Can large language models figure out the real world?
New test could help determine if AI systems that make accurate predictions in one area can understand it well enough to apply that ability to a different area.
New test could help determine if AI systems that make accurate predictions in one area can understand it well enough to apply that ability to a different area.
Solubility predictions could make it easier to design and synthesize new drugs, while minimizing the use of more hazardous solvents.
Read MoreA new approach can reveal the features AI models use to predict proteins that might make good drug or vaccine targets.
Read MoreMIT engineers used a machine-learning model to design nanoparticles that can deliver RNA to cells more efficiently.
Read MoreThe team used two different AI approaches to design novel antibiotics, including one that showed promise against MRSA.
Read MoreAs large language models increasingly dominate our everyday lives, new systems for checking their reliability are more important than ever.
Read MoreThe Initiative for New Manufacturing is convening experts across the Institute to drive a transformation of production across the U.S. and the world.
Read MoreNew research shows automatically controlling vehicle speeds to mitigate traffic at intersections can cut carbon emissions between 11 and 22 percent.
Read MoreFour new professors join the Department of Architecture and MIT Media Lab.
Read MoreStorage systems from Cloudian, co-founded by an MIT alumnus, are helping businesses feed data-hungry AI models and agents at scale.
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