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

University College Birmingham
Birmingham
2 weeks 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
UCB is an equal opportunities employer. We are TEF rated Silver, with a Good Ofsted rating.
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 will prioritise practical application and demonstration over theoretical instruction, ensuring students gain real-world skills and experience.
Why University College Birmingham?
Growing Department: Be part of a team that's thriving and expanding every year.
Supportive & Inclusive: Join a collaborative, diverse environment.
Career Development : Access ongoing professional growth opportunities.
Industry Connections: Work with industry partners, bringing real-world learning into the classroom.
Benefits:
Generous allocation of annual leave 38 days' paid leave per year
12 Bank Holidays & Concessionary Days

Excellent Teachers' Pension Scheme Employer Contributions - 28.6%

Subsidised private healthcare provided by Aviva including a Digital GP Service.
Employee Assistance Programme inclusive of counselling services, financial wellbeing support and bereavement support
Annual health MOTs with our Registered Nurse
Excellent staff development opportunities including professional qualification sponsorship
A variety of salary sacrifice schemes including technology and cycle.
Heavily-subsidised on-site car parking in central Birmingham
Free on-site gym membership
Extra Information:
All applicants for employment at the University will be expected to demonstrate an understanding of the principles of Safeguarding and the PREVENT agenda in the context of further and higher education.
Closing Date - Sunday 11th January 2026.
Interview Date - Tuesday 27th January 2026.
Please click APPLY to be redirected to our website to complete an application form.
Candidates with experience or relevant job titles of; Data Science Lecturer, AI Lecturer, Computing Lecturer, Tech Lecturer, Computing Tutor, Computing Teacher, Cloud Technician, IT Support Engineer, IT Service Engineer, Service Desk Technician, IT Support Technician, Cloud Support Engineer, Support Technician, 1st Line Support Engineer, IT Support, IT Systems Support may also be considered for this role.

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