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Field
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, program synthesis, semantic parsing, tool-augmented/agentic workflows) 2. Symbolic methods (logic/constraints, SAT/SMT, theorem proving, planning) * Strong software engineering skills (typically Python
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quality risks of AI-generated code, developing guardrails using static and dynamic analysis tools, improving prompt engineering and retrieval-augmented generation techniques, and ensuring traceability and
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fairness and skin-tone–aware pipelines (Fitzpatrick spectrum robustness, augmentation, bias audits). Partner with annotation teams using Encord (video) and our Segment Care image labels; shape active
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learning, parameter-efficient fine-tuning methods such as LoRA and adapter-based tuning, and retrieval-augmented generation (RAG) approaches. Familiarity with LLM architectures (e.g., GPT, BERT, T5
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adoption, and how these relationships might shape the consequences of AI technology transformation for the substitution or augmentation of workers. The researcher should have general expertise in technology
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deployment; designing equivariant data augmentation strategies within the digital twin to generate diverse, physically valid demonstrations for imitation learning, enabling robots to learn robust manipulation
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receptor augmented immune cells to target a broad range of malignancies. Understanding the basic mechanisms of tumorigenesis and cancer prevention, which will include the use of biochemistry, cell biology
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, and knowledge-augmented modeling. By studying and improving how LLMs are trained, calibrated, and deployed, the lab aims to build principled AI systems that can be integrated into high-stakes healthcare
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provides an opportunity for a recent KU law school graduate to augment their legal education by conducting significant legal and interdisciplinary research and to further develop his/her legal research
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framework for AI in gynecological oncology. We integrate symbolic knowledge representation (Ontologies/Knowledge Graphs) with Retrieval-Augmented Generation (RAG) and Large Language Models (LLMs) to create