• Tackling the Machine Learning Reproducibility Crisis – KJ Schmidt & Aristana Scourtas on Foundry-ML

  • 2024/09/19
  • 再生時間: 28 分
  • ポッドキャスト

Tackling the Machine Learning Reproducibility Crisis – KJ Schmidt & Aristana Scourtas on Foundry-ML

  • サマリー

  • #19: KJ Schmidt & Aristana Scourtas join Arfon and Abby to discuss Foundry-ML, a platform designed to simplify using machine learning datasets, highlighting its development, impacts, and their career advancements post-project.

    KJ just started a position at the Institute for Genomic Medicine within Nationwide Children's Hospital. Aristana is a Product and Research Manager at The Library Innovation Lab at Harvard Law School. KJ and Aristana both worked on Foundry-ML during their time working at UChicago and Globus.

    You can follow Aristana on LinkedIn https://www.linkedin.com/in/aristana/ and Twitter/X @aristana_s. You can follow KJ on Twitter/X @kj_schmidt or LinkedIn https://www.linkedin.com/in/schmidtkj/.

    Episode highlights:

    [01:54] Beginning of Interview with KJ Schmidt and Aristana Scourtas [02:02] What is Foundry-ML? [04:02] The Role of Globus in Foundry-ML [05:29] Reproducibility in Machine Learning [06:45] Applications and Collaborations [09:15] New Roles and Future Plans [11:01] Maintaining Foundry-ML [12:37] Sustainability in Open Source [13:12] Community Building in Open Source [21:49] Challenges and Lessons Learned [24:28] Publishing in JOSS [25:38] Closing Remarks and Contact Information

    Links:
    • JOSS paper: https://joss.theoj.org/papers/10.21105/joss.05467
    • Foundry repository: https://github.com/MLMI2-CSSI/foundry
    • Website: https://foundry-ml.org/
    • Movement Building from Home
    • KJ on Twitter/X @kj_schmidt or LinkedIn https://www.linkedin.com/in/schmidtkj/
    • Aristana on LinkedIn https://www.linkedin.com/in/aristana/ and Twitter/X @aristana_s
    • The Journal of Open Source Software (Twitter/X, blog)
    • @arfon on (fosstodon, Linkedin, GitHub, website)
    • @abbycabs on (Twitter/X, hachyderm, bsky, Linkedin, GitHub, website)
    • Donate to JOSS

    Supercharge your research with the latest scientific software showcased in the Journal of Open Source Software (JOSS). Hear directly from authors on their work, their motivations, and new ways open source software can accelerate your work.

    Hosted by editor-in-chief Arfon Smith and founding editor Abby Cabunoc Mayes, each episode features an interview with different authors of published papers in JOSS. Tune in to learn about the latest developments in research software engineering and open science, and how they are changing the way research is conducted.

    New episodes every other Thursday.

    続きを読む 一部表示

あらすじ・解説

#19: KJ Schmidt & Aristana Scourtas join Arfon and Abby to discuss Foundry-ML, a platform designed to simplify using machine learning datasets, highlighting its development, impacts, and their career advancements post-project.

KJ just started a position at the Institute for Genomic Medicine within Nationwide Children's Hospital. Aristana is a Product and Research Manager at The Library Innovation Lab at Harvard Law School. KJ and Aristana both worked on Foundry-ML during their time working at UChicago and Globus.

You can follow Aristana on LinkedIn https://www.linkedin.com/in/aristana/ and Twitter/X @aristana_s. You can follow KJ on Twitter/X @kj_schmidt or LinkedIn https://www.linkedin.com/in/schmidtkj/.

Episode highlights:

[01:54] Beginning of Interview with KJ Schmidt and Aristana Scourtas [02:02] What is Foundry-ML? [04:02] The Role of Globus in Foundry-ML [05:29] Reproducibility in Machine Learning [06:45] Applications and Collaborations [09:15] New Roles and Future Plans [11:01] Maintaining Foundry-ML [12:37] Sustainability in Open Source [13:12] Community Building in Open Source [21:49] Challenges and Lessons Learned [24:28] Publishing in JOSS [25:38] Closing Remarks and Contact Information

Links:
  • JOSS paper: https://joss.theoj.org/papers/10.21105/joss.05467
  • Foundry repository: https://github.com/MLMI2-CSSI/foundry
  • Website: https://foundry-ml.org/
  • Movement Building from Home
  • KJ on Twitter/X @kj_schmidt or LinkedIn https://www.linkedin.com/in/schmidtkj/
  • Aristana on LinkedIn https://www.linkedin.com/in/aristana/ and Twitter/X @aristana_s
  • The Journal of Open Source Software (Twitter/X, blog)
  • @arfon on (fosstodon, Linkedin, GitHub, website)
  • @abbycabs on (Twitter/X, hachyderm, bsky, Linkedin, GitHub, website)
  • Donate to JOSS

Supercharge your research with the latest scientific software showcased in the Journal of Open Source Software (JOSS). Hear directly from authors on their work, their motivations, and new ways open source software can accelerate your work.

Hosted by editor-in-chief Arfon Smith and founding editor Abby Cabunoc Mayes, each episode features an interview with different authors of published papers in JOSS. Tune in to learn about the latest developments in research software engineering and open science, and how they are changing the way research is conducted.

New episodes every other Thursday.

Tackling the Machine Learning Reproducibility Crisis – KJ Schmidt & Aristana Scourtas on Foundry-MLに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。