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LLM Agents: Foundations, Attacks, and Defenses”. Your work assignments Large language model (LLM) agents represent the next generation of artificial intelligence (AI) sys- tems, integrating LLMs with
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the present, from cultural or critical perspectives is an advantage. This employment requires fluency in English, both spoken and written. Given the available teaching assignments and the research potential
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also include teaching or other departmental duties, up to a maximum of 20 per cent of full-time. Your qualifications Eligible applicants must have completed a Master of Science degree, a research
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area of AI security, on the topic of “Memory Poisoning in LLM Agents: Foundations, Attacks, and Defenses”. Your work assignments Large language model (LLM) agents represent the next generation of
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priority research areas. Since 2008 REMESO’s PhD education is integrated with an international Graduate School in Migration, Ethnicity and Society. More about the REMESO research environment here https
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work may also include teaching or other departmental duties, up to a maximum of 20 per cent of full-time. The projects descriptions for the announced positions: Automated Security Testing for Critical
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-at-liu/employee-benefits . More information on the Swedish social insurance benefits system can be found at https://www.forsakringskassan.se/english/moving-to-working-studying-or-newly-arrived-in-sweden
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equations. Your main research assignments will be to develop new models and methods for generative sampling and Bayesian inference. You will be jointly supervised by Assistant Prof. Zheng Zhao (https
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solutions across the natural sciences. Your workplace You will be employed at the Department of Mathematics in the Division of Applied Mathematics, https://liu.se/en/organisation/liu/mai/tima . The research
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are part. Your work may also include teaching or other departmental duties, up to a maximum of 20 per cent of full-time. Your qualifications You have graduated at Master’s level in machine learning