Skip to content
RDL
Network
Ekosistem
Uygulama değiştir
EN
Hakkımızda
SSS
Giriş yap
Başla
Python Materials Genomics (pymatgen): A robust, open-source python library for materials analysis — Shyue Ping Ong (2012) | RDL Network
Back
Cite
Save
Save for later
Share
Home
Publications
Python Materials Genomics (pymatgen): A robust, open-source python library for materials analysis
Shared by
Gerbrand Ceder
University of California, Berkeley
Python Materials Genomics (pymatgen): A robust, open-source python library for materials analysis
Article
2012
ca
Authors
+7 more
SO
Shyue Ping Ong
WR
William D. Richards
AJ
Anubhav Jain
Discussion
(0)
Sign in
to like and join the discussion.
No comments yet. Be the first to comment.
Related publications
Article
2025
Materials Graph Library (MatGL), an open-source graph deep learning library for materials science and chemistry
Tsz Wai Ko
,
Bowen Deng
,
Marcel Nassar
,
Luis Barroso-Luque
,
Runze Liu
,
Ji Qi
,
Atul C. Thakur
,
Amiya Kanta Mishra
,
Eric Hsien Lung Liu
,
Gerbrand Ceder
,
Santiago Miret
,
Shyue Ping Ong
Preprint
2025
Materials Graph Library (MatGL), an open-source graph deep learning library for materials science and chemistry
Tsz Wai Ko
,
Bowen Deng
,
Marcel Nassar
,
Luis Barroso-Luque
,
Runze Liu
,
Ji Qi
,
Eric Hsien Lung Liu
,
Gerbrand Ceder
,
Santiago Miret
,
Shyue Ping Ong
Article
2017
The JBEI quantitative metabolic modeling library (jQMM): a python library for modeling microbial metabolism
Garrett W. Birkel
,
Amit Ghosh
,
Vinay Kumar
,
Daniel Weaver
,
David Ando
,
Tyler W. H. Backman
,
Adam P. Arkin
,
Jay D Keasling
,
Héctor García Martín
Article
2022
pymdp: A Python library for active inference in discrete state spaces
Conor Heins
,
Beren Millidge
,
Daphne Demekas
,
Brennan Klein
,
Karl Friston
,
Iain D. Couzin
,
Alexander Tschantz
Corrigendum
2017
Erratum to: The JBEI quantitative metabolic modeling library (jQMM): a python library for modeling microbial metabolism
Garrett W. Birkel
,
Amit Ghosh
,
Vinay Kumar
,
Daniel Weaver
,
David Ando
,
Tyler W. H. Backman
,
Adam P. Arkin
,
Jay D Keasling
,
Héctor García Martín
Discussion(0)
No comments yet. Be the first to comment.