When the Euclid mission lifts off at the end of this decade, it will map galaxy clusters in infrared and visible light, helping to blueprint the large-scale structure of the universe. And a bunch of amateur science geeks who signed up for the competition will use their specialized skills to elucidate those findings.
The Mapping Dark Matter competition proves that Arabic handwriting analysis, glaciology and particle physics are more relevant to cosmology than anyone would have thought — and that when you ask people to solve problems for bragging rights, you get some very creative results. 
NASA’s Jet Propulsion Laboratory sponsored the competition in cooperation with Kaggle,  a startup that hosts prediction and data modeling competitions. In all,  73 teams signed up to measure the ellipticity of galaxies in astronomy  images, a key element in studying cosmology's dark materials. Physics  professor David Kirkby and graduate student Daniel Margala from the  University of California-Irvine won the prize and brought their findings  to JPL last week.
The problem: estimating the shapes of simulated postage-stamp-sized  galaxy images that had been deliberately blurred. Kirkby’s background is  in particle physics, but he’s interested in cosmology, so he was  intrigued when he saw the competition online.
“It’s hard to get into a new area of research, because so much has  already gone on before, and there’s so much jargon, it’s hard to work  with the data,” Kirkby said in an interview. “But because this was a  competition, it was a really well-designed problem. It posed the  question in a way that was really easy for us to understand and jump in —  they wanted to bring in unique ideas to work on the problem.”
And it worked. Right off the bat, Martin O’Leary, a Ph.D student in  glaciology from Cambridge University, spends most of his time studying  satellite images to detect the edges of glaciers; his techniques also  applied to determining galactic edges. Then teammates Eu Jin Lok, an  Australian graduate student at Deloitte, and Ali Hassaine, a signature  verification specialist from Qatar University, built on O’Leary’s  findings. Kirkby and Margala built an artificial neural network and were  able to come up with the most accurate values for the galaxies’  ellipticity.
Jason Rhodes, an astrophysicist at JPL and an investigator on the  Euclid mission, said the results will likely be incorporated into future  algorithms that will measure real data. 
 “We’ll have the best quality of data from Euclid, and we need these techniques to fully exploit that data,” he said.
Looking for dark matter is something like looking for the wind — it’s  invisible, but you can tell it’s there because of its impact on other  objects. (Obviously wind has more observable effects than dark matter,  but you get the idea.) Just as you might study a waving flag to infer  that it’s windy, dark matter researchers look at warps in galaxy light  to infer that the dark matter is present.
 The image above, of the Bullet Cluster, is probably the best example  of this. It depicts two colliding clusters of galaxies that have passed  through one another at unspeakably energetic speeds. As they moved past  each other in opposite directions, the stars slowed down a little, and  the hot gas, which is the pinkish areas, slowed down a lot. But the dark  matter, which doesn’t interact with anything except gravitationally,  didn’t slow down. It is represented in blue here, way ahead of the rest  of the material in these clusters. It’s not directly visible in this  image; the blue shading is inferred from the effect that its gravity has  on background radiation. The gravity of dark matter acts like a lens,  warping the passing light.
 Think of a penny in a pool of water — the penny you see is distorted  because the light reflecting off it has to travel through water, Rhodes  explained.
“In the same way, a very distant galaxy has a shape that we see as  distorted, as it is moving through the intervening dark matter,” he  said.
 To know how much the light has been distorted, you’d need to know the  shape of the object emitting it — a galaxy that looks warped might just  be a particularly ovoid galaxy. Determining galactic ellipticity helps  astronomers determine how much of that ellipticity is the result of dark  matter. 
Kirkby and Margala came up with a model for each galaxy, involving  six or seven different parameters. This global view, rather than looking  at each data point on its own, was a novel approach, according to  Rhodes. Then they fed the data into an artificial neural network, which  they used to find the galaxies’ elliptical shapes. Kirkby said he  planned to write a paper about his work. 
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