Nong Artrith

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Nong Artrith

Nong Artrith

@NArtrith

Assistant Professor @UniUtrecht https://t.co/fkBuXr5jvq DFT/MachineLearning & Energy Materials Enthusiast https://t.co/kq11Etrd8Z Visiting Researcher @MSFTResearch

Utrecht, The Netherlands Katılım Ocak 2019
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Jorge Bravo Abad
Jorge Bravo Abad@bravo_abad·
Refining catalyst–adsorbate interatomic potentials with transfer learning in ænet-PyTorch From optimizing catalyst interfaces to extending molecular dynamics (MD) simulations, linking broad chemical knowledge to specific adsorbate systems often poses challenges in materials research. While large-scale data repositories can help, constructing accurate machine learning potentials (MLPs) for adsorbate-catalyst complexes still requires significant computational resources, especially if only a small custom data set is available. A recent paper by An Niza El Aisnada and coauthors proposes a transfer learning strategy to build stable MLPs under tight data constraints, particularly for catalyst–adsorbate systems. Leveraging the Open Catalyst 2020 (OC20) database—a substantial collection of diverse catalyst configurations—they pretrain MLPs on carefully selected OC20 subsets. By transferring the pretrained models to a smaller target data set (only a few hundred ab initio references), they achieve robust energy and force predictions. Notably, these transfer-learned MLPs remain stable for hundreds of picoseconds of MD simulation on Cu–Au/water cluster systems, whereas models trained only on limited local data fail much sooner. They explore two main approaches for selecting relevant subsets from OC20: (1) random sampling to mirror the original database broadly, and (2) filtering by chemical environment (for example, focusing on Cu–Au). The pretrained MLPs, once transferred, exhibit significant improvements in force prediction and MD stability—even though raw RMSE metrics in smaller data sets do not always reflect such gains. A key component of their workflow is the “ænet-PyTorch” framework. Originally, the Atomic Energy Network (ænet) was a C/Fortran toolkit for ANN-based MLP construction. In this updated PyTorch extension, parallelization and GPU acceleration are harnessed for efficient training, allowing the incorporation of both reference energies and forces. Through transfer learning, a user can import a pretrained model (from large data sets), then fine-tune it on domain-specific references to achieve both accuracy and scalability. Beyond a simple methods comparison, the authors emphasize pragmatic insights—such as the importance of CV-limited data curation, the synergy of domain-focused subset selection (e.g., focusing on Cu–Au to boost transfer success), and the pitfalls of relying on single scalar metrics like RMSE. They illustrate how data set sizes and neural network hyperparameters (for balancing energy vs. forces) drive generalizability in practice. Paper: pubs.acs.org/doi/full/10.10…
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Vahe Gharakhanyan
Vahe Gharakhanyan@VGharakhanyan·
One of the largest materials datasets and SOTA ML potentials are open-sourced by FAIR Chemistry. Immensely proud to be part of the team that delivers open science and catalyzes community involvement and advances in this field. x.com/OpenCatalyst/s…
FAIR Chemistry@OpenCatalyst

Introducing Meta’s Open Materials 2024 (OMat24) Dataset and Models! All under permissive open licenses for commercial and non-commercial use! Paper: arxiv.org/abs/2410.12771 Dataset: huggingface.co/datasets/fairc… Models: huggingface.co/fairchem/OMAT24 🧵1/x

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The Nobel Prize
The Nobel Prize@NobelPrize·
BREAKING NEWS The Royal Swedish Academy of Sciences has decided to award the 2024 #NobelPrize in Physics to John J. Hopfield and Geoffrey E. Hinton “for foundational discoveries and inventions that enable machine learning with artificial neural networks.”
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CECAM
CECAM@cecamEvents·
Very interesting roundtable on "How to best combine AI and physical modelling to accelerate discoveries with societal impact?" moderated by @nicola_marzari, with Laura Toni, @adrian_roitberg & @MicheleCeriotti at the #CECAM55 conference!
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4TUHighTechMaterials
4TUHighTechMaterials@4TU_HTM·
We got started! Excited to have a great line up of speakers and a large audience in the X Theatre Hall today @tudelft. #materialsscience #MachineLearning
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4TUHighTechMaterials@4TU_HTM

