Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
KTP Associate in Machine Learning ( Job Number: 25000811) Department of Computer Science Grade 7: - £39,105 - £43,878 per annum Fixed Term - Full Time Contract Duration: 30 months Contracted Hours
-
Postdoctoral Research Associate in Machine Learning ( Job Number: 25000466) Department of Computer Science Grade 7: - £38,249 - £45,413 per annum Fixed Term - Full Time Contract Duration: 24 months
-
operation · Application of artificial intelligence or machine learning in energy or engineering systems 5. Strong programming and modelling skills using relevant tools such as Python, MATLAB
-
, data analyses and machine learning workloads Have the capability to tackle problems difficult or impossible to achieve on most desktops or laptops Exploit the capacity to run many tasks at the same
-
interfaces, rheology, fluid dynamics across scales, lubrication and wetting, biophysics as well as machine learning or metamaterials. For experimentalists, we are particularly interested in applicants aligned
-
Engineering, potentially including Power Electronics, Machines and Drives, Network Optimisation and Reliability, with the ability to teach our students to an exceptional standard and to fully engage in
-
centralised machine rooms to host our high performance computers. The Department is committed to research-led and small group teaching. The Complete University Guide ranks Durham's Physics Department in fourth
-
aware of any hazards. • Learn how to use everyday equipment and tools [e.g. cleaning machines] from more experienced colleagues. • Follow instructions from more experienced colleagues to deliver set
-
and PhD students. Research spans a wide range. Current interests include: Bayesian statistics; modelling of structure, geometry, and shape; statistical machine learning; computational statistics; high
-
, Digital Health, Networks, Quantum Computing, Scientific Computing including hardware and scientific code development, Computer Vision, Imaging and Robotics. There is a lively research culture with many