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Updated
Jul 15, 2021
#
responsible-ai
Here are 15 public repositories matching this topic...
A curated list of awesome open source libraries to deploy, monitor, version and scale your machine learning
machine-learning
data-mining
awesome
deep-learning
awesome-list
interpretability
privacy-preserving
production-machine-learning
mlops
privacy-preserving-machine-learning
explainability
responsible-ai
machine-learning-operations
ml-ops
ml-operations
privacy-preserving-ml
large-scale-ml
production-ml
large-scale-machine-learning
moDel Agnostic Language for Exploration and eXplanation
black-box
data-science
machine-learning
predictive-modeling
fairness
interpretability
explainable-artificial-intelligence
explanations
explainable-ai
explainable-ml
xai
model-visualization
interpretable-machine-learning
iml
dalex
responsible-ai
responsible-ml
explanatory-model-analysis
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Jul 17, 2021 - Python
nushib
commented
Jun 2, 2021
Suggested by Melanie Fernandez Pradier:
“Given a model trained on certain features, is there any way I can include additional features (not used in training) but that I want to monitor in the error analysis?"
This is currently possible by enriching the set of input features to the dashboard after the inference step. However, will need further support on the UI side to clearly mark features t
security
attacks
interpretability
adversarial-learning
adversarial-machine-learning
adversarial-examples
adversarial-attacks
model-explanation
interpretable-deep-learning
interpretable-ai
explainable-ai
explainable-ml
xai
interpretable-machine-learning
iml
explainability
responsible-ai
adversarial-defense
adversarial-xai
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Jul 17, 2021
A collection of news articles, books, and papers on Responsible AI cases. The purpose is to study these cases and learn from them to avoid repeating the failures of the past.
machine-learning
artificial-intelligence
bias
fairness
discrimination
responsible-ai
hiring-algorithms
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Feb 8, 2021
Référentiel d'évaluation data science responsable et de confiance
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Jul 1, 2021
Package for evaluating the performance of methods which aim to increase fairness, accountability and/or transparency
data-science
machine-learning
computer-vision
toolkit
pytorch
fairness
ethical-artificial-intelligence
machine-bias
ethical-data-science
fairness-awareness-model
algorithmic-fairness
fairness-ai
fairness-ml
responsible-ai
fairness-assessment
fairness-comparison
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Jul 5, 2021 - Python
Multi-Calibration & Multi-Accuracy Boosting for R
machine-learning
classification
post-processing
fairness
ethics
bias-correction
bias-detection
fairness-ai
fairness-ml
responsible-ai
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Jul 25, 2021 - R
This project is a set of tools to create a model card.
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May 7, 2021 - Python
Checklist for an analysis of various aspects of responsibility of models and data resources
checklist
deep-learning
medical-imaging
explainable-ai
xai
responsible-ai
systematic-review
covid-19
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Jun 17, 2021 - Python
Responsible Prediction Making of COVID-19 Mortality (AAAI-21)
machine-learning
artificial-intelligence
responsibility
explainable-ai
explainability
responsible-ai
responsible-ml
covid-19
covid
covid19
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May 30, 2021
This repository contains course material, codes, and other components for the Azure ML Foundation Course Scholarship from Udacity.
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Jul 15, 2020
Responsible AI tooling short list - a working list.
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Dec 4, 2020
Capture fundamentals around ethics of AI, responsible AI from principle, process, standards, guidelines, ecosystem, regulation/risk standpoint.
bias
fairness
human-centered-design
human-centered-data-science
responsible-ai
ethical-ai
model-explainability
evaluation-bias
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Jun 28, 2021
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The Fairlearn repository overview on our website is outdated. In particular, Visualization source code is no longer in the visualization directory.
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