Data Analyst Trainer

Sheffield
2 days ago
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DATA ANALYST TRAINER

Full time Permanent Remote upto £45,000 DOE

If you are a seasoned Data Analyst had you thought about using your knowledge and expertise to guide and mentor Trainee Data Analysts?

This is an ideal role for a Data Analyst who wishes to train to become a Data Analyst Trainer as a study package is included. This includes a mentoring programme and the opportunity to study for professional training and assessing qualifications.

This is a full time, permanent role and you would be paid a salary of up to £45,000 whilst you train to become a Data Analyst Trainer.

As a Data Analyst Trainer you would be working for an award winning, Ofsted Grade Good training provider who deliver level 3 and 4 apprenticeships in Data Analysis.

Working from home, you would have a caseload of trainee Data Analysts, all in employment working in various data analytical roles who are studying for their level 3 and level 4 qualifications. They will be working for organisations who will be looking to you to provide them with first class training plus your expertise in the subject with which you will guide and mentor them.

As a Data Analyst Trainer your role would be to support learners with their studies, putting together their portfolios via the telephone, email and MS Teams. You would be using your knowledge to pass on to them. Taking the theory into the real life using your own practical experience.

Becoming a Data Analysis Trainer is only the first step on the career ladder within apprenticeships. The apprenticeship sector offers great career progression opportunities, which of course attract higher level salaries too. Training providers usually offer a starting salary (as stated above) and this often is increased once Trainees carry a full caseload, have passed their training qualifications and probationary period.

Essential for the role of Trainee Data Analyst Trainer

  • You MUST possess a level 4 qualification in a relevant IT subject. THIS IS ESSENTIAL. To include level 4 apprenticeship, HND, Foundation degree or above.

  • You MUST have practical experience of working within data analysis. You must have the knowledge to be able to explain theory clearly and this would only be gained by doing the role yourself.

  • You MUST want to become a tutor. This is a 12 month training programme so cannot be used as a stop gap.

  • You must have clear, concise communication skills - both verbal and written.

  • You MUST be UK based and able to work normal office hours. You cannot do this role evenings or weekends.

    If you genuinely wish to train to become a Data Analyst Tutor, please send your CV

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