Skip to content
You must be logged in to sponsor feature-engine

Become a sponsor to Feature-engine

Call for Sponsors

We are calling for sponsors to support the active development and maintenance of Feature-engine.

Our development goals

  • Expand the library’s functionality to include support for time series, text and datetime variables.
  • Expand the library's functionality with further alternatives for feature creation, transformation and selection.
  • Continue maintaining a high-quality, well-documented collection of canonical tools for data processing.
  • Expand the documentation with more examples about Feature-engine’s functionality.
  • Expand the documentation with more detail on how to contribute to the package.

More details about the direction of the project and coming functionality can be found in our roadmap.

Why sponsor Feature-engine

Feature-engine is growing in popularity, and the number of contributions is increasing steadily. In addition to the work to expand the library's functionality as per our roadmap, code contributions are regularly reviewed by core developers. As the code base grows, we also carry out regular maintenance and refactoring of our code base, to ensure code performance and maintain and improve readability.

Maintaining and enhancing an open-source project like Feature-engine, requires the committed work of 1-2 developers that dedicate a minimum of 8 hours per week to the project.

As a first step, we would like to raise funds to support 1 core developer to commit 8 weekly hours of work to support and expand Feature-engine's functionality.

About Feature-engine

Feature-engine is an open source Python library to engineer and select features for use in machine learning models. Feature-engine preserves Scikit-learn functionality, with methods fit() and transform() for learning parameters from and then transforming the data.

Feature-engine includes transformers for:

  • Missing data imputation
  • Categorical encoding
  • Discretisation
  • Variable transformation
  • Outlier handling
  • Variable creation
  • Variable selection
  • Features for time series forecasting

and much more...

With extensive API and user guide documentation, Feature-engine provides both ready-to-use code to transform the data for use in machine learning and guidelines on when, why and how to use each transformation.

Thank you very much, and we look forward to your support!

Please note

We do not accept sponsorship from fossil fuel companies.

2 sponsors have funded feature-engine’s work.

@feature-engine

We are currently calling for sponsors to support 8 hours per week of work for our main developer.

@Morgan-Sell
@NicoGalli

Meet the team

Featured work

  1. feature-engine/feature_engine

    Feature engineering package with sklearn like functionality

    Python 1,927

0% towards 10 monthly sponsors goal

Be the first to sponsor this goal!

Select a tier

$ a month

You'll receive any rewards listed in the $25 monthly tier. Additionally, a Public Sponsor achievement will be added to your profile.

$10 a month

Select

Bronze Sponsor

You will get:

  • A Sponsor badge in your profile
  • A shoutout on LinkedIn

$25 a month

Select

Silver Sponsor

You will get:

  • A Sponsor badge in your Github profile
  • A shoutout on LinkedIn

$100 a month

Select

Gold Sponsor

Sponsor our roadmap of new functionality.

You will get:

$250 a month

Select

Platinum Sponsor

Support us to expand Feature-engine's functionality.

You will get:

  • A Sponsor badge on your Github profile
  • Feature in our sponsors page
  • A shoutout on LinkedIn

$500 a month

Select

Diamond Sponsor

Support our mission to democratize machine learning through open-source software.

You will get:

  • A Sponsor badge on your Github profile
  • Feature in our sponsors page
  • A shoutout on LinkedIn