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AI-Designed Antibodies Are Racing Toward Clinical Trials
“Generative biology is moving drug discovery from a process of chance to one of design.”
Antibodies touch nearly every corner of healthcare. These carefully crafted proteins can target cancer cells, control autoimmune diseases, fight infections, and destroy the toxic proteins that drive neurological disorders. They’re also notoriously difficult to make.
Over 160 antibody therapies have been approved globally. Their market value is expected to reach $445 billion in the next five years. But the traditional design process takes years of trial and error and is often constrained to structures similar to existing proteins.
With AI, however, we can now generate completely new antibody designs—never before seen in nature—from scratch. Last year, labs and commercial companies raced to build increasingly sophisticated algorithms to predict and generate these therapeutics. While some tools are proprietary, many are open source, allowing researchers to tailor them to a specific project.
Some AI-optimized antibodies are already in early clinical trials. In late September, Generate:Biomedicines in Somerville, Massachusetts presented promising data from patients with asthma treated with an antibody designed with AI’s help. A shot every six months lowered asthma-triggering protein levels without notable side effects.
“Generative biology is moving drug discovery from a process of chance to one of design,” said Mike Nally, CEO of Generate, in a press release.
Nobel Prize winner David Baker at the University of Washington would likely agree. Known for his work on protein structure prediction and design, his team upgraded an AI last year to dream up antibodies for any target at the atomic level.
Designer TroublesPills containing small-molecule drugs like Tylenol still dominate healthcare. But antibody therapies are catching up. These therapies work by grabbing onto a given protein, like a key fitting into a lock. The interaction then either activates or inhibits the target.
Antibodies come in different shapes and sizes. Monoclonal antibodies, for example, are lab-made proteins that precisely dock to a single biological target, such as one involved in the growth or spread of cancer. Nanobodies, true to their name, are smaller but pack a similar punch. The FDA has approved one treatment based on the technology for a blood clotting disorder.
Regardless of type, however, antibody treatments traditionally start from similar sources. Researchers usually engineer them by vaccinating animals, screening antibody libraries, or isolating them from people. Laborious optimization procedures follow, such as mapping the exact structure of the binding pocket on the target—the lock—and tweaking the antibody key.
The process is tedious and unpredictable. Many attempts fail to find antibodies that reliably scout out their intended docking site. It’s also largely based on variations of existing proteins that may not have the best therapeutic response or safety profile. Candidates are then painstakingly optimized using iterations of computational design and lab validation.
The rise of AI that can model protein structures—and their interactions with other molecules—as well as AI that generates proteins from scratch has sparked new vigor in the field. These models are similar to those powering the AI chatbots that have taken the world by storm for their uncanny ability to dream up (sometimes bizarre) text, images, and video.
In a way, antibody structures can be represented as 3D images, and their molecular building blocks as text. Training a generative AI on this data can yield an algorithm that produces completely new designs. Rather than depending on chance, it may be possible to rationally design the molecules for any given protein lock—including those once deemed “undruggable.”
But biology is complex. Even the most thoughtful designs could fail in the body, unable to grasp their target or latching onto unintended targets, leading to side effects. Antibodies rely on a flexible protein loop to recognize their specific targets, but early AI models, such as DeepMind’s AlphaFold, struggled to map the structure and behavior of these loops.
Designed to BindThe latest AI is faring better. An upgraded version of Baker lab’s RFdiffusion model, introduced last year, specifically tackles these intricate loops based on information about the structure of the target and location of the binding pocket. Improved prediction quickly led to better designs.
Initially, the AI could only make nanobodies. These are short but functional chunks of antibodies for a range of viruses, such as the flu, and antidotes against deadly snake venoms. After further tweaking, the AI suggested longer, more traditional antibodies against a toxin produced by a type of life-threatening bacteria that often thwarts antibacterial drugs.
Lab tests confirmed that the designer proteins reliably latched onto their targets at commonly used doses without notable off-site interactions.
“Building useful antibodies on a computer has been a holy grail in science. This goal is now shifting from impossible to routine,” said study author Rob Ragotte.
There have been more successes. One lab introduced a generative model that can be fine-tuned using the language of proteins—for example, adding structural constraints of the final product. In a test, the team selected 15 promising AI-made nanobody designs for cancer, infections, and other diseases, and each successfully found its target in living cells. Another lab publicly released an AI called Germinal that’s also focused on making nanobodies from scratch.
Commercial companies are hot on academia’s heels.
Nabla Bio, based in Cambridge, Massachusetts, announced a generative AI-based platform called JAM that can tackle targets previously unreachable by antibodies. One example is a highly complex protein class called G-protein-coupled receptors. These seven-arm molecules form the “largest and most diverse group” of protein receptors embedded in cell membranes. Depending on chemical signals, the receptors trigger myriad cell responses—tweaking gene activation, brain signaling, hormones—but their elaborate structure makes designing antibodies a headache.
With JAM, the company designed antibodies to target these difficult proteins, showcasing the AI’s potential to unlock previously unreachable targets. They’re releasing parts of the data involved in characterized antibodies from the study, but most of the platform is proprietary.
Momentum for clinical trials is also building.
After promising initial results, Generate:Biomedicines launched a large Phase 3 study late last year. The trial involves roughly 1,600 people with severe asthma across the globe and is testing an antibody optimized—not engineered from scratch—with the help of AI.
The hope is AI could eventually take over the entire antibody-design process: predicting target pockets, generating potential candidates, and ranking them for further optimization. Rational design could also lead to antibodies that better navigate the body’s crooks and crannies, including those that can penetrate into the brain.
It’ll be a long journey, and safety is key. Because the dreamed-up proteins are unfamiliar to the body, they could trigger immune attacks.
But ultimately, “AI antibody design will transform the biotechnology and pharmaceutical industries, enabling precise targeting and simpler drug development,” says Baker.
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Sci-Fi Cloaking Technology Takes a Step Closer to Reality With Synthetic Skin Like an Octopus
The skin could allow machines to dynamically blend into their surroundings or be used to create adaptive displays and artwork.
An octopus’s adaptive camouflage has long inspired materials scientists looking to come up with new cloaking technologies. Now researchers have created a synthetic “skin” that independently shifts its surface patterns and colors like these intelligent invertebrates.
The ability to alter an object’s appearance on demand has a host of applications, from allowing machines to dynamically blend into their surroundings to creating adaptive displays and artwork. Octopuses are an obvious source of inspiration thanks to their unique ability to change the color and physical structure of their skin in just seconds.
So far, however, materials scientists have struggled to replicate this dual control. Materials that change color typically use nanostructures to reflect light in specific ways. But changing a surface’s shape interferes with these interactions, making it challenging to tune both properties simultaneously.
Now, in a paper published in Nature, Stanford University researchers cracked the problem by creating a synthetic skin made of two independently controlled polymer layers: One changes color and the other shape.
“For the first time, we can mimic key aspects of octopus, cuttlefish, and squid camouflage in different environments: namely, controlling complex, natural-looking textures and at the same time, changing independent patterns of color,” Siddharth Doshi, first author of the paper, told The Financial Times.
The new camouflage system took direct inspiration from cephalopods, which use tiny muscle-controlled structures called papillae to reshape their skin’s surface while separate pigment cells alter color.
To recreate these abilities, the researchers turned to a polymer called PEDOT:PSS, which swells when it absorbs water. The team used electron-beam lithography—a technology typically used to etch patterns into computer chips—to control how much different areas of the polymer swell when exposed to liquid.
The team covered one layer of the polymer in a single layer of gold to create textures that switch between a shiny and matte appearance. They then sandwiched another layer of the polymer between two layers of gold, creating an optical cavity that could be used to generate a wide variety of colors as the distance between the gold sheets changes.
The researchers can create four distinct visual states—texture combined with a color pattern, texture only, color only, and no texture or color pattern—by exposing each side of the skin to either water or isopropyl alcohol. The system switches between states in about 20 seconds, and the process is fully reversible.
“By dynamically controlling the thickness and topography of a polymer film, you can realize a very large variety of beautiful colors and textures,” Mark Brongersma, a senior author on the paper, said in a press release. “The introduction of soft materials that can expand, contract, and alter their shape opens up an entirely new toolbox in the world of optics to manipulate how things look.”
Applications could extend beyond camouflage the researchers say—for instance using texture changes to control whether small robots cling to or slide across surfaces or creating advanced displays for wearable devices or art projects.
The current need to apply water to control the appearance of the skin is “a huge limitation,” Debashis Chanda, a physicist at the University of Central Florida, told Nature. But the researchers told the Financial Times they plan to introduce digital control systems to future versions of the skin.
They also hope to add computer vision algorithms to provide information about the surrounding environment the skin needs to blend in with. “We want to be able to control this with neural networks—basically an AI-based system—that could compare the skin and its background, then automatically modulate it to match in real time, without human intervention,” Doshi said in the press release.
While the research faces a long road from the lab bench to commercial reality, sci-fi style cloaking technology has taken a tiny step closer to reality.
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This Week’s Awesome Tech Stories From Around the Web (Through January 10)
Google Gemini Is Taking Control of Humanoid Robots on Auto Factory FloorsWill Knight | Wired ($)
“Google DeepMind is teaming up with Boston Dynamics to give its humanoid robots the intelligence required to navigate unfamiliar environments and identify and manipulate objects—precisely the kinds of capabilities needed to perform manual labor.”
Artificial IntelligenceDistinct AI Models Seem to Converge on How They Encode RealityBen Brubaker | Quanta Magazine
“Is the inside of a vision model at all like a language model? Researchers argue that as the models grow more powerful, they may be converging toward a singular ‘Platonic’ way to represent the world.”
BIOTECHNOLOGYFlu Is Relentless. CRISPR Might Be Able to Shut It Down.
David Cox | Wired ($)
“They believe CRISPR could be tailored to create a next-generation treatment for influenza, whether that’s the seasonal strains which plague both the northern and southern hemispheres on an annual basis or the worrisome new variants in birds and other wildlife that might trigger the next pandemic.”
ComputingNext-Level Quantum Computers Will Almost Be UsefulDina Genkina | IEEE Spectrum
“The machine that Microsoft and Atom Computing will be delivering, called Magne, will have 50 logical qubits, built from some 1,200 physical qubits, and should be operational by the start of 2027. QuEra’s machine at AIST has around 37 logical qubits (depending on implementation) and 260 physical qubits, Boger says.”
ARTIFICIAL INTELLIGENCEAI Coding Assistants Are Getting Worse
Jamie Twiss | IEEE Spectrum
“In recent months, I’ve noticed a troubling trend with AI coding assistants. After two years of steady improvements, over the course of 2025, most of the core models reached a quality plateau, and more recently, seem to be in decline. A task that might have taken five hours assisted by AI, and perhaps ten hours without it, is now more commonly taking seven or eight hours, or even longer.”
ENERGYMeta Unveils Sweeping Nuclear-Power Plan to Fuel Its AI Ambitions
Jennifer Hiller | The Wall Street Journal ($)
“Meta Platforms on Friday unveiled a series of agreements that would make it an anchor customer for new and existing nuclear power in the US, where it needs city-size amounts of electricity for its artificial-intelligence data centers. …Financial details weren’t disclosed, but the arrangements are among the most sweeping and ambitious so far between tech companies and nuclear-power providers.”
RoboticsEven the Companies Making Humanoid Robots Think They’re OverhypedSean McLain | The Wall Street Journal ($)
“Billions of dollars are flowing into humanoid robot startups, as investors bet that the industry will soon put humanlike machines in warehouses, factories and our living rooms. For all the recent advances in the field, humanoid robots, they say, have been overhyped and face daunting technical challenges before they move from science experiments to a replacement for human workers.”
SPACEFormer Google CEO Plans to Singlehandedly Fund a Hubble Telescope Replacement
Eric Berger | Ars Technica
“On Wednesday evening, former Google CEO Eric Schmidt and his wife, Wendy, announced a major investment in not just one telescope project, but four. Each of these new telescopes brings a novel capability online; however, the most intriguing new instrument is a space-based telescope named Lazuli. This spacecraft, if successfully launched and deployed, would offer astronomers a more capable and modern version of the Hubble Space Telescope, which is now three decades old.”
RoboticsUber’s Not Done With Self-Driving Cars Just Yet. It’s Designing a New Robotaxi With Lucid and NuroSasha Lekach | Gizmodo
“The companies said that on-road testing [in San Francisco] started at the end of last year, which isn’t surprising as Nuro already holds driverless testing permits through the California DMV. Eventually, the trio plan to offer the Level 4 robotaxi prototype everywhere Uber has a presence—if all goes well, that is.”
RoboticsKawasaki’s Four-Legged Robot-Horse Vehicle Is Going Into ProductionBronwyn Thompson | New Atlas
“What was announced as a 2050 pipe dream by Kawasaki, the company’s hydrogen-powered, four-hooved, all-terrain robot horse vehicle Corleo is actually going into production and is now expected to be commercially available decades earlier—with the first model to debut in just four years.”
SpaceNASA’s Science Budget Won’t Be a Train Wreck After AllEric Berger | Ars Technica
“On Monday, Congress made good on…promises [to fund most of NASA’s science portfolio], releasing a $24.4 billion budget plan for NASA as part of the conferencing process, when House and Senate lawmakers convene to hammer out a final budget. The result is a budget that calls for just a 1 percent cut in NASA’s science funding, to $7.25 billion, for fiscal year 2026.”
