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The School of Informatics, University of Edinburgh invites applications for a postdoc to undertake novel research at the intersection of computer vision and machine learning. The candidate will be
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students and 20 postdocs) and most successful language processing groups in the UK and has a strong global reputation. The research themes of the NLP group include but are not limited to NLP for social media
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, refer to https://ieeexplore.ieee.org/document/10274102 ) Federated Learning for Smart Home applications. (Reference: https://ieeexplore.ieee.org/document/9415623 ) Adversarial attacks on Large Language
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the work of dissemination through conference presentations and publications. You will work primarily with the Edinburgh PI but also in close consultation with the PI and postdoc in Bielefeld and also other
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Towards Responsible and Accessible Large Language Models Department of Computer Science PhD Research Project Directly Funded Students Worldwide Dr Cass Zhixue Zhao Application Deadline: 31 May 2024
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reinforcement learning, multi-agent learning, language model agents and causal learning are encouraged to apply. Inter-disciplinary research experience and project management experience are preferred. You will
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to customize how the web site looks or behaves for each user. This may include storing selected currency, region, language or color theme. Analytical cookies Analytical cookies help us improve our website by
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46 Faculty of Philosophy and Education Startdate: 01.10.2024 | Working hours: 40 | Collective bargaining agreement: §48 VwGr. B1 lit. b (postdoc) Limited until: 30.09.2027 Reference no.: 2028
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45 Faculty of Philological and Cultural Studies Startdate: 01.09.2024 | Working hours: 40 | Collective bargaining agreement: §48 VwGr. B1 lit. b (postdoc) Limited until: 31.08.2030 Reference
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team (PI, 2 postdocs, 2 Phd students) to design and execute laboratory and field studies. Designing experimental studies testing the computational model of religious decision-making. Data analysis