A toolkit for tools and techniques related to the privacy and compliance of AI models. https://aip360.res.ibm.com
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olasaadi 2eb626c00c
Sup cat features (#14)
* support categorical features

* update the documentation and readme
added a test for the case where cells are supplied as a param.

* add big tests (adult test and iris)
and fixed bugs

* update transform to return numpy if original data is numpy

* added nursery test

* break loop if there is an illegal level

* Stop pruning one step before passing accuracy threshold

* adding asserts and fix DecisionTreeClassifier init

* Fix tests

Co-authored-by: abigailt <abigailt@il.ibm.com>
2022-01-11 09:51:04 +02:00
apt Sup cat features (#14) 2022-01-11 09:51:04 +02:00
datasets Add data minimization functionality to the ai-privacy-toolkit (#3) 2021-07-12 15:56:42 +03:00
docs Missing files 2021-07-12 16:03:03 +03:00
notebooks Notebook fix 2021-08-18 07:51:23 +03:00
tests Sup cat features (#14) 2022-01-11 09:51:04 +02:00
.gitattributes Ignore Jupyter Notebooks in git language detection 2021-04-28 16:34:02 +03:00
.readthedocs.yaml Try to fix documentation 2021-06-07 17:01:21 +03:00
LICENSE Initial commit 2021-04-28 06:25:00 -04:00
pyproject.toml Files for pypi dist 2021-08-02 11:48:05 +03:00
README.md Add link to Slack 2021-11-02 14:19:22 +02:00
requirements.txt Fix requirements 2021-07-12 16:02:54 +03:00
setup.cfg Files for pypi dist 2021-08-02 11:48:05 +03:00

ai-privacy-toolkit


A toolkit for tools and techniques related to the privacy and compliance of AI models.

The anonymization module contains methods for anonymizing ML model training data, so that when a model is retrained on the anonymized data, the model itself will also be considered anonymous. This may help exempt the model from different obligations and restrictions set out in data protection regulations such as GDPR, CCPA, etc.

The minimization module contains methods to help adhere to the data minimization principle in GDPR for ML models. It enables to reduce the amount of personal data needed to perform predictions with a machine learning model, while still enabling the model to make accurate predictions. This is done by by removing or generalizing some of the input features.

Official ai-privacy-toolkit documentation: https://ai-privacy-toolkit.readthedocs.io/en/latest/

Installation: pip install ai-privacy-toolkit

For more information or help using or improving the toolkit, please contact Abigail Goldsteen at abigailt@il.ibm.com, or join our Slack channel: https://aip360.mybluemix.net/community.

Related toolkits:

ai-minimization-toolkit - has been migrated into this toolkit.

differential-privacy-library: A general-purpose library for experimenting with, investigating and developing applications in, differential privacy.

adversarial-robustness-toolbox: A Python library for Machine Learning Security. Includes an attack module called inference that contains privacy attacks on ML models (membership inference, attribute inference, model inversion and database reconstruction) as well as a privacy metrics module that contains membership leakage metrics for ML models.