Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
, PlasmaObs, LCRS, Moonlight and Henon. You are encouraged to visit the ESA website: https://www.esa.int/ Field(s) of activity/research for the traineeship Many challenges and trends will affect the operations
-
provides financial support, technical expertise, and/or networking. Whilst GNSS (Global Navigation Satellite Systems) is the most successful PNT technology today, the geo-political context is showcasing
-
, global ocean circulation and height systems. In addition, the temporal variations of gravity and the geoid help to measure mass exchange processes in the Earth system. Knowledge about the time-varying
-
aperture synthesis) and testing (calibration and performance verification). You are encouraged to visit the ESA website: http://www.esa.int Field(s) of activity/research for the traineeship As a trainee, you
-
conferences and workshops on topics selected by / interesting to its members; preparing future generations of services in terms of space transportation. You are encouraged to visit the ESA website: http
-
research fellow within the Φ-lab, you will devote most of your time to the agreed research topics, but will also support the Φ-lab’s industrial and internal activities, mentor members of our research network
-
Section, the French Translation Section and the German Translation Section. Candidates interested are encouraged to visit the ESA website: http://www.esa.int Field(s) of activity for the internship Topic
-
activities. Candidates interested are encouraged to visit the ESA website: http://www.esa.int Field(s) of activity for the internship Topic of the internship: Improving Learning from Experience in Space
-
to visit the ESA website: http://www.esa.int Field(s) of activity for the internship Topic of the internship: Space Debris Mitigation Space debris is defined as “All non-functional, human-made objects ... in
-
are encouraged to visit the ESA website: http://www.esa.int Field(s) of activity for the internship You can choose between the following topics: 1) Topic 1: Machine Learning for recognition of planetary materials