AI Rebuilds Molecules From Exploding Fragments


BYLINE: Ula Chrobak

Read this story in the SLAC News Center

 

Newswise — Researchers at the Department of Energy’s SLAC National Accelerator Laboratory and collaborating institutions recently built a generative AI model that can recreate molecular structures from the movement of the molecule’s ions after they are blasted apart by X-rays, a technique called Coulomb explosion imaging.

The research, published in Nature Communications, is an important step toward being able to take snapshots of molecules during chemical reactions – an advance that could have important impacts in medicine and industry. The machine learning model closely predicted the geometries of a range of different molecules made of less than ten atoms, paving the way for applying the technique to larger molecules. “We were pretty excited about this,” said Xiang Li, an associate scientist at SLAC’s Linac Coherent Light Source (LCLS) and lead author of the study. “It is the first AI model built for molecular structure reconstruction from Coulomb explosion imaging.”

 

A new way to see molecules

Currently, there are limited options available for imaging isolated gas phase molecules. With electron microscopy, for example, subjects must be fixed in place, making it impossible to image free-floating molecules. And for diffraction-based techniques to work, the sample of molecules needs to be dense enough to generate a strong signal in the detector. The resulting image is technically an average of many molecules, restricting researchers from studying details only visible when imaging isolated molecules.

In the paper, the researchers instead focused on Coulomb explosion imaging. In this technique, an X-ray pulse hits a single molecule in a vacuum chamber, ripping off the molecule’s electrons. This leaves behind positive ions that explosively repel away from each other and smash into a detector. The detector captures their momentum, which can be used to reconstruct the structure of the molecule. “This technique has the ability to isolate minor details that are chemically relevant,” said James Cryan, LCLS interim deputy director for science, research and development, associate professor of photon science at SLAC and coauthor of the paper.

But this reconstruction process has so far been largely infeasible due to computing constraints. After the X-ray pulse strips away electrons, the remaining ions do not explode apart instantly. During this brief delay, the atoms can shift slightly, making it difficult to reconstruct the original structure using Coulombs law for electrostatic forces. “It will not be accurate because a simple use of that law only works if the charge-up process is instantaneous,” explained Li.

Making things even messier, every additional atom in the molecule adds an exponential level of complexity. “It’s very challenging to work backwards to get the original structure,” said co-author Phay Ho, a physicist with DOE’s Argonne National Laboratory. “It’s kind of like breaking a glass and trying to put it back together from how the pieces flew apart. Many problems in modern physics and chemistry involve reconstructing hidden structures from indirect measurements. This work demonstrates how AI can help tackle such inverse problems.”

 

Machine learning for molecular structures

The research team set out to build a machine learning model that could overcome this computing constraint. They developed and trained the model at SLAC’s Shared Science Data Facility (S3DF). Generative AI models are well-suited for the task because they “think” differently than a standard computer simulation. Instead of working through a series of equations, they learn by finding patterns in training data. Then, they use those patterns to make statistical predictions. 

To gather training data, the team turned to a simulation built by Ho. The simulation analyzes molecular structures and calculates the momentum of their ions following a Coulomb explosion. After running for over a month, the computing-intensive simulation, using both quantum mechanics and classical physics equations, produced a dataset of 76,000 molecular samples.

Initially, the researchers trained the AI on this dataset alone, which is small by AI-training standards, and they found the model predicted inaccurate structures from explosion data. So, they re-did the training, adding in another dataset derived using only classical physics. The second set was less precise but about 100 times larger than the first one.

This two-step training was the trick for predicting precise structures.

The researchers tested the AI model by prompting it to predict molecular structures in a portion of the simulation data it had not seen in training. The model, which the team named MOLEXA (short for “molecular structure reconstruction from Coulomb explosion imaging”), took the ion momenta and calculated the most likely structures. “We found that this two-step training process suppressed the prediction error by a factor of two,” said Li.

The team then tested MOLEXA with experimental datasets recorded at the Small Quantum Systems (SQS) instrument of the European X-ray Free-Electron Laser facility (European XFEL) in Germany. The molecules they tested included water, tetrafluoromethane and ethanol. They entered the experimental ion momenta into the model, reconstructed the molecular structures, and then compared the reconstructions to known structures listed by the National Institute of Standards and Technology.

They found the predictions largely overlapped with the established structures. Overall, the bonds were in the right spots, with only slight variations in their angles. The errors in position were generally less than half the length of a typical chemical bond. “The model is actually, most of the time, doing better than that,” added Li. “It is only a starting point for future research, which will not only improve model accuracy but also extend its applicability to larger molecular systems.”

 

Expanding to larger molecules and chemical reactions

The paper is a major step in advancing Coulomb explosion imaging, which has long been limited by the challenge of reconstructing molecular structures from experimental measurements. In future work, the researchers plan to scale up the number of atoms the machine learning model can piece back together and apply the model to time-resolved experiments at the LCLS and European XFEL. That will help researchers to reconstruct snapshots of molecules in motion, creating flip-book-like molecular movies with insights into how chemical reactions unfold. It will also help with the interpretation of data collected at the high X-ray pulse rates delivered by SLAC’s superconducting X-ray laser, Cryan said.