Artificial IntelligenceAI Is Being Used to Find Valuable Commodities in Our TrashRyan Dezember | The Wall Street Journal ($)
“Murphy Road executives say the technology allows them to sort up to 60 tons an hour of curbside recycling from around Connecticut and western Massachusetts into precisely sorted bales of paper, plastic, aluminum cans, and other materials. The material is sold to mills, manufacturers, and remelt facilities, which pay more for cleaner bales.”
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What If We’re All Martians? The Intriguing Idea That Life on Earth Began on the Red Planet
There’s a case to be made that Earth’s life arrived on meteorites from Mars. Here’s the evidence for and against.
How did life begin on Earth? While scientists have theories, they don’t yet fully understand the precise chemical steps that led to biology or when the first primitive life forms appeared.
But what if Earth’s life did not originate here, instead arriving on meteorites from Mars? It’s not the most favored theory for life’s origins, but it remains an intriguing hypothesis. Here, we’ll examine the evidence for and against.
Timing is a key factor. Mars formed around 4.6 billion years ago, while Earth is slightly younger at 4.54 billion years old. The surfaces of both planets were initially molten, before gradually cooling and hardening.
Life could, in theory, have arisen independently on both Earth and Mars shortly after formation. While the surface of Mars today is probably uninhabitable for life as we know it, early Mars probably had similar conditions to the early Earth.
Early Mars seems to have had a protective atmosphere and liquid water in the form of oceans, rivers, and lakes. It may also have been geothermally active, with plenty of hydrothermal vents and hot springs to provide the necessary conditions for the emergence of life.
However, about 4.51 billion years ago, a Mars-sized, rocky planet called Theia crashed into the proto-Earth. This impact caused both bodies to melt together and then separate into our Earth and its moon. If life had begun before this event, it certainly would not have survived it.
Mars, on the other hand, probably didn’t experience a global remelting event. The red planet had its fair share of impacts in the violent early solar system, but evidence suggests that none of these would have been large enough to completely destroy the planet—and some areas could have remained relatively stable.
So if life arose on Mars shortly after formation of the planet 4.6 billion years ago, it could have continued evolving without major interruptions for at least half a billion years. After this time, Mars’ magnetic field collapsed, marking the beginning of the end for Martian habitability. The protective atmosphere disappeared, leaving the planet’s surface exposed to freezing temperatures and ionizing radiation from space.
A Question of TimingBut what of Earth: How soon did life appear after the impact that formed the moon? Tracing the tree of life back to its root leads to a microorganism called Luca—the last universal common ancestor. This is the microbial species from which all life today is descended. A recent study reconstructed Luca’s characteristics using genetics and the fossil record of early life on Earth. It inferred that Luca lived 4.2 billion years ago—earlier than some previous estimates.
Luca was not the earliest organism on Earth, but one of multiple species of microbe existing in tandem on our planet at this time. They were competing, cooperating, and surviving the elements, as well as fending off attacks from viruses.
If small but fairly complex ecosystems were present on Earth around 4.2 billion years ago, life must have originated earlier. But how much earlier? The new estimate for the age of Luca is 360 million years after the formation of the Earth and 290 million years after the moon-forming impact. All we know is that in these 290 million years, chemistry somehow became biology. Was this enough time for life to originate on Earth and then diversify into the ecosystems present when Luca was alive?
Luca’s habitat was either a shallow marine hydrothermal vent system or a geothermal hot spring, like this spectacular example in Yellowstone, US. Image Credit: NPS/Diane RenkinA Martian origin for terrestrial life circumvents this question. According to the hypothesis, species of Martian microorganism could have traveled to Earth on meteorites just in time to take advantage of the clement conditions following the moon’s formation.
The timing may be convenient for this idea. However, as someone who works in the field, my hunch would be that 290 million years is plenty of time for chemical reactions to produce the first living organisms on Earth and for biology to subsequently diversify and become more complex.
Surviving the JourneyLuca’s reconstructed genome suggests that it could live off molecular hydrogen or simple organic molecules as food sources. Along with other evidence, this suggests that Luca’s habitat was either a shallow marine hydrothermal vent system or a geothermal hot spring. Current thought in the origin of life field is that these kinds of environments on the early Earth had the necessary conditions for life to emerge from non-living chemistry.
Luca also contained biochemical machinery that could protect it from high temperatures and UV radiation—real dangers in these early Earth environments.
However, it’s far from certain that early life forms could have survived the journey from Mars to Earth. And there’s nothing in Luca’s genome to suggest that it was particularly well adapted to space flight.
In order to have made it to Earth, microorganisms would need to have survived the initial impact on Mars’ surface, a high-speed ejection from the Martian atmosphere, and travel through the vacuum of space while being bombarded by cosmic rays for at least the best part of a year.
They would then have needed to survive the high-temperature entry through Earth’s atmosphere and another impact onto the surface. This last event may or may not have deposited it in an environment to which it was even remotely adapted.
The chances of all of this seem pretty slim to me. However difficult the transition from chemistry to biology may appear, it seems far easier to me than the idea that this transition would occur on Mars, with life forms surviving the journey to Earth, and then adapting to a completely new planet. However, I could be wrong.
It’s useful to look at studies of whether microorganisms could survive the journey between planets. So far, it looks like only the hardiest microorganisms could survive the journey between Mars and Earth. These are species adapted to preventing damage from radiation and capable of surviving desiccation through the formation of spores.
But maybe, just maybe, if a population of microorganisms were trapped in the interior of a sufficiently large meteorite, they could be protected from most of the harsh conditions of space. Some computer simulations even support this idea. Further simulations and laboratory experiments to test this are ongoing.
This raises another question—if life made it from Mars to Earth within the first 500 million years of our solar system’s existence, why hasn’t it spread from Earth to the rest of the solar system in the following four billion years? Maybe we’re not the Martians after all.
This article is republished from The Conversation under a Creative Commons license. Read the original article.
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Aging Weakens Immunity. An mRNA Shot Turned Back the Clock in Mice.
The treatment converted the liver into an immune cell “nursery” that pumped out greater numbers of healthy T cells.
Our immune system is a fierce brigade. Roaming immune cells scan for bacteria, viruses, and other invaders. They also communicate with tissues to catch early signs of cancer. After detecting a threat, the immune system kickstarts formidable defenses to snuff it out.
But our immunity loses power as we age. Immune cells dwindle, and those that remain struggle to perform their usual roles. As a result, immune defenses weaken, increasing the chances of infection and cancer. This also makes vaccines less effective in older adults.
Now, a new treatment using mRNA technology similar to that in Covid vaccines rejuvenated the immune systems of old mice with twice-weekly shots. The injections transformed the liver into a temporary nursery to boost the numbers and health of key immune cells.
Treated mice, aged the human-equivalent of their early 60s, saw a rapid rise in multiple T cell types after vaccination. They also rallied against tumors with a popular cancer immunotherapy.
Resetting immunity isn’t just about defense. The immune system is intricately tied to the health of other organs. Chronic inflammation steadily rises as we age, wreaking havoc on memory, cognition, and metabolism. It also stiffens tissues in multiple organs, increasing the chances of heart attacks and kidney failure.
“If we can restore something essential like the immune system, hopefully we can help people stay free of disease for a longer span of their life,” study author Feng Zhang at MIT said in a press release.
T Cell Boot CampMultiple immune cell types protect our bodies, but T cells are one of the most prominent.
Some T cells seek and destroy virus-infected cells and cancer. Others coordinate immune responses and balance the attack to prevent autoimmune problems or runaway inflammation. Still more “remember” prior threats to trigger a faster immune response when re-exposed.
Despite their wide range, all T cells are born in the bone marrow. Baby T cells then journey to the thymus, a small organ sitting at the top of the heart, where they mature and diversify. In this nursery, the cells learn friend from foe, ensuring they’ll only attack legitimate threats while leaving healthy cells alone. The process is mostly coordinated by cocktails of proteins and other signaling molecules, which direct the fate of immature cells and help them survive.
The aging process gradually degrades the nursery. The thymus shrinks, and much of its working tissue is replaced by fat, leading to a drop in newly minted T cells.
“As we get older, the immune system begins to decline. We wanted to think about how can we maintain this kind of immune protection for a longer period of time, and that’s what led us to think about what we can do to boost immunity,” said study author Mirco Friedrich.
For years scientists have tried to revive the organ. Hormones and immune-related proteins have struggled to bring it back to health. More exotic approaches, such as infusing the blood of young animals, transplanting stem cells, or directly tinkering with blood stem cells have shown some promise but are hard to turn into clinical treatments.
“Much has already been attempted to halt or reverse the age-related involution of the thymus,” said Friedrich. “Unfortunately, without much success so far.”
Rather than reviving the struggling organ, the team built a new T cell nursery in another part of the body.
Temporary HotbedThey began by comprehensively mapping genetic changes in infant and elderly mice and deciphering how shifts in gene expression influenced T cell production.
The screen surfaced three genes that play a critical role in T cell maturation. The proteins those genes produce fall with age, correlating with lower T cell numbers. Refreshing the proteins could, in theory, reboot immune cell production.
This “is more of a synthetic approach,” said Zhang. “We’re engineering the body to mimic thymic factor secretion.”
They decided on the liver as a temporary nursery for several reasons. The organ faithfully synthesizes proteins even into old age, and it’s a relatively easy target for mRNA treatments.
The team packaged mRNA encoding the three nurturing proteins into fatty nanoparticles and injected them into mice’s blood twice weekly for a month, beginning when the mice were aged the rough equivalent of people in their 60s. While far from elderly, T cell defects are noticeable around this age, and the cells could benefit from early intervention.
Compared to untreated peers, those given the shots produced more, healthier T cells. The treatment also boosted the critters’ immunity. In one test, mice vaccinated against ovalbumin, a major protein in egg whites, had a far stronger immune response against the protein compared to peers without the mRNA treatment.
The shots also helped the mice’s laggy immune systems better coordinate with checkpoint inhibitors, a common cancer medication. Mice with cancer given both treatments survived longer and at higher rates than those given only the inhibitors. More tests found all three protein-encoding mRNA sequences were needed to rejuvenate the immune system.
To be clear, this isn’t a one-and-done shot. The effects wane after treatment ends. While it seems like an inconvenience, the flexibility allows scientists to further tinker with dosage and treatment schedule and minimize side effects. More broadly, the study shows restoring the thymus isn’t necessary for turning back the clock on the immune system. Mimicking its signals in other parts of the body could also help T cells thrive, even in old age.
These are early results, and more tests are needed before bringing the therapy to people. The team plans to study the mRNA trio in other animals and hunt down more proteins that nurture T cells. They’re also looking to expand the strategy to other immune cell types, like the B cells that pump out antibodies.
“The immune system ages, but it does not irreversibly lose its abilities. If we provide it with the missing signals again, it can once more perform amazing feats,” said Friedrich.
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Refreshing the Brain’s Immune Cells Could Treat a Host of Diseases
This year saw the meteoric rise of a promising new therapy for brain health.
Microglia are the silent guardians of the brain. They hunt down pathogens, clean up toxic protein clumps, and even shape the brain’s wiring. They’re also robust. Neurons can’t divide to generate new copies of themselves. But microglia can renew, especially during inflammation, stroke, or diseases that erode cognition.
And yet this regenerative ability has a limit, especially when the cells harbor genetic mutations. One solution? Replace diseased or injured cells with a fresh supply.
This year saw a meteoric rise in microglia replacement therapy, with clinical trials highlighting its brain-protecting potential. Refreshing microglia could, in theory, boost their beneficial effects.
Tinkering with the brain’s complex immune system isn’t straightforward, but “microglia replacement has emerged as a groundbreaking paradigm,” wrote Bo Peng and colleagues at Fudan University. The therapy could tackle a range of conditions from rare genetic diseases to more familiar foes such as Alzheimer’s.
Tough NutMicroglia are odd ducks. Like other immune cells that patrol the body, they usually start out as blood stem cells in bone marrow before migrating to the brain. Once settled, they stay at their post, exclusively protecting the brain.
The cells are usually shaped like shrubs in need of a haircut. But once activated, they shrink into puff balls and recruit other brain cells to fight off invaders and prevent brain damage.
Microglia also reconfigure the brain’s wiring. They prune extra synapses—connection points that allow neurons to talk to each other—and pump out nutritious molecules to support established neural networks and encourage baby neurons to grow.
It’s no wonder that when microglia go awry so does the brain. This happens in Alzheimer’s, other neurodegenerative diseases, and even just as we age. But more commonly, it’s because of genetic mutations in the cells.
Gene therapy is seemingly the best way to fix these problems. But microglia are notoriously terrible candidates. A gene therapy is usually shuttled into cells within safe viral carriers or tiny bubbles of fat. Few of these can enter the brain’s immune cells. Microglia-specific carriers exist, but they need to be injected directly into the brain. Complications from surgery aside, injected cells only reach a small area—hardly enough to make a notable difference.
Microglia replacement gets around this roadblock. Replacing mutated or aged cells with a healthy supply could correct genetic problems and “replenish populations lost to degeneration, inflammation, or developmental failure,” wrote Peng and colleagues.
A Harrowing SwapTransplanting healthy donor microglia directly into the brain is nearly impossible because existing microglia often turn against the new arrivals. But because microglia start life as blood stem cells, a bone marrow transplant from a healthy, matching donor is a viable alternative. Once mature, the cells journey to the brain, where they divide and thrive.
The first and most taxing step of a bone marrow transplant is making space for the new cells. This requires extensive radiation or chemotherapy, but often without direct treatment to the head. The step also destroys the recipient’s immune system, leaving them vulnerable to infections and at higher risk for cancer.
