Starting Your AI Career Has Never Been Easier
#BreakIntoAI with the new Machine Learning Specialization, an updated foundational program for beginners created by Andrew Ng.
Presenting the new
Machine Learning Specialization
About the original course
2012
Year launched
Rated 4.9 out of 5 by 170K learners
4.8 Million
Learners enrolled
About the instructor
A pioneer in the AI industry, Andrew Ng co-founded Google Brain and Coursera, led AI at Baidu, and has reached and impacted millions of learners with his machine learning courses.
How the Machine Learning Specialization can help you
Newly rebuilt and expanded into 3 courses, the updated Specialization teaches foundational AI concepts through an intuitive visual approach, before introducing the code needed to implement the algorithms and the underlying math.
I’m a complete beginner
- Doesn’t require prior math knowledge or a rigorous coding background
- Takes the core curriculum — vetted by millions of learners over the years — and makes it more approachable
- Each lesson begins with a visual representation of machine learning concepts, followed by the code, followed by optional videos explaining the underlying math
I enrolled in but didn’t complete the original Machine Learning course
- Doesn’t require prior math knowledge or a rigorous coding background
- Balances intuition, code practice, and mathematical theory to create a simple and effective learning experience
- Includes new ungraded code notebooks with code samples and interactive graphs to help you complete graded assignments
I’ve already completed the original Machine Learning course
- Great way to refresh foundational ML concepts
- Assignments and lectures have been rebuilt to use Python rather than Octave
- The section on applying machine learning has been updated significantly based on emerging best practices from the last decade
- Not for you? Take the next step with the Deep Learning Specialization!
What Learners Are Saying
- 3 Courses
- 2.5 months (5 hours/week)
- Introductory
Skills you will gain
- Linear Regression
- Logistic Regression
- Neural Networks
- Decision Trees
- Recommender Systems
- Supervised Learning
- Logistic Regression for Classification
- Gradient Descent
- Regularization to Avoid Overfitting
- Tensorflow
- Tree Ensembles
- XGBoost
- Advice for Model Development
- Unsupervised Learning
- Anomaly Detection
- Collaborative Filtering
- Reinforcement Learning
Syllabus
Course Slides
You can download the annotated version of the course slides below.
*Note: The slides might not reflect the latest course video slides. Please refer to the lecture videos for the most up-to-date information. We encourage you to make your own notes.