Junior Data Analyst – CTI Digital (Manchester, UK)

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Manchester
1 month ago
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Junior Data Analyst – CTI Digital (Manchester, UK)

CTI Digital is hiring aJunior Data Analyst to join its Data & Insights team in Manchester. This full-time hybrid role offers a competitive salary range of £30,000 to £55,000 (Glassdoor estimate) and provides an exciting opportunity to work on innovative digital projects with some of the UK’s most ambitious brands. If you’re passionate about data, eager to learn, and ready to make an impact, this role offers the perfect launchpad for your analytics career.

About CTI Digital

Founded in 2004, CTI Digital is a full-service digital agency with over 150 strategists and specialists. The company delivers strategic consultancy, web development, and digital marketing services to clients across industries—from Chester Zoo and Zip World to Balfour Beatty and Mind.

CTI Digital is known for its bold approach to digital transformation, embracing cutting-edge technologies and fostering a culture of collaboration, curiosity, and continuous learning. Employees enjoy autonomy, recognition, and the chance to work on projects that shape the future of digital experiences.

Position Overview

As a Junior Data Analyst, you’ll be part of the Data & Insights team, which drives smarter business outcomes through clear, consistent, and actionable insights. You’ll work closely with stakeholders across departments to build dashboards, analyze trends, and support decision-making with reliable data systems.

This role is ideal for recent graduates or early-career professionals who want to grow in a hands-on data environment. You’ll gain exposure to cloud-based infrastructure, business intelligence tools, and real-world analytics challenges.

  • Position Title: Junior Data Analyst
  • Company: CTI Digital
  • Location: Manchester, England
  • Employment Type: Full-Time
  • Work Environment: Hybrid (2 days/week in office)

Key Responsibilities

  • Maintain and optimize the central data warehouse and ELT (Extract, Load, Transform) pipelines
  • Build reliable data models by combining datasets from multiple platforms
  • Develop visualizations in Tableau Cloud to create intuitive dashboards and reports
  • Collaborate with stakeholders to understand reporting needs and deliver scalable BI solutions
  • Review data structures and reporting outputs to identify improvements
  • Implement data quality assurance processes to ensure accuracy and completeness
  • Maintain documentation for systems, processes, and data flows
  • Ensure data security and proper access in compliance with best practices
  • Partner with a programme coordinator to prioritize system improvements

Required Skills and Experience

CTI Digital is looking for potential, not perfection. If you meet most of the following criteria, you’re encouraged to apply:

  • Strong grasp of data analysis and ability to spot trends or inconsistencies
  • Comfortable writing and editing SQL queries
  • Curious mindset and interest in exploring data to answer real questions
  • Ability to simplify complex information and present it clearly
  • Organized, detail-oriented, and receptive to feedback
  • Bonus: Experience with cloud tools like Google Sheets, HubSpot, or ELT platforms (e.g., Fivetran)

Inclusive Hiring Philosophy

CTI Digital actively challenges the “Gender Confidence Gap” and encourages applicants who may not meet 100% of the listed criteria. Some of the company’s best hires didn’t check every box, so if you’re passionate and willing to learn, you’re welcome to apply.

Benefits and Perks

CTI Digital offers a comprehensive benefits package designed to support employee well-being and professional growth:

  • 28 days annual leave, plus bank holidays
  • Hybrid working model (2 days/week in office)
  • Health cash plan
  • Mental health and well-being programme
  • Relaxed office environment (dogs welcome!)
  • Regular company socials and team-building events
  • Dedicated time and budget for professional development

Why This Role Matters

The Junior Data Analyst role is a gateway to a career in data-driven decision-making. You’ll work on real projects, collaborate with industry experts, and contribute to solutions that impact clients and internal operations alike. This is more than just a technical role—it’s a chance to grow, innovate, and be part of a team that values your ideas.

Whether you’re a recent graduate or transitioning into data from another field, CTI Digital offers the mentorship, tools, and culture to help you thrive.

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