Computer Vision Engineer

Kessari
Liverpool
2 days ago
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Computer Vision Engineer — Autonomy (Remote)


We build retrofit autonomy modules for existing UAV fleets operating in GPS-denied environments. This is real-world deployment, not research or simulation. Constrained hardware, degraded comms, systems that have to work first time.


Kessari is moving from TRL 6 to TRL 8 with active partners.


We need someone to own perception through to targeting, end-to-end.


What you’ll do


  • Build and deploy real-time detection and tracking pipelines on edge hardware
  • Take models from training through optimisation into field deployment
  • Work on low-latency systems running on constrained GPUs (Jetson class)
  • Handle messy real-world data (aerial, oblique, thermal, small objects)
  • Ship systems that run at 30+ FPS in production
  • Work in GPS-denied conditions where localisation and perception must hold up under uncertainty


You’re a fit if you can


  • Train and deploy object detection models (YOLO, RT-DETR or similar)
  • Optimise models for real-time edge inference (TensorRT, ONNX or similar)
  • Implement multi-object tracking (ByteTrack, BoT-SORT or similar)
  • Own the data pipeline (collection, annotation, validation)
  • Work across Python and some C++, Linux, Docker
  • Strong bonus
  • Experience in GPS-denied navigation or perception systems
  • Drone or aerial imagery experience
  • Thermal or infrared perception
  • Visual SLAM or odometry integration
  • CUDA or GPU optimisation
  • Synthetic data or simulation


What matters

This is not a research role. You need to ship fast, handle ambiguity, and make systems work in the field.


Comp

€90k – €140k+ depending on level

Equity and performance upside tied to deployments

  • DM directly to apply

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