Data Scientist - GenAI

Harnham
London
9 months ago
Applications closed

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Data Scientist - GenAI


Salary:£60,000-£70,000 + bonus and benefits


Location:1-2 days a week in Watford Junction (15 minutes from Euston), with a London office for 1 other day a week. (3/2 hybrid split)


We are collaborating with a company in the entertainment space, looking to expand their GenAI projects in a well established Data Science team of 5, reporting into a Head of AI.


ROLE AND RESPONSIBILITIES


  • Contribute to expanding GenAI projects, using Python
  • Staying up to date with the latest GenAI trends - critically thinking about risk, fraud and guardrails when implementing GenAI into a regulated environment
  • Projects across marketing, LLMs for call centre transcripts, Generative content for optimising customer experience etc. - lots of ideas and they want yours too!
  • Collaborate with cross-functional teams to integrate AI into their projects
  • Work in a collaborative, learning-focused environment that values openness and high-quality output.


SKILLS AND EXPERIENCE


Required

  • 1-2 years of GenAi/LLMs experience is required
  • MSc in STEM subject with 1-2 years of GenAI experience (open to any experience before that, or candidates with just 1-2 years in GenAI)
  • Experience and understanding of operating GenAI in a regulated environment
  • Excellent communication skills with proven experience working with stakeholders


This role cannot sponsor


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