Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Field
- Computer Science
- Biology
- Medical Sciences
- Engineering
- Economics
- Materials Science
- Science
- Mathematics
- Earth Sciences
- Arts and Literature
- Chemistry
- Business
- Environment
- Humanities
- Social Sciences
- Law
- Electrical Engineering
- Linguistics
- Education
- Physics
- Psychology
- Sports and Recreation
- 12 more »
- « less
-
SD- 26053 PHD IN ULTRA-FAST MACHINE-LEARNING INTERATOMIC POTENTIALS FOR NANOINDENTATION OF TIC MA...
: • Experience developing machine-learning interatomic potentials • Experience with UFPs • Experience with molecular dynamics, ideally with LAMMPS • Contributions to a public code repository Your LIST benefits
-
machine-learning interatomic potentials • Experience with UFPs • Experience with molecular dynamics, ideally with LAMMPS • Contributions to a public code repository Your LIST benefits An organization with a
-
? No Offer Description Social dynamics shape behaviours that can accelerate or hinder the Dutch energy transition. In this project the focus is on social dynamics within and surrounding energy
-
. In this project the focus is on social dynamics within and surrounding energy communities (ECs). This project explores how different types of social dynamics support, interrupt, or derail collective
-
19 Dec 2025 Job Information Organisation/Company University of Silesia in Katowice Research Field Physics Researcher Profile First Stage Researcher (R1) Positions Other Positions Country Poland
-
of Prof. Tomasz Smoleński at the Department of Physics, University of Basel, Switzerland (https://smolenski-lab.com ), is looking for a highly-motivated and self-driven PhD candidate. The group utilizes
-
München under the supervision of Professor Martin Reincke and Dr Nicole Reisch About the PhD position: This project is part of Work Package 1: Hormone Dynamics within the ENDOTRAIN network. The ENDOTRAIN
-
of Materials Science and Metallurgy as part of the Structural Materials Group. The Structural Materials Group is a diverse and dynamic research team working across aerospace, automotive, energy, defence, and
-
under uncertainty (Studentship code MSP106) Learning to sample: Meta-optimisation of gradient flows using reinforcement learning (Studentship code MSP107) Dynamic Bayesian modelling of endurance sports
-
Secondments: Ludwig-Maximilians-Universität München under the supervision of Professor Martin Reincke and Dr Nicole Reisch About the PhD position: This project is part of Work Package 1: Hormone Dynamics within