Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
? We invite applications for a PhD position, focusing on the design and implementation of Spiking Neural Networks (SNNs) using CMOS technology. Project Overview This PhD position is part of a
-
of Science and Technology (SUSTech), Shenzhen, China). Ultimately, the developed probes will lead to modulation of biomolecular condensates at the PSD balancing diseased states of neuronal excitation and
-
to publications and other relevant communication Qualifications Relevant university master's degree Good theoretical background in organic chemistry, molecular biology or biotechnology Experience with analytical
-
fostering a creative and successful academic environment. DTU Electro has 350 employees and span activities in physics, photonics, and electrical engineering. Research is performed within nanophotonics
-
Key Responsibilities (in close collaboration with TU Munich): Develop a deep understanding of materials engineering principles to guide the design and functionalization of nanoporous materials
-
foundation, that enables trade-offs between functional safety, security, quantitative performance, and exploitation of modern machine learning technology. It is the overall hypothesis of S4OS that a full
-
interrelationships and processes connecting people, data and technology. Faculty often engage with emergent topics and phenomena where digital technologies entangle with new individual, organizational and/or societal
-
At the Technical Faculty of IT and Design, Department of Architecture, Design, and Media Technology, a PhD stipend or integrated PhD stipend in explainability in asylum decision-making is available
-
of Civil and Mechanical Engineering, Thermal Energy Section. We look for a talented, self-motivated, and team-oriented individual who thrives in a collaborative environment and enjoys tackling complex topics
-
algorithmic aspects of cheminformatics. The position is founded by the Challenge Programme of the Novo Nordisk Foundation: “Mathematical Modelling for Microbial Community Induced Metabolic Diseases ”, led by