Close Menu
Ztoog
    What's Hot
    Technology

    Prompt-injection attacks: A new challenge for OpenAI’s GPT-4V

    Crypto

    Filecoin (FIL) Surges Another 9.3%, Are The Bulls Getting Ready?

    Science

    Yes, the Climate Crisis Is Now ‘Gobsmacking.’ But So Is Progress

    Important Pages:
    • About Us
    • Contact us
    • Privacy Policy
    • Terms & Conditions
    Facebook X (Twitter) Instagram Pinterest
    Facebook X (Twitter) Instagram Pinterest
    Ztoog
    • Home
    • The Future

      How I Turn Unstructured PDFs into Revenue-Ready Spreadsheets

      Is it the best tool for 2025?

      The clocks that helped define time from London’s Royal Observatory

      Summer Movies Are Here, and So Are the New Popcorn Buckets

      India-Pak conflict: Pak appoints ISI chief, appointment comes in backdrop of the Pahalgam attack

    • Technology

      Ensure Hard Work Is Recognized With These 3 Steps

      Cicada map 2025: Where will Brood XIV cicadas emerge this spring?

      Is Duolingo the face of an AI jobs crisis?

      The US DOD transfers its AI-based Open Price Exploration for National Security program to nonprofit Critical Minerals Forum to boost Western supply deals (Ernest Scheyder/Reuters)

      The more Google kills Fitbit, the more I want a Fitbit Sense 3

    • Gadgets

      Maono Caster G1 Neo & PD200X Review: Budget Streaming Gear for Aspiring Creators

      Apple plans to split iPhone 18 launch into two phases in 2026

      Upgrade your desk to Starfleet status with this $95 USB-C hub

      37 Best Graduation Gift Ideas (2025): For College Grads

      Backblaze responds to claims of “sham accounting,” customer backups at risk

    • Mobile

      Samsung Galaxy S25 Edge promo materials leak

      What are people doing with those free T-Mobile lines? Way more than you’d expect

      Samsung doesn’t want budget Galaxy phones to use exclusive AI features

      COROS’s charging adapter is a neat solution to the smartwatch charging cable problem

      Fortnite said to return to the US iOS App Store next week following court verdict

    • Science

      Failed Soviet probe will soon crash to Earth – and we don’t know where

      Trump administration cuts off all future federal funding to Harvard

      Does kissing spread gluten? New research offers a clue.

      Why Balcony Solar Panels Haven’t Taken Off in the US

      ‘Dark photon’ theory of light aims to tear up a century of physics

    • AI

      How to build a better AI benchmark

      Q&A: A roadmap for revolutionizing health care through data-driven innovation | Ztoog

      This data set helps researchers spot harmful stereotypes in LLMs

      Making AI models more trustworthy for high-stakes settings | Ztoog

      The AI Hype Index: AI agent cyberattacks, racing robots, and musical models

    • Crypto

      ‘The Big Short’ Coming For Bitcoin? Why BTC Will Clear $110,000

      Bitcoin Holds Above $95K Despite Weak Blockchain Activity — Analytics Firm Explains Why

      eToro eyes US IPO launch as early as next week amid easing concerns over Trump’s tariffs

      Cardano ‘Looks Dope,’ Analyst Predicts Big Move Soon

      Speak at Ztoog Disrupt 2025: Applications now open

    Ztoog
    Home » Deep-learning system explores materials’ interiors from the outside | Ztoog
    AI

    Deep-learning system explores materials’ interiors from the outside | Ztoog

    Facebook Twitter Pinterest WhatsApp
    Deep-learning system explores materials’ interiors from the outside | Ztoog
    Share
    Facebook Twitter LinkedIn Pinterest WhatsApp

    Maybe you may’t inform a ebook from its cowl, however in response to researchers at MIT you could now be capable of do the equal for supplies of all types, from an airplane half to a medical implant. Their new method permits engineers to determine what’s happening inside just by observing properties of the materials’s floor.

