90 parallel-computing-numerical-methods positions at University of Southern Denmark in Denmark
Sort by
Refine Your Search
-
demonstrating high-performance devices: Numerical simulations, device fabrication in the cleanroom (relying on international partners), and device characterization (relying on the facilities in the CIE lab
-
genomics tools in combination with computational biology approaches to generate comprehensive models of gene regulation during development and diseases such as cancer and neurodevelopmental disorders
-
by employing state-of-the-art neurobiology in combination with genomics and computational biology approaches. The research in Tiwari lab is supported by a cutting-edge research environment as
-
emissions from agriculture to support the green transition. Protein chemistry, enzyme research, and screening of compounds against target proteins and bacteria. Upscaling of biochemical processes and methods
-
, theory, and methods of the PhD project is up to the candidate. It is highly recommended that interested candidates contact one of the project leads to discuss their PhD proposal prior to application
-
their academic profile in LSP will be to work on so-called “zero programming” methods and tools to define a digital workflow from product design to production operations. Based on analyzing digital product
-
, Denmark’s famous fairytale author, the city is home to a vibrant and creative population that hosts numerous festivals and markets throughout the year. Application procedure Applicants are advised to read
-
well as curriculum development in the department’s MA study program Education (Pædagogik ), the continuing master’s program for upper secondary school teachers and leaders (Master i gymnasiepædagogik ) and the
-
University of Southern Denmark, IMADA - Department of Mathematics and Computer Science Position ID: SDU -ASSISTPROF1 [#26735, 3023] Position Title: Position Type: Non tenure-track faculty Position
-
courses—preferably at the master's level. You should be familiar with the methods and tools used in the courses Data Driven Decision Making (DS810) and Applied Machine Learning (DS807), including practical