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NSF invests $100M in AI research institutes

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The U.S. National Science Foundation (NSF) announced a $100 million investment, made jointly with Capital One and Intel, to fund five National Artificial Intelligence Research Institutes and a community hub.

The goal of the pact is to enable the institutes to pursue fundamental AI research, aiming to translate discoveries into practical applications. The program also supports national AI workforce development through outreach to high schools, universities and industry, according to the announcement.

AI-MI at Cornell

The AI‑Materials Institute (AI‑MI), led by Cornell University, will use AI to accelerate discovery of materials for energy, sustainability and quantum technologies. The institute plans a cloud‑based portal called the AI Materials Science Ecosystem that integrates large‑language models with experimental data, simulations, images and scientific literature. Building on the popular arXiv research paper repository that Cornell hosts, AIMS-EC will facilitate work on several fronts, including discovering two-dimensional moiré structures with properties suitable for robust quantum bits, designing new superconductors and developing molecules for removal of microplastics from the environment. The institute will also train students at all levels through partnerships with schools, universities and industry. NSF’s news release says that AI‑MI will “create the AI Materials Science Ecosystem, a cloud‑based portal that integrates large language models with experimental data, simulations, images and scientific literature.”

The Institute for Foundations of Machine Learning (IFML)

The Institute for Foundations of Machine Learning (IFML), led by University of Texas at Austin, builds on work begun in 2020 to develop new foundational tools for generative AI, including diffusion models that power generative‑AI tools like Stable Diffusion 3 and Flux. In its next phase the institute will expand generative‑AI research into domains such as protein engineering and clinical imaging and develop methods for handling noisy data and improving model reliability, particularly for health applications. The institute comprises researchers from a string of other research centers. The NSF notes that IFML’s work on diffusion models underpins widely used generative models and that the new award will develop tools to “expand generative AI to new domains … including protein engineering and clinical imaging” and “develop new methods to handle noisy data and improve model reliability”. IFML members were instrumental in developing coursework for a new Master of Science in Artificial Intelligence (MSAI) degree program at UT Austin, addressing the demand for a highly skilled AI workforce.

The Institute for Student AI‑Teaming (iSAT)

The Institute for Student AI‑Teaming (iSAT), led by University of Colorado Boulder, develops AI partners that help student groups learn together by facilitating discussion, exploration and reasoning. More than 6,000 middle‑school students and educators have used iSAT’s tools. The center’s researchers have developed two AI “partners,” CoBi (Community Builder) and the Jigsaw Interactive Agent (JIA), which they’ve tested in real-world classrooms. The next phase will develop a semester‑long curriculum and expand AI literacy. NSF’s summary describes iSAT’s AI partners that facilitate group learning and notes that over 6,000 middle‑school students and educators have participated. It adds that the institute will “co‑develop a semester‑long curriculum” to build AI literacy. The institute brings together researchers from nine universities spanning 15 research areas, working with school district partners.

The Molecule Maker Lab Institute (MMLI)

The Molecule Maker Lab Institute (MMLI), led by University of Illinois Urbana‑Champaign, uses AI and machine learning to speed up discovery and creation of molecules for medicine, materials and clean energy. In its first five years, the institute has resulted in 166 journal and conference papers, 11 patent disclosures. That includes six that have been licensed and two start-up companies. Accomplishments include the creation of AlphaSynthesis, an AI-enabled platform that helps researchers plan and execute chemical synthesis. In its next phase the institute will develop advanced AI tools, including new language models and intelligent agents, that can reason, predict and help design useful molecules such as drugs, catalysts and new materials. The institute brings together a team of chemists, engineers, and AI experts from the University of Illinois Urbana-Champaign, Pennsylvania State University and the Rochester Institute of Technology.

The AI Institutes Virtual Organization (AIVO)

The AI Institutes Virtual Organization (AIVO), led by University of California Davis, serves as a national hub that connects federally funded AI institutes, government stakeholders and the public. Building on a pilot launched in 2022, AIVO coordinates events, networking tools and collaboration support to create a cohesive innovation ecosystem and serves as a nexus for the 29 AI Institutes, organizing annual summits for AI institutes’ leadership. AIVO will amplify the work of the institutes and promote public engagement. NSF states that AIVO will expand on a 2022 pilot to connect AI institutes and government stakeholders, foster communication through events and networking tools, help form public‑private partnerships and raise awareness of how AI can address real‑world challenges.

The AI Research Institute on Interaction for AI Assistants (ARIA)

The AI Research Institute on Interaction for AI Assistants (ARIA), led by Brown University, focuses on accelerating the development of next‑generation AI assistants that are safer, more effective and adaptable to individual user needs. The institute’s work will focus on the potential for use in mental and behavioral health, where trust and safety are of the utmost importance, combining research on human and machine cognition to create AI systems that can interpret a person’s unique behavioral needs and provide helpful feedback in real time. The NSF announcement summarizes ARIA’s mission as developing “next‑generation AI assistants that are safer, more effective, and better able to adapt to individual user needs”.

Context within U.S. policy

The investment aligns with the White House AI Action Plan and Executive Order 14277 (see America’s AI Action Plan for more) on advancing AI education. According to the NSF, the AI institutes are intended to “translate cutting‑edge research into scalable, practical solutions that improve lives” and to build a national infrastructure for AI education and workforce development; the program will train researchers, empower educators and reach into communities.

