2025-06-23 12:01:02
Night is falling on Cerro Pachón.
Stray clouds reflect the last few rays of golden light as the sun dips below the horizon. I focus my camera across the summit to the westernmost peak of the mountain. Silhouetted within a dying blaze of red and orange light looms the sphinxlike shape of the Vera C. Rubin Observatory.
“Not bad,” says William O’Mullane, the observatory’s deputy project manager, amateur photographer, and master of understatement. We watch as the sky fades through reds and purples to a deep, velvety black. It’s my first night in Chile. For O’Mullane, and hundreds of other astronomers and engineers, it’s the culmination of years of work, as the Rubin Observatory is finally ready to go “on sky.”
Rubin is unlike any telescope ever built. Its exceptionally wide field of view, extreme speed, and massive digital camera will soon begin the 10-year Legacy Survey of Space and Time (LSST) across the entire southern sky. The result will be a high-resolution movie of how our solar system, galaxy, and universe change over time, along with hundreds of petabytes of data representing billions of celestial objects that have never been seen before.
Stars begin to appear overhead, and O’Mullane and I pack up our cameras. It’s astronomical twilight, and after nearly 30 years, it’s time for Rubin to get to work.
The top of Cerro Pachón is not a big place. Spanning about 1.5 kilometers at 2,647 meters of elevation, its three peaks are home to the Southern Astrophysical Research Telescope (SOAR), the Gemini South Telescope, and for the last decade, the Vera Rubin Observatory construction site. An hour’s flight north of the Chilean capital of Santiago, these foothills of the Andes offer uniquely stable weather. The Humboldt Current flows just offshore, cooling the surface temperature of the Pacific Ocean enough to minimize atmospheric moisture, resulting in some of the best “seeing,” as astronomers put it, in the world.
It’s a complicated but exciting time to be visiting. It’s mid-April of 2025, and I’ve arrived just a few days before “first photon,” when light from the night sky will travel through the completed telescope and into its camera for the first time. In the control room on the second floor, engineers and astronomers make plans for the evening’s tests. O’Mullane and I head up into a high bay that contains the silvering chamber for the telescope’s mirrors and a clean room for the camera and its filters. Increasingly exhausting flights of stairs lead to the massive pier on which the telescope sits, and then up again into the dome.
I suddenly feel very, very small. The Simonyi Survey Telescope towers above us—350 tonnes of steel and glass, nestled within the 30-meter-wide, 650-tonne dome. One final flight of stairs and we’re standing on the telescope platform. In its parked position, the telescope is pointed at horizon, meaning that it’s looking straight at me as I step in front of it and peer inside.
The telescope’s enormous 8.4-meter primary mirror is so flawlessly reflective that it’s essentially invisible. Made of a single piece of low-expansion borosilicate glass covered in a 120-nanometer-thick layer of pure silver, the huge mirror acts as two different mirrors, with a more pronounced curvature toward the center. Standing this close means that different reflections of the mirrors, the camera, and the structure of the telescope all clash with one another in a way that shifts every time I move. I feel like if I can somehow look at it in just the right way, it will all make sense. But I can’t, and it doesn’t.
I’m rescued from madness by O’Mullane snapping photos next to me. “Why?” I ask him. “You see this every day, right?”
“This has never been seen before,” he tells me. “It’s the first time, ever, that the lens cover has been off the camera since it’s been on the telescope.” Indeed, deep inside the nested reflections I can see a blue circle, the r-band filter within the camera itself. As of today, it’s ready to capture the universe.
Back down in the control room, I find director of construction Željko Ivezić. He’s just come up from the summit hotel, which has several dozen rooms for lucky visitors like myself, plus a few even luckier staff members. The rest of the staff commutes daily from the coastal town of La Serena, a 4-hour round trip.
To me, the summit hotel seems luxurious for lodgings at the top of a remote mountain. But Ivezić has a slightly different perspective. “The European-funded telescopes,” he grumbles, “have swimming pools at their hotels. And they serve wine with lunch! Up here, there’s no alcohol. It’s an American thing.” He’s referring to the fact that Rubin is primarily funded by the U.S. National Science Foundation and the U.S. Department of Energy’s Office of Science, which have strict safety requirements.
Originally, Rubin was intended to be a dark-matter survey telescope, to search for the 85 percent of the mass of the universe that we know exists but can’t identify. In the 1970s, astronomer Vera C. Rubin pioneered a spectroscopic method to measure the speed at which stars orbit around the centers of their galaxies, revealing motion that could be explained only by the presence of a halo of invisible mass at least five times the apparent mass of the galaxies themselves. Dark matter can warp the space around it enough that galaxies act as lenses, bending light from even more distant galaxies as it passes around them. It’s this gravitational lensing that the Rubin observatory was designed to detect on a massive scale. But once astronomers considered what else might be possible with a survey telescope that combined enormous light-collecting ability with a wide field of view, Rubin’s science mission rapidly expanded beyond dark matter.
Trading the ability to focus on individual objects for a wide field of view that can see tens of thousands of objects at once provides a critical perspective for understanding our universe, says Ivezić. Rubin will complement other observatories like the Hubble Space Telescope and the James Webb Space Telescope. Hubble’s Wide Field Camera 3 and Webb’s Near Infrared Camera have fields of view of less than 0.05 square degrees each, equivalent to just a few percent of the size of a full moon. The upcoming Nancy Grace Roman Space Telescope will see a bit more, with a field of view of about one full moon. Rubin, by contrast, can image 9.6 square degrees at a time—about 45 full moons’ worth of sky.
That ultrawide view offers essential context, Ivezić explains. “My wife is American, but I’m from Croatia,” he says. “Whenever we go to Croatia, she meets many people. I asked her, ‘Did you learn more about Croatia by meeting many people very superficially, or because you know me very well?’ And she said, ‘You need both. I learn a lot from you, but you could be a weirdo, so I need a control sample.’ ” Rubin is providing that control sample, so that astronomers know just how weird whatever they’re looking at in more detail might be.
Every night, the telescope will take a thousand images, one every 34 seconds. After three or four nights, it’ll have the entire southern sky covered, and then it’ll start all over again. After a decade, Rubin will have taken more than 2 million images, generated 500 petabytes of data, and visited every object it can see at least 825 times. In addition to identifying an estimated 6 million bodies in our solar system, 17 billion stars in our galaxy, and 20 billion galaxies in our universe, Rubin’s rapid cadence means that it will be able to delve into the time domain, tracking how the entire southern sky changes on an almost daily basis.
Achieving these science goals meant pushing the technical envelope on nearly every aspect of the observatory. But what drove most of the design decisions is the speed at which Rubin needs to move (3.5 degrees per second)—the phrase most commonly used by the Rubin staff is “crazy fast.”
Crazy fast movement is why the telescope looks the way it does. The squat arrangement of the mirrors and camera centralizes as much mass as possible. Rubin’s oversize supporting pier is mostly steel rather than mostly concrete so that the movement of the telescope doesn’t twist the entire pier. And then there’s the megawatt of power required to drive this whole thing, which comes from huge banks of capacitors slung under the telescope to prevent a brownout on the summit every 30 seconds all night long.
Rubin is also unique in that it utilizes the largest digital camera ever built. The size of a small car and weighing 2,800 kilograms, the LSST camera captures 3.2-gigapixel images through six swappable color filters ranging from near infrared to near ultraviolet. The camera’s focal plane consists of 189 4K-by-4K charge-coupled devices grouped into 21 “rafts.” Every CCD is backed by 16 amplifiers that each read 1 million pixels, bringing the readout time for the entire sensor down to 2 seconds flat.
As humans with tiny eyeballs and short lifespans who are more or less stranded on Earth, we have only the faintest idea of how dynamic our universe is. To us, the night sky seems mostly static and also mostly empty. This is emphatically not the case.
In 1995, the Hubble Space Telescope pointed at a small and deliberately unremarkable part of the sky for a cumulative six days. The resulting image, called the Hubble Deep Field, revealed about 3,000 distant galaxies in an area that represented just one twenty-four-millionth of the sky. To observatories like Hubble, and now Rubin, the sky is crammed full of so many objects that it becomes a problem. As O’Mullane puts it, “There’s almost nothing not touching something.”