Unfortunately, the standard treatment doesn’t work for microglia replacement, largely because diseased microglia still living in the brain leave little room for healthy new cells to settle.
But in 2020, Peng’s team developed a drug that depleted microglia in the brains of mice, making room for healthy cells. Then this July, Peng and colleagues successfully used a bone marrow transplant to treat a fatal brain disease called CAMP (CSF1R-associated microgliopathy). Here, mutations in a gene critical to microglia survival destroys the cells’ health, causing the brain’s wiring to physically disintegrate over time. Within a few years, people with the condition struggle with everyday reasoning, motor skills, and often fall into depression.
In mice and eight people in a small clinical trial with the disease, the treatment halted their decline for at least two years without notable side effects.
Researchers have also seen early success in other conditions.
Sandhoff disease is one that stands out. People with this inherited condition can’t break down certain fats, which leads to neuron death. The disease is partly caused by miscommunication between microglia and neurons. Normally, microglia shuttle an enzyme to neurons that helps recycle the fatty molecules. Mutated microglia can’t do this. In mice, bone marrow transplants of cells without the mutation improved the mice’s mobility, survival, and brain health.
Another study tackling Sandhoff disease used a different, more daring method. The team isolated the young cells that eventually become microglia and grew them in petri dishes.
After radiation therapy in mice, targeted to their heads, the team infused the healthy lab-grown microglia into the mice’s brains. The cells made themselves at home and worked as normal. The treatment avoided full-body radiation and damage to other organs but the approach could also kill off stem cells that generate new neurons in the brain and so may be limited in its efficacy.
Immune rejection also poses a major stumbling block. But induced pluripotent stem cells (iPSCs), where a person’s skin cells are reprogrammed into other cell types, may reduce the risk. In a proof of concept also in mice, microglia made from iPSCs replaced damaged microglia and slowed neurodegeneration by gobbling up toxic proteins related to Alzheimer’s.
Physicians will need to study the long-term consequences of head-only radiation, and test microglia replacement in a wider range of diseases. If all goes well though, the versatile cells could be used to even ferry medications into the brain like Trojan horses.
In just five years, microglia replacement has gone from animal studies to the first clinical treatment. Once a niche moonshot, it’s now “a topic of great interest in neuroscience and cell therapy,” wrote the team. While there’s plenty more work to do, the therapy could “mature from early breakthroughs into a generalizable platform across neurological diseases.”
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Your ChatGPT Habit Could Depend on Nuclear Power
US nuclear capacity is forecast to rise 63 percent in the coming decades thanks largely to data-center demand.
Nuclear energy has had a tough few decades, bedeviled by high costs and waning public support. But AI’s appetite for electricity could be a shot in the arm for the beleaguered industry.
AI’s energy demands are rising quickly, with global data center electricity use expected to double by the end of the decade. And nuclear power’s ability to provide large amounts of emission-free baseload power is hugely attractive for AI firms trying to balance their energy needs against climate commitments.
Google, Amazon, Meta, and major data center operators are signing power-purchase agreements with existing reactors, investing in the development of advanced small-modular reactors, and even helping restart shuttered nuclear plants.
This is a significant turnaround for a sector that has long been struggling to compete with cheap natural gas and rapidly falling renewable energy prices. But if the AI industry’s energy demands continue to grow as expected, the nuclear energy industry could be one of the big winners.
The most immediate impact of this trend could be to extend the lives of existing plants. In June, Meta inked a long-term contract with the utility Constellation Energy to keep its Clinton Clean Energy Center in Illinois operating for a further 20 years, after the plant faced closure due to the upcoming expiry of a credit program for low-emission energy producers.
Constellation says more deals could soon be coming. “We’re definitely having conversations with other clients, not just in Illinois, but really across the country, to step in and do what Meta has done, which is essentially give us a backstop so that we could make the investments needed to re-license these assets and keep them operating,” CEO Joe Dominguez told Reuters.
But demand for nuclear power is so acute that technology companies are also looking to bring already shuttered plants back online. Constellation closed a reactor at its Three Mile Island site in 2019 for economic reasons, but Microsoft has since stepped in to bring it back to life. Last September, the company agreed to a 20-year power purchase agreement to fuel its data centers, giving Constellation the certainty required to restart the reactor.
And Google appears to be following suit. In October, the company announced it was partnering with the utility NextEra Energy to bring back to life the Duane Arnold Energy Center, which closed in 2020. The company has committed to buying power from the facility for the next 25 years, and it could be back up and running by 2029.
But perhaps the biggest impact of Silicon Valley’s new love of nuclear could be a boom in investment in fresh nuclear capacity. Given how long it takes to build and commission nuclear plants, it may be a while before that impact is felt, but this could boost long-term confidence in the sector.
Last December, Meta announced it was seeking proposals from nuclear developers to help meet its energy demands. The company said that it was looking for 1 to 4 gigawatts of new capacity starting in the early 2030s, and that it was open to proposals to build either regular nuclear reactors or small modular reactors—an emerging class of advanced reactors that have yet to be commercialized.
These small reactors have caught the attention of technology giants due to their potential for lower costs and fast deployment. And they typically produce less than a third of the output of a regular nuclear reactor, which makes them suitable for powering smaller facilities. But their modular design means they can also be combined to create higher capacity plants.
Google has agreed to purchase power from Kairos Power, which is developing a fluoride-salt-cooled small modular reactors, becoming the first company to sign a commercial contract with the startup. The agreement covers six or seven reactors, with the first unit targeted for 2030 and the rest by 2035, supplying Google data centers with up to 500 megawatts of nuclear power.
In a similar vein, Amazon has agreed to buy electricity from four small modular reactor modules under development by X-Energy in Washington State, with the option to buy up to eight additional modules once they’re built. The data center operator Equinix has also placed a preorder for 20 transportable microreactors from California-based Radiant Nuclear.
A recent Bloomberg Intelligence report forecasts that US nuclear capacity could rise 63 percent by 2050 thanks in large part to demand from data centers. This would represent a net gain of 61 gigawatts in generation, most of which would come after 2035 when small modular reactors are expected to transition from demonstration projects to scalable commercial deployment.
Whether this comes to fruition will depend largely on whether big tech’s energy demands continue to balloon. There is mounting concern the industry is in an AI bubble primed to burst at any minute, which could put a major dampener on the nuclear resurgence.
But for the time being at least, the industry’s future is looking considerably rosier than it was a decade ago.
The post Your ChatGPT Habit Could Depend on Nuclear Power appeared first on SingularityHub.
Time Doesn’t Really Flow—Your Brain Just Makes You Think It Does
The passage of time is inextricably tied to how humans perceive our own experiences. We confuse our perspective on reality with reality itself.
“Time flies,” “time waits for no one,” “as time goes on”: The way we speak about time tends to strongly imply that the passage of time is some sort of real process that happens out there in the world. We inhabit the present moment and move through time, even as events come and go, fading into the past.
But go ahead and try to actually verbalize just what is meant by the flow or passage of time. A flow of what? Rivers flow because water is in motion. What does it mean to say that time flows?
Events are more like happenings than things, yet we talk as though they have ever-changing locations in the future, present, or past. But if some events are future, and moving toward you, and some past, moving away, then where are they? The future and past don’t seem to have any physical location.
Human beings have been thinking about time for as long as we have records of humans thinking about anything at all. The concept of time inescapably permeates every single thought you have about yourself and the world around you. That’s why, as a philosopher, philosophical and scientific developments in our understanding of time have always seemed especially important to me.
Ancient Philosophers on Time Parmenides of Elea was an early Greek philosopher who thought about the passage of time. Sergio Spolti/Wikimedia Commons, CC BY-SAAncient philosophers were very suspicious about the whole idea of time and change. Parmenides of Elea was a Greek philosopher of the sixth to fifth centuries BCE. Parmenides wondered, if the future is not yet and the past is not anymore, how could events pass from future to present to past?
He reasoned that, if the future is real, then it is real now; and, if what is real now is only what is present, the future is not real. So, if the future is not real, then the occurrence of any present event is a case of something inexplicably coming from nothing.
Parmenides wasn’t the only skeptic about time. Similar reasoning regarding contradictions inherent in the way we talk about time appears in Aristotle, in the ancient Hindu school known as the Advaita Vedanta, and in the work of Augustine of Hippo, also known as St. Augustine, just to name a few.
Einstein and RelativityThe early modern physicist Isaac Newton had presumed an unperceived yet real flow of time. To Newton, time is a dynamic physical phenomenon that exists in the background, a regular, ticking universe-clock in terms of which one can objectively describe all motions and accelerations.
Then, Albert Einstein came along.
In 1905 and 1915, Einstein proposed his special and general theories of relativity, respectively. These theories validated all those long-running suspicions about the very concept of time and change.
Relativity rejects Newton’s notion about time as a universal physical phenomenon.
By Einstein’s era, researchers had shown that the speed of light is a constant, regardless of the velocity of the source. To take this fact seriously, he argued, is to take all object velocities to be relative.
Nothing is ever really at rest or really in motion; it all depends on your “frame of reference.” A frame of reference determines the spatial and temporal coordinates a given observer will assign to objects and events, on the assumption that he or she is at rest relative to everything else.
Someone floating in space sees a spaceship going by to the right. But the universe itself is completely neutral on whether the observer is at rest and the ship is moving to the right, or if the ship is at rest with the observer moving to the left.
This notion affects our understanding of what clocks actually do. Because the speed of light is a constant, two observers moving relative to each other will assign different times to different events.
In a famous example, two equidistant lightning strikes occur simultaneously for an observer at a train station who can see both at once. An observer on the train, moving toward one lightning strike and away from the other, will assign different times to the strikes. This is because one observer is moving away from the light coming from one strike and toward the light coming from the other. The other observer is stationary relative to the lightning strikes, so the respective light from each reaches him at the same time. Neither is right or wrong.
In a famous example of relativity, observers assign different times to two lightning strikes happening simultaneously.How much time elapses between events, and what time something happens, depends on the observer’s frame of reference. Observers moving relative to each other will, at any given moment, disagree on what events are happening now; events that are happening now according to one observer’s reckoning at any given moment will lie in the future for another observer, and so on.
Under relativity, all times are equally real. Everything that has ever happened or ever will happen is happening now for a hypothetical observer. There are no events that are either merely potential or a mere memory. There is no single, absolute, universal present, and thus there is no flow of time as events supposedly “become” present.
Change just means that the situation is different at different times. At any moment, I remember certain things. At later moments, I remember more. That’s all there is to the passage of time. This doctrine, widely accepted today among both physicists and philosophers, is known as “eternalism.”
This brings us to a pivotal question: If there is no such thing as the passage of time, why does everyone seem to think that there is?
Time as a Psychological ProjectionOne common option has been to suggest that the passage of time is an “illusion”—exactly as Einstein famously described it at one point.
Calling the passage of time “illusory” misleadingly suggests that our belief in the passage of time is a result of misperception, as though it were some sort of optical illusion. But I think it’s more accurate to think of this belief as resulting from misconception.
As I propose in my book A Brief History of the Philosophy of Time, our sense of the passage of time is an example of psychological projection—a type of cognitive error that involves misconceiving the nature of your own experience.
The classic example is color. A red rose is not really red, per se. Rather, the rose reflects light at a certain wavelength, and a visual experience of this wavelength may give rise to a feeling of redness. My point is that the rose is neither really red nor does it convey the illusion of redness.
The red visual experience is just a matter of how we process objectively true facts about the rose. It’s not a mistake to identify a rose by its redness; the rose enthusiast isn’t making a deep claim about the nature of color itself.
Similarly, my research suggests that the passage of time is neither real nor an illusion: It’s a projection based on how people make sense of the world. I can’t really describe the world without the passage of time any more than I can describe my visual experience of the world without referencing the color of objects.
I can say that my GPS “thinks” I took a wrong turn without really committing myself to my GPS being a conscious, thinking being. My GPS has no mind, and thus no mental map of the world, yet I am not wrong in understanding its output as a valid representation of my location and my destination.
Similarly, even though physics leaves no room for the dynamic passage of time, time is effectively dynamic to me as far as my experience of the world is concerned.
The passage of time is inextricably bound up with how humans represent our own experiences. Our picture of the world is inseparable from the conditions under which we, as perceivers and thinkers, experience and understand the world. Any description of reality we come up with will unavoidably be infused with our perspective. The error lies in confusing our perspective on reality with reality itself.
This article is republished from The Conversation under a Creative Commons license. Read the original article.
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AI Can Now Design Proteins and DNA. Scientists Warn We Need Biosecurity Rules Before It’s Too Late.
The time to build safeguards is before something goes wrong, not after.
Generative AI is biology’s new playground. The technology powering popular chatbots can also dream up new, entirely novel versions of life’s most basic molecules, from DNA to proteins.
Once the domain of highly trained specialists, relative novices can now design synthetic molecules using open source AI software. But ease of access is a double-edged sword. While lower barriers to entry might spur creativity or even yield new medicines, the technology could also be used for nefarious purposes, such as designing novel toxins.
In 2024, two experts wrote an essay highlighting the need for biosecurity in the field. One of them, David Baker at the University of Washington, earned a Nobel Prize for RoseTTAFold, an AI that predicts protein structures from their amino acid building blocks. The other, Harvard’s George Church, has long been at the forefront of genetic engineering and synthetic biology.
They argued we should embed a barcode into each new designer protein’s genetic sequence to form an audit trail that scientists can trace back to the protein’s origins.
