634 assistant-professor-computer-science-"https:"-"https:"-"https:" positions at Monash University
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
- Computer Science
- Medical Sciences
- Economics
- Engineering
- Business
- Arts and Literature
- Science
- Law
- Linguistics
- Materials Science
- Biology
- Education
- Mathematics
- Humanities
- Environment
- Philosophy
- Chemistry
- Psychology
- Sports and Recreation
- Earth Sciences
- Electrical Engineering
- Design
- Social Sciences
- 13 more »
- « less
-
. Working under the guidance of the Professor of the area, the role helps coordinate codesign activities, develop bespoke materials and surveys, and assist with data collection, analysis, and research
-
infancy is difficult. This PhD program aims at using state-of-the art multi-channel near infrared spectroscopy (NIRS) to assess the functional brain response of infants born preterm in long-term follow-up
-
offers a unique opportunity to contribute to the growth of emerging research excellence in nursing, while primarily supporting Associate Professor Innes and Associate Professor Jones in key research
-
the research outcomes, skilled workforce, technology and partnerships to improve human health locally and globally. Supervisory team The principal supervisor will be Professor Danielle Mazza AM FAHMS . Professor
-
for the role, as determined by the University. Enquiries: Associate Professor Bernhard Mueller, School of Physics and Astronomy, Faculty of Science, bernhard.mueller@monash.edu Position Description: Research
-
for the role, as determined by the University. Enquiries: Professor Mehmet Yuce, Electrical and Computer Systems Engineering Position Description: Research Fellow Applications Close:Monday 13 April 2026, 11:55pm
-
discover them The Opportunity The Department of Electrical and Computer Systems Engineering at Monash University is seeking a motivated Level A Research Fellow for a 2 year research-only appointment. A Level
-
the ARC Discovery Project “Designing Dignity: Civic equity through public bathroom architecture” funded by the Australian Research Council Discovery Project awarded to Professor Nicole Kalms and Professor
-
analysis, contextual analysis, audio feature extraction, and machine learning models to identify and assess potentially dangerous content. Similarly, computer vision models are implemented to analyse images
-
teaching and inspiring future marketers? The Department of Marketing in the Faculty of Business and Economics invites applications from industry professionals to join our sessional teaching team