Data Scientist

Harnham - Data & Analytics Recruitment
London
3 days ago
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Data Scientist

Brighton, hybrid one day per week.

Salary between £55,000 - £65,000.

This is a great opportunity to join a fast-growing team building a cutting-edge generative AI product already live with commercial customers. You will work end to end across modelling, experimentation and deployment, shaping how AI features are built and delivered in production.

The Company

They are a scaling, product-driven technology business with strong investment backing and a focus on applied generative AI. Their flagship AI product is already in market with growing customer adoption, and they are expanding the team to accelerate capability. You will join a collaborative cross functional unit working across engineering, product and data.

The Role

  • Develop and deploy production grade Python and deep learning models.
  • Build NLP and LLM features including embeddings, intent detection and conversational AI.
  • Contribute to end to end pipelines using cloud services, microservices and containerisation.
  • Experiment with advanced techniques including reinforcement learning and RAG workflows.
  • Collaborate closely with engineering and product on delivery and performance.
  • Present work clearly in team sessions and contribute to technical decision making.

Your Skills and Experience

  • Strong Python skills ...

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