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Entry Level Data Analyst

Cardiff
3 weeks ago
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Our client—a forward-thinking tech firm driving innovation across industries—is on the lookout for an enthusiastic Entry-Level Data Analyst to join their expanding analytics team. This is an exciting opportunity to gain real-world experience, develop in-demand skills, and contribute to meaningful projects from day one.

What You’ll Be Doing:

  • Collect, clean, and prepare data for analysis and reporting

  • Develop dashboards and reports using Excel, SQL, and visualisation tools like Power BI or Tableau

  • Identify trends, patterns, and actionable insights to support business strategy

  • Help automate data processes and enhance reporting capabilities

  • Translate business challenges into effective, data-driven solutions

    What We’re Looking For:

  • A degree in Data Science, Mathematics, Statistics, Computer Science, or a related field

  • Familiarity with Excel and basic SQL; knowledge of Power BI, Tableau, or similar tools is a plus

  • Strong analytical mindset and attention to detail

  • Confident communicator who can present insights clearly to both technical and non-technical audiences

  • Self-motivated, proactive, and eager to learn in a dynamic environment

    What You’ll Gain:

  • Comprehensive onboarding and training with tools and platforms used in the field

  • The opportunity to work on real projects that influence key business decisions

  • Mentorship from experienced data professionals and a supportive team environment

  • Access to long-term growth opportunities in a fast-paced, high-tech setting

  • Competitive salary and benefits, with a focus on learning and development

    Apply now and take the first step toward a rewarding career in tech and data

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