70 coastal-process Postdoctoral positions at Technical University of Denmark in Denmark
Sort by
Refine Your Search
-
are full-time positions for a total period of 1 year each. Application procedure To apply, please read the full job advertisement by clicking the 'Apply' button Technology for people DTU develops technology
-
opportunity to be part of large-scale experiments tackling pressing societal challenges. You'll be involved in every stage of the research process—from experimental design to data analysis and publication—while
-
, particularly scaling relationships and their implications for catalyst design. Spectroscopy and Instrumentation: Hands-on experience in the design, construction, and operation of in-situ spectroscopic setups
-
communication skills in English. The following qualifications are a plus: Experience in audio signal processing or speech processing. Experience in condition monitoring or predictive maintenance. Flexibility and
-
Denmark and at DTU at DTU – Moving to Denmark . Application procedure Your complete online application must be submitted no later than 30 September 2025 (23:59 Danish time). Applications must be submitted
-
processing quantum information. The memories must be optically active so distant nodes in a network can be entangled via single photons emitted by the memories. Erbium in silicon is currently subject to
-
interest and documented skills and experience in using computer-based tools to analyse, simulate and predict capture performance of active and passive fishing gears. A track record of publishing in peer
-
process, and subsequently implement this infrastructure on top of an existing cloud infrastructure. You will play a key role in the project's development, ensuring technical tasks and teams work together to
-
in Denmark and at DTU at DTU – Moving to Denmark . Application procedure Your complete online application must be submitted no later than 15 August 2025 (23:59 Danish time). Applications must be
-
digital co-simulation platforms (e.g., Modelica-Python/Simulink) Applying machine learning and data-driven approaches to enhance the operation of district heating substations Participating in course