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ITalent Spot
About Us
Our client is MilTech startup building an on-premises platform for automated annotation of UAV video and training computer vision models for autonomous flight.
We have a strategic partnership with one of the largest Ukrainian UAV manufacturers and access to what is likely the largest privately owned UAV video dataset in the world.
The company is at a very early stage — the funding is secured, the technical vision exists, and the data is available. Our focus now is building the core engineering team to turn this platform into reality.
The Role
We are looking for a Computer Vision / Machine Learning Engineer.
We are looking for CV/ML Engineer to join as one of the first engineers on the team. You will work closely with the technical lead to build the ML pipeline from the ground up — implementing core components across data processing, model training, and deployment.
This is an early-stage startup, so the tech stack and processes are still being shaped. You will have real input into the tools and approaches we adopt, and your work will directly define how the platform operates. We are looking for someone who is hands-on, curious, and comfortable building things that don’t exist yet.
What You Will Work OnData Pipeline & Preprocessing
Build video preprocessing pipelines: clip segmentation, frame extraction, scene detection, quality filtering
Implement embedding extraction and data curation workflows for selecting diverse training subsets from a massive video corpus
Prepare and export datasets in standard formats for training and annotation
Model Training & Experimentation
Train and evaluate computer vision models for object detection, classification, tracking, and segmentation
Run experiments, track results, and iterate on model architectures and hyperparameters
Implement data augmentation strategies for robustness across weather, lighting, and occlusion conditions
Active Learning & Annotation Support
Implement auto-labeling pipelines with confidence-based routing
Build tooling around the annotation platform (pre-annotation, format conversion, quality
Maintain automated quality checks for label consistency
Edge Deployment
Export and optimize models for inference on NVIDIA Jetson (ONNX, TensorRT, FP16/INT8quantization)
Run accuracy and latency benchmarks on edge devices
Help maintain the model delivery pipeline from training to deployment
Requirements Must Have
Nice to Have
What We Offer