Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
- Computer Science
- Engineering
- Materials Science
- Biology
- Medical Sciences
- Economics
- Chemistry
- Mathematics
- Arts and Literature
- Psychology
- Electrical Engineering
- Linguistics
- Physics
- Business
- Humanities
- Education
- Philosophy
- Science
- Law
- Earth Sciences
- Social Sciences
- Sports and Recreation
- 12 more »
- « less
-
envisaged that your research proposal will be predominantly qualitative; therefore you should have studied qualitative research methods at master’s level, and be familiar with qualitative interviewing and
-
innovative use of technology and computation within arts, humanities and heritage research as both a method of inquiry and a means of dissemination. Digital culture is everywhere, and it is driven by cultural
-
(such as those used in phones and tablet devices). It will focus on imaging techniques and experimental methods to measure biomechanical properties of the hand and link these characteristics with the ability
-
global castings industry. The AMRC Castings Group is a leader in advancing casting technologies and techniques. Our team provides advanced casting expertise, including computer process modelling, design
-
you to apply. Please ensure that you reference the application criteria in the application statement when you apply. Essential criteria Essential criteria Method of assessment 1 MSc containing
-
, experimental design and data analysis methods. In this project, you will use the following techniques: Cutting edge microscopy (confocal and FRET) to image biosensors to detect hormone and sugar concentrations
-
digital recruitment methods. Build and maintain relationships with key stakeholders Plan and deliver short-term projects in collaboration with colleagues across MARC Assist with the recruitment, training
-
(solid-liquid) reactions, often involving variable viscosity; and the need to monitor several different properties in near real-time. The latter involved several orthogonal online monitoring methods
-
Improving Deep Reinforcement Learning through Interactive Human Feedback School of Computer Science PhD Research Project Directly Funded Students Worldwide Dr Bei Peng, Dr Robert Loftin Application
-
services including data sensing, information flow and processing, and associated information decisions with computational intelligence and control. The increasing size and complexity in cyber systems pose