Introduction to Artificial Intelligence
Introduction to Artificial Intelligence
This course provides a solid introduction to using AI in a way that’s approachable and non-technical. Learn about Gen AI and why it has become the most common way in which we interact with AI. You’ll gain strategies for fact-checking output and explore appropriate use cases. You’ll also be challenged to consider ethical, environmental, and legislative concerns in a world in which AI is constantly evolving.
This course will help learners to:
Recognize how AI is already integrated into daily life across various tools, platforms, and industries
Identify appropriate use cases for Gen AI across academic, creative, and professional contexts
Evaluate the trustworthiness of AI-generated outputs and check for bias, errors, and hallucinations
Reflect on the social, environmental, and labor impacts of the use and development of AI
Recognize the role of individuals and communities in shaping the future of AI
Language: English
Time to complete: 3 hours
How to access: Sage Campus is a digital library product. If you are a librarian, find out how to get Sage Campus for your university. If you are faculty, a researcher, or a student, recommend Sage Campus to your library.
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