- 
                                Are you ready to take a deeper dive into mastering the concepts and techniques involved in machine learning? This learning path shows how machine learning algorithms work and how to design them yourself. There's a lot to learn in this rapidly growing (and highly recuited-for) field, and these courses will give you an extremely solid skill set. - Explore the concepts and techniques behind designing machine learning algorithms
- Learn how recommendation systems work and how to build them
- Master how to design machine solutions for different applications
 
Overview
                    Syllabus
                                    
                  
                  
                                - 
                                        - Course 1: Machine Learning and AI Foundations: Decision Trees with SPSS
- Establish a strong foundation in ML by exploring the IBM SPSS Modeler and learning about CHAID and C&RT. This course is designed to help expand your data science skills.
- Course 2: Deploying Scalable Machine Learning for Data Science
- Learn how to use design patterns for scalable architecture and tools such as services and containers to deploy machine learning at scale.
- Course 3: Building a Recommendation System with Python Machine Learning & AI
- Discover how to use Python to build programs that can make recommendations. This hands-on course explores different types of recommendation systems, and shows how to build each one.
- Course 4: Machine Learning and AI Foundations: Clustering and Association
- Learn how to use cluster analysis, association rules, and anomaly detection algorithms for unsupervised learning.
- Course 5: Machine Learning and AI: Advanced Decision Trees with SPSS
- Work toward a mastery of machine learning by exploring advanced decision tree algorithm concepts. Learn about the QUEST and C5.0 algorithms and a few advanced topics.
- Course 6: Machine Learning and AI Foundations: Classification Modeling
- Classification methods are among the most important in modern data science. Learn classification strategies and algorithms for machining learning and AI.
- Course 7: Machine Learning and AI Foundations: Value Estimations
- Discover how to solve value estimation problems with machine learning. Learn how to build a value estimation system that can estimate the value of a home.
- Course 8: Machine Learning & AI Foundations: Linear Regression
- Expand your data science skills by learning how to leverage the concepts of linear regression to solve real-world problems.
- Course 9: Machine Learning and AI Foundations: Recommendations
- This project-based course shows programmers of all skill levels how to use machine learning to build programs that can make recommendations—like recommending new products.