Data Analyst Apprenticeship

Baltic Apprenticeships
Guisborough
4 days ago
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Data Analyst Apprentice

Are you passionate about data and interested in making a real difference in education? Atomix Educational Trust is offering an exciting opportunity for a Data Analyst (Data and Reporting) Apprentice to join their team and support data-driven decision-making across the Trust. This role is ideal for someone who enjoys working with data, spotting patterns, and presenting insights that help improve student outcomes.

Atomix Educational Trust is committed to delivering high-quality education and continuous improvement across its colleges and academies. Data plays a vital role in shaping teaching strategies, curriculum planning, and student support, making this a fantastic opportunity to develop your analytical skills in a meaningful and impactful environment.

In this role, youll work towards your Level 3 Data Technician qualification, delivered by our expert training team at Baltic Apprenticeships.

A Typical Day in the Job:
Assist with the collection, management, and analysis of student data to support effective decision-making across the Trust.
Work closely with the Data Manager and Data Lead to support data processing throughout the academic year.
Produce internal and external reports and statistics from MIS databases in line with reporting schedules.
Cross-check and validate data to ensure accuracy, compliance, and readiness for funding and statistical returns.
Liaise with teaching and support staff to understand reporting requirements and promote the use of data systems.
Support the development and improvement of data systems, dashboards, progress tracking, and trend analysis tools.
Assist with data quality checks and troubleshooting data-related issues.
Support software, module, and reporting implementations, ensuring staff are confident using new systems.
Full training and support will be provided by your workplace mentor and the team at Baltic Apprenticeships.

Desired Qualities, Skills and Knowledge:
Experience working with data and producing reports.
Strong Excel and spreadsheet skills.
Good working knowledge of database systems.
Ability to combine multiple data sources and present complex information clearly.
High levels of accuracy and attention to detail.
Excellent communication and organisational skills.
Ability to manage multiple tasks, meet deadlines, and work under pressure.
Strong problem-solving and fault-finding skills.
Willingness to undertake training and continuous professional development.
Ability to work effectively with a wide range of stakeholders.
At least 2 A Levels (or equivalent Level 3 qualification) and Level 2 qualifications in Maths and English.
Salary, Hours & Benefits:
Salary:

£16,000 per annum
Hours:
Monday to Thursday: 8:30am

4:30pm
Friday: 8:30am

4:00pm
37 hours per week, whole year
This apprenticeship programme will provide you with everything you need to launch and develop your career in data. Afterwards, well support you to take the next steps, including further training and progression.

Your Training with Baltic Apprenticeships
Baltic Apprenticeships were the first training provider to offer a completely tech-focused, tech-driven training solution. We help people transform their knowledge and passion into skills that employers need.

This apprenticeship will teach you essential data skills, including how to source, format, and present data; data validation and analysis; and how to apply legal and ethical principles when gathering and manipulating business data.

To apply, please submit your CV and a cover letter explaining your interest in the role and what you hope to gain from an apprenticeship with Atomix Educational Trust. If your application is successful, one of our recruitment consultants will be in touch to discuss your application further.

Eligibility Criteria
You must have the right to work in the UK and a valid residency status to apply for this apprenticeship.

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