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Engineering, Bioengineering, and related fields. 4. Other Requirements: Experience in the use of artificial intelligence tools, computational modeling, and advanced imaging for the development of biomaterials
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of SCADA data, Artificial Intelligence algorithms, and the Digital Twin of photovoltaic assets, allowing the identification of anomalies and patterns indicative of imminent failures.; ; The main objectives
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: Computer Science Admission requirements: • Be enrolled in a degree program in Artificial Intelligence, Computer Science, Computer Engineering or related field; Research Initiation Fellowships (BIIs) can only
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INESC TEC is accepting applications to award 4 Scientific Research Grant - NEXUS - CTM (AE2025-0564)
transmission mechanisms using Regenerative Artificial Intelligence; - Develop a prototype for image transmission based on regenerative AI semantics; - Integrate and test the solution with an emulated HF testbed
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artificial intelligence - Evaluation of interface design, usability assessment, and user experience - Autonomy Minimum requirements: - Minimum score of 70 points in the curriculum assessment. - Availability
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national, foreign and stateless candidate(s) holding a MSc degree in Computer Science, Computer Engineering, Human–Computer Interaction, Virtual Reality, Artificial Intelligence, or closely related fields
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manipulators capable of adjusting their trajectory and resistance in real time in response to variable external loads. This module should integrate learning algorithms based on artificial intelligence, allowing
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optimize reimbursement claims with health insurers. The solution will be based on advanced hyper automation and generative artificial intelligence techniques, focusing on efficiency in terms of performance
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noise and sensor uncertainties. Applied Artificial Intelligence and Data AnalysisProficiency in multivariate analysis techniques (PCA, regression, clustering) and predictive risk models; Experience with
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artificial intelligence, as well as knowledge in programming languages and libraries such as Python, PyTorch (or similar), and Pandas/Darts/Prophet/sktime or similar. Taking into account paragraphs 1 and 2