14 parallel-processing-bioinformatics uni jobs at Czech Technical University in Prague
Sort by
Refine Your Search
-
15 Apr 2026 Job Information Organisation/Company Czech Technical University in Prague Department Department of Process Engineering Research Field Technology » Materials technology Researcher Profile
-
job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Selection procedure
-
education (e.g., adjusted working conditions, lifelong learning, internships, mobility opportunities). Selection process Application The application must be submitted in English, Czech, or Slovak, and must
-
insurance, a Multisport card, and childcare facilities at CTU. Selection process Please submit your application by email to: personalni@fjfi.cvut.cz Your application should include: • copy of the diploma from
-
the correlation between the spin of a nucleon and the transverse motion of its partons. Understanding TSSAs helps us probe the role of gluons and their spin-related dynamics in hadronic processes. Measurements
-
15 Apr 2026 Job Information Organisation/Company Czech Technical University in Prague Department Department of Electromagnetic Field Research Field Technology » Computer technology Researcher
-
balance between radiation and recombination processes, which leads to the suppression of growth in the number of gluons. The behavior of the gluon distributions in this limit is described via the Balitsky
-
scanning and Time-of-Flight (ToF) sensors, to enable robust material identification directly in non-laboratory, real-world environments. The acquired data will be processed using advanced machine learning
-
machine learning pipelines may embed differentiable physical models, and ii) the learning process may be informed by constraining the predicted variable to obey physical laws; we can see it as physics
-
data, numerical simulations, and data-driven approaches to uncover structure–property–process relationships and enable predictive modeling. Particular emphasis will be placed on state-of-the-art