Graduate Data Analyst

GRAYCE
Basildon
22 hours ago
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Role: Graduate Data Analysts – Apply before 31st January 2026
Location: Basildon, UK
Starting salary: £28,000
Application requirements

  • Achieved a 2:1 undergraduate degree in any degree subject
  • This role is due to begin in early 2026. Please only apply if you have completed your degree or will have finished your studies by this date.
  • Right to work in the UK unsponsored for the duration of the programme.
  • Ability to be on site 4/5 days a week.
  • A full UK driving licence with access to a vehicle

About the roles
Data Analyst

As a Graduate Data Analyst, you’ll work closely with business stakeholders to gather requirements, translate them into actionable solutions, and collaborate with developers to bring these ideas to life. This role is ideal for someone who enjoys problem‑solving, understanding business needs, and turning data into meaningful insights.


Data Governance Specialist

As a Graduate Data Governance Specialist, you’ll help ensure data is accurate, well‑managed, and trusted across the business. This rotational role gives you exposure to governance, quality, and master data management, working closely with data stewards and business teams to support compliance and improve processes. It’s ideal for someone detail‑oriented, curious, and eager to learn how data underpins decision‑making in a global organisation.


Why Grayce?

Grayce specialises in driving change and transformation for some of the world’s most ambitious organisations. For over a decade, we've partnered with FTSE 100 and 250 companies to deliver impactful results by developing and deploying high‑performing talent in the UK and beyond.


Our Accelerated Development Programme is designed to launch the careers of recent graduates eager to make an impact. We offer a fast‑track route to expertise, allowing you to gain hands‑on experience with one of our impressive clients in a variety of flexible roles such as Business Analysis, Software Engineering, Data Analysis and DevOps.


You will have a tailored learning development journey bespoke to your role, meaning you are prepared for whatever the day throws at you, whilst learning key skills and gaining industry specific accreditations along the way.


Join Grayce and accelerate your career!
What makes a great Grayce Analyst?
Education:

  • Achieved a 2:1 undergraduate degree in any degree subject

Technical Knowledge:

  • Data Analyst: Requirements gathering, stakeholder engagement, SQL, Power BI, Python
  • Governance Role: SQL, Python, understanding of data governance principles, interest in cloud platform, data quality concepts

Soft Skills:

  • Strong communication and ability to translate technical concepts for business audiences
  • Analytical mindset and attention to detail
  • Curiosity and willingness to learn new tools and processes
  • Adaptability and proactive approach


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