Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Field
-
the fields of cloud computing, computer networking and immersive systems to develop elastic and cost-efficient cloud-based AI pipeline to tackle climate change and support sustainability. Some of the tasks
-
the fields of cloud computing, computer networking and immersive systems to develop elastic and cost-efficient cloud-based AI pipeline to tackle climate change and support sustainability. Some of the tasks
-
of characteristics such as age, culture, different ideas and perspectives, disability, ethnicity, first-generation status, familial status, gender identity and expression, geographic background, marital status
-
for three consecutive periods (2014-2018 and 2018-2022 and 2023-2026). ICN2 comprises 19 Research Groups, 7 Technical Development and Support Units and Facilities, and 2 Research Platforms, covering different
-
technology. ▪ Close connection to the activities of the Munich Quantum Valley with its main goal to build a quantum computer based on different platforms, to develop suitable algorithms and applications, and
-
. The Studentship will include a bursary (€16,000) and EU fees. For non-EU applicants, a non-EU fee waiver may also be available, but this cannot be guaranteed (a difference of approximately €6000p.a.). Selection
-
, combining knowledge from different domains to create new ideas, and take a data-driven and probabilistic approach to testing and implementing new ideas. > Team Mindset - We want people who understand 1+1 > 2
-
, combining knowledge from different domains to create new ideas, and take a data-driven and probabilistic approach to testing and implementing new ideas. > Team Mindset - We want people who understand 1+1 > 2
-
the verbalization and automatic detection of emotions across languages’. In this project, you will investigate and compare emotional language use in different languages using methods from computational linguistics
-
focus on how interactions between species at different trophic levels shape these responses. The project combines (1) analysis of long-term datasets to quantify historical changes in the distributions