12 network-coding-"Chung-Ang-University" Postdoctoral positions at University of London
Sort by
Refine Your Search
-
Listed
-
Field
-
management of anemia, a leading causes of morbidity and mortality globally. The postholder will be part of the international BloodCounts! Consortium, a collaborative network of partners across multiple UK
-
University of London. Our teams also partner with a national network of researchers, clinician researchers and industry to translate biomedical data into the clinic. About You We are seeking an experienced
-
the use of code repositories and ability to work in a collaborative environment. About the School The School of Physical and Chemical Sciences consists of the Department of Physics and Astronomy and the
-
About the Role This Postdoctoral Research Associate (PDRA) position is part of an exciting EPSRC-funded programme, "Enabling Net Zero and the AI Revolution with Ultra-Low Energy 2D Materials and
-
, or trans status or history. More information on our structures and initiatives around EDI, including information on staff diversity networks, can be found on our Equality and Diversity Intranet page .
-
, or trans status or history. More information on our structures and initiatives around EDI, including information on staff diversity networks, can be found on our Equality and Diversity Intranet page .
-
researchers at Queen Mary University of London (Dr Margherita Malanchini) and King’s College London (Professor Robert Plomin), contributing to a broader network of PhD students and postdoctoral researchers. Key
-
status, race, religion or belief, sexual orientation, or trans status or history. More information on our structures and initiatives around EDI, including information on staff diversity networks, can be
-
status, race, religion or belief, sexual orientation, or trans status or history. More information on our structures and initiatives around EDI, including information on staff diversity networks, can be
-
project is to develop a series of surrogate models focusing notably on Physics-Informed Neural Networks to emulate the process of sediment deposition, diagenesis, and potentially fracturing, working closely