status: Recognised & Endorsed
Chair (s): Fotis Psomopoulos, Daniel S. Katz
Group Email: [group_email]
Secretariat Liaison: Bridget Walker
The idea of FAIR (findable, accessible, interoperable, and reusable) in the context of scientific data management and stewardship was developed in 2014 and turned into specific principles in 2016[1]. Along the way, the idea was generalized in concept to apply to both data and other digital scholarly objects, but it has become clear in practice that what works for data may not directly work for all other digital objects. For example, both previous and ongoing work show that many of the guiding FAIR principles need to either be re-written or reinterpreted for software, resulting in the FAIR principles for Research Software[2], already with an adoption commitment from different communities and institutes[3]. The FAIR principles also can apply to machine learning tools and models, though a direct application is not always possible as machine learning combines aspects of data, software and computational workflows.
This Interest Group will enable community members to discuss the various aspects of FAIR as applied to Machine Learning, looking both at domain specific and domain-agnostic use cases, and creating task forces and working groups as needed for specific guidance documents, recommendations, definitions and technical specification to that effect. The overall aim is to foster collaborations among researchers and developers who are interested in making machine learning (data, models, workflows, etc.) FAIR, along with those who contribute to the infrastructure and policies that support this. It will work closely with other FAIR RDA Groups (such as the FAIR for Research Software Working Group), as machine learning combines aspects of data and software, but is distinctly different from both.
Specifically, objectives of this IG are to:
- Discuss where FAIR should apply to ML, considering the work in other working groups and focusing on gaps
- Define and prioritize cases for new Task Forces and Working Groups
- Ultimately, build a community of practice for information sharing about ML and FAIR pertaining to ML
In order to ensure that these scenarios are valid across domains (e.g., health, earth science, physics, agriculture, materials science, energy, biology), individual Task Forces (TFs) may be initiated from within the IG that may be focused on particular domains could be initiated, each working in parallel on distinct topics.
References
[1] Wilkinson, M., Dumontier, M., Aalbersberg, I. et al. The FAIR Guiding Principles for scientific data management and stewardship. Sci Data 3, 160018 (2016). https://doi.org/10.1038/sdata.2016.18
[2] Chue Hong, N. P., Katz, D. S., Barker, M., Lamprecht, A.-L., Martinez, C., Psomopoulos, F. E., Harrow, J., Castro, L. J., Gruenpeter, M., Martinez, P. A., Honeyman, T., et al. (2021). FAIR Principles for Research Software (FAIR4RS Principles). Research Data Alliance. https://doi.org/10.15497/RDA00065
[3] Martinez-Ortiz, Carlos, Katz, Daniel S., Lamprecht, Anna-Lena, Barker, Michelle, Loewe, Axel, Fouilloux, Anne, Wyngaard, Jane, Garijo, Daniel, Moldon, Javier, Castro, Leyla Jael, Wheeler, Daniel, Albers, Joost Rutger Demian, & Lee, Allen. (2022). FAIR4RS: Adoption support. Zenodo. https://doi.org/10.5281/zenodo.6258366
Posts
Open Modelling Foundation talk
Dear all, Let's meet on the 21.June.2023 at 17:00 CEST to learn about the Open Modelling Foundation , presented by Prof. Michael Barton . See connection details below. Calendar entry also attached, not sure how it will work, please let me know so I keep sending such a thing for any future occasion (if it works) or not (if it does not). Kind regards, Leyla Jael Castro --- Topic: NFDI4DS Lecture Series - Open Modelling Foundation Time: Jun 21, 2023 05:00 PM Amsterdam, Berlin, Rome, Stockholm, Vienna0 | Add new comment
Webinar about Open Modeling Foundation