    The crew used a sort of machine studying referred to as deep studying to match a big set of simulated knowledge about supplies’ exterior power fields and the corresponding inner construction, and used that to generate a system that might make dependable predictions of the inside from the floor knowledge.

    The outcomes are being revealed in the journal Advanced Materials, in a paper by doctoral pupil Zhenze Yang and professor of civil and environmental engineering Markus Buehler.

    “It’s a very common problem in engineering,” Buehler explains. “If you have a piece of material — maybe it’s a door on a car or a piece of an airplane — and you want to know what’s inside that material, you might measure the strains on the surface by taking images and computing how much deformation you have. But you can’t really look inside the material. The only way you can do that is by cutting it and then looking inside and seeing if there’s any kind of damage in there.”

    It’s additionally potential to make use of X-rays and different methods, however these are typically costly and require cumbersome gear, he says. “So, what we have done is basically ask the question: Can we develop an AI algorithm that could look at what’s going on at the surface, which we can easily see either using a microscope or taking a photo, or maybe just measuring things on the surface of the material, and then trying to figure out what’s actually going on inside?” That inside info may embody any damages, cracks, or stresses in the materials, or particulars of its inner microstructure.

    The identical sort of questions can apply to organic tissues as properly, he provides. “Is there disease in there, or some kind of growth or changes in the tissue?” The purpose was to develop a system that might reply these sorts of questions in a totally noninvasive manner.

    Achieving that purpose concerned addressing complexities together with the proven fact that “many such problems have multiple solutions,” Buehler says. For instance, many alternative inner configurations may exhibit the identical floor properties. To take care of that ambiguity, “we have created methods that can give us all the possibilities, all the options, basically, that might result in this particular [surface] scenario.”

    The approach they developed concerned coaching an AI mannequin utilizing huge quantities of information about floor measurements and the inside properties related to them. This included not solely uniform supplies but in addition ones with completely different supplies together. “Some new airplanes are made out of composites, so they have deliberate designs of having different phases,” Buehler says. “And of course, in biology as well, any kind of biological material will be made out of multiple components and they have very different properties, like in bone, where you have very soft protein, and then you have very rigid mineral substances.”

    The approach works even for supplies whose complexity isn’t absolutely understood, he says. “With complex biological tissue, we don’t understand exactly how it behaves, but we can measure the behavior. We don’t have a theory for it, but if we have enough data collected, we can train the model.”

    Yang says that the methodology they developed is broadly relevant. “It is not just limited to solid mechanics problems, but it can also be applied to different engineering disciplines, like fluid dynamics and other types.” Buehler provides that it may be utilized to figuring out quite a lot of properties, not simply stress and pressure, however fluid fields or magnetic fields, for instance the magnetic fields inside a fusion reactor. It is “very universal, not just for different materials, but also for different disciplines.”

    Yang says that he initially began excited about this method when he was finding out knowledge on a fabric the place a part of the imagery he was utilizing was blurred, and he questioned the way it may be potential to “fill in the blank” of the lacking knowledge in the blurred space. “How can we recover this missing information?” he questioned. Reading additional, he discovered that this was an instance of a widespread subject, referred to as the inverse drawback, of making an attempt to get better lacking info.

    Developing the methodology concerned an iterative course of, having the mannequin make preliminary predictions, evaluating that with precise knowledge on the materials in query, then fine-tuning the mannequin additional to match that info. The ensuing mannequin was examined in opposition to instances the place supplies are properly sufficient understood to have the ability to calculate the true inner properties, and the new methodology’s predictions matched up properly in opposition to these calculated properties.

    The coaching knowledge included imagery of the surfaces, but in addition varied different kinds of measurements of floor properties, together with stresses, and electrical and magnetic fields. In many instances the researchers used simulated knowledge primarily based on an understanding of the underlying construction of a given materials. And even when a brand new materials has many unknown traits, the methodology can nonetheless generate an approximation that’s adequate to offer steering to engineers with a normal course as to how you can pursue additional measurements.

