This is the repo for Uncertainty Quantification 360 Toolkit.

Overview

UQ360

Build Status Documentation Status

The Uncertainty Quantification 360 (UQ360) toolkit is an open-source Python package that provides a diverse set of algorithms to quantify uncertainty, as well as capabilities to measure and improve UQ to streamline the development process. We provide a taxonomy and guidance for choosing these capabilities based on the user's needs. Further, UQ360 makes the communication method of UQ an integral part of development choices in an AI lifecycle. Developers can make a user-centered choice by following the psychology-based guidance on communicating UQ estimates, from concise descriptions to detailed visualizations.

The UQ360 interactive experience provides a gentle introduction to the concepts and capabilities by walking through an example use case. The tutorials and example notebooks offer a deeper, data scientist-oriented introduction. The complete API is also available.

We have developed the package with extensibility in mind. This library is still in development. We encourage the contribution of your uncertianty estimation algorithms, metrics and applications. To get started as a contributor, please join the #uq360-users or #uq360-developers channel of the AIF360 Community on Slack by requesting an invitation here.

Supported Uncertainty Evaluation Metrics

The toolbox provides several standard calibration metrics for classification and regression tasks. This includes Expected Calibration Error (Naeini et al., 2015), Brier Score (Murphy, 1973), etc for classification models. Regression metrics include Prediction Interval Coverage Probability (PICP) and Mean Prediction Interval Width (MPIW) among others. The toolbox also provides a novel operation-point agnostic approaches for the assessment of prediction uncertainty estimates called the Uncertainty Characteristic Curve (UCC). Several metrics and diagnosis tools such as reliability diagram (Niculescu-Mizil & Caruana, 2005) and risk-vs-rejection rate curves are provides which also support analysis by sub-groups in the population to study fairness implications of acting on given uncertainty estimates.

Supported Uncertainty Estimation Algorithms

UQ algorithms can be broadly classified as intrinsic or extrinsic depending on how the uncertainties are obtained from the AI models. Intrinsic methods encompass models that inherently provides an uncertainty estimate along with its predictions. The toolkit includes algorithms such as variational Bayesian neural networks (BNNs) (Graves, 2011), Gaussian processes (Rasmussen and Williams,2006), quantile regression (Koenker and Bassett, 1978) and hetero/homo-scedastic neuralnetworks (Kendall and Gal, 2017) which are models that fall in this category The toolkit also includes Horseshoe BNNs (Ghosh et al., 2019) that use sparsity promoting priors and can lead to better-calibrated uncertainties, especially in the small data regime. An Infinitesimal Jackknife (IJ) based algorithm (Ghosh et al., 2020)), provided in the toolkit, is a perturbation-based approach that perform uncertainty quantification by estimating model parameters under different perturbations of the original data. Crucially, here the estimation only requires the model to be trained once on the unperturbed dataset. For models that do not have an inherent notion of uncertainty built into them, extrinsic methods are employed to extract uncertainties post-hoc. The toolkit provides meta-models (Chen et al., 2019)that can be been used to successfully generate reliable confidence measures (in classification), prediction intervals (in regression), and to predict performance metrics such as accuracy on unseen and unlabeled data. For pre-trained models that captures uncertainties to some degree, the toolbox provides extrinsic algorithms that can improve the uncertainty estimation quality. This includes isotonic regression (Zadrozny and Elkan, 2001), Platt-scaling (Platt, 1999), auxiliary interval predictors (Thiagarajan et al., 2020), and UCC-Recalibration.

Setup

Supported Configurations:

OS Python version
macOS 3.7
Ubuntu 3.7
Windows 3.7

(Optional) Create a virtual environment

A virtual environment manager is strongly recommended to ensure dependencies may be installed safely. If you have trouble installing the toolkit, try this first.

Conda

Conda is recommended for all configurations though Virtualenv is generally interchangeable for our purposes. Miniconda is sufficient (see the difference between Anaconda and Miniconda if you are curious) and can be installed from here if you do not already have it.

Then, to create a new Python 3.7 environment, run:

conda create --name uq360 python=3.7
conda activate uq360

The shell should now look like (uq360) $. To deactivate the environment, run:

(uq360)$ conda deactivate

The prompt will return back to $ or (base)$.

Note: Older versions of conda may use source activate uq360 and source deactivate (activate uq360 and deactivate on Windows).

Installation

Clone the latest version of this repository:

(uq360)$ git clone https://github.ibm.com/UQ360/UQ360

If you'd like to run the examples and tutorial notebooks, download the datasets now and place them in their respective folders as described in uq360/datasets/data/README.md.

Then, navigate to the root directory of the project which contains setup.py file and run:

(uq360)$ pip install -e .

PIP Installation of Uncertainty Quantification 360

If you would like to quickly start using the UQ360 toolkit without cloning this repository, then you can install the uq360 pypi package as follows.

(your environment)$ pip install uq360

If you follow this approach, you may need to download the notebooks in the examples folder separately.

Using UQ360

The examples directory contains a diverse collection of jupyter notebooks that use UQ360 in various ways. Both examples and tutorial notebooks illustrate working code using the toolkit. Tutorials provide additional discussion that walks the user through the various steps of the notebook. See the details about tutorials and examples here.

Citing UQ360

A technical description of UQ360 is available in this paper. Below is the bibtex entry for this paper.

