Results 211 to 220 of about 82,192 (265)
Hybrid cosmetic dermatology: AI generated horizon
Diala Haykal +3 more
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Impact of an Ambient AI Scribe on Medical Student Objective Structured Clinical Examination Notes: Nonrandomized Clinical Trial. [PDF]
Talwalkar JS +4 more
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A Systematic Taxonomy of the Sunflower Optimization Algorithm: Variants, Hybridization Strategies, Applications, and Research Directions. [PDF]
Baştemur Kaya C.
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Reply to: Reassessing the evidence linking clinical leadership to AI deployment outcomes. [PDF]
Li Q +5 more
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Generative AI-Driven CNN Framework for Enhanced Lung Cancer Detection, Prediction, and Treatment: A Novel Approach to Overcoming AI Limitations. [PDF]
Bodicherla SS +2 more
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Designing a Hybrid AI Residency
Proceedings of the AAAI Conference on Artificial Intelligence, 2021The industry demand for AI experts raised to unprecedented levels in the last years. However, the increasing demand was not met by the number of skilled professionals in this area. As an effort to mitigate this problem, many companies create AI residency programs to provide in-house practical training. However, we argue that the usual dynamics based on
Felipe Leno da Silva +6 more
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A hybrid human–AI tool for scientometric analysis [PDF]
Solid research depends on systematic, verifiable and repeatable scientometric analysis. However, scientometric analysis is difficult in the current research landscape characterized by the increasing number of publications per year, intersections between research domains, and the diversity of stakeholders involved in research projects.
António Correia 0001 +5 more
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Crowd Science for Hybrid AI Applications
2021 IEEE International Conference on Service-Oriented System Engineering (SOSE), 2021Most AI applications are hybrid, that is, employ machines to make inferences but can fall back on humans when the algorithm is not confident enough. This is true for a wide class of applications ranging from self-driving cars to decision making and process automation in enterprise AI.
Taran, Ekaterina +2 more
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AI Planning for Hybrid Systems
Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence, 2023When planning the tasks of some physical entities that need to perform actions in the world (e.g., a Robot) it is necessary to take into account quite complex models for ensuring that the plan is actually executable. Indeed the state of these systems evolves according to potentially non-linear dynamics where interdependent discrete and continuous ...
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