Data Scientist - Hybrid - Inside IR35

Tenth Revolution Group
London
3 days ago
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Data Scientist - Hybrid - Inside IR35Role Overview

As a Data Scientist, you will lead the design and delivery of AI-driven solutions, advanced analytics, and automation initiatives for clients across industries. Operating at the intersection of data business strategy, and technology science,, you will help clients unlock value from their data assets while mentoring junior team members and shaping the organization's data science capability.

You will work closely with consultants, engineers, and client stakeholders to translate complex data into actionable insights and deploy scalable AI solutions that deliver measurable business impact.

Key Responsibilities

  • Lead end-to-end AI, advanced analytics, and automation engagements from discovery through deployment.

  • Translate complex data and analytical findings into clear, actionable insights and strategic recommendations for clients.

  • Collaborate with cross-functional teams, including consultants, engineers, and client stakeholders, to design and deliver impactful solutions.

  • Design, build, and deploy machine learning models, statistical analyses, and AI solutions tailored to client needs.

  • Contribute to business development efforts, including proposal writing, solution design, and client presentations.

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