Data Analytics Trainer (Healthcare)

London
5 months ago
Applications closed

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Data Analytics Trainer (Healthcare)
Remote - Part-Time, up to 3 days per week
Up to £47,500 (Pro Rata) + Pension + Flexible Hours

Do you have a background in Data Analytics and Healthcare?

Are you open to making a career change and step into a role where you will help to train the next generation of Healthcare Data professionals and play an important part in peoples' lives?

On offer is a unique opportunity to step into a first-of-its-kind role and take ownership for the delivery of a highly important training programme.

This well-established organisation has an excellent reputation within their industry and are known for having a culture that focuses on helping people, a team that is diverse and for looking after their staff. With excellent prospects on offer, they have a structured progression pathway for all members of staff and provide plenty of training & qualification opportunities to their staff.

In this role, you will deliver virtual/video seminars to groups of apprentices and provide 1 to 1 coaching & mentoring. You will also facilitate small round tables, teaching & providing guidance to groups of 5, and take responsibility for assessing student progress and providing them with feedback.

The ideal candidate for this role will have an understanding of experience of Data Analytics & Data analysis relating to Health and/or Social Care. This will include excellent mathematics & statistics knowledge, as well as knowledge of population health and epidemiology.

If you are a Data Analytics professional with experience in the Healthcare or Social care industries and are looking for an opportunity that offers training & progression and a chance to make an impact & help other people, then this role is for you.

The Role:

Delivering virtual seminars
Coaching students 1 to 1
Conducting round table sessions with small groups of students
Assessing apprentices' progressThe Person:

Data Analytics, Data Science or Data Engineering professional
Experience of the healthcare or social care sectors
Strong mathematical, statistical and analytical skills
Knowledge of population health & epidemiology

Reference Number: BH-(phone number removed)

To apply for this role or to be considered for further roles, please click "Apply Now" or contact Ilyas Shirwani at Rise Technical Recruitment.

We are an equal opportunities employer and welcome applications from all suitable candidates

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