Vp Apprentice Data Analyst

Vp plc
Nottingham
1 week ago
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Join Our Apprenticeship Programme and Shape Your Future

Embark on a journey with us through our Apprenticeship programme, where we prioritise your growth and success beyond the training period. We are committed to equipping you with lifelong skills in a supportive and encouraging work environment, ensuring your career aspirations become a reality.


What Does a Data Analyst Do?

The Data Analyst role is about ascertaining how data can be used to answer questions and solve problems. Data analysis is a process of requirement‑gathering, inspecting, cleansing, transforming and modelling data with the goal of discovering useful information, informing conclusions and supporting decision‑making. Data analysis has multiple facets and approaches, encompassing diverse techniques under a variety of names.


Your Apprenticeship Journey:

Year 1: Working with the designated college on modules during the first year you will cover a number of modules including identifying data sources, liaising with customers, collecting, compiling and cleansing data and starting to produce data dashboards.


Year 2: Continuing to work with your designated college you will cover areas such as maintaining and developing reports, producing a range of standard and non‑standard statistical and data analyst reports and starting to identify, analyse and interpret trends or patterns in data.


Unlock Your Career Potential:

We offer a competitive starting salary of £21,000 in the first year, increasing to approximately £27,000 upon qualification. You'll receive on‑the‑job training alongside a college education leading to a nationally recognised Data Analyst Level 4 qualification. Successful completion of the apprenticeship scheme also guarantees a permanent position at Vp if still employed with Vp at the end of your Apprenticeship.


Are You the Right Fit?

Minimum qualifications include Grade 4 in GCSE Maths and English Language (or Grade 5 or above in Scottish Highers), along with strong communication skills, teamwork abilities, any relevant work experience and a genuine interest in engineering and / or equipment maintenance. Completing our application form thoughtfully, showcasing your personality and interest in our programme, is essential.


Join Our Dynamic Team:

This is a fantastic opportunity to join our dedicated team, where you'll play a crucial role in delivering top‑quality hire equipment that exceeds customer expectations. With exciting growth prospects and a commitment to superior customer service in the construction and housebuilding industries, we invite you to build your future alongside us as Vp continues to evolve and thrive.


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