materialsvirtuallab.orgMaterials Virtual Lab – Advancing Materials Science through AI

materialsvirtuallab.org Profile

materialsvirtuallab.org is a domain that was created on 2013-08-12,making it 12 years ago. It has several subdomains, such as matgenb.materialsvirtuallab.org , among others.

Description:Advancing Materials Science through...

Discover materialsvirtuallab.org website stats, rating, details and status online.Use our online tools to find owner and admin contact info. Find out where is server located.Read and write reviews or vote to improve it ranking. Check alliedvsaxis duplicates with related css, domain relations, most used words, social networks references. Go to regular site

materialsvirtuallab.org Information

HomePage size: 124.462 KB
Page Load Time: 0.453796 Seconds
Website IP Address: 144.208.69.152

materialsvirtuallab.org Similar Website

M.S. Materials Science and Engineering (Materials Science Option) | New Jersey Institute of Technolo
mtse.njit.edu
Materials Science and Engineering | Materials Science and Engineering at Virginia Tech | Virginia T
mse.vt.edu
Center on Teaching & Learning | Advancing Teaching and Learning through Research
ctl.uoregon.edu
Thomas Scientific - Lab Supplies, Lab Equipment, Lab Chemicals, & Lab Safety
ariba.thomassci.com
Center for Nanoscale Science | A Materials Research Science and Engineering Center (MRSEC)
mrsec.psu.edu
Materials Science and Engineering Home | Materials Science and Engineering
mse.rutgers.edu
Foil Assisted Ship Technologies – Advancing marine technology through research & development, partne
ww1.hysucraft.com
Cedar Park Virtual Tours | Virtual Tours Presented by IDI Virtual Tours
tours.virtualdigitalimages.com
Quincy Virtual Tours | Virtual Tours Presented by Vision Quest Virtual Tours
tours.visionquestvirtualtours.com
Lab Aids | Science Kits and Materials for Middle School & High School
store.lab-aids.com
Materials Science and Engineering | A Department of the School of Engineering and Applied Science
mse.seas.upenn.edu
Cornell Lab Bird Cams | Cornell Lab Bird Cams Cornell Lab Bird Cams
cams.allaboutbirds.org
Haptics and Virtual Reality Lab – Deaprtment of Computer Science and Engineering,
haptics.khu.ac.kr
UCL Blockchain | Advancing blockchain technology through research, education, and
blockchain.cs.ucl.ac.uk

materialsvirtuallab.org PopUrls

Materials Virtual Lab – Advancing Materials Science through AI
https://materialsvirtuallab.org/
Research
https://materialsvirtuallab.org/research/
Software
https://materialsvirtuallab.org/software/
Publications
https://materialsvirtuallab.org/publications/
mavrl: crystalium
http://crystalium.materialsvirtuallab.org/
Teaching
https://materialsvirtuallab.org/teaching/
October 2021
https://materialsvirtuallab.org/2021/10/
People
https://materialsvirtuallab.org/people/
Positions
https://materialsvirtuallab.org/positions/
2021 – Materials Virtual Lab
https://materialsvirtuallab.org/2021/
2022 – Materials Virtual Lab
https://materialsvirtuallab.org/2022/
matgenb | Materials Science Jupyter Notebooks
http://matgenb.materialsvirtuallab.org/
Publications – Materials Virtual Lab
https://materialsvirtuallab.org/category/publications/
Materials Graph Library – Materials Virtual Lab
https://materialsvirtuallab.org/2023/06/materials-graph-library/
Presentations - Materials Virtual Lab
https://materialsvirtuallab.org/category/presentations/

materialsvirtuallab.org DNS

A materialsvirtuallab.org. 899 IN A 144.208.69.152
MX materialsvirtuallab.org. 900 IN MX 0 materialsvirtuallab.org.
NS materialsvirtuallab.org. 14400 IN NS ns2.inmotionhosting.com.
SOA materialsvirtuallab.org. 14400 IN SOA ns1.inmotionhosting.com. null.inmotionhosting.com. 2021120906 86400 7200 3600000 86400

materialsvirtuallab.org Httpheader

Date: Mon, 13 May 2024 16:52:11 GMT
Server: Apache
X-Powered-By: PHP/7.4.33
Vary: accept,content-type
Link: https://materialsvirtuallab.org/wp-json/; rel="https://api.w.org/", https://wp.me/7zPWj; rel=shortlink
Upgrade: h2,h2c
Connection: Upgrade, close
Transfer-Encoding: chunked
Content-Type: text/html; charset=UTF-8