One of Rubin’s biggest challenges will be deblending—identifying and then separating things like stars and galaxies that appear to overlap. This has to be done carefully by using images taken through different filters to estimate how much of the brightness of a given pixel comes from each object.
At first, Rubin won’t have this problem. At each location, the camera will capture one 30-second exposure before moving on. As Rubin returns to each location every three or four days, subsequent exposures will be combined in a process called coadding. In a coadded image, each pixel represents all of the data collected from that location in every previous image, which results in a much longer effective exposure time. The camera may record only a few photons from a distant galaxy in each individual image, but a few photons per image added together over 825 images yields much richer data. By the end of Rubin’s 10-year survey, the coadding process will generate images with as much detail as a typical Hubble image, but over the entire southern sky. A few lucky areas called “deep drilling fields” will receive even more attention, with each one getting a staggering 23,000 images or more.
Rubin will add every object that it detects to its catalog, and over time, the catalog will provide a baseline of the night sky, which the observatory can then use to identify changes. Some of these changes will be movement—Rubin may see an object in one place, and then spot it in a different place some time later, which is how objects like near-Earth asteroids will be detected. But the vast majority of the changes will be in brightness rather than movement.
Every image that Rubin collects will be compared with a baseline image, and any change will automatically generate a software alert within 60 seconds of when the image was taken. Rubin’s wide field of view means that there will be a lot of these alerts—on the order of 10,000 per image, or 10 million alerts per night. Other automated systems will manage the alerts. Called alert brokers, they ingest the alert streams and filter them for the scientific community. If you’re an astronomer interested in Type Ia supernovae, for example, you can subscribe to an alert broker and set up a filter so that you’ll get notified when Rubin spots one.
Many of these alerts will be triggered by variable stars, which cyclically change in brightness. Rubin is also expected to identify somewhere between 3 million and 4 million supernovae—that works out to over a thousand new supernovae for every night of observing. And the rest of the alerts? Nobody knows for sure, and that’s why the alerts have to go out so quickly, so that other telescopes can react to make deeper observations of what Rubin finds.
After the data leaves Rubin’s camera, most of the processing will take place at the SLAC National Accelerator Laboratory in Menlo Park, Calif., over 9,000 kilometers from Cerro Pachón. It takes less than 10 seconds for an image to travel from the focal plane of the camera to SLAC, thanks to a 600-gigabit fiber connection from the summit to La Serena, and from there, a dedicated 100-gigabit line and a backup 40-gigabit line that connect to the Department of Energy’s science network in the United States. The 20 terabytes of data that Rubin will produce nightly makes this bandwidth necessary. “There’s a new image every 34 seconds,” O’Mullane tells me. “If I can’t deal with it fast enough, I start to get behind. So everything has to happen on the cadence of half a minute if I want to keep up with the data flow.”
At SLAC, each image will be calibrated and cleaned up, including the removal of satellite trails. Rubin will see a lot of satellites, but since the satellites are unlikely to appear in the same place in every image, the impact on the data is expected to be minimal when the images are coadded. The processed image is compared with a baseline image and any alerts are sent out, by which time processing of the next image has already begun.
As Rubin’s catalog of objects grows, astronomers will be able to query it in all kinds of useful ways. Want every image of a particular patch of sky? No problem. All the galaxies of a certain shape? A little trickier, but sure. Looking for 10,000 objects that are similar in some dimension to 10,000 other objects? That might take a while, but it’s still possible. Astronomers can even run their own code on the raw data.
“Pretty much everyone in the astronomy community wants something from Rubin,” O’Mullane explains, “and so they want to make sure that we’re treating the data the right way. All of our code is public. It’s on GitHub. You can see what we’re doing, and if you’ve got a better solution, we’ll take it.”
One better solution may involve AI. “I think as a community we’re struggling with how we do this,” says O’Mullane. “But it’s probably something we ought to do—curating the data in such a way that it’s consumable by machine learning, providing foundation models, that sort of thing.”
The data management system is arguably as much of a critical component of the Rubin observatory as the telescope itself. While most telescopes make targeted observations that get distributed to only a few astronomers at a time, Rubin will make its data available to everyone within just a few days, which is a completely different way of doing astronomy. “We’ve essentially promised that we will take every image of everything that everyone has ever wanted to see,” explains Kevin Reil, Rubin observatory scientist. “If there’s data to be collected, we will try to collect it. And if you’re an astronomer somewhere, and you want an image of something, within three or four days we’ll give you one. It’s a colossal challenge to deliver something on this scale.”
The more time I spend on the summit, the more I start to think that the science that we know Rubin will accomplish may be the least interesting part of its mission. And despite their best efforts, I get the sense that everyone I talk to is wildly understating the impact it will have on astronomy. The sheer volume of objects, the time domain, the 10 years of coadded data—what new science will all of that reveal? Astronomers have no idea, because we’ve never looked at the universe in this way before. To me, that’s the most fascinating part of what’s about to happen.
Reil agrees. “You’ve been here,” he says. “You’ve seen what we’re doing. It’s a paradigm shift, a whole new way of doing things. It’s still a telescope and a camera, but we’re changing the world of astronomy. I don’t know how to capture—I mean, it’s the people, the intensity, the awesomeness of it. I want the world to understand the beauty of it all.”
Because nobody has built an observatory like Rubin before, there are a lot of things that aren’t working exactly as they should, and a few things that aren’t working at all. The most obvious of these is the dome. The capacitors that drive it blew a fuse the day before I arrived, and the electricians are off the summit for the weekend. The dome shutter can’t open either. Everyone I talk to takes this sort of thing in stride—they have to, because they’ve been troubleshooting issues like these for years.
I sit down with Yousuke Utsumi, a camera operations scientist who exudes the mixture of excitement and exhaustion that I’m getting used to seeing in the younger staff. “Today is amazingly quiet,” he tells me. “I’m happy about that. But I’m also really tired. I just want to sleep.”
Just yesterday, Utsumi says, they managed to finally solve a problem that the camera team had been struggling with for weeks—an intermittent fault in the camera cooling system that only seemed to happen when the telescope was moving. This was potentially a very serious problem, and Utsumi’s phone would alert him every time the fault occurred, over and over again in the middle of the night. The fault was finally traced to a cable within the telescope’s structure that used pins that were slightly too small, leading to a loose connection.
Utsumi’s contract started in 2017 and was supposed to last three years, but he’s still here. “I wanted to see first photon,” he says. “I’m an astronomer. I’ve been working on this camera so that it can observe the universe. And I want to see that light, from those photons from distant galaxies.” This is something I’ve also been thinking about—those lonely photons traveling through space for billions of years, and within the coming days, a lucky few of them will land on the sensors Utsumi has been tending, and we’ll get to see them. He nods, smiling. “I don’t want to lose one, you know?”
Rubin’s commissioning scientists have a unique role, working at the intersection of science and engineering to turn a bunch of custom parts into a functioning science instrument. Commissioning scientist Marina Pavlovic is a postdoc from Serbia with a background in the formation of supermassive black holes created by merging galaxies. “I came here last year as a volunteer,” she tells me. “My plan was to stay for three months, and 11 months later I’m a commissioning scientist. It’s crazy!”
Pavlovic’s job is to help diagnose and troubleshoot whatever isn’t working quite right. And since most things aren’t working quite right, she’s been very busy. “I love when things need to be fixed because I am learning about the system more and more every time there’s a problem—every day is a new experience here.”
I ask her what she’ll do next, once Rubin is up and running. “If you love commissioning instruments, that is something that you can do for the rest of your life, because there are always going to be new instruments,” she says.
Before that happens, though, Pavlovic has to survive the next few weeks of going on sky. “It’s going to be so emotional. It’s going to be the beginning of a new era in astronomy, and knowing that you did it, that you made it happen, at least a tiny percent of it, that will be a priceless moment.”