The team is also now testing the model’s ability to reconstruct molecules from incomplete data. Much of the time, the detector misses an ion produced in the Coulomb explosion. Li wants to know, for example: Can the AI still reconstruct an ethanol molecule if one or more of its hydrogen ions are not registered in the detector?

If these challenges are resolved, the technique could become more applicable in biology and chemistry research. Proteins, for instance, can consist of thousands of atoms. “That’s really the goal,” said Li. “We will be able to study systems that are more biologically or industrially relevant.”

The team also included researchers from the Stanford PULSE Institute; Stanford University; Kansas State University; European XFEL, Germany; the Max Planck Institute for Nuclear Physics, Germany; Fritz Haber Institute, Germany; and Sorbonne University, France. Large parts of this work were funded by the Department of Energy’s Office of Science. LCLS is an Office of Science user facility.

 

About SLAC

SLAC National Accelerator Laboratory explores how the universe works at the biggest, smallest and fastest scales and invents powerful tools used by researchers around the globe. As world leaders in ultrafast science and bold explorers of the physics of the universe, we forge new ground in understanding our origins and building a healthier and more sustainable future. Our discovery and innovation help develop new materials and chemical processes and open unprecedented views of the cosmos and life’s most delicate machinery. Building on more than 60 years of visionary research, we help shape the future by advancing areas such as quantum technology, scientific computing and the development of next-generation accelerators.

SLAC is operated by Stanford University for the U.S. Department of Energy’s Office of Science. The Office of Science is the single largest supporter of basic research in the physical sciences in the United States and is working to address some of the most pressing challenges of our time.




Trump threatens to deploy ICE agents to airports if DHS shutdown doesn’t end, while Elon Musk offers to cover TSA agents’ pay


U.S. President Donald Trump speaks to the media as he departs the White House for Florida, in Washington, D.C., U.S., March 20, 2026.

Nathan Howard | Reuters

President Donald Trump on ​Saturday ​threatened ​to send federal ⁠immigration agents ‌to U.S. ⁠airports unless congressional Democrats immediately ‌agree to fund the Department of Homeland Security.

“I will move our ⁠brilliant and ‌patriotic ‌ICE Agents to the Airports ⁠where they will ⁠do ⁠Security like no one ​has ‌ever seen before,” Trump wrote in ​a Truth Social post. The Trump administration has faced heavy criticism for aggressive deportation tactics by Immigration and Customs Enforcement and Border Patrol agents.

Trump claimed ICE agents handling airport security would arrest immigrants who are in the U.S. illegally, specifically targeting individuals from Somalia.

In a separate post later in the day, Trump said he plans to move ICE agents into airports as soon as Monday, telling them to “GET READY.”

“I look forward to moving ICE in on Monday, and have already told them to, ‘GET READY.’ NO MORE WAITING, NO MORE GAMES!” he wrote.

When asked for comment, the White House referred to Trump’s social media. DHS did not immediately respond to CNBC’s requests for comment.

A bipartisan group of senators met with DHS border czar Tom Homan last night to discuss additional immigration enforcement concessions made by the White House on Friday in an attempt to end the partial government shutdown, POLITICO reported, citing lawmakers in attendance.

The Senate is in session Saturday and Sunday, working on other legislative issues, but it is unclear whether further talks or a vote on the new DHS funding proposal will take place.

Read more CNBC politics coverage

Democrats are demanding changes to how federal immigration enforcement operates in exchange for releasing the funding. The White House and Democrats have been trading proposals for over a month but have not yet come to an agreement on a deal.

The DHS shutdown has been less disruptive than last year’s record-long government shutdown. But since much of DHS is considered essential, employees are required to work without pay.

The effects of the funding lapse and lack of pay are being felt at U.S. airports, where Transportation Security Administration agents are quitting or calling out sick. DHS employees missed their first full paychecks last week.

The shortage of agents has caused obscenely long lines at security checkpoints, including in Atlanta and Houston, where spring break travel is in full swing.

“If a deal ⁠isn’t ‌cut, you’re going to see what’s happening today ⁠look like child’s play,” Transportation Secretary Sean Duffy told CNN on Friday. Earlier in the week, Duffy warned that smaller airports could shut down entirely soon due to staffing.

Trump threatens to deploy ICE agents to airports if DHS shutdown doesn’t end, while Elon Musk offers to cover TSA agents’ pay

In a separate post earlier in the day, Tesla CEO and former Trump advisor Elon Musk said he would like to cover the paychecks of TSA ⁠officers as the shutdown continues.

“I would like to offer to pay the salaries of ‌TSA personnel during this funding impasse that is negatively affecting the lives of so many Americans at airports throughout ​the country,” Musk, the world’s richest man, said in a post on X.

Musk did not immediately respond to a request for comment.

The average salary for TSA agents is about $46,000 to $55,000, according to a recent Associated Press report.

It’s unclear how such an offer would work.

Last year, Trump announced a wealthy, unnamed donor provided $130 million to help cover military pay shortfalls caused by the administration’s first government shutdown, the longest in history. That mystery donor was revealed to be Timothy Mellon, an heir to a renowned Gilded Age banking family, The New York Times later reported.

But Mellon’s donation worked out to only about $100 per service member. It costs nearly $6.4 billion to pay U.S. troops every two weeks. And such a donation might have violated the Antideficiency Act, which bars federal agencies from spending funds that have not been appropriated by Congress, the Times reported.