@misc{uq360-june-2021,
      title={Uncertainty Quantification 360: A Holistic Toolkit for Quantifying 
      and Communicating the Uncertainty of AI}, 
      author={Soumya Ghosh and Q. Vera Liao and Karthikeyan Natesan Ramamurthy 
      and Jiri Navratil and Prasanna Sattigeri 
      and Kush R. Varshney and Yunfeng Zhang},
      year={2021},
      eprint={2106.01410},
      archivePrefix={arXiv},
      primaryClass={cs.AI}
}

Acknowledgements

UQ360 is built with the help of several open source packages. All of these are listed in setup.py and some of these include:

License Information

Please view both the LICENSE file present in the root directory for license information.

Owner
International Business Machines
International Business Machines
Provides guideline on how to configure pre-commit hooks in your own python project

Pre-commit Configuration Guide The main aim of this repository is to act as a guide on how to configure the pre-commit hooks in your existing python p

Faraz Ahmed Khan 2 Mar 31, 2022
OpenSea NFT API App using Python and Streamlit

opensea-nft-api-tutorial OpenSea NFT API App using Python and Streamlit Tutorial Video Walkthrough https://www.youtube.com/watch?v=49SupvcFC1M Instruc

64 Oct 28, 2022
Retrieve bank transactions and categorize for budgeting use

Budgeting After trying out some budgeting software, I decided to make my own. selenium_scraper Using the selenium package, this script runs an instanc

Marc 1 Nov 10, 2021
A tutorial presents several practical examples of how to build DAGs in Apache Airflow

Apache Airflow - Python Brasil 2021 Este tutorial apresenta vários exemplos práticos de como construir DAGs no Apache Airflow. Background Apache Airfl

Jusbrasil 14 Jun 03, 2022
🦋 hundun is a python library for the exploration of chaos.

hundun hundun is a python library for the exploration of chaos. Please note that this library is in beta phase. Example Import the package's equation

kosh 7 Nov 07, 2022
String Spy is a project aimed at improving MacOS defenses.

String Spy is a project aimed at improving MacOS defenses. It allows users to constantly monitor all running processes for user-defined strings, and if it detects a process with such a string it will

10 Dec 13, 2022
A topology optimization framework written in Taichi programming language, which is embedded in Python.

Taichi TopOpt (Under Active Development) Intro A topology optimization framework written in Taichi programming language, which is embedded in Python.

Li Zhehao 41 Nov 17, 2022
Radiosonde Telemetry Decoders

Radiosonde Telemetry Frame Decoders This repository is an attempt to collate the various sources of information on how to decode radiosonde telemetry

Project Horus 3 Jan 04, 2022
A general illumination correction method for optical microscopy.

CIDRE About CIDRE is a retrospective illumination correction method for optical microscopy. It is designed to correct collections of images by buildin

Kevin Smith 31 Sep 07, 2022
Prometheus exporter for Spigot accounts

SpigotExporter Prometheus exporter for Spigot accounts What it provides SpigotExporter will output metrics for each of your plugins and a cumulative d

Jacob Bashista 5 Dec 20, 2021
A telegram bot which programed to countdown.

countdown-vi this is a telegram bot which programed to countdown. usage well, first you should specify a exact interval. there is 5 column, very first

Arya Shabane 3 Feb 15, 2022
Pyhexdmp - Python hex dump module

Pyhexdmp - Python hex dump module

25 Oct 23, 2022
A very simple boarding app with DRF

CRUD project with DRF A very simple boarding app with DRF. About The Project 유저 정보를 갖고 게시판을 다루는 프로젝트 입니다. Version Python: 3.9 DB: PostgreSQL 13 Django

1 Nov 13, 2021
Open slidebook .sldy files in Python

Work in progress slidebook-python Open slidebook .sldy files in Python To install slidebook-python requires Python = 3.9 pip install slidebook-python

The Institute of Cancer Research 2 May 04, 2022
Stack-overflow-import - Import arbitrary code from Stack Overflow as Python modules.

StackOverflow Importer Do you ever feel like all you’re doing is copy/pasting from Stack Overflow? Let’s take it one step further. from stackoverflow

Filip Haglund 3.7k Jan 08, 2023
pythonOS: An operating system kernel made in python and assembly

pythonOS An operating system kernel made in python and assembly Wait what? It uses a custom compiler called snek that implements a part of python3.9 (

Abbix 69 Dec 23, 2022
A simple string parser based on CLR to check whether a string is acceptable or not for a given grammar.

A simple string parser based on CLR to check whether a string is acceptable or not for a given grammar.

Bharath M Kulkarni 1 Dec 15, 2021
Hera is a Python framework for constructing and submitting Argo Workflows.

Hera is an Argo Workflows Python SDK. Hera aims to make workflow construction and submission easy and accessible to everyone! Hera abstracts away workflow setup details while still maintaining a cons

argoproj-labs 241 Jan 02, 2023
A Notifier Program that Notifies you to relax your eyes Every 15 Minutes👀

Every 15 Minutes is an application that is used to Notify you to Relax your eyes Every 15 Minutes, This is fully made with Python and also with the us

FSP Gang s' Admin 1 Nov 03, 2021
A tool to help plan vacations with friends and family

Vacationer In Development A tool to help plan vacations with friends and family Deployment Requirements: NPM Docker Docker-Compose Deployment Instruct

JK 2 Oct 05, 2021