Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
. The consortium consists of world-class scientists with competences spanning chemistry, biochemistry, computer science, and machine learning. All fifteen doctoral candidates will work with two research groups, and
-
partners in exploring dilemmas, controversies, and paths to sustainable and desirable futures. We strive towards creating best possible conditions for PhD fellows, i.e., flexible work hours and opportunities
-
advantageous. The candidate should be highly motivated, able to work independently and should be confident in both written and spoken English. The applicant should strive towards scientific excellence, be
-
partly in the form of 48 state education grant portions (in Danish: “SU-klip”) plus salary for work (teaching, supervision etc.) totalling a workload of at least 150 working hours per year. A PhD grant
-
state education grant portions (in Danish: “SU-klip”) plus salary for work (teaching, supervision etc.) totalling a workload of 150 working hours per year. A PhD grant portion is currently (2025) DKK
-
for energy applications. You will work in a highly collaborative and interdisciplinary environment, which comprises, among others, experts with backgrounds in physics, chemistry, materials, and computer
-
interdisciplinary and we expect that you enjoy teamwork and are good at coordinating your work with your colleagues. Approval and Enrolment The scholarship for the PhD degree is subject to academic approval, and the
-
teaching plays a considerable part in our identity, and we run three educational programmes. In our approach to working with society, industry, and policymakers, we are a team-oriented, knowledge-sharing
-
documents. We recommend that as an international applicant you take the time to visit Work in Denmark where you will find information and facts about moving to, working and living in Denmark, as
-
project focused on dissecting how the various cellular tasks of MYC are orchestrated in individual cells. You will integrate loss- and gain-of-function tools (e.g., CRISPR/Cas and degron systems) with a