Annie Nova and Dan Mangan contributed reporting

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Elon Musk misled Twitter investors ahead of $44 billion acquisition, jury says


Elon Musk arrives at federal court on March 4, 2026 in San Francisco, California.

Josh Edelson | Getty Images

A jury in California found that Elon Musk defrauded Twitter shareholders during the runup to his $44 billion acquisition of the social media company, according to a verdict issued on Friday.

Total damages could reach up to $2.6 billion, attorneys for the plaintiffs said.

The class action lawsuit, Pampena v. Musk, was originally filed in October 2022, after Musk completed his purchase of Twitter for $54.20 per share. He later renamed the company X, before merging it with his artificial intelligence company xAI, and then with SpaceX, his reusable rocket manufacturer.

“This is a great example of what you cannot do to the average investor — people that have 401ks, kids, pension funds, teachers, firemen, nurses,” Joseph Cotchett, an attorney for the Twitter investors, told CNBC at the San Francisco courthouse. “That’s what this case was all about. This was not about Musk. It was about the whole operation.”

In an emailed statement, Musk attorneys with Quinn Emanuel said, “We view today’s verdict, where the jury found both for and against the plaintiffs and found no fraud scheme, as a bump in the road. And we look forward to vindication on appeal.”

After Musk bid to buy Twitter in April 2022, his sentiment towards the deal quickly soured as he cast doubt on the company’s claimed level of bots, spam and fake accounts on its platform. Musk wrote in a tweet the following month that his acquisition was “temporarily on hold” until Twitter’s CEO could prove its inauthentic account levels were around the 5% reported in the company’s SEC filings.

Musk’s tweets and additional comments sent shares of Twitter sliding by almost 10% in a single session. The jury deliberated for four days and unanimously found that Musk’s tweets on May 13 and May 17 were materially false or misleading.

Former Twitter shareholders, including retail investors and options traders, argued that Musk’s remarks amounted to a scheme to pressure the company’s board to sell to him for a lower price than his original offer. They claimed he was motivated by stock price declines at Tesla, which would require him to sell even more shares in the automaker than he’d intended in order to finance the buyout.

The plaintiffs in the suit said they sold shares below $54.20 following and in response to Musk’s posts and comments during press interviews. The potential damages figure is based on expert estimates of how much Musk’s flip-flopping affected the share price during the class period.

Attorneys for the Twitter investors said it will be about 90 days before claims administration is set up, and it will then take a couple of months for the government to process claims and for investors to begin to recoup some of their losses.

Musk’s attorneys argued their client’s remarks were based on well-founded concerns about bots, spam and fake accounts on Twitter, and did not amount to securities fraud or a scheme to depress the company’s stock price.

The jury said that though Musk had made false and misleading statements that harmed some Twitter shareholders, he did not engage in a specific scheme to defraud investors.

While the verdict marks a stinging rebuke for Musk, the financial implications are minimal considering his net worth, which currently sits at about $650 billion, according to Bloomberg.

WATCH: Why Tesla is pivoting

Elon Musk misled Twitter investors ahead of  billion acquisition, jury says
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Solid, Tough, and Fast: A Composite Electrolyte That Helps Tame Lithium Dendrites | Newswise


Newswise — Liquid electrolytes enable fast ion transport but can raise safety concerns, and lithium metal anodes—despite their high capacity—can grow dendrites that trigger short circuits and rapid failure. Solid polymer electrolytes are attractive because they are processable and potentially compatible with lithium metal, yet many polymer systems (especially PEO-based) become highly crystalline at room temperature, restricting Li⁺ mobility. Adding plasticizers can improve conductivity, but excessive softening may weaken mechanical protection and destabilize interfaces. Meanwhile, strengthening the polymer often worsens ionic transport, leaving researchers stuck between conductivity and robustness. Based on these challenges, deeper research is needed to develop solid polymer electrolytes that simultaneously deliver high ionic conductivity and high mechanical strength.

Researchers at Zhejiang Sci-Tech University report a fiber-reinforced composite solid polymer electrolyte designed to overcome the long-standing “conductivity–strength” dilemma in polymer-based solid-state batteries. In a study published (DOI: 10.1007/s10118-025-3515-3) online on January 19, 2026 in the Chinese Journal of Polymer Science, the team shows that combining a porous PTFE fibrous membrane (as a reinforcing framework) with the plastic-crystal additive succinonitrile yields an electrolyte that is both mechanically robust and electrochemically effective for lithium metal battery operation.

The team’s concept borrows from structural engineering: a lightweight porous framework provides mechanical reinforcement, while the polymer phase supplies ion transport. They infiltrated a PEO/PVDF-HFP/LiTFSI matrix containing succinonitrile into a porous PTFE fibrous membrane via solution casting, aiming for uniform filling and intimate interfacial contact. Microscopy suggests the PTFE scaffold helps “hold” the electrolyte in a continuous network, while the succinonitrile component improves wetting and reduces PEO crystallinity—two factors expected to open faster Li⁺ pathways.