materialsvirtuallab.org Meta Info

charset="utf-8"/
content="width=device-width, initial-scale=1" name="viewport"/
content="max-image-preview:large" name="robots"
content="WordPress 6.5.3" name="generator"
content="website" property="og:type"/
content="Materials Virtual Lab" property="og:title"/
content="Advancing Materials Science through AI" property="og:description"/
content="https://materialsvirtuallab.org/" property="og:url"/
content="Materials Virtual Lab" property="og:site_name"/
content="https://i0.wp.com/materialsvirtuallab.org/wp-content/uploads/2013/08/cropped-mavrl.png?fit=512%2C512&ssl=1" property="og:image"/
content="512" property="og:image:width"/
content="512" property="og:image:height"/
content="" property="og:image:alt"/
content="en_US" property="og:locale"/
content="https://i0.wp.com/materialsvirtuallab.org/wp-content/uploads/2013/08/cropped-mavrl.png?fit=270%2C270&ssl=1" name="msapplication-TileImage"/

materialsvirtuallab.org Ip Information

Ip Country: United States
Latitude: 37.751
Longitude: -97.822

materialsvirtuallab.org Html To Plain Text

Materials Virtual Lab Home About Mission & Values People Positions Guide Members wiki Research Publications Teaching Community Software matterverse.ai Crystalium XAS-RF Matgenb Matgenie Youtube Search Search for:Home About Mission & Values People Positions Guide Members wiki Research Publications Teaching Community Software matterverse.ai Crystalium XAS-RF Matgenb Matgenie Youtube Search Toggle menu Search for: Materials Virtual Lab Creating It from Bit Read Latest News Materials Virtual Lab Creating It from Bit Read Latest News May 2, 2024 May 2, 2024 Publications Cation Ordering in P2 Na-Ion Cathodes Congratulations to Zishen for his co-authored paper on Influence of Interlayer Cation Ordering on Na Transport in P2-Type Na0.67–xLiy Ni0.33–zMn0.67+zO2 for Sodium-Ion Batteries” published in JACS together with the group of Prof Claire Xiong at Boise State University! In this work, we studied the P2-type Na2/3Ni1/3Mn2/3O2 (PNNMO) cathode for Na-ion batteries. Zishen’s contribution is showing via DFT calculations that Li doping (Na2/3Li0.05Ni1/3Mn2/3O2, LFN5) promotes ABC-type interplanar Ni/ Mn ordering without disrupting the Na+/vacancy ordering and creates low-energy Li−Mn-coordinated diffusion pathways. These result are in line with those from neutron/X-ray diffraction. Quasielastic neutron scattering reveals that the Na+ diffusivity in LFN5 is enhanced by an order of magnitude over PNNMO, increasing its capacity at a high current. These results suggest that the interlayer ordering can be tuned through the control of composition, which has an equal or greater impact on Na+ diffusion than the Na+/vacancy ordering. Check out the work here . April 18, 2024 April 18, 2024 Publications Congrats to Ji Qi on the successful defense of his thesis! Congratulations to Ji Qi for successfully defending his PhD thesis on Apr 12 2024. During his time in the Materials Virtual Lab, Ji has made extremely valuable contributions in the development and application of machine learning interatomic potentials (MLPs). He has applied MLPs to solid electrolytes, pushing the envelope of their application to extremely complex chemistries (7 element oxides!!!). He also developed an innovative DIRECT sampling method that enables the fitting of MLPs with much fewer / zero active learning steps. We wish him all the best in his new job at CATL. Check out the recording of his PhD thesis defense below. March 6, 2024 Publications Healable Sulfur Cathode for Solid-State Li-S Batteries Manas’ final work on Healable and conductive sulfur iodide for solid-state Li–S batteries” is now out in Nature! This work is a collaboration between Prof Ping Liu’s group and our group. Solid-state Li–S batteries (SSLSBs) are made of low-cost and abundant materials free of supply chain concerns. In this work, we report an S9.3I molecular crystal, which shows a semiconductor-level electrical conductivity. Our group’s main contribution is showing that iodine disrupts the molecular bonding in sulfur to lower its melting point, as well as introduce new states into the band gap of sulfur. This lowered melting point enables periodical remelting of the cathode to repair interfaces. Check out this work here as well as the UCSD press release on this discovery . February 26, 2024 February 26, 2024 Publications DIRECT Sampling for Robust MLPs Ji’s work on Robust training of machine learning interatomic potentials with dimensionality reduction and stratified sampling” is now out in npj Computational Materials! Machine learning interatomic potentials (MLIPs) enable accurate simulations of materials at scales beyond that accessible by ab initio methods. In this work, we present DImensionality-Reduced Encoded Clusters with sTratified (DIRECT) sampling as an approach to select a robust training set of structures from a large and complex