Data Scientist - Contract

Tenth Revolution Group
London
3 days ago
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Data Scientist / AI Engineer Location: UK London / Bristol Clearance: BPSS eligible (required prior to engagement start)Working Model: Onsite 1-2 days per weekDay Rate: Inside IR35

OverviewA leading UK financial institution is seeking two experienced Data Scientists (or AI Engineers) to design, build and deliver advanced AI and analytics solutions. These roles sit at the intersection of data science, engineering and strategic problem-solving, supporting high-impact initiatives across the organisation. Successful candidates will be hands-on technical leaders with strong communication skills and the ability to guide both clients and junior team members.

Key Responsibilities* Lead end-to-end AI, advanced analytics and automation projects from discovery through to production deployment.* Translate complex data into clear insights and strategic recommendations for senior stakeholders.* Work collaboratively with multidisciplinary teams including engineers, consultants and business leaders.* Design, develop and implement machine learning models, statistical methods and AI solutions tailored to business needs.* Support business development activities such as solution design, proposal input and client presentations.* Mentor junior data scientists and analysts, contributing to capability development.* Maintain awareness of emerging AI/ML technologies, tools and methodologies.Required Skills and Experience* AI Project Lifecycle: Proven experi...

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