Close Menu
    Facebook LinkedIn YouTube WhatsApp X (Twitter) Pinterest
    Trending
    • Popup clinic brings healthcare to remote communities
    • Goodbye clicks, Hello answers: How is Answer Engine Optimisation (AEO) replacing traditional SEO?
    • Cybercriminals Are Hiding Malicious Web Traffic in Plain Sight
    • Your New Switch 2 Needs Careful Handling. Here’s What to Be Wary About
    • Why AI Hentai Chatbots Are Exploding in Popularity
    • Masks and distancing protect chimps from human diseases
    • London-based Latent Technology raises €7 million to redefine game animation with generative physics
    • The Best Car Vacuums (2025), Tested and Reviewed
    Facebook LinkedIn WhatsApp
    Times FeaturedTimes Featured
    Friday, June 6
    • Home
    • Founders
    • Startups
    • Technology
    • Profiles
    • Entrepreneurs
    • Leaders
    • Students
    • VC Funds
    • More
      • AI
      • Robotics
      • Industries
      • Global
    Times FeaturedTimes Featured
    Home»AI Technology News»How DeepSeek ripped up the AI playbook—and why everyone’s going to follow it
    AI Technology News

    How DeepSeek ripped up the AI playbook—and why everyone’s going to follow it

    Editor Times FeaturedBy Editor Times FeaturedJanuary 31, 2025No Comments3 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email WhatsApp Copy Link


    There’s extra. To make its use of reinforcement studying as environment friendly as attainable, DeepSeek has additionally developed a brand new algorithm known as Group Relative Coverage Optimization (GRPO). It first used GRPO a yr in the past, to construct a mannequin known as DeepSeekMath. 

    We’ll skip the details—you simply must know that reinforcement studying includes calculating a rating to find out whether or not a possible transfer is sweet or dangerous. Many present reinforcement-learning methods require an entire separate mannequin to make this calculation. Within the case of huge language fashions, meaning a second mannequin that may very well be as costly to construct and run as the primary. As an alternative of utilizing a second mannequin to foretell a rating, GRPO simply makes an informed guess. It’s low cost, however nonetheless correct sufficient to work.  

    A standard method

    DeepSeek’s use of reinforcement studying is the principle innovation that the corporate describes in its R1 paper. However DeepSeek will not be the one agency experimenting with this system. Two weeks earlier than R1 dropped, a staff at Microsoft Asia introduced a mannequin known as rStar-Math, which was skilled in an analogous means. “It has equally large leaps in efficiency,” says Matt Zeiler, founder and CEO of the AI agency Clarifai.

    AI2’s Tulu was additionally constructed utilizing environment friendly reinforcement-learning methods (however on prime of, not as an alternative of, human-led steps like supervised fine-tuning and RLHF). And the US agency Hugging Face is racing to copy R1 with OpenR1, a clone of DeepSeek’s mannequin that Hugging Face hopes will expose much more of the substances in R1’s particular sauce.

    What’s extra, it’s an open secret that prime corporations like OpenAI, Google DeepMind, and Anthropic might already be utilizing their very own variations of DeepSeek’s method to coach their new era of fashions. “I’m positive they’re doing virtually the very same factor, however they’ll have their very own taste of it,” says Zeiler. 

    However DeepSeek has a couple of trick up its sleeve. It skilled its base mannequin V3 to do one thing known as multi-token prediction, the place the mannequin learns to foretell a string of phrases without delay as an alternative of separately. This coaching is cheaper and seems to spice up accuracy as properly. “If you concentrate on the way you converse, if you’re midway via a sentence, what the remainder of the sentence goes to be,” says Zeiler. “These fashions must be able to that too.”  

    It has additionally discovered cheaper methods to create massive knowledge units. To coach final yr’s mannequin, DeepSeekMath, it took a free knowledge set known as Frequent Crawl—an enormous variety of paperwork scraped from the web—and used an automatic course of to extract simply the paperwork that included math issues. This was far cheaper than constructing a brand new knowledge set of math issues by hand. It was additionally simpler: Frequent Crawl contains much more math than every other specialist math knowledge set that’s out there. 

    And on the {hardware} aspect, DeepSeek has discovered new methods to juice outdated chips, permitting it to coach top-tier fashions with out coughing up for the newest {hardware} in the marketplace. Half their innovation comes from straight engineering, says Zeiler: “They undoubtedly have some actually, actually good GPU engineers on that staff.”



    Source link

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

    Related Posts

    Manus has kick-started an AI agent boom in China

    June 5, 2025

    What’s next for AI and math

    June 4, 2025

    Inside the tedious effort to tally AI’s energy appetite

    June 3, 2025

    Fueling seamless AI at scale

    May 30, 2025

    This benchmark used Reddit’s AITA to test how much AI models suck up to us

    May 30, 2025

    Designing Pareto-optimal GenAI workflows with syftr

    May 28, 2025

    Comments are closed.

    Editors Picks

    Popup clinic brings healthcare to remote communities

    June 6, 2025

    Goodbye clicks, Hello answers: How is Answer Engine Optimisation (AEO) replacing traditional SEO?

    June 6, 2025

    Cybercriminals Are Hiding Malicious Web Traffic in Plain Sight

    June 6, 2025

    Your New Switch 2 Needs Careful Handling. Here’s What to Be Wary About

    June 6, 2025
    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

    The Best Cooling Sheets, Tested and Reviewed (2025)

    May 29, 2025

    Acer Swift X 14 Review: A Hot and Loud Gaming Laptop

    September 27, 2024

    It’s So Easy to Install This Window Heat Pump I Saw at CES

    February 2, 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.