Shaping the Future of Self-Driving Autonomous Laboratories Workshop
Creators
- Ferreira da Silva, Rafael1
- Moore, Robert1
- Mintz, Benjamin1
- Advincula, Rigoberto1
- Al-Najjar, Anees1
- Baldwin, Luke2
- Bridges, Craig1
- Coffee, Ryan3
- Deelman, Ewa4
- Engelmann, Christian1
- Etz, Brian1
- Firestone, Millie5
- Foster, Ian T.5
- Ganesh, Panchapakesan1
- Hamilton, Leslie6
- Huber, Dale7
- Ivanov, Ilia1
- Jha, Shantenu8
- Li, Ying9
- Liu, Yongtao1
- Lofstead, Jay7
- Mandal, Anirban10
- Martin, Hector11
- Mayer, Theresa12
- McDonnell, Marshall1
- Murugesan, Vijayakumar13
- Nimer, Sal6
- Rao, Nageswara1
- Seifrid, Martin14
- Taheri, Mitra6
- Taufer, Michela15
- Vogiatzis, Konstantinos15
- 1. Oak Ridge National Laboratory
- 2. United States Air Force Research Laboratory
- 3. SLAC National Accelerator Laboratory
- 4. University of Southern California
- 5. Argonne National Laboratory
- 6. Johns Hopkins University
- 7. Sandia National Laboratories
- 8. Princeton Plasma Physics Laboratory
- 9. University of Wisconsin-Madison
- 10. Renaissance Computing Institute
- 11. Lawrence Berkeley National Laboratory
- 12. Carnegie Mellon University
- 13. Pacific Northwest National Laboratory
- 14. North Carolina State University
- 15. University of Tennessee Knoxville
Description
The "Shaping the Future of Self-Driving Autonomous Laboratories" workshop, held in Denver on November 7-8, 2024, brought together leading experts from materials science and computing to address the growing need to revolutionize scientific research through AI-driven autonomous laboratories. The workshop identified critical challenges, including the integration of heterogeneous data, development of AI systems that understand fundamental physical principles, and comprehensive safety protocols. Key recommendations emerged around developing universal laboratory equipment interfaces, implementing automated metadata collection systems, and creating hybrid AI approaches that combine data-driven learning with scientific principles. The workshop emphasized maintaining human oversight while leveraging automation, transforming scientific education to prepare the next generation of researchers, and establishing a national consortium leveraging DOE facilities as anchors for broader collaboration with academia and industry. Participants stressed the urgency of addressing the growing disconnect between human decision-making timescales and modern instrumentation capabilities, highlighting the need for strategic automation while preserving essential human insight and oversight in the research process.
Files
Autonomous_Workflows_Workshop_2024.pdf
Files
(622.9 kB)
Name | Size | Download all |
---|---|---|
md5:c9e42fcd8949863492b4189f74cfca4f
|
622.9 kB | Preview Download |