Internationally, Europe, Israel, the UAE and other countries are launching national AI institutes, supercomputers and safety programs, signaling a global race to develop AI capabilities and governance frameworks. At the same time, the U.S. Department of Defense’s contracts with Microsoft, OpenAI, Anthropic, Google and xAI illustrate how commercial AI leaders are becoming essential defense suppliers, challenging incumbents such as Palantir.



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Now Artificial Intelligence (AI) for smarter prison surveillance in West Bengal – The CSR Journal

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Now Artificial Intelligence (AI) for smarter prison surveillance in West Bengal  The CSR Journal



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OpenAI business to burn $115 billion through 2029 The Information

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OpenAI CEO Sam Altman walks on the day of a meeting of the White House Task Force on Artificial Intelligence (AI) Education in the East Room at the White House in Washington, D.C., U.S., September 4, 2025.

Brian Snyder | Reuters

OpenAI has sharply raised its projected cash burn through 2029 to $115 billion as it ramps up spending to power the artificial intelligence behind its popular ChatGPT chatbot, The Information reported on Friday.

The new forecast is $80 billion higher than the company previously expected, the news outlet said, without citing a source for the report.

OpenAI, which has become one of the world’s biggest renters of cloud servers, projects it will burn more than $8 billion this year, some $1.5 billion higher than its projection from earlier this year, the report said.

The company did not immediately respond to Reuters request for comment.

To control its soaring costs, OpenAI will seek to develop its own data center server chips and facilities to power its technology, The Information said.

OpenAI is set to produce its first artificial intelligence chip next year in partnership with U.S. semiconductor giant Broadcom, the Financial Times reported on Thursday, saying OpenAI plans to use the chip internally rather than make it available to customers.

The company deepened its tie-up with Oracle in July with a planned 4.5-gigawatts of data center capacity, building on its Stargate initiative, a project of up to $500 billion and 10 gigawatts that includes Japanese technology investor SoftBank. OpenAI has also added Alphabet’s Google Cloud among its suppliers for computing capacity.

The company’s cash burn will more than double to over $17 billion next year, $10 billion higher than OpenAI’s earlier projection, with a burn of $35 billion in 2027 and $45 billion in 2028, The Information said.

Read the complete report by The Information here.



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The Energy Monster AI Is Creating

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We don’t really know how much energy artificial intelligence is consuming. There aren’t any laws currently on the books requiring AI companies to disclose their energy usage or environmental impact, and most firms therefore opt to keep that controversial information close to the vest. Plus, large language models are evolving all the time, increasing in both complexity and efficiency, complicating outside efforts to quantify the sector’s energy footprint. But while we don’t know exactly how much electricity data centers are eating up to power ever-increasing AI integration, we do know that it’s a whole lot. 

“AI’s integration into almost everything from customer service calls to algorithmic “bosses” to warfare is fueling enormous demand,” the Washington Post recently reported. “Despite dramatic efficiency improvements, pouring those gains back into bigger, hungrier models powered by fossil fuels will create the energy monster we imagine.”

And that energy monster is weighing heavily on the minds of policymakers around the world. Global leaders are busily wringing their hands over the potentially disastrous impact AI could have on energy security, especially in countries like Ireland, Saudi Arabia, and Malaysia, where planned data center development outpaces planned energy capacity. 

In a rush to keep ahead of a critical energy shortage, public and private entities involved on both the tech and energy sides of the issue have been rushing to increase energy production capacities by any means. Countries are in a rush to build new power plants as well as to keep existing energy projects online beyond their planned closure dates. Many of these projects are fossil fuel plants, causing outcry that indiscriminate integration of artificial intelligence is undermining the decarbonization goals of nations and tech firms the world over. 

“From the deserts of the United Arab Emirates to the outskirts of Ireland’s capital, the energy demands of AI applications and training running through these centres are driving the surge of investment into fossil fuels,” reports the Financial Times. Globally, more than 85 gas-powered facilities are currently being built to meet AI’s energy demand according to figures from Global Energy Monitor.

In the United States, the demand surge is leading to the resurrection of old coal plants. Coal has been in terminal decline for years now in the U.S., and a large number of defunct plants are scattered around the country with valuable infrastructure that could lend itself to a speedy new power plant hookup. Thanks to the AI revolution, many of these plants are now set to come back online as natural gas-fired plants. While gas is cleaner than coal, the coal-to-gas route may come at the expense of clean energy projects that could have otherwise used the infrastructure and coveted grid hookups of defunct coal-fired power plants. 

“Our grid isn’t short on opportunity — it’s short on time,” Carson Kearl, Enverus senior analyst for energy and AI, recently told Fortune. “These grid interconnections are up for grabs for new power projects when these coal plants roll off. The No. 1 priority for Big Tech has changed to [speed] to energy, and this is the fastest way to go in a lot of cases,” Kearl continued.

Last year, Google stated that the company’s carbon emissions had skyrocketed by a whopping 48 percent over the last five years thanks to its AI integration. “AI-powered services involve considerably more computer power – and so electricity – than standard online activity, prompting a series of warnings about the technology’s environmental impact,” the BBC reported last summer. Google had previously pledged to reach net zero greenhouse gas emissions by 2030, but the company now concedes that “as we further integrate AI into our products, reducing emissions may be challenging.”

By Haley Zaremba for Oilprice.com 

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