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Intermediate AI Engineer/Data Scientist

Lantern Limited
London
3 days ago
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About you
You're a self starter who mixes critical thinking with the delivery of working lightweight systems. You're driven by curiosity and capable of taking prototype datasets and turning them into systems that answer well defined questions, critiquing your system and keeping it honest as you go.
Key Responsibilities

  • Help us build prototypes using NLP and time series data
  • Help support 2 long running critical systems (both powered by NLP and OCR)

Requirements

  • A strong product-focused mindset focused on solving real user problems
  • 5+ years Python
  • You've been in the world of data science for 3+ years
  • Demonstrable experience in AI/ML projects using NLP and OCR
  • You've hand-built your own evaluation sets and scored your own ML systems
  • You've built front-ends that quickly deliver value to users
  • Use of unit tests and end-to-end tests around ML/AI systems during both development and long-term support
  • Practical experience calling LLMs via APIs and dealing with varied responses

Bonus skills

  • Private equity or financial services experience
  • Azure, Postgres, Streamlit or equivalents
  • Fact extraction, Q&A and RAG on documents
  • Comfort working in small teams with fast iteration cycles




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