Material optimization mattered. At an optimized 20 wt% succinonitrile, the electrolyte achieved an ionic conductivity of 7.6×10⁻⁴ S·cm⁻¹ at 60 °C while retaining strong mechanical performance, reaching 3.31 MPa tensile strength with 352% elongation—a combination intended to resist dendrite penetration without sacrificing flexibility. Electrochemically, the composite sustained lithium symmetric-cell cycling for about 2,500 hours at 0.15 mA·cm⁻², indicating stable interfacial behavior during repeated plating/stripping. In Li//LiFePO₄ full cells, the electrolyte delivered durable cycling with 91.6% capacity retention after 300 cycles at 0.5C and coulombic efficiency consistently above 99.9%, supporting the claim that the composite design improves both stability and longevity.

According to the authors, the performance comes from a deliberate “division of labor” inside the composite. The PTFE fibrous membrane acts as a thermally stable, mechanically strong backbone that helps maintain structural integrity under cycling stress. Succinonitrile suppresses polymer crystallinity and promotes faster Li⁺ transport, while PVDF-HFP improves salt dissolution and contributes to electrochemical stability. Together, these components create a reinforced yet conductive electrolyte architecture that can be fabricated by straightforward casting and still deliver long-duration symmetric-cell stability and reliable full-cell cycling.

For solid-state lithium metal batteries to become practical, electrolytes must be manufacturable at scale, mechanically resilient, and consistently conductive—especially under conditions where dendrites are likely. This work points to a pragmatic materials strategy: instead of chasing a single “perfect” polymer, build composites in which a porous fiber scaffold provides structural protection and a carefully tuned additive accelerates ion transport. The demonstrated thousands-hour lithium cycling stability and strong capacity retention in LiFePO₄ full cells suggest potential for safer, longer-lived energy storage. If the approach translates to broader cathode chemistries and lower-temperature operation, it could help move polymer-based solid-state batteries closer to real-world deployment.

###

References

DOI

10.1007/s10118-025-3515-3

Original Souce URL

https://doi.org/10.1007/s10118-025-3515-3

Funding information

This research was financially supported by the National Key Research and Development Program of China (No. 2021YFB3801500) and Fundamental Research Funds of Zhejiang Sci-Tech University (No. 24202105-Y).

About Chinese Journal of Polymer Science (CJPS)

Chinese Journal of Polymer Science (CJPS) is a monthly journal published in English and sponsored by the Chinese Chemical Society and the Institute of Chemistry, Chinese Academy of Sciences. CJPS is edited by a distinguished Editorial Board headed by Professor Qi-Feng Zhou and supported by an International Advisory Board in which many famous active polymer scientists all over the world are included. Manuscript types include Editorials, Rapid Communications, Perspectives, Tutorials, Feature Articles, Reviews and Research Articles. According to the Journal Citation Reports, 2024 Impact Factor (IF) of CJPS is 4.0.




Micron revenue almost triples, tops estimates as demand for memory soars


Micron CEO Sanjay Mehrotra speaks at a groundbreaking ceremony for the company’s semiconductor manufacturing facility in Clay, New York, on Jan. 16, 2026.

Heather Ainsworth | Bloomberg | Getty Images

Micron’s revenue almost tripled in the latest quarter as results topped analysts’ estimates and guidance sailed past expectations. The stock, which is up more than 350% in the past year, slipped in extended trading.

Here’s how the company did relative to LSEG consensus:

  • Earnings per share: $12.20 adjusted vs. $9.31 expected
  • Revenue: $23.86 billion vs. $20.07 billion expected

Micron is benefiting from soaring demand for Nvidia graphics processing units that run generative artificial intelligence models. Each generation of Nvidia chip packs in more memory, creating a supply crunch. Micron has been working to add capacity, as have competitors Samsung and SK Hynix.

Revenue in the fiscal second quarter increased from $8.05 billion a year earlier, according to a statement.

For the current period, the company expects about $33.5 billion in revenue, up from $9.3 billion a year ago, implying growth of over 200%. Adjusted earnings per share will be about $19.15, Micron said. Analysts polled by LSEG had expected $12.05 in adjusted earnings per share on $24.3 billion in revenue.

“The step-up in our results and outlook are the outcome of an increase in memory demand driven by AI, structural supply constraints and Micron’s strong execution across the board,” CEO Sanjay Mehrotra said in prepared remarks the company issued at the time of the release.

Micron’s stock has been on a tear. The shares tripled in 2025 and have jumped another 62% year to date as of Wednesday’s close. Among the 10 most valuable U.S. tech companies, Micron is the only one that’s up. Oracle is the leading decliner, down 22%, and Microsoft and Tesla have also seen double-digit percentage drops.

“Looking at how the shares were trading going into this earnings report, I thought the biggest risk was high investor expectations,” said Hendi Susanto, a portfolio manager at Gabelli Funds, in an email. “However, fiscal third-quarter guidance is strong, well above analysts’ and my own expectations.”

Micron revenue almost triples, tops estimates as demand for memory soars

Mehrotra said that AI and conventional servers are facing a “lack of adequate DRAM and NAND supply.” That refers to the company’s traditional memory products that have long been used in data centers and devices.

Memory companies have been shifting production capacity largely to high-bandwidth memory, which is embedded onto Nvidia’s latest GPUs and many other chips powering AI. Those products have higher margins.

The company’s GAAP gross margin, the profit left after accounting for the cost of goods sold, more than doubled in the past year to 74.4% from 36.8%, and increased from 56% in the prior quarter.

