Data Scientist

GEDU CAREERS
Manchester
3 days ago
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Job Description

JOB TITLE: Data Scientist


BUSINESS FUNCTION/ SUB-FUNCTION:Data and Information


LOCATION: London, Birmingham, Manchester, Leeds


Please note this role is not eligible for visa sponsorship.


ROLE PURPOSE:


The Data Scientist with significant expertise who will support the reporting and data‑led decision‑making for student and staff data. You will have experience in using techniques such as machine learning and artificial intelligence to build powerful data products that enhance decision‑making throughout our organisation. You will use your business acumen to understand our sector and business goals and discover opportunities where data science can have a positive impact.


As a great communicator, you’ll translate complex scientific and statistical techniques into compelling visions for organisational improvement. As a data scientist, you’ll develop high‑quality code and algorithms within GBS’s data and analytics platform. You’ll integrate them into business processes and day‑to‑day decision making.


ROLE and RESPONSIBILITIES:



  • Work closely with stakeholders within our university to understand their objectives. Use your expertise to identify opportunities where data science approaches can support our organisation.

Use a scientific approach to solve challenges that face GBS. Provide scientific data products to improve student outcomes, the student experience, and operational efficiency.


Build and fine‑tune machine learning models. Adopt a culture of continuous improvement measuring and improving results through evaluation of the effectiveness of the models.


Effectively communicate findings to a range of stakeholders, including providing actionable insights that drive decision‑making.


Work closely with the Data Quality Manager and system owners to ensure the data is accurate and timely.


Adhere to our information security policies and ensure that you protect the use of our data within your algorithms.


ESSENTIAL SKILLS and EXPERIENCE:


Experience in programming language such as Python, R and SQL.


A strong understanding of Data Science techniques, including ML algorithms and statistical methods.


Proficient in building ML pipelines with Python.


A knowledge of sampling techniques and their implications for analysis.


Drives and encourages the practice of continuous improvement and organisational change; positively embraces change and draws out new ideas, opportunities, and solutions.


Ability to analyse and report on key performance indicators across complex and disparate data sets.


Demonstrated experience in creating business value using data & analytics.


An enthusiasm for engaging with non‑technical stakeholders and establishing best practice processes.


KEY RESULT AREAS:


Stakeholder Engagement & Requirements Gathering


High stakeholder satisfaction from business units (registry, IT, Academic Services).


Clear and validated requirements.


Knowledge Transfer & Documentation


Comprehensive technical documentation delivered for all designed components.


Data Quality & Data Security


Proactive identification and mitigation of technical and compliance risks.


No major security incidents linked to architectural design.


Adherence to data protection best practices and institutional IT policies.


OTHER INFORMATION:


The Data Scientist will also be expected to demonstrate their commitment:



  • to GBS values and regulations, including equal opportunities policy.
  • to GBS’s Social, Economic and Environmental responsibilities and minimise environmental impact in the performance of the role and actively contribute to the delivery of GBS’s Environmental Policy.
  • to their Health and Safety responsibilities to ensure their contribution to a safe and secure working environment for staff, students, and other visitors to the campus.

This job description is not designed to cover or contain a comprehensive listing of activities, duties or responsibilities that are required of the employee. Other duties, responsibilities and activities may change or be assigned.


About Us

GEDU Global Education is a dynamic and innovative group of education providers.


Across our institutions, programmes are designed to have a direct impact on the lives of our students, apprentices and trainees; to equip them with the skills, knowledge and experience necessary for success in their chosen field.


Job Info

  • Job Identification 25223
  • Posting Date 01/23/2026, 08:42 AM
  • Degree Level Bachelor's Degree
  • Job Schedule Full time
  • Locations Universal Square, Manchester, M12 6JH, GB 1 Wellington Place, Leeds, LS1 4AP, GB 4 Cam Road, London, E15 2SN, GB 891 Greenford Road,, London, Greater London, UB6 0HE, GB


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