“I had to learn how to calm down to do this job,” she admits, “because sometimes I get too excited about things and I cannot sleep after that. But it’s okay. I started doing yoga, and it’s working.”
My stay on the summit comes to an end on 14 April, just a day before first photon, so as soon as I get home I check in with some of the engineers and astronomers that I met to see how things went. Guillem Megias Homar manages the adaptive optics system—232 actuators that flex the surfaces of the telescope’s three mirrors a few micrometers at a time to bring the image into perfect focus. Currently working on his Ph.D., he was born in 1997, one year after the Rubin project started.
First photon, for him, went like this: “I was in the control room, sitting next to the camera team. We have a microphone on the camera, so that we can hear when the shutter is moving. And we hear the first click. And then all of a sudden, the image shows up on the screens in the control room, and it was just an explosion of emotions. All that we have been fighting for is finally a reality. We are on sky!” There were toasts (with sparkling apple juice, of course), and enough speeches that Megias Homar started to get impatient: “I was like, when can we start working? But it was only an hour, and then everything became much more quiet.”
“It was satisfying to see that everything that we’d been building was finally working,” Victor Krabbendam, project manager for Rubin construction, tells me a few weeks later. “But some of us have been at this for so long that first photon became just one of many firsts.” Krabbendam has been with the observatory full-time for the last 21 years. “And the very moment you succeed with one thing, it’s time to be doing the next thing.”
Since first photon, Rubin has been undergoing calibrations, collecting data for the first images that it’s now sharing with the world, and preparing to scale up to begin its survey. Operations will soon become routine, the commissioning scientists will move on, and eventually, Rubin will largely run itself, with just a few people at the observatory most nights.
But for astronomers, the next 10 years will be anything but routine. “It’s going to be wildly different,” says Krabbendam. “Rubin will feed generations of scientists with trillions of data points of billions of objects. Explore the data. Harvest it. Develop your idea, see if it’s there. It’s going to be phenomenal.”
As part of an experiment with AI storytelling tools, author Evan Ackerman—who visited the Vera C. Rubin Observatory in Chile for four days this past April—fed over 14 hours of raw audio from his interviews and other reporting notes into NotebookLM, an AI-powered research assistant developed by Google. The result is a podcast-style audio experience that you can listen to here. While the script and voices are AI-generated, the conversation is grounded in Ackerman’s original reporting, and includes many details that did not appear in the article above. Ackerman reviewed and edited the audio to ensure accuracy, and there are minor corrections in the transcript. Let us know what you think of this experiment in AI narration.
0:01: Today we’re taking a deep dive into the engineering marvel that is the Vera C. Rubin Observatory.
0:06: And and it really is a marvel.
0:08: This project pushes the limits, you know, not just for the science itself, like mapping the Milky Way or exploring dark energy, which is amazing, obviously.
0:16: But it’s also pushing the limits in just building the tools, the technical ingenuity, the, the sheer human collaboration needed to make something this complex actually work.
0:28: That’s what’s really fascinating to me.
0:29: Exactly.
0:30: And our mission for this deep dive is to go beyond the headlines, isn’t it?
0:33: We want to uncover those specific Kind of hidden technical details, the stuff from the audio interviews, the internal docs that really define this observatory.
0:41: The clever engineering solutions.
0:43: Yeah, the nuts and bolts, the answers to challenges nobody’s faced before, stuff that anyone who appreciates, you know, complex systems engineering would find really interesting.
0:53: Definitely.
0:54: So let’s start right at the heart of it.
0:57: The Simonyi survey telescope itself.
1:00: It’s this 350 ton machine inside a 600 ton dome, 30 m wide, huge. [The dome is closer to 650 tons.]
1:07: But the really astonishing part is its speed, speed and precision.
1:11: How do you even engineer something that massive to move that quickly while keeping everything stable down to the submicron level? [Micron level is more accurate.]
1:18: Well, that’s, that’s the core challenge, right?
1:20: This telescope, it can hit a top speed of 3.5 degrees per second.
1:24: Wow.
1:24: Yeah, and it can, you know, move to basically any point in the sky.
1:28: In under 20 seconds, 20 seconds, which makes it by far the fastest moving large telescope ever built, and the dome has to keep up.
1:36: So it’s also the fastest moving dome.
1:38: So the whole building is essentially racing along with the telescope.
1:41: Exactly.
1:41: And achieving that meant pretty much every component had to be custom designed like the pier holding the telescope up.
1:47: It’s mostly steel, not concrete.
1:49: Oh, interesting.
1:50: Why steel?
1:51: Specifically to stop it from twisting or vibrating when the telescope makes those incredibly fast moves.
1:56: Concrete just wouldn’t handle the torque the same way. [The pier is more steel than concrete, but it's still substantially concrete.]
1:59: OK, that makes sense.
1:59: And the power needed to accelerate and decelerate, you know, 300 tons, that must be absolutely massive.
2:06: Oh.
2:06: The instantaneous draw would be enormous.
2:09: How did they manage that without like dimming the lights on the whole.
2:12: Mountaintop every 30 seconds.
2:14: Yeah, that was a real concern, constant brownouts.
2:17: The solution was actually pretty elegant, involving these onboard capacitor banks.
2:22: Yep, slung right underneath the telescope structure.
2:24: They can slowly sip power from the grid, store it up over time, and then bam, discharge it really quickly for those big acceleration surges.
2:32: like a giant camera flash, but for moving a telescope, of yeah.
2:36: It smooths out the demand, preventing those grid disruptions.
2:40: Very clever engineering.
2:41: And beyond the movement, the mirrors themselves, equally critical, equally impressive, I imagine.
2:47: How did they tackle designing and making optics that large and precise?
2:51: Right, so the main mirror, the primary mirror, M1M3.
2:55: It’s a single piece of glass, 8.4 m across, low expansion borosilicate glass.
3:01: And that 8.4 m size, was that just like the biggest they could manage?
3:05: Well, it was a really crucial early decision.
3:07: The science absolutely required something at least 7 or 8 m wide.
3:13: But going much bigger, say 10 or 12 m, the logistics became almost impossible.
3:19: The big one was transport.
3:21: There’s a tunnel on the mountain road up to the summit, and a mirror, much larger than 8.4 m, physically wouldn’t fit through it.
3:28: No way.
3:29: So the tunnel actually set an upper limit on the mirror size.
3:31: Pretty much, yeah.
3:32: Building new road or some other complex transport method.
3:36: It would have added enormous cost and complexity.
3:38: So 8.4 m was that sweet spot between scientific need.
3:42: And, well, physical reality.
3:43: Wow, a real world constraint driving fundamental design.
3:47: And the mirror itself, you said M1 M3, it’s not just one simple mirror surface.
3:52: Correct.
3:52: It’s technically two mirror surfaces ground into that single piece of glass.
3:57: The central part has a more pronounced curvature.
3:59: It’s M1 and M3 combined.
4:00: OK, so fabricating that must have been tricky, especially with what, 10 tons of glass just in the center.
4:07: Oh, absolutely novel and complicated.
4:09: And these mirrors, they don’t support their own weight rigidly.
4:12: So just handling them during manufacturing, polishing, even getting them out of the casting mold, was a huge engineering challenge.
4:18: You can’t just lift it like a dinner plate.
4:20: Not quite, and then there’s maintaining it, re-silvering.
4:24: They hope to do it every 5 years.
4:26: Well, traditionally, big mirrors like this often need it more, like every 1.5 to 2 years, and it’s a risky weeks-long job.
4:34: You have to unbolt this priceless, unique piece of equipment, move it.
4:39: It’s nerve-wracking.
4:40: I bet.
4:40: And the silver coating itself is tiny, right?
4:42: Incredibly thin, just a few nanometers of pure silver.
4:46: It takes about 24 g for the whole giant surface, bonded with the adhesive layers that are measured in Angstroms. [It's closer to 26 grams of silver.]
4:52: It’s amazing precision.
4:54: So tying this together, you have this fast moving telescope, massive mirrors.
