AI Engineer

Understanding Recruitment
London
1 month ago
Applications closed

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How can you use LLMs to revolutionize Legal Tech?


I am searching for a Founding AI Engineer to join a Y Combinator-backed AI startup that’s pushing the boundaries of LegalTech & AI innovations. London based (4-5 days in office per week).


They are looking for aFounding AI Engineerto innovate on groundbreaking AI algorithms and products, collaborating with industry leaders and a highly talented team. The team has seen rapid growth, with their AI tools are already helping top law firms and tech startups streamline patent generation!


As a Founding AI Engineer, you will:

  • Develop production-ready AI algorithms to improve patent generation using large language models (LLMs).
  • Lead the creation of a robust evaluation pipeline to benchmark and steer the direction of the company’s proprietary algorithms.
  • Work on LLM prompt engineering to optimize model efficacy.


Tech Stack

  • Python for algorithm development
  • Postgres databases and back-end systems
  • Front-end development (Typescript/React)
  • Familiarity with LLMs


Interested? Apply now!

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