Artificial Intelligence Educator

QA Ltd
Gloucestershire
1 month ago
Applications closed

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Job Description

Artificial Intelligence Educator (Corporate)

(London, Manchester, Leeds, Birmingham, Slough)




About the role:

As an expert in your field, you will deliver QA and vendor specific innovative, high-quality training in Data Science, GenAI, and Python to a wide range of clients. You will empower learners to apply their knowledge effectively in real-world scenarios.


In addition to training delivery, you’ll play a key role in shaping the future of learning by contributing insights to the design and development of cutting-edge courses. With strong technical expertise in GenAI, machine learning, Python, and the NumPy ecosystem, and desirable experience in AI frameworks and cloud platforms, you’ll stay at the forefront of industry trends through ongoing professional development and a passion for education.



Role Responsibilities:


  • Training Delivery: Deliver high quality and engaging training in line with polices, industry standards and regulatory requirements.
  • Performance & Quality Metrics: Attain a consistent Trainer Satisfaction Score (TSAT) of 88%+ and achieve ‘Meeting Expectations’ in trainer observations, utilise feedback to improve performance and effecti...

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