Sort by
Refine Your Search
-
of the “Aviso para Apresentação de Candidaturas nº 11/SI/2021", under the following conditions: Scientific area: Physics Specific Scientific Area: Data analysis and machine learning Recipient category: The open
-
and structural analysis of heat radiant panels for indoor air treatment. When applicable, this grant also aims at consolidating the scientific training of the grantee, through the development
-
, the scholarship holder must make use of knowledge of data modelling, data storage and data processing. Support in the data modelling component, for the definition of the Domain Reference Model, is required. Work
-
: • Have knowledge of data processing and analysis technologies. b) Preferential Factors: • Knowledge of programming languages for data analysis (e.g., R, Python); • Knowledge in Artificial Intelligence
-
exclusivity, as foreseen in article 5º of the Research Fellow Statutes and applicable regulations. Selection panel: the Jury is composed by the following elements: President, Doctor Paula Machado de Sousa
-
. Selection panel: the Jury is composed by the following elements: President, Doctor Sandro Emanuel Salgado Pinto, Principal Investigator of the Centro ALGORITMI of School of Engineering of University of Minho
-
from academic degree recognition processes. Specific Requirements - Knowledge acquired during academic training or education in: (i) database management; (ii) analysis of dietary data; (iii) experience
-
admissibility requirements: mandatory requirements: Knowledge of data analysis and exploitation. preferential factors: Knowledge of learning and knowledge extraction; Knowledge of Artificial Intelligence and
-
Engineering, or related areas; b) Candidate's Curriculum Vitae, regarding the different parameters of the scientific performance criterion: - Publications of high quality reflected by the impact factor
-
year or its duration (star and term). Candidate admissibility requirements: mandatory requirements: Knowledge of data analysis and exploitation. preferential factors: Knowledge of learning and knowledge