Sort by
Refine Your Search
-
Large Language Models for Knowledge Harvesting, Sharing, and Management Knowledge is a vital asset for individuals, organizations, institutions, and society. Large Language Models (LLMs) have the
-
network generations, 6G will evolve towards open and virtualized RANs (Radio Access Networks). While this evolution will bring many benefits, like breaking vendor lock-in, it may also introduce new security
-
-depth insights and available data and models. To stimulate adoption of your models, you will develop simulation models under uncertainty geared to knowledge development and retention in the complex
-
closely with police officers and scientists, thus benefiting from their in-depth knowledge, insights and expertise. Your research will be based on real-world cases related to e.g. narcotics, money
-
fellow PhD students. Together, you will share knowledge to tackle model-based decision-making from different perspectives. At TU Delft, you will join the driven and internationally diverse team of some 20
-
papers and disseminate your findings and knowledge in relevant communities. Your research is part of a multi-disciplinary drive towards stable, reliable sustainable energy systems. Which is why you’ll work
-
reliance on radios and cameras for navigation raises safety and privacy concerns. These systems can fail, causing accidents, or be misused for unconsented recordings. We propose a radically new
-
opportunity to apply modelling skills, logistics and aviation knowledge to conduct impactful research. Working closely with a team of experienced professionals, including problem owners and researchers, you
-
papers and disseminate your findings and knowledge in relevant communities. Your research is part of a multi-disciplinary drive towards stable, reliable sustainable energy systems. Which is why you’ll work
-
professors, lecturers, project managers, other PhD candidates, and postdocs from diverse backgrounds, we employ a wide range of model-based and empirical methods to analyse data. In particular, utilizing PIML