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Core Infrastructure Initiative Census

Automated review of open source software projects

This project contains programs and documentation to help identify open source software (OSS) projects that may need additional investment to improve security.

Key files include:

The Python analysis program is released under the MIT license and requires BeautifulSoup to work. The program requires an API key from Black Duck Open Hub to work.

The documentation is released under the Creative Commons CC-BY license.

Some supporting data was sourced from the Black Duck Open HUB (formerly Ohloh), a free online community resource for discovering, evaluating, tracking and comparing open source code and projects. We thank Black Duck for the data!

Description of this project

The Heartbleed vulnerability in OpenSSL highlighted that while some open source software (OSS) is widely used and depended on, vulnerabilities can have serious ramifications, and yet some projects have not received the level of security analysis appropriate to their importance. Some OSS projects have many participants, perform in-depth security analyses, and produce software that is widely considered to have high quality and strong security. However, other OSS projects have small teams that have limited time to do the tasks necessary for strong security. The trick is to identify which critical projects fall into the second bucket.

We have focused on automatically gathering metrics, especially those that suggest less active projects. We also provided a human estimate of the program's exposure to attack, and developed a scoring system to heuristically combine these metrics. These heuristics identified especially plausible candidates for further consideration. For our initial set of projects to examine, we took the set of packages installed by Debian base and added a set of packages that were identified as potentially concerning.

We invite you to contribute in the following ways:

  • fork the repository and try different metrics and heuristics. Send us pull requests for the ones that you find experimentally make the most sense.
  • fork the repository and try different data sources.
  • review the data in projects_to_examine.csv and send corrections and elaborations.
  • suggest more projects to consider in the future.
  • open an issue to mention additional relevant literature in the field.

Background

This work was sponsored by the Linux Foundation's Core Infrastructure Initiative

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Automated review of open source software projects

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  • Python 95.4%
  • Makefile 4.6%