Breaking 17:20 Musician G. Love loses $420,000 in Bitcoin to fake wallet on Mac App Store 17:00 Oil shock widens inflation gap between emerging and developed markets 16:20 OpenAI memo claims Microsoft limited reach as Amazon demand surges 16:00 Leaked screenshots show Anthropic building app creator inside Claude 15:40 China's Q1 GDP growth forecast to rebound to 4.8% despite Iran war risks 15:00 Revolution Medicines drug nearly doubles survival in pancreatic cancer trial 14:20 Google CEO Pichai urges US to lead in AI development 13:50 AI system maps ocean currents hourly using existing weather satellites 12:20 Spring-summer 2026 fashion weeks reveal vibrant color palette 11:42 RAVE token surges 2,000 percent as analysts flag market manipulation 11:20 Bitcoin short squeeze risk rises as open interest nears $25 billion 11:00 US naval blockade of Iranian ports takes effect after failed talks 10:40 Gold falls as Trump Hormuz blockade lifts oil and dollar 10:30 Japan calls for swift US–Iran agreement amid rising regional tensions 10:20 Rockstar confirms data breach as hackers set ransom deadline 10:02 Artemis II crew reflects on iconic ‘Earthset’ photo after return 09:20 Hormuz crisis boosts China clean energy exports as oil flows disrupted 09:00 Apple pulls high RAM Mac mini and Mac Studio amid chip shortage 08:44 Rare comet unseen for 170,000 years now visible to naked eye 08:20 Harvard AI decoder cuts quantum computing errors by up to 17 times 08:00 Oil prices surge while gold falls after announcement of Iranian port blockade 07:50 Chinese crystal sets record in race to build nuclear clocks 07:45 United States and Australia double investment in critical minerals projects

MIT AI model suggests recipes for novel materials

Monday 02 February 2026 - 14:50
By: Dakir Madiha
MIT AI model suggests recipes for novel materials

Researchers at the Massachusetts Institute of Technology have unveiled DiffSyn, an AI model that proposes promising synthesis pathways for complex materials, tackling one of the most time-intensive bottlenecks in materials science. Detailed in a study published today in Nature Computational Science, the tool achieved top accuracy in predicting creation routes for zeolites, materials key to catalysis, adsorption, and ion exchange processes.

"For an analogy, we know what kind of cake we want to bake, but right now we don't know how to do it," said lead author Elton Pan, a PhD candidate in MIT's Department of Materials Science and Engineering. "Material synthesis today relies on domain expertise and trial-and-error."

While companies like Google and Meta have leveraged generative AI to generate vast databases of theoretical materials with desirable properties, turning those into reality often demands weeks or months of painstaking lab work. DiffSyn speeds this up by drawing on over 23,000 synthesis recipes from 50 years of scientific literature.

The model employs a diffusion-based approach akin to DALL-E's image generation. Scientists input a target material structure, and DiffSyn outputs viable combinations of reaction temperatures, durations, precursor ratios, and other parameters. It can generate 1,000 synthesis pathways in under a minute, far outpacing traditional case-by-case methods.

To validate it, the team synthesized a new zeolite-type material using DiffSyn's suggestions. Tests showed enhanced thermal stability and promising morphology for catalytic applications.

Unlike prior machine learning models that linked materials to single recipes, DiffSyn accounts for multiple viable paths to the same structure. "This is a paradigm shift from one-to-one structure-synthesis matching to one-to-many," Pan explained. "That's a key reason for our strong benchmark gains."

The work received support from MIT International Science and Technology Initiatives, the National Science Foundation, ExxonMobil, and Singapore's Agency for Science, Technology and Research.

Looking ahead, the team sees potential expansion beyond zeolites to metal-organic frameworks and inorganic solids. "Ultimately, we'd connect these smart systems to real-world autonomous experiments, using agentic reasoning on experimental feedback to dramatically accelerate materials design," Pan said.


  • Fajr
  • Sunrise
  • Dhuhr
  • Asr
  • Maghrib
  • Isha

Read more

This website, walaw.press, uses cookies to provide you with a good browsing experience and to continuously improve our services. By continuing to browse this site, you agree to the use of these cookies.