R&D Scientist – Geometry and Physics-Inspired Machine Learning - #2076425
Pupil Labs GmbH

Job Description
Vision being the dominant human sense, eye tracking constitutes a powerful approach for understanding the human mind! At Pupil Labs, our mission is to provide cutting-edge eye-tracking solutions, which are more robust, accurate, accessible, and user-friendly than ever before. Already today, our products empower thousands of users in academia and industry, clinical surgeons, elite athletes, astronauts on the International Space Station, and many more. Unlocking the full potential of eye-tracking technology relies on solving hard research problems, ranging from core gaze-estimation algorithms to developing cloud-based algorithmic tools for analyzing egocentric video and physiological data at scale.The interdisciplinary R&D team at Pupil Labs, comprising members with backgrounds inComputer Science, Computational Neuroscience, Mathematics, and Physics, is tackling these challenges head-on! In close collaboration with other engineering teams, we identify promising R&D avenues and take pride in seeing our results swiftly integrated into the latest products shipped to our customers.
To support our efforts, we are looking to grow our R&D team in Berlin with afull-time R&D Scientistwho bringsgeometric, physical, or structural prioritiesinto machine learning systems. This is anon-site position(with up to two home-office days per week).
Pupil Labs offers a competitive salary, flexible work arrangements, a great team of coworkers, a young and dynamic company structure, and a culture of participation and feedback.
Are you excited about joining an ambitious, international, diverse, interdisciplinary, young, enthusiastic, and talented team of researchers and software specialists? Do you have a growth mindset, thrive in fast-paced work environments, and enjoy working on hard problems? Then we are looking forward to hearing from you!
What you would do
- Develop machine learning models that incorporategeometric, physical, or causal structure, moving beyond purely data-driven or black-box approaches.
Wie bewerbe ich mich?
Um sich für diesen Job zu bewerben, müssen Sie auf unserer Website autorisieren. Wenn Sie noch kein Konto haben, registrieren Sie sich bitte.
Veröffentlichen Sie einen LebenslaufÄhnliche Jobs
Android SDK Engineer - Kotlin (m/w/d)

Wohnbereichsleitung (m/w/d) - Berlin-Treptow

Werkstudent Medical Services (m/w/d)
