Junior Data Analyst

Taunton
3 weeks ago
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Junior Data Analyst | Education/EdTech | Entry Level |Up to £32.5k | Fully Remote
 
Our client is an EdTech organisation delivering impactful data solutions to support schools and educators. They are looking for an enthusiastic, data-driven graduate or early-career professional who is keen to develop a career in data analytics and visualisation within the education sector.
 
This is an excellent opportunity to learn from experienced Power BI consultants, build hands-on experience, and develop best practice skills in data analytics, reporting, and stakeholder collaboration.
 
Role/Responsibilities:

Assist in the creation of interactive dashboards and reports using Power BI
Support data preparation, cleansing, and transformation activities
Work with SQL databases to extract, query, and manipulate data
Collaborate with senior consultants to deliver data solutions for schools
Learn and apply best practice in data visualisation and analytics
Help translate data into clear, accessible insights for non-technical users 
Skills/Experience:

Degree educated (STEM, Data Analytics, Computer Science, or similar)
Experience developing dashboards in Power BI
Familiarity with SQL and relational databases
Strong analytical and problem-solving skills
Confident communication skills and a collaborative mindset 
Desirable:

Interest in education or the EdTech sector
Understanding of school data (attendance, attainment, behaviour)

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