Net income climbed to $13.8 billion, or $12.07 per share, from $1.58 billion, or $1.41 per share, in the same quarter last year.

Micron said revenue in its cloud memory business rose more than 160% to $7.75 billion. The mobile and client unit saw even steeper growth, with revenue jumping to $7.71 billion from $2.24 billion a year ago.

Memory is typically a commodity business, which comes with lower margins than other silicon products and short-term contracts. In the past few months, memory companies have signed longer-term contracts as semiconductor makers work to ensure future capacity.

“As AI evolves, we expect compute architectures to become more memory-intensive,” the company said in an earnings presentation. “This is why we strongly believe that Micron is one of the biggest beneficiaries and enablers of AI.”

Mehrotra said on the earnings call that volume production of HBM4 for Nvidia’s Vera Rubin started in the fiscal first quarter, and next-generation HBM4e products will ramp in 2027. Nvidia has said it will utilize custom HBM in its next-generation Feynman GPU coming in 2028.

Mehrotra added that capital expenditures will “step up meaningfully” in fiscal 2027, with construction-related costs increasing by over $10 billion.

Micron is building two giant new campuses of fabrication plants in Idaho and New York to increase its memory manufacturing capacity in the U.S. Mehrotra said on the call that initial production at the Idaho site is expected by mid-2027. Micron broke ground in January on the massive $100 billion New York campus, and expects wafer output by the second half of 2028.

WATCH: How Micron is building the biggest-ever U.S. chip fab, despite China ban

Micron is building the biggest-ever U.S. chip fab, despite China ban
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Microsoft shakes up Copilot AI leadership team, freeing up Suleyman to build new models


Microsoft AI CEO Mustafa Suleyman speaks during an event highlighting Microsoft Copilot, the company’s AI tool, on April 4, 2025 in Redmond, Washington. The company also celebrated its 50th anniversary.

Stephen Brashear | Getty Images News | Getty Images

Microsoft said Tuesday that it’s bringing together the engineering groups for its commercial and consumer Copilot assistants, which have yet to gain broad adoption.

Jacob Andreou, a former Snap executive who works in Microsoft’s artificial intelligence unit, will become an executive vice president in charge of the consumer and commercial Copilot experience, CEO Satya Nadella wrote in a memo to employees.

Andreou will report to Nadella. Executives Ryan Roslansky, Perry Clarke and Charles Lamanna, who will also report to Nadella, will lead Microsoft 365 applications and the Copilot platform, Nadella wrote.

The Copilot moves will free up executive Mustafa Suleyman, a former co-founder of AI lab DeepMind that Google bought in 2014, to focus more on building new models.

“The next phase of this plan is to restructure our organization to enable me to focus all my energy on our Superintelligence efforts and be able to deliver world class models for Microsoft over the next 5 years,” Suleyman wrote in a memo. “These models will enable us to build enterprise tuned lineages that help improve all our products across the company.”

Since arriving at Microsoft through the Inflection deal in 2024, Suleyman has spent time working on Copilot for consumers, among other initiatives.

Microsoft’s Copilot app had 6 million daily active users in February, while OpenAI’s ChatGPT had 440 million and Google’s Gemini had 82 million, according to data from app analytics company Sensor Tower.

Sensor Tower said that so far in March, Anthropic’s Claude, which has gotten extensive media attention because of Anthropic’s standoff with the U.S. Department of Defense, has reached 9 million daily users, while Copilot still stands at 6 million.

Microsoft incorporates generative AI models from Anthropic and OpenAI. About 3% of commercial users with Office productivity software subscriptions have access to the Microsoft 365 Copilot add-on. Google is pushing Gemini to both consumers and corporations.

In November, Microsoft announced the formation of a superintelligence group under Suleyman, who said Tuesday that frontier model development has always been his main focus and passion.

He said he will “stay directly involved in much of the day-to-day operation” of the broad Microsoft AI group that includes products such as the Bing search engine.

Google controlled 90% of search engine market share in February, while Bing had about 5%, according to estimates from web analytics company StatCounter.

“We are doubling down on our superintelligence mission with the talent and compute to build models that have real product impact, in terms of evals, COGS reduction, as well as advancing the frontier when it comes to meeting enterprise needs and achieving the next set of research breakthroughs,” Nadella wrote.

The shake-up comes as pressure mounts on software companies to show a return on AI investments, as investors worry that the models could disrupt software incumbents.

The iShares Expanded Tech-Software Sector Exchange-Traded Fund is down about 19% so far this year, with Microsoft falling 17% in that period.

Microsoft is constructing models for generating source code, images and audio, and for reasoning, which produces answers that people can find more thoughtful but requires more time, Suleyman said.

At the same time, Microsoft will keep drawing on OpenAI intellectual property. In October, Microsoft said it has IP rights for OpenAI models and products through 2032.

“I’m genuinely thrilled about this change precisely because most of the future value is going to accrue to the model layer, and my job is to create highly COGS-optimized, highly efficient enterprise specific model lineages for Microsoft over the next three to five years,” Suleyman said in an interview, using the acronym for cost of goods sold. “That is singularly the objective, precisely because the model is the product, right? That is the future direction of all the IP.”