But a genetic tracer alone isn’t enough. A Microsoft study found AI-designed genetic sequences often escape the biosecurity screening software used by companies synthesizing designer DNA. AI-generated proteins with alien DNA sequences confuse these programs. Anything with genetic bits previously labeled “safe” flies under the radar, even if it encodes a dangerous final product.
These early studies are raising awareness. They’re not meant to stymie progress or enthusiasm—scientists welcome ideas for self-regulation. But for AI-powered designer biology to grow responsibly and be used for good, argue Church and other experts in a new preprint, the right time to build comprehensive biosecurity is before something goes wrong, not after.
The Dual Use DilemmaFrom individual proteins to DNA, RNA, and even entire cells and tissues, AI is now learning the language of biology and designing new building blocks from scratch.
These powerful AI systems don’t simply recognize patterns. They eventually generalize those learnings across biology to analyze and dream up hordes of molecules at a prompt. RFdiffusion2 and PocketGen, for example, can design proteins at the atomic level with specific health-altering purposes, like sparking biological reactions or binding to drugs.
Generative AI is also beginning to read and write RNA. Like DNA, RNA is composed of four genetic letters, but RNA treatments don’t mess with the genetic blueprint. This makes them an exciting way to tackle disease. Unfortunately, they’re hard to design. RNA folds into intricate 3D shapes that are often difficult to predict using older software.
“Generative AI models are uniquely suited” for the job of capturing these intricacies, which could bolster the field of RNA therapeutics, wrote the team.
But the same AI galvanizing the field can also be used to create dangerous biological material. A person intent on jailbreaking an algorithm can, for example, repeatedly write prompts a generative AI system would normally refuse but is tricked into answering through repetition.
The dangers aren’t theoretical. A recent study compiled a dataset of toxic and disease-causing proteins and challenged multiple popular AI protein design models to create new variants. Many of the generated proteins retained their toxicity and evaded biosecurity software. In another case, scientists developed a method to test algorithmic security called SafeProtein. They managed to jailbreak advanced protein-design models 70 percent of the time.
Beyond proteins, researchers developing a framework called GeneBreaker found carefully tailored prompts can coax AI to spit out DNA or RNA sequences resembling viruses, such as HIV. Another team produced 16 viable genomes for bacteria that infect viruses, known as bacteriophages. Some of the resulting phages outcompeted their natural peers.
Even drug discovery tools can be flipped to the dark side. In one case, researchers easily reconfigured an AI model trained to find antiviral molecules. Within hours the AI suggested a known nerve toxin as a potential drug candidate.
“This demonstrates how even well-intentioned AI models can be rapidly misused to design toxins, especially when safety constraints are absent,” wrote the team.
Embedded SafetyTo address these risks, the authors argue we need rigorous frameworks and regulations at every step of the process.
Scientists are leading the charge, and governments are on board. Last year, the UK released guidance for gene synthesis screening that urges providers of DNA and RNA molecules to vet their customers and increase screening for potentially dangerous sequences. The US launched similar rules and included biosecurity in its AI Action Plan.
Meanwhile, the tech giants behind AI models in biology are echoing calls for broader oversight. Some have pledged to exclude all viral sequences that are potentially dangerous to humans from their training databases. Others have committed to rigorous screening for new designs.
These safeguards, although welcome, are fragmented.
To gain a broader picture of the biosecurity landscape, the new study interviewed 130 experts across industry, government, academia, and policy. They agreed on several themes. Most think AI misuse is an urgent concern in biology and advocate for clearer regulatory standards. Roughly half were highly skeptical of current screening systems, and a majority supported upgrades.
The authors wrote that securing generative AI for biology isn’t about “finding a single solution.”
“Instead, it requires building a fortress with multiple layers of defense, each designed to anticipate, withstand, and adapt to threats.”
They designed a roadmap based on that principle. The strategy’s primary defenses target three stages in the AI life cycle. The first step is about controlling who can access training data and different AI versions. The next would add moral training that fine-tunes AI output. And finally, “live fire drills” to stress test models could reveal ways the AI could go sideways.
For example, algorithms trained on viral genomes are useful for drug or vaccine development. But they would be restricted. Users would have to apply for access and log usage. This is similar to how scientists must record the use of controlled narcotics in research. A tiered access system would allow others to use a version of the tool trained on data without dangerous content.
Meanwhile, strategies used to ensure chatbots (mostly) behave could also keep biology-focused AI in check. Moral training would guide a model’s output such that it aims to match public health and biosecurity standards. Stress testing to pinpoint a model’s vulnerabilities, known as red-teaming, would simulate misuse scenarios and inform countermeasures. Finally, biosecurity systems won’t work in a vacuum. Increasingly sophisticated AI could benefit from greater biological or general context, in turn improving its ability to detect and raise red flags.
“An effective biosafety system is not a firewall, it is a living guardian,” wrote the team.
Awareness is only the first part of the story. Action is the next. Although a unified vision of AI biosecurity doesn’t yet exist, the team calls on the field to collectively stitch one together.
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Kids With Spinal Muscular Atrophy Show Dramatic Improvement With FDA-Approved Gene Therapy
Once only available for children under two, a one-and-done treatment is now approved for older kids too.
Waking up, hopping out of the bed, and stumbling to the kitchen for a cup of coffee: It’s an everyday routine most people don’t think twice about.
But for children with spinal muscular atrophy, simply propping themselves up in bed is an everyday struggle. The inherited disease is caused by mutations in the SMN1 gene. Without a working copy of the gene, motor neurons—cells that control muscles—rapidly wither.
Symptoms occur early in life. In the most severe cases, six-month-old babies can’t sit up without help. Others struggle to crawl or walk. The disease doesn’t affect learning and other cognitive abilities. Babies with the condition soak in their surroundings, and their brains develop normally. All the while, the disease cruelly destroys their bodies.
Left untreated, muscle weakness expands to the lungs, potentially causing deadly breathing problems. If there’s a silver lining, it’s that the disease has a clear genetic foe to target. Thanks to gene therapy, three treatments, approved by the FDA, can halt the disease in its tracks—if a patient is under two years old.
There’s a reason for the age limit. After two, the disease has already damaged motor neurons to such a degree that the therapy is no longer helpful.
Not so fast, two international teams of physicians and scientists wrote in December.
The teams published highly promising results from separate trials testing an experimental gene therapy, called Itvisma, in kids between 2 and 18 years of age. The new therapy is based on a previously approved version made by the drug company Novartis. Both have the same gene-correcting ingredient but are administered differently. The original relies on a shot into the bloodstream. Itvisma is delivered directly into the spinal cord.
The two recent trials brought significant improvement in participants’ ability to move over the course of a year. From not being able to walk, treated kids were able to roll into a sitting position from lying down and climb stairs, compared to children who did not receive treatment.
The results “demonstrate clinical benefits across a broad…population with a wide range of ages and baseline motor functions,” wrote Richard Finkel at St. Jude Children’s Research Hospital and team, on behalf of a broader STEER Study Group that conducted one of the trials.
The FDA agreed. In late November, the agency approved Itvisma for the disease, making it the only gene replacement therapy for people two years and older on the market.
“This achievement is not only a significant step forward for SMA [spinal muscular atrophy]–it also signals new possibilities for the broader field of neurological disorders and genetic medicine,” said John Day at the Stanford University School of Medicine in a Novartis press release.
Transformative ShotLike its predecessor, Itvisma uses a harmless virus to carry a healthy version of the SMN1 gene into the body. The virus shuttles its cargo into cells but doesn’t tunnel into the genome. This makes it relatively safe, as it doesn’t raise the risk of unintended vandalism to the cell’s native DNA.
The previous therapy was a one-and-done shot into the bloodstream. The virus hitched a ride to motor neurons and restored their connection to muscle fibers. The liver and heart also received an unintentional dose, which could potentially cause side effects. Researchers carefully monitored children given the therapy for liver problems. These were relatively mild and easily treated.
The results were dramatic. Most treated infants were able to sit up, roll around in their cribs, and some could even crawl. But the treatment was only approved for children aged two years or younger.
Two problems hampered its broader use. One was timing: The disease rapidly eats away at motor neurons, causing long-term damage that’s difficult to restore. The other was safety. Gene therapies injected into blood are tailored to the recipient’s body weight—the higher the weight, the larger the required dose. Higher doses raise the risk of dangerous side effects, potentially causing the immune system to hyperactivate or cause damage to the liver.
For a toddler or teenager, the risk-benefit calculation didn’t work in the gene therapy’s favor.
Never Too LateItvisma took an audaciously different approach by injecting the gene therapy directly into the fluid surrounding the spinal cord.
The procedure is much more invasive than a standard shot, but has a unique edge. Gene therapies delivered in this way don’t depend on body weight. Rather, their effectiveness can be carefully calibrated in a single off-the-shelf dose for anyone with the disease—toddlers, teenagers, or even adults. And because the therapy mostly circulates in liquids surrounding the spinal cord and brain, it rarely reaches other organs to cause unexpected mayhem.
Two clinical trials validated the daring new strategy.
One trial, STRENGTH, recruited 27 participants with the disease between the ages of 2 and nearly 18. The main goal was to test the treatment’s safety. The trial was single-armed, meaning that all participants received the gene therapy without a control group.
Overall, Itvisma was found to be safe. Some participants experienced cold-like symptoms, such as a runny nose and a sore throat. Others reported temporary headaches and stomach discomfort. A few suffered more severe problems, like a temporary spike in liver toxicity, fever, and motor neuron problems, which eventually went away.
Giving all participants a working treatment can lead to placebo effects. So, a second trial, STEER, followed the “gold standard” of clinical trials: double-blind, randomized, and placebo-controlled. The trial recruited 126 participants from 14 countries but separated them into two groups. One received the gene therapy; the other went through the same injection procedure but without the treatment. Neither the patients, their families, nor their doctors knew who got an active dose.
A year later, patients given the gene therapy could stand up from sitting on the couch, and some climbed stairs without support. Those who didn’t receive the treatment fared far worse. Once the trial was unblinded—in that both patients and doctors knew who received what treatment—the control participants also got a dose of the gene therapy.
Results from both studies prompted the FDA to approve Itvisma for people older than two.
The “approval shows the power of gene therapies and offers treatment to patients across the…disease spectrum” including various ages, symptoms, and motor function levels, said Vinay Prasad, the FDA’s chief medical and scientific officer in an announcement.
Itvisma is the latest in a burgeoning field of one-and-done gene therapies this year. From tackling a devastating genetic disease that torpedoes normal metabolism to broadening gene editors for rare inherited diseases and slashing cholesterol to protect heart health, gene therapy is finally tackling diseases once deemed unsolvable. The momentum is only building.
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These Were Our Favorite Tech Stories From Around the Web in 2025
Large Language Models Are Improving ExponentiallyGlenn Zorpette | IEEE Spectrum
“According to a metric [METR] devised, the capabilities of key LLMs are doubling every seven months. This realization leads to a second conclusion, equally stunning: By 2030, the most advanced LLMs should be able to complete, with 50 percent reliability, a software-based task that takes humans a full month of 40-hour workweeks. And the LLMs would likely be able to do many of these tasks much more quickly than humans, taking only days, or even just hours.”
There Is Only One AI Company. Welcome to the BlobSteven Levy | Wired ($)
“Even the most panicked Cassandra of a decade ago likely didn’t imagine that advanced AI would be controlled by a single, interlocking, money-seeking behemoth. …This rococo collection of partnerships, mergers, funding arrangements, government initiatives, and strategic investments links the fate of virtually every big player in the AI-o-sphere. I call this entity the Blob.”
The Next Revolution in Biology Isn’t Reading Life’s Code—It’s Writing ItAndrew Hessel | Big Think
“Andrew Hessel, cofounder of the Human Genome Project–write, argues that genome writing is humanity’s next great moonshot, outlining how DNA synthesis could transform biology, medicine, and industry. He calls for global cooperation to ensure that humanity’s new power to create life is used wisely and for the common good.”
Should We Intervene in Evolution? The Ethics of ‘Editing’ NatureDavid Farrier | Aeon
“It wasn’t our intention that humanity would become the planet’s greatest evolutionary force; yet the fact that we are confronts us with an urgent and difficult question. Some animals, plants and insects can adapt but, for many, the pace of change is too great. Should we try to save them by deliberately intervening in their evolution?”
The Quantum Apocalypse Is Coming. Be Very AfraidAmit Katwala | Wired ($)
“One day soon, at a research lab near Santa Barbara or Seattle or a secret facility in the Chinese mountains, it will begin: the sudden unlocking of the world’s secrets. Your secrets. Cybersecurity analysts call this Q-Day—the day someone builds a quantum computer that can crack the most widely used forms of encryption.”
9 Federally Funded Scientific Breakthroughs That Changed EverythingAlan Burdick and Emily Anthes | The New York Times ($)
“‘Basic research is the pacemaker of technological progress,’ Vannevar Bush, who laid out the postwar schema for government research support, wrote in a 1945 report to President Franklin D. Roosevelt. Look no further than Google, which got its start in 1994 with a $4 million federal grant to help build digital libraries; the company is now a $2 trillion verb.”
Covid Vaccines Have Paved the Way for Cancer VaccinesJoão Medeiros | Wired ($)
“Going from mRNA Covid vaccines to mRNA cancer vaccines is straightforward: same fridges, same protocol, same drug, just a different patient. In the current trials, we do a biopsy of the patient, sequence the tissue, send it to the pharmaceutical company, and they design a personalized vaccine that’s bespoke to that patient’s cancer. That vaccine is not suitable for anyone else. It’s like science fiction.”
