Close Menu
    Facebook X (Twitter) Instagram
    TRENDING :
    • Market Talk – April 29, 2026
    • Uber just expanded into hotels, AI, and ‘room service’ and it’s moving fast
    • Social media’s big tobacco moment is just a first step
    • Ghirardelli Chocolate products recalled over Salmonella fears. Avoid this list of 13 beverage mixes
    • Google, TikTok and Meta could be taxed by Australia to fund its newsrooms
    • MacKenzie Scott says we underestimate the impact of small acts of kindness. Science agrees
    • Trump says Iran ‘better get smart soon’ as economies deal with skyrocketing energy prices
    • A key weapon in America’s ‘Golden Dome’ defense shield is taking shape
    Compatriot Chronicle
    • Home
    • US Politics
    • World Politics
    • Economy
    • Business
    • Headline News
    Compatriot Chronicle
    Home»Business»Are large language models the problem, not the solution? 
    Business

    Are large language models the problem, not the solution? 

    October 15, 20254 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Telegram Email Copy Link
    Follow Us
    Google News Flipboard
    Share
    Facebook Twitter LinkedIn Pinterest Email

    There is an all-out global race for AI dominance. The largest and most powerful companies in the world are investing billions in unprecedented computing power. The most powerful countries are dedicating vast energy resources to assist them. And the race is centered on one idea: transformer-based architecture with large language models are the key to winning the AI race. What if they are wrong?

    What we call intelligence evolved in biological life over hundreds of millions of years starting with simple single-celled organisms like bacteria interacting with their environment. Life gradually developed into multi-cell organisms learning to seek what they needed and to avoid what could harm them. Ultimately humans emerged with highly complex brains, billions of neurons and exponentially more neural interactions designed to respond to their needs, interactions, and associations with each other and the world. Creating an artificial form of that likely involves more than cleverly generating language with tools trained on massive repositories of largely non-curated text and marketing it as intelligence. 

    What if aggregating the vast collective so-called wisdom accumulated on the internet and statistically analyzing it with complex algorithms to mindlessly respond to human prompts is really just an unimaginably expensive and resource-intensive exercise in garbage-in-garbage-out? At best, it may be a clever chronicler of common wisdom. At worst, it’s an unprecedented and unnecessary waste of resources with potentially harmful consequences. Eerily foreshadowing a critique of current mainstream AI, Immanuel Kant famously wrote in his landmark work, A Critique of Pure Reason, “thoughts without content are empty, intuitions without concepts are blind.” Put another way, can eons of evolved intelligence be replicated and reduced to the world’s greatest parrot or the mother-of-all autocompletes?

    With all of the global power, hype, and resources behind this one approach, you may have the impression that it is the only viable way to create an artificial form of human intelligence. Fortunately, it is not.

    Incrementalism

    On the incrementalist end of the spectrum of AI research and development, there are approaches that seek to make more efficient use of resources such as grouping small language models (SLMs) with AI agents (https://www.fastcompany.com/91281577/autonomous-ai-agents-are-both-exciting-and-scary) to allow more focused, economical inquiries and responses. (See, Small Language Models are the Future of