    As an instance of how this technique could possibly be utilized, Buehler factors out that at the moment, airplanes are sometimes inspected by testing a number of consultant areas with costly strategies reminiscent of X-rays as a result of it might be impractical to check the total airplane. “This is a different approach, where you have a much less expensive way of collecting data and making predictions,” Buehler says. “From that you can then make decisions about where do you want to look, and maybe use more expensive equipment to test it.”

    To start with, he expects this methodology, which is being made freely out there for anybody to make use of by means of the web site GitHub, to be largely utilized in laboratory settings, for instance in testing supplies used for delicate robotics functions.

    For such supplies, he says, “We can measure things on the surface, but we have no idea what’s going on a lot of times inside the material, because it’s made out of a hydrogel or proteins or biomaterials for actuators, and there’s no theory for that. So, that’s an area where researchers could use our technique to make predictions about what’s going on inside, and perhaps design better grippers or better composites,” he provides.

    The analysis was supported by the U.S. Army Research Office, the Air Force Office of Scientific Research, the GoogleCloud platform, and the MIT Quest for Intelligence.

    Share. Facebook Twitter Pinterest LinkedIn WhatsApp

    Related Posts

    AI

    How to build a better AI benchmark

    AI

    Q&A: A roadmap for revolutionizing health care through data-driven innovation | Ztoog

    AI

    This data set helps researchers spot harmful stereotypes in LLMs

    AI

    Making AI models more trustworthy for high-stakes settings | Ztoog

    AI

    The AI Hype Index: AI agent cyberattacks, racing robots, and musical models

    AI

    Novel method detects microbial contamination in cell cultures | Ztoog

    AI

    Seeing AI as a collaborator, not a creator

    AI

    “Periodic table of machine learning” could fuel AI discovery | Ztoog

    Leave A Reply Cancel Reply

    Follow Us
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    Top Posts
    AI

    Natural language boosts LLM performance in coding, planning, and robotics | Ztoog

    Large language fashions (LLMs) have gotten more and more helpful for programming and robotics duties,…

    AI

    HuggingFace Introduces TextEnvironments: An Orchestrator between a Machine Learning Model and A Set of Tools (Python Functions) that the Model can Call to Solve Specific Tasks

    Supervised Fine-tuning (SFT), Reward Modeling (RM), and Proximal Policy Optimization (PPO) are all half of…

    Crypto

    A Leap into the Martian Metaverse – Official Early Access Date Announced – cryptocurrencynews.com

    SEOUL, South Korea, March 15, 2024 /CNW/ — The Mars, a Korean developer in the metaverse…

    Science

    Beauty Is in the Eye of the Beholder—but Memorability May Be Universal

    Imagine spending a weekend afternoon with pals at an artwork museum: nodding with crossed arms,…

    Technology

    Steve Ballmer’s net worth just passed Bill Gates for the first time ever

    In transient: Microsoft firm man Steve Ballmer’s fortune has surpassed that of co-founder and onetime…

    Our Picks
    Science

    Will the ‘Car-Free’ Los Angeles Olympics Work?

    Crypto

    Don’t Worry About Bitcoin: Glassnode Predicts When The Bull Market Will Begin

    Technology

    U.S. Moves Closer to Filing Sweeping Antitrust Case Against Apple

    Categories
    • AI (1,482)
    • Crypto (1,744)
    • Gadgets (1,796)
    • Mobile (1,839)
    • Science (1,853)
    • Technology (1,789)
    • The Future (1,635)
    Most Popular
    Crypto

    Musk’s Golden Ticket to Twitter Profitability ? DOGE, X and More

    The Future

    What is Magento? Understanding the eCommerce Powerhouse

    The Future

    I traded in my MacBook and now I’m a desktop convert

    Ztoog
    Facebook X (Twitter) Instagram Pinterest
    • Home
    • About Us
    • Contact us
    • Privacy Policy
    • Terms & Conditions
    © 2025 Ztoog.

    Type above and press Enter to search. Press Esc to cancel.