55 big-data-machine-learning-phd "https:" PhD positions at The University of Manchester
Sort by
Refine Your Search
-
performance. This PhD project aims to develop a data-driven framework for graphene aerogel design by integrating structured experimental Design of Experiments (DoE) with machine learning (ML). The student will
-
: machine/deep learning, numerical modelling, statistics, optimisation, scientific computing • Ability to work across disciplines and collaborate with academic and industrial teams Desirable: • Experience in
-
modelling and oomph-lib for continuum mechanics simulations, enabling the integration of discrete and finite element methods. Coupled with machine learning techniques, this approach will address the complex
-
simulation results with experimental data. This project will integrate advanced AI techniques, including machine learning for parameter optimisation (e.g., Bayesian optimisation, reinforcement learning), AI
-
control performance and efficiency. This PhD project focuses on data-driven analysis of confined liquids structure, informed by total neutron scattering. The emphasis is on developing new analysis
-
platforms, e.g. aerial drones, climbing robots, and remotely operated underwater vehicles, for capturing degradation data across turbine blades, towers, foundations, and subsea cables; (2) develop a machine
-
components might be only practically verified using one verification method. For example, a machine learning vision component cannot be realistically formally verified but it can undergo a rigorous testing
-
an enthusiastic PhD candidate to help enable the circular economy for plastics within the automotive industry. Working with industry co-sponsor Artifex (https://www.artifexinteriorsystems.com ) and based in
-
This 3.5-year PhD is fully funded by The University of Manchester. Tuition fees will be paid and you will receive an annual tax free stipend set at the UKRI rate (£19,237 for 2024/25). We expect
-
, where further information about the CDT is also available. Informal enquiries can be made by emailing rainz@manchester.ac.uk .