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Data Analytics Graduate, Glasgow or Edinburgh, September 2026

targetjobs UK
Glasgow
2 days ago
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Overview

Data Analytics Graduate, Glasgow or Edinburgh, September 2026

Join to apply for the Data Analytics Graduate, Glasgow or Edinburgh, September 2026 role at targetjobs UK

What you’ll do

What we do

  • Improve decision making by identifying trends, patterns, and high-risk issues to inform business strategy.
  • Develop data visualisations to identify efficiencies, process improvements, and cost reductions.
  • Automate assurance activities using population testing and custom dashboards for real-time, accurate reporting.
  • Deliver training to help clients and colleagues use data to improve profits, efficiency, and strategy.
  • Work with internal audit teams to enable more robust and efficient testing approaches.
  • Provide training programmes to non-data specialists to help them get more value from their business data.

Your role in Data Analytics

  • Create interactive dashboards and BI tools for automated reporting and monitoring.
  • Analyse data to answer client questions and identify trends across areas such as staffing, finance, crime, and environment.
  • Automate manual data processes to increase efficiency and accuracy.
  • Deliver training and upskilling in analytics tools such as Excel, Power BI, and Python.
  • Use data analytics to support audit testing in areas like revenue, payroll, and absences.
What you’ll need / Qualifications
  • Right to work in the UK from your start date.
  • Minimum 2:2 undergraduate degree.
  • For this role, you’ll undertake a Masters in Data Science as part of your qualification pathway at Azets.
Inclusion & Accessibility

We are proud to be a Mindful Employer and Disability Confident Employer. Creating an inclusive workplace isn’t just a statement – it’s something we live every day.

At Azets, we value diverse backgrounds, perspectives, and experiences. Even if your experience doesn’t tick every box, we’d still love to hear from you – you might be a great fit for another opportunity.

Our Benefits for Early Careers
  • Study Support & Exams: Fully funded qualifications, paid study leave and exam fees, plus mentoring and a dedicated buddy to support you through training.
  • Wellbeing & Support: 24/7 GP access, mental health support, Employee Assistance Programme, and a friendly, inclusive workplace culture that puts people first.
  • Life Outside Work: Adaptable and hybrid working, time off on your birthday, holiday purchase scheme, discounts and perks platform, and community volunteering days.
  • Career Progression: Clear career pathways, structured training plans, mentoring from experienced colleagues, and real responsibility from day one.
  • FlexHub: Customise your benefits package to suit your needs – from health plans to lifestyle perks.
Seniority level
  • Internship
Employment type
  • Full-time
Job function
  • Information Technology
Industries
  • Technology, Information and Internet

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Glasgow, Scotland, United Kingdom 2 weeks ago


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