Data Analyst

Birmingham
2 months ago
Applications closed

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Data Analyst

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Data Analyst

DATA ANALYST - up to £45,000

Remote Permanent Full time

If you are an experienced Data Analyst who has had experience of coaching and mentoring people, either at work, within education or within a sports setting, had you thought about using your expertise within Data Analysis to train other people?

Becoming a Trainee Data Analyst Tutor is the first step on the career ladder to becoming a Data Analyst professional Tutor. You would gain training and assessing qualifications. It will take nine to 12 months to become fully trained so this must be viewed as a career choice and not a stop gap.

Once a qualified Data Analyst Tutor, a great career structure awaits and the great news is that because you are teaching people, you would need to keep your skills completely up to date with progress within the subject matter.

You'd be training, coaching and mentoring Data Analysts who are studying for their level 3 and 4 Data Analyst apprenticeship.

As a Data Analyst Trainee Tutor your caseload of learners would all be in employment, working as Data Analysts and gaining qualifications as part of their job.

You would be working for an award winning training provider who are approved to deliver Data Analyst Apprenticeships level 3 - 4.

You personally, would receive first class train the trainer support and mentoring and study for professional training and assessing qualifications.

The role is full time permanent. Your interaction with learners would be during office hours and not evenings and weekends.

The role is fully remote, but as a Data Analyst Trainee Tutor you wouild need to be UK based so that you can attend continual professional development events.

Required for the Role of Data Analyst Trainee Tutor:

  • Recent experience within Data Analysis. As you will be teaching Data Analysts you must understand the subject and have experience within the subject matter. You need to know more than your learners!!

  • A formal IT or business related qualification to level 4 or above - such as a level 4 apprenticeship or a degree.

  • You must possess a genuine desire to support and help your learners.

  • You will need a dedicated work space at home where you can work undisturbed.

  • You must be a clear, confident communicator - both written and spoken

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