Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
to work on a project investigating mechanosensing in flies (Diptera). This post will focus on using detailed wing geometry models and free flight kinematic measurements in computational fluid and structural
-
datacentre hardware, including environmental monitoring. You will have experience of making changes to live systems using best practice methods, and proactive monitoring of systems to ensure good uptime
-
essential, along with a willingness to learn new systems. Strong organisational and numerical skills are key, as are excellent interpersonal abilities to build effective working relationships across
-
the department’s undergraduate and postgraduate taught programmes. Teaching duties will primarily involve working within a small team to deliver our Research Methods and Statistics courses under the direction of our
-
software packages. They also must have demonstrated knowledge of longitudinal data analysis methods, and an understanding of sample size calculations. Further particulars are included in the job description
-
About the Role The purpose of this role is to provide mixed methods and evidence synthesis research support for a Gates funded project examining the utility of iron preparations for maternal anaemia
-
exciting project that will develop new approaches to handle missing data in statistical analyses based on machine learning methods. The Research Fellow will be based in the Department of Medical Statistics
-
for the RVC. The successful post holder will have the ability to communicate confidently with a wide range of stakeholders and have a high level of customer focus. You will be able to work methodically, follow
-
works in partnership with subject matter experts across the institution, both in areas of management information and EDI, to create high quality reporting methods and outputs. The role holder will have
-
epidemiological or econometric methods, using R software package, and an understanding of techniques used in agent-based modelling. The post is full-time 35 hours per week, 1.0 FTE and fixed term until 31 December