Graduate Data Analyst - London

GRAYCE
Watford
4 days ago
Create job alert
Graduate Data Analyst – via the Graduate Development Programme

Location: London


Starting Salary: £28,000


Application Requirements

  • Minimum 2:1 or above in a STEM (Science, Technology, Engineering & Mathematics) subject
  • Experience in analysing data
  • Right to work in the UK – unsponsored for the duration of the programme
  • Ability to work on site 5 days a week

Grayce is not on the UK Border Agency’s Sponsor Register and is unable to sponsor work visas for international applicants.


About the role

Are you a curious, adaptable, and proactive problem solver with strong communication skills and a drive to make an impact? We’re looking for ambitious graduates eager to learn, take ownership, and build meaningful relationships while delivering excellence.


Responsibilities

  • Transform complex data into actionable insights, create dynamic visualisations and drive business decisions
  • Collaborate with stakeholders, develop automated reports and dashboards, and refine technical expertise in a fast‑paced environment
  • Design and maintain data pipelines, integrate multiple data sources, and ensure data quality in a cloud‑based environment
  • Support quantitative research and management teams by delivering high‑quality data models and exploratory analysis
  • Mentor under the guidance of experienced Delivery Managers and Technical Trainers

Possible career tracks

  • Data Analyst: Kick‑start a career in turning data into insights and visualisations, driving decisions, and collaborating with stakeholders.
  • Data Engineer: Design, maintain and automate data pipelines, ensuring quality and scalability in a cloud‑based environment.
  • Data Scientist: Build robust data models, extract insights from complex datasets, and support data‑driven initiatives across teams.

Benefits

  • Competitive Salary: Starting at £28,000 with potential for significant growth.
  • Industry Recognition: Earn fully funded, industry‑recognised qualifications during the programme.
  • Mentors & Coaches: Access a network of mentors and coaches dedicated to your development.
  • Wellness Support: 24/7 Employee Assistance Programme offering confidential assistance for financial, legal, health and wellbeing.

Seniority level

Entry level


Employment type

Full‑time


Job function

Analyst


Industries

IT Services and IT Consulting


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