Senior Machine Learning Engineer

Skills Alliance
London
1 month ago
Applications closed

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Job Description

Machine Learning Engineer - Scalable ML Systems


Skills Alliance are supporting a venture-backed TechBio company that’s building a platform to make large-scale biological datasets computable using next-generation foundation models.


They’re now hiring a Machine Learning Engineer to help scale model training, inference and deployment across real-world workflows. This is a great fit for someone who enjoys working at the intersection of ML infrastructure, systems engineering and applied research.


What you’ll be working on

  • Building and optimising large-scale training and inference pipelines for modern architectures (Transformers, SSMs, diffusion-style models etc.)
  • Improving performance, throughput and latency across distributed environments
  • Designing modular ML components that can be reused across teams
  • Taking research-level code and turning it into reliable, production-ready systems
  • Working closely with researchers and product engineers to ship fast in an environment that iterates constantly


What they’re looking for

  • Strong Python engineering background
  • Experience with frameworks like PyTorch, JAX or TensorFlow
  • Demonstrated ability to scale ML workflows in real-world settings (cl...

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