Name
..
datasets
figures
images
solutions
01 Introduction to Machine Learning.ipynb
02 Scientific Computing Tools in Python.ipynb
03 Data Representation for Machine Learning.ipynb
04 Training and Testing Data.ipynb
05 Supervised Learning - Classification.ipynb
06 Supervised Learning - Regression.ipynb
07 Unsupervised Learning - Transformations and Dimensionality Reduction.ipynb
08 Unsupervised Learning - Clustering.ipynb
09 Review of Scikit-learn API.ipynb
10 Case Study - Titanic Survival.ipynb
11 Text Feature Extraction.ipynb
12 Case Study - SMS Spam Detection.ipynb
13 Cross Validation.ipynb
14 Model Complexity and GridSearchCV.ipynb
15 Pipelining Estimators.ipynb
16 Performance metrics and Model Evaluation.ipynb
17 In Depth - Linear Models.ipynb
18 In Depth - Support Vector Machines.ipynb
19 In Depth - Trees and Forests.ipynb
20 Feature Selection.ipynb
21 Unsupervised learning - Hierarchical and density-based clustering algorithms.ipynb
22 Unsupervised learning - Non-linear dimensionality reduction.ipynb
23 Out-of-core Learning Large Scale Text Classification.ipynb
helpers.py