Scientists Grow More Hopeful About Ending a Global Organ ShortageRoni Caryn Rabin | The New York Times ($)
“In a modern glass complex in Geneva last month, hundreds of scientists from around the world gathered to share data, review cases—and revel in some astonishing progress. Their work was once considered the stuff of science fiction: so-called xenotransplantation, the use of animal organs to replace failing kidneys, hearts, and livers in humans.”
This Baby Boy Was Treated With the First Personalized Gene-Editing DrugAntonio Regalado | MIT Technology Review ($)
“Doctors say they constructed a bespoke gene-editing treatment in less than seven months and used it to treat a baby with a deadly metabolic condition. The rapid-fire attempt to rewrite the child’s DNA marks the first time gene editing has been tailored to treat a single individual, according to a report published in the New England Journal of Medicine.”
It’s Waymo’s World. We’re All Just Riding in It.Ben Cohen | The Wall Street Journal ($)
“[Waymo] cracked a million total paid rides in late 2023. By the end of 2024, it reached five million. We’re not even halfway through 2025 and it has already crossed a cumulative 10 million. At this rate, Waymo is on track to double again and blow past 20 million fully autonomous trips by the end of the year. ‘This is what exponential scaling looks like,’”’ said Dmitri Dolgov, Waymo’s co-chief executive, at Google’s recent developer conference.”
This Incredible Map Shows the World’s 2.75 Billion BuildingsJesus Diaz | Fast Company
“From the latest skyscraper in a Chinese megalopolis to a six‑foot‑tall yurt in Inner Mongolia, researchers at the Technical University of Munich claim they have created a map of all buildings worldwide: 2.75 billion building models set in high‑resolution 3D with a level of precision never before recorded.”
Renewable Energy and EVs Have Grown So Much Faster Than Experts Predicted 10 Years AgoAdele Peters | Fast Company
“There’s now four times as much solar power as the International Energy Agency (IEA) expected 10 years ago. Last year alone, the world installed 553 gigawatts of solar power—roughly as much as 100 million US homes use—which is 1,500% more than the IEA had projected. …More than 1 in 5 new cars sold worldwide today is an EV; a decade ago, that number was fewer than 1 in 100. Even if growth flatlined now, the world is on track to reach 100 million EVs by 2028.”
Why the AI ‘Megasystem Problem’ Needs Our AttentionEric Markowitz | Big Think
“What if the greatest danger of artificial intelligence isn’t a single rogue system, but many systems quietly working together? Dr. Susan Schneider calls this the ‘megasystem problem’: networks of AI models colluding in ways we can’t predict, producing emergent structures beyond human control.”
Life Lessons From (Very Old) Bowhead WhalesCarl Zimmer | The New York Times ($)
“By measuring the molecular damage that accumulates in the eyes, ears, and eggs of bowhead whales, researchers have estimated that bowheads live as long as 268 years. A study published in the journal Nature [this year] offers a clue to how the animals manage to live so long: They are extraordinarily good at fixing damaged DNA.”
The Quest to Sequence the Genomes of EverythingGlenn Zorpette | IEEE Spectrum
“The road map calls for more than 1.65 million genome sequences between 2030 and 2035 at a cost of $1,900 per genome. If they can pull it off, the entire project will have cost roughly $4.7 billion—considerably less in real terms than what it cost to do just the human genome 22 years ago.”
The Ocean Teems With Networks of Interconnected BacteriaVeronique Greenwood | Quanta
“The Prochlorococcus [bacteria] population may be more connected than anyone could have imagined. They may be holding conversations across wide distances, not only filling the ocean with envelopes of information and nutrients, but also linking what we thought were their private, inner spaces with the interiors of other cells.”
An Entire Book Was Written in DNA—and You Can Buy It for $60Emily Mullin | Wired ($)
“DNA data storage isn’t exactly mainstream yet, but it might be getting closer. Now you can buy what may be the first commercially available book written in DNA. Today, Asimov Press debuted an anthology of biotechnology essays and science fiction stories encoded in strands of DNA. For $60, you can get a physical copy of the book plus the nucleic acid version—a metal capsule filled with dried DNA.”
Inside San Francisco’s Robot Fight ClubAshlee Vance | Core Memory
“For the past few months, Cix Liv—real name—has been operating his company REK out of a no-frills warehouse space off Van Ness in San Francisco. The office has a couple of makeshift desks with computers and a bunch of virtual reality headsets on some shelves. More to the point, REK also has four humanoid-style robots hanging from gantries, and they’ve been outfitted with armor, boxing gloves, swords, and backstories.”
Not Just Heat Death: Here Are Five Ways the Universe Could EndPaul Sutter | Ars Technica
“If you’re having trouble sleeping at night, have you tried to induce total existential dread by contemplating the end of the entire universe? If not, here’s a rundown of five ideas exploring how ‘all there is’ might become ‘nothing at all.’ Enjoy.”
The Dream of Offshore Launches Is Finally Blasting OffBecky Ferreirra | MIT Technology Review ($)
“‘The best way to build a future where we have dozens, hundreds, or maybe thousands of spaceports is to build them at sea,’ says Tom Marotta, CEO and founder of the Spaceport Company, which is working to establish offshore launch hubs. ‘It’s very hard to find a thousand acres on the coast over and over again to build spaceports. It’s very easy to build the same ship over and over again.'”
The Hottest Thing in Clean EnergyAlexander C. Kaufman | The Atlantic ($)
“For now, most of the efforts to debut next-generation geothermal technology are still in the American West, where drilling is relatively cheap and easy because the rocks they’re targeting are closer to the surface. But if the industry can prove to investors that its power plants work as described—which experts expect to happen by the end of the decade—geothermal could expand quickly, just like oil-and-gas fracking did.”
Firefly Releases Stunning Footage of Blue Ghost Landing on the MoonPassant Rabie | Gizmodo
“The Texas-based company released a clip of Blue Ghost’s descent toward the moon followed by a smooth landing. The footage is a masterclass in lunar landings, capturing striking views of the lander emerging from a cloud of dust, its shadow stretching across the moon’s surface in a superhero-like stance.”
AI Coding Assistant Refuses to Write Code, Tells User to Learn Programming InsteadBenj Edwards | Ars Technica
“The AI assistant halted work and delivered a refusal message: ‘I cannot generate code for you, as that would be completing your work. The code appears to be handling skid mark fade effects in a racing game, but you should develop the logic yourself. This ensures you understand the system and can maintain it properly.'”
Meet the Man Building a Starter Kit for CivilizationTiffany Ng | MIT Technology Review ($)
“[The Global Village Construction Set (GVCS) is] a set of 50 machines—everything from a tractor to an oven to a circuit maker—that are capable of building civilization from scratch and can be reconfigured however you see fit.”
Just One Exo-Earth Pixel Can Reveal Continents, Oceans, and MoreEthan Siegel | Big Think
“In the coming years and decades, several ambitious projects will reach completion, finally giving humanity the capability to image Earth-size planets at Earth-like distances around Sun-like stars. …Remarkably, even though these exo-Earths will appear as just one lonely pixel in our detectors, we can use that data to detect continents, oceans, icecaps, forests, deserts, and more.”
How AGI Became the Most Consequential Conspiracy Theory of Our TimeWill Douglas Heaven | MIT Technology Review ($)
“The idea that machines will be as smart as—or smarter than—humans has hijacked an entire industry. But look closely and you’ll see it’s a myth reminiscent of more explicitly outlandish and fantastical schemes. …I get it, I get it—calling AGI a conspiracy isn’t a perfect analogy. It will also piss a lot of people off. But come with me down this rabbit hole and let me show you the light.”
A Virtual Cell Is a ‘Holy Grail’ of Science. It’s Getting Closer.Matteo Wong | The Atlantic ($)
“Scientists are now designing computer programs that may unlock the ability to simulate human cells, giving researchers the ability to predict the effect of a drug, mutation, virus, or any other change in the body, and in turn making physical experiments more targeted and likelier to succeed.”
InventWood Is About to Mass-Produce Wood That’s Stronger Than SteelTim De Chant | TechCrunch
“The result is a material that has 50% more tensile strength than steel with a strength-to-weight ratio that’s 10 times better, the company said. It’s also Class A fire rated, or highly resistant to flame, and resistant to rot and pests.”
What If AI Doesn’t Get Much Better Than This?Cal Newport | The New Yorker
“In the aftermath of GPT-5’s launch, it has become more difficult to take bombastic predictions about AI at face value, and the views of critics like [Gary] Marcus seem increasingly moderate. Such voices argue that this technology is important, but not poised to drastically transform our lives. They challenge us to consider a different vision for the near-future—one in which AI might not get much better than this.”
I Gave the Police Access to My DNA—and Maybe Some of YoursAntonio Regalado | MIT Technology Review
“Scientists estimate that a database including 2% of the US population, or 6 million people, could identify the source of nearly any crime-scene DNA, given how many distant relatives each of us has. Scholars of big data have termed this phenomenon ‘tyranny of the minority.’ One person’s voluntary disclosure can end up exposing the same information about many others. And that tyranny can be abused.”
The $460 Billion Quantum Bitcoin Treasure HuntKyle Torpey | Gizmodo
“Early Bitcoin addresses, including many that have been connected to Bitcoin creator Satoshi Nakamoto, may also be associated with private keys (passwords to the Bitcoin accounts basically) that are lost or otherwise not accessible to anyone. In other words, they’re sort of like lost digital treasure chests that a quantum computer could potentially unlock at some point in the future.”
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How Will the Universe End? The Dark Eternity That Awaits Us Trillions of Years From Now
We can guess what the universe will look like a few billion years into the future, but eventually things could get weird.
Curious Kids is a series for children of all ages. If you have a question you’d like an expert to answer, send it to [email protected].
“How will the Universe end? – Iez M., age 9, Rochester, New York
Whether the universe will “end” at all is not certain, but all evidence suggests it will continue being humanity’s cosmic home for a very, very long time.
The universe—all of space and time, and all matter and energy—began about 14 billion years ago in a rapid expansion called the Big Bang, but since then it has been in a state of continuous change. First, it was full of a diffuse gas of the particles that now make up atoms: protons, neutrons, and electrons. Then, that gas collapsed into stars and galaxies.
Our current theory for the history of the universe. On the left is the Big Bang roughly 14 billion years ago. The structure and makeup of the universe have changed over time. Image Credit: NASA/WMAP Science TeamOur understanding of the future of the universe is informed by the objects and processes we observe today. As an astrophysicist, I observe objects like distant galaxies, which lets me study how stars and galaxies change over time. By doing so, I develop theories that predict how the universe will change in the future.
Predicting the Future by Studying the Past?Predicting the future of the universe by extending what we see today is extrapolation. It’s risky, because something unexpected could happen.
Interpolation—connecting the dots within a dataset—is much safer. Imagine you have a picture of yourself when you were 5 years old, and then another when you were 7 years old. Someone could probably guess what you looked like when you were 6. That’s interpolation.
Using a picture of the author when he was 5 years old and 7 years old, you could interpolate what he looked like when he was 6 years old, but you couldn’t predict what he would look like at 29. Image Credit: Stephen DiKerbyMaybe they could extrapolate from the two pictures to what you’d look like when you are 8 or 9 years old, but no one can accurately predict too far into the future. Maybe in a few years you get glasses or suddenly get really tall.
Scientists can predict what the universe will probably look like a few billion years into the future by extrapolating how stars and galaxies change over time, but eventually things could get weird. The universe and the stuff within might once again change, like it has in the past.
How Will Stars Change in the Future?Good news: The sun, our medium-sized yellow star, is going to continue shining for billions of years. It’s about halfway through its 10 billion-year lifetime. The lifetime of a star depends on its size. Big, hot, blue stars live shorter lives, while tiny, cool, red stars live for much longer.
Today, some galaxies are still producing new stars, but others have depleted their star-forming gas. When a galaxy stops forming stars, the blue stars quickly go “supernova” and disappear, exploding after only a few million years. Then, billions of years later, the yellow stars like the sun eject their outer layers into a nebula, leaving only the red stars puttering along. Eventually, all galaxies throughout the universe will stop producing new stars, and the starlight filling the universe will gradually redden and dim.
Red dwarf stars are the longest-lived type of stars. Once star formation shuts down throughout the universe, eventually only red stars will be left, gradually fading away over trillions of years. Image Credit: NASA/ESA/STScI/G. BaconIn trillions of years—hundreds of times longer than the universe’s current age—these red stars will also fade away into darkness. But until then, there will be lots of stars providing light and warmth.
How Will Galaxies Change in the Future?Think of building a sand castle on the beach. Each bucket of sand makes the castle bigger and bigger. Galaxies grow over time in a similar way by eating up smaller galaxies. These galactic mergers will continue into the future.
In galaxy clusters, hundreds of galaxies fall inward toward their shared center, often resulting in messy collisions. In these mergers, spiral galaxies, which are orderly disks, combine in chaotic ways into disordered blob-shaped clouds of stars. Think of how easy it is to turn a well-constructed sand castle into a big mess by kicking it over.
For this reason, the universe over time will have fewer spiral galaxies and more elliptical galaxies because the spiral galaxies combine into elliptical galaxies.
The Milky Way galaxy and the neighboring Andromeda galaxy might combine in this way in a few billion years. Don’t worry: The stars in each galaxy would whiz past each other totally unharmed, and future stargazers would get a fantastic view of the two galaxies merging.