4:59: How do they keep everything perfectly focused, especially with multiple optical elements moving relative to each other?
5:04: that’s where these things called hexapods come in.
5:08: Really crucial bits of kit.
5:09: Hexapods, like six feet?
5:12: Sort of.
5:13: They’re mechanical systems with 6 adjustable arms or struts.
5:17: A simpler telescope might just have one maybe on the camera for basic focusing, but Ruben needs more because it’s got the 3 mirrors plus the camera.
5:25: Exactly.
5:26: So there’s a hexapod mounted on the secondary mirror, M2.
5:29: Its job is to keep M2 perfectly positioned relative to M1 and M3, compensating for tiny shifts or flexures.
5:36: And then there’s another hexapod on the camera itself.
5:39: That one adjusts the position and tilt of the entire camera’s sensor plane, the focal plane.
5:43: To get that perfect focus across the whole field of view.
5:46: And these hexapods move in 6 ways.
5:48: Yep, 6 degrees of freedom.
5:50: They can adjust position along the X, Y, and Z axis, and they can adjust rotation or tilt around those 3 axes as well.
5:57: It allows for incredibly fine adjustments, microp precision stuff.
6:00: So they’re constantly making these tiny tweaks as the telescope moves.
6:04: Constantly.
6:05: The active optics system uses them.
6:07: It calculates the needed corrections based on reference stars in the images, figures out how the mirror might be slightly bending.
6:13: And then tells the hexapods how to compensate.
6:15: It’s controlling like 26 g of silver coating on the mirror surface down to micron precision, using the mirror’s own natural bending modes.
6:24: It’s pretty wild.
6:24: Incredible.
6:25: OK, let’s pivot to the camera itself.
6:28: The LSST camera.
6:29: Big digital camera ever built, right?
6:31: Size of a small car, 2800 kg, captures 3.2 gigapixel images, just staggering numbers.
6:38: They really are, and the engineering inside is just as staggering.
6:41: That Socal plane where the light actually hits.
6:43: It’s made up of 189 individual CCD sensors.
6:47: Yep, 4K by 4K CCDs grouped into 21 rafts.
6:50: They give them like tiles, and each CCD has 16 amplifiers reading it out.
6:54: Why so many amplifiers?
6:56: Speed.
6:56: Each amplifier reads out about a million pixels.
6:59: By dividing the job up like that, they can read out the entire 3.2 gigapixel sensor in just 2 seconds.
7:04: 2 seconds for that much data.
7:05: Wow.
7:06: It’s essential for the survey’s rapid cadence.
7:09: Getting all those 189 CCDs perfectly flat must have been, I mean, are they delicate?
7:15: Unbelievably delicate.
7:16: They’re silicon wafers only 100 microns thick.
7:18: How thick is that really?
7:19: about the thickness of a human hair.
7:22: You could literally break one by breathing on it wrong, apparently, seriously, yeah.
7:26: And the challenge was aligning all 189 of them across this 650 millimeter wide focal plane, so the entire surface is flat.
7:34: To within just 24 microns, peak to valley.
7:37: 24 microns.
7:39: That sounds impossibly flat.
7:40: It’s like, imagine the entire United States.
7:43: Now imagine the difference between the lowest point and the highest point across the whole country was only 100 ft.
7:49: That’s the kind of relative flatness they achieved on the camera sensor.
7:52: OK, that puts it in perspective.
7:53: And why is that level of flatness so critical?
7:56: Because the telescope focuses light.
7:58: terribly.
7:58: It’s an F1.2 system, which means it has a very shallow depth of field.
8:02: If the sensors aren’t perfectly in that focal plane, even by a few microns, parts of the image go out of focus.
8:08: Gotcha.
8:08: And the pixels themselves, the little light buckets on the CCDs, are they special?
8:14: They’re custom made, definitely.
8:16: They settled on 10 micron pixels.
8:18: They figured anything smaller wouldn’t actually give them more useful scientific information.
8:23: Because you start hitting the limits of what the atmosphere and the telescope optics themselves can resolve.
8:28: So 10 microns was the optimal size, right?
8:31: balancing sensor tech with physical limits.
8:33: Now, keeping something that sensitive cool, that sounds like a nightmare, especially with all those electronics.
8:39: Oh, it’s a huge thermal engineering challenge.
8:42: The camera actually has 3 different cooling zones, 3 distinct temperature levels inside.
8:46: 3.
8:47: OK.
8:47: First, the CCDs themselves.
8:49: They need to be incredibly cold to minimize noise.
8:51: They operate at -125 °C.
8:54: -125C, how do they manage that?
8:57: With a special evaporator plate connected to the CCD rafts by flexible copper braids, which pulls heat away very effectively.
9:04: Then you’ve got the cameras, electronics, the readout boards and stuff.
9:07: They run cooler than room temp, but not that cold, around -50 °C.
9:12: OK.
9:12: That requires a separate liquid cooling loop delivered through these special vacuum insulated tubes to prevent heat leaks.
9:18: And the third zone.
9:19: That’s for the electronics in the utility trunk at the back of the camera.
9:23: They generate a fair bit of heat, about 3000 watts, like a few hair dryers running constantly.
9:27: Exactly.
9:28: So there’s a third liquid cooling system just for them, keeping them just slightly below the ambient room temperature in the dome.
9:35: And all this cooling, it’s not just to keep the parts from overheating, right?
9:39: It affects the images, absolutely critical for image quality.
9:44: If the outer surface of the camera body itself is even slightly warmer or cooler than the air inside the dome, it creates tiny air currents, turbulence right near the light path.
9:57: And that shows up as little wavy distortions in the images, messing up the precision.
10:02: So even the outside temperature of the camera matters.
10:04: Yep, it’s not just a camera.
10:06: They even have to monitor the heat generated by the motors that move the massive dome, because that heat could potentially cause enough air turbulence inside the dome to affect the image quality too.
10:16: That’s incredible attention to detail, and the camera interior is a vacuum you mentioned.
10:21: Yes, a very strong vacuum.
10:23: They pump it down about once a year, first using turbopumps spinning at like 80,000 RPM to get it down to about 102 tor.
10:32: Then they use other methods to get it down much further.
10:34: The 107 tor, that’s an ultra high vacuum.
10:37: Why the vacuum?
10:37: Keep frost off the cold part.
10:39: Exactly.
10:40: Prevents condensation and frost on those negatives when it 25 degree CCDs and generally ensures everything works optimally.
10:47: For normal operation, day to day, they use something called an ion pump.
10:51: How does that work?
10:52: It basically uses a strong electric field to ionize any stray gas molecules, mostly hydrogen, and trap them, effectively removing them from the vacuum space, very efficient for maintaining that ultra-high vacuum.
11:04: OK, so we have this incredible camera taking these massive images every few seconds.
11:08: Once those photons hit the CCDs and become digital signals, What happens next?
11:12: How does Ruben handle this absolute flood of data?
11:15: Yeah, this is where Ruben becomes, you know, almost as much a data processing machine as a telescope.
11:20: It’s designed for the data output.
11:22: So photons hit the CCDs, get converted to electrical signals.
11:27: Then, interestingly, they get converted back into light signals, photonic signals back to light.
11:32: Why?
11:33: To send them over fiber optics.
11:34: They’re about 6 kilometers of fiber optic cable running through the observatory building.
11:39: These signals go to FPGA boards, field programmable gate arrays in the data acquisition system.
11:46: OK.
11:46: And those FPGAs are basically assembling the complete image data packages from all the different CCDs and amplifiers.
11:53: That sounds like a fire hose of data leaving the camera.
11:56: How does it get off the mountain and where does it need to go?
11:58: And what about all the like operational data, temperatures, positions?
12:02: Good question.
12:03: There are really two main data streams all that telemetry you mentioned, sensor readings, temperatures, actuator positions, command set, everything about the state of the observatory that all gets collected into something called the Engineering facility database or EFD.
12:16: They use Kafka for transmitting that data.
12:18: It’s good for high volume streams, and store it in an influx database, which is great for time series data like sensor readings.
