Skip to content
RDL
Network
Ekosistem
Uygulama değiştir
EN
Hakkımızda
SSS
Giriş yap
Başla
A practical guide to machine learning interatomic potentials – Status and future — Ryan Jacobs (2025) | RDL Network
Back
Cite
Save
Save for later
Share
Home
Publications
A practical guide to machine learning interatomic potentials – Status and future
Shared by
Gerbrand Ceder
University of California, Berkeley
A practical guide to machine learning interatomic potentials – Status and future
Article
2025
en
Authors
+27 more
RJ
Ryan Jacobs
DM
Dane Morgan
SA
Siamak Attarian
Discussion
(0)
Sign in
to like and join the discussion.
No comments yet. Be the first to comment.
Related publications
Article
2025
Systematic softening in universal machine learning interatomic potentials
Bowen Deng
,
Yunyeong Choi
,
Peichen Zhong
,
Janosh Riebesell
,
Shashwat Anand
,
Zhuohan Li
,
KyuJung Jun
,
Kristin A. Persson
,
Gerbrand Ceder
Preprint
2025
DistMLIP: A Distributed Inference Platform for Machine Learning Interatomic Potentials
Kevin Han
,
Bowen Deng
,
Amir Barati Farimani
,
Gerbrand Ceder
Preprint
2025
Cross-functional transferability in universal machine learning interatomic potentials
Xu Huang
,
Bowen Deng
,
Peichen Zhong
,
Aaron D. Kaplan
,
Kristin A. Persson
,
Gerbrand Ceder
Article
2025
Cross-functional transferability in foundation machine learning interatomic potentials
Xu Huang
,
Bowen Deng
,
Peichen Zhong
,
Aaron D. Kaplan
,
Kristin A. Persson
,
Gerbrand Ceder
Preprint
2024
Overcoming systematic softening in universal machine learning interatomic potentials by fine-tuning
Bowen Deng
,
Yunyoung Choi
,
Peichen Zhong
,
Janosh Riebesell
,
Shashwat Anand
,
Zhuohan Li
,
KyuJung Jun
,
Kristin A. Persson
,
Gerbrand Ceder
Discussion(0)
No comments yet. Be the first to comment.