463 engineering-computation-"https:"-"https:"-"https:"-"https:"-"Simons-Foundation" positions at Monash University
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models for deployment in real-world driving scenarios. Required knowledge First-class bachelor’s honours or master’s degree in computer science, engineering, or a related field. Alternatively, second upper
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potential remedial approaches - will be explored in this research program and they include (as examples): variability in staining outcomes across different stains and different sites (even within a given
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Master of Commerce Scholarship Sir John Monash Fee Scholarship The Master of Commerce is a research-oriented programme preparing students for a PhD and an academic career. Offered as part of
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#1 Chemical Engineering Department at Monash University and be part of a pioneering research initiative at the intersection of materials science, automation, and artificial intelligence. As a
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Technology: Theory and Applications, pages 123–149. Springer, 2010. O. Biran and K. McKeown. Human-Centric Justification of ML Predictions. In IJCAI2017, pages 1461–1467, 2017. L. Cavazos Quero et al.˙ Jido: A
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guardrails or clear precedent, humanity now contends with a technology that has potential to reshape valued parts of our social life, individually and collectively. In assessing the impacts of generative
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Dream. Design. Make. Monash Makerspace is where creativity meets cutting-edge technology — a vibrant hub for innovation, hands-on learning, and real-world problem solving. From student-led projects and
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(OCIO), you'll play a key role in supporting user-facing technology including desktops, printers, and communication systems in a collaborative, service-driven environment. Key Responsibilities Provide
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Remuneration: Academic Roles: $118,974 - $141,283 pa Level B (plus 17% employer superannuation) Program Coordinator - $106,789 - $117,128 pa HEW Level 07 (plus 17% employer superannuation) Amplify your impact at
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. Required knowledge Strong background in machine/deep learning, computer vision, or applied statistics. Solid programming skills in Python and experience with deep learning frameworks (e.g., PyTorch