Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
nanostructures using biophysical and biochemical techniques, as well as electron and fluorescence microscopy. Moreover, you will incorporate chemical components, peptides, PNAs, etc., into these nanostructures
-
opportunities will be available. You will be part of the Utrecht Graduate School of Life Sciences and will receive training, supervision, and guidance for both your research work and personal/professional
-
PhD position on Closed-loop testing for faster and better EM evaluation of complex high-tech systems
for DC02 at University of Twente, Netherlands. No second or third choice is required. Screening is part of the selection procedure. About the organisation The faculty of Electrical Engineering, Mathematics
-
work both independently and as part of a multidisciplinary team Is self-motivated, curiosity-driven and takes initiative Has strong organizational skills and excellent communication skills You also
-
will be allocated for your education and professional development, such as attending courses designed for PhD candidates. Furthermore, you will gain experience in teaching, dedicating a small portion of
-
, and participate in cohort-building activities, consortium meetings and trainings. In your daily work, you will be part of the Plant Ecology and Nature Conservation Group , a diverse, interdisciplinary
-
of the Expat Centre East Netherlands. Screening is part of the selection procedure. If you are shortlisted, you will be asked to submit an initial project idea that fits with the theme outlined in this vacancy
-
Doctoral Network addresses these challenges by developing a neuromorphic platform that is inherently self-aware in terms of energy consumption, secure operation, and system reliability. As part of
-
possible work-life balance with flexible working hours, various leave arrangements and working from home. You are also able to compose part of your employment conditions yourself. For example, exchange
-
Doctoral Network addresses these challenges by developing a neuromorphic platform that is inherently self-aware in terms of energy consumption, secure operation, and system reliability. As part of