12:26: And astronomers can access that.
12:28: Well, there’s actually a duplicate copy of the EFD down at SLAC, the research center in California.
12:34: So scientists and engineers can query that copy without bogging down the live system running on the mountain.
12:40: Smart.
12:41: How much data are we talking about there?
12:43: For the engineering data, it’s about 20 gigabytes per night, and they plan to keep about a year’s worth online.
12:49: OK.
12:49: And the image data, the actual science pixels.
12:52: That takes a different path. [All of the data from Rubin to SLAC travels over the same network.]
12:53: It travels over dedicated high-speed network links, part of ESET, the research network, all the way from Chile, usually via Boca Raton, Florida, then Atlanta, before finally landing at SLAC.
13:05: And how fast does that need to be?
13:07: The goal is super fast.
13:09: They aim to get every image from the telescope in Chile to the data center at SLAC within 7 seconds of the shutter closing.
13:15: 7 seconds for gigabytes of data.
13:18: Yeah.
13:18: Sometimes network traffic bumps it up to maybe 30 seconds or so, but the target is 7.
13:23: It’s crucial for the next step, which is making sense of it all.
13:27: How do astronomers actually use this, this torrent of images and data?
13:30: Right.
13:31: This really changes how astronomy might be done.
13:33: Because Ruben is designed to generate alerts, real-time notifications about changes in the sky.
13:39: Alerts like, hey, something just exploded over here.
13:42: Pretty much.
13:42: It takes an image compared to the previous images of the same patch of sky and identifies anything that’s changed, appeared, disappeared, moved, gotten brighter, or fainter.
13:53: It expects to generate about 10,000 such alerts per image.
13:57: 10,000 per image, and they take an image every every 20 seconds or so on average, including readouts. [Images are taken every 34 seconds: a 30 second exposure, and then about 4 seconds for the telescope to move and settle.]
14:03: So you’re talking around 10 million alerts every single night.
14:06: 10 million a night.
14:07: Yep.
14:08: And the goal is to get those alerts out to the world within 60 seconds of the image being taken.
14:13: That’s insane.
14:14: What’s in an alert?
14:15: It contains the object’s position, brightness, how it’s changed, and little cut out images, postage stamps in the last 12 months of observations, so astronomers can quickly see the history.
14:24: But surely not all 10 million are real astronomical events satellites, cosmic rays.
14:30: Exactly.
14:31: The observatory itself does a first pass filter, masking out known issues like satellite trails, cosmic ray hits, atmospheric effects, with what they call real bogus stuff.
14:41: OK.
14:42: Then, this filtered stream of potentially real alerts goes out to external alert brokers.
14:49: These are systems run by different scientific groups around the world.
14:52: Yeah, and what did the brokers do?
14:53: They ingest the huge stream from Ruben and apply their own filters, based on what their particular community is interested in.
15:00: So an astronomer studying supernovae can subscribe to a broker that filters just for likely supernova candidates.
15:06: Another might filter for near Earth asteroids or specific types of variable stars.
15:12: so it makes the fire hose manageable.
15:13: You subscribe to the trickle you care about.
15:15: Precisely.
15:16: It’s a way to distribute the discovery potential across the whole community.
15:19: So it’s not just raw images astronomers get, but these alerts and presumably processed data too.
15:25: Oh yes.
15:26: Rubin provides the raw images, but also fully processed images, corrected for instrument effects, calibrated called processed visit images.
15:34: And also template images, deep combinations of previous images used for comparison.
15:38: And managing all that data, 15 petabytes you mentioned, how do you query that effectively?
15:44: They use a system called Keyserve. [The system is "QServ."]
15:46: It’s a distributed relational database, custom built basically, designed to handle these enormous astronomical catalogs.
15:53: The goal is to let astronomers run complex searches across maybe 15 petabytes of catalog data and get answers back in minutes, not days or weeks.
16:02: And how do individual astronomers actually interact with it?
16:04: Do they download petabytes?
16:06: No, definitely not.
16:07: For general access, there’s a science platform, the front end of which runs on Google Cloud.
16:11: Users interact mainly through Jupiter notebooks.
16:13: Python notebooks, familiar territory for many scientists.
16:17: Exactly.
16:18: They can write arbitrary Python code, access the catalogs directly, do analysis for really heavy duty stuff like large scale batch processing.
16:27: They can submit jobs to the big compute cluster at SLEC, which sits right next to the data storage.
16:33: That’s much more efficient.
16:34: Have they tested this?
16:35: Can it handle thousands of astronomers hitting it at once?
16:38: They’ve done extensive testing, yeah, scaled it up with hundreds of users already, and they seem confident they can handle up to maybe 3000 simultaneous users without issues.
16:49: And a key point.
16:51: After an initial proprietary period for the main survey team, all the data and importantly, all the software algorithms used to process it become public.
17:00: Open source algorithms too.
17:01: Yes, the idea is, if the community can improve on their processing pipelines, they’re encouraged to contribute those solutions back.
17:08: It’s meant to be a community resource.
17:10: That open approach is fantastic, and even the way the images are presented visually has some deep thought behind it, doesn’t it?
17:15: You mentioned Robert Leptina’s perspective.
17:17: Yes, this is fascinating.
17:19: It’s about how you assign color to astronomical images, which usually combine data from different filters, like red, green, blue.
17:28: It’s not just about making pretty pictures, though they can be beautiful.
17:31: Right, it should be scientifically meaningful.
17:34: Exactly.
17:35: Lepton’s approach tries to preserve the inherent color information in the data.
17:40: Many methods saturate bright objects, making their centers just white blobs.
17:44: Yeah, you see that a lot.
17:46: His algorithm uses a different mathematical scaling, more like a logarithmic scale, that avoids this saturation.
17:52: It actually propagates the true color information back into the centers of bright stars and galaxies.
17:57: So, a galaxy that’s genuinely redder, because it’s red shifted, will actually look redder in the image, even in its bright core.
18:04: Precisely, in a scientifically meaningful way.
18:07: Even if our eyes wouldn’t perceive it quite that way directly through a telescope, the image renders the data faithfully.
18:13: It helps astronomers visually interpret the physics.
18:15: It’s a subtle but powerful detail in making the data useful.
18:19: It really is.
18:20: Beyond just taking pictures, I heard Ruben’s wide view is useful for something else entirely gravitational waves.
18:26: That’s right.
18:26: It’s a really cool synergy.
18:28: Gravitational wave detectors like Lego and Virgo, they detect ripples in space-time, often from emerging black holes or neutron stars, but they usually only narrow down the location to a relatively large patch of sky, maybe 10 square degrees or sometimes much more.
18:41: Ruben’s camera has a field of view of about 9.6 square degrees.
18:45: That’s huge for a telescope.
18:47: It almost perfectly matches the typical LIGO alert area.
18:51: so when LIGO sends an alert, Ruben can quickly scan that whole error box, maybe taking just a few pointings, looking for any new point of light.
19:00: The optical counterpart, the Killanova explosion, or whatever light accompany the gravitational wave event.
19:05: It’s a fantastic follow-up machine.
19:08: Now, stepping back a bit, this whole thing sounds like a colossal integration challenge.
19:13: A huge system of systems, many parts custom built, pushed to their limits.
19:18: What were some of those big integration hurdles, bringing it all together?
19:22: Yeah, classic system of systems is a good description.
19:25: And because nobody’s built an observatory quite like this before, a lot of the commissioning phase, getting everything working together involves figuring out the procedures as they go.
19:34: Learning by doing on a massive scale.
19:36: Pretty much.
19:37: They’re essentially, you know, teaching the system how to walk.
19:40: And there’s this constant tension, this balancing act.
19:43: Do you push forward, maybe build up some technical debt, things you know you’ll have to fix later, or do you stop and make sure every little issue is 100% perfect before moving on, especially with a huge distributed team?
19:54: I can imagine.
19:55: And you mentioned the dome motors earlier.
19:57: That discovery about heat affecting images sounds like a perfect example of unforeseen integration issues.
