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multilingual children with limited exposure to the societal language, we will map the relationship between these skills and multimodal language processing. PhD Position 1 -- Multimodal Attention Processing:This
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We are seeking creative and energetic candidates with strong experience in multimodal machine learning and human behavior analysis and modeling for a one-year Postdoctoral position. Using recent
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electrophysiology (e.g., Neuropixels) Analyze and integrate multimodal datasets to link synaptic interactions to visual response properties Contribute to a collaborative lab culture, including mentoring students and
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multimodal interaction. Our research aims to bridge the gap between visual perception and actionable assistance, with applications including: · Video-based skill coaching and instruction
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The Advanced Photon Source (APS) (https://www.aps.anl.gov/ ) at Argonne National Laboratory (Lemont, Illinois, US (near Chicago)) invites applicants for a postdoctoral position to build a physics
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, control, and interaction for real-world robotic systems Deep learning, multimodal learning, or large-scale AI systems Demonstrated experience in robot deployment, experimentation, and applied AI development
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, and multimodal dissemination. Publish high-quality articles and engage in public and academic outreach. Contribute to multimodal outputs (e.g., photography, short films, sound ethnography). Contact
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Postdoctoral Fellow in Anthropology: Meat, Infrastructure, and Zoonotic Risk on Chinas Belt and Road
health officials to trace multispecies and institutional relations. Participate in comparative workshops and contribute to multimodal dissemination (e.g. photo, film, web). Publish peer-reviewed articles
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(MaaS), electric vehicles, artificial intelligence in travel behavior modeling and multimodal transportation network analysis. The person will also interact with, mentor, and assist graduate and
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homogenization in published research. The project combines micro-ethnographic, multimodal analyses of writing processes (e.g. keystroke logging, screen capture, stimulated-recall interviews) with corpus-based and