WATCH: Microsoft shifts from OpenAI exclusivity and expands its AI basket

Microsoft shakes up Copilot AI leadership team, freeing up Suleyman to build new models
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Why GNSS-R Soil Moisture Retrieval Has Relied on Reference Products—and How a Physics-Based Approach Is Changing That | Newswise


Newswise — For decades, global soil moisture monitoring from space has depended on reference datasets. Satellite observations, while indispensable, are rarely used alone; instead, their retrieval algorithms are typically calibrated or constrained using external soil moisture products derived from other satellites, models, or reanalysis systems. This practice has helped stabilize retrievals, but it has also introduced fundamental limitations—reducing transparency, constraining transferability across regions, and complicating long-term consistency as reference products evolve. A growing question in Earth observation is whether this dependence is truly unavoidable.

In a study published (DOI: 10.34133/remotesensing.0939) on January 7, 2026, in the Journal of Remote Sensing, researchers from the Chinese Academy of Sciences, Peking University, and the China Meteorological Administration present PHYsics-based Soil rEflectivity Retrieval (PHYSER)—a physics-based framework for spaceborne GNSS-R soil moisture retrieval. The study demonstrates that global soil moisture can be retrieved independently, without relying on any external soil moisture referenSatellite Observationce products.

A long-standing constraint in satellite soil moisture retrieval

Soil moisture governs the exchange of water, energy, and carbon between the land surface and the atmosphere, influencing droughts, floods, ecosystem functioning, and agricultural productivity. Satellite remote sensing has become essential for monitoring soil moisture at regional to global scales, yet existing approaches face persistent challenges.

Conventional microwave sensors provide physically meaningful measurements but often struggle to balance spatial resolution, temporal coverage, and mission cost. More recently, Global Navigation Satellite System Reflectometry (GNSS-R) has emerged as a promising alternative. By passively receiving L-band signals continuously transmitted by navigation satellites such as GPS and BeiDou, GNSS-R offers low power consumption, all-weather capability, and dense spatiotemporal sampling.

Despite these advantages, most GNSS-R soil moisture retrieval methods still rely on empirical or semi-empirical relationships calibrated against external soil moisture products. This reliance weakens the physical interpretability of the results and limits their robustness when applied across regions, time periods, or future satellite missions. As GNSS-R constellations rapidly expand, the absence of an independent, physics-based retrieval framework has become a critical bottleneck.

Retrieving soil moisture from physical principles

PHYSER addresses this bottleneck by rethinking GNSS-R soil moisture retrieval from first principles. Rather than fitting GNSS-R observations to existing soil moisture datasets, the framework derives soil moisture directly from the physical interaction between navigation signals and the land surface.

At the core of PHYSER is the accurate reconstruction of soil surface reflectivity from GNSS-R measurements. This is achieved through a stepwise physical correction strategy. First, system-related biases inherent to the GNSS-R “multi-transmitter, single-receiver” observation geometry are corrected using inland water bodies as stable natural calibration targets. This step ensures consistency across different navigation signals and viewing geometries.

Second, land surface effects—particularly vegetation attenuation and surface roughness—are explicitly corrected using a physically based radiative transfer model. These land surface factors are shown to introduce larger uncertainties than satellite system errors, underscoring the importance of addressing them through physics-based correction rather than statistical adjustment.

With these corrections applied, soil reflectivity is transformed into soil permittivity using Fresnel equations. Soil moisture is then retrieved using established dielectric mixing models informed by global soil texture data.

Independent validation across space and ground observations

The PHYSER framework was evaluated using one year of observations from the BuFeng-1 A/B twin satellites, China’s first spaceborne GNSS-R mission designed for technology demonstration. The retrieved soil moisture fields were compared with SMAP satellite products, ERA5-Land reanalysis data, and hundreds of in situ measurement sites worldwide.

Across diverse climatic and land surface conditions, the PHYSER-based retrievals show strong spatial and temporal consistency with these independent datasets. While retrieval errors are comparable to—or only slightly higher than—those of empirical GNSS-R approaches, PHYSER achieves this performance while remaining fully independent of reference soil moisture products.

“This work shows that GNSS-R soil moisture retrieval does not have to be a statistical imitation of other products,” said a member of the research team. “By grounding the retrieval in physics, we gain transparency, robustness, and the ability to extend the method to future missions without retraining against external datasets.”

Implications for future Earth observation missions

As GNSS-R missions multiply and satellite constellations become denser, the need for scalable and physically interpretable retrieval methods is becoming increasingly urgent. PHYSER provides a pathway toward soil moisture monitoring that is not tied to any specific reference product or satellite mission.

The framework has the potential to strengthen climate reanalysis, improve hydrological forecasting, and support agricultural decision-making, particularly in data-sparse regions. With further refinement—especially in densely vegetated environments—PHYSER could help enable operational GNSS-R soil moisture products that complement, and potentially stand alongside, traditional microwave remote sensing systems.

###

References

DOI

10.34133/remotesensing.0939

Original Source URL

https://spj.science.org/doi/10.34133/remotesensing.0939

Funding information

This study is supported by the Chinese Academy of Sciences, the Shandong Provincial Natural Science Foundation (Grant No. ZR2024QD048), the National Natural Science Foundation of China (NSFC) project (Grant No. 42471511), the BUFENG-1 Application Extension Program of the China Spacesat Co., Ltd., the ESA-MOST China Dragon5 Programme (ID.58070), the Fengyun Application Pioneering Project (FY-APP-2021.0301), the Beijing Nova Program (Grant Nos. 20230484327 and 20240484540), and the Hunan Provincial Natural Science Foundation project (Grant No. 2024JJ9186).

