%global _empty_manifest_terminate_build 0 Name: python-diffprivlib Version: 0.6.2 Release: 1 Summary: IBM Differential Privacy Library License: MIT URL: https://github.com/IBM/differential-privacy-library Source0: https://mirrors.nju.edu.cn/pypi/web/packages/48/52/15d7dc925bfedcfab6f63f5fc7513e380afdb56cf949177c06668acdb960/diffprivlib-0.6.2.tar.gz BuildArch: noarch Requires: python3-numpy Requires: python3-scikit-learn Requires: python3-scipy Requires: python3-joblib Requires: python3-setuptools Requires: python3-crlibm Requires: python3-sphinx Requires: python3-sphinx-rtd-theme %description # Diffprivlib v0.6 [![Python versions](https://img.shields.io/pypi/pyversions/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![Downloads](https://pepy.tech/badge/diffprivlib)](https://pepy.tech/project/diffprivlib) [![PyPi version](https://img.shields.io/pypi/v/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![PyPi status](https://img.shields.io/pypi/status/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![General tests](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml) [![Documentation Status](https://readthedocs.org/projects/diffprivlib/badge/?version=latest)](https://diffprivlib.readthedocs.io/en/latest/?badge=latest) [![CodeQL](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml) [![codecov](https://codecov.io/gh/IBM/differential-privacy-library/branch/main/graph/badge.svg)](https://codecov.io/gh/IBM/differential-privacy-library) Diffprivlib is a general-purpose library for experimenting with, investigating and developing applications in, differential privacy. Use diffprivlib if you are looking to: - Experiment with differential privacy - Explore the impact of differential privacy on machine learning accuracy using classification and clustering models - Build your own differential privacy applications, using our extensive collection of mechanisms Diffprivlib supports Python versions 3.8 to 3.11. ## Getting started: [Machine learning with differential privacy in 30 seconds](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/30seconds.ipynb) We're using the [Iris dataset](https://archive.ics.uci.edu/ml/datasets/iris), so let's load it and perform an 80/20 train/test split. ```python from sklearn import datasets from sklearn.model_selection import train_test_split dataset = datasets.load_iris() X_train, X_test, y_train, y_test = train_test_split(dataset.data, dataset.target, test_size=0.2) ``` Now, let's train a differentially private naive Bayes classifier. Our classifier __runs just like an `sklearn` classifier__, so you can get up and running quickly. `diffprivlib.models.GaussianNB` can be run __without any parameters__, although this will throw a warning (we need to specify the `bounds` parameter to avoid this). The privacy level is controlled by the parameter `epsilon`, which is passed to the classifier at initialisation (e.g. `GaussianNB(epsilon=0.1)`). The default is `epsilon = 1.0`. ```python from diffprivlib.models import GaussianNB clf = GaussianNB() clf.fit(X_train, y_train) ``` We can now classify unseen examples, knowing that the trained model is differentially private and preserves the privacy of the 'individuals' in the training set (flowers are entitled to their privacy too!). ```python clf.predict(X_test) ``` Every time the model is trained with `.fit()`, a different model is produced due to the randomness of differential privacy. The accuracy will therefore change, even if it's re-trained with the same training data. Try it for yourself to find out! ```python print("Test accuracy: %f" % clf.score(X_test, y_test)) ``` We can easily evaluate the accuracy of the model for various `epsilon` values and plot it with `matplotlib`. ```python import numpy as np import matplotlib.pyplot as plt epsilons = np.logspace(-2, 2, 50) bounds = ([4.3, 2.0, 1.1, 0.1], [7.9, 4.4, 6.9, 2.5]) accuracy = list() for epsilon in epsilons: clf = GaussianNB(bounds=bounds, epsilon=epsilon) clf.fit(X_train, y_train) accuracy.append(clf.score(X_test, y_test)) plt.semilogx(epsilons, accuracy) plt.title("Differentially private Naive Bayes accuracy") plt.xlabel("epsilon") plt.ylabel("Accuracy") plt.show() ``` ![Differentially private naive Bayes](https://github.com/IBM/differential-privacy-library/raw/main/notebooks/30seconds.png) Congratulations, you've completed your first differentially private machine learning task with the Differential Privacy Library! Check out more examples in the [notebooks](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/) directory, or [dive straight in](https://github.com/IBM/differential-privacy-library/blob/main/diffprivlib/). ## Contents Diffprivlib is comprised of four major components: 1. __Mechanisms:__ These are the building blocks of differential privacy, and are used in all models that implement differential privacy. Mechanisms have little or no default settings, and are intended for use by experts implementing their own models. They can, however, be used outside models for separate investigations, etc. 1. __Models:__ This module includes machine learning models with differential privacy. Diffprivlib currently has models for clustering, classification, regression, dimensionality reduction and pre-processing. 