Lecturer in Computing (HE) (Data Science and AI)

Bluetownonline
West Midlands
1 month ago
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Job Title: Lecturer in Computing (HE) (Data Science and AI)

Location: Birmingham

Salary: £38,784 - £43,482 per annum - AC2

Job type: Permanent, Full-time / Part-time

The University is unlike any other. Standing proud in the heart of the city of Birmingham, they have been delivering career-focused education and training for decades. With around 8000 students across FE and HE level provision, the University is highly respected by employers and industry in meeting the region's skills needs.

The University's mission is to promote and provide the opportunity for participation in the learning process by those with the ambition and commitment to succeed and to maintain a learning community that meets the diverse needs of our students, the economy and society at large.

The Role:

Ready to inspire the next generation of tech professionals? Join our growing Computing Department and play a key role in shaping the future of Higher Education.

Join our academic team and be part of our growth!

As a Lecturer, you'll deliver inspiring and inclusive teaching that supports all students in achieving their full potential. This role will focus on teaching a range of Data Science and AI related modules on our HE programmes, where you'll help shape and guide future leaders in the field.

You wil...

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