Start your journey into ai features with foundational concepts and hands-on exercises designed for newcomers.
Start now · step 1 of 7
Basic algebra and statistics helpful but not required
Any programming experience; Python preferred
Google’s AI Course for Beginners (in 10 minutes)!
Beginner99% of Beginners Don't Know the Basics of AI
BeginnerOpenCV Python Tutorial #1 - Introduction & Images
BeginnerHow I'd learn ML in 2025 (if I could start over)
BeginnerNatural Language Processing In 10 Minutes | NLP Tutorial For Beginners | NLP Training | Simplilearn
BeginnerCS50s Introduction to Programming with Python
BeginnerMachine Learning - StatQuest
BeginnerGoogle’s AI Course for Beginners (in 10 minutes)!
Beginner99% of Beginners Don't Know the Basics of AI
BeginnerOpenCV Python Tutorial #1 - Introduction & Images
BeginnerHow I'd learn ML in 2025 (if I could start over)
BeginnerNatural Language Processing In 10 Minutes | NLP Tutorial For Beginners | NLP Training | Simplilearn
BeginnerCS50s Introduction to Programming with Python
BeginnerMachine Learning - StatQuest
BeginnerFollow these courses in order to complete the learning path. Click on any course to enroll.
Google’s AI Course for Beginners (in 10 minutes)!
Learn 99% of Beginners Don't Know the Basics of AI
OpenCV Python Tutorial 1 - Introduction & Images
Learn How I'd learn ML in 2025 (if I could start over)
Natural Language Processing In 10 Minutes | NLP Tutorial For Beginners | NLP Training | Simplilearn
CS50s Introduction to Programming with Python
Clear and simple explanations of machine learning algorithms. Understand the math and intuition behind ML with Josh Starmer.
Explore related content to expand your skills beyond this learning path.
Explore all Machine Learning courses and paths
More beginner-level AI and ML courses
Browse courses from Coursera, Udemy, edX, and more
Browse all structured AI and ML learning paths
See the side-by-side breakdown and our pick by scenario
See the side-by-side breakdown and our pick by scenario
Start your journey into ai features with foundational concepts and hands-on exercises designed for newcomers.
You'll work through Understand core concepts and foundations; Build your first projects with guided tutorials; Gain confidence with hands-on exercises; Build and train machine learning models from scratch; Understand supervised, unsupervised, and reinforcement learning paradigms; Evaluate model performance using industry-standard metrics.
About 61 hours of study across 7 courses — and you can go at your own pace.
It's pitched at beginner level — a solid starting point if you're new to the topic.
7 curated courses, sequenced from foundational to advanced.
The courses in this path can be started for free.
Enroll in this path to track your progress and stay motivated.