponsor


Interested? Please apply below.

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