Sort by
Refine Your Search
-
Category
-
Program
-
Field
-
related discipline with significant relevant experience. Have extensive experience with biological mass spectrometry techniques and chromatography. Possess strong skills in handling large data processing
-
), you'll play a pivotal role in a large, transdisciplinary project funded by the One Basin Cooperative Research Centre. You'll have the opportunity to shape the future of digital irrigation in the Murray
-
agricultural extension, education, and economics, contributing to a large transdisciplinary project funded by the OneBasin Cooperative Research Centre. This role offers you the opportunity to make significant
-
students Excellent communication skills and the ability to collaborate across disciplines For further information please refer to the attached PD. What we offer you! We offer the opportunity to be part of a
-
Position Number: 0065195 Location: Parkville Role type: Full-time; Continuing Faculty: Engineering and Information Technology School: Computing and Information Systems Salary: Academic B or C: Level
-
interpretation of plant imaging data, in order to co-author publications in high impact journals, in accordance with the research expectations of the University of Melbourne. Provide technical
-
the provision of research support activities, including assisting with experiment designs, sample preparation, sample tracking, data acquisition, analysis/interpretation, presentation and documentation
-
experience in managing activities related to infectious diseases, large data, or bioinformatics (desirable). For further information please refer to the attached PD. What we offer you! We offer the opportunity
-
, respect, integrity, and accountability. For further information please refer to the attached PD. What we offer you! We offer the opportunity to be part of a vibrant community and enjoy a comprehensive range
-
through evidence-based research and policy reform. Your responsibilities will include: Lead Quantitative Research: Design and conduct analyses using large, complex datasets like PLIDA and HILDA to address