20:03: Exactly.
20:03: Marina Pavvich described that.
20:05: They ran the dome motors at full speed, something maybe nobody had done for extended periods in that exact configuration before, and realized, huh.
20:13: The heat these generate might actually cause enough air turbulence to mess with our image quality.
20:19: That’s the kind of thing you only find when you push the integrated system.
20:23: Lots of unexpected learning then.
20:25: What about interacting with the outside world?
20:27: Other telescopes, the atmosphere itself?
20:30: How does Ruben handle atmospheric distortion, for instance?
20:33: that’s another interesting point.
20:35: Many modern telescopes use lasers.
20:37: They shoot a laser up into the sky to create an artificial guide star, right, to measure.
20:42: Atmospheric turbulence.
20:43: Exactly.
20:44: Then they use deformable mirrors to correct for that turbulence in real time.
20:48: But Ruben cannot use a laser like that.
20:50: Why?
20:51: Because its field of view is enormous.
20:53: It sees such a wide patch of sky at once.
20:55: A single laser beam, even a pinpoint from another nearby observatory, would contaminate a huge fraction of Ruben’s image.
21:03: It would look like a giant streak across, you know, a quarter of the sky for Ruben.
21:06: Oh, wow.
21:07: OK.
21:08: Too much interference.
21:09: So how does it correct for the atmosphere?
21:11: Software.
21:12: It uses a really clever approach called forward modeling.
21:16: It looks at the shapes of hundreds of stars across its wide field of view in each image.
21:21: It knows what those stars should look like, theoretically.
21:25: Then it builds a complex mathematical model of the atmosphere’s distorting effect across the entire field of view that would explain the observed star shapes.
21:33: It iterates this model hundreds of times per image until it finds the best fit. [The model is created by iterating on the image data, but iteration is not necessary for every image.]
21:38: Then it uses that model to correct the image, removing the atmospheric blurring.
21:43: So it calculates the distortion instead of measuring it directly with a laser.
21:46: Essentially, yes.
21:48: Now, interestingly, there is an auxiliary telescope built alongside Ruben, specifically designed to measure atmospheric properties independently.
21:55: Oh, so they could use that data.
21:57: They could, but currently, they’re finding their software modeling approach using the science images themselves, works so well that they aren’t actively incorporating the data from the auxiliary telescope for that correction right now.
22:08: The software solution is proving powerful enough on its own.
22:11: Fascinating.
22:12: And they still have to coordinate with other telescopes about their lasers, right?
22:15: Oh yeah.
22:15: They have agreements about when nearby observatories can point their lasers, and sometimes Ruben might have to switch to a specific filter like the Iband, which is less sensitive to the laser.
22:25: Light if one is active nearby while they’re trying to focus.
22:28: So many interacting systems.
22:30: What an incredible journey through the engineering of Ruben.
22:33: Just the sheer ingenuity from the custom steel pier and the capacitor banks, the hexapods, that incredibly flat camera, the data systems.
22:43: It’s truly a machine built to push boundaries.
22:45: It really is.
22:46: And it’s important to remember, this isn’t just, you know, a bigger version of existing telescopes.
22:51: It’s a fundamentally different kind of machine.
22:53: How so?
22:54: By creating this massive all-purpose data set, imaging the entire southern sky over 800 times, cataloging maybe 40 billion objects, it shifts the paradigm.
23:07: Astronomy becomes less about individual scientists applying for time to point a telescope at one specific thing and more about statistical analysis, about mining this unprecedented ocean of data that Rubin provides to everyone.
23:21: So what does this all mean for us, for science?
23:24: Well, it’s a generational investment in fundamental discovery.
23:27: They’ve optimized this whole system, the telescope, the camera, the data pipeline.
23:31: For finding, quote, exactly the stuff we don’t know we’ll find.
23:34: Optimized for the unknown, I like that.
23:36: Yeah, we’re basically generating this incredible resource that will feed generations of astronomers and astrophysicists.
23:42: They’ll explore it, they’ll harvest discoveries from it, they’ll find patterns and objects and phenomena within billions and billions of data points that we can’t even conceive of yet.
23:50: And that really is the ultimate excitement, isn’t it?
23:53: Knowing that this monumental feat of engineering isn’t just answering old questions, but it’s poised to open up entirely new questions about the universe, questions we literally don’t know how to ask today.
24:04: Exactly.
24:05: So, for you, the listener, just think about that.
24:08: Consider the immense, the completely unknown discoveries that are waiting out there just waiting to be found when an entire universe of data becomes accessible like this.
24:16: What might we find?
2025-06-21 00:30:03
Video Friday is your weekly selection of awesome robotics videos, collected by your friends at IEEE Spectrum robotics. We also post a weekly calendar of upcoming robotics events for the next few months. Please send us your events for inclusion.
Enjoy today’s videos!
This is the first successful vertical takeoff of a jet-powered flying humanoid robot, developed by Artificial and Mechanical Intelligence (AMI) at Istituto Italiano di Tecnologia (IIT). The robot lifted ~50 cm off the ground while maintaining dynamic stability, thanks to advanced AI-based control systems and aerodynamic modeling.
We will have much more on this in the coming weeks!
As a first step toward our mission of deploying general-purpose robots, we are pushing the frontiers of what end-to-end AI models can achieve in the real world. We’ve been training models and evaluating their capabilities for dexterous sensorimotor policies across different embodiments, environments, and physical interactions. We’re sharing capability demonstrations on tasks stressing different aspects of manipulation: fine motor control, spatial and temporal precision, generalization across robots and settings, and robustness to external disturbances.
Thanks, Noah!
Ground Control Robotics is introducing SCUTTLE, our newest elongate multilegged platform for mobility anywhere!
Teleoperation has been around for a while, but what hasn’t been is precise, real-time force feedback. That’s where Flexiv steps in to shake things up. Now, whether you’re across the room or across the globe, you can experience seamless, high-fidelity remote manipulation with a sense of touch.
This sort of thing usually takes some human training, for which you’d be best served by robot arms with precise, real-time force feedback. Hmm, I wonder where you’d find those...?
[Flexiv]
The 1X World Model is a data-driven simulator for humanoid robots built with a grounded understanding of physics. It allows us to predict—or “hallucinate”—the outcomes of NEO’s actions before they’re taken in the real world. Using the 1X World Model, we can instantly assess the performance of AI models—compressing development time and providing a clear benchmark for continuous improvement.
[1X]
SLAPBOT is an interactive robotic artwork by Hooman Samani and Chandler Cheng, exploring the dynamics of physical interaction, artificial agency, and power. The installation features a robotic arm fitted with a soft, inflatable hand that delivers slaps through pneumatic actuation, transforming a visceral human gesture into a programmed robotic response.
I asked, of course, whether SLAPBOT slaps people, and it does not: “Despite its provocative concept and evocative design, SLAPBOT does not make physical contact with human participants. It simulates the gesture of slapping without delivering an actual strike. The robotic arm’s movements are precisely choreographed to suggest the act, yet it maintains a safe distance.”
[SLAPBOT]
Thanks, Hooman!
Inspecting the bowels of ships is something we’d really like robots to be doing for us, please and thank you.
[Norwegian University of Science and Technology] via [GitHub]
Thanks, Kostas!
H2L Corporation (hereinafter referred to as H2L) has unveiled a new product called “Capsule Interface,” which transmits whole-body movements and strength, enabling new shared experiences with robots and avatars. A product introduction video depicting a synchronization never before experienced by humans was also released.
[H2L Corp.] via [RobotStart]
How do you keep a robot safe without requiring it to look at you? Radar!
[Paper] via [IEEE Sensors Journal]
Thanks, Bram!
We propose Aerial Elephant Trunk, an aerial continuum manipulator inspired by the elephant trunk, featuring a small-scale quadrotor and a dexterous, compliant tendon-driven continuum arm for versatile operation in both indoor and outdoor settings.
