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academic degree recognition processes. Preferred factors: In-depth knowledge of Deep Learning and Large Language Models (LLMs): practical knowledge with Deep Learning architectures, and in particular, with
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resulting from academic degree recognition processes. Preferred factors: In-depth knowledge in Deep Learning and LLMs: Practice with Deep Learning architectures, and in particular, with Large Language Models
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Management; Knowledge of data organization and management; Knowledge of database creation; Good knowledge of quantitative forecasting models and financial markets. Preferred Factors: Experience in creating
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environment; Communication Skills: Good oral and written communication skills, essential for the preparation of technical reports, scientific articles and presentations; Knowledge of Artificial Intelligence
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in a team in an R&D environment; Communication Skills: Good oral and written communication skills, essential for the preparation of technical reports, scientific articles and presentations; Knowledge
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degrees), with a weighting of 35 %; A2 - Personal curriculum (considering professional and scientific background), with a weighting of 40 %; A3 - Proven knowledge of the preferred requirements described in
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the contracting phase, including those resulting from academic degree recognition processes. Preferred factors: Knowledge in advanced Artificial Intelligence models for optimization applied to datasets using
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. Preferential factors: a) Consolidated knowledge in Data Systems. Admissibility requirements: It is essential, under penalty for not being admitted to the competition, to attach the following documents
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, including those resulting from academic degree recognition processes. Preferential factors: Knowledge of embedded systems and advanced microprocessors’ architectures. Admissibility requirements: It is
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the deadline for applications is required, in the contracting phase, including those resulting from academic degree recognition processes. Preferred factors: Knowledge of Machine and Deep Learning; Knowledge in