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-of-the-art models for computer vision based on Machine Learning. Work plan: - Analysis and study of existing resources. - Analysis of the state of the art in universal adversarial attacks on computer vision
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-of-the-art models for computer vision based on Machine Learning. - Analysis and Study of existing resources; - Analysis of the state of the art in adversarial attacks and adversarial training and their
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assignment of a research grant, with one position(s), under the project COMPETE2030-FEDER-00819700 | 16914, title W2R - From Waste to Resource: Bioprocesses for recycling mining industry waste in alignment
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resources VI.III - In addition to the above amounts, voluntary social security (SSV) is included when the grant has a duration of six months or more, corresponding to the first level, if the candidate opts
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sending an email to the Human Resources Management Service at: sgrh@uc.pt . XVI - In compliance with subparagraph h) of Article 9 of the Constitution, the University of Coimbra, as an employer, actively
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- The full competition process can be consulted by candidates, subject to prior scheduling, by sending an email to the Human Resources Management Service at: sgrh@uc.pt . XVI - In compliance with subparagraph
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, the next candidate on the final classification list will be notified. XV - The full competition process can be consulted by candidates, subject to prior scheduling, by sending an email to the Human Resources
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sending an email to the Human Resources Management Service at: sgrh@uc.pt . XVI - In compliance with subparagraph h) of Article 9 of the Constitution, the University of Coimbra, as an employer, actively
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sending an email to the Human Resources Management Service at: sgrh@uc.pt . XVI - In compliance with subparagraph h) of Article 9 of the Constitution, the University of Coimbra, as an employer, actively
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of an artificial intelligence (AI) solution for the diagnosis of invasive fungal infections, using microscopy images obtained in laboratory settings with limited resources. Leveraging deep learning models such as