Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
Centrum Wiskunde & Informatica (CWI) has a vacancy for a 4-year PhD position (m/f/x) on the subject of Reliable AI-powered Data Analysis in collaboration with the University of Amsterdam. Interested
-
millimetre wave remote sensing instruments, and navigation payloads exploiting analogue, digital and optical onboard technologies; telemetry, tracking and control (TT&C) subsystems, payload data transmission
-
associated receiver technologies; advanced signal processing and estimation techniques; alternative PNT solutions such as LEO-PNT, positioning based on terrestrial links and hybrid GNSS; organisation
-
millimetre wave remote sensing instruments, and navigation payloads exploiting analogue, digital and optical onboard technologies; telemetry, tracking and control (TT&C) subsystems, payload data transmission
-
outcomes in the Netherlands and beyond. This data-driven project will use real-world data to examine how centralization affects equity in access, treatment patterns, and the integration of complex
-
with established causal models. Ultimately, you will design algorithms for causality-based analysis and counterfactual recovery of liveness violations. Information and application Are you interested in
-
the following information: Letter motivating your application for this position, which should also include a link to your master thesis (or this can be submitted separately) and the email addresses of two
-
and geolocation systems at system, space, ground and user segment level, including links, elements, equipment, system concepts, and all related techniques and technologies for Earth, space and Solar
-
. The application areas include smart energy systems, mechatronic systems, robotic systems, as well as, multi-agent autonomous systems. For more information about the DTPA group please use the following link: http
-
; collecting, assessing and summarising information on trends relating to state-of-the-art and sustainable infrastructure; driving innovation and enhancing production efficiency and resilience through artificial