Trainee Data Analyst

TieTalent
Sheffield
1 month ago
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Our client, a prominent IT and tech industry leader, is seeking a detail-oriented and ambitious Trainee Data Analyst. If you're eager to develop hands-on data skills while working with industry experts, this is the perfect role for you.

Role Overview

You will support data collection, analysis, and reporting efforts to drive business decisions. Working alongside senior analysts, you will gain valuable experience in interpreting data and creating visual insights.

Key Responsibilities

Assist in collecting, analyzing, and interpreting data.

Develop reports, dashboards, and visualizations to support business needs.

Ensure data accuracy and resolve inconsistencies.

Translate business needs into data-driven solutions.

Support automation initiatives for enhanced reporting.

Ideal Candidate

Degree in Mathematics, Computer Science, Statistics, Data Science, or a related field.

Strong analytical mindset and keen interest in data insights.

Familiarity with SQL and Excel (experience with Tableau or similar tools is a plus).

Excellent communication skills for presenting insights to non-technical stakeholders.

Enthusiastic about learning in a dynamic, fast-paced setting.

What’s in It for You?

Structured training program to enhance your data analytics expertise.

Mentorship from experienced professionals.

Opportunities to work on innovative projects.

Supportive and inclusive workplace with career growth potential.

Competitive salary and benefits package.

Take your first step into data analytics—apply today


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