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ml_exercises/README.md
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# Machine Learning Exercises
This repository contains the Python exercises accompanying the theory from my [machine learning book](https://franziskahorn.de/mlbook/).
You might also want to have a look at the [cheat sheet](/cheatsheet.pdf), which includes a summary of the most important steps when developing a machine learning solution, incl. code snippets.
If you're unfamiliar with Python, please have a look at [this tutorial](https://github.com/cod3licious/python_tutorial) before working on the exercises, which also includes some notes on how to install Python and Jupyter Notebook on your own computer (please make sure you're using Python 3 and all libraries listed in the `requirements.txt` file are installed and up to date; you can verify this with the `test_installation.ipynb` notebook). <br>
If you have a Google account, you can also run the code in the cloud using **Google Colab**:
[![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/cod3licious/ml_exercises)
If you have any questions, please drop me a line at `hey[at]franziskahorn.de`.
Have fun!
## Course Overview
(You can also find the course syllabus on the last page of the [course description](/course_description.pdf).)
---
### Part 1:
##### Block 1.1:
- [ ] Read the whole chapter: ["Introduction: Solving Problems with ML"](https://franziskahorn.de/mlbook/_introduction_solving_problems_with_ml.html)
- [ ] Answer [Quiz 1](https://forms.gle/uzdzytpsYf9sFG946)
##### Block 1.2:
- [ ] Read the whole chapter: ["ML with Python"](https://franziskahorn.de/mlbook/_ml_with_python.html)
- [ ] Install Python on your computer and complete the [Python tutorial](https://github.com/cod3licious/python_tutorial) (if you haven't done this already)
##### Block 1.3:
- [ ] Read the whole chapter: ["Data & Preprocessing"](https://franziskahorn.de/mlbook/_data_preprocessing.html)
- [ ] Answer [Quiz 2](https://forms.gle/Pqr6EKHNxzrWb7MF9)
- [ ] Read the first section of the chapter ["ML Algorithms: Unsupervised & Supervised Learning"](https://franziskahorn.de/mlbook/_ml_algorithms_unsupervised_supervised_learning.html)
---
### Part 2:
##### Block 2.1:
- [ ] Read the section: ["UL: Dimensionality Reduction"](https://franziskahorn.de/mlbook/_ul_dimensionality_reduction.html)
- [ ] Work through [Notebook 1: visualize text](/exercises/1_visualize_text.ipynb)
##### Block 2.2:
- [ ] Read the section: ["UL: Outlier / Anomaly Detection"](https://franziskahorn.de/mlbook/_ul_outlier_anomaly_detection.html)
- [ ] Read the section: ["UL: Clustering"](https://franziskahorn.de/mlbook/_ul_clustering.html)
- [ ] Work through [Notebook 2: image quantization](/exercises/2_image_quantization.ipynb)
##### Block 2.3:
- [ ] Read the section: ["Supervised Learning: Overview"](https://franziskahorn.de/mlbook/_supervised_learning_overview.html)
- [ ] Answer [Quiz 3](https://forms.gle/M2dDevwzicjcHLtc9)
---
### Part 3:
##### Block 3.1:
- [ ] Read the sections: ["SL: Linear Models"](https://franziskahorn.de/mlbook/_sl_linear_models.html) up to and including ["SL: Kernel Methods"](https://franziskahorn.de/mlbook/_sl_kernel_methods.html)
- [ ] In parallel, work through the respective sections of [Notebook 3: supervised comparison](/exercises/3_supervised_comparison.ipynb)
##### Block 3.2:
- [ ] Read the section: ["Information Retrieval (Similarity Search)"](https://franziskahorn.de/mlbook/_information_retrieval_similarity_search.html) and review the sections on [TF-IDF feature vectors](https://franziskahorn.de/mlbook/_feature_extraction.html) and [cosine similarity](https://franziskahorn.de/mlbook/_computing_similarities.html)
- [ ] Work through [Notebook 4: information retrieval](/exercises/4_information_retrieval.ipynb)
##### Block 3.3:
- [ ] Read the section: ["SL: Neural Networks"](https://franziskahorn.de/mlbook/_sl_neural_networks.html)
- [ ] Work through [Notebook 5: MNIST with torch](/exercises/5_mnist_torch.ipynb) (recommended) **_or_** [MNIST with keras](/exercises/5_mnist_keras.ipynb) (in case others in your organization are already working with TensorFlow)
- [ ] Read the sections: ["Time Series Forecasting"](https://franziskahorn.de/mlbook/_time_series_forecasting.html) and ["Recommender Systems (Pairwise Data)"](https://franziskahorn.de/mlbook/_recommender_systems_pairwise_data.html)
---
### Part 4:
##### Block 4.1:
- [ ] Read the whole chapter: ["Avoiding Common Pitfalls"](https://franziskahorn.de/mlbook/_avoiding_common_pitfalls.html)
##### Block 4.2:
- [ ] Answer [Quiz 4](https://forms.gle/uZGj54YQHKwckmL46)
- [ ] Work through [Notebook 6: analyze toy dataset](/exercises/6_analyze_toydata.ipynb)
##### Block 4.3:
- [ ] _Case Study!_ [Notebook 7: predicting hard drive failures](/exercises/7_hard_drive_failures.ipynb) (plan at least 5 hours for this!)
---
### Part 5:
##### Block 5.1:
- [ ] Read the whole chapter: ["ML Algorithms: Reinforcement Learning"](https://franziskahorn.de/mlbook/_ml_algorithms_reinforcement_learning.html)
- [ ] Work through [Notebook 8: RL gridmove](/exercises/8_rl_gridmove.ipynb)
##### Block 5.2:
- [ ] Answer [Quiz 5](https://forms.gle/fr7PYmP9Exx4Vvrc8)
- [ ] Read the whole chapter: ["Conclusion: Using ML in Practice"](https://franziskahorn.de/mlbook/_conclusion_using_ml_in_practice.html)
- [ ] Complete the exercise: ["Your next ML Project"](/exercise_your_ml_project.pdf)
---