Notebooks zum Lektüre
 
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Aurélien Geron 42f24fa44f Add GANs 2019-05-06 09:34:45 +08:00
docker Merge pull request #317 from CezCz/fix-jupyter 2018-12-02 16:49:41 +13:00
images Add the images/nlp directory 2019-04-23 20:06:24 +08:00
work_in_progress Add notebook 17 on autoencoders 2019-04-26 21:19:32 +08:00
.gitignore Add .bak.* and datasets/titanic to .gitignore 2019-04-16 08:44:30 +08:00
01_the_machine_learning_landscape.ipynb Create image directory and check for sklearn >= 0.20 2019-01-21 18:42:31 +08:00
02_end_to_end_machine_learning_project.ipynb Use separate joblib package rather than the one in sklearn (which is deprecated) 2019-04-26 21:22:15 +08:00
03_classification.ipynb Add chapter 15, time series and NLP using RNNs, CNNs and Attention 2019-04-16 08:27:36 +08:00
04_training_linear_models.ipynb Crop long outputs so they show up nicer on github.com 2019-04-16 00:06:57 +08:00
05_support_vector_machines.ipynb Crop long outputs so they show up nicer on github.com 2019-04-16 00:06:57 +08:00
06_decision_trees.ipynb Create image directory and check for sklearn >= 0.20 and TensorFlow >= 2.0-preview 2019-01-21 18:13:10 +08:00
07_ensemble_learning_and_random_forests.ipynb Crop long outputs so they show up nicer on github.com 2019-04-16 00:06:57 +08:00
08_dimensionality_reduction.ipynb Crop long outputs so they show up nicer on github.com 2019-04-16 00:06:57 +08:00
09_unsupervised_learning.ipynb Create image directory and check for sklearn >= 0.20 and TensorFlow >= 2.0-preview 2019-01-21 18:13:10 +08:00
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11_training_deep_neural_networks.ipynb Add 1cycle scheduling 2019-05-05 12:42:08 +08:00
12_custom_models_and_training_with_tensorflow.ipynb Rename chapters 11 to 15 and split chapter 15 into 15 and 16 2019-04-16 20:39:14 +08:00
13_loading_and_preprocessing_data.ipynb Rename chapters 11 to 15 and split chapter 15 into 15 and 16 2019-04-16 20:39:14 +08:00
14_deep_computer_vision_with_cnns.ipynb Rename chapters 11 to 15 and split chapter 15 into 15 and 16 2019-04-16 20:39:14 +08:00
15_processing_sequences_using_rnns_and_cnns.ipynb Rename chapters 11 to 15 and split chapter 15 into 15 and 16 2019-04-16 20:39:14 +08:00
16_nlp_with_rnns_and_attention.ipynb Stateful RNNs now support recurrent_dropout 2019-04-21 15:55:39 +08:00
17_autoencoders.ipynb Add GANs 2019-05-06 09:34:45 +08:00
INSTALL.md Simplify README.md, add links to binder, deepnotes and colab, and move installation details to INSTALL.md 2019-01-22 12:30:13 +08:00
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book_equations.ipynb Fix equation 16-6 (max_alpha'=>max_a') 2018-05-07 22:47:28 +02:00
extra_gradient_descent_comparison.ipynb Add intro paragraph, tx to Daniel and minor formatting fixes 2018-09-17 11:51:05 +02:00
index.ipynb Add more chapters to index.ipynb 2019-04-30 15:01:15 +08:00
math_linear_algebra.ipynb Right angle is pi/2, not pi/4. One reason why tau > pi ;) 2017-10-27 13:03:15 +02:00
requirements.txt Use separate joblib package rather than the one in sklearn (which is deprecated) 2019-04-26 21:22:15 +08:00
tools_matplotlib.ipynb fixed typo in tools_matplotlib.ipynb 2016-03-04 08:49:56 +01:00
tools_numpy.ipynb Fix small typo in numpy notebook 2018-03-24 17:34:38 +03:00
tools_pandas.ipynb Upgrade to latest pandas version, update resampling API 2018-01-05 14:36:11 +01:00

README.md

Machine Learning Notebooks

This project aims at teaching you the fundamentals of Machine Learning in python. It contains the example code and solutions to the exercises in the second edition of my O'Reilly book Hands-on Machine Learning with Scikit-Learn, Keras and TensorFlow:

Note: If you are looking for the first edition notebooks, check out ageron/handson-ml.

Quick Start

Want to play with these notebooks without having to install anything?

Use any of the following services.

WARNING: Please be aware that these services provide temporary environments: anything you do will be deleted after a while, so make sure you save anything you care about.

  • Open this repository in Binder:

    • Note: Most of the time, Binder starts up quickly and works great, but when handson-ml2 is updated, Binder creates a new environment from scratch, and this can take quite some time.
  • Or open it in Deepnote:

    • Note: Deepnote environments start up quickly, but they do not contain the latest Scikit-Learn and TensorFlow libraries, so you will need to run !python3 -m pip install -U -r requirements.txt before you import any library (or you must restart the runtime).
  • Or open it in Colaboratory:

    • Note: Colab environments only contain the notebooks you open, they do not clone the rest of the project, so you need to do it yourself by running !git clone https://github.com/ageron/handson-ml2 and !mv handson-ml2/* /content to have access to other files in this project (such as datasets and images). Moreover, Colab does not come with the latest libraries, so you need to run !python3 -m pip install -U -r requirements.txt then restart the environment (but do not reset it!). If you open multiple notebooks from this project, you only need to do this once (as long as you do not reset the runtimes).

Just want to quickly look at some notebooks, without executing any code?

Browse this repository using jupyter.org's notebook viewer:

Note: github.com's notebook viewer also works but it is slower and the math equations are not always displayed correctly.

Want to install this project on your own machine?

If you have a working Python 3.5+ environment and git is installed, then an easy way to install this project and its dependencies is using pip. Open a terminal and run the following commands (do not type the $ signs, they just indicate that this is a terminal command):

$ git clone https://github.com/ageron/handson-ml2.git
$ cd handson-ml2
$ python3 -m pip install --user --upgrade pip setuptools
$ # Read `requirements.txt` if you want to use a GPU.
$ python3 -m pip install --user --upgrade -r requirements.txt
$ jupyter notebook

If you need more detailed installation instructions, or you want to use Anaconda, read the detailed installation instructions.

Contributors

I would like to thank everyone who contributed to this project, either by providing useful feedback, filing issues or submitting Pull Requests. Special thanks go to Haesun Park who helped on some of the exercise solutions, and to Steven Bunkley and Ziembla who created the docker directory.