125 coding-"https:"-"FEMTO-ST"-"CSIC" "https:" "https:" "https:" "https:" "https:" "https:" "Dr" "P" positions at Monash University in Australia
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. Enquiries: Dr Monica Wehner, Senior Manager, Student Conduct and Complaints, +61 3 9905 1473 Position Description: Student Complaints Adviser Applications Close: Monday 23 March 2026, 11:55pm AEST Supporting
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, academic achievements, work history and references A copy of your academic transcript(s) (degree certificates and transcripts) Enquiries: Dr Karen Little, karen.little@monash.edu , Business Manager, ITTC
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– expert in neonatal brain injury at Monash University, and Dr Robin Laycock – vision neuroscientist at RMIT University. Other co-supervisors will depend on the project focus, and may include supervisors
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by the University. Enquiries: Dr William Roman, Senior Research Fellow, +61 3 9902 9611 Position Description: Research Fellow Applications Close: Sunday 22 March 2026 at 11:55pm AEST Supporting a
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/C++) computer codes implementing a cryptographic algorithm. Although desired, background in advanced cryptography is not a must. Application of a PET algorithm to solve a real-life problem: This
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contingent upon the satisfactory completion of all pre-employment and/or background checks required for the role, as determined by the University. Enquiries: Dr Menik Tissera, Senior Manager, Analysis and
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be enrolled at Monash University and spend the majority of the time at the Monash Institute of Pharmaceutical Sciences under the supervision of Dr Anh TN Nguyen, ARC DECRA Fellow, Monash Institute
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-employment and/or background checks required for the role, as determined by the University. Enquiries: Dr Candice Menidis, Senior Director, Candice.Menidis@monash.edu Position Description: Executive Assistant
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, jointly supervised by Dr Verity Trott (Monash University Australia), Dr Arran Ridley and Dr Dyah Pitaloka (Monash University Indonesia). The wider research program investigates how digital infrastructures
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contrastive self-supervised learning task to learn from massive amounts of EEG data. Frontiers in human neuroscience. [2] https://www.emotiv.com