Sort by
Refine Your Search
-
Listed
-
Country
-
Employer
- Humboldt-Stiftung Foundation
- Nanyang Technological University
- Villanova University
- ;
- Harvard University
- UNIVERSITY OF SOUTHAMPTON
- Macquarie University
- Manchester Metropolitan University
- National University of Singapore
- University of Birmingham
- University of Michigan
- Western Norway University of Applied Sciences
- 2 more »
- « less
-
Field
-
the numerical model with experimental or existing numerical work Publish high-impact research Engage in interdisciplinary collaboration Job Requirements: Education qualifications PhD in Mechanical Engineering
-
apply for research funding Communicate research findings in scientific journals and at conferences About You You will have completed a PhD in genome engineering, synthetic biology, or a closely related
-
experimentation and thermodynamics calculations. Establish a high-throughput bulk materials processing route to enable efficient characterisation and parallel testing of multiple compositions. Develop a high
-
for Biomedical Imaging (Harvard/MIT/Mass General). In parallel, there will be opportunities to analyze and publish existing data upon identifying areas of mutual interest. The appointment is for one year with a
-
for Sustainable proteins, who will be assessing in parallel the protein digestibility, bio accessibility and bioavailability of alternative proteins Key Responsibilities: To carry out analytical biochemical
-
for Biomedical Imaging (Harvard/MIT/Mass General). In parallel, there will be opportunities to analyze and publish existing data upon identifying areas of mutual interest. The appointment is for one year with a
-
part of a larger network, undergo persistent changes that ultimately lead to experience-dependent rewiring of the brain. In parallel to understanding how memories are formed, we are also keen to
-
of aerospace and aeronautics, covering the entire spectrum of fidelity levels. The candidate should have or be close to completing a PhD in aerospace engineering (or equivalent qualification and experience
-
the University's research culture and collaborative profile. Qualifications: PhD in Computer Science/AI or a closely related field. Extensive research experience in machine learning, deep learning, and self
-
in a dynamic and collaborative team. In collaboration with the Edinburgh Parallel Computing Centre (EPCC) and our industry partners, the focus of the role is the development of a new solver for