1. __Tools:__ Diffprivlib comes with a number of generic tools for differentially private data analysis. This includes differentially private histograms, following the same format as [Numpy's histogram function](https://docs.scipy.org/doc/numpy/reference/generated/numpy.histogram.html). 1. __Accountant:__ The `BudgetAccountant` class can be used to track privacy budget and calculate total privacy loss using advanced composition techniques. ## Setup ### Installation with `pip` The library is designed to run with Python 3. The library can be installed from the PyPi repository using `pip` (or `pip3`): ```bash pip install diffprivlib ``` ### Manual installation For the most recent version of the library, either download the source code or clone the repository in your directory of choice: ```bash git clone https://github.com/IBM/differential-privacy-library ``` To install `diffprivlib`, do the following in the project folder (alternatively, you can run `python3 -m pip install .`): ```bash pip install . ``` The library comes with a basic set of unit tests for `pytest`. To check your install, you can run all the unit tests by calling `pytest` in the install folder: ```bash pytest ``` ## Citing diffprivlib If you use diffprivlib for research, please consider citing the following reference paper: ``` @article{diffprivlib, title={Diffprivlib: the {IBM} differential privacy library}, author={Holohan, Naoise and Braghin, Stefano and Mac Aonghusa, P{\'o}l and Levacher, Killian}, year={2019}, journal = {ArXiv e-prints}, archivePrefix = "arXiv", volume = {1907.02444 [cs.CR]}, primaryClass = "cs.CR", month = jul } ``` %package -n python3-diffprivlib Summary: IBM Differential Privacy Library Provides: python-diffprivlib BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-diffprivlib # Diffprivlib v0.6 [![Python versions](https://img.shields.io/pypi/pyversions/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![Downloads](https://pepy.tech/badge/diffprivlib)](https://pepy.tech/project/diffprivlib) [![PyPi version](https://img.shields.io/pypi/v/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![PyPi status](https://img.shields.io/pypi/status/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![General tests](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml) [![Documentation Status](https://readthedocs.org/projects/diffprivlib/badge/?version=latest)](https://diffprivlib.readthedocs.io/en/latest/?badge=latest) [![CodeQL](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml) [![codecov](https://codecov.io/gh/IBM/differential-privacy-library/branch/main/graph/badge.svg)](https://codecov.io/gh/IBM/differential-privacy-library) Diffprivlib is a general-purpose library for experimenting with, investigating and developing applications in, differential privacy. Use diffprivlib if you are looking to: - Experiment with differential privacy - Explore the impact of differential privacy on machine learning accuracy using classification and clustering models - Build your own differential privacy applications, using our extensive collection of mechanisms Diffprivlib supports Python versions 3.8 to 3.11. ## Getting started: [Machine learning with differential privacy in 30 seconds](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/30seconds.ipynb) We're using the [Iris dataset](https://archive.ics.uci.edu/ml/datasets/iris), so let's load it and perform an 80/20 train/test split. ```python from sklearn import datasets from sklearn.model_selection import train_test_split dataset = datasets.load_iris() X_train, X_test, y_train, y_test = train_test_split(dataset.data, dataset.target, test_size=0.2) ``` Now, let's train a differentially private naive Bayes classifier. Our classifier __runs just like an `sklearn` classifier__, so you can get up and running quickly. `diffprivlib.models.GaussianNB` can be run __without any parameters__, although this will throw a warning (we need to specify the `bounds` parameter to avoid this). The privacy level is controlled by the parameter `epsilon`, which is passed to the classifier at initialisation (e.g. `GaussianNB(epsilon=0.1)`). The default is `epsilon = 1.0`. ```python from diffprivlib.models import GaussianNB clf = GaussianNB() clf.fit(X_train, y_train) ``` We can now classify unseen examples, knowing that the trained model is differentially private and preserves the privacy of the 'individuals' in the training set (flowers are entitled to their privacy too!). ```python clf.predict(X_test) ``` Every time the model is trained with `.fit()`, a different model is produced due to the randomness of differential privacy. The accuracy will therefore change, even if it's re-trained with the same training data. Try it for yourself to find out! ```python print("Test accuracy: %f" % clf.score(X_test, y_test)) ``` We can easily evaluate the accuracy of the model for various `epsilon` values and plot it with `matplotlib`. ```python import numpy as np import matplotlib.pyplot as plt epsilons = np.logspace(-2, 2, 50) bounds = ([4.3, 2.0, 1.1, 0.1], [7.9, 4.4, 6.9, 2.5]) accuracy = list() for epsilon in epsilons: clf = GaussianNB(bounds=bounds, epsilon=epsilon) clf.fit(X_train, y_train) accuracy.append(clf.score(X_test, y_test)) plt.semilogx(epsilons, accuracy) plt.title("Differentially private Naive Bayes accuracy") plt.xlabel("epsilon") plt.ylabel("Accuracy") plt.show() ``` ![Differentially private naive Bayes](https://github.com/IBM/differential-privacy-library/raw/main/notebooks/30seconds.png) Congratulations, you've completed your first differentially private machine learning task with the Differential Privacy Library! Check out more examples in the [notebooks](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/) directory, or [dive straight in](https://github.com/IBM/differential-privacy-library/blob/main/diffprivlib/). ## Contents Diffprivlib is comprised of four major components: 1. __Mechanisms:__ These are the building blocks of differential privacy, and are used in all models that implement differential privacy. Mechanisms have little or no default settings, and are intended for use by experts implementing their own models. They can, however, be used outside models for separate investigations, etc. 1. __Models:__ This module includes machine learning models with differential privacy. Diffprivlib currently has models for clustering, classification, regression, dimensionality reduction and pre-processing. 1. __Tools:__ Diffprivlib comes with a number of generic tools for differentially private data analysis. This includes differentially private histograms, following the same format as [Numpy's histogram function](https://docs.scipy.org/doc/numpy/reference/generated/numpy.histogram.html). 1. __Accountant:__ The `BudgetAccountant` class can be used to track privacy budget and calculate total privacy loss using advanced composition techniques. ## Setup ### Installation with `pip` The library is designed to run with Python 3. The library can be installed from the PyPi repository using `pip` (or `pip3`): ```bash pip install diffprivlib ``` ### Manual installation For the most recent version of the library, either download the source code or clone the repository in your directory of choice: ```bash git clone https://github.com/IBM/differential-privacy-library ``` To install `diffprivlib`, do the following in the project folder (alternatively, you can run `python3 -m pip install .`): ```bash pip install . ``` The library comes with a basic set of unit tests for `pytest`. To check your install, you can run all the unit tests by calling `pytest` in the install folder: ```bash pytest ``` ## Citing diffprivlib If you use diffprivlib for research, please consider citing the following reference paper: ``` @article{diffprivlib, title={Diffprivlib: the {IBM} differential privacy library}, author={Holohan, Naoise and Braghin, Stefano and Mac Aonghusa, P{\'o}l and Levacher, Killian}, year={2019}, journal = {ArXiv e-prints}, archivePrefix = "arXiv", volume = {1907.02444 [cs.CR]}, primaryClass = "cs.CR", month = jul } ``` %package help Summary: Development documents and examples for diffprivlib Provides: python3-diffprivlib-doc %description help # Diffprivlib v0.6 [![Python versions](https://img.shields.io/pypi/pyversions/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![Downloads](https://pepy.tech/badge/diffprivlib)](https://pepy.tech/project/diffprivlib) [![PyPi version](https://img.shields.io/pypi/v/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![PyPi status](https://img.shields.io/pypi/status/diffprivlib.svg)](https://pypi.org/project/diffprivlib/) [![General tests](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/general.yml) [![Documentation Status](https://readthedocs.org/projects/diffprivlib/badge/?version=latest)](https://diffprivlib.readthedocs.io/en/latest/?badge=latest) [![CodeQL](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml/badge.svg)](https://github.com/IBM/differential-privacy-library/actions/workflows/codeql.yml) [![codecov](https://codecov.io/gh/IBM/differential-privacy-library/branch/main/graph/badge.svg)](https://codecov.io/gh/IBM/differential-privacy-library) Diffprivlib is a general-purpose library for experimenting with, investigating and developing applications in, differential privacy. Use diffprivlib if you are looking to: - Experiment with differential privacy - Explore the impact of differential privacy on machine learning accuracy using classification and clustering models - Build your own differential privacy applications, using our extensive collection of mechanisms Diffprivlib supports Python versions 3.8 to 3.11. ## Getting started: [Machine learning with differential privacy in 30 seconds](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/30seconds.ipynb) We're