Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- Netherlands
- United Kingdom
- Germany
- Sweden
- Denmark
- Norway
- France
- Spain
- Belgium
- Finland
- Portugal
- Poland
- Singapore
- Estonia
- Austria
- Italy
- Morocco
- Australia
- Czech
- Romania
- United Arab Emirates
- Vietnam
- Canada
- Switzerland
- China
- Cyprus
- Hong Kong
- Ireland
- Israel
- Japan
- Luxembourg
- Macau
- New Zealand
- Slovenia
- Taiwan
- Ukraine
- 27 more »
- « less
-
Program
-
Field
- Computer Science
- Engineering
- Medical Sciences
- Economics
- Electrical Engineering
- Materials Science
- Science
- Mathematics
- Biology
- Chemistry
- Earth Sciences
- Environment
- Humanities
- Business
- Education
- Linguistics
- Arts and Literature
- Design
- Law
- Philosophy
- Physics
- Psychology
- Social Sciences
- Sports and Recreation
- 14 more »
- « less
-
(ENDOTRAIN). Join Europe’s first doctoral network in digital endocrinology – integrating AI, sensor technology, omics, and clinical medicine to transform diagnosis and treatment of adrenal diseases. Digital
-
Regular Job Code 0001 Employee Class Civil Service Add to My Favorite Jobs Email this Job About the Job Job description: 90% - Field Data Collection, data processing and sensor deployment at both a karst
-
for collecting sub-daily, daily, weekly, monthly, and quarterly data, depending on measurement type and established methods; collection of new soil and water samples; installation of new environmental sensors and
-
, electric vehicles, industrial IoT, 6G communication, and wireless sensor networks, as well as research and education in Life Science, health technology, smart electronic sensors, and medical systems
-
localise greenhouse gas emissions over large open areas enabling organisations to achieve their net-zero climate goals. Our sensor products generate large volumes of data as they scan the environment
-
programme Reference Number AE2025-0600 Is the Job related to staff position within a Research Infrastructure? No Offer Description Portuguese version: https://repositorio.inesctec.pt/editais/pt/AE2025-0600
-
: Developing physics-informed neural networks (PINNs) for complex dynamical systems modeling and observer design Creating and validating digital twin architectures that incorporate physical laws and constraints
-
nascent university, with its state-of-the-art campus and infrastructure, has woven a sound academic andresearch network, and its recruitment process is seeking high-quality academics and professionals
-
well as postgraduate and undergraduate education within areas such as autonomous systems, complex networks, data-driven modeling, learning control, optimization, and sensor fusion. The division has extensive
-
, 6G communication and wireless sensor networks as well as research and education within life science, health technology, smart electronic sensors and medical systems. The Department of Electrical