featuretools
                                
                                
                                
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                        An open source python library for automated feature engineering
"One of the holy grails of machine learning is to automate more and more of the feature engineering process." ― Pedro Domingos, A Few Useful Things to Know about Machine Learning
Featuretools is a python library for automated feature engineering. See the documentation for more information.
Installation
Install with pip
python -m pip install featuretools
or from the Conda-forge channel on conda:
conda install -c conda-forge featuretools
Add-ons
You can install add-ons individually or all at once by running
python -m pip install "featuretools[complete]"
Update checker - Receive automatic notifications of new Featuretools releases
python -m pip install "featuretools[update_checker]"
NLP Primitives - Use Natural Language Processing Primitives:
python -m pip install "featuretools[nlp_primitives]"
TSFresh Primitives - Use 60+ primitives from tsfresh within Featuretools
python -m pip install "featuretools[tsfresh]"
Example
Below is an example of using Deep Feature Synthesis (DFS) to perform automated feature engineering. In this example, we apply DFS to a multi-table dataset consisting of timestamped customer transactions.
>> import featuretools as ft
>> es = ft.demo.load_mock_customer(return_entityset=True)
>> es.plot()
Featuretools can automatically create a single table of features for any "target dataframe"
>> feature_matrix, features_defs = ft.dfs(entityset=es, target_dataframe_name="customers")
>> feature_matrix.head(5)
            zip_code  COUNT(transactions)  COUNT(sessions)  SUM(transactions.amount) MODE(sessions.device)  MIN(transactions.amount)  MAX(transactions.amount)  YEAR(join_date)  SKEW(transactions.amount)  DAY(join_date)                   ...                     SUM(sessions.MIN(transactions.amount))  MAX(sessions.SKEW(transactions.amount))  MAX(sessions.MIN(transactions.amount))  SUM(sessions.MEAN(transactions.amount))  STD(sessions.SUM(transactions.amount))  STD(sessions.MEAN(transactions.amount))  SKEW(sessions.MEAN(transactions.amount))  STD(sessions.MAX(transactions.amount))  NUM_UNIQUE(sessions.DAY(session_start))  MIN(sessions.SKEW(transactions.amount))
customer_id                                                                                                                                                                                                                                  ...
1              60091                  131               10                  10236.77               desktop                      5.60                    149.95             2008                   0.070041               1                   ...                                                     169.77                                 0.610052                                   41.95                               791.976505                              175.939423                                 9.299023                                 -0.377150                                5.857976                                        1                                -0.395358
2              02139                  122                8                   9118.81                mobile                      5.81                    149.15             2008                   0.028647              20                   ...                                                     114.85                                 0.492531                                   42.96                               596.243506                              230.333502                                10.925037                                  0.962350                                7.420480                                        1                                -0.470007
3              02139                   78                5                   5758.24               desktop                      6.78                    147.73             2008                   0.070814              10                   ...                                                      64.98                                 0.645728                                   21.77                               369.770121                              471.048551                                 9.819148                                 -0.244976                               12.537259                                        1                                -0.630425
4              60091                  111                8                   8205.28               desktop                      5.73                    149.56             2008                   0.087986              30                   ...                                                      83.53                                 0.516262                                   17.27                               584.673126                              322.883448                                13.065436                                 -0.548969                               12.738488                                        1                                -0.497169
5              02139                   58                4                   4571.37                tablet                      5.91                    148.17             2008                   0.085883              19                   ...                                                      73.09                                 0.830112                                   27.46                               313.448942                              198.522508                                 8.950528                                  0.098885                                5.599228                                        1                                -0.396571
[5 rows x 69 columns]
We now have a feature vector for each customer that can be used for machine learning. See the documentation on Deep Feature Synthesis for more examples.
Featuretools contains many different types of built-in primitives for creating features. If the primitive you need is not included, Featuretools also allows you to define your own custom primitives.
Demos
Predict Next Purchase
In this demonstration, we use a multi-table dataset of 3 million online grocery orders from Instacart to predict what a customer will buy next. We show how to generate features with automated feature engineering and build an accurate machine learning pipeline using Featuretools, which can be reused for multiple prediction problems. For more advanced users, we show how to scale that pipeline to a large dataset using Dask.
For more examples of how to use Featuretools, check out our demos page.
Testing & Development
The Featuretools community welcomes pull requests. Instructions for testing and development are available here.
Support
The Featuretools community is happy to provide support to users of Featuretools. Project support can be found in four places depending on the type of question:
- For usage questions, use Stack Overflow with the 
featuretoolstag. - For bugs, issues, or feature requests start a Github issue.
 - For discussion regarding development on the core library, use Slack.
 - For everything else, the core developers can be reached by email at [email protected]
 
Citing Featuretools
If you use Featuretools, please consider citing the following paper:
James Max Kanter, Kalyan Veeramachaneni. Deep feature synthesis: Towards automating data science endeavors. IEEE DSAA 2015.
BibTeX entry:
@inproceedings{kanter2015deep,
  author    = {James Max Kanter and Kalyan Veeramachaneni},
  title     = {Deep feature synthesis: Towards automating data science endeavors},
  booktitle = {2015 {IEEE} International Conference on Data Science and Advanced Analytics, DSAA 2015, Paris, France, October 19-21, 2015},
  pages     = {1--10},
  year      = {2015},
  organization={IEEE}
}
Built at Alteryx
Featuretools is an open source project maintained by Alteryx. To see the other open source projects we’re working on visit Alteryx Open Source. If building impactful data science pipelines is important to you or your business, please get in touch.