Companion web application for EQUINE^2: Establishing Quantified Uncertainty for Neural Networks
Project description
EQUINE Webapp
This is a web application utilizing EQUINE for neural network uncertainty quantification through a visual user interface. The webapp allows you to upload your own model and data, and let the server retrain the model with EQUINE. The visualization dashboard also allows you to analyze your samples and view uncertainty quantification visualizations to explain model uncertainty.
The EQUINE repository is here https://github.com/mit-ll-responsible-ai/equine
ScatterUQ Static Demo
You can view a static demo of ScatterUQ here:
https://mit-ll-responsible-ai.github.io/equine-webapp/demo
ScatterUQ at IEEE VIS 2023
We presented ScatterUQ at IEEE VIS 2023: https://ieeexplore.ieee.org/document/10360884
Our data and analysis script can be found in this release: https://github.com/mit-ll-responsible-ai/equine-webapp/releases/tag/ScatterUQ-VIS-2023-Data
Usage with Python and PyPI
You can install and run the equine-webapp as a command in your terminal with python. These commands create a new conda environment, activate the environment, install equine-webapp from PyPI, and start the equine-webapp which will be available at localhost:8080.
conda create --name my-environment-name python=3.10
conda activate my-environment-name
pip install equine-webapp
equine-webapp
Local Development
You can also develop the webapp locally in two ways:
- Run equine-webapp as a locally installed package with local web files
- Run equine-webapp with local Node.js/Next.js and Python/Flask development servers
Run equine-webapp as a locally installed package with local web files
- Install node packages
cd client
npm i
-
Make a copy of
client/.env.exampleand rename toclient/.env.local. This new file should be git-ignored by default. -
Build the local static web files
npm run build
- Install the package locally from the root of the repo and run it
../
conda create --name equine-webapp python=3.10
conda activate equine-webapp
pip install -e .
equine-webapp
Run equine-webapp with local Node.js/Next.js and Python/Flask development servers
Node.js/Next.js Frontend Development Server
-
Make a copy of
client/.env.exampleand rename toclient/.env.local. This new file should be git-ignored by default. -
Install node packages and start the development server
cd client
npm i
npm run dev
Frontend testing
npm run test
Python/Flask Development Server
Create a new Anaconda environment, activate it, install the requirements, and start the dev server
conda create --name equine-webapp python=3.10
conda activate equine-webapp
pip install -r requirements.txt
python start_dev_server.py
Python Testing
pip install pytest
python -m pytest
Bibliography
@INPROCEEDINGS{10360884,
author={Li, Harry X. and Jorgensen, Steven and Holodnak, John and Wollaber, Allan B.},
booktitle={2023 IEEE Visualization and Visual Analytics (VIS)},
title={ScatterUQ: Interactive Uncertainty Visualizations for Multiclass Deep Learning Problems},
year={2023},
volume={},
number={},
pages={246-250},
keywords={Deep learning;Dimensionality reduction;Training;Uncertainty;Visual analytics;Soft sensors;Interactive systems;Uncertainty quantification;Machine learning;Dimensionality reduction;Visualization;Explainable AI},
doi={10.1109/VIS54172.2023.00058}}
Disclaimer
DISTRIBUTION STATEMENT A. Approved for public release. Distribution is unlimited.
© 2023 MASSACHUSETTS INSTITUTE OF TECHNOLOGY
- Subject to FAR 52.227-11 – Patent Rights – Ownership by the Contractor (May 2014)
- SPDX-License-Identifier: MIT
This material is based upon work supported by the Under Secretary of Defense for Research and Engineering under Air Force Contract No. FA8702-15-D-0001. Any opinions, findings, conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the Under Secretary of Defense for Research and Engineering.
The software/firmware is provided to you on an As-Is basis.
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