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Bipartisan bill to codify AI research resource at NSF gets reboot in House

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A bipartisan bill to fully establish a National Science Foundation-based resource aimed at providing essential tools for AI research to academics, nonprofits, small businesses and others was reintroduced in the House last week.

Under the Creating Resources for Every American To Experiment with Artificial Intelligence (CREATE AI) Act of 2025 (H.R. 2385), a full-scale National AI Research Resource would be codified at NSF. While that resource currently exists in pilot form, legislation authorizing the NAIRR is needed to continue that work.

“By empowering students, universities, startups, and small businesses to participate in the future of AI, we can drive innovation, strengthen our workforce, and ensure that American leadership in this critical field is broad-based and secure,” Rep. Jay Obernolte, R-Calif., who sponsors the bill, said in a written statement announcing the reintroduction.

The NAIRR pilot, as it stands, is a collection of resources from the public and private sectors — such as computing power, storage, AI models, and data — that are made available to those researching AI to make the process of accessing those types of tools easier. Often, it’s referred to as a way of “democratizing” access to those resources.

A pilot version of that resource was first recommended in 2023 by a task force studying a potential future NAIRR, and was eventually launched under former President Joe Biden’s AI executive order. Despite President Donald Trump’s rescission of that order in January, an NSF spokesman confirmed to FedScoop that the NAIRR pilot is still in effect. 

Per the NAIRR pilot website, the program has supported more than 340 research projects over 40 states and Washington D.C. Organizations contributing resources include 14 government agencies and 26 non-governmental partners, such as Meta, Google, OpenAI and NVIDIA. 

Rep. Don Beyer, D-Va., who co-sponsors the legislation, called the NAIRR an “excellent resource” and highlighted its benefits for researchers, educators and small businesses, in addition to students who might use the resource to learn how to use AI. Beyer himself has pursued a master’s degree focused on AI while serving in the House.

“This access to high-quality data, compute resources, and support would drive the innovation necessary to strengthen our global competitiveness in trustworthy AI development and in turn help accelerate solutions to the world’s most pressing challenges,” Beyer said.

Although the bill gained some traction last Congress, advancing out of committees in the House and Senate, it ultimately didn’t get attention on the floor of either chamber. This Congress, Obernolte has said he’s “cautiously optimistic” about the legislation. 

A Senate version hasn’t been reintroduced yet. The co-sponsors last Congress were Sens. Martin Heinrich, D-N.M., Todd Young, R-Ind., Cory Booker, D-N.J., and Mike Rounds, R-S.D. A spokesperson for Young said they are working “on continuous changes to the bill this Congress” and didn’t have an update on a timeline.

Supporters of the bill include the Information Technology Industry Council, Americans for Responsible Innovation, the Business Software Alliance, and the Software & Information Industry Association.

NSF Director Sethuraman Panchanathan has in the past emphasized the need for a full-scale NAIRR to keep the work going. 

In an interview last May with FedScoop, Panchanathan said the agency was working to expand and extend its existing partnerships but needed more funding to maintain its efforts. At that time, he estimated the NAIRR would be able to operate the pilot projects for a “a year, maybe more.”

Investment by the federal government is what will help the project scale, Panchanathan said, “which is needed and will just speed up the progress.”


Written by Madison Alder

Madison Alder is a reporter for FedScoop in Washington, D.C., covering government technology. Her reporting has included tracking government uses of artificial intelligence and monitoring changes in federal contracting. She’s broadly interested in issues involving health, law, and data. Before joining FedScoop, Madison was a reporter at Bloomberg Law where she covered several beats, including the federal judiciary, health policy, and employee benefits. A west-coaster at heart, Madison is originally from Seattle and is a graduate of the Walter Cronkite School of Journalism and Mass Communication at Arizona State University.



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On-demand webinar: Artificial intelligence – Next gen tech, next gen risks? : Clyde & Co

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Artificial intelligence is an umbrella term for technologies that simulate human intelligence. It is one of the greatest sources of systemic risk that insurers now face. It acts as a multiplier of existing exposures and a source of new liabilities, with the potential to cause catastrophic mass loss events.

In this webinar, we delve into the systemic risks of artificial intelligence, including privacy, security, and legal challenges that insurers must navigate.

Our speakers were joined by Dr. Matthew Bonner, Senior Fire Engineer and Research Lead at Trigon Fire Safety, and Rishi Baviskar, Cyber Risk Consultant at Allianz, for a discussion on the systemic risks of artificial intelligence – including privacy, security, and legal challenges that insurers must navigate.

Key topics include:

  • Privacy violations
  • Security threats, weaponisation and adversarial manipulation
  • The threat of ‘uncontrollable AI’
  • Sentient AI and the concept of legal personality
  • And more!

Watch the recording



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Scientists create biological ‘artificial intelligence’ system

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Credit: Pixabay/CC0 Public Domain

Australian scientists have successfully developed a research system that uses ‘biological artificial intelligence’ to design and evolve molecules with new or improved functions directly in mammal cells. The researchers said this system provides a powerful new tool that will help scientists develop more specific and effective research tools or gene therapies.

