Sort by
Refine Your Search
-
About the Project A fully funded PhD scholarship is available at UCL Electronic & Electrical Engineering (4 years, home tuition fees covered, stipend provided). Exceptional international candidates
-
/10.1126/sciadv.adr1758 Highly motivated students from Physics, Chemistry or Materials Science Departments are strongly encouraged to apply for this post. The candidate should have, or be about to receive
-
of industry and healthcare partners, a rare opportunity to develop a highly sought-after interdisciplinary skill set that is in demand across both academia and industry. Training and Student Development
-
Student Development The successful applicant will gain expertise in: Biophysical imaging (AFM, microscopy) Microbiology and molecular biology RNA sequencing and data analysis Interdisciplinary collaboration
-
/population genetics (van Dorp Lab) • Environmental microbiology, phage biology and metagenomics (Santini Lab) Both labs promote open research culture and have a strong track record of PhD supervision
-
(SONATA, EP/V028626/1) and brings together expertise in microfluidics, fluid dynamics, nanoparticle engineering, and dental microbiology. Approach and Methods: Engineer in vitro models of bacterial biofilm
-
Abstract: Medical device-associated infections (MDAIs) are a major clinical and economic burden, particularly in orthopaedics where implant-related infections can lead to severe complications, including
-
techniques Microbiology and molecular biology Enzymology and antimicrobial screening Training will take place across three state-of-the-art laboratories, with opportunities for collaboration, publication, and
-
for engineering novel antimicrobial peptides. The findings could lead to the development of new therapeutic scaffolds with applications in infectious disease, biotechnology, and immunotherapy. The project also
-
: Structural biology, including cryo-EM Biochemical assay development Medicinal chemistry and lead optimisation NMR spectroscopy and fragment-based drug discovery Machine learning and active learning