AI and Machine Learning

Teach Teens Computing: Understanding AI for Educators

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eDX

Explores the ethical consequences, practical applications, and varieties of AI systems in education and the workplace.

Key AI Functions:

machine learning,artificial intelligence,ai & machine learning

Description for Teach Teens Computing: Understanding AI for Educators

  • Understanding Predictive and Generative AI Systems: Establishes a fundamental understanding of the capabilities and applications of a variety of AI system types.

  • Evaluating the Influence of AI on Education and Work: This study investigates the ethical application of AI tools in professional and educational settings.

  • Identifying AI Applications and Limitations: Examines the categories of issues that AI tools can resolve, while also acknowledging their limitations and obstacles.

  • Practical AI Tool Usage: Offers practical experience with AI chatbots and image generators, with an emphasis on optimizing tool outputs by gaining a more profound comprehension of their mechanisms.

Level: Beginner

Certification Degree: Yes

Languages the Course is Available: 1

Offered by: On edX provided by RaspberryPiFoundation

Duration: 2�3 hours per week approx 3 weeks

Schedule: Flexible

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