How Will the Universe Itself Change in the Future?The Big Bang kick-started an expansion that probably will continue in the future. The gravity of all the stuff in the universe—stars, galaxies, gas, dark matter—pulls inward and slows down the expansion, and some theories suggest that the universe’s expansion will coast along or slow to a halt.
However, some evidence suggests that some unknown force is starting to exert a repulsive force, causing expansion to speed up. Scientists call this outward force dark energy, but very little is known about it. Like raisins in a baking cookie, galaxies will zoom away from each other faster and faster. If this continues into the future, other galaxies might be too far apart to observe from the Milky Way.
After star formation shuts down and galaxies merge into huge ellipticals, the expansion of the universe might mean that other galaxies are impossible to observe. For trillions of years, this might be the view of the unchanging night sky: a single red elliptical galaxy. Image Credit: NASA; ESA; Z. Levay and R. van der Marel, STScI; T. Hallas; and A. MellingerTo summarize the best current prediction of the future: Star formation will shut down, so galaxies will be full of old, red, dim stars gradually cooling into darkness. Each group or cluster of galaxies will merge into a single, massive, elliptical galaxy. The accelerated expansion of the universe will make it impossible to observe other galaxies beyond the local group.
This scenario eventually winds down into a dark eternity, lasting trillions of years. New data might come to light that changes this story, and the next stage in the universe’s history might be something totally different and unexpectedly beautiful. Depending on how you look at it, the universe might not have an “end,” after all. Even if what exists is very different from how the universe is now, it’s hard to envision a distant future where the universe is entirely gone.
How does this scenario make you feel? It sometimes makes me feel wistful, which is a type of sadness, but then I remember we live at a very exciting time in the story of the universe: right at the start, in an era full of exciting stars and galaxies to observe! The cosmos can support human society and curiosity for billions of years into the future, so there’s lots of time to keep exploring and searching for answers.
This article is republished from The Conversation under a Creative Commons license. Read the original article.
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These Were SingularityHub’s Top 10 Stories in 2025
Readers went all-in on biotech this year. Gene editing brought the broad treatment of genetic disease into view; cancer-fighting T cells took on tumors; and scientists found a way to 3D print tissues inside the body. Beyond biotech, AI chips and progress in quantum computing made waves; humanoid robots began to look almost affordable; and Kawasaki dreamed up a robot you ride like a horse. Here’s to another year of breakthroughs—thanks for reading!
Parkinson’s Patients Say Their Symptoms Eased After Receiving Millions of New Brain CellsShelly Fan
“Medications can keep some [Parkinson’s] symptoms at bay, but eventually, their effects wear off. For nearly half a century, scientists have been exploring an alternative solution: replacing dying dopamine neurons with new ones. [This year], two studies of nearly two dozen people with Parkinson’s showed the strategy is safe. A single transplant boosted dopamine levels for 18 months without notable side effects. Patients had few motor symptoms, even when they stopped taking regular medications.”
New Gene Therapy Reverses Three Diseases With Shots to the BloodstreamShelly Fan
“A team from the IRCCS San Raffaele Scientific Institute in Italy treated infant mice for three blood-related genetic diseases with a custom gene-editing shot that directly edited cells in the mice’s blood. …The edits were long-lasting and survived when transplanted into mice who had not been given the therapy. A dose of ‘mobilizing agents’—chemicals that stimulate cells in the blood and immune system—further boosted the effect in young adult mice.”
A Humanoid Robot Is Now on Sale for Under $6,000—What Can You Do With It?Kartikeya Walia
“[Unitree’s R1 is] a humanoid robot priced at under $6,000. That’s not pocket change, but it’s orders of magnitude cheaper than most robots in its class, which can run into tens or even hundreds of thousands of dollars. The R1 packs serious mobility, sensors, and AI potential into a package that could fit in a university lab, a workspace—or even, if you’re adventurous, your living room.”
Scientists Can Now 3D Print Tissues Directly Inside the Body—No Surgery NeededShelly Fan
“Dubbed deep tissue in vivo sound printing (DISP), the system uses an injectable bioink that’s liquid at body temperature but solidifies into structures when blasted with ultrasound. A monitoring molecule, also sensitive to ultrasound, tracks tissue printing in real time. Excess bioink is safely broken down by the body.”
Forget Nvidia: DeepSeek AI Runs Near Instantaneously on These Weird ChipsJason Dorrier
“Whereas answers can take minutes to complete on other hardware, Cerebras said that its version of DeepSeek knocked out some coding tasks in as little as 1.5 seconds. According to Artificial Analysis, the company’s wafer-scale chips were 57 times faster than competitors running the AI on GPUs and hands down the fastest. That was last week. Yesterday, Groq overtook Cerebras at the top with a new offering.”
Meta’s New AI Translates Speech in Real Time Across More Than 100 LanguagesShelly Fan
“Using a voice synthesizer, the system translates words spoken in 101 languages into 36 others—not just into English, which tends to dominate current AI interpreters. In a head-to-head evaluation, the algorithm is 23 percent more accurate than today’s top models—and nearly as fast as expert human interpreters. It can also translate text into text, text into speech, and vice versa.”
Kawasaki Is Building a Robot You Ride Like a HorseMatías Mattamala
“A video shows the automated equine galloping through valleys, crossing rivers, climbing mountains, and jumping over crevasses. …Kawasaki’s current motorbikes are constrained to roads, paths, and trails, but a machine with legs has no boundaries—it can reach places no other vehicles can go.”
Scientists Target Incurable Mitochondrial Diseases With New Gene Editing ToolsShelly Fan
“Many [mitochondrial] diseases are inherited. But none are treatable. …The new study, published in Science Translational Medicine, took a new approach [to treatment]—gene therapy. Using a genetic tool called base editing to target mitochondrial DNA, the team successfully rewrote damaged sections to overcome deadly mutations in mice.”
Miniaturized CRISPR Packs a Mighty Gene Editing PunchShelly Fan
“CRISPR has a hefty problem: The system is too large, making it difficult to deliver the gene editor to cells in muscle, brain, heart, and other tissues. Now, a team at Mammoth Biosciences has a potential solution. …Their new iteration, dubbed NanoCas, slashed the size of one key component, Cas9, to roughly one-third of the original. …The compact NanoCas ‘opens the door’ for editing tissues inside the body.”
CAR T Therapy Wipes Out Deadly Metastasized Cancer in MiceShelly Fan
“The new study aimed to treat solid tumors like blood cancer—with a single injection into a patient’s vein. The team engineered CAR T cells that could hunt down metastasized cancer cells. When infused into the veins of mice they found the engineered cells rapidly shrank tumors in the liver and large intestines without causing dangerous immune side effects. The results ‘pave the way for a…clinical trial,’ wrote the team.”
Record-Breaking Qubits Are Stable for 15 Times Longer Than Google and IBM’s DesignEdd Gent
“[Transmons, the type of qubit favored by the likes of Google and IBM,] have advantages such as faster operation speeds, but their short shelf life [known as coherence] remains a major disadvantage. Now a team from Princeton has designed novel transmon qubits with coherence times of up to 1.6 milliseconds—15 times longer than those used in industry and three times longer than the best lab experiment.”
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The Era of Private Space Stations Launches in 2026
From Blue Origin to Airbus, private space stations are on the way, with the first scheduled to launch next year.
Commercial space stations are rapidly moving from concept to reality. As NASA prepares for the International Space Station’s retirement around 2030, a burgeoning private orbital industry could step into its shoes.
The ISS was humanity’s only permanent outpost in space for nearly a quarter of a century, until China’s Tiangong station was permanently crewed in 2022. But the ISS is nearing the end of its planned lifespan and NASA’s been clear that it doesn’t intend to replace the space station.
Instead, the agency wants to shift from landlord to tenant, purchasing space station services from private players rather than running a facility of its own. It’s betting the private space industry can help drive down costs and accelerate innovation.
This transition would mark a fundamental shift in the economics of low Earth orbit. And the first major milestone could come as soon as May 2026, when California-based startup Vast plans to launch its Haven-1 space station.
“If we stick to our plan, we will be the first standalone commercial LEO platform ever in space with Haven-1, and that’s an amazing inflection point for human spaceflight,” Drew Feustel, Vast’s lead astronaut and a former NASA crew member, recently told Space.com.
The company has already booked its launch on a SpaceX Falcon 9, and at around 31,000 pounds, Haven-1 will be the largest payload the rocket has ever carried. But as far as space stations go, it’s fairly modest.
Roughly the size of a shipping container, the single-module station will host crews of four for up to 10 days. But the company has tried its best to make the facility more comfortable than the utilitarian ISS, with “earth tones,” soft surfaces, inflatable sleep systems, and a revamped menu for astronauts.
Though the company hopes the design will tempt some customers, the station is really a proof of concept for Haven-2, a larger modular station that Vast hopes could succeed the ISS. Haven-2 will feature a second docking port to connect with cargo supply craft or new modules.
Development of Vast’s second station relies on funding from NASA’s Commercial Low Earth Orbit Destinations program, however, the company says. Eager to spur a new orbital economy that can support its missions, the agency started the program in 2021 to fund and assist a host of startups building space stations.
The agency has paid out about $415 million in the program’s first phase to help companies flesh out their designs. But next year, NASA plans to select one or more companies for Phase 2 contracts worth between $1 billion and $1.5 billion and set to run from 2026 to 2031.
Axiom Space, one of the companies vying for this funding, plans to piggyback on the ISS to build its space station. The company will first launch a power and heating module and connect it to the ISS. The module will be able to operate independently starting in 2028. They’ll then gradually add habitat and research modules alongside airlocks to create a full-fledged private space station.
Meanwhile, Voyager Space and Airbus are designing a space station called Starlab, which recently moved into “full-scale development” ahead of an expected 2028 launch. The station can host four astronauts, features an external robotic arm, and is designed to launch in one go aboard SpaceX’s forthcoming Starship rocket.
In addition, Blue Origin, founded by Jeff Bezos, is working with Sierra Space and Boeing to build Orbital Reef, which they describe as a “mixed-use business park 250 miles above Earth.” The project recently put its designs to the test by asking people to carry out various day-to-day tasks, like cargo transfer, trash transfer, and stowage in life-size mockups of the habitat modules.
All these projects hope to have NASA as an anchor tenant. But they are also heavily reliant on the idea that there are a broad range of potential customers also willing to pay for orbital office space. With the cost of space launches continuing to fall, there’s hope that there will be ample demand from space tourists, researchers, and manufacturers eager to take advantage of the unique microgravity environments these stations can provide.
The economics are far from certain though, and competition will be fierce. Even if NASA is able to spur a private orbital economy, there may not be enough business to support multiple private space stations.
But with the sun setting on the ISS, a gap in the market is undoubtedly opening up. If things go to plan, we may soon find that humans have a lot more orbital destinations on the menu.
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Five-Year-Old Mini Brains Can Now Mimic a Kindergartener’s Neural Wiring. It’s Time to Talk Ethics.
Among pressing ethical concerns are whether brain organoids could one day feel pain or become conscious—and how would we know?
When brain organoids were introduced roughly a decade ago, they were a scientific curiosity. The pea-sized blobs of brain tissue grown from stem cells mimicked parts of the human brain, giving researchers a 3D model to study, instead of the usual flat layer of neurons in a dish.
Scientists immediately realized they were special. Mini brains developed nearly the whole range of human brain cells, including neurons that sparked with electrical activity, making them an excellent way to observe and study the human brain—without the brain itself.
As the technology advanced and brain organoids matured, researchers coaxed them to grow structural layers with blood vessels roughly mimicking the cortex, the part of the brain that handles reasoning, working memory, and other high-level cognitive tasks. Parallel efforts derived organoids for other parts of the brain.
Mini brains can be made from a person’s skin cells and faithfully carry the genetic mutations that could cause neurodevelopmental disorders, such as autism. The lab-grown blobs also provide a nearly infinite source of transplantable neural tissue, which in theory could help heal the brain after a stroke or other traumatic events. In early studies, organoids transplanted into rodent brains formed neural connections with resident brain cells.
More recently, assembloids have combined mini brains with other tissues, like muscles or blood vessels. These Frankenstein-ish assemblies capture how the brain controls bodily functions—and when those connections go awry.
As brain organoids have grown increasingly complex, ethical concerns about their use have grown too. After all, they’re made of neural tissue, which in our heads forms the basis of memory, emotions, sensations, and consciousness.
To be clear, there’s no evidence brain organoids can think or feel. They are absolutely not brains in a jar. But scientists can’t ignore the possibility they could eventually develop some sort of “sensation,” such as pain and, if they do, what that might mean for their development.
Aging OrganoidsHarvard’s Paula Arlotta is among those who are concerned. An expert in the field, her team has developed ways to keep brain organoids alive for an astonishing seven years. Each nugget, smaller than a pea, is jam-packed with up to two million neurons and other human brain cells.
Studying these mini brains for years has delivered an unprecedented look into human brain development. Our brains take nearly two decades to mature, an exceptionally long period of time compared to other animals. As the team’s organoids aged, they slowly changed their wiring and gene expression, reports Arlotta and colleagues in a recent preprint.
In older organoids, progenitor cells—these are young cells that can form different types of brain cells—quickly decided what type of brain cell they would become. But in younger organoids, the same cells took time to make their decision. As the blobs grew over an astonishing five years, their neurons matured in shape, function, and connections, similar to those of a kindergartner.
These long-lasting organoids could reveal secrets of the developing brain. Some efforts are tracing the origins of different cell types and how they populate the brain. Others are generating organoids from people with autism or deadly inherited brain disorders to test treatments.
