Senior Machine Learning Engineer

Weare5vtech
Bristol
1 day ago
Create job alert
Senior Machine Learning Engineer
Remote
Full Time
$200,000 pa plus equity

We are partnering with a next-generation AI infrastructure company building a distributed, privacy-first AI platform designed for enterprise and public sector environments.


They are seeking a Senior Machine Learning Engineer to join their growing team, working at the intersection of machine learning, systems engineering, and production deployment.


This role is hands-on and execution-focused. You will take research-grade models and turn them into robust, production-ready AI systems capable of running across cloud, edge, and constrained hardware environments.


Key Responsibilities

  • Convert research prototypes into scalable, production-grade AI systems
  • Develop, fine-tune, and optimise models using PyTorch, TensorFlow, and Hugging Face
  • Apply model optimisation techniques such as quantisation, pruning, distillation, and hardware-specific acceleration
  • Engineer parameter-efficient adaptation strategies (LoRA, PEFT) and on-device inference pipelines
  • Work across multi-modal AI systems (vision, audio, language)
  • Develop performance-critical components using C, C++, or Rust
  • Optimise AI systems for distributed, resource-constrained, and offline environments

Required Experience

  • 5+ years in applied ML, ML engineering, or production AI systems
  • Deep hands-on experience with PyTorch, TensorFlow, or Hugging Face
  • Proven track record deploying models across cloud, edge, and on-device environments
  • Strong experience with model compression and optimisation
  • Solid understanding of GPU computing, CUDA, and performance profiling
  • Low-level systems programming experience in C, C++, or Rust
  • Strong algorithmic thinking and problem-solving ability in constrained or distributed systems

Want to work on real-world AI deployments, not demos? Take the next step in your career and apply today!


5V Tech are acting as an Employment Agency for the purposes of this job vacancy. We offer a reward scheme if you can recommend someone for this position, up to $250 for you and an additional $250 to a charity of your choice, 5V Tech are recognised talent solutions experts within IoT and Deep Tech working across Europe, the UK, and North America.


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