RSS feed source: National Science Foundation

U.S. National Science Foundation

Directorate for Mathematical and Physical Sciences
     Division of Mathematical Sciences

Directorate for Biological Sciences
     Division of Biological Infrastructure
     Division of Environmental Biology
     Division of Integrative Organismal Systems
     Division of Molecular and Cellular Biosciences

Full Proposal Deadline(s) (due by 5 p.m. submitting organization’s local time):

March 03, 2025

March 1, Annually Thereafter

Important Information And Revision Notes

The Division of Biological Infrastructure (DBI) in the Directorate for Biological Sciences (BIO) will participate in this updated solicitation.

Any proposal submitted in response to this solicitation should be submitted in accordance with the NSF Proposal & Award Policies & Procedures Guide (PAPPG) that is in effect for the relevant due date to which the proposal is being submitted. The NSF PAPPG is regularly revised and it is the responsibility of the proposer to ensure that the proposal meets the requirements specified in this solicitation and the

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Tech companies have been funneling billions of dollars into quantum computers for years. The hope is that they’ll be a game changer for fields as diverse as finance, drug discovery, and logistics.

Those expectations have been especially high in physics and chemistry, where the weird effects of quantum mechanics come into play. In theory, this is where quantum computers could have a huge advantage over conventional machines.

But while the field struggles with the realities of tricky quantum hardware, another challenger is making headway in some of these most promising use cases. AI is now being applied to fundamental physics, chemistry, and materials science in a way that suggests quantum computing’s purported home turf might not be so safe after all.

The scale and complexity of quantum systems that can be simulated using AI is advancing rapidly, says Giuseppe Carleo, a professor of computational

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On October 28, 2024, NIST Leader Dr. David Wollman, Deputy Division Chief of NIST’s Smart Connected Systems Division, participated in an invited panel session at the Imagine Nation Executive Leadership Conference (ELC) 2024 in Hershey, Pennsylvania

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It turns out that you don’t need to be a scientist to encode data in DNA. Researchers have been working on DNA-based data storage for decades, but a new template-based method inspired by our cells’ chemical processes is easy enough for even nonscientists to practice. The technique could pave the way for an unusual but ultra-stable way to store information. 

The idea of storing data in DNA was first proposed in the 1950s by the physicist Richard Feynman. Genetic material has exceptional storage density and durability; a single gram of DNA can store a trillion gigabytes of data and retain the information for thousands of years. Decades later, a team led by George Church at Harvard University put the idea into practice, encoding a 53,400-word book.

This early approach relied on DNA synthesis—stringing genetic sequences together piece by piece, like beads on a

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