Applied Data Scientist

Change-IT Consulting
Birmingham
4 days ago
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Applied Data Scientist.

Excellent salary plus benefits.

Midlands / Hybrid / Remote.

Negotiable salary depending on experience.

Were now looking for a talented Applied Data Scientist to support the next phase of AI-enabled digital product suite.

This is an opportunity to design, develop and deliver intelligent, data-driven services that are simpler, clearer and faster and that genuinely meet user needs at national scale.

Youll play a key role in exploring complex datasets, building production-ready machine learning and generative AI solutions, and working closely with multidisciplinary teams to translate real user problems into impactful AI capabilities.

Key responsibilities include:

  • Exploring, analysing and interpreting large, complex and diverse datasets to uncover insights and opportunities for AI-driven improvement.
  • Designing, building, evaluating and optimising machine learning, deep learning and generative AI models for real-world service applications.
  • Collaborating with engineers, product managers, designers and policy stakehold...

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