Named PROTEUS (PROTein Evolution Using Selection) the system harnesses ‘directed evolution’, a lab technique that mimics the natural power of evolution. However, rather than taking years or decades, this method accelerates cycles of evolution and natural selection, allowing them to create molecules with new functions in weeks.

This could have a direct impact on finding new, more effective medicines. For example, this system can be applied to improve gene editing technology like CRISPR to improve its effectiveness.

“This means PROTEUS can be used to generate new molecules that are highly tuned to function in our bodies, and we can use it to make new medicine that would be otherwise difficult or impossible to make with current technologies.” says co-senior author Professor Greg Neely, Head of the Dr. John and Anne Chong Lab for Functional Genomics at the University of Sydney.

“What is new about our work is that directed evolution primarily work in , whereas PROTEUS can evolve molecules in .”

PROTEUS can be given a problem with uncertain solution like when a user feeds in prompts for an artificial intelligence platform. For example the problem can be how to efficiently turn off a human disease gene inside our body.

PROTEUS then uses directed evolution to explore millions of possible sequences that have yet to exist naturally and finds molecules with properties that are highly adapted to solve the problem. This means PROTEUS can help find a solution that would normally take a human researcher years to solve if at all.

The researchers reported they used PROTEUS to develop improved versions of proteins that can be more easily regulated by drugs, and nanobodies (mini versions of antibodies) that can detect DNA damage, an important process that drives cancer. However, they said PROTEUS isn’t limited to this and can be used to enhance the function of most proteins and molecules.

The findings were reported in Nature Communications, with the research performed at the Charles Perkins Centre, the University of Sydney with collaborators from the Centenary Institute.

Unlocking molecular machine learning

The original development of directed evolution, performed first in bacteria, was recognized by the 2018 Noble Prize in Chemistry.

“The invention of directed evolution changed the trajectory of biochemistry. Now, with PROTEUS, we can program a mammalian cell with a genetic problem we aren’t sure how to solve. Letting our system run continuously means we can check in regularly to understand just how the system is solving our genetic challenge,” said lead researcher Dr. Christopher Denes from the Charles Perkins Centre and School of Life and Environmental Sciences

The biggest challenge Dr. Denes and the team faced was how to make sure the mammalian cell could withstand the multiple cycles of and mutations and remain stable, without the system “cheating” and coming up with a trivial solution that doesn’t answer the intended question.

They found the key was using chimeric virus-like particles, a design consisting of taking the outside shell of one virus and combining it with the genes of another virus, which blocked the system from cheating.

The design used parts of two significantly different virus families creating the best of both worlds. The resulting system allowed the cells to process many different possible solutions in parallel, with improved solutions winning and becoming more dominant while incorrect solutions instead disappear.

“PROTEUS is stable, robust and has been validated by independent labs. We welcome other labs to adopt this technique. By applying PROTEUS, we hope to empower the development of a new generation of enzymes, molecular tools and therapeutics,” Dr. Denes said.

“We made this system open source for the , and we are excited to see what people use it for, our goals will be to enhance gene-editing technologies, or to fine tune mRNA medicines for more potent and specific effects,” Professor Neely said.

More information:
Alexander J. Cole et al, A chimeric viral platform for directed evolution in mammalian cells, Nature Communications (2025). DOI: 10.1038/s41467-025-59438-2

Citation:
Scientists create biological ‘artificial intelligence’ system (2025, July 8)
retrieved 8 July 2025
from https://medicalxpress.com/news/2025-07-scientists-biological-artificial-intelligence.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
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CWRU joins national AI labor study backed by $1.6M grant

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Research aims to guide decision-makers on real-world effects of artificial intelligence on American workers

Case Western Reserve University economics professor Mark Schweitzer has joined a new, multi-university research collaboration examining the impact of artificial intelligence (AI) on workers and the labor market—an urgent area of inquiry as AI adoption accelerates across industries.

Mark Schweitzer

The $1.6 million project is supported by the Alfred P. Sloan Foundation and led by Carnegie Mellon University’s Block Center for Technology and Society and MIT’s FutureTech. Researchers from eight academic institutions—including the University of Pittsburgh, Northeastern University, the University of Virginia and the California Policy Lab—are contributing their expertise, along with collaborators from the U.S. Chamber of Commerce Foundation.

“This is an important opportunity to bring rigorous, data-driven insights to some of the most pressing economic questions of our time,” said Schweitzer, whose research at Case Western Reserve and the Federal Reserve Bank of Cleveland focuses on labor markets and regional economics. “By pooling knowledge across institutions, we can better understand where AI is helping workers—and where it’s leaving them behind.”

During the next two years, the team will work to improve labor-market data and produce both academic research and policy-relevant reports, he said. The goal is to support research-driven decision-making by employers, labor organizations and government.

More information on the Block Center’s AI and Work initiative.


For more information, contact Colin McEwen at colin.mcewen@case.edu.



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