Google DeepMind RESEARCH

“Millions of new materials discovered with deep learning”


Authors  Amil Merchant and Ekin Dogus Cubuk
Published  29 NOVEMBER 2023

https://deepmind.google/discover/blog/millions-of-new-materials-discovered-with-deep-learning/


AI tool GNoME finds 2.2 million new crystals, including 380,000 stable 
materials that could power future technologies

Modern technologies from computer chips and batteries to solar panels rely on 
inorganic crystals.

To enable new technologies, crystals must be stable otherwise they can 
decompose, and behind each new, stable crystal can be months of painstaking 
experimentation.

Today, in a paper published in Nature, we share the discovery of 2.2 million 
new crystals – equivalent to nearly 800 years’ worth of knowledge. We introduce 
Graph Networks for Materials Exploration (GNoME), our new deep learning tool 
that dramatically increases the speed and efficiency of discovery by predicting 
the stability of new materials.

With GNoME, we’ve multiplied the number of technologically viable materials 
known to humanity. Of its 2.2 million predictions, 380,000 are the most stable, 
making them promising candidates for experimental synthesis.

Among these candidates are materials that have the potential to develop future 
transformative technologies ranging from superconductors, powering 
supercomputers, and next-generation batteries to boost the efficiency of 
electric vehicles.

GNoME shows the potential of using AI to discover and develop new materials at 
scale.

External researchers in labs around the world have independently created 736 of 
these new structures experimentally in concurrent work. In partnership with 
Google DeepMind, a team of researchers at the Lawrence Berkeley National 
Laboratory has also published a second paper in Nature that shows how our AI 
predictions can be leveraged for autonomous material synthesis.

We’ve made GNoME’s predictions available to the research community. We will be 
contributing 380,000 materials that we predict to be stable to the Materials 
Project, which is now processing the compounds and adding them into its online 
database.

We hope these resources will drive forward research into inorganic crystals, 
and unlock the promise of machine learning tools as guides for experimentation

Accelerating materials discovery with AI

About 20,000 of the crystals experimentally identified in the ICSD database are 
computationally stable.

Computational approaches drawing from the Materials Project, Open Quantum 
Materials Database and WBM database boosted this number to 48,000 stable 
crystals. GNoME expands the number of stable materials known to humanity to 
421,000.

In the past, scientists searched for novel crystal structures by tweaking known 
crystals or experimenting with new combinations of elements - an expensive, 
trial-and-error process that could take months to deliver even limited results. 
Over the last decade, computational approaches led by the Materials Project and 
other groups have helped discover 28,000 new materials. But up until now, new 
AI-guided approaches hit a fundamental limit in their ability to accurately 
predict materials that could be experimentally viable. GNoME’s discovery of 2.2 
million materials would be equivalent to about 800 years’ worth of knowledge 
and demonstrates an unprecedented scale and level of accuracy in predictions.

For example, 52,000 new layered compounds similar to graphene that have the 
potential to revolutionize electronics with the development of superconductors. 
Previously, about 1,000 such materials had been identified. We also found 528 
potential lithium ion conductors, 25 times more than a previous study, which 
could be used to improve the performance of rechargeable batteries.

We are releasing the predicted structures for 380,000 materials that have the 
highest chance of successfully being made in the lab and being used in viable 
applications. For a material to be considered stable, it must not decompose 
into similar compositions with lower energy. For example, carbon in a 
graphene-like structure is stable compared to carbon in diamonds. 
Mathematically, these materials lie on the convex hull. This project discovered 
2.2 million new crystals that are stable by current scientific standards and 
lie below the convex hull of previous discoveries. Of these, 380,000 are 
considered the most stable, and lie on the “final” convex hull – the new 
standard we have set for materials stability.

GNoME: Harnessing graph networks for materials exploration

GNoME uses two pipelines to discover low-energy (stable) materials. The 
structural pipeline creates candidates with structures similar to known 
crystals, while the compositional pipeline follows a more randomized approach 
based on chemical formulas. The outputs of both pipelines are evaluated using 
established Density Functional Theory calculations and those results are added 
to the GNoME database, informing the next round of active learning.

GNoME is a state-of-the-art graph neural network (GNN) model. The input data 
for GNNs take the form of a graph that can be likened to connections between 
atoms, which makes GNNs particularly suited to discovering new crystalline 
materials.

GNoME was originally trained with data on crystal structures and their 
stability, openly available through the Materials Project. We used GNoME to 
generate novel candidate crystals, and also to predict their stability. To 
assess our model’s predictive power during progressive training cycles, we 
repeatedly checked its performance using established computational techniques 
known as Density Functional Theory (DFT), used in physics, chemistry and 
materials science to understand structures of atoms, which is important to 
assess the stability of crystals.

We used a training process called ‘active learning’ that dramatically boosted 
GNoME’s performance. GNoME would generate predictions for the structures of 
novel, stable crystals, which were then tested using DFT. The resulting 
high-quality training data was then fed back into our model training.

Our research boosted the discovery rate of materials stability prediction from 
around 50%, to 80% - based on an external benchmark set by previous 
state-of-the-art models. We also managed to scale up the efficiency of our 
model by improving the discovery rate from under 10% to over 80% - such 
efficiency increases could have significant impact on how much compute is 
required per discovery.

AI ‘recipes’ for new materials

The GNoME project aims to drive down the cost of discovering new materials. 
External researchers have independently created 736 of GNoME’s new materials in 
the lab, demonstrating that our model’s predictions of stable crystals 
accurately reflect reality. We’ve released our database of newly discovered 
crystals to the research community. By giving scientists the full catalog of 
the promising ‘recipes’ for new candidate materials, we hope this helps them to 
test and potentially make the best ones.


Upon completion of our latest discovery efforts, we searched the scientific 
literature and found 736 of our computational discoveries were independently 
realized by external teams across the globe. Above are six examples ranging 
from a first-of-its-kind Alkaline-Earth Diamond-Like optical material 
(Li4MgGe2S7) to a potential superconductor (Mo5GeB2).

Rapidly developing new technologies based on these crystals will depend on the 
ability to manufacture them. In a paper led by our collaborators at Berkeley 
Lab, researchers showed a robotic lab could rapidly make new materials with 
automated synthesis techniques. Using materials from the Materials Project and 
insights on stability from GNoME, the autonomous lab created new recipes for 
crystal structures and successfully synthesized more than 41 new materials, 
opening up new possibilities for AI-driven materials synthesis.

New materials for new technologies

To build a more sustainable future, we need new materials. GNoME has discovered 
380,000 stable crystals that hold the potential to develop greener technologies 
– from better batteries for electric cars, to superconductors for more 
efficient computing.

Our research – and that of collaborators at the Berkeley Lab, Google Research, 
and teams around the world — shows the potential to use AI to guide materials 
discovery, experimentation, and synthesis.

We hope that GNoME together with other AI tools can help revolutionize 
materials discovery today and shape the future of the field.

Read our paper in Nature  https://www.nature.com/articles/s41586-023-06735-9

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