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Astronomy

AI Designs: Unlocking New Ways to Observe Extreme Cosmic Events

Extreme cosmic events such as colliding black holes or the explosions of stars can cause ripples in spacetime, so-called gravitational waves. Their discovery opened a new window into the universe. To observe them, ultra-precise detectors are required. Designing them remains a major scientific challenge for humans. Researchers have been working on how an artificial intelligence system could explore an unimaginably vast space of possible designs to find entirely new solutions.

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In the universe, extreme events like colliding black holes or star explosions create ripples in spacetime, known as gravitational waves. These phenomena have opened a new window into the cosmos, but detecting them requires ultra-precise instruments. Designing these detectors remains a significant scientific challenge for humans.

Researchers at the Max Planck Institute for the Science of Light (MPL) have been exploring how artificial intelligence can help find novel solutions to this problem. Their findings were recently published in Physical Review X.

Over a century ago, Albert Einstein theoretically predicted gravitational waves. However, it wasn’t until 2016 that they could be directly detected due to the complexity of developing the necessary detectors. Dr. Mario Krenn, head of the research group “Artificial Scientist Lab” at MPL, collaborated with the LIGO team to design an AI-based algorithm called “Urania” to design novel interferometric gravitational wave detectors.

Interferometry is a measurement method that uses the interference of waves, or their superposition when they meet. Detector design requires optimizing both layout and parameters. The scientists converted this challenge into a continuous optimization problem and solved it using methods inspired by modern machine learning.

Their results have shown that Urania can discover new experimental designs that outperform the best known next-generation detectors, with the potential to improve detectable signals by more than an order of magnitude. Nonconformist and creative, these solutions seem to be better than those proposed by human scientists.

The researchers expanded their approach to understand the AI-discovered tricks, ideas, and techniques, many of which are still completely alien to them. They compiled 50 top-performing designs in a public “Detector Zoo” and made them available to the scientific community for further research.

This work demonstrates that AI can uncover novel detector designs and inspire human researchers to explore new experimental and theoretical ideas. More broadly, it suggests that AI could play a major role in designing future tools for exploring the universe, from the smallest to the largest scales. As Dr. Krenn noted, “We are in an era where machines can discover new super-human solutions in science, and the task of humans is to understand what the machine has done. This will certainly become a very prominent part of the future of science.”

Astronomy

A Cosmic Masterpiece Revealed: The Sculptor Galaxy Unveiled in Thousands of Colors

Astronomers have produced the most detailed map yet of the Sculptor Galaxy, revealing hundreds of previously unseen celestial features in stunning color and resolution. By combining over 50 hours of observations using the European Southern Observatory s Very Large Telescope, scientists captured a full-spectrum portrait that unravels the galaxy s stellar makeup in thousands of colors. This revolutionary technique offers an unprecedented look at the age, composition, and motion of stars and gas across the galaxy s vast 65,000-light-year span. Among the highlights are 500 newly identified planetary nebulae, glowing remnants of dying stars, which help pinpoint the galaxy s distance and open new windows into galactic evolution.

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Astronomers have created a galactic masterpiece: an ultra-detailed image that reveals previously unseen features in the Sculptor Galaxy. Using the European Southern Observatory’s Very Large Telescope (ESO’s VLT), they observed this nearby galaxy in thousands of colors simultaneously. By capturing vast amounts of data at every single location, they created a galaxy-wide snapshot of the lives of stars within Sculptor.

“Galaxies are incredibly complex systems that we are still struggling to understand,” says ESO researcher Enrico Congiu, who led a new Astronomy & Astrophysics study on Sculptor. Reaching hundreds of thousands of light-years across, galaxies are extremely large, but their evolution depends on what’s happening at much smaller scales.

“The Sculptor Galaxy is in a sweet spot,” says Congiu. “It is close enough that we can resolve its internal structure and study its building blocks with incredible detail, but at the same time, big enough that we can still see it as a whole system.”

A galaxy’s building blocks — stars, gas and dust — emit light at different colors. Therefore, the more shades of color there are in an image of a galaxy, the more we can learn about its inner workings. While conventional images contain only a handful of colors, this new Sculptor Galaxy image is rendered in thousands of colors, revealing intricate details that would have been lost otherwise.

This extraordinary image not only showcases the beauty and complexity of the Sculptor Galaxy but also serves as a testament to human ingenuity and scientific curiosity. By pushing the boundaries of what we thought was possible with astronomical observations, researchers continue to expand our understanding of the cosmos and inspire new generations of scientists and space enthusiasts alike.

The European Southern Observatory (ESO) enables scientists worldwide to discover the secrets of the Universe for the benefit of all. We design, build and operate world-class observatories on the ground — which astronomers use to tackle exciting questions and spread the fascination of astronomy — and promote international collaboration for astronomy.

Established as an intergovernmental organisation in 1962, today ESO is supported by 16 Member States (Austria, Belgium, Czechia, Denmark, France, Finland, Germany, Ireland, Italy, the Netherlands, Poland, Portugal, Spain, Sweden, Switzerland and the United Kingdom), along with the host state of Chile and with Australia as a Strategic Partner.

ESO’s headquarters and its visitor centre and planetarium, the ESO Supernova, are located close to Munich in Germany, while the Chilean Atacama Desert, a marvelous place with unique conditions to observe the sky, hosts our telescopes. ESO operates three observing sites: La Silla, Paranal and Chajnantor.

