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Research Infrastructure? No Offer Description Ref.: 535006 Work type: Full-time Department: Centre for Advancement of Chinese Language Education and Research within the Faculty of Education (10088
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to apply. PhD certificates must be submitted shortly beforehand. Language skills English: TOEFLiBT 80 or IELTS 6.0 or German: DSH2 or TestDaF 14 or onDAF Candidates who have none of the listed certificates
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date of September 1, 2026, or as soon as possible thereafter. We seek a scholar in East Asian art history who will further research related CAEA’s ongoing Dispersed Chinese Art Digitization Project
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on Chinese building manuals on architecture and hydraulic works and questions whether they merely recorded existing practices, enabled the emergence of a common language, or even stimulated innovation. Since
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appliances). Explore the integration of large language models and reinforcement learning for real-time optimization, fault self-recovery, and production scheduling in industrial processes. Publish research
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) or discrete manufacturing (e.g., electronics assembly, automotive, home appliances). Explore the integration of large language models and reinforcement learning for real-time optimization, fault self
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Institute of Theoretical Physics, Chinese Academy of Sciences, Personnel Office Position ID: ITPCAS-Personnel Office-SRA [#31194] Position Title: Position Type: Postdoctoral Position Location
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Leverandør: .hsforms.com Databehandlingsansvarlig: Formål: Saves the selected language for the website. Utløpsdato: 2 dager Navn: jobbnorge.language Leverandør: .jobbnorge.no Databehandlingsansvarlig: Piwik
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the SOAS Gallery, University of London International collaborations with the University of Maryland, the Chinese University of Hong Kong, CAFA Beijing, Tsinghua University and the Asia Society Australia A
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, energy) or discrete manufacturing (e.g., electronics assembly, automotive, home appliances). Explore the integration of large language models and reinforcement learning for real-time optimization, fault