61 postdoc-in-thermal-network-of-the-physical-building Postdoctoral research jobs in Australia
Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
Full time 20 month fixed opportunity. Located in the Civil Engineering Building on the Camperdown Campus Advance sustainable mining through granular material mechanics Base Salary Level A Step 6 - 8
-
Part time (4 day per week 0.8 FTE), fixed term until April 2027, located on the Camperdown Campus at the School of Psychology Exciting opportunity in the first Clinical Trials Network dedicated
-
analysis reports. Research publications in high-quality journals and conferences. This exciting role will contribute to the Centre for Augmented Reasoning’s objective to build world-class research and
-
Reasoning’s objective to build world-class research and engineering capability in machine learning while demonstrating the potential and impact of this knowledge for industries in Australia. To be successful
-
team, collaborate across disciplines, and build effective relationships. Ability to maintain a sound governance framework for research activities. Ensure appropriate ethics approval, reporting, and
-
, leadership, and collaboration a developing network of academic, industry, and professional partners. Pre-employment checks Your employment is conditional upon the completion of all role required pre-employment
-
relevant areas to understand both the palaeo-environmental evolution as well as to unravel the redox structure of the water column and investigate geochemical weathering proxies to help build a picture of
-
geochemical weathering proxies to help build a picture of how past plate tectonics controlled the earth surface systems. The successful candidate will be working on aspects of an Australian Research Council
-
focused on the challenge of accelerating ternary neural networks using FPGA devices. The successful candidate will have significant experience in machine learning, FPGA design and an outstanding track
-
ternary neural networks using FPGA devices. The successful candidate will have significant experience in machine learning, FPGA design and an outstanding track record in conducting machine learning research