Lecturer / Senior Lecturer in Digital Business and Data Analytics

UNIVERSITY OF WORCESTER
West Midlands
2 days ago
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Lecturer / Senior Lecturer in Digital Business and Data Analytics

Interested in learning more about this job Scroll down and find out what skills, experience and educational qualifications are needed.
Sub Department: Department of Marketing & Enterprise
Location: City Campus
Salary: £38,784 to £56,535
Post Type: Full-Time
Contract Type: Permanent
Closing Date: Monday 06 April 2026
Interview Date: Thursday 16 April 2026
Reference: SB2603
The Department of Marketing and Enterprise, based within the rapidly expanding Worcester Business School at the University of Worcesters City Campus, is continuing to grow as demand increases for our undergraduate, postgraduate and executive-level courses. We are therefore seeking to complement our team with an experienced Lecturer / Senior Lecturer in Digital Business and Data Analytics.
The University of Worcester is ranked joint first in the UK for quality education (Times Higher Education University Impact Rankings 2025), and our graduates have the highest rate of sustained employment, further study or both from any multidisciplinary university in the UK (Longitudinal Education Outcomes Survey 201725). Worcester is a beautiful cathedral city, located around 40 minutes south of Birmingham, the UKs second city.
Our overriding aim is to be an outstanding institution at which to study, through the provision of an excellent learning and teaching environment. We offer professionally relevant courses informed by industry needs and delivered through an experiential learning approach. Our curriculum is inspired by contemporary research and professional practice, developing students knowledge, applied skills, critical thinking and capacity for innovation.
The Digital Business and Analytics subject area contributes to a range of programmes, including undergraduate business degrees, postgraduate management courses, specialist analytics pathways, and the Executive MBA. Our teaching and research span themes such as:
- Data Analytics and Business Analytics
- Business Intelligence and Reporting
- Digital Business Models and Digital Transformation
- AI and Automation for Business Decision-Making
- Technology-Enabled Innovation and Digital Strategy
- Application of leading industry tools, such as Microsoft Power BI, Tableau and Qlik
In addition, candidates are expected to have contemporary subject knowledge and/or experience of professional practice in several of the following areas:
- Analytics / Data Analytics
- Business Intelligence
- Business Analytics
- Digital Business
- Digital Transformation
- AI for Business Uses
- Use of modern data and visualisation tools (e.g., Power BI, Tableau, Qlik)
- Technology-enhanced or data-driven decision-making environments
We would especially welcome applicants with experience of executive education and/ or applied industry-focused delivery, particularly relevant to the Executive MBA (essential for Senior Lecturer consideration).
The successful candidate will be expected to contribute to the development of existing and new modules across undergraduate, postgraduate, and potentially executive programmes, as well as supporting research, knowledge exchange and/or professional practice activities within the School.
Whats in it for you?
- For Lecturer: annual incremental increase up to £43,482, with opportunity to progress to £47,389 subject to performance and the University reward scheme
- For Senior Lecturer: annual incremental increase up to £56,535, with opportunity to progress to £61,759 subject to performance and the University reward scheme
- 47 days of leave per year (inclusive of bank holidays and University closure days)
- Access to a range of benefits such as our Staff Retail Benefits Scheme, Cycle to Work Scheme and Tusker Car Leasing
- Wellbeing support through our Employee Assistance Programme
- In-house training and professional development support
- A friendly, inclusive and supportive culture and work environment
Informal Enquiries
Informal queries in relation to this vacancy are welcome and should be directed to the Dr Paulo Mora-Avila, Head of Department for Marketing and Enterprise.
Please note that if not already an employee of the University of Worcester, the appointed candidate will be employed through our subsidiary company Uniworc Limited, a wholly owned subsidiary of University of Worcester. Appointees of Uniworc Limited will automatically be enrolled into the Aviva FlexHE defined contribution pension scheme (subject to earnings and other eligibility criteria).
Please note that this post may be eligible for sponsorship under the Skilled Worker visa route if your individual circumstances enable this in accordance with the Skilled Worker visa rules. For more information on how the Skilled Worker visa rules may apply to you, please visit the UK Government website. xrnqpay
We value diversity and wish to promote equality at all levels.

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