Sort by
Refine Your Search
-
of Neural Networks" team studies the mechanisms of information integration in neural networks, particularly in motor control structures. The work will be performed under the supervision of Dr. Antoine Valera
-
FieldMathematicsYears of Research ExperienceNone Additional Information Eligibility criteria The position requires a PhD in machine learning, NLP, causality, or a related discipline, with a strong command of deep
-
such as CASTEP, VASP, Quantum ESPRESSO, xtb, etc.) and in Machine-Learned Potentials (MLIP) approaches; - Excellent command of Python programming languages (and ideally C++ or Fortran) as well as the Unix
-
into the rhizosphere that can have a significant impact on the physicochemical conditions of the rhizospheric soil. These conditions control the mechanisms underlying the formation or destruction of organomineral
-
to quantify energy exchanges (work, heat), understand the temperature evolution of the resonator, and interpret the role of information when the system is subject to feedback control. The project
-
. - Knowledge of programming techniques (C/C++, Python, Bash) in a Linux environment. - Knowledge of a version control tool (gitlab). - Knowledge of software architectures. - English (level C1). Skills: - Conduct
-
Information Eligibility criteria - PhD in functional ecology - Good command of the following subjects: functional ecology, root system ecology, organism diversity, soil and ecosystem functioning - Very good
-
and publication, with members of the MORA team at GANIL • Development of a motorised mirror system at Jyväskylä, enabling control of the transverse components of ion polarisation – evaluation
-
functionality. They will be required to manage and interpret the data they produce and disseminate their results in team meetings and at international conferences. We study how cells control microtubule
-
theory (Density Functional Theory, Wave Function Theory) is expected. - Solid experience with the Python programming language and Unix/Linux environment - Good command of scientific English, both written