Building models is one thing.
Getting them to run reliably on real hardware is where it gets interesting.
You’ll take advanced ML models and make them work in constrained, real-world environments — often on edge devices where compute, power and latency are all limited.
Applied ML Engineering
- Deploying models onto embedded / edge hardware
- Working closely with customers to integrate into real systems
The work is hands‑on, varied and close to deployment — not stuck in experimentation.
Qualifications
- Strong experience with PyTorch / TensorFlow
- Experience deploying models to edge or hardware‑constrained systems
- Familiarity with tools like TensorRT or similar optimisation frameworks
- Ability to work with customers and adapt solutions to real‑world constraints
Remote (UK) + client site work
Eligible for SC/DV
If you enjoy making ML actually work outside of ideal environments – this is worth a look.
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