Develop and improve computer vision models for sports video intelligence, focusing on detection, tracking, and event understanding. Own the full experimentation loop from hypothesis and training to evaluation and productionization.
We’re hiring a hands-on Computer Vision Engineer to build and improve sports video intelligence models—detection, tracking, pose, event understanding, and multi-view reasoning. You’ll spend most of your time on CV research + applied modeling (experiments, architectures, training, evaluation), and partner with data/platform teammates to ensure your work can ship reliably.
This role is CV-first. A bend toward scalable pipelines / MLOps is a plus, not a requirement. Level (mid vs senior) depends on scope ownership and how independently you can drive results.
Responsibilities
CV Modeling & Experimentation
- Build and train CV models for sports video: player/ball detection, multi-object tracking, pose/keypoints, event/action recognition, identity association (re-ID).
- Own the experimentation loop: hypotheses → ablations → error analysis → measurable improvements.
- Design and maintain evaluation: task-appropriate metrics (e.g., MOT metrics, keypoint accuracy, event precision/recall), dataset slices, and failure taxonomy.
- Improve data efficiency: augmentations, sampling strategies, handling label noise, weak/self-supervision where helpful.
- Prototype and iterate on modern architectures (e.g., transformer-based detection/tracking, temporal models, multi-task setups).
Research that Ships
- Collaborate on dataset + labeling design: formats, schemas, tooling, versioning.
- Help productionize models: packaging, batch/stream inference patterns, throughput/latency tradeoffs, robustness checks.
- Add lightweight quality gates: reproducibility, automated eval, regression detection
Qualifications
Must-have:
- Strong applied CV experience with hands-on model development (not just running existing repos).
- Solid PyTorch skills: training loops, debugging, data pipelines for vision workloads, DDP basics.
- Comfort with video CV fundamentals: occlusion, identity switches, temporal consistency, calibration, domain shift.
- Strong Python engineering and a bias toward measurable outcomes.
Nice-to-have (Bonus):
- Sports video CV or adjacent domains (multi-agent tracking, pose, crowded scenes).
- Experience with video tooling (FFmpeg), efficient dataset formats (WebDataset/shards), or streaming/batching to GPUs.
- MLOps/production experience: model packaging, CI for training/eval, serving (Triton/TorchServe), monitoring.
Benefits
- MLOps/production experience: model packaging, CI for training/eval, serving (Triton/TorchServe), monitoring.
- Competitive Salary and Bonus Plan
- Comprehensive health insurance plan
- Retirement savings plan (401k) with company match
- Generous paid holiday schedule - 13 in total including Monday after the Super Bowl
- Remote working environment
- Generous paid holiday schedule - 13 in total including Monday after the Super Bowl