Your Role:
* Optical Signal Modelling & ML Development: Design, develop, and refine machine-learning models that estimate blood pressure from optical data (PPG/rPPG, RGB video) captured via smartphone cameras
* Signal Processing & Feature Extraction: Work hands‑on with camera‑derived biomedical signals, applying optical and physiological signal‑processing methods to build robust input pipelines
* Model Improvement & Iterative Experimentation: Analyze model behaviour, run systematic experiments, and drive continuous iteration to enhance accuracy, robustness, and generalization across diverse conditions
* Production Readiness & Deployment Support: Prepare ML models for deployment on mobile devices and cloud systems, collaborating with engineering to ensure smooth integration and medical‑grade reliability
* End‑to‑End Ownership of the Modelling Pipeline: Take full responsibility for the ML workflow—from data preparation to modelling, validation, documentation, refinement, and performance tracking
* Cross‑Functional Collaboration: Work closely with colleagues in AI/Data Science, engineering, physiology, and software to ensure solutions are technically sound and aligned with product needs
* Leading Role in Optical BP Estimation: Advance a novel ML technology application: shape, optimize, and mature an emerging ML capability central to the Hilo Lens product line
Your Profile
* Academic Background: Computer Science, Machine Learning, Mathematics, Electrical Engineering, Biomedical Engineering, or a related technical field
* Professional Expertise: Minimum 2+ years of applied industry experience in machine learning or deep learning, ideally in MedTech or regulated domains. You have hands‑on experience developing, fine‑tuning, iterating, and validating neural network models on real‑world datasets, including conducting systematic experiments and driving performance improvements through continuous evaluation
* Technical Experience: You have strong programming skills in Python and hands‑on experience with modern ML frameworks. You are skilled in building, validating, and deploying machine‑learning models and bring a solid foundation in statistical learning and time‑series modelling, including CNNs and RNNs. In addition, you bring applied signal‑processing experience, particularly with PPG, ECG, or motion‑supported signals.
* Industry Fit: Ideally, you bring experience from start‑ups or innovation‑driven environments with broad, end‑to‑end ownership, and exposure to regulated or technically demanding industries, computer vision, or sensor technology
* Language Skills: English at highly proficient level is a must. French, German or Italian are advantageous.
* Personality: A creative, proactive problem‑solver, you enjoy turning complex challenges into real, working solutions. You love getting hands‑on, building, testing, and iterating end‑to‑end — and you naturally take ownership of your work. You stay organized, move things forward independently, and collaborate openly with the people around you.
We’re looking for a hands‑on builder who has developed, iterated, and optimized machine‑learning models for real‑world signals — someone who thrives where algorithms meet real users and who’s excited to drive camera‑based blood‑pressure estimation in digital health.
Do you want to apply your expertise in ML and signal processing to shape a technology that will impact millions of people? Then we’re excited to meet you!
#J-18808-Ljbffr