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planning -Semantic-based Exploration -Source localization -Perception in sensor-degraded environments: -Localization in smoke and dust filled environments -Scene awareness -Biometric/triage evaluations, etc
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evaluate the quality of various construction materials for these purposes, as well as to evaluate of the environmental impact of reusing/recycling construction materials for new buildings, e.g. through Life
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environmental scenario analyses, evaluating different implementation levels of the energy management tool with respect to energy use and greenhouse gas emissions. Design and carry out workshops and stakeholder
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active in the specific research field. High emphasis will be put on personal qualifications required for the project. In filling these positions, we aim to recruit the persons who, in a combined evaluation
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applicable, other publications. A reference letter from a person who can evaluate your academic potential. Contact information (name, phone numbers and email) of two additional references. Please ensure
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studies related to the project. The overall goal of the project is to synthesize new energy storage materials, evaluate the properties and develop high performance battery. To achieve the goal, you need
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embodied AI agents can dynamically adapt to group behaviors and learning needs The project will combine observational studies, interaction design, and experimental evaluations to develop embodied AI-driven
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evaluations to support your progress. These PhD positions are full-time employment with a competitive monthly salary and full social benefits (e.g., parental leave and compensation for sick leave) for up
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into two main areas: (1) material development and characterization to ensure optimal sensing and mechanical performance, and (2) structural evaluation of SS-FRCMs under environmental stressors such as freeze
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introduces new and underexplored vulnerabilities to network-based threats. The goal of this research is to uncover such threats, evaluate their impact on training performance and model integrity, and develop