Sort by
Refine Your Search
-
conclusions. Student Supervision: Play an active role in mentoring and supervising both graduate (MSc and PhD) and undergraduate students, fostering their academic and research growth. Teaching Contribution
-
interactions in plant ecosystems and making strides towards sustainable agricultural solutions. Visit our website at https://agc.um6p.ma for further details. The ideal candidate must possess a PhD degree in
-
MOF synthesis and characterization with a PhD and demonstrated experience in Materials Science, Materials Chemistry, Inorganic chemistry, catalysis, and related disciplines. He/she should have
-
of biology and the effect of mutations. He/she would also be required to have a sound computational background, especially in the area of simulations. Criteria of the candidate: PhD in the field
-
& Biochemical Sciences Green Process Engineering (CBS) The CBS department is an entity of the UM6P. The main objective of CBS is to set up a distinctive research-teaching program of international level, in order
-
Green Process Engineering (CBS) The CBS Department is an entity of the UM6P. The main objective of CBS is to set up a distinctive research-teaching program of international level, in order to meet the
-
PhD students and research assistants involved in the project. Provide training on experimental techniques, data analysis, and scientific writing. Requirements: Educational background: A Ph.D. in Plant
-
: Contributing to peer-reviewed scientific publications and presenting research outcomes at national and international conferences. Qualifications & Requirements : PhD in Chemical Engineering, Process Engineering
-
evaluations carried out in the presence of crops. Required qualifications: The candidates must have strong experience in MOF synthesis and characterization with a PhD and demonstrated experience in Materials
-
Ph.D. in a relevant field, such as machine learning, climate science, environmental sciences, geoinformatics, or a related discipline. Proficiency in advanced learning techniques and statistical modeling