Excitement is at an all-time high. But while championing the research, Arlotta and other experts recently penned an article arguing for a global regulation committee to steer the nascent field.
Meeting of MindsWhile scientists always keep ethics in the mind, they’re also motivated by scientific discovery and the search for new treatments. Plenty of promising research has also raised ethical concerns regarding sourcing or consent. Take the notorious CRISPR baby scandal in 2018. A Chinese scientist unlawfully and permanently altered a gene in embryos, and the children subsequently born with those DNA edits didn’t have a say in the matter.
Brain organoids present a different challenge. As they become more sophisticated and capture the brain’s cellular and structural makeup, could they begin to feel pain? Used in biocomputers, could they show signs of intelligence? Is it ethical to implant human mini brains into animals, where experiments show they integrate with host brains and blur the lines between man and beast? What about implanting lab-grown brain tissue into humans?
This November, experts (including Arlotta), ethicists, and patient advocates gathered at a conference co-organized by Stanford law professor Henry Greely, who specializes in bioethics. The meeting wasn’t designed to generate comprehensive guidelines regarding brain organoids. But ethics was a throughline during the entire conference as researchers presented recent successes in the field and pitched where it could go next.
In particular, Stanford’s Sergiu Pasca, a co-organizer of the meeting, attracted attention. Earlier this year, his team linked four organoids into a neural “pain pathway.” The model combined sensory neurons, spinal and cortex organoids, and parts of the brain that process pain.
The scientists dabbed the chemical behind chili’s tongue-scorching heat onto the sensory side of the assembloid. It produced waves of synchronized neural activity, suggesting the artificial tissue had detected the stimuli and transferred information.
That’s not to say it felt pain. Detecting pain is only part of the story. It takes a second neural pathway, which the assembloids lacked, to trigger the unpleasant feeling. But the experiment and others underscore the need for regulation. One idea pitched at the conference is to create a new global organization similar to the International Society for Stem Cell Research.
The commission would track advances in the field and provide oversight that balances scientific merit with patient needs. During the meeting, patients and family members expressed hope that mini brains could lead to new therapies, especially for those with rare genetic disorders or severe autism.
Pasca may soon deliver on that promise. His team is working to understand Timothy syndrome, a rare genetic disorder that leads to autism, epilepsy, and often fatal heart attacks. Last year they developed a gene-altering molecule that showed promise in brain organoids mimicking the disease. The treatment also worked in a rodent model, and the team is planning to submit a proposal for a clinical trial next year.
Drawing the line for brain organoid research will require global cooperation. “A continuing international process is needed to monitor and advise this rapidly progressing field,” wrote Arlotta, Pasca, and others. While there aren’t any universal agreements yet, dialogue on ethics, including discussion and engagement with the public, should guide the nascent field.
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Single Injection Transforms the Immune System Into a Cancer-Killing Machine
The treatment reprograms T cells to hunt down a patient’s cancer. The approach could speed treatment and cut costs, but needs more study.
With just a single injection, a new treatment transforms immune cells in cancer patients into efficient tumor-killing machines. Now equipped with homing beacons, the cells rapidly track down and destroy their cancerous foes.
The shot is based on CAR T cell therapy, a breakthrough that uses genetic engineering to supercharge cancer-fighting T cells. Since its first FDA approval in 2017, CAR T has vanquished some deadly cancer cases with a one-and-done treatment.
But the technology is costly—for both body and wallet. CAR T cells are usually made outside the body in a lab. Patients undergo chemotherapy and other harsh treatments to make room for the enhanced immune cells, taxing an already ailing body with side effects. Making CAR T cells also takes precious time, and unfortunately, the clock often runs out.
At this year’s American Society of Hematology Annual Meeting & Exposition, an Australian team presented a different approach: Transforming normal T cells into super soldiers inside the body. Four people treated for stubborn multiple myeloma—a blood cancer that destroys bones and kidneys—went into remission for up to five months.
Led by Phoebe Joy Ho at the University of Sydney in collaboration with Kelonia Therapeutics, the trial, although small and still preliminary, marks a step towards the next revolution in CAR T therapy. Reported in The American Journal of Managed Care, an audience member from the conference said the findings “take your breath away.”
Silver BulletCAR T therapy has transformed cancer care. Six formulations are approved in the United States for a variety of blood cancers. Hundreds of clinical trials that expand the life-saving technology to solid cancers—including breast and brain tumors—are underway.
Beyond cancer, the therapy is also being used to treat life-long autoimmune diseases, such as lupus and multiple sclerosis, where the body’s immune system destroys its own organs. A small trial found a single infusion of CAR T cells reduced symptoms in patients with lupus. Other efforts are using these custom living drugs to tamp down infections, restore heart health after an attack, and remove the “zombie cells” that accumulate during aging.
The procedure usually goes like this: A patient’s own T cells are extracted from their blood. Using gene editing tools, like CRISPR, the cells are supplied with extra protein “hooks.” These hooks let them better grab onto their targets—cancer cells or otherwise.
After a short course of chemotherapy or radiation to deplete existing immune cells and make room for new ones, the engineered CAR T cells are infused back into the body. Once there, the genetically engineered cells repopulate the immune system and hunt down their prey. The process, while undeniably efficient for some cancers, is costly and takes months—time that some patients don’t have.
“Off-the-shelf” CAR T is one solution. Instead of editing a patient’s own cells, scientists could transform a healthy population of donor T cells. But attempts have faced immune rejection. Even with more genetic tinkering, the cells struggle to survive and expand in the body.
One Shot WonderAn alternative method directly converts a person’s T cells inside their own body.
In 2022, a team designed a shot to reprogram T cells using RNA. This avoids tinkering with a patient’s DNA. In mice with heart scarring, the injection revived the organ.
Other successes soon followed. Another shot converted T cells into CAR T cells within hours in mice and monkeys. The therapy targeted a type of blood cancer deriving from an overgrowth of B cells (another immune cell type). The shot boosted the immune system’s ability to destroy cancers in mice and slashed B cell numbers in monkeys. The effects lasted at least a month.
Both these treatments used fatty nanoparticles to deliver their payloads. They were also heavily modified to get around the so-called liver “sink.” Treatments often end up in the organ after injection. Careful design of surface proteins helped the therapies home in on T cells.
Gene-editors can also hitch a ride on a benevolent virus, stripped of disease-causing genes but highly efficient at tunneling into cells. Kelonia’s new technology used a virus to target T cells and avoid other cell types. One tweak, for example, added a small, engineered protein fragment that precisely targets T cells. Once inside, the payload synthesizes a gene that kills cancers.
The trick paid off. In a small trial, researchers gave the shot to four patients with previously uncontrollable multiple myeloma. The patients showed no signs of cancer in their bone marrow after a month. For one, the effect lasted at least five months. The side effects were also relatively minor, although some experienced mild cytokine release syndrome—an immune reaction that causes fever, chills, and other symptoms, which were easily managed.
The results come on the heels of a separate trial with similarly positive results. In July, four patients with multiple myeloma received an infusion of a virus carrying genes targeting T cells. Crafted by EsoBiotec in Belgium and Shenzhen Pregene Biopharma in China, the shot vanquished abnormal cells in the bone marrow of two patients after three months. The patients had previously undergone multiple cancer-related therapies to no avail.
The treatment did come with side effects. Blood pressure plunged, and two patients required supplemental oxygen. One showed confusion and temporary “brain fog.” These mental troubles aren’t common with traditional CAR T therapy, motivating researchers to find out why.
Despite risks, results from both trials highlight the promise of one-and-done CAR T therapy for deadly blood cancers. But it’s still early days. Scientists need to carefully follow patients over years to understand how long upgraded T cells remain in the body and their effect on cancers.
And not all viral carriers are made the same. Lentiviruses, used in both studies, can tunnel into the human genome, causing DNA typos that potentially trigger secondary cancers. The durability of the therapy, its longevity, and immune side effects also need to be studied.
Kelonia is adding more patients to their trial, amid an increasingly competitive landscape. AstraZeneca has acquired EsoBiotec to bring its technology to market. AbbVie, a drug company in Illinois, is testing the delivery of gene-editing tools to T cells via fatty nanoparticles in clinical trials. And Kelonia is planning a second clinical trial with an initial 20 patients and 20 more in an expansion phase, none of whom responded to at least three previous treatments.
“I think it gives us a glimpse into the future,” Ho told Science. “In vivo CAR T for multiple myeloma is here and hopefully it will stay.”
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This Light-Powered AI Chip Is 100x Faster Than a Top Nvidia GPU
The LightGen chip is orders of magnitude more efficient too. But it isn’t ready to break out of the lab just yet.
As generative AI models grow more powerful, their energy use is becoming a serious bottleneck. A new fully optical generative AI chip could help by running advanced image and video generation tasks at speeds and efficiencies orders of magnitude beyond today’s hardware.
Training generative AI models requires an enormous amount of computing power and energy. But as demand explodes, the process of actually running the models to create images, text, or video—known as inference—is quickly becoming an even bigger drain on resources.
Video and image generation models are particularly energy intensive. While the efficiency of these models is constantly improving, a 2023 study found that generating 1,000 images using a leading model produced carbon emissions equivalent to driving a gas-powered car more than four miles.
One promising approach for slashing energy use is photonic computing, where processors use light instead of electricity. It’s a tactic multiple well-funded startups are pursuing in earnest. But most advances have been limited to simpler tasks like image classification or text generation.
Now, researchers from Shanghai Jiao Tong University and Tsinghua University in China have demonstrated an all-optical chip they call LightGen that is more than 100 times faster and more energy efficient than a leading Nvidia GPU on tasks like video and image generation.
“LightGen provides a new way to bridge the new chip architectures to daily complicated AI without impairment of performance and with speed and efficiency that are orders of magnitude greater,” the researchers write in a recent paper on the chip in Science.
A key aspect of the new design is its density. Generative models typically require millions of parameters to produce high-quality outputs, but previous photonic chips have had, at most, a few thousand artificial neurons. Using 3D packaging, however, LightGen integrates more than two million onto a device measuring just a quarter of a square inch.
The resulting processing boost allows the chip to work with images at resolutions up to 512-by-512 pixels. Older photonic chips typically broke up high-resolution images into smaller patches to process them. This not only takes longer but also reduces a model’s ability to draw statistical correlations between the different patches.
The researchers also innovated something called an “optical latent space.” Generative AI models work, in part, by compressing high-dimensional data into simpler representations. This forces them to remove less important information and only retain the bits that are integral to the input.
These condensed representations are then stored in a multi-dimensional map of concepts called a latent space. Models use these representations to generate new outputs when given a prompt.
LightGen’s developers replicated this process entirely optically. In their chip, a full-resolution image is transmitted through an optical encoder made up of several metasurfaces—ultra-thin structures designed to manipulate light—and then coupled into an array of optical fibers.
This process naturally filters out higher-order data, effectively condensing the information into simpler representations, which are then stored in the fiber array as the optical latent space. Another set of metasurfaces at the other end of the device, which can be switched depending on the task, then take the output from this latent space and use it to generate high-resolution images.
The researchers also came up with a novel training approach. Here, the chip learns probabilistic representations of training data, which makes it possible to tackle more complex tasks, like creating novel outputs. This is a promising development. So far, most photonic chips have focused on inference not training.
The team tested their chip on several demanding tasks, including the generation of high-resolution images of animals, converting images into different artistic styles, and even turning 2D images into 3D models. Notably, the chip achieved speeds and energy efficiencies more than two orders of magnitude better than Nvidia’s A100 GPU, one of the company’s most powerful AI chips.
The new optical chip isn’t ready to break out of the lab just yet. It still relies on bulky lasers and spatial light modulators to generate input signals, and the metasurfaces central to its design are currently made with specialized processes rather those you might find in standard chip factories.
Nonetheless, with further development, the work suggests optical processors could be a fast, energy-efficient way to power the cutting-edge of an increasingly power-hungry AI industry.
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This Week’s Awesome Tech Stories From Around the Web (Through December 20)
What Will Your Life Look Like in 2035?Words by Robert Booth and Dan Milmo. Illustrations by Jay Cover | The Guardian
“When AIs become consistently more capable than humans, life could change in strange ways. It could happen in the next few years, or a little longer. If and when it comes, our domestic routines—trips to the doctor, farming, work, and justice systems—could all look very different. Here we take a look at how the era of artificial general intelligence might feel.”
Artificial IntelligenceOpenAI Built an AI Coding Agent and Uses It to Improve the Agent ItselfBenj Edwards | Ars Technica
“In interviews with Ars Technica this week, OpenAI employees revealed the extent to which the company now relies on its own AI coding agent, Codex, to build and improve the development tool. ‘I think the vast majority of Codex is built by Codex, so it’s almost entirely just being used to improve itself,’ said Alexander Embiricos, product lead for Codex at OpenAI, in a conversation on Tuesday.”
Artificial IntelligenceAI Coding Is Now Everywhere. But Not Everyone Is Convinced.Edd Gent | MIT Technology Review ($)
“Depending who you ask, AI-powered coding is either giving software developers an unprecedented productivity boost or churning out masses of poorly designed code that saps their attention and sets software projects up for serious long term-maintenance problems. The problem is right now, it’s not easy to know which is true.”
BiotechnologyA Brain-Computer Interface Company Is Getting Into Organ PreservationEmily Mullin | Wired ($)
“The technology is used to preserve organs for transplant and as a life-support measure for patients when the heart and lungs stop working, but it’s clunky and costly. Science wants to make a smaller, more portable system that could provide long-term support.”
