Flexible Lecturer in Computer Science – AI & Data Science

Northumbria University
City of London
17 hours ago
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A UK higher education institution is offering a flexible teaching opportunity for a Lecturer in Computer Science. The ideal candidate will deliver industry-aligned teaching across modules like DevOps, Cyber Security, and Data Science. Applicants should have a Master's degree in Computer Science or related fields and teaching experience in Higher Education. The role supports student success and contributes to curriculum innovation, perfect for academics passionate about Computing and Digital Technologies.
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