Sort by
Refine Your Search
-
Listed
-
Country
-
Employer
-
Field
-
, if the latter are not from the desired field of study and/or do not possess the relevant knowledge to develop the work plan. I.II - The non-degree-granting course must be related to the type of activity covered
-
study, your academic achievements will be assessed. If this shows that you will successfully complete your programme within a reasonable period of time, the scholarship will continue as planned. Funding
-
, Environmental Health, Physiotherapy, or related scientific fields. 2.3 – Preferential factors: Preference will be given to candidates who demonstrate knowledge and skills in: a) Workplace risk assessment; b
-
that you will successfully complete your programme within a reasonable period of time, the scholarship will continue as planned. Funding must begin in 2026. The scholarship usually begins on 1st October 2026
-
laboratory experience in classical microbiology techniques (preparation of culture media, isolation and identification of microorganisms, aseptic technique); b) Knowledge of molecular biology techniques
-
criteria: - Criterion 1 – Absolute merit of Curriculum Vitae (30%) - Criterion 2 – Adequacy of the candidate’s profile to the work plan to be developed (40%) - Criterion 3 – Specific knowledge related
-
be assessed according to the following weights and criteria: - Criterion 1 – Absolute merit of curriculum vitae (30%); - Criterion 2 - Specific knowledge related to the work plan (30%); - Criterion 3
-
demonstrate experience and skills in: a) Knowledge of and experience in the use of qualitative and/or quantitative research methodologies, demonstrable, for example, through co-authorship of publications
-
requirements: Experience using deep-learning algorithms. In-depth knowledge of Python and PyTorch. Previous experience collaborating on scientific projects. Publications on deep-learning topics. 4. Work Plan
-
be duly proven at the time of hiring. 2; 3. Preferred requirements: Experience using Machine Learning algorithms. In-depth knowledge of Python and PyTorch. Previous experience collaborating