[Adaptive Robotics Controls Lab]
This video demonstrates a heavy weight lifting test using the ARMstrong Dex robot, focusing on a 40 kg bicep curl motion. ARMstrong Dex is a human-sized, dual-arm hydraulic robot currently under development at the Korea Atomic Energy Research Institute (KAERI) for disaster response applications. Designed to perform tasks flexibly like a human while delivering high power output, ARMstrong Dex is capable of handling complex operations in hazardous environments.
[Korea Atomic Energy Research Institute]
Micro-robots that can inspect water pipes, diagnose cracks, and fix them autonomously—reducing leaks and avoiding expensive excavation work—have been developed by a team of engineers led by the University of Sheffield.
We’re growing in size, scale, and impact! We’re excited to announce the opening of our serial production facility in the San Francisco Bay Area, the very first purpose-built robotaxi assembly facility in the United States. More space means more innovation, production, and opportunities to scale our fleet.
[Zoox]
Watch multipick in action as our pickle robot rapidly identifies, picks, and places multiple boxes in a single swing of an arm.
[Pickle]
And now, this.
[Aibo]
Cargill’s Amsterdam Multiseed facility enlists Spot and Orbit to inspect machinery and perform visual checks, enhanced by all-new AI features, as part of their “Plant of the Future” program.
This ICRA 2025 plenary talk is from Raffaello D’Andrea, entitled “Models are Dead, Long Live Models!”
Will data solve robotics and automation? Absolutely! Never! Who knows?! Let’s argue about it!
2025-06-20 03:45:10
This article is crossposted from IEEE Spectrum’s careers newsletter. Sign up now to get insider tips, expert advice, and practical strategies, written in partnership with tech career development company Taro and delivered to your inbox for free!
I once had a manager at Meta who kept flip-flopping. We’d have our one-on-one meetings to align on the priorities, and whether I should focus on new features or fix user-reported bugs.
But after a few days, our plans would suddenly change. Certain bugs would become the highest priority, especially if the order came from directors or VPs. I noticed a pattern where my manager would change his mind after speaking with a strong-willed project manager or some engineering leader up the chain.
I was left feeling confused and unsupported.
When this happens, how do you tell your manager to shape up? Is it even your responsibility to give feedback to your manager?
The 1:1 is a critical forum to share this kind of feedback. A 1:1 is a focused meeting between two people within the company, typically lasting 30 or 45 minutes. When done well, these meetings are a valuable tool for building trust and fostering career growth. In my experience, managers will have weekly or biweekly 1:1s with each of their reports. If you don’t have a regularly scheduled 1:1 with your manager, you’re missing out. Ask for one!
The effectiveness of a 1:1 depends on your preparation before the meeting. Here are a few ground rules I set with my reports and my own manager to make them as valuable as possible:
At Meta, I used the 1:1 time with my manager to share my concerns about the constantly shifting priorities between new features and user-reported bugs. The problem didn’t get resolved overnight, but at least he was aware of the issue. I felt heard, and we continued to monitor the situation as it improved.
What if your manager isn’t receptive to your feedback or concerns? In almost all cases, it’s not worth trying to “fix” your manager or your environment. There’s a clear power dynamic between you and your boss, and the energy spent on your manager is better spent on finding a new team or company altogether.
The 1:1 is a critical pillar for our career growth as engineers. Try out these tactics in your next 1:1 and let me know how it goes.
—Rahul
Five new e-books from IEEE’s TryEngineering initiative provide an overview of topics including semiconductors, signal processing, oceanic engineering, and AI. As part of IEEE’s suite of pre-university resources, the free e-books are meant to introduce these complex technical topics to younger readers—the next generation of engineers.
More tech workers are moving to the UAE, which is now second only to the United States in attracting top AI talent, according to reporting from Rest of World. But as the country becomes an AI talent magnet, differences are emerging among workers based on where they’re from. While tech specialists from the West take top positions, engineers from developing nations often fill lower positions.
In this guest article, a technical program manager at Google reflects on his experience meeting with U.S. legislators this April. More than 300 IEEE representatives participated in the organization’s Congressional Visits Day to discuss federal funding, the STEM talent pipeline, and other policy issues.
2025-06-20 02:00:03
The newly designed IEEE website makes it easier than ever to learn about the organization and its offerings. IEEE incorporated feedback from members and site visitors to create its modern look and feel.
Throughout the site, the work of IEEE and its members is prominently highlighted to show how they are creating a better world and driving engineering forward.
“The new website is more visual, with video and other media to engage all visitors. It also showcases our global community’s commitment as a public charity advancing technology for the benefit of humanity,” says Sophia Muirhead, IEEE executive director and chief operating officer.
The website reflects IEEE’s commitment to delivering an engaging online experience that is more intuitive for its global community. The storytelling theme of the site highlights select quotes, testimonials, and member and volunteer stories from IEEE’s more than 486,000 members and 189,000 student members from 347 sections in 10 geographic regions.
Whether you’re looking for a humanitarian project to get involved in, finding an upcoming conference to attend, taking a continuing education course, or publishing a research paper, the new design makes resources easier to access.
The first thing you’ll see on the new site is a box with scrolling options. Power What’s Next for Tech describes what IEEE is, and it includes a link to the What We Do page, which gives an overview of the organization, including its mission, strategic plan, history, and offerings.
Using the arrows on the right side of the box, you can see the Building a Better World section, where visitors can learn about humanitarian initiatives such as IEEE MOVE and EPICS in IEEE, then Career Support and, finally, an option to join IEEE and be part of something bigger.
Scrolling down the home page, the next module, Happening Across IEEE, features upcoming conferences, the latest standards, new educational courses, ways to advance your career, and how to get involved with IEEE’s societies, councils, and communities.
“The new website is more visual, with video and other media to engage all visitors. It also showcases our global community’s commitment as a public charity advancing technology for the benefit of humanity.”
The next section, the IEEE Is the Global Community of Technology Professionals module, has options to Find Your Path to learn about resources available for industry professionals, authors and researchers, students and young professionals, volunteers, new members, and retirees.
The following section, Latest Innovations, features videos and articles from publications including IEEE Spectrum and The Institute on cutting-edge technology engineers are working on, such as electronic tattoos.
Keep scrolling down and you’ll get to know IEEE members and their thoughts on what’s next for technologies such as artificial intelligence and quantum computing.
“This redesign marks a key milestone in IEEE’s digital transformation,” Muirhead says. “The use of rich media, video content, and dynamic storytelling features allows for deeper engagement with IEEE and understanding its various offerings.
“However, it is just the beginning. In the months ahead, we will continue to enhance the site with new features, updated content, and richer tools.”
2025-06-20 00:00:04
By analyzing neural signals, a brain-computer interface (BCI) can now almost instantaneously synthesize the speech of a man who lost use of his voice due to a neurodegenerative disease, a new study finds.
The researchers caution it will still be a long time before such a device, which could restore speech to paralyzed patients, will find use in everyday communication. Still, the hope is this work “will lead to a pathway for improving these systems further—for example, through technology transfer to industry,” says Maitreyee Wairagkar, a project scientist at the University of California Davis’s Neuroprosthetics Lab.
A major potential application for brain-computer interfaces is restoring the ability to communicate to people who can no longer speak due to disease or injury. For instance, scientists have developed a number of BCIs that can help translate neural signals into text.
However, text alone fails to capture many key aspects of human speech, such as intonation, that help to convey meaning. In addition, text-based communication is slow, Wairagkar says.
Now, researchers have developed what they call a brain-to-voice neuroprosthesis that can decode neural activity into sounds in real time. They detailed their findings 11 June in the journal Nature.
“Losing the ability to speak due to neurological disease is devastating,” Wairagkar says. “Developing a technology that can bypass the damaged pathways of the nervous system to restore speech can have a big impact on the lives of people with speech loss.”
The new BCI mapped neural activity using four microelectrode arrays. In total, the scientists placed 256 microelectrode arrays in three brain regions, chief among them the ventral precentral gyrus, which plays a key role in controlling the muscles underlying speech.
