Hosted over two weeks, this virtual program offers a range of specialist topics in statistical data science with overarching themes including Bayesian statistics, advanced Markov Chain Monte Carlo methods, likelihood-free inference, modern neural networks and dimension reduction for high dimensional data.
This year’s impressive expert speaker line-up draws upon the knowledge of national lecturers at the forefront of their fields, and attracts post graduate students, early career researchers, academics and industry professionals from all round Australia and overseas.
To maximise the experience, the school also features a number of program extras including social events, a special guest public lecture and a diversity in STEM panel event.
Participate online or join us at an event hub in selected states!
Managers, practitioners and researchers are, now more than ever, interested in extracting knowledge from data. However, as our appetite for answering more challenging questions grows, so does the complexity of the corresponding data analytics. Modern applications involving big data and/or complex mathematical models motivate the development of innovative data-focussed solutions that exploit the strengths of several quantitative fields, such as mathematics, statistics, machine learning and computer science. Data science is a broad term that encapsulates the use of at least one, often multiple, of these disciplines for solving problems informed by data.
The focus of this Winter School is on data science, skewed towards methods on the statistical side of the spectrum, but where skills in modern computing, machine learning and/or mathematics remain crucial. Attendees will learn about methods for fitting complex mathematical models to data, and extracting insight from big and challenging data sets.
Professor Gael Martin, Monash University
Dr Susan Wei, The University of Melbourne
Dr Robert Salomone, QUT Centre for Data Science
Dr Leah South, Queensland University of Technology
AMSI offers financial assistance for students from AMSI member institutions to cover program fee costs.