Close Menu
    Facebook LinkedIn YouTube WhatsApp X (Twitter) Pinterest
    Trending
    • iOS 27 Could Give Your iPhone a Custom Camera App and a ChatGPT-Like Siri, Finally
    • Neutralizing the Gigascale Problem: How to Solve the Physical Power Paradox of Extreme AI Training Loads
    • Service dogs control devices with new big blue button
    • Startups praise R&D reforms, warn on CGT overhaul
    • Elon Musk Had ‘Hair-Raising’ Idea of Passing OpenAI Onto His Kids, Sam Altman Says
    • Kalihi illegal gambling raid leads to Honolulu arrests
    • Rivian’s New AI Assistant Knows What You Mean, Not Just What You Say
    • IEEE Aims to Connect Those Still Offine
    Facebook LinkedIn WhatsApp
    Times FeaturedTimes Featured
    Wednesday, May 13
    • Home
    • Founders
    • Startups
    • Technology
    • Profiles
    • Entrepreneurs
    • Leaders
    • Students
    • VC Funds
    • More
      • AI
      • Robotics
      • Industries
      • Global
    Times FeaturedTimes Featured
    Home»AI Technology News»LLMs contain a LOT of parameters. But what’s a parameter?
    AI Technology News

    LLMs contain a LOT of parameters. But what’s a parameter?

    Editor Times FeaturedBy Editor Times FeaturedJanuary 7, 2026No Comments3 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email WhatsApp Copy Link


    When a mannequin is educated, every phrase in its vocabulary is assigned a numerical worth that captures the which means of that phrase in relation to all the opposite phrases, based mostly on how the phrase seems in numerous examples throughout the mannequin’s coaching information.

    Every phrase will get changed by a form of code?

    Yeah. However there’s a bit extra to it. The numerical worth—the embedding—that represents every phrase is actually a listing of numbers, with every quantity within the listing representing a unique aspect of which means that the mannequin has extracted from its coaching information. The size of this listing of numbers is one other factor that LLM designers can specify earlier than an LLM is educated. A typical dimension is 4,096.

    Each phrase inside an LLM is represented by an inventory of 4,096 numbers?  

    Yup, that’s an embedding. And every of these numbers is tweaked throughout coaching. An LLM with embeddings which can be 4,096 numbers lengthy is claimed to have 4,096 dimensions.

    Why 4,096?

    It’d seem like a wierd quantity. However LLMs (like something that runs on a pc chip) work finest with powers of two—2, 4, 8, 16, 32, 64, and so forth. LLM engineers have discovered that 4,096 is an influence of two that hits a candy spot between functionality and effectivity. Fashions with fewer dimensions are much less succesful; fashions with extra dimensions are too costly or gradual to coach and run. 

    Utilizing extra numbers permits the LLM to seize very fine-grained details about how a phrase is utilized in many various contexts, what refined connotations it may need, the way it pertains to different phrases, and so forth.

    Again in February, OpenAI released GPT-4.5, the agency’s largest LLM but (some estimates have put its parameter rely at greater than 10 trillion). Nick Ryder, a analysis scientist at OpenAI who labored on the mannequin, instructed me on the time that larger fashions can work with further data, like emotional cues, comparable to when a speaker’s phrases sign hostility: “All of those refined patterns that come by way of a human dialog—these are the bits that these bigger and bigger fashions will choose up on.”

    The upshot is that each one the phrases inside an LLM get encoded right into a high-dimensional area. Image 1000’s of phrases floating within the air round you. Phrases which can be nearer collectively have related meanings. For instance, “desk” and “chair” will probably be nearer to one another than they’re to “astronaut,” which is near “moon” and “Musk.” Means off within the distance you’ll be able to see “prestidigitation.” It’s a bit of like that, however as a substitute of being associated to one another throughout three dimensions, the phrases inside an LLM are associated throughout 4,096 dimensions.

    Yikes.

    It’s dizzying stuff. In impact, an LLM compresses your entire web right into a single monumental mathematical construction that encodes an unfathomable quantity of interconnected data. It’s each why LLMs can do astonishing issues and why they’re unimaginable to totally perceive.    



    Source link

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

    Related Posts

    Three things in AI to watch, according to a Nobel-winning economist

    May 11, 2026

    Implementing advanced AI technologies in finance

    May 11, 2026

    Fostering breakthrough AI innovation through customer-back engineering

    May 11, 2026

    From Planning to Action: SAP Enterprise Planning enhanced by DataRobot

    May 11, 2026

    Musk v. Altman week 2: OpenAI fires back, and Shivon Zilis reveals that Musk tried to poach Sam Altman

    May 9, 2026

    A blueprint for using AI to strengthen democracy

    May 5, 2026

    Comments are closed.

    Editors Picks

    iOS 27 Could Give Your iPhone a Custom Camera App and a ChatGPT-Like Siri, Finally

    May 13, 2026

    Neutralizing the Gigascale Problem: How to Solve the Physical Power Paradox of Extreme AI Training Loads

    May 13, 2026

    Service dogs control devices with new big blue button

    May 13, 2026

    Startups praise R&D reforms, warn on CGT overhaul

    May 13, 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

    iPhone 17: Every New Feature We Know

    August 4, 2025

    What Is a Knowledge Graph — and Why It Matters

    January 14, 2026

    Plunging beneath the freezing sea to combat antibiotic-resistant bacteria

    September 3, 2024
    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.