Augur is primarily a data engineering tool that makes it possible for data scientists to gather open source software community data. Less data carpentry for everyone else! The primary way of looking at Augur data is through 8Knot ... A public instance of 8Knot is available at https://metrix.chaoss.io ... That is tied to a public instance of Augur at https://ai.chaoss.io
We follow the First Timers Only philosophy of tagging issues for first timers only, and walking one newcomer through the resolution process weekly. You can find these issues tagged with "first timers only" on our issues list..
If you want to jump right in, updated docker build/compose and bare metal installation instructions are available here
Augur is now releasing a dramatically improved new version to the main branch. It is also available here: https://github.com/chaoss/augur/releases/tag/v0.63.0
- The
main
branch is a stable version of our new architecture, which features:- Dramatic improvement in the speed of large scale data collection (100,000+ repos). All data is obtained for 100k+ repos within 2 weeks.
- A new job management architecture that uses Celery and Redis to manage queues, and enables users to run a Flower job monitoring dashboard
- Materialized views to increase the snappiness of API’s and Frontends on large scale data
- Changes to primary keys, which now employ a UUID strategy that ensures unique keys across all Augur instances
- Support for https://github.com/oss-aspen/8knot dashboards (view a sample here: https://eightknot.osci.io/). (beautification coming soon!)
- Data collection completeness assurance enabled by a structured, relational data set that is easily compared with platform API Endpoints
- The next release of the new version will include a hosted version of Augur where anyone can create an account and add repos “they care about”. If the hosted instance already has a requested organization or repository it will be added to a user’s view. If its a new repository or organization, the user will be notified that collection will take (time required for the scale of repositories added).
Augur is a software suite for collecting and measuring structured data about free and open-source software (FOSS) communities.
We gather trace data for a group of repositories, normalize it into our data model, and provide a variety of metrics about said data. The structure of our data model enables us to synthesize data across various platforms to provide meaningful context for meaningful questions about the way these communities evolve. Augur’s main focus is to measure the overall health and sustainability of open source projects, as these types of projects are system critical for nearly every software organization or company. We do this by gathering data about project repositories and normalizing that into our data model to provide useful metrics about your project’s health. For example, one of our metrics is Burstiness. Burstiness – how are short timeframes of intense activity, followed by a corresponding return to a typical pattern of activity, observed in a project?
This can paint a picture of a project’s focus and gain insight into the potential stability of a project and how its typical cycle of updates occurs.
We are a CHAOSS project, and many of our metrics are implementations of the metrics defined by our awesome community. You can find a full list of them here.
For more information on how to get involved on the CHAOSS website.
Augur supports Python3.6 through Python3.9 on all platforms. Python3.10 and above do not yet work because of machine learning worker dependencies. On OSX, you can create a Python 3.9 environment this way: python3.9 -m venv path/to/venv
.
Augur's main focus is to measure the overall health and sustainability of open source projects.
Augur collects more data about open source software projects than any other available software. Augur's main focus is to measure the overall health and sustainability of open source projects. One of Augur's core tenets is a desire to openly gather data that people can trust, and then provide useful and well-defined metrics that help give important context to the larger stories being told by that data. We do this in a variety of ways, one of which is doing all our own data collection in house. We currently collect data from a few main sources:
- Raw Git commit logs (commits, contributors)
- GitHub's API (issues, pull requests, contributors, releases, repository metadata)
- The Linux Foundation's Core Infrastructure Initiative API (repository metadata)
- Succinct Code Counter, a blazingly fast Sloc, Cloc, and Code tool that also performs COCOMO calculations
This data is collected by dedicated data collection workers controlled by Augur, each of which is responsible for querying some subset of these data sources. We are also hard at work building workers for new data sources. If you have an idea for a new one, please tell us - we'd love your input!
If you're interested in collecting data with our tool, the Augur team has worked hard to develop a detailed guide to get started with our project which can be found in our documentation.
If you're looking to contribute to Augur's code, you can find installation instructions, development guides, architecture references (coming soon), best practices and more in our developer documentation. Please know that while it's still rather sparse right now, but we are actively adding to it all the time. If you get stuck, please feel free to ask for help!
To contribute to Augur, please follow the guidelines found in our CONTRIBUTING.md and our Code of Conduct. Augur is a welcoming community that is open to all, regardless if you're working on your 1000th contribution to open source or your 1st. We strongly believe that much of what makes open source so great is the incredible communities it brings together, so we invite you to join us!
Copyright © 2023 University of Nebraska at Omaha, University of Missouri, Brian Warner, and the CHAOSS Project.
Augur is free software: you can redistribute it and/or modify it under the terms of the MIT License as published by the Open Source Initiative. See the LICENSE file for more details.
This work has been funded through the Alfred P. Sloan Foundation, Mozilla, The Reynolds Journalism Institute, contributions from VMWare, Red Hat Software, Grace Hopper's Open Source Day, GitHub, Microsoft, Twitter, Adobe, the Gluster Project, Open Source Summit (NA/Europe), and the Linux Foundation Compliance Summit. Significant design contributors include Kate Stewart, Dawn Foster, Duane O'Brien, Remy Decausemaker, others omitted due to the memory limitations of project maintainers, and 15 Google Summer of Code Students.
Derek Howard <https://github.com/howderek>
_Andrew Brain <https://github.com/ABrain7710>
_Isaac Milarsky <https://github.com/IsaacMilarky>
_John McGinnis <https://github.com/Ulincys>
_Sean P. Goggins <https://github.com/sgoggins>
_
Carter Landis <https://github.com/ccarterlandis>
_Gabe Heim <https://github.com/gabe-heim>
_Matt Snell <https://github.com/Nebrethar>
_Christian Cmehil-Warn <https://github.com/christiancme>
_Jonah Zukosky <https://github.com/jonahz5222>
_Carolyn Perniciaro <https://github.com/CMPerniciaro>
_Elita Nelson <https://github.com/ElitaNelson>
_Michael Woodruff <https://github.com/michaelwoodruffdev/>
_Max Balk <https://github.com/maxbalk/>
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Dawn Foster <https://github.com/geekygirldawn/>
_Ivana Atanasova <https://github.com/ivanayov/>
_Georg J.P. Link <https://github.com/GeorgLink/>
_Gary P White <https://github.com/garypwhite/>
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Kaxada <https://github.com/kaxada>
_Mabel F <https://github.com/mabelbot>
_Priya Srivastava <https://github.com/Priya730>
_Ramya Kappagantu <https://github.com/RamyaKappagantu>
_Yash Prakash <https://gist.github.com/yash-yp>
_
Dhruv Sachdev <https://github.com/Dhruv-Sachdev1313>
_Rashmi K A <https://github.com/Rashmi-K-A>
_Yash Prakash <https://github.com/yash2002109/>
_Anuj Lamoria <https://github.com/anujlamoria/>
_Yeming Gu <https://github.com/gymgym1212/>
_Ritik Malik <https://gist.github.com/ritik-malik>
_
Akshara P <https://github.com/aksh555/>
_Tianyi Zhou <https://github.com/tianyichow/>
_Pratik Mishra <https://github.com/pratikmishra356/>
_Sarit Adhikari <https://github.com/sarit-adh/>
_Saicharan Reddy <https://github.com/mrsaicharan1/>
_Abhinav Bajpai <https://github.com/abhinavbajpai2012/>
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Bingwen Ma <https://github.com/bing0n3/>
_Parth Sharma <https://github.com/parthsharma2/>
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Keanu Nichols <https://github.com/kmn5409/>
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