About Journal of Remote Sensing

The Journal of Remote Sensing, an online-only Open Access journal published in association with AIR-CAS, promotes the theory, science, and technology of remote sensing, as well as interdisciplinary research within earth and information science.




Official minimum PC specs needed to run Crimson Desert before March 19 launch


Pearl Abyss has officially confirmed the minimum PC hardware specs required to play its newest game

Crimson Desert is set to launch in just a couple of days worldwide, with the game being made available in the UK on Thursday, March 19. While the game will be available to play on PC via Steam or the Microsoft Store, not all PCs may be capable of running the game, even on low graphics and performance settings.

If you’re eager to play Crimson Desert but your PC has some parts you may feel are a bit outdated, don’t worry too much. The game’s developer, Pearl Abyss, has released its recommended specs to efficiently run the game, while also providing a minimum spec list, essentially providing a guide of the lowest specs possible to play the game.

Bare in mind that when running a game with a lower spec PC, some sacrificies may habe to be made in terms of graphics and performance. Despite this, Pearl Abyss has highlighted that even the lowest spec PCs can play Crimson Desert with 1080p graphics and 30 FPS, although there are some caveats.

READ MORE: PS5 owners race to grab Crimson Desert pre-order for £34 instead of £50

READ MORE: Exact time Crimson Desert launches in UK on PS5, Xbox Series X/S, Steam, and more

Crimson Desert will see players exploring and battling across the continent of Pywel with a new action-adventure focused experience. The title will also feature a medieval fantasy backdrop, with players taking control of Kliff, a member of the Greymanes clan.

The game represents a significant shift from its predecessor, with the emphasis seemingly placed on delivering a single-player experience rather than a massive multiplayer one. This suggests that prior familiarity with Black Desert isn’t necessary to appreciate the new release, as numerous early previews have revealed it takes place in an entirely separate fictional world.

PC specifications required to play Crimson Desert

According to Pearl Abyss, PCs with the relevantly mentioned hardware can play the game on the following graphics and performance settings. Bear in mind that these figures are based on Pearl Abyss’ internal testing results and your own indicidual performance may vary depending on your PC’s hardware and software configuration.

All of the following specs also require a minimum of 150GB of SSD storage, which Pearl Abyss has said is required.

Minimum

Performance: Upscaled 1080p (from 900p) with 30 FPS

GPU: AMD Radeon RX 5500 XT or NVIDIA GeForce GGTX 1060

CPU: AMD Ryzen 5 2600X or Intel i5 – 8500

RAM: 16GB

Low

Performance: 1080p with 30 FPS

GPU: AMD Radeon RX 6500 XT or NVIDIA GeForce GTX 1660

CPU: AMD Ryzen 5 2600X or Intel i5 – 8500

RAM: 16GB

Recommended

Performance: 1080p with 60FPS or 4K with 30FPS

GPU: AMD Radeon RX 6700XT or NVIDIA GeForce RTX 2080

CPU: AMD Ryzen 5 5600 or Intel i5-11600K

RAM: 16GB

High

Performance: 1440p with 60FPS

GPU: AMD Radeon RX 7700 XT or NVIDIA GeForce RTX 2080

CPU: AMD Ryzen 5 5600 or Intel i5-11600K

RAM: 16GB

Ultra

Performance: 4K with 60FPS

GPU: AMD Radeon RX 9070XT or NVIDIA GeForce RTX 5070 Ti

CPU: AMD Ryzen 7 7700X or Intel i5-i3600K

RAM: 16GB


Nebius jumps 14% after inking $27 billion infrastructure deal with Meta


In an aerial view, a billboard advertising an artificial intelligence (AI) company is posted on Sept. 16, 2025 in San Francisco, California.

Justin Sullivan | Getty Images

Meta has signed a new long-term agreement to spend up to $27 billion on Dutch cloud provider Nebius‘ AI infrastructure, the company announced on Monday.

Nebius’ shares surged 14% in premarket trading.

Over the next five years, Nebius will provide $12 billion of dedicated capacity across a number of locations, including on what the company says will be one of the first large-scale deployments of Nvidia’s latest AI-specialist Vera Rubin chips.

Meta has also committed to purchase additional available compute capacity from Nebius, worth up to a total of $15 billion over five years.

Netherlands-based Nebius has emerged as a leading European player in the rapidly developing AI cloud computing space. The company has seen its share price increase more than 400% since listing in New York in 2024.

Stock Chart IconStock chart icon

Nebius jumps 14% after inking  billion infrastructure deal with Meta

Nebius shares year-to-date

“We are pleased to expand our significant partnership with Meta as part of securing more large, long-term capacity contracts to accelerate the build-out and growth of our core AI cloud business,” Arkady Volozh, founder and CEO of Nebius, said in a statement.

Citi said Monday it was initiating coverage of Nebius with a buy/high risk rating, which it noted was supported by a “differentiated view on AI datacenter [total addressable market] growth, margin improvement and NBIS’s capital-efficient scaling.”

Meta is part of a group of hyperscalers planning huge spending as they race to build out infrastructure to power the AI boom.

