University of Leeds Featured PhD Programmes
Catalysis Hub Featured PhD Programmes
Engineering and Physical Sciences Research Council Featured PhD Programmes
University of Kent Featured PhD Programmes
University College London Featured PhD Programmes
United Kingdom
Leeds×
10 miles

Information Science PhD Projects, Programs & Scholarships in Leeds

We have 9 Information Science PhD Projects, Programs & Scholarships in Leeds

  • Information Science×
  • United Kingdom×
  • Leeds×
  • clear all
Order by 
Showing 1 to 9 of 9
  Statistical learning methods in deep cardiac phenotyping for population imaging and imaging genetics
  Prof A Frangi
Application Deadline: 1 April 2019
Co-supervisors. Professor Sven Plein (School of Medicine, University of Leeds), Dr Tanveer Syeda-Mahmood (IBM Fellow & Chief Scientist), IBM Research and Dr Enzo Ferrante (Scientist) CONICET, Universidad Nacional del Litoral.
  Blue sky methods in machine and deep learning for medical image analysis at scale
  Prof A Frangi, Dr A Gooya
Application Deadline: 1 April 2019
This project is targeted to PhD student applicants with a strong technical background in computer science and mathematics who are interested to develop new blue sky methods in machine learning and deep learning in an inspiring environment.
  Enhancing feedback for ambulance service staff to promote workforce wellbeing and patient safety
  Dr J Benn, Prof R Lawton
Application Deadline: 26 April 2019
This is an exciting opportunity to undertake a PhD within the Yorkshire and Humber Patient Safety Translational Research Centre (Yorkshire and Humber PSTRC), a partnership between the University of Leeds and Bradford Teaching Hospitals Foundation funded by the National Institute for Health Research (NIHR).
  Sociotechnical evaluation of digital innovations for patient safety
  Dr J Benn, Dr O Johnson
Application Deadline: 26 April 2019
This is an exciting opportunity to undertake a PhD within the Yorkshire and Humber Patient Safety Translational Research Centre (Yorkshire and Humber PSTRC), a partnership between the University of Leeds and Bradford Teaching Hospitals Foundation funded by the National Institute for Health Research (NIHR).
  The role of AI in overcoming the value-action gap in sustainable consumption for mainstream consumers
  Prof W Young, Dr V Dimitrova, Dr PK Chintakayala
Application Deadline: 7 April 2019
The majority of consumers say they care about sustainable/ethical issues, for example 94% saying they care about protecting the environment across Europe and UK.
  Stochastic control models for financial applications
  Dr T De Angelis
Applications accepted all year round
This project is devoted to the study of stochastic control problems arising from financial applications. In particular we are interested in the theoretical study of optimal strategies in one of the following classes of problems.
  Development of Digital Health Platforms for processing patients’ data using Artificial Intelligence and visual computing Technologies
  Research Group: Visual Computing
  Prof R Qahwaji
Applications accepted all year round
There have been considerable advances in the Internet of Things (IoT) and wearable sensors in recent years, and the arrival of the 5G wireless spectrum will provide the capacity for new sensor platforms and devices to capture and share data reliably between devices and healthcare providers.
  Medical Imaging and Artificial Intelligence Technologies for the detection of Eye Diseases
  Research Group: Visual Computing
  Prof R Qahwaji
Applications accepted all year round
This project aims to develop Visual Computing and Artificial Intelligence-Based System for the Diagnosis of Infectious keratitis in the Cornea.
  Intelligent Big Data Analytics for Manufacturing and Engineering Applications
  Research Group: Applied Computing
  Dr S Konur
Applications accepted all year round
Information processing and understanding using AI and machine learning is seen as a future growth direction to deal with increasingly large and complex data-sets, making sense of ambiguity in data that is often noisy and not always robust.
Show 10 15 30 per page
  • 1


FindAPhD. Copyright 2005-2019
All rights reserved.