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Python assignments for the machine learning class by andrew ng on coursera with complete submission for grading capability and re-written instructions.

Coursera Machine Learning MOOC by Andrew Ng

Python Programming Assignments

This repositry contains the python versions of the programming assignments for the Machine Learning online class taught by Professor Andrew Ng. This is perhaps the most popular introductory online machine learning class. In addition to being popular, it is also one of the best Machine learning classes any interested student can take to get started with machine learning. An unfortunate aspect of this class is that the programming assignments are in MATLAB or OCTAVE, probably because this class was made before python became the go-to language in machine learning.

The Python machine learning ecosystem has grown exponentially in the past few years, and is still gaining momentum. I suspect that many students who want to get started with their machine learning journey would like to start it with Python also. It is for those reasons I have decided to re-write all the programming assignments in Python, so students can get acquainted with its ecosystem from the start of their learning journey.

These assignments work seamlessly with the class and do not require any of the materials published in the MATLAB assignments. Here are some new and useful features for these sets of assignments:

  • The assignments use Jupyter Notebook, which provides an intuitive flow easier than the original MATLAB/OCTAVE assignments.
  • The original assignment instructions have been completely re-written and the parts which used to reference MATLAB/OCTAVE functionality have been changed to reference its python counterpart.
  • The re-written instructions are now embedded within the Jupyter Notebook along with the python starter code. For each assignment, all work is done solely within the notebook.
  • The python assignments can be submitted for grading. They were tested to work perfectly well with the original Coursera grader that is currently used to grade the MATLAB/OCTAVE versions of the assignments.
  • After each part of a given assignment, the Jupyter Notebook contains a cell which prompts the user for submitting the current part of the assignment for grading.

Online workspace

You can work on the assignments in an online workspace called Deepnote. This allows you to play around with the code and access the assignments from your browser.

Downloading the Assignments

To get started, you can start by either downloading a zip file of these assignments by clicking on the Clone or download button. If you have git installed on your system, you can clone this repository using :

clone https://github.com/dibgerge/ml-coursera-python-assignments.git

Each assignment is contained in a separate folder. For example, assignment 1 is contained within the folder Exercise1. Each folder contains two files:

  • The assignment jupyter notebook, which has a .ipynb extension. All the code which you need to write will be written within this notebook.
  • A python module utils.py which contains some helper functions needed for the assignment. Functions within the utils module are called from the python notebook. You do not need to modify or add any code to this file.

Requirements

These assignments has been tested and developed using the following libraries:

- python==3.6.4
- numpy==1.13.3
- scipy==1.0.0
- matplotlib==2.1.2
- jupyter==1.0.0
- jupyter-client==5.0.1

We recommend using at least these versions of the required libraries or later. Python 2 is not supported.

Python Installation

We highly recommend using anaconda for installing python. Click here to go to Anaconda's download page. Make sure to download Python 3.6 version. If you are on a windows machine:

  • Open the executable after download is complete and follow instructions.
  • Once installation is complete, open Anaconda prompt from the start menu. This will open a terminal with python enabled.

If you are on a linux machine:

  • Open a terminal and navigate to the directory where Anaconda was downloaded.

  • Change the permission to the downloaded file so that it can be executed. So if the downloaded file name is Anaconda3-5.1.0-Linux-x86_64.sh, then use the following command:

    chmod a+x Anaconda3-5.1.0-Linux-x86_64.sh

  • Now, run the installation script using ./Anaconda3-5.1.0-Linux-x86_64.sh, and follow installation instructions in the terminal.

Once you have installed python, create a new python environment will all the requirements using the following command:

conda env create -f environment.yml

After the new environment is setup, activate it using (windows)

activate machine_learning

or if you are on a linux machine

source activate machine_learning 

Now we have our python environment all set up, we can start working on the assignments. To do so, navigate to the directory where the assignments were installed, and launch the jupyter notebook from the terminal using the command

jupyter notebook

This should automatically open a tab in the default browser. To start with assignment 1, open the notebook ./Exercise1/exercise1.ipynb.

Python Tutorials

If you are new to python and to jupyter notebooks, no worries! There is a plethora of tutorials and documentation to get you started. Here are a few links which might be of help:

Caveats and tips

  • In many of the exercises, the regularization parameter $\lambda$ is denoted as the variable name lambda_, notice the underscore at the end of the name. This is because lambda is a reserved python keyword, and should never be used as a variable name.

  • In numpy, the function dot is used to perform matrix multiplication. The operation '*' only does element-by-element multiplication (unlike MATLAB). If you are using python version 3.5+, the operator '@' is the new matrix multiplication, and it is equivalent to the dot function.

Acknowledgements

  • I would like to thank professor Andrew Ng and the crew of the Stanford Machine Learning class on Coursera for such an awesome class.

  • Some of the material used, especially the code for submitting assignments for grading is based on mstampfer's python implementation of the assignments.