Data Analytics Trainer (no-code)

Oscar Technology
Greater London
6 months ago
Applications closed

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Freelance Data Skills Trainer (No-code & Extended Programmes)

We're partnering with a leading digital skills training provider that specialises in upskilling professionals across Europe. They deliver high-quality, industry-relevant training in partnership with employers, helping individuals enhance their career prospects through practical, project-based learning.

They've recently launched two new Data Skills programmes aimed at professionals looking to expand their data capabilities.

The delegates are all corporate staff sponsored by their employers, and will range in experience / level (groups will be slit accordingly)

Data Skills programmes:

No-code Programme - Data visualisation, data cleaning, data analytics, statistics, Power BI Extended Programme - All of the above, plus basic Python (Pandas), SQL, and practical machine learning

Course Format:

Full-time: 10-12 weeks, one weekday (09:00 - 17:30)

Evenings: 16 weeks, two evenings per week (18:00-21:00)

Contract Details:

Start: September Duration: 12 - 16 weeks (initial programme) Rates: Competitive (daily/hourly) Location: Remote (UK-based delivery)

Requirements:

Hands-on commercial data experience (Power BI, Python, SWL, Machine Learning) Experience teaching adult learners or apprentices (Level 4-7) Ability to relate topics to real-world scenarios Strong communication and facilitation skills

If you've got real-world data experience and love sharing your knowledge, please click APPLY!

Oscar Associates (UK) Limited is acting as an Employment Business in relation to this vacancy.

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