Sort by
Refine Your Search
-
Listed
-
Country
- United States
- United Kingdom
- France
- Sweden
- Germany
- Italy
- Spain
- Poland
- Singapore
- United Arab Emirates
- Portugal
- Belgium
- Denmark
- Australia
- China
- Netherlands
- Worldwide
- Canada
- Hong Kong
- Ireland
- Romania
- Japan
- Andorra
- Austria
- Bulgaria
- Croatia
- Greece
- India
- Luxembourg
- Malta
- Armenia
- Europe
- Finland
- Mexico
- New Zealand
- Slovakia
- 26 more »
- « less
-
Field
- Computer Science
- Engineering
- Medical Sciences
- Economics
- Mathematics
- Biology
- Science
- Electrical Engineering
- Materials Science
- Business
- Chemistry
- Humanities
- Physics
- Psychology
- Environment
- Linguistics
- Philosophy
- Social Sciences
- Arts and Literature
- Design
- Earth Sciences
- Education
- Law
- Sports and Recreation
- 14 more »
- « less
-
to think algorithmically. Accurate and precise attention to detail. Excellent analytical, quantitative, and organizational skills. Appointment Information This is a 100% full-time Civil Service 5002
-
/specialty algorithms, the Scheduler critically evaluates the nature and urgency of scheduling requests to provide comprehensive clinical ambulatory scheduling for providers within the department/specialty
-
activities: developing and testing image processing algorithms and monitoring methodologies for photovoltaic panels; evaluating the performance and efficiency of photovoltaic systems under controlled and real
-
will be the efficient implementation of digital baseband processing leveraging algorithm-hardware co-design. More specifically, we will investigate low-complexity algorithms and hardware architectures
-
individuals whose work addresses substantive economic questions—such as causal inference in high-dimensional settings, algorithmic behavioral economics, forecasting economic indicators, or modeling complex
-
Reference Number AE2026-0030 Is the Job related to staff position within a Research Infrastructure? No Offer Description Portuguese version: https://repositorio.inesctec.pt/editais/pt/AE2026-0030.pdf CALL FOR
-
Physics based machine learning algorithm to assess the onset of amplitude modulation in wind turbine noise (with TNEI Group) EPSRC Centre for Doctoral Training in Sustainable Sound Futures PhD
-
reference features for machine learning (AI) algorithms. The successful candidate will work as part of a multidisciplinary team of archaeozoologists and mathematicians. The mission will be based at the CEPAM
-
efficiently, the candidate will develop algorithms capable of tracking resolvent modes as parameters vary, thus significantly reducing the overallcomputational cost. In the second and third years, the study
-
knowledge of R and Python programming languages in the areas of algorithmic trading and modelling of market risk; Specific Requirements other significant achievements (e.g., awards, scholarships) and