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, speech, images, and physiological signals. Preferred Experience: The lab highly values candidates with one or more of the following experiences: Human-Centered Applications: Familiarity applying ML in
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separation from frameworks. Excellent verbal and written communication skills, and excellent record of research accomplishments are preferred. Experience with modern sampling techniques such as metadynamics
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, telecommunications or related field. Other requirements include: Strong background in wireless communication systems and networks Expertise in physical layer and MAC layer design for wireless systems Proven track
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to recruit a Post-Doctoral Associate (PDA) who will conduct research on the physical layer design of optical wireless communication systems as enablers of wireless access/backhaul of 6G and beyond networks
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the Job related to staff position within a Research Infrastructure? No Offer Description Description The Division of Engineering and the Center for Interacting Urban Networks (CITIES) at New York
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of digital traces (e.g., Yelp, Airbnb, Stack Exchange) and virtual lab experiments to study how ingroup favoritism and group boundaries coevolve in multiplex communities; how attribute- and opinion-based cues
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assessment of environmental impacts of processes, such as life cycle analysis, is desirable. Strong attention to detail, excellent organizational skills, and exceptional verbal and written communication
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(PDA) to engage in cutting-edge research on the physical layer design of next-generation wireless communication systems, with a primary focus on 6G technologies. The research will particularly emphasize
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the area of statistical mechanics and percolation theory, materials modelling for fluid separation from frameworks. Excellent verbal and written communication skills, and excellent record of research
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networks and deep learning Foundations of reinforcement learning and bandit algorithms Mathematical and algorithmic perspectives on large language models Statistical learning theory and complexity analysis