Code for Thought
Welcome to Code for Thought, the podcast about software in research and the people behind it all. Languages: English, German, French
Code for Thought
Making Machine Learning Reproducible
Reproducibility efforts are community efforts, as this episode's guest Grigori Fursin makes very clear. But you also need the tools.
For some time, Grigori worked on the Collective Knowledge (CK) Framework to help researchers and machine learning practitioners get the best out of their solutions.
In this episode we talk about the challenges you face when trying to evaluate machine learning applications and taking them to production. And how tools like CK Framework and others can help.
- https://cknowledge.org - Collective Knowledge (CK) Framework web site
- https://mlcommons.org/en/ - ML Commons, a non-profit organisation & community for tools around machine learning applications: in particular ML Perf for performance testing
- https://github.com/mlcommons/ck - CK framework GitHub repository
Thank you for listening! Merci de votre écoute! Vielen Dank für´s Zuhören!
Contact Details/ Coordonnées / Kontakt:
- Email mailto:peter@code4thought.org
- UK RSE Slack (ukrse.slack.com): @code4thought or @piddie
- US RSE Slack (usrse.slack.com): @Peter Schmidt
- Mastodon: https://fosstodon.org/@code4thought or @code4thought@fosstodon.org
- Bluesky: https://bsky.app/profile/code4thought.bsky.social
- LinkedIn: https://www.linkedin.com/in/pweschmidt/ (personal Profile)
- LinkedIn: https://www.linkedin.com/company/codeforthought/ (Code for Thought Profile)
This podcast is licensed under the Creative Commons Licence: https://creativecommons.org/licenses/by-sa/4.0/