About Throne
Throne is a continuous tracking device for getting personalized insight about gut health and hydration. Co-founded by John Capodilupo — co-founder and former CTO of WHOOP — we're bringing the rigor of continuous health tracking to two signals that have long been a guessing game. Our north star is to improve health and save lives.
AI / ML Engineer
We’re looking for an AI / ML Engineer to own model performance across computer vision, video, audio, and next-generation sensing systems. This is a hands-on role for someone who can train, evaluate, optimize, and deploy models while building the data and labeling flywheel needed to push performance materially higher over time.
Location
Austin, Texas (In-person)
What You’ll Own
- Computer vision and video model performance across classification, segmentation, detection, embeddings, and temporal/video understanding.
- Large-scale dataset development, including data mining, labeling strategy, dataset quality, split design, active learning, failure analysis, and eval construction.
- Model training and pre-training, including fine-tuning, transfer learning, self-supervised or semi-supervised approaches. Pre-training base CV models experience is a strong plus.
- Model efficiency, including quantization, distillation, pruning, architecture selection, ONNX/TorchScript trade-off understanding, latency reduction, memory reduction, and cost/performance tradeoffs.
- Experimentation and evaluation rigor: metrics, ablations, cohort analysis, error taxonomies, regression tests, confidence calibration, and clear go/no-go criteria.
- Sensor validation for next-generation devices, using a scientific approach to compare sensors, characterize signal quality, design experiments, and determine whether new modalities improve real-world model performance.
- Data science and SQL workflows to inspect production data, evaluate model behavior, build analysis datasets, and connect model outcomes back to product and device behavior.
- Production ML integration, working with backend, firmware, and data systems to make models deployable, observable, reproducible, and reliable.
- Research translation, staying current with relevant CV, video, multimodal, compression, and foundation-model research and turning useful ideas into measurable improvements.
What We’re Looking For
- 5+ years of applied ML experience, with strong production or research-to-production ownership.
- Deep experience training and improving computer vision models across multiple domains, not just using off-the-shelf APIs.