33 molecular-dynamics-postdoc PhD positions at Cranfield University in United Kingdom
Sort by
Refine Your Search
-
on developing an innovative framework grounded in Design for Dynamic Management, we integrate AI and predictive analytics to enable adaptive decision-making. This PhD research at Cranfield University aligns with
-
dynamics. The existing aviation technology and processes have limitations in managing data exchange and ensuring high-quality service (QoS). Consequently, the project proposes a system that leverages
-
the selection and tailoring of wastewater polishing technologies by providing insights into the molecular interactions between pharmaceuticals and matrix constituents, and the effect thereof on the pharmaceutical
-
background in environmental and civil engineering, water and wastewater, molecular biology, microbiology, biochemistry, or other similar sciences. If you are eligible to apply for the scholarship (i.e. a
-
. The candidate is welcome to apply with a background or an interest but not limited to biosensors, microfluidics, synthetic biology, analytical chemistry, environment science, molecular biology, microbiology and
-
, such as in water treatment technology (water and wastewater engineering), water quality analysis (environmental chemistry), and molecular microbiological analysis (microbiology), will be provided
-
to have a highly successful career in the water and waste management sectors or in an academic role. We will help you develop into a dynamic, confident and highly competent researcher with wider
-
dynamic, confident and highly competent researcher with wider transferable skills (communication, project management and leadership) with an international network of colleagues. Sponsored by EPSRC
-
nature of the funding. Cranfield Doctoral Network Research students at Cranfield benefit from being part of a dynamic, focused and professional study environment and all become valued members
-
Embark on a ground-breaking PhD project harnessing the power of Myopic Mean Field Games (MFG) and Multi-Agent Reinforced Learning (MARL) to delve into the dynamic world of evolving cyber-physical