Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
efficient, sustainable, accurate, and high-value production of composite parts. Take guidance from, and support, senior research staff to align machining activities with composite machining research
-
; quantitative data integration to fuse lineage-resolved 3D imaging with single-cell RNA sequencing (scRNA-seq) trajectories; agent-based and multiscale modelling using the Chaste computational platform to build
-
career fellowship schemes. Maintain close links with Research, Partnerships and Innovation and Professional Service Teams in Schools to ensure local processes are aligned with University requirements. As a
-
. For example, rather than directly comparing a three-blade turbine with a four-blade design, information can be transferred in a step-by-step manner, via a sequence of intermediate models that are generated by
-
and knowledge you’ll gain are second to none. Tailored Training: Benefit from both group-based and personalised training activities. We’ll help you craft an individual training plan that aligns with
-
multiple types of radiation and (ii) operate reliably in environments that carry high levels and energies of radiation. No affordable technologies capable of sensing a wide range of radiation energies yet
-
measurement and transferable skill training. Groups of researchers working on aligned projects or using similar methods meet regularly to share ideas and best practice. We will support student long-term career
-
obligations. Step into a role where your expertise truly shapes the future. You’ll lead strategic initiatives that keep the University ahead of regulatory change, influence multiple workstreams, and tackle
-
converted in a controlled manner into the fibre. This project aims to investigate these aspects. We hypothesise that a repeated sequence in silk fibroin binds to calcium ions in the silk gland, and keeps
-
behaviours aligned with human values and preferences will therefore be of critical importance. Reinforcement learning from human feedback (RLHF) has recently emerged as the central technique for training AI