-
of statistical signal processing, inference, machine learning and dynamical systems theory to develop new semi-analtyical filtering approaches for state and parameter estimation to infer neurophysiological
-
your career in academia. The Department of Econometrics & Business Statistics at Monash University is a global powerhouse with a dynamic team of approximately 50 leading academics and a similar number of
-
of Violence against Women (CEVAW) plays a vital role in analysing and visualizing statistical data to support research on violence against women. They provide advanced analytical services, consult with
-
) and play a crucial role in the design, conduct and analysis of ground-breaking clinical trials. This position will engage across all trial phases, from Phase I to Phase IV, contributing to statistical
-
research. Requirements Doctoral qualification in a relevant discipline or equivalent research experience. Proven skills in statistical analysis, manuscript preparation, and research proposal writing with a
-
statistical analysis skills and a solid publication record where you'll contribute to the academic discourse surrounding addiction research. If you're passionate about utilizing neuroimaging and
-
statistical software Knowledge of Good Clinical Practice requirements and adherence to research guidelines Experience conducting research involving participants with chronic health conditions If you're ready to
-
should have: Doctorate in relevant discipline, proficient in statistical analysis and manuscript preparation Strong interpersonal skills, teamwork, positive attitude Teaching experience, ability
-
or methodologies you have experience with, especially in the context of behaviour change research (e.g. statistics, evidence reviews, behaviour identification and prioritisation, interventions, etc) How you manage
-
. economics, psychology), or related fields. The ideal candidate will have substantial analysis experience, including a high level knowledge of statistical analysis techniques, and experience working with large