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Free Courses to Learn AI (Artificial Intelligence) in 2024

 AI For Everyone– Coursera

Provider- deeplearning.ai

Rating- 4.8/5

Time to Complete- 6 Hours

Level- Beginner

This is a Free to Audit course which means all the content is available freely but for the certificate, you have to pay.

As the name sounds, “AI for Everyone”, so yes, this course is for everyone who wants to learn Artificial Intelligence. This course is taught by Andrew Ng the Co-founder of Coursera, and an Adjunct Professor of Computer Science at Stanford University.

This course is a perfect first step for complete beginners in Artificial Intelligence. If you are a beginner and want to learn Artificial intelligence, then start your AI journey with this course.

This course provides a comprehensive overview of Artificial Intelligence. But this course is very basic, only for beginners.

Who Should Enroll?

  • Those who are complete beginners and want to learn the Basics of Artificial Intelligence.

Interested to Enroll?

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