Founding Engineer - HPC Opportunity

amberes company

Subscribe to our Telegram & Twitter Channel

Founding Engineer - HPC in UNITED KINGDOM

Visa sponsorship & Relocation 1 year ago

Founding Engineer - HPC


USP's:

  • An opportunity to be an integral Founding member of a future AI Unicorn
  • Exceptional leadership in place
  • Exceptional talent across the team, working with the brightest minds in AI, who have worked for the biggest names, who work in a highly collaborative and supportive way
  • Backed by the biggest names in AI and the VC world
  • Fantastic support and development, your skills will be accelerated here
  • A clear, concise and fast interview process with feedback at every stage
  • Strong Equity Package
  • Sponsorship available
  • Relocation package available


The Business:

  • Amberes has partnered with one of the world's leading VC firms to help them build one of their hottest future AI Unicorn businesses building cutting-edge LLM.
  • The Founding Machine Learning Engineer will be influential in steering the product development, the technical success, the overall growth, and mainly the culture of a future AI Unicorn.
  • Must be able to work from London HQ's x4 days a week in the office


Experience in creating/managing HPC clusters for ML models and efficiently serving large ML models at scale is a huge bonus.


Required Credentials:

  • Master's degree as a minimum
  • Released publications in top conferences
  • A minimum of 3+ years being a key member of your team, ideally for a leading AI research laboratory, or a pioneering AI business


Key Requirements:

  • Experience in creating and managing HPC clusters for ML models
  • Experience in efficiently serving large ML models at scale
  • Experience serving LLM models at scale
  • Able to produce and refine large-scale ML systems
  • Developed and orchestrated complex machine-learning pipelines


If you are interested, please apply.


Thank you,

Team Amberes

Apply now

Subscribe our newsletter

New Things Will Always Update Regularly