Senior MLOps & Computer Vision Architect | Contract.
- Day Rate
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🎯 What You’ll Own (End-to-End)
1. MLOps & Azure Architecture
You’ll architect and build our entire cloud-native MLOps platform on Azure, including:
- High-throughput video processing infrastructure
- Robust data pipelines (Encord → Azure → Roboflow)
- Automated model training + versioning
- Deployment of high-performance inference services
- ETL pipelines to turn predictions into client-ready metrics
This is full system ownership — and you’ll be the one building it.
2. Computer Vision Strategy & Model Lifecycle
You will define how we track brand assets across sports video and social media content by:
- Designing the CV approach (models, data strategy, optimisation)
- Integrating Encord annotations with Roboflow training pipelines
- Deploying and optimising the model at scale
- Setting up monitoring to catch model drift before it becomes a problem
3. Human-in-the-Loop (HITL) Tooling
You’ll build the analyst verification interface that:
- Flags low-confidence detections
- Lets analysts quickly confirm/correct outputs
- Feeds improved data straight back into the training pipeline
This is the backbone of our continuous learning loop.
4. Knowledge Transfer
At the end of the project you’ll hand over:
- Documentation
- Architecture diagrams
- Runbooks
- Codebase walkthroughs
So our internal team can take full ownership.
🌟 Why This Role Is Special
- True ownership:Â You design it, you build it, you ship it.
- No legacy tech:Â Clean slate. You choose the right tools and architecture.
- Real-world impact:Â Your system will power visibility metrics used by global brands.
- Massive scope: MLOps, CV, cloud architecture, inference, ETL, HITL — all yours.
- Fast-moving domain:Â Sports + AI + video = one of the most exciting fields right now.
If you’re tired of being one engineer on a huge team and want to own the entire machine, this is your chance.
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🔧 What We’re Looking For
You don’t need every keyword — but you should have strong experience with:
- Building production MLOps systems on Azure
- Designing data pipelines and automated model lifecycles
- Deploying and optimising computer vision models (YOLO, Detectron, etc.)
- Working with annotation tools (Encord, Labelbox, Roboflow, etc.)
- Creating scalable inference systems for video/image workloads
- Building HITL or internal analyst tooling
- Shipping production systems in fast-paced environments
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Contract Details
- 6-month contract (likely extension)
- Competitive day rate
- Hybrid initially then possible remote UK
- Start date: Jan 2026