Autoplay
Autocomplete
Previous Lesson
Complete and Continue
IGTC01OS - Python for Data Science Essential Training Part 2 (EN)
01 - Introduction
01 - Machine learning rocks (0:33)
02 - What you should know (0:27)
02 - 1. Introduction to Data Science
02 - Why use Python for data science (3:41)
01 - Defining data science (5:09)
03 - Where does AI fit in (3:29)
03 - 2. Introduction to Machine Learning
01 - Machine learning 101 (10:45)
02 - Grouping machine learning algorithms (6:26)
04 - 3. Regression Models
02 - Multiple linear regression (8:36)
01 - Linear regression (11:18)
03 - Logistic regression Concepts (8:48)
04 - Logistic regression Data preparation (7:05)
05 - Logistic regression Treat missing values (9:32)
06 - Logistic regression Re-encode variables (11:01)
07 - Logistic regression Validating data set (3:22)
08 - Logistic regression Model deployment (4:18)
09 - Logistic regression Model evaluation (2:30)
10 - Logistic regression Test prediction (3:42)
05 - 4. Clustering Models
01 - K-means method (12:31)
02 - Hierarchical methods (13:31)
03 - DBSCAN for outlier detection (9:44)
06 - 5. Dimension Reduction Methods
02 - Principal component analysis (PCA) (9:55)
01 - Explanatory factor analysis (5:11)
07 - 6. Other Popular Machine Learning Methods
01 - Association rules models with Apriori (19:29)
02 - Neural networks with a perceptron (10:27)
03 - Instance-based learning with KNN (8:32)
04 - Decision tree models with CART (8:10)
05 - Bayesian models with Naive Bayes (12:10)
06 - Ensemble models with random forests (12:39)
08 - Conclusion
01 - Next steps (1:22)
Teach online with
01 - Association rules models with Apriori
Lesson content locked
If you're already enrolled,
you'll need to login
.
Enroll in Course to Unlock