Data Technician Trainer

London
9 months ago
Applications closed

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Data Scientist (Masters) - AI Data Trainer

My client, an emerging digital training and apprenticeship provider fully funded by the UK government, is seeking a Data Trainer to join their team on an initial 24-month contract.

You'll be supporting learners enrolled in the Level 4 Data Analyst Apprenticeship program.

This course is designed to equip students with core data skills - enabling them to identify, analyse, and model data in line with industry best practices. The program places strong emphasis on developing a rigorous understanding of data requirements and the real-world application of data principles.

The ideal candidate will have:

Previous commercial experience in a data-focused role
A dynamic and proactive approach to training and mentorship
Strong communication skills and the enthusiasm to support a growing, ambitious training provider
A collaborative mindset and a passion for making a positive impact on learners' careers

All teaching materials and learning plans will be provided, though there may be opportunities to create or adapt content - so experience or interest in content creation is a plus. All sessions are delivered virtually, offering flexibility and accessibility.

If you're interested in this rewarding opportunity, please send across your CV - I'd love to discuss the role with you!

In Technology Group Ltd is acting as an Employment Business in relation to this vacancy

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