..
|
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
|