Senior Data Scientist

Alvarium Talent
London
9 months ago
Applications closed

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Job Description

A specialist data consultancy is seeking aSenior Data Scientistwith strong hands-on experience in Machine Learning and Generative AI. This role offers the opportunity to work on high-impact projects across various industries, applying advanced data techniques to solve real-world business problems.


This is an excellent opportunity to join a collaborative team delivering innovative AI and data science solutions for a diverse client base.


Role Responsibilities

  • Design and implement ML and Generative AI models to address client challenges
  • Work closely with data engineers and MLOps professionals to deliver production-ready systems
  • Apply techniques such as large language models (LLMs), retrieval-augmented generation (RAG), vector databases, prompt engineering, and model fine-tuning
  • Engage with client stakeholders to understand requirements and define appropriate technical solutions
  • Contribute to project scoping, delivery, and reporting, ensuring outcomes align with client objectives
  • Keep up to date with developments in AI and data science and bring fresh ideas to internal and external projects
  • Support a collaborative team culture through knowledge sharing and technical discussions


Skills and experience required

  • Proven experience deliveri...

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