The company said its AI-related capital expenditure would hit between $115 billion and $135 billion this year, as part of a combined $700 billion in spending by hyperscalers including Amazon, Alphabet and Microsoft.

It comes as investors pile into the AI cloud computing sector. U.K.-based AI data center startup Nscale announced it had raised $2 billion at a $14.6 billion valuation last week, from investors including Nvidia.

The chip giant also announced it would invest $2 billion in Nebius last week, which saw the Dutch company’s stock pop 16%.

Nebius was founded in 2022 after a restructuring of Russian company Yandex’s operations based outside of its home market and listed in New York in 2024. Its share price rose more than 200% in 2025 and has increased by 35% so far in 2026.

The company also inked a deal to deliver computing resources to Microsoft, worth up to $19.4 billion over five years, in September.

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NFL, Paramount discussing media deal that could mean CBS pays an extra $1 billion or more


NFL Commissioner Roger Goodell at the CNBC CEO Council in Arizona, May 19, 2025.

Chris Coduto | CNBC

The NFL and Paramount Skydance‘s renewal talks on a deal to keep the league’s Sunday games on CBS are beginning to take shape, CNBC has learned.

NFL and CBS executives are negotiating a price increase, with a bid-ask spread midpoint around 50% or 60%, according to two people familiar with the negotiations, who asked not to be named because the discussions are private. CBS currently pays around $2.1 billion a year, on average, for its Sunday afternoon games, CNBC has previously reported. A 50% increase would mean CBS would pay more than $3 billion in its next deal.

In return for the increased revenue, the NFL would eliminate the opt-out clause after the 2029-30 season that it put in its original deal with Paramount, part of an 11-year agreement that runs through the end of the 2033-34 season. That clause would have given the league the chance to walk away early.

CBS would begin paying the new fee as soon as next season for the next eight years for the same package of games.

Paramount’s adjusted projection for its earnings before interest, taxes, depreciation and amortization for 2026 is $3.6 billion. If Paramount’s merger with Warner Bros. Discovery is approved by regulators, the combined company would have an adjusted EBITDA projection of $18 billion, Paramount Chief Financial Officer Dennis Cinelli told investors this month.

“We have a phenomenal relationship with the NFL, and we anticipate that continuing for the foreseeable future,” Paramount CEO David Ellison told CNBC earlier this month. “They are one of our most important partners, and we plan for them to stay one of our most important partners, having just delivered a historic season in partnership with them. And, you know, ongoing negotiations, we’re not really in a position where we can comment. I promise we’ll share something as soon as we have something to say.”

Comcast‘s NBCUniversal, Amazon Prime Video and Fox are also subject to the 2029-30 opt-out clause in their deals. Disney‘s ESPN and ABC have until 2031.

Referee Shawn Smith talks to New England Patriots and Seattle Seahawks players before the coin toss for the 2026 Super Bowl, at Levi’s Stadium, Santa Clara, California, on Feb. 8.

Carlos Barria | Reuters

The league has chosen to begin negotiating with Paramount’s CBS before any of its other media partners because a change-of-control provision — stemming from Skydance Media’s acquisition of Paramount Global — allows the NFL to break its deal by 2027.

The NFL might negotiate with Fox next after CBS because the terms of the deal should be similar — both companies own Sunday afternoon packages, one of the people familiar with the matter said.

Fox currently pays slightly more than CBS for its package of games — about $2.2 billion, according to a person familiar with the matter. Fox will “certainly look to [be] continuing that mutually beneficial relationship going forward” with the NFL, but it hasn’t had any “material conversations” on a renewal yet, CEO Lachlan Murdoch said earlier this month at the Morgan Stanley Technology, Media & Telecom Conference.

The NFL also hasn’t begun material discussions with Amazon, NBC or Disney, according to people familiar with the matter. It’s unclear if the league would look to push forward with a similar 50% increase for all three of those packages.

Some executives at NBC and at Disney believe the relative strengths of their packages — Sunday Night Football and Monday Night Football — have diminished as the NFL has given Amazon better games for its Thursday Night Football in recent years, according to people familiar with the matter.

ESPN already pays $2.7 billion for Monday Night Football. A 50% increase would mean ESPN would pay more than $4 billion for that package — a number Disney would likely balk at, according to people familiar with the matter.

Downstream implications

The timing and scope of the NFL’s new deals could have a significant effect on the value of other sports’ rights in the coming years.

The NHL currently has TV deals with Disney and Warner Bros. Discovery, which expire after the 2028 season. NHL Commissioner Gary Bettman has had a number of conversations about renewing a deal before the NFL, according to two people familiar with the matter. Still, he will likely have to wait until Paramount’s deal to acquire WBD closes before inking a new agreement.

“As with an ongoing relationship, you’re always talking about the future, and from our standpoint it’s not in the context of the NFL,” said NHL spokesman Jon Weinstein.

Murdoch said last month that Fox would have to “rebalance” its sports portfolio once it pays the NFL.

Versant CEO Mark Lazarus said earlier this month he’s “prepared for the sports landscape to be shifting,” given the outsize cost of the NFL. That could allow Versant, which owns the USA Network and other cable channels, to buy rights to sports such as the NHL or MLB “that we might not have otherwise gotten involved with,” he said.

Disclosure: Versant is the parent company of CNBC.

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