configuration space. By applying DIRECT sampling on the Materials Project relaxation trajectories dataset with over one million structures and 89 elements, we develop an improved materials 3-body graph network (M3GNet) universal potential that extrapolates more reliably to unseen structures. We further show that molecular dynamics (MD) simulations with the M3GNet universal potential can be used instead of expensive ab initio MD to rapidly create a large configuration space for target systems. We combined this scheme with DIRECT sampling to develop a reliable moment tensor potential for titanium hydrides without the need for iterative augmentation of training structures. Check out this work here . If you want to use DIRECT sampling for your work, please check out our implementation available on our MAML repository on Github . November 27, 2023 Presentations MRS Fall 2023 Tutorial on ML for SSBs Ji Qi gave a tutorial talk on Machine Learning and High-Throughput Discovery and Design of Next Generation Electrode and Superionic Materials and Their Interfaces for SSBs” at the MRS Fall 2023! This tutorial provides an overview of how our group is using ML techniques to gain insights and discovery alkali superionic conductors, as well as the many open-source software packages that we have developed for these purposes. A recording of this talk is available on our group’s YouTube channel (and embedded above). November 2, 2023 Publications Li diffusivity at the grain boundaries Randy’s work on Lithium dynamics at grain boundaries of β-Li3PS4 solid electrolyte” has just been published in Energy Advances! Randy was a visiting scientist in the Materials Virtual Lab from NIMS Japan in 2021-2023. Lithium diffusivity at the grain boundaries of solid electrolytes (SEs) can strongly impact the final performance of all-solid-state Li ion batteries (SSLBs). In this study, we systematically investigate the Li ion transport in tilt and twist GBs as well as amorphous/crystal interfaces of β-Li3PS4 by performing large-scale molecular dynamics (MD) simulations with a highly accurate moment tensor interatomic potential (MTP). We find that the Li ion conductivities at the GBs and amorphous/crystal interfaces are 1–2 orders of magnitude higher than that in the bulk crystal. The Li pathway network in twist GBs and amorphous/crystal interfaces comprises persisting large Li ring sub-networks that closely resemble those found in the bulk amorphous structure, whereas more smaller and short-lived Li ring sub-networks are detected in tilt GBs and the bulk crystal. The concentration of persisting large Li ring sub-networks in the GB and amorphous/crystal interfaces is directly proportional to the degree of Li site disordering which in turn correlates with GB conductivity. Our findings provide useful insights that can guide the optimization of conductivity not only in β-LPS but also in other sulfide-type solid electrolytes through possible GB engineering. Check out the work here . July 5, 2023 July 5, 2023 Presentations NUS Seminar Talk on Universal Machine Learning Models for Unconstrained Materials Design” Prof Ong gave an invited seminar talk at the National University of Singapore on Jul 5 2023. In this talk, Prof Ong discusses the different ways in which machine learning (ML) can be used to improve or accelerate the various steps of in silico materials design. The general goal is to preserve the universality and accuracy of ab initio approaches as far as possible while achieving orders of magnitude speed-ups and improved scaling. Prof Ong shared his view that graph deep learning models trained on large diverse materials datasets, such as the M3GNet universal potential, are the foundation” models for materials science. He further argues that the most robust approach is to replace the smallest, most expensive step in the materials design workflow with ML and preserve as much as the physics of thermodynamics, kinetics, etc. in the computation of materials properties. June 23, 2023 June 23, 2023 Publications Compositionally complex perovskite solid electrolytes The Materials Virtual Lab is proud to be part of a...

materialsvirtuallab.org Whois

Domain Name: materialsvirtuallab.org Registry Domain ID: 6762df40bdb0465b9c317e417457d3b0-LROR Registrar WHOIS Server: whois.namecheap.com Registrar URL: http://www.namecheap.com Updated Date: 2023-07-18T07:14:18Z Creation Date: 2013-08-12T05:33:00Z Registry Expiry Date: 2024-08-12T05:33:00Z Registrar: NameCheap, Inc. Registrar IANA ID: 1068 Registrar Abuse Contact Email: abuse@namecheap.com Registrar Abuse Contact Phone: +1.6613102107 Domain Status: clientTransferProhibited https://icann.org/epp#clientTransferProhibited Registrant State/Province: Capital Region Registrant Country: IS Name Server: ns1.inmotionhosting.com Name Server: ns2.inmotionhosting.com DNSSEC: unsigned >>> Last update of WHOIS database: 2024-05-17T20:14:13Z <<<