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materials. Develop and optimize materials for efficient hydrogen liquefaction. Analyze data and contribute to the publication of research findings. Collaborate with a team of researchers and engineers. Join
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) in the context of neural-symbolic systems Discrete optimization and/or Boolean satisfiability Exact and approximate model counting About Monash University At Monash , work feels different. There’s a
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determining the appropriate design pattern for a specific scenario, identifying relevant quality attributes for a particular design choice, and recognizing the optimal timing for implementing a refactoring
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at primary care and offer optimal use of scarce health system resources. The model will be trained using skin images (clinical and/or dermoscopic) to identify disease relevant features and accurately diagnosis
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contributing to final layer predictions. • Objective 3: Non-convex Optimization and Local Minima -- Study the theoretical foundations and empirical behaviors of deep neural networks in the context of non-convex
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-users interact with infrastructure and the built environment, improve diagnosis of risks and reduce the time required for maintenance, optimize the infrastructure performance, support information-driven
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, Weighted Partial MaxSAT, pseudo-Boolean optimisation etc.) over a fixed horizon, and solved optimally using off-the-shelf solvers. One important limitation of this learning and planning framework is the
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laboratory-based research experiments. To develop deep understanding of the processes and thus ensure students think through future work before commencing. To reduce wastage of consumables and optimize use
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issues in Mobile Apps) that have the largest impact on end-users and humanity. Finally, this project will leverage a multi-objective optimisation approach to find a set of optimal QA prioritisation
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determine optimal operating conditions through iterative testing and experimentation. Through this Project, Tronox aims to demonstrate its commitment to sustainable development, resource efficiency, support