Dear all, During our meeting at the latest plenary session in Gothenburg, Chris Erdmann mentioned that the Open Modelling Foundation (OMF) was working in directions similar to the FAIR4ML group. To learn more about it, jointly with the NDFI4DataScience, we are inviting Michael Barton from the OMF to give us an introductory talk. If you are interested, please fill in your availability at0 | Add new comment
Invitation: FAIR4ML IG monthly meetings (public invite) @ Monthly from 17:00 to 18:00 on the fourth Monday (EEST) (fair4ml@rda-groups.org)
FAIR4ML IG monthly meetings (public invite) Monthly from 17:00 to 18:00 on the fourth Monday Eastern European Time - Athens Dear all, You are invited to join the FAIR4MLIG monthly meetings on the fourth Monday of the month at 14:00-15:00 UTC. Kind regards,The FAIR4ML IG co-chairs Guests ***@***.***-groups.org View all guest info0 | Add new comment
RE: [EXTERNAL] Re: [fair4ml] FAIR4ML IG Monthly meetings
I too would appreciate an actual calendar invitation if possible - this email announcement slipped silently into the triage folder, without my noticing. Jennie - Show quoted text -From: ***@***.***-groups.org <***@***.***-groups.org> Sent: Tuesday, May 16, 2023 6:11 AM To: ***@***.***; FAIR for Machine Learning (FAIR4ML) IG <***@***.***-groups.org> Subject: [EXTERNAL] Re: [fair4ml] FAIR4ML IG Monthly meetings0 | Add new comment
FAIR4ML IG Monthly meetings
Dear all, You are invited to join the FAIR4ML IG monthly meetings on the fourth Monday of the month at 16:00 (either CET or CEST depending on which is active at the time). *Agenda:* https://docs.google.com/document/d/1kz87PmmFMBo4CpqtDPbHaA_j3r6ybqAO20dX... *Connection details:* https://us02web.zoom.us/j/816550248232 | Add new comment
Poll to find a slot for out monthly meetings
Dear all members of the FAIR4ML Interest Group, Please fill in your choices for our monthly meetings at this poll before 19.May. If no option is good for you, you still will be able to follow up from the minutes as they will be open to all. Also, we aim to create task forces and those might decide to find another slot to meet from time to time. Task forces will maintain open documents for discussion so offline participants can also contribute. Kind regards, Jael Castro On behalf of co-chairs.0 | Add new comment
RDA P20 session follow-up
Hi everyone, First of all, it was great seeing all of you at the session, both F2F and virtually - I'm sure I'm speaking for of all three of us, we quite enjoyed the discussion and we are thrilled of the overall enthusiasm evident in the group. As promised, these are the key actions moving forward, as discussed earlier today (I'm bcc'ing all emails captured in the gdoc, but I will be following-up only through the IG mailing list from here onward). 1. Join the IG here0 | Add new comment
FAIR4ML Session in the upcoming RDA P20
Hi everyone, We are just a few days away from the 20 ybrid> th RDA Plenary, so we wanted to let everyone know that we will be having our own session "Defining the roadmap towards FAIR for Machine Learning ybrid/defining-roadmap-towards-fair-machine-learning> " in hybrid format next Wednesday, March 22nd at 08:00 - 09:30 UTC Meeting+Breakout+3%C2%A0&iso=20230322T09&p1=3903&ah=1&am=30> (Breakout #30 | Add new comment
Invitation to participate in 'A Decade of Data: 10 Years of the RDA' events and activities
Hi all, As part of 'A Decade of Data': Celebrating 10 Years of the Research Data Alliance, the Research Data Alliance is organizing a series of international and regional events and activities that includes podcasts, cross-fertilisation workshops + follow ups, AMAs and more. You can find more information here:0 | Add new comment
Invitation to the FAIR4ML session at RDA P20
Hi all, I hope you are well and that you all had a good start to the New Year! This is a quick reminder that the FAIR for Machine Learning Interest Group will be having our first session, in hybrid format, during the RDA P20 ybrid> on March 22nd under the title of "0 | Add new comment