adversarial-robustness-toolbox

v1.19.0

Toolbox for adversarial machine learning. For more information about how to use this package see README

Latest version published 2 days ago
License: MIT

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Package Health Score

84 / 100

Popularity

Recognized
GitHub Stars
4.94K
Forks
1.17K
Contributors
110

Direct Usage Popularity

TOP 30%

Based on project statistics from the GitHub repository for the PyPI package adversarial-robustness-toolbox, we found that it has been starred 4,940 times.

Security

Security review needed
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1.19.0 (Latest)

Security and license risk for latest version

Release Date
Dec 20, 2024
Direct Vulnerabilities
  • 0
    C
  • 0
    H
  • 0
    M
  • 0
    L
Indirect Vulnerabilities
  • 0
    C
  • 0
    H
  • 0
    M
  • 0
    L
License Risk
  • 0
    H
  • 0
    M
  • 0
    L
All security vulnerabilities belong to production dependencies of direct and indirect packages.

License
MIT

Security Policy
Yes

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Maintenance

Healthy

Commit Frequency

Open Issues
131
Open PR
17
Last Release
2 days ago
Last Commit
10 days ago

Further analysis of the maintenance status of adversarial-robustness-toolbox based on released PyPI versions cadence, the repository activity, and other data points determined that its maintenance is Healthy.

We found that adversarial-robustness-toolbox demonstrates a positive version release cadence with at least one new version released in the past 3 months.

As a healthy sign for on-going project maintenance, we found that the GitHub repository had at least 1 pull request or issue interacted with by the community.

Community

Active
Readme
Yes
Contributing.md
Yes
Code of Conduct
Yes
Contributors
110
Funding
No

A good and healthy external contribution signal for adversarial-robustness-toolbox project, which invites more than one hundred open source maintainers to collaborate on the repository.


Embed Package Health Score Badge

package health: 84/100 package health 84/100

Package

Python Versions Compatibility
==3.10.*, ==3.11.*, ==3.9.*

Age
7 years
Latest Release
2 days ago
Dependencies
3 Direct / 8 Total
Versions
62
Maintainers
2
Wheels
OS Independent