Close Menu
geekfence.comgeekfence.com
    What's Hot

    Google Pixel 9a Better Buy Than Pixel 10a

    February 18, 2026

    Tarana CEO still sees more BEAD opportunities

    February 18, 2026

    Brain inspired machines are better at math than expected

    February 18, 2026
    Facebook X (Twitter) Instagram
    • About Us
    • Contact Us
    Facebook Instagram
    geekfence.comgeekfence.com
    • Home
    • UK Tech News
    • AI
    • Big Data
    • Cyber Security
      • Cloud Computing
      • iOS Development
    • IoT
    • Mobile
    • Software
      • Software Development
      • Software Engineering
    • Technology
      • Green Technology
      • Nanotechnology
    • Telecom
    geekfence.comgeekfence.com
    Home»Artificial Intelligence»Brain inspired machines are better at math than expected
    Artificial Intelligence

    Brain inspired machines are better at math than expected

    AdminBy AdminFebruary 18, 2026No Comments4 Mins Read1 Views
    Facebook Twitter Pinterest LinkedIn Telegram Tumblr Email
    Brain inspired machines are better at math than expected
    Share
    Facebook Twitter LinkedIn Pinterest Email


    Computers designed to mimic the structure of the human brain are showing an unexpected strength. They can solve some of the demanding mathematical equations that lie at the heart of major scientific and engineering problems.

    In a study published in Nature Machine Intelligence, Sandia National Laboratories computational neuroscientists Brad Theilman and Brad Aimone introduced a new algorithm that allows neuromorphic hardware to solve partial differential equations, or PDEs — the mathematical foundation for modeling phenomena such as fluid dynamics, electromagnetic fields and structural mechanics.

    The results demonstrate that neuromorphic systems can handle these equations efficiently. The advance could help open the door to the first neuromorphic supercomputer, offering a new path toward energy efficient computing for national security and other critical applications.

    The research was funded by the Department of Energy’s Office of Science through the Advanced Scientific Computing Research and Basic Energy Sciences programs, as well as the National Nuclear Security Administration’s Advanced Simulation and Computing program.

    Solving Partial Differential Equations With Brain Like Hardware

    Partial differential equations are essential for simulating real world systems. They are used to forecast weather, analyze how materials respond to stress, and model complex physical processes. Traditionally, solving PDEs requires enormous computing power. Neuromorphic computers approach the problem differently by processing information in ways that resemble how the brain operates.

    “We’re just starting to have computational systems that can exhibit intelligent-like behavior. But they look nothing like the brain, and the amount of resources that they require is ridiculous, frankly,” Theilman said.

    For years, neuromorphic systems were mainly viewed as tools for pattern recognition or for speeding up artificial neural networks. Few expected them to manage mathematically rigorous problems such as PDEs, which are typically handled by large scale supercomputers.

    Aimone and Theilman were not surprised by the outcome. They argue that the human brain routinely carries out highly complex calculations, even if people are unaware of it.

    “Pick any sort of motor control task — like hitting a tennis ball or swinging a bat at a baseball,” Aimone said. “These are very sophisticated computations. They are exascale-level problems that our brains are capable of doing very cheaply.”

    Energy Efficient Computing for National Security

    The findings could have major implications for the National Nuclear Security Administration, which is responsible for maintaining the nation’s nuclear deterrent. Supercomputers used across the nuclear weapons complex consume vast amounts of electricity to simulate the physics of nuclear systems and other high stakes scenarios.

    Neuromorphic computing may provide a way to significantly cut energy use while still delivering strong computational performance. By solving PDEs in a brain inspired manner, these systems suggest that large simulations could be run using far less power than conventional supercomputers require.

    “You can solve real physics problems with brain-like computation,” Aimone said. “That’s something you wouldn’t expect because people’s intuition goes the opposite way. And in fact, that intuition is often wrong.”

    The team envisions neuromorphic supercomputers eventually becoming central to Sandia’s mission of protecting national security.

    What Neuromorphic Computing Reveals About the Brain

    Beyond engineering advances, the research also touches on deeper questions about intelligence and how the brain performs calculations. The algorithm developed by Theilman and Aimone closely mirrors the structure and behavior of cortical networks.

    “We based our circuit on a relatively well-known model in the computational neuroscience world,” Theilman said. “We’ve shown the model has a natural but non-obvious link to PDEs, and that link hasn’t been made until now — 12 years after the model was introduced.”

    The researchers believe this work could help connect neuroscience with applied mathematics, offering new understanding of how the brain processes information.

    “Diseases of the brain could be diseases of computation,” Aimone said. “But we don’t have a solid grasp on how the brain performs computations yet.”

    If that idea proves correct, neuromorphic computing might one day contribute to better understanding and treatment of neurological disorders such as Alzheimer’s and Parkinson’s.

    Building the Next Generation of Supercomputers

    Neuromorphic computing remains an emerging field, but this work represents an important step forward. The Sandia team hopes their results will encourage collaboration among mathematicians, neuroscientists and engineers to expand what this technology can achieve.

    “If we’ve already shown that we can import this relatively basic but fundamental applied math algorithm into neuromorphic — is there a corresponding neuromorphic formulation for even more advanced applied math techniques?” Theilman said.

    As development continues, the researchers are optimistic. “We have a foot in the door for understanding the scientific questions, but also we have something that solves a real problem,” Theilman said.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

    Related Posts

    The digital quant: instant portfolio optimization with JointFM

    February 17, 2026

    Why Moltbook Could Be the Next Big Thing in AI-Powered Social Networking

    February 16, 2026

    LLaMA in R with Keras and TensorFlow

    February 15, 2026

    ALS stole this musician’s voice. AI let him sing again.

    February 14, 2026

    The Future of Agentic Coding – O’Reilly

    February 13, 2026

    Maximizing throughput with time-varying capacity

    February 12, 2026
    Top Posts

    Hard-braking events as indicators of road segment crash risk

    January 14, 202618 Views

    Understanding U-Net Architecture in Deep Learning

    November 25, 202514 Views

    How to integrate a graph database into your RAG pipeline

    February 8, 202610 Views
    Don't Miss

    Google Pixel 9a Better Buy Than Pixel 10a

    February 18, 2026

    Google has just announced its latest mid-range smartphone, the Pixel 10a. While I haven’t had…

    Tarana CEO still sees more BEAD opportunities

    February 18, 2026

    Brain inspired machines are better at math than expected

    February 18, 2026

    Business Analytics: Essential Tools, Techniques and Skills for Data-Driven Success

    February 18, 2026
    Stay In Touch
    • Facebook
    • Instagram
    About Us

    At GeekFence, we are a team of tech-enthusiasts, industry watchers and content creators who believe that technology isn’t just about gadgets—it’s about how innovation transforms our lives, work and society. We’ve come together to build a place where readers, thinkers and industry insiders can converge to explore what’s next in tech.

    Our Picks

    Google Pixel 9a Better Buy Than Pixel 10a

    February 18, 2026

    Tarana CEO still sees more BEAD opportunities

    February 18, 2026

    Subscribe to Updates

    Please enable JavaScript in your browser to complete this form.
    Loading
    • About Us
    • Contact Us
    • Disclaimer
    • Privacy Policy
    • Terms and Conditions
    © 2026 Geekfence.All Rigt Reserved.

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