Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
September 2025 Reference: 0505-25 The Benedetto lab is looking for an enthusiastic bioinformatician or computer scientist to join a wider collaborative project, studying how the gut-brain axis mediates gut
-
publications. • Developing collaborations with academic, industry partners and EPSRC projects. You will have a PhD in Computer Science or equivalent with experience in cyber security, distributed systems and
-
School of Engineering Location: Bailrigg, Lancaster, UK Salary: £32,546 to £45,413 (Part time, indefinite with end date) Closing Date: Monday 16 June 2025 Interview Date: Monday 01 September 2025
-
: 0493-25 We are seeking a Research Associate to join Lancaster Medical School and work on the “FeetSee” project funded through a project grant from the Next Generation EU Programme: Implementation
-
External Relations division, you will assume responsibility for all aspects of the Student Recruitment CRM platform, including system development, functionality, and process refinement. With an increasing
-
School of Computing and Communications Location: Bailrigg, Lancaster, UK Salary: £39,355 to £45,413 (Full time, indefinite with end date) Closing Date: Friday 22 August 2025 Interview Date: To be
-
. The University is undergoing a significant digital transformation. We have a requirement for development resource to support the ambitious, institution wide Curriculum Transformation Programme. This multi-year
-
are fully accessible to everyone. About the Role As an Operations Supervisor, you will play a key role in leading the day-to-day operation of the Sport Lancaster Facilities. You will be responsible
-
using self-assembled molecular technology. These novel memory architectures have the potential to deliver faster, more efficient, and energy-saving computing solutions. As a Senior Research Associate, you
-
at Lancaster University, the London School of Economics, the University of Bristol and the University of Warwick. The DASS Programme will consider the foundational statistical challenges of identifying anomalous