-
PhD Studentship: Centre for Doctoral Training in Composite Materials, Sustainability and Manufacture
. The occurrence of defects is a complex problem involving many factors. A combination of statistical tools and advanced machine learning techniques will be used to help develop mitigation strategies to avoid over
-
(CPRD) and Hospital Episode Statistics to identify activity related to the treatment of community acquired pneumonia. This will require identifying relevant treatments and their associated Health Resource
-
generic career-development opportunities (e.g., patient and public involvement and engagement (PPI-E), dissemination, statistics). Further information: Applicants should have either: a minimum of a 2.1 in a
-
occurrence, aetiology, outcomes, and real-world impact. The student will be supported by a supervisory team including Professors in hepatology and epidemiology, and experts in computational statistics and
-
well as more generic career-development opportunities (e.g., patient and public involvement and engagement (PPI-E), dissemination, statistics). Further information: Applicants should have either: a minimum of a
-
sequencing, qRT-PCR, western blotting, bioinformatics, ELISA, cell culture, statistics, and literature reviews. A working knowledge of these techniques is therefore desirable. We will compare subtypes, detect
-
performance and green innovation. It also explores how these effects change when combined with environmental regulations and innovation incentives. The project will employ statistical analysis and econometric
-
statistics, social sciences, health economics, health psychology, and will be expected to complete a PhD during the award period. Guidance notes can be found below, along with details of the specific research
-
changes in tinnitus impact. This project will require large scale data collection across multiple settings and platforms, and interrogation of the data using a range of advanced statistical techniques
-
PhD Studentship: Leverhulme Trust PhD project: Lawn grass microbial fuel cells for widespread energy
statistical skills. Beyond scientific expertise, the program hones teamwork, critical thinking, and time management, offering scholarly exchanges within a vibrant PhD community. This comprehensive skill set