Close Menu
    Facebook LinkedIn YouTube WhatsApp X (Twitter) Pinterest
    Trending
    • Mistral, which once aimed for top open models, now leans on being an alternative to Chinese and US labs, says it’s on track for $80M in monthly revenue by Dec. (Iain Martin/Forbes)
    • Today’s NYT Wordle Hints, Answer and Help for April 19 #1765
    • Powerful lightweight sports car available now
    • It Takes 2 Minutes to Hack the EU’s New Age-Verification App
    • Airbnb launches a pilot in NYC, LA, and other cities that lets users to select from a range of boutique hotels alongside private homes in a bid to boost growth (Stephanie Stacey/Financial Times)
    • Today’s NYT Strands Hints, Answer and Help for April 19 #777
    • Adaptable medium format film camera changes sizes mid-roll
    • Schematik Is ‘Cursor for Hardware.’ Anthropic Wants In
    Facebook LinkedIn WhatsApp
    Times FeaturedTimes Featured
    Sunday, April 19
    • Home
    • Founders
    • Startups
    • Technology
    • Profiles
    • Entrepreneurs
    • Leaders
    • Students
    • VC Funds
    • More
      • AI
      • Robotics
      • Industries
      • Global
    Times FeaturedTimes Featured
    Home»Global»Brain-Inspired Algorithms Could Dramatically Cut AI Energy Use
    Global

    Brain-Inspired Algorithms Could Dramatically Cut AI Energy Use

    Editor Times FeaturedBy Editor Times FeaturedDecember 16, 2025No Comments3 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email WhatsApp Copy Link


    One main subject dealing with synthetic intelligence is the interplay between a pc’s reminiscence and its processing capabilities. When an algorithm is in operation, information flows quickly between these two parts. Nevertheless, AI fashions depend on an unlimited quantity of knowledge, which creates a bottleneck. 

    A new study, printed on Monday within the journal Frontiers in Science by Purdue College and the Georgia Institute of Know-how, suggests a novel method to constructing laptop structure for AI fashions utilizing brain-inspired algorithms. The researchers say that creating algorithms on this method may scale back the power prices related to AI fashions. 

    “Language processing fashions have grown 5,000-fold in dimension over the past 4 years,” Kaushik Roy, a Purdue College laptop engineering professor and the examine’s lead writer, stated in a statement. “This alarmingly fast enlargement makes it essential that AI is as environment friendly as potential. Which means essentially rethinking how computer systems are designed.”


    Do not miss any of our unbiased tech content material and lab-based evaluations. Add CNET as a most popular Google supply. Do not miss any of our unbiased tech content material and lab-based evaluations. Add CNET as a most popular Google supply.


    Most computer systems right this moment are modeled on an concept from 1945 known as the von Neumann structure, which separates processing and reminiscence. That is the place the slowdown happens. As extra individuals all over the world make the most of data-hungry AI fashions, the excellence between a pc’s processing and reminiscence capability may change into a extra important subject.

    Researchers at IBM known as out this drawback in a post earlier this yr. The problem laptop engineers are working up in opposition to is named the ‘reminiscence wall.’

    Breaking the reminiscence wall

    The memory wall refers back to the disparity between reminiscence and processing capabilities. Basically, laptop reminiscence is struggling to maintain up with processing speeds. This is not a brand new subject. A pair of researchers from the College of Virginia coined the term again within the Nineties. 

    AI Atlas

    CNET

    However now that AI is prevalent, the reminiscence wall subject is sucking up time and power within the underlying computer systems that make AI fashions work. The paper’s researchers argue that we may attempt a brand new laptop structure that integrates reminiscence and processing. 

    Impressed by how our brains perform, the AI algorithms referred to within the paper are often called spiking neural networks. A standard criticism of those algorithms up to now is that they are often sluggish and inaccurate. Nevertheless, some laptop scientists argue that these algorithms have shown significant improvement over the previous few years. 

    The researchers recommend that AI fashions ought to make the most of an idea associated to SNNs, often called compute-in-memory. This idea continues to be comparatively new within the discipline of AI. 

    “CIM provides a promising answer to the reminiscence wall drawback by integrating computing capabilities straight into the reminiscence system,” the authors write within the paper’s summary. 

    Medical units, transportation, and drones are just a few areas the place researchers imagine enhancements may very well be made if laptop processing and reminiscence have been built-in right into a single system. 

    “AI is among the most transformative applied sciences of the twenty first century. Nevertheless, to maneuver it out of knowledge facilities and into the true world, we have to dramatically scale back its power use,” Tanvi Sharma, co-author and researcher at Purdue College, stated in an announcement. 

    “With much less information switch and extra environment friendly processing, AI can match into small, reasonably priced units with batteries that last more,” Sharma stated. 





    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Editor Times Featured
    • Website

    Related Posts

    Today’s NYT Wordle Hints, Answer and Help for April 19 #1765

    April 19, 2026

    Today’s NYT Strands Hints, Answer and Help for April 19 #777

    April 19, 2026

    Today’s NYT Connections: Sports Edition Hints, Answers for April 19 #573

    April 18, 2026

    Premier League Soccer: Stream Chelsea vs. Man United From Anywhere Live

    April 18, 2026

    Harold Perrineau Teases ‘Despicable’ Town and What’s Next in Season 4 of ‘From’

    April 18, 2026

    Whoop Band AI Coach Review: The First To Get It Right

    April 18, 2026

    Comments are closed.

    Editors Picks

    Mistral, which once aimed for top open models, now leans on being an alternative to Chinese and US labs, says it’s on track for $80M in monthly revenue by Dec. (Iain Martin/Forbes)

    April 19, 2026

    Today’s NYT Wordle Hints, Answer and Help for April 19 #1765

    April 19, 2026

    Powerful lightweight sports car available now

    April 19, 2026

    It Takes 2 Minutes to Hack the EU’s New Age-Verification App

    April 19, 2026
    Categories
    • Founders
    • Startups
    • Technology
    • Profiles
    • Entrepreneurs
    • Leaders
    • Students
    • VC Funds
    About Us
    About Us

    Welcome to Times Featured, an AI-driven entrepreneurship growth engine that is transforming the future of work, bridging the digital divide and encouraging younger community inclusion in the 4th Industrial Revolution, and nurturing new market leaders.

    Empowering the growth of profiles, leaders, entrepreneurs businesses, and startups on international landscape.

    Asia-Middle East-Europe-North America-Australia-Africa

    Facebook LinkedIn WhatsApp
    Featured Picks

    Today’s NYT Wordle Hints, Answer and Help for Dec. 22 #1647

    December 22, 2025

    Is Microsoft’s first ever handheld Xbox console worth the wait?

    October 29, 2025

    Solving Peru’s ‘Band of Holes’: Ancient Indigenous Trade System

    December 21, 2025
    Categories
    • Founders
    • Startups
    • Technology
    • Profiles
    • Entrepreneurs
    • Leaders
    • Students
    • VC Funds
    Copyright © 2024 Timesfeatured.com IP Limited. All Rights.
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us

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