66 cloud-computing-"https:" "https:" "https:" "https:" "https:" "St" "St" "St" "St" uni jobs at Lancaster University
Sort by
Refine Your Search
-
University, including information on our wide range of employee benefits, support networks and our policies and facilities for a family-friendly workplace. Visit our employee benefits on our website - https
-
innovative educational programmes to promote sustainable work and organisational health and well-being. See https://www.lancaster.ac.uk/health-and-medicine/research/cohwb/ The Faculty provides an environment
-
full and relevant Level 3 (or above) childcare qualification: check your qualification here: https://www.gov.uk/check-early-years-qualification ✔ A minimum of 2 years post qualification experience in
-
responsibilities additional flexible benefits to suit your needs and interests, some with tax-savings. Find out about more of our employee benefits on our website - https://www.lancaster.ac.uk/jobs To find out more
-
School of Computing and Communications Location: Bailrigg, Lancaster, UK Salary: £59,966 to £71,566 (Full time, indefinite with end date) Closing Date: Sunday 15 February 2026 Interview Date: To be
-
here: https://www.gov.uk/check-early-years-qualification ✔ Caring, reliable, and hard-working. ✔ Excellent communicators with great customer service skills. ✔ Team players with a flexible, positive
-
externally managed products. As a senior developer, you will take a leading role in medium sized projects in areas such as cloud migration, as well as supporting, maintaining and implementing change
-
range of employee benefits, support networks and our policies and facilities for a family-friendly workplace. Visit our employee benefits on our website - https://www.lancaster.ac.uk/jobs Is this the job
-
DevSecOps principles to ensure security is considered early and consistently. A key focus of the role is supporting the University’s cloud enablement programme. You will help ensure that cloud-based
-
) Programme, based at Lancaster University. The DASS Programme will consider the foundational statistical challenges of identifying anomalous structure in streams within constrained environments, handling