RoboticsScientists Built an AI Co-Pilot for Prosthetic Bionic HandsJacek Krywko | Ars Technica
“The main issue with bionic hands that drives users away from them, George explains, is that they’re difficult to control. ‘Our goal was making such bionic arms more intuitive, so that users could go about their tasks without having to think about it,’ George says. To make this happen, his team came up with an AI bionic hand co-pilot.”
FutureA Faster-Than-Light Spaceship Would Actually Look a Lot Like Star Trek’s EnterpriseJesus Diaz | Fast Company
“Inside [the USS Enterprise’s twin] nacelles, the show’s creators imagined, lay the secret that made those trips possible: a warp drive that could crease spacetime itself, folding the universe in front of the ship while unfurling it behind, allowing faster-than-light travel not through speed but through geometry. For decades, physicists dismissed it as beautiful nonsense—a prop master’s fever dream. But now the math has caught up to the dream.”
Artificial IntelligenceThe Great AI Hype Correction of 2025Will Douglas Heaven | MIT Technology Review ($)
“AI is really good! Look at Nano Banana Pro, the new image generation model from Google DeepMind that can turn a book chapter into an infographic, and much more. It’s just there—for free—on your phone. And yet you can’t help but wonder: When the wow factor is gone, what’s left? How will we view this technology a year or five from now? Will we think it was worth the colossal costs, both financial and environmental?”
SpaceScientists Thought Saturn’s Moon Titan Hid a Secret Ocean. They Were WrongEllyn Lapointe | Gizmodo
“Rather, its 6-mile-thick (10-kilometer-thick) crust of ice gives way to a layer of slush interspersed with pockets and channels of meltwater near the moon’s rocky core. The shocking findings could completely change the way scientists search for signs of life inside this icy world.”
TechHow OpenAI’s Organizational Problems Hurt ChatGPTStephanie Palazzolo, Sri Muppidi, and Amir Efrati | The Information ($)
“The change in the way ChatGPT users have reacted to new models powering the chatbot shows how the goals of OpenAI’s core AI research division, which develops its technology, don’t always serve the needs of ChatGPT, which drives most of the company’s revenue.”
TechCoreWeave’s Staggering Fall From Market Grace Highlights AI Bubble FearsRobbie Whelan | The Wall Street Journal ($)
“CoreWeave, the largest of a new breed of companies driving the artificial-intelligence boom, has watched $33 billion of value vaporize in six weeks. The share-price plunge of 46% comes as investors worry about a possible AI bubble, the fallout from a failed merger, and public criticism from high-profile short seller Jim Chanos, known for predicting the collapse of Enron.”
TechIt’s the Great AGI RebrandHayden Field | The Verge
“‘Rizz’ lost its luster when grandparents started asking about its meaning. Teachers who dressed up as ‘6-7’ on Halloween drove a nail into the coffin of Gen Alpha’s rallying cry. And tech CEOs who once trumpeted the quest for ‘artificial general intelligence,’ or AGI, are jumping ship for any other term they can find.”
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Data Centers in Space: Will 2027 Really Be the Year AI Goes to Orbit?
Google plans to take a tangible first step in a new AI and computing moonshot by launching two prototype satellites to orbit in early 2027.
Google recently unveiled Project Suncatcher, a research “moonshot” aiming to build a data center in space. The tech giant plans to use a constellation of solar-powered satellites which would run on its own TPU chips and transmit data to one another via lasers.
Google’s TPU chips (tensor processing units), which are specially designed for machine learning, are already powering Google’s latest AI model, Gemini 3. Project Suncatcher will explore whether they can be adapted to survive radiation and temperature extremes and operate reliably in orbit. It aims to deploy two prototype satellites into low Earth orbit, some 400 miles above the Earth, in early 2027.
Google’s rivals are also exploring space-based computing. Elon Musk has said that SpaceX “will be doing data centers in space,” suggesting that the next generation of Starlink satellites could be scaled up to host such processing. Several smaller firms, including a US startup called Starcloud, have also announced plans to launch satellites equipped with the GPU chips (graphics processing units) that are used in most AI systems.
The logic of data centers in space is that they avoid many of the issues with their Earth-based equivalents, particularly around power and cooling. Space systems have a much lower environmental footprint, and it’s potentially easier to make them bigger.
As Google CEO Sundar Pichai has said: “We will send tiny, tiny racks of machines and have them in satellites, test them out, and then start scaling from there … There is no doubt to me that, a decade or so away, we will be viewing it as a more normal way to build data centers.”
Assuming Google does manage to launch a prototype in 2027, will it simply be a high-stakes technical experiment—or the dawning of a new era?
The Scale of the ChallengeI wrote an article for The Conversation at the start of 2025 laying out the challenges of putting data centers into space, in which I was cautious about them happening soon.
Now, of course, Project Suncatcher represents a concrete program rather than just an idea. This clarity, with a defined goal, launch date, and hardware, marks a significant shift.
The satellites’ orbits will be “sun synchronous,” meaning they’ll always be flying over places at sunset or sunrise so that they can capture sunlight nearly continuously. According to Google, solar arrays in such orbits can generate significantly more energy per panel than typical installations on Earth because they avoid losing sunlight due to clouds and the atmosphere, as well as at night.
The TPU tests will be fascinating. Whereas hardware designed for space normally needs to be heavily shielded against radiation and extreme temperatures, Google is using the same chips used in its Earth data centers.
The company has already done laboratory tests exposing the chips to radiation from a proton beam that suggest they can tolerate almost three times the dose they’ll receive in space. This is very promising, but maintaining reliable performance for years, amidst solar storms, debris, and temperature swings is a far harder test.
Another challenge lies in thermal management. On Earth, servers are cooled with air or water. In space, there is no air and no straightforward way to dissipate heat. All heat must be removed through radiators, which often become among the largest and heaviest parts of a spacecraft.
NASA studies show that radiators can account for more than 40 percent of total power system mass at high power levels. Designing a compact system that can keep dense AI hardware within safe temperatures is one of the most difficult aspects of the Suncatcher concept.
A space-based data center must also replicate the high bandwidth, low latency network fabric of terrestrial data centers. If Google’s proposed laser communication system (optical networking) is going to work at the multi-terabit capacity required, there are major engineering hurdles involved.
These include maintaining the necessary alignment between fast-moving satellites and coping with orbital drift, where satellites move out of their intended orbit. The satellites will also have to sustain reliable ground links back on Earth and ovecome weather disruptions. If a space data-center is to be viable for the long term, it will be vital that it avoids early failures.
Maintenance is another unresolved issue. Terrestrial data centers rely on continual hardware servicing and upgrades. In orbit, repairs would require robotic servicing or additional missions, both of which are costly and complex.
Then there is the uncertainty around economics. Space-based computing becomes viable only at scale, and only if launch costs fall significantly. Google’s Project Suncatcher paper suggests that launch costs could drop below $200 (£151) per kilogram by the mid 2030s, seven or eight times cheaper than today. That would put construction costs on par with some equivalent facilities on Earth. But if satellites require early replacement or if radiation shortens their lifespan, the numbers could look quite different.
In short, a two-satellite test mission by 2027 sounds plausible. It could validate whether TPUs survive radiation and thermal stress, whether solar power is stable, and whether the laser communication system performs as expected.
However, even a successful demonstration would only be the first step. It would not show that large-scale orbital data centers are feasible. Full-scale systems would require solving all the challenges outlined above. If adoption occurs at all, it is likely to unfold over decades.
For now, space-based computing remains what Google itself calls it, a moonshot: ambitious and technically demanding, but one that could reshape the future of AI infrastructure, not to mention our relationship with the cosmos around us.
This article is republished from The Conversation under a Creative Commons license. Read the original article.
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New Gene Drive Stops the Spread of Malaria—Without Killing Any Mosquitoes
A Tanzania-led study pitted gene-edited mosquitoes against a wide range of malaria parasites found locally.
Mosquitoes are an uncomfortable, itchy nuisance. But for people in sub-Saharan Africa, a bite could mean death. The pests are living incubators for the parasite that causes malaria. Roughly 600,000 people are killed by the disease each year, with most being children under five years of age.
Insecticides, malaria drugs, and mosquito nets saved a million lives globally in 2024 alone. But their efficacy is waning. Mosquitoes and the malaria parasite are becoming resistant to chemical inhibitors. And consistent, perfect use of physical barriers is hard to manage for years on end, especially for children.
Realizing this, scientists have turned to a drastic solution: Gene drives, a technology that skews the rules of inheritance. Rather than nature’s fifty-fifty chance of an offspring inheriting a gene from either parent, gene drives raise the possibility of a gene’s inheritance to over 90 percent—if not higher.
The tweak allows a gene to rapidly spread across entire populations. In lab tests encoding gene drives that reduce female mosquito fertility, mosquito populations have collapsed. Other experimental gene drives encoding genes that block parasite reproduction have suggested they could replace a natural population with one unable to carry malaria in just a few generations.
But these studies mostly used a specific type of lab-grown mosquito and older generations of the malaria parasite. Whether gene drives could keep naturally circulating malaria parasites in check, especially in countries where they’re most prevalent, was unknown.
This month, a research team from Tanzania and the UK found engineered mosquitoes conquered a wide variety of malaria parasites in blood samples collected from children in the area. Genetically altered in a new state-of-the-art biosecurity facility in Tanzania, the mosquitoes passed on genes that inhibit the parasite with breakneck speed and efficiency.
The promising findings are the latest from Transmission Zero, a Tanzania-led and internationally supported project to develop genetically based mosquito suppression.
“Gene-drive mosquitoes…offer unprecedented hope,” wrote study authors Alphaxard Manjurano at the National Institute for Medical Research Mwanza Center and Dickson Lwetoijera at the Ifakara Health Institute, both based in Tanzania.
Moving SouthGene drives shatter the laws of evolution. Rather than a fifty-percent chance of inheriting genes from a parent, gene drives pass genes down through generations with near-certainty.
Scientists engineer gene drives by first adding instructions to make the gene editing tool CRISPR. These instructions are genetically inserted into a single chromosome in a chromosome pair. The chromosomes in these pairs are inherited one from each parent. The drive hijacks the bug’s protein-making machinery to pump out Cas9 “scissors” that break the sister chromosome.
Rather than stitching the broken ends together, the cells use the gene-drive containing chromosome as a template for repair. And now both chromosomes contain the drive, ensuring it’ll be passed down to future generations.
Gene drive design is extremely versatile. Some drives target genes involved in female fertility, making mosquitoes sterile and quickly lowering their numbers. Others produce malaria antibodies in female mosquitoes when they drink blood, neutralizing the parasite and preventing it from spreading. Yet others propagate a protective gene that naturally wards off malaria in mosquitoes.
The latter strategies are gaining steam. Not everyone is keen on eliminating entire species. Mosquitoes may play diverse roles in ecosystems that we haven’t yet discovered. Kneecapping malaria parasites as they grow in mosquitoes seems like the safer bet.
But previous gene-drive mosquitoes were designed and tested using old, frozen malaria samples—a far cry from the genetic diversity and rapid evolution that make the parasite formidable in natural environments. Bringing the technology to regions heavily affected by the disease could help local communities better battle the disease.
Hidden MedicineThe new gene drive relied on previous efforts from George Christophides at Imperial College London who was also an author of the new study. Malaria parasites take roughly 10 days to incubate and develop inside mosquitoes. Once mature, they spread into the bug’s saliva, which can now infect people. Because the mosquito carriers don’t survive long past this period—but can do lots of damage in the meantime—delaying parasite development could crash the entire transmission cycle.
The team took inspiration from two small proteins that naturally cripple parasite development. One was discovered in the African clawed frog; the other in honeybees. Parasites in lab-grown mosquitoes, engineered to contain gene drives loaded with the proteins, took a few days longer to mature—precious time during which some of the bugs naturally died off.
Collaborators in Tanzania recreated these gene drive mosquitoes and tested them in a near real-world setting. After feeding on blood samples from local children infected by various strains of the parasite, the edited mosquitoes struggled to produce more of the pathogen.
“This is the first time a genetically modified, gene drive-compatible mosquito strain has been developed in Africa, by African scientists, targeting malaria parasites circulating in local communities,” said Lwetoijera in a press release. However, long-term monitoring is essential to make sure the parasite doesn’t develop resistance against the gene drive. The treatment presents a new way to slash malaria risks in plagued communities.
The project didn’t just rely on scientific insights. In a country with relatively low resources, little infrastructure, and hazy regulations, building the research program from the ground up was a top priority to ensure biocontainment safety. The study was conducted in a state-of-the-art facility specifically designed for this research, allowing local scientists to spearhead future genetic engineering efforts and field testing.
A daring trial to release the edited mosquitoes on an island in Lake Victoria is planned for the next phase. Throughout the project, Transmission Zero has worked with local communities to build trust in a bewildering technology. Plenty of protocols and planning need to be in place before a real-world test takes place. These include ecological risk assessment, regulatory oversight, and continued development of skills and expertise in staff leading the effort.
Both Manjurano and Lwetoijera stressed the importance of African leadership as the project moves along, ensuring that as the technology is developed and implemented it meets local priorities and ethical standards.
International collaborators agree. “Now, we want to move at the right speed. It is important that we’re not too fast and that we make sure people are supportive of this new technology, but we should also move with urgency and treat malaria as the emergency that it is,” said study author Nikolai Windbichler at Transmission Zero and Imperial College London.
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