Sort by
Refine Your Search
-
questions remain about the origins of magnetic fields and the mechanisms of magnetic energy release. Addressing these challenges relies on numerical modeling, yet the multi-scale nature of these phenomena
-
. About the division The position is based at the Division for Transport, Energy, and Environment, part of the Department of Mechanics and Maritime Sciences at Chalmers. The division conducts a broad range
-
at the Department of Microtechnology and Nanoscience at Chalmers University of Technology in Gothenburg, Sweden. Project description The continuous miniaturization of silicon-based electronics has driven
-
-based solutions for upcycling lignocellulosic waste into high-value, eco-friendly materials. About the research project In the last decades, the enormous amount of low-value side streams and recalcitrant
-
today are synthesized from fossil-based feedstocks, transitioning to biobased alternatives could significantly reduce environmental impact and reliance on non-renewable resources. However, despite major
-
include fine-grained and bounded space cryptography, realization of idealized models, relationship between cryptographic notions, and similar topics in foundational cryptography. Exploring connections
-
for Quantum Technology (WACQT, http://wacqt.se ). The core project of the centre is to build a quantum computer based on superconducting circuits. You will be part of the Quantum Computing group in the Quantum
-
of digital communications and signal processing. High grades in the core courses are required. Skills in mathematical analysis, modeling, and network algorithms are essential. Analytical thinking, eagerness
-
will be carried out within the framework of a collaboration project with Linköping University and Uppsala University entitled " Flexible X-ray detectors based on novel high-Z covalent organic frameworks
-
security in the projects: Reducing waste in tabular machine learning by generalizing out-of-table (F. Johansson) Using LLMs to Augment Software Test Suites (G. Gay) Adaptive Runtime Monitoring for AI-Based