Senior Data Scientist

Anson Mccade
Cheltenham
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


£60,000 - £110,000 GBP


Hybrid WORKING


Location: London; Cheltenham; Bournemouth, Central London, Greater London - United Kingdom Type : Permanent


Senior Data Scientist (SC Cleared)


Location: Cheltenham, London, Bournemouth - Consultative travel required


Clearance: Must be a sole British National, eligible or holding SC or DV


Salary: £60,000 - £110,000 (Dependent on grade)


A leading digital consultancy is looking for a Senior Data Scientist to lead and deliver cutting-edge AI / ML solutions for clients across UK defence and public sector. This is a hands‑on, strategic position for someone who thrives at the intersection of data science, client delivery, and software product design.


What You'll Be Doing

  • Lead technical project delivery and shape data science strategy across multiple client engagements
  • Define and implement bespoke machine learning algorithms to solve real‑world defence problems
  • Guide technical scoping and planning, working closely with stakeholders to ensure feasibility and impact
  • Mentor and support other data scientists across project teams

Contribute to the wider data science community via open‑source projects, public speaking, or technical…


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