ML Infrastructure Engineer

Adamas Knight
London
1 year ago
Applications closed

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About the job


Adamas Knight is recruiting a ML Infrastructure Engineer for an AI Lab in London that's working on building their own proprietary foundation model within the multi-modal domain - text and vision.


With one of the best compute in industry, they are looking for a senior engineer that has been a core contributor to the infrastructure of an impactful large multimodal model to lead this whole initiative.


The Role

As aMachine Learning Infrastructure Engineeryou'll architect scalable systems for training and serving large-scale multimodal deep learning models, optimising workflows, and building robust data pipelines to support SOTA research.


Benefits/Perks:

  • Attractive Compensation: Enjoy a very competitive salary
  • Team:Join an experienced world-class team (coming from DeepMind and FAIR) and immerse yourself in a knowledgeable environment
  • Comprehensive Benefits: Access private healthcare, free lunch, access to onsite gym, on-going learning and support
  • Work-Life Balance: Benefit from flexible working hours that fit your lifestyle


At Adamas Knight, we are committed to creating an inclusive culture. We do not discriminate based on race, religion, gender, national origin, sexual orientation, age, veteran status, disability, or any other legally protected status. Diversity is highly valued, and we encourage applicants from all backgrounds to apply.

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