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Field
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quantification, seaweed production optimalisation across different production systems and scales, production system development, and IMTA. 3. Scientific Supervisors: Doctor Aschwin Engelen, Group Leader
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Scheduled Hours 40 Position Summary Are you a Psychiatric-Mental Health Nurse Practitioner (PMHNP) or a Physician Assistant (PA) ready to advance your expertise in psychiatric care? Our Advanced
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: Doctor Vincent Laizé, Project coordinator, Group Leader at CCMAR and Auxiliary Researcher at CCMAR. 4. Work place: The workplace is CCMAR (Gambelas Campus of the Algarve University, Faro, Portugal) and
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of the Scientific Research Fellow: https://dre.pt/web/guest/legislacao-consolidada/-/lc/58216179/view?w=2019-08-28 ; Regulation of Research Scholarships of the Science and Technology Foundation, I.P: https://dre.pt
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the employer. • UC Sexual Violence and Sexual Harassment Policy: [https://policy.ucop.edu/doc/4000385/SVSH ] • UC Anti-Discrimination Policy for Employees, Students and Third Parties: [https://policy.ucop.edu
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No. 40/2004 of August 18, as amended by Decree-Law No. 65/2024 of October 1, and the University of Algarve Research Grant Regulations (https://files.dre.pt/2s/2021/10/210000000/0013700149.pdf ). 5
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manage large-scale materials datasets. • Develop GNN architectures for predicting materials properties from atomic graphs. • Train and deploy machine-learned force fields for MD simulations and rapid
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capacity to process complex simulation data, fine-tuning its interpretation algorithms, and ensuring that gap-filling recommendations are both biologically plausible and supported by external resources
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PhD Research Fellow in Theoretical and Computational Active Matter Physics for Glioblastoma Invasion
data-driven modeling, parameter estimation, or model calibration Familiarity with high-performance computing or large-scale simulations Interest in close collaboration with experimental researchers
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docking for ligand optimization • perform extensive molecular dynamics (MD) simulations (AMBER, NAMD, GROMACS) in fully hydrated lipid bilayer systems to replicate physiological conditions and assess