Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- ;
- Cranfield University
- ; University of Sussex
- University of Nottingham
- ; University of Plymouth
- ; The University of Manchester
- ; University of Birmingham
- ; University of Warwick
- University of Cambridge
- University of Sheffield
- ; Manchester Metropolitan University
- ; Swansea University
- ; University of East Anglia
- ; University of Surrey
- University of Oxford
- ; Loughborough University
- ; University of Nottingham
- ; Cranfield University
- ; Newcastle University
- ; University of Bristol
- ; University of Exeter
- ; University of Reading
- ; University of Sheffield
- ; University of Southampton
- KINGS COLLEGE LONDON
- Swansea University
- UNIVERSITY OF STRATHCLYDE
- ; Anglia Ruskin University
- ; Beijing Institute of Technology
- ; City St George’s, University of London
- ; Imperial College London
- ; Midlands Graduate School Doctoral Training Partnership
- ; Royal Holloway, University of London
- ; UWE, Bristol
- ; University of Central Lancashire
- ; University of Greenwich
- ; University of Hull
- ; University of Leeds
- King's College London
- Newcastle University
- UNIVERSITY OF VIENNA
- Ulster University
- University of Exeter
- University of Wolverhampton
- 34 more »
- « less
-
Field
-
all, the traditional statistical methods are not suitable for big data due to their certain characteristics: heterogeneity, statistical biases, noise accumulations, spurious correlation, and incidental
-
Evaluating the role of Big Data and satellite technologies in understanding livestock impacts on the upland landscape DoS: Dr Mark Whiteside 2nd Supervisor: Dr Katherine Herborn 3rd Supervisor: Dr
-
This PhD project will focus on developing, evaluating, and demonstrating advanced data analytics solutions to a big data problem from aerospace or manufacturing system to uncover hidden patens
-
statistical methods are not suitable for big data due to their certain characteristics: heterogeneity, statistical biases, noise accumulations, spurious correlation, and incidental endogeneity. Therefore, big
-
film-forming products such as inks, adhesives, and cosmetics. This PhD position is integrated within a large UKRI funded project on coatings formulations within a world-class research environment. You
-
research and / or experience of qualitative research. Expertise will be gained in how to use large datasets (‘big data’) to address clinically relevant questions and how to design and conduct a clinical
-
), indicating SISI PhD Studentship in the email subject. If you require further information about the application process, please contact the below: PhD in Management and Marketing (business.phd.mgmt-mktg
-
experimental facility to generate this much needed, high-quality, validation data. The proposed PhD project will start by using data generated by the new experimental NCL facility to validate a wide range of
-
and has a large group of collaborators. You will be joining a great team of supportive and social PhD students working in a high-quality research environment. Learn More: The Dynamics Research Group
-
multimodal machine learning, large language models, and fairness and uncertainty evaluations. The PhD student will benefit from: State-of-the-art AI computing recourses for large-scale model training including