Data Analyst Apprentice

DiverseJobsMatter
Milton Keynes
4 days ago
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This is an apprenticeship position; therefore, anyone who holds a degree or master's degree in a subject such as Data Science will not be eligible.

You will also need to commit to completing a Level 4 Data Analyst Apprenticeship.

What will you be doing?

We have a number of data analyst apprenticeship roles available, and the responsibilities and deliverables will vary, but example duties include:

  • Establish reporting needs and deliver insightful and accurate information.
  • Collect, compile, and cleanse data.
  • Identify, analyze, and interpret trends or patterns in data sets.
  • Summarize and present the results of data analysis to a range of stakeholders, making recommendations.
  • Interrogate and analyze data to root-cause data quality issues.

What do you need?

To be successful in this apprenticeship, you'll have high levels of accuracy and attention to detail. You should be competent in using Microsoft Excel and have a proven interest in data analysis (this could be from formal studies, self-study, or the workplace).

To be eligible for the apprenticeship, you also need to have a minimum of 5 GCSEs (grades 9-4 or A-C) including Maths and English. Some experience of using data tools (e.g., SQL, Python, Power BI, etc.) would be an advantage but not essential.

You must also meet the eligibility criteria in the government apprenticeship rules, including:

  • You must have the right to work in the UK.
  • Residency: You must meet one of the following:
    • A UK citizen who has been resident in the UK or EEA for the previous three years.
    • An EEA or Switzerland national who has obtained either pre-settled or settled status under the EUSS and has lived continuously in the EEA, Switzerland, Gibraltar, or the UK for at least the previous 3 years.
    • A non-UK national who has been ordinarily resident in the UK and Islands for at least the previous 3 years where no part of this period has been wholly or mainly for the purpose of receiving full-time education. E.g., time undertaking a degree or master's degree as an overseas student does not count towards the 3 years.
    • An individual with immigration or asylum-seeking status which makes you eligible to receive government apprenticeship funding.
  • Prior knowledge and skills: You must not hold a level 4 qualification or above in a related subject, e.g., a degree or master's degree in subjects including Maths, Data Analysis, Business Analytics, etc.
  • Government funded learning programmes: You must not be on another government funded learning programme.

What's in it for you?

You’ll be working towards your level 4 Data Analyst apprenticeship over 2 years to gain a recognised qualification alongside industry experts. As well as a salary of £23,000, you'll also be eligible for a new car every six months (as long as you have a full, clean UK driving licence). You’ll receive 27 days holiday – plus bank holidays, access to our pension scheme, employee well-being support, on-site restaurant, and shopping discounts.

What's the assessment process?

Once you hit the apply button, you will be asked to submit an application form with CV and answer a couple of video interview questions so that we have a chance to get to know a little more about you.

Our final step in the journey would be to attend a face-to-face assessment centre, where you will take part in a range of activities based on real-life tasks.

Successful candidates will be offered a place soon after the assessment centre for a September 2025 start.

By applying you are agreeing to share your information with Digital Native, our apprenticeship training provider.

Seniority level

Internship

Employment type

Internship

Job function

Analyst

Industries

Motor Vehicle Manufacturing and Retail Motor Vehicles


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