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Google DeepMind’s AI Tool Helped Create Over 700 New Materials

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Newly discovered materials can be used to make better solar cells, batteries, computer chips, and more.

New materials can supercharge technological breakthroughs, from EV batteries to solar cells to microchips. But discovering them usually takes months or even years of trial-and-error research. 

Google DeepMind hopes to change that with a new tool that uses deep learning to dramatically speed up discovering new materials. Called graphical networks for material exploration (GNoME), the technology has already been used to predict structures for 2.2 million new materials, of which more than 700 have gone on to be created in the lab and are now being tested. It is described in a paper published in Nature Today. 

Alongside GNoME, Lawrence Berkeley National Laboratory also announced a new autonomous lab. The lab takes data from the materials database that includes some of GNoME’s discoveries and uses machine learning and robotic arms to engineer new materials without the help of humans. Google DeepMind says that these advancements show the potential of using AI to scale up the discovery and development of new materials.

GNoME can be described as AlphaFold for materials discovery, according to Ju Li, a materials science and engineering professor at the Massachusetts Institute of Technology. AlphaFold, a DeepMind AI system announced in 2020, predicts the structures of proteins with high accuracy and has since advanced biological research and drug discovery. Thanks to GNoME, the number of known stable materials has grown almost tenfold to 421,000.

“While materials play a critical role in almost any technology, we as humanity know only a few tens of thousands of stable materials,” said Dogus Cubuk, Materials Discovery Lead at Google DeepMind, at a press briefing. 

To discover new materials, scientists combine elements across the periodic table. However, because there are so many combinations, it’s inefficient to do this process blindly. Instead, researchers build upon existing structures, making small tweaks to discover new combinations that hold potential. However, this painstaking process is still very time-consuming. Also, because it builds on existing structures, it limits the potential for unexpected discoveries. 

To overcome these limitations, DeepMind combines two different deep-learning models. The first generates more than a billion structures by modifying elements in existing materials. The second, however, ignores existing structures and predicts the stability of new materials purely based on chemical formulas. Combining these two models allows for a much broader range of possibilities. 

Once the candidate structures are generated, they are filtered through DeepMind’s GNoME models. The models predict the decomposition energy of a given structure, which is an important indicator of how stable the material can be. “Stable” materials do not easily decompose, which is important for engineering purposes. GNoME selects the most promising candidates, which go through further evaluation based on known theoretical frameworks.

This process is repeated multiple times, with each discovery incorporated into the next round of training.

In its first round, GNoME predicted different materials’ stability with a precision of around 5%, but it increased quickly throughout the iterative learning process. The final results showed GNoME managed to predict the stability of structures over 80% of the time for the first model and 33% for the second. 

Using AI models to develop new materials is a recent idea. The Materials Project, a program led by Kristin Persson at Berkeley Lab, has used similar techniques to discover and improve the stability of 48,000 materials. 

However, GNoME’s size and precision set it apart from previous efforts. It was trained on at least an order of magnitude more data than any previous model, says Chris Bartel, an assistant professor of chemical engineering and materials science at the University of Minnesota. 

Doing similar calculations has previously been expensive and limited in scale, says Yifei Mo, an associate professor of materials science and engineering at the University of Maryland. GNoME allows these computations to scale up with higher accuracy and at much less computational cost, Mo says: “The impact can be huge.”

Once new materials have been identified, synthesizing them and proving their usefulness is equally important. Berkeley Lab’s new autonomous laboratory, named the A-Lab, has been using some of GNoME’s discoveries with the Materials Project information, integrating robotics with machine learning to optimize the development of such materials.

The lab can make its own decisions about making a proposed material and creates up to five initial formulations. These formulations are generated by a machine-learning model trained on existing scientific literature. After each experiment, the lab uses the results to adjust the recipes.

Researchers at Berkeley Lab say that A-Lab performed 355 experiments over 17 days and successfully synthesized 41 out of 58 proposed compounds. This works out to two successful syntheses a day.

In a typical human-led lab, it takes much longer to make materials. “If you’re unlucky, it can take months or even years,” said Persson at a press briefing. Most students give up after a few weeks, she said. “But the A-Lab doesn’t mind failing. It keeps trying and trying.”

DeepMind and Berkeley Lab researchers say these new AI tools can help accelerate hardware innovation in energy, computing, and many other sectors.

“Hardware, especially when it comes to clean energy, needs innovation if we are going to solve the climate crisis,” says Persson. “This is one aspect of accelerating that innovation.”

Bartel, who was not involved in the research, says that these materials will be promising candidates for technologies spanning batteries, computer chips, ceramics, and electronics. 

Lithium-ion battery conductors are one of the most promising use cases. Conductors play an important role in batteries by facilitating the flow of electric current between various components. DeepMind says GNoME identified 528 promising lithium-ion conductors, among other discoveries, some of which may help make batteries more efficient. 

However, even after discovering new materials, industries usually take decades to take them to the commercial stage. “If we can reduce this to five years, that will be a big improvement,” says Cubuk.

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