Saturday, April 1, 2023
SCIENMAG: Latest Science and Health News
No Result
View All Result
  • Login
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US
No Result
View All Result
Scienmag - Latest science news from science magazine
No Result
View All Result
Home SCIENCE NEWS Technology and Engineering

New AI model transforms understanding of metal-organic frameworks

March 13, 2023
in Technology and Engineering
0
Share on FacebookShare on Twitter

How does an iPhone predict the next word you’re going to type in your messages? The technology behind this, and also at the core of many AI applications, is called a transformer; a deep-learning algorithm that detects patterns in datasets.

A computer server transformed by MOFs

Credit: Kevin Jablonka (EPFL)

How does an iPhone predict the next word you’re going to type in your messages? The technology behind this, and also at the core of many AI applications, is called a transformer; a deep-learning algorithm that detects patterns in datasets.

Now, researchers at EPFL and KAIST have created a transformer for Metal-Organic Frameworks (MOFs), a class of porous crystalline materials. By combining organic linkers with metal nodes, chemists can synthesize millions of different materials with potential applications in energy storage and gas separation.

The “MOFtransformer” is designed to be the ChatGPT for researchers that study MOFs. It’s architecture is based on an AI called Google Brain that can process natural language and forms the core of popular language models such as GPT-3, the predecessor to ChatGPT. The central idea behind these models is that they are pre-trained on a large amount of text, so when we start typing on an iPhone, for example, models like this “know” and autocomplete the most likely next word.

“We wanted to explore this idea for MOFs, but instead of giving a word suggestion, we wanted to have it suggest a property,” says Professor Berend Smit, who led the EPFL side of the project. “We pre-trained the MOFTransformer with a million hypothetical MOFs to learn their essential characteristics, which we represented as a sentence. The model was then trained to complete these sentences to give the MOF’s correct characteristics.”

The researchers then fine-tuned the MOFTransformer for tasks related to hydrogen storage, such as the storage capacity of hydrogen, its diffusion coefficient, and the band gap of the MOF (an “energy barrier” that determines how easily electrons can move through a material).

The approach showed that the MOFTransformer could get results using far fewer data compared to conventional machine-learning methods, which require much more data. “Because of the pre-training, the MOFTtransformer knows already many of the general properties of MOFs; and because of this knowledge, we need less data to train for another property,” says Smit. Moreover, the same model could be used for all properties, while in conventional machine learning, a separate model must be developed for each application.

The MOFTransformer is a game-changer for the study of MOFs, providing faster results with less data and a more comprehensive understanding of the material. The researchers hope that the MOFTransformer will pave the way for the development of new MOFs with improved properties for hydrogen storage and other applications.

Reference

Yeonghun Kang, Hyunsoo Park, Berend Smit, Jihan Kim. MOFTransformer: A multi-modal pre-training transformer for universal transfer learning in metal-organic frameworks. Nature Machine Intelligence 13 March 2023. DOI: 10.1038/s42256-023-00628-2



DOI

10.1038/s42256-023-00628-2

Article Title

A multi-modal pre-training transformer for universal transfer learning in metal-organic frameworks.

Article Publication Date

13-Mar-2023

Tags: frameworksmetalorganicmodeltransformsUnderstanding
Share26Tweet16Share4ShareSendShare
  • Thrushes

    A final present from birds killed in window collisions: poop that reveals their microbiomes

    81 shares
    Share 32 Tweet 20
  • Why are forests turning brown in summer?

    66 shares
    Share 26 Tweet 17
  • Professor Yasmine Belkaid appointed Institut Pasteur President

    66 shares
    Share 26 Tweet 17
  • Conversion to Open Access using equitable new model sees upsurge in usage of expert scientific knowledge

    68 shares
    Share 27 Tweet 17
  • New, exhaustive study probes hidden history of horses in the American West

    65 shares
    Share 26 Tweet 16
  • Null results research now published by major behavioral medicine journal

    651 shares
    Share 260 Tweet 163
ADVERTISEMENT

About us

We bring you the latest science news from best research centers and universities around the world. Check our website.

Latest NEWS

A final present from birds killed in window collisions: poop that reveals their microbiomes

Null results research now published by major behavioral medicine journal

The “Stonehenge calendar” shown to be a modern construct

Subscribe to Blog via Email

Enter your email address to subscribe to this blog and receive notifications of new posts by email.

Join 205 other subscribers

© 2023 Scienmag- Science Magazine: Latest Science News.

No Result
View All Result
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US

© 2023 Scienmag- Science Magazine: Latest Science News.

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In