Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
, lasers, quantum photonics, optical sensors, LEDs, photovoltaics, ultra-high speed optical transmission systems, and bio-photonics. Technology for people DTU develops technology for people. With our
-
within nanophotonics, lasers, quantum photonics, optical sensors, LEDs, photovoltaics, ultra-high speed optical transmission systems, and bio-photonics. Technology for people DTU develops technology for
-
conditions for art and culture. Possible focal areas include AI and algorithmic creativity, digital media aesthetics, data-driven culture, new forms of the dissemination of art, literature, theatre and music
-
collaboration with the research staff (mechanical assembly of robot tools such as grippers and sensors) We offer a supportive environment, professional growth opportunities, and access to modern tools and
-
investigate new algorithmic principles that make learning agents adapt to non-stationary environments in an autonomous manner. The expected outcomes are new theoretical insights about the algorithmic roots
-
description You will be contributing to developing and implementing novel algorithms at the intersection of computational physics and machine learning for the data-driven discovery of physical models. You will
-
, iOS/Swift) sensor collection (mobile phone sensing, wearables, activity trackers) web-based development (React / JavaScript) RESTful server infrastructure (Spring Boot, Kotlin, Java, Linux) data
-
Job Description Student Assistant – Electronic Nose Systems Are you a Mechatronics student with a passion for sensors, embedded systems, and intelligent technologies? Join us in developing cutting
-
centers on developing a framework for controlling a robotic arm equipped with a cardiac ultrasound probe and complementary sensors. The goal is to enable autonomous placement of the probe on predefined
-
will: Develop and implement model-based and data-driven (AI) optimization algorithms for battery charging Integrate physics-informed models and data-driven tools to design health-aware charging protocols