These speakers 👆🧵 will talk about #MachineLearning & Molecular Discovery in the X Theatre Hall @tudelft on 21 March. Join them exploring the future of scientific discovery, facilitated by #ML and #quantummechanics. 📢 Keynote: Prof. Max Welling 🌐 4tu.nl/htm/joint-mate… 12/

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Zack Ulissi
Zack Ulissi@zackulissi·
Paper shared on arXiv showing catalyst AI/ML models trained on datasets like @OpenCatalyst can generalize to solid solutions like high entropy alloys (HEA)! This is exciting because the design space of HEAs (with >5 components) is combinatorially large. arxiv.org/abs/2403.09811
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Sai G Gopalakrishnan
Sai G Gopalakrishnan@goths19·
Honoured to receive the "Prof. Priti Shankar Teaching Award" from @iiscbangalore. Thanks to all students who learned from & liked what I have taught so far, & those who contributed towards the course contents. Hope the first of many institute-level recognitions to come. @iiscmte
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Bingqing Cheng
Bingqing Cheng@ChengBingqing·
Bye, Viennese Schnitzel; hello, California rolls! I've just moved to @UCB_Chemistry. I'm looking forward to new challenges and collaborations. And I thank the tremendous support and lovely colleagues from @ISTAustria over the past few years.
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BertWeckhuysen
BertWeckhuysen@BWeckhuysen·
SUNER-C Consortium Meeting at @UniUtrecht (1) Last week we've organized the SUNER-C 4th Consortium Meeting. On Thursday the event took place in the Speelklok Museum in the city centre; on Friday we were in the David de Wiedbuilding, where there was a.o. a lab tour. @sunergy_eu
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Maurice Weiler
Maurice Weiler@maurice_weiler·
We proudly present our 524 page book on equivariant convolutional networks. Coauthored by Patrick Forré, @erikverlinde and @wellingmax. #cnn_book" target="_blank" rel="nofollow noopener">maurice-weiler.gitlab.io/#cnn_book [1/N]
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Max Welling
Max Welling@wellingmax·
This looks amazing: capturing carbon from seawater and generating hydrogen as a byproduct. Given the rate the climate is changing I am sometimes wondering why we are not pouring billions into these projects and put ITER / LHC on the backburner for a while. newatlas.com/energy/equatic…
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Kristin Persson
Kristin Persson@KPatBerkeley·
Truly honored to be elected a member of the oldest Academy of my home country, in the class in Chemistry 2024. Sincere appreciation to @UCBerkeley and @BerkeleyLab for the support and to @Persson_group members over the years ! 🎉
The Royal Swedish Academy of Sciences@ScienceAcad_swe

Three new members of the Academy! 🌟 At the General Meeting on 21 February, Josefin Larsson, Royal Institute of Technology (@KTHuniversity), was elected as a new member of the Academy´s class for astronomy and space science. Kristin Aslaug Persson, University of California, Berkeley, and David Drew, Stockholm University (@Stockholm_Uni), were elected new members of the class for chemistry. From left: Kristin Aslaug Persson (foto: Adam Schwartzberg), Josefin Larsson (foto: Erik Thor, Knut och Alice Wallenberg Stiftelse), David Drew (foto: Magnus Bergström). Read more: kva.se/en/news/three-…

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The Journal of Chemical Physics
David Reichman, JCP Associate Editor and Professor of Chemistry at Columbia University, wishes JCP a Happy 90th Birthday 🎈 - a journal he has looked to and respected since he was an undergraduate. @ChemColumbia
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Nong Artrith
Nong Artrith@NArtrith·
⚡️🔋☀️Attending the 2nd Edition of the NWO NERA (NL) Symposium, '#EnergyTransition - Collaborating towards a Sustainable Future' I think our ML/AI models could also be useful 😊#NWONERA Come see our poster & look forward to opportunities to work together ☀️@NArtrith @Peter2Ngene
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