2021-08-20 15:54:59 +02:00
2021-08-18 19:07:05 +02:00
2021-08-20 15:54:59 +02:00
2021-06-17 11:17:39 +02:00
2021-08-20 15:54:59 +02:00
2021-08-20 15:54:59 +02:00
2021-08-18 19:07:05 +02:00

Machine Learning Exercises

This repository contains the Python exercises accompanying the theory from my machine learning book.

You might also want to have a look at the cheat sheet, 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 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).
If you have a Google account, you can also run the code in the cloud using Google Colab: Open In Colab

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.)


Part 1:

Block 1.1:
Block 1.2:
Block 1.3:

Part 2:

Block 2.1:
Block 2.2:
Block 2.3:

Part 3:

Block 3.1:
Block 3.2:
Block 3.3:

Part 4:

Block 4.1:
Block 4.2:
Block 4.3:

Part 5:

Block 5.1:
Block 5.2:

Description
No description provided
Readme 13 MiB
Languages
Jupyter Notebook 100%