
Materials Intelligence Research @ Harvard
@materials_intel
Boris Kozinsky's group at Harvard: Understanding dynamics of materials with computational physics + chemistry and machine learning.
ID: 1101859142107582469
https://mir.g.harvard.edu/ 02-03-2019 14:57:45
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Very honored to be elected an APS Fellow and very grateful to students and collaborators for their work and support! American Physical Society #physics buff.ly/46AmQVb

Running MD simulations with ML force fields? Consider learning the scale separation for a potential ~2-4x speed boost using Multi-scale integration: working paper: arxiv.org/abs/2310.13756 Great collaborating with Alby Musaelian, Anders Johansson, Tommi Jaakkola, and Boris Kozinsky

NequIP potentials trained at scale Google DeepMind: GNoME models discover 2.2M (380,000 stable) crystals, expanding the space of materials known to humanity (OQMD+MaterialsProject+WBM) by x10! Already 736 of these materials synthesized by LBNL and others. dpmd.ai/GNoME-AI



💡Open position for Professor in Applied Mathematics at Harvard Harvard SEAS with focus on Computing and AI for Science, Engineering, and Society. Emphasis is on development of applications with strong mathematical and computing foundations. Apply by 12/31/23. academicpositions.harvard.edu/postings/13191

Discover our simple guidelines for training accurate and transferable equivariant ML interatomic potentials for ionic liquid mixtures. Test them on your systems and let us know your results! The Journal of Physical Chemistry #IonicLiquids #MachineLearning DOI: doi.org/10.1021/acs.jp…