“This technology does not ‘read minds’ or ‘read inner thoughts,’” Wairagkar says. “We record from the area of the brain that controls the speech muscles. Hence, the system only produces voice when the participant voluntarily tries to speak.”
The researchers implanted the BCI in a 45-year-old volunteer with amyotrophic lateral sclerosis (ALS), the neurodegenerative disorder also known as Lou Gehrig’s disease. Although the volunteer could still generate vocal sounds, he was unable to produce intelligible speech on his own for years before the BCI.
The neuroprosthesis recorded the neural activity that resulted when the patient attempted to read sentences on a screen out loud. The scientists then trained a deep-learning AI model on this data to produce his intended speech.
The researchers also trained a voice-cloning AI model on recordings made of the patient before his condition so the BCI could synthesize his pre-ALS voice. The patient reported that listening to the synthesized voice “made me feel happy, and it felt like my real voice,” the study notes.
Neuroprosthesis Reproduces a Man’s Speech UC Davis
In experiments, the scientists found that the BCI could detect key aspects of intended vocal intonation. They had the patient attempt to speak sets of sentences as either statements, which had no changes in pitch, or as questions, which involved rising pitches at the ends of the sentences. They also had the patient emphasize one of the seven words in the sentence “I never said she stole my money” by changing its pitch. (The sentence has seven different meanings, depending on which word is emphasized.) These tests revealed increased neural activity toward the ends of the questions and before emphasized words. In turn, this let the patient control his BCI voice enough to ask a question, emphasize specific words in a sentence, or sing three-pitch melodies.
“Not only what we say but also how we say it is equally important,” Wairagkar says. “Intonation of our speech helps us to communicate effectively.”
All in all, the new BCI could acquire neural signals and produce sounds with a delay of 25 milliseconds, enabling near-instantaneous speech synthesis, Wairagkar says. The BCI also proved flexible enough to speak made-up pseudo-words, as well as interjections such as “ahh,” “eww,” “ohh,” and “hmm.”
The resulting voice was often intelligible, but not consistently so. In tests where human listeners had to transcribe the BCI’s words, they understood what the patient said about 56 percent of the time, up from about 3 percent from when he did not use the BCI.
Neural recordings of the BCI participant shown on screen.UC Davis
“We do not claim that this system is ready to be used to speak and have conversations by someone who has lost the ability to speak,” Wairagkar says. “Rather, we have shown a proof of concept of what is possible with the current BCI technology.”
In the future, the scientists plan to improve the accuracy of the device—for instance, with more electrodes and better AI models. They also hope that BCI companies might start clinical trials incorporating this technology. “It is yet unknown whether this BCI will work with people who are fully locked in”—that is, nearly completely paralyzed, save for eye motions and blinking, Wairagkar adds.
Another interesting research direction is to study whether such speech BCIs could be useful for people with language disorders, such as aphasia. “Our current target patient population cannot speak due to muscle paralysis,” Wairagkar says. “However, their ability to produce language and cognition remains intact.” In contrast, she notes, future work might investigate restoring speech to people with damage to brain areas that produce speech, or with disabilities that have prevented them from learning to speak since childhood.
2025-06-18 02:00:04
Although she is just now starting her career as a tech professional, Mayra Yucely Beb Caal has already overcome towering obstacles. The IEEE member sees her life as an example for other young people, demonstrating that they can succeed despite disadvantages they face due to their gender, ethnicity, language, or economic background.
Born in Cobán, the capital of Alta Verapaz in northern Guatemala, she grew up in a community far removed from the world of technology. But she attributes her success to having been steeped in the region’s cultural richness and her people’s unshakable resilience. The daughter of a single mother who was a schoolteacher, Caal says she spent her early years living with her aunts while her mother worked in distant towns for weeks at a time to provide for the family. In her community—mostly descendants of the indigenous Maya-Kekchi people—technology was rarely discussed. Pursuing a degree meant studying to become a physician, the most prestigious occupation anyone there was aware of.
No one imagined that a girl from Cobán would one day hold a doctorate in engineering or conduct cancer research in France.
On the path to her ambitious goals, Caal got a big assist from IEEE. She received a Gray scholarship, awarded by the IEEE Systems Council to students pursuing graduate studies in process control systems engineering, plant automation, or instrumentation measurement. The US $5,000 award supplemented other scholarships which helped her to study for her Ph.D.
Caal was introduced to technology when, at age 14, she received a government scholarship to attend the Instituto Técnico de Capacitación y Productividad, a high school in Guatemala City. It was her first exposure to electronics, robotics, and mechatronics (an interdisciplinary field that combines mechanical engineering, electronics, computer science, and control systems)—subjects that weren’t taught in her local school. Caal was fascinated by the ability to study the fields, though her family couldn’t afford the tuition to the private universities where she could earn a degree. But that didn’t dissuade her.
She applied for a scholarship from the Gutiérrez Foundation, named for the founder of CMI, a Guatemala-based multinational company. The foundation’s scholarship covers full tuition, fees, and the cost of books for the duration of a recipient’s undergraduate studies.
In 2016 Caal earned a bachelor’s degree in mechatronics engineering at the Universidad del Valle de Guatemala, also in Guatemala City. There were few women in her class.
The job market was unwelcoming, however, she says. Despite her credentials, employers often required five years of experience for entry-level positions, and they expressed a preference for male employees, she says. It took six months to land her first job as a mechanical maintenance supervisor near her hometown.
She held that job for six months before moving back to Guatemala City in search of better opportunities. She took a position as head of mechanical maintenance at Mayaprin, a company specializing in commercial printing services, but she wasn’t satisfied with her career trajectory.
Caal decided to return to school in 2018 to pursue a master’s degree in mechatronics and micromechatronics engineering. She received a scholarship from the Mundus Joint Master program, part of a European Commission–sponsored initiative that provides funding for education, training, and youth in sports. Because the Mundus scholarship requires recipients to study at several universities, she took classes at schools in Europe and Africa, including École Nationale Supérieure de Mécanique et des Microtechniques, Nile University, and Universidad de Oviedo. Her studies focused on mechatronics and microelectronics, and the courses were taught in French, English, and Spanish.
The multilingual challenge was immense, she says. She recently had learned English, and French was completely new to her. Yet she persevered, driven by her goal of working on technology that could serve humanity.
She received a master’s degree from Universidad de Oviedo in 2020 and was accepted into a Ph.D. program at Université de Bourgogne Franche-Comté, in Besançon, France. Her doctoral studies were aided by the Gray scholarship.
Her research led to a full-time job last year as an R&D engineer focused on mechatronics and robotics at HyprView in Caen, France. The startup, founded in 2021, develops software to assist with medical data analysis and boost the performance of imaging tools.
Caal says she is part of a team that uses AI and automated systems to improve cancer detection. Although she has held the position for less than a year, she says she already feels she is contributing to public health through applied technology.
Through much of Caal’s journey, IEEE has played a critical role. As an undergraduate, she was vice president and then president of her university’s IEEE student branch. Her first international conference experience came from attending IEEE Region 9 conferences, which she says opened her eyes to the world of research, publishing, and the global engineering community.
She organized outreach efforts to local schools, conducting simple experiments to encourage girls to consider STEM careers. Her efforts were in direct opposition to longstanding gender norms in Guatemala. Caal was also an active member of the IEEE student branch at FEMTO-ST /Université de Bourgogne Franche-Comté.
Today, Caal continues to advise these student branches while advancing her career in France.
Language issues and gender bias remain obstacles: “As a young woman leading male engineers, I have repeatedly had to prove my competence in ways my male peers haven’t,” she says. But the challenges have only strengthened her resolve, she adds.
Eventually, she says, she hopes to return to Guatemala to help build a stronger research infrastructure there with sufficient career opportunities for tech professionals in industry and academia. She says she also wants to ensure that children in even the most rural, poverty-stricken schools have access to food, electricity, and the Internet.
Her mission is clear: “To use technology to serve a purpose, always aimed at improving lives.”
“I don’t want to create technology just for the sake of it,” she says. “I want it to mean something—to help solve real problems in society, like the ones I faced early on.”