/predict-next-purchase

Predict what a customer will buy next based on purchase history using automated feature engineering

Primary LanguageJupyter NotebookBSD 3-Clause "New" or "Revised" LicenseBSD-3-Clause

Predicting a customer's next purchase using automated feature engineering

Featuretools

As customers use your product, they leave behind a trail of behaviors that indicate how they will act in the future. Through automated feature engineering we can identify the predictive patterns in granular customer behavioral data that can be used to improve the customer's experience and generate additional revenue for your business.

In this tutorial, we show how Featuretools can be used to perform feature engineering on a multi-table dataset of 3 million online grocery orders provided by Instacart to train an accurate machine learning model to predict what product a customer buys next.

Note: If you are running this notebook yourself, refer to the read me on Github for instructions to download the Instacart dataset

Highlights

  • We automatically generate 150+ features using Deep Feature Synthesis and select the 20 most important features for predictive modeling
  • We build a pipeline that it can be reused for numerous prediction problems (you can try this yourself!)
  • We quickly develop a model on a subset of the data and validate on the entire dataset in a scalable manner using Dask.

Running the tutorial

  1. Clone the repo

    git clone https://github.com/Featuretools/predict_next_purchase.git
    
  2. Install the requirements

    pip install -r requirements.txt
    

    You will also need to install graphviz for this demo. Please install graphviz according to the instructions in the Featuretools Documentation

  3. Download the data

    You can download the data directly from Instacart here.

    After downloading the data save the CSVs to a directory called data in the root of this repository. Then run the following command in your terminal from the root of this repo.

    >> python process_data.py
     70%|██████████████████████████▌           | 145/207 [07:43<03:18,  3.20s/it]
    

    Note: Expect this command to take up to 20 minutes to run as it prepares the data for the tutorial notebook

  4. Run the Tutorial using Jupyter

    jupyter notebook
    

Feature Labs

Featuretools

Featuretools is an open source project created by Feature Labs. To see the other open source projects we're working on visit Feature Labs Open Source. If building impactful data science pipelines is important to you or your business, please get in touch.

Contact

Any questions can be directed to help@featurelabs.com