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Astronomy

The Galactic Puzzle: Uncovering the Mystery of Massive Star Formation in the Milky Way’s Center

At the heart of our galaxy lies a cosmic puzzle: although the Galactic Center is packed with star-making material, massive stars form there surprisingly slowly. Using NASA’s retired SOFIA observatory, scientists captured rare high-resolution infrared views that revealed dozens of new stars being born, but not in the numbers or sizes one might expect.

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The Milky Way’s central region has long been a subject of fascination for astronomers, but recent research led by Dr. James De Buizer at the SETI Institute and Dr. Wanggi Lim at IPAC at Caltech has revealed a surprising finding: massive star formation is occurring in this area at a lower rate than expected. The study primarily relied on observations from NASA’s retired SOFIA airborne observatory, focusing on three star-forming regions – Sgr B1, Sgr B2, and Sgr C – located at the heart of the Galaxy.

Contrary to previous assumptions that star formation is likely depressed near the Galactic Center, these areas have been found to produce stars with relatively low masses. Despite their dense clouds of gas and dust, conditions typically conducive to forming massive stars, these regions struggle to create such high-mass stars. Furthermore, they appear to lack sufficient material for continued star formation, suggesting that only one generation of stars is produced.

The researchers discovered over 60 presently-forming massive stars within the Galactic Center regions, but found that these areas formed fewer stars and topped out at lower stellar masses than similar-sized regions elsewhere in the Galaxy. The team’s study also suggested that extreme conditions in the Galactic Center, such as its rapid rotation and interaction with older stars and material falling towards the black hole, might be inhibiting gas clouds from forming stars.

However, Sgr B2 was found to be an exception among the studied areas, maintaining a reservoir of dense gas and dust despite having an unusually low rate of present massive star formation. The researchers proposed that this region may represent a new category of stellar nursery or challenge traditional assumptions about giant H II regions hosting massive star clusters.

The study’s findings have significant implications for our understanding of star formation in the Milky Way, highlighting the importance of continued research into the complex dynamics at play within the Galactic Center.

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Astronomy

Unlocking Secrets of the Cosmos: AI Reveals Milky Way’s Black Hole Spins at Near Top Speed

AI has helped astronomers crack open some of the universe s best-kept secrets by analyzing massive datasets about black holes. Using over 12 million simulations powered by high-throughput computing, scientists discovered that the Milky Way’s central black hole is spinning at nearly maximum speed. Not only did this redefine theories about black hole behavior, but it also showed that the emission is driven by hot electrons in the disk, not jets, challenging long-standing models.

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The research team leveraged high-throughput computing capabilities provided by the Center for High Throughput Computing (CHTC) to automate computing tasks across a network of thousands of computers. This innovation allowed them to analyze millions of simulations, making it possible to extract new insights from the data behind the Event Horizon Telescope images of black holes.

The neural network was trained on synthetic data files generated by CHTC, enabling the researchers to make a better comparison between the EHT data and models. The analysis revealed that the emission near the black hole is mainly caused by extremely hot electrons in the surrounding accretion disk, rather than a jet. Additionally, the magnetic fields in the accretion disk appear to behave differently from usual theories of such disks.

Lead researcher Michael Janssen stated that defying prevailing theory is exciting but sees their AI and machine learning approach as a first step towards further improvement and extension of associated models and simulations. The research has significant implications for our understanding of black holes and the cosmos, and it will be interesting to see how this knowledge evolves in the future.

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An international team of astronomers has made groundbreaking discoveries about the black hole at the center of our Milky Way using a neural network. By analyzing millions of synthetic simulations generated by the Center for High Throughput Computing (CHTC), they found that the black hole is spinning at nearly top speed, with its rotation axis pointing towards Earth.

The research team published their findings in three papers in Astronomy & Astrophysics, providing new insights into the behavior of black holes. The neural network was trained on synthetic data files generated by CHTC, enabling the researchers to make a better comparison between the Event Horizon Telescope (EHT) data and models.

Previous studies by the EHT Collaboration used only a handful of realistic synthetic data files, but the Madison-based CHTC enabled the astronomers to feed millions of such data files into a so-called Bayesian neural network. This allowed them to extract as much information as possible from the data and make a more accurate comparison with the models.

The researchers found that the emission near the black hole is mainly caused by extremely hot electrons in the surrounding accretion disk, rather than a jet. Additionally, the magnetic fields in the accretion disk appear to behave differently from usual theories of such disks.

Lead researcher Michael Janssen stated that defying prevailing theory is exciting but sees their AI and machine learning approach as a first step towards further improvement and extension of associated models and simulations. The research has significant implications for our understanding of black holes and the cosmos, and it will be interesting to see how this knowledge evolves in the future.

The Event Horizon Telescope project performed more than 12 million computing jobs in the past three years, using the Open Science Pool operated by PATh. This pool offers computing capacity contributed by more than 80 institutions across the United States, making it an ideal platform for large-scale simulations like those used in this research.

Scientific papers referenced

* Deep learning inference with the Event Horizon Telescope I: Calibration improvements and a comprehensive synthetic data library. By: M. Janssen et al. In: Astronomy & Astrophysics, 6 June 2025.
* Deep learning inference with the Event Horizon Telescope II: The Zingularity framework for Bayesian artificial neural networks. By: M. Janssen et al. In: Astronomy & Astrophysics, 6 June 2025.
* Deep learning inference with the Event Horizon Telescope III: Zingularity results from the 2017 observations and predictions for future array expansions. By: M. Janssen et al. In: Astronomy & Astrophysics, 6 June 2025.

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