Dataconomy
  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Guides
    • Case Studies
    • Whitepapers
    • AI Models Leaderboard
  • AI toolsNEW
  • Newsletter
  • + More
    • Glossary
    • Conversations
    • Events
    • About
      • Who we are
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
Subscribe
No Result
View All Result
  • AI
  • Tech
  • Cybersecurity
  • Finance
  • DeFi & Blockchain
  • Startups
  • Gaming
Dataconomy
  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Guides
    • Case Studies
    • Whitepapers
    • AI Models Leaderboard
  • AI toolsNEW
  • Newsletter
  • + More
    • Glossary
    • Conversations
    • Events
    • About
      • Who we are
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
Subscribe
No Result
View All Result
Dataconomy
No Result
View All Result

Researchers used AI in quantum chemistry to image the unimaginable

Neural networks can now model excited molecular states, which are crucial for technologies like solar cells and photocatalysts

byEmre Çıtak
October 10, 2024
in Artificial Intelligence, Research
Home News Artificial Intelligence
Share on FacebookShare on TwitterShare on LinkedInShare on WhatsAppShare on e-mail
Google Preferred Source

AI in quantum chemistry has recently taken a massive leap, marking a milestone moment for both artificial intelligence and material science.

New research conducted by a collaboration between Imperial College London and Google DeepMind showcases how neural networks can effectively model excited molecular states.

The breakthrough not only holds promise for a deeper understanding of complex molecular systems but also paves the way for advancements in sustainable technology, such as solar cells and photocatalysts.

Stay Ahead of the Curve!

Don't miss out on the latest insights, trends, and analysis in the world of data, technology, and startups. Subscribe to our newsletter and get exclusive content delivered straight to your inbox.

Why use AI in quantum chemistry?

The study, published in the journal Science, addresses the challenge of modeling the quantum behavior of molecules in excited states. An excited state occurs when a molecule absorbs energy—often through light or heat—causing its electrons to enter a higher energy configuration.

Understanding these transitions is crucial for various technologies, including solar panels, light-emitting diodes (LEDs), and even natural processes like photosynthesis and human vision.

AI in quantum chemistry
The study provides a novel approach to understanding quantum behavior in molecules

Despite their significance, accurately modeling excited states has long been a daunting challenge in quantum chemistry. The root of this difficulty lies in the quantum nature of electrons, which cannot be precisely pinpointed. Instead, their locations must be described probabilistically.

Dr. David Pfau, the lead researcher from Google DeepMind and Imperial College London, explained that representing the state of a quantum system requires assigning probabilities to every potential configuration of electron positions.

He elaborated,

“If you tried to represent it as a grid with 100 points along each dimension, then the number of possible electron configurations for the silicon atom would be larger than the number of atoms in the universe.”

This complexity is where the application of AI in quantum chemistry shines, particularly through the use of deep neural networks.

FermiNet’s role

The neural network employed in this groundbreaking research is known as FermiNet, short for Fermionic Neural Network.

The innovative model was among the first deep-learning applications to compute the energy of atoms and molecules based on fundamental principles, achieving a level of accuracy that is practical for real-world use.

The researchers developed a new mathematical framework combined with this AI model, allowing them to tackle the fundamental equations that describe molecular states in a novel way.

The main achievement of this research was the team’s ability to model the carbon dimer, a small yet complex molecule, with remarkable precision. They achieved a mean absolute error (MAE) of just 4 millielectronvolts (meV), significantly improving upon previous methods that had a gold-standard error of 20 meV.

Carbon dimer features what’s known as strong electron correlation. In simple terms, the interactions between the electrons in the molecule are highly interdependent and difficult to capture using traditional computational methods. This is because the electrons in a small system like C₂ are tightly packed, leading to complicated quantum mechanical interactions that can’t easily be simplified.

This advancement means that predictions are now much closer to experimental results, enhancing the reliability of simulations involving excited states.

Moreover, the researchers expanded the capabilities of their neural network by testing it on computationally challenging scenarios where two electrons were excited simultaneously. The accuracy of their model was within approximately 0.1 electronvolts (eV) of the most complex calculations available today.

Imaging the unimaginable

The implications of this research extend far beyond academic curiosity. For industries focused on sustainable energy solutions and efficient lighting technologies, the ability to accurately predict molecular behaviors when excited by light can lead to significant advancements. Technologies like solar cells and photocatalysts, which rely heavily on understanding excited molecular states, can benefit immensely from this new approach.

AI in quantum chemistry
The usage of AI in quantum chemistry could entirely change material science, sustainable energy, and lighting technologies

By using AI to tackle one of the most complex problems in physical chemistry, the study sets the stage for more effective simulations in material science and beyond. Rather than solely depending on experimental methods, which are often time-consuming and costly, scientists now have access to a more accurate computational tool that brings theoretical models closer to real-world scenarios.

The integration of deep learning techniques into chemistry through AI in quantum chemistry could accelerate discoveries and technological advancements across a range of industries. As research in this area continues, the combination of neural networks and advanced mathematical frameworks could lead to new paradigms in understanding molecular interactions, ultimately benefitting society at large.


Image credits: Emre Çıtak/Ideogram AI

Tags: AIFeatured

Related Posts

Researchers create AI worm that adapts attacks without human input

Researchers create AI worm that adapts attacks without human input

June 4, 2026
Amazon adds AI-generated product previews to search results

Amazon adds AI-generated product previews to search results

June 4, 2026
Meta launches AI business agents on WhatsApp, Instagram and Messenger

Meta launches AI business agents on WhatsApp, Instagram and Messenger

June 4, 2026
Google rolls out Ask Gemini in Drive to eligible Workspace users

Google rolls out Ask Gemini in Drive to eligible Workspace users

June 4, 2026
Does your AI clock in without you?

Does your AI clock in without you?

June 3, 2026
Researchers unlock 20-fold enhancement in ultrafast laser experiments

Researchers unlock 20-fold enhancement in ultrafast laser experiments

June 3, 2026

LATEST NEWS

Amazon adds AI-generated product previews to search results

Meta launches AI business agents on WhatsApp, Instagram and Messenger

Nintendo will release a repair-friendly Switch 2 in Europe

Google rolls out Ask Gemini in Drive to eligible Workspace users

Google Wallet to add digital IDs from select EU countries this summer

Why Telegram Mini Apps have become the optimal ecosystem for launching AI SaaS products

BEST AI MODELS LEADERBOARD

See the best AI models, ranked by intelligence, benchmark results, speed and token price. Find the most suitable LLMs, Text-to-Image, Image Editing, Text-to-Speech, Text-to-Video and Image-to-Video  artificial intelligence model for your tasks and business.

LATEST TOOLS

Roboto AI

Pickaxe

Pfpmaker

MindPal

Syllaby

ScreenApp

FinanceBrain

GitHub Spark

Hints

VisionStory AI

Dataconomy

COPYRIGHT © DATACONOMY MEDIA GMBH, ALL RIGHTS RESERVED.

  • About
  • Imprint
  • Contact
  • Legal & Privacy

Follow Us

  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Guides
    • Case Studies
    • Whitepapers
    • AI Models Leaderboard
  • AI tools
  • Newsletter
  • + More
    • Glossary
    • Conversations
    • Events
    • About
      • Who we are
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
No Result
View All Result
Subscribe

This website uses cookies to improve your experience. You can choose to accept or reject them. Visit our Privacy Policy.