using the [Iris dataset](https://archive.ics.uci.edu/ml/datasets/iris), so let's load it and perform an 80/20 train/test split. ```python from sklearn import datasets from sklearn.model_selection import train_test_split dataset = datasets.load_iris() X_train, X_test, y_train, y_test = train_test_split(dataset.data, dataset.target, test_size=0.2) ``` Now, let's train a differentially private naive Bayes classifier. Our classifier __runs just like an `sklearn` classifier__, so you can get up and running quickly. `diffprivlib.models.GaussianNB` can be run __without any parameters__, although this will throw a warning (we need to specify the `bounds` parameter to avoid this). The privacy level is controlled by the parameter `epsilon`, which is passed to the classifier at initialisation (e.g. `GaussianNB(epsilon=0.1)`). The default is `epsilon = 1.0`. ```python from diffprivlib.models import GaussianNB clf = GaussianNB() clf.fit(X_train, y_train) ``` We can now classify unseen examples, knowing that the trained model is differentially private and preserves the privacy of the 'individuals' in the training set (flowers are entitled to their privacy too!). ```python clf.predict(X_test) ``` Every time the model is trained with `.fit()`, a different model is produced due to the randomness of differential privacy. The accuracy will therefore change, even if it's re-trained with the same training data. Try it for yourself to find out! ```python print("Test accuracy: %f" % clf.score(X_test, y_test)) ``` We can easily evaluate the accuracy of the model for various `epsilon` values and plot it with `matplotlib`. ```python import numpy as np import matplotlib.pyplot as plt epsilons = np.logspace(-2, 2, 50) bounds = ([4.3, 2.0, 1.1, 0.1], [7.9, 4.4, 6.9, 2.5]) accuracy = list() for epsilon in epsilons: clf = GaussianNB(bounds=bounds, epsilon=epsilon) clf.fit(X_train, y_train) accuracy.append(clf.score(X_test, y_test)) plt.semilogx(epsilons, accuracy) plt.title("Differentially private Naive Bayes accuracy") plt.xlabel("epsilon") plt.ylabel("Accuracy") plt.show() ``` ![Differentially private naive Bayes](https://github.com/IBM/differential-privacy-library/raw/main/notebooks/30seconds.png) Congratulations, you've completed your first differentially private machine learning task with the Differential Privacy Library! Check out more examples in the [notebooks](https://github.com/IBM/differential-privacy-library/blob/main/notebooks/) directory, or [dive straight in](https://github.com/IBM/differential-privacy-library/blob/main/diffprivlib/). ## Contents Diffprivlib is comprised of four major components: 1. __Mechanisms:__ These are the building blocks of differential privacy, and are used in all models that implement differential privacy. Mechanisms have little or no default settings, and are intended for use by experts implementing their own models. They can, however, be used outside models for separate investigations, etc. 1. __Models:__ This module includes machine learning models with differential privacy. Diffprivlib currently has models for clustering, classification, regression, dimensionality reduction and pre-processing. 1. __Tools:__ Diffprivlib comes with a number of generic tools for differentially private data analysis. This includes differentially private histograms, following the same format as [Numpy's histogram function](https://docs.scipy.org/doc/numpy/reference/generated/numpy.histogram.html). 1. __Accountant:__ The `BudgetAccountant` class can be used to track privacy budget and calculate total privacy loss using advanced composition techniques. ## Setup ### Installation with `pip` The library is designed to run with Python 3. The library can be installed from the PyPi repository using `pip` (or `pip3`): ```bash pip install diffprivlib ``` ### Manual installation For the most recent version of the library, either download the source code or clone the repository in your directory of choice: ```bash git clone https://github.com/IBM/differential-privacy-library ``` To install `diffprivlib`, do the following in the project folder (alternatively, you can run `python3 -m pip install .`): ```bash pip install . ``` The library comes with a basic set of unit tests for `pytest`. To check your install, you can run all the unit tests by calling `pytest` in the install folder: ```bash pytest ``` ## Citing diffprivlib If you use diffprivlib for research, please consider citing the following reference paper: ``` @article{diffprivlib, title={Diffprivlib: the {IBM} differential privacy library}, author={Holohan, Naoise and Braghin, Stefano and Mac Aonghusa, P{\'o}l and Levacher, Killian}, year={2019}, journal = {ArXiv e-prints}, archivePrefix = "arXiv", volume = {1907.02444 [cs.CR]}, primaryClass = "cs.CR", month = jul } ``` %prep %autosetup -n diffprivlib-0.6.2 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-diffprivlib -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Wed May 10 2023 Python_Bot - 0.6.2-1 - Package Spec generated