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within the framework of project “Road Safety”, financed by Faculdade de Engenharia da Universidad do Porto, under the following conditions: Scientific Area: Civil Engineering Admission requirements
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the following conditions: Scientific Areas: Electrical and Computers Engineering, Informatics Engineering or Mechanical Engineering Admission requirements: Candidates who cumulatively meet the following two
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Computer Science, Informatics Engineering, Artificial Intelligence or Data Science, or related area, a requirement to be duly proven at the time of signing the contract. or - To be enrolled in a non-academic degree
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Fundação para a Ciência e a Tecnologia, I.P., under the following conditions: Scientific Area: Mechanical Engineering Admission requirements: Candidates who cumulatively meet the following two requirements
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-00576900, co-financed by COMPETE 2030, by Portugal 2030 and by the European Union, under the following conditions: Scientific Area: Environmental Engineering Admission requirements: Candidates who
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conditions: Scientific Area: Mechanical Engineering Admission requirements: Candidates who cumulatively meet the following two requirements may apply for this grant: Requirement 1: - Be a student enrolled in
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conditions: Scientific Area: Mechanical Engineering Admission requirements: Candidates who cumulatively meet the following two requirements may apply for this grant: Requirement 1: - Be a student enrolled in
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the following conditions: Scientific Area: Chemical Engineering Admission requirements: Candidates who cumulatively meet the following two requirements may apply for this grant: Requirement 1: - Be a student
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national funds through FCT/MCTES., under the following conditions: Scientific Area: Chemical Engineering Admission requirements: Candidates who cumulatively meet the following requirements may apply
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supported by own funds of the Faculty of Engineering of the University of Porto, , under the following conditions: Scientific Area: Reinforcement Learning, Machine Learning Admission requirements: Candidates