{"id":1075214,"date":"2024-04-27T02:41:44","date_gmt":"2024-04-27T06:41:44","guid":{"rendered":"https:\/\/www.immortalitymedicine.tv\/machine-learning-and-experiment-symmetry-magazine-symmetry-magazine\/"},"modified":"2024-08-18T12:47:20","modified_gmt":"2024-08-18T16:47:20","slug":"machine-learning-and-experiment-symmetry-magazine-symmetry-magazine","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/artificial-intelligence\/machine-learning-and-experiment-symmetry-magazine-symmetry-magazine.php","title":{"rendered":"Machine learning and experiment | symmetry magazine &#8211; Symmetry magazine"},"content":{"rendered":"<p><p>    Every day in August of 2019, physicist Dimitrios Tanoglidis    would walk to the Plein Air Caf next to the University of    Chicago and order a cappuccino. After finding a table, he would    spend the next several hours flipping through hundreds of    thumbnail images of white smudges recorded by the Dark Energy    Camera, a telescope that at the time had observed 300 million    astronomical objects.  <\/p>\n<p>    For each white smudge, Tanoglidis would ask himself a simple    yes-or-no question: Is this a galaxy? I would go through about    1,000 images a day, he says. About half of them were    galaxies, and the other half were not.  <\/p>\n<p>    After about a month, Tanoglidiswho was a University of Chicago    PhD student at the timehad built up a catalogue of 20,000    low-brightness galaxies.  <\/p>\n<p>    Then Tanoglidis and his team used this dataset to create a tool    that, once trained, could evaluate a similar dataset in a    matter of moments. The accuracy of our algorithm was very    close to the human eye, he says. In some cases, it was even    better than us and would find things that we had    misclassified.  <\/p>\n<p>    The tool they created was based on machine learning, a type of    software that learns as it digests data, says Aleksandra    Ciprijanovic, a physicist at the US Department of Energys    Fermi National Accelerator Laboratory who at the time was one    of Tanoglidiss research advisors. Its inspired by how    neurons in our brains work, she saysadding that this added    brainpower will be essential for analyzing exponentially    larger datasets from future astronomical surveys. Without    machine learning, wed need a small army of PhD students to    give the same type of dataset.  <\/p>\n<p>    Today, the Dark Energy Survey collaboration has a catalogue of    700 million astronomical objects, and scientists continue to    use (and improve) Tanoglidiss tool to analyze images that    could show previously undiscovered galaxies.  <\/p>\n<p>    In astronomy, we have a huge amount of data, Ciprijanovic    says. No matter how many people and resources we have, well    never have enough people to go through all the data.  <\/p>\n<p>    Classificationthis is probably a photo of a galaxy versus    this is probably not a photo of a galaxywas one of    machine learnings earliest applications in science. Over time,    its uses have continued to evolve.  <\/p>\n<p>    Machine learning, which is a subset of artificial intelligence,    is a type of software that can, among other things, help    scientists understand the relationships between variables in a    dataset.  <\/p>\n<p>    According to Gordon Watts, a physicist at the University of    Washington, scientists traditionally figured out these    relationships by plotting the data and looking for the    mathematical equations that could describe it. Math came    before the software, Watts says.  <\/p>\n<p>    This math-only method is relatively straightforward when    looking for the relationship between only a few variables: the    pressure of a gas as a function of its temperature and volume,    or the acceleration of a ball as a function of the force of an    athletes kick and the balls mass. But finding these    relationships with nothing but math becomes nearly impossible    as you add more and more variables.  <\/p>\n<p>    A lot of the problems were tackling in science today are very    complicated, Ciprijanovic says. Humans can do a good job with    up to three dimensions, but how do you think about a dataset if    the problem is 50- or 100-dimensional?  <\/p>\n<p>    This is where machine learning comes in.  <\/p>\n<p>    Artificial intelligence doesnt care about the dimensionality    of the problems, Ciprijanovic says. It can find patterns and    make sense of the data no matter how many different dimensions    are added.  <\/p>\n<p>    Some physicists have been using machine-learning tools since    the 1950s, but their widespread use in the field is a    relatively new phenomenon.  <\/p>\n<p>    The idea to use a [type of machine learning called a] neural    network was proposed to the CDF experiment at the Tevatron in    1989, says Tommaso Dorigo, a physicist at the Italian National    Institute for Nuclear Physics, INFN. People in the    collaboration were both amused and disturbed by this.  <\/p>\n<p>    Amused because of its novelty; disturbed because it added a    layer of opacity into the scientific process.  <\/p>\n<p>    Machine-learning models are sometimes called \"black boxes\"    because it is hard to tell exactly how they are handling the    data put into them; their large number of parameters and    complex architectures are difficult to understand. Because    scientists want to know exactly how a result is calculated,    many physicists have been skeptical of machine learning and    reluctant to implement it into their analyses. In order for a    scientific collaboration to sign off on a new method, they    first must exhaust all possible doubts, Dorigo says.  <\/p>\n<p>    Scientists found a reason to work through those doubts after    the Large Hadron Collider came online, an event that coincided    with the early days of the ongoing boom in machine learning in    industry.  <\/p>\n<p>    Josh Bendavid, a physicist at the Massachusetts Institute of    Technology, was an early adopter. When I joined CMS, machine    learning was a thing, but seeing limited use, he says. But    there was a big push to implement machine learning into the    search for the Higgs boson.  <\/p>\n<p>    The Higgs boson is a fundamental particle that helps explain    why some particles have mass while others do not. Theorists    predicted its existence in the 1950s, but finding it    experimentally was a huge challenge. Thats because Higgs    bosons are both incredibly rare and incredibly short-lived,    quickly decaying into other particles such as pairs of photons.  <\/p>\n<p>    In 2010, when the LHC experiments first started collecting data    for physics, machine learning was widely used in industry and    academia for classification (this is a photo of a cat    versus this is not a photo of a cat). Physicists were    using machine learning in a similar way (this is a    collision with two photons versus this is not a collision with    two photons).  <\/p>\n<p>    But according to Bendavid, simply finding photons was not    enough. Pairs of photons are produced in roughly one out of    every 100 million collisions in the LHC. But Higgs bosons that    decay into pairs of photons are produced in only one of 500    billion. To find Higgs bosons, scientists needed to find sets    of photons that had a combined energy close to the mass of the    Higgs. This means they needed more complex algorithmsones that    could not only recognize photons, but also interpret the energy    of photons based on how they interacted with the detector.    Its like trying to estimate the weight of a cat in a    photograph, Bendavid says.  <\/p>\n<p>    That became possible when LHC scientists created high-quality    detector simulations, which they could use to train their    algorithms to find the photons they were looking for, Bendavid    says.  <\/p>\n<p>    Bendavid and his colleagues simulated millions of photons and    looked at how they lost energy as they moved through the    detector. According to Bendavid, the algorithms they trained    were much more sensitive than traditional techniques.  <\/p>\n<p>    And the algorithms worked. In 2012, the CMS and ATLAS    experiments announced the discovery of the Higgs boson, just    two years into studying particle collisions at the LHC.  <\/p>\n<p>    We would have needed a factor of two more data to discover the    Higgs boson if we had tried to do the analysis without machine    learning, Bendavid says.  <\/p>\n<p>    After the Higgs discovery, the LHC research program saw its own    boom in machine learning. Before 2012, you would have had a    hard time to publish something which used neural networks,    Dorigo says. After 2012, if you wanted to publish an analysis    that didnt use machine learning, youd face questions and    objections.  <\/p>\n<p>    Today, LHC scientists use machine learning to simulate    collisions, evaluate and process raw data, tease signal from    background, and even search for anomalies. While these    advancements were happening at the LHC, scientists were    watching closely from another, related field: neutrino    research.  <\/p>\n<p>    Neutrinos are ghostly particles that rarely interact with    ordinary matter. According to Jessie Micallef, a fellow at the    National Science Foundations Institute for Artificial    Intelligence and Fundamental Interactions at MIT, early    neutrino experiments would detect only a few particles per    year. With such small datasets, scientists could easily    reconstruct and analyze events with traditional methods.  <\/p>\n<p>    That is how Micallef worked on a prototype detector as an    intern at Lawrence Berkeley National Laboratory in 2015. I    would measure electrons drifting in a little tabletop detector,    come back to my computer, and make plots of what we saw, they    say. I did a lot of programming to find the best fit lines for    our data.  <\/p>\n<p>    But today, their detectors and neutrino beams are much larger    and more powerful. Were talking with people at the LHC about    how to deal with pileup, Micallef says.  <\/p>\n<p>    Neutrino physicists now use machine learning both to find the    traces neutrinos leave behind as they pass through the    detectors and to extract their properties, such as their energy    and flavor. These days, Micallef collects their data, imports    it into their computer, and starts the analysis process. But    instead of toying with the equations, Micallef says that they    let machine learning do a lot of the analysis for them.  <\/p>\n<p>    At first, it seemed like a whole new world, they saybut it    wasnt a magic bullet. Then there was validating the output. I    would change one thing, and maybe the machine-learning    algorithm would do really good in one area but really bad in    another.  <\/p>\n<p>    My work became thinking about how machine learning works, what    its limitations are, and how we can get the most out of it.  <\/p>\n<p>    Today, Micallef is developing machine-learning tools that will    help scientists with some of the unique challenges of working    with neutrinosincluding using gigantic detectors to study not    just high-powered neutrinos blasting through from outside the    Milky Way, but also low-energy neutrinos that could come from    nearby.  <\/p>\n<p>    Neutrino detectors are so big that the sizes of the signals    they measure can be tiny by comparison. For instance, the    IceCube experiment at the South Pole uses about a cubic    kilometer of ice peppered with 5,000 sensors. But when a    low-energy neutrino hits the ice, only a handful of those    sensors light up.  <\/p>\n<p>    Maybe a dozen out of 5,000 detectors will see the neutrino,    Micallef says. The pictures were looking at are mostly empty    space, and machine learning can get confused if you teach it    that only 12 sensors out of 5,000 matter.  <\/p>\n<p>    Neutrino physicists and scientists at the LHC are also using    machine learning to give a more nuanced interpretation of what    they are seeing in their detectors.  <\/p>\n<p>    Machine learning is very good at giving a continuous    probability, Watts says.  <\/p>\n<p>    For instance, instead of classifying a particle in a binary    method (this event is a muon neutrino versus this event is    not a muon neutrino), machine learning can provide an    uncertainty associated with its assessment.  <\/p>\n<p>    This could change the overall outcome of our analysis,    Micallef says. If there is a lot of uncertainty, it might make    more sense for us to throw that event away or analyze it by    hand. Its a much more concrete way of looking at how reliable    these methods are and is going to be more and more important in    the future.  <\/p>\n<p>    Physicists use machine learning throughout almost all parts of    data collection and analysis. But what if machine learning    could be used to optimize the experiment itself? Thats the    dream, Watts says.  <\/p>\n<p>    Detectors are designed by experts with years of experience, and    every new detector incrementally improves upon what has been    done before. But Dorigo says he thinks machine learning could    help detector designers innovate. If you look at calorimeters    designed in the 1970s, they look a lot like the calorimeters we    have today, Dorigo says. There is no notion of questioning    paradigms.  <\/p>\n<p>    Experiments such as CMS and ATLAS are made from hundreds of    individual detectors that work together to track and measure    particles. Each subdetector is enormously complicated, and    optimizing each ones designnot as an individual component but    as a part of a complex ecosystemis nearly impossible. We    accept suboptimal results because the human brain is incapable    of thinking in 1,000 dimensions, Dorigo says.  <\/p>\n<p>    But what if physicists could look at the detector    wholistically? According to Watts, physicists could (in theory)    build a machine-learning algorithm that considers physics    goals, budget, and real-world limitations to choose the optimal    detector design: a symphony of perfectly tailored hardware all    working in harmony.  <\/p>\n<p>    Scientists still have a long way to go. Theres a lot of    potential, Watts says. But we havent even learned to walk    yet. Were only just starting to crawl.  <\/p>\n<p>    They are making progress. Dorigo is a member of the Southern    Wide-field Gamma-ray Observatory, a collaboration that wants to    build an array of 6,000 particle detectors in the highlands of    South America to study gamma rays from outer space. The    collaboration is currently assessing how to arrange and place    these 6,000 detectors. We have an enormous number of possible    solutions, Dorigo says. The question is: how to pick the best    one?  <\/p>\n<p>    To find out, Dorigo and his colleagues took into account the    questions they wanted to answer, the measurements they wanted    to take, and number of detectors they had available to use.    This time, though, they also developed a machine-learning tool    that did the sameand found that it agreed with them.  <\/p>\n<p>    They plugged a number of reasonable initial layouts into the    program and allowed it to run simulations and gradually tweak    the detector placement. No matter the initial layout, every    simulation always converged to the same solution, Dorigo says.  <\/p>\n<p>    Even though he knows there is still a long way to go, Dorigo    says that machine-learning-aided detector design is the future.    Were designing experiments today that will operate 10 years    from now, he says. We have to design our detectors to work    with the analysis tools of the future, and so machine learning    has to be an ingredient in those decisions.  <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>Here is the original post: <\/p>\n<p><a target=\"_blank\" rel=\"nofollow noopener\" href=\"https:\/\/www.symmetrymagazine.org\/article\/machine-learning-and-experiment?language_content_entity=und\" title=\"Machine learning and experiment | symmetry magazine - Symmetry magazine\">Machine learning and experiment | symmetry magazine - Symmetry magazine<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> Every day in August of 2019, physicist Dimitrios Tanoglidis would walk to the Plein Air Caf next to the University of Chicago and order a cappuccino.  <a href=\"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/artificial-intelligence\/machine-learning-and-experiment-symmetry-magazine-symmetry-magazine.php\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"limit_modified_date":"","last_modified_date":"","_lmt_disableupdate":"","_lmt_disable":"","footnotes":""},"categories":[13],"tags":[],"class_list":["post-1075214","post","type-post","status-publish","format-standard","hentry","category-artificial-intelligence"],"modified_by":null,"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/1075214"}],"collection":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/comments?post=1075214"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/1075214\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/media?parent=1075214"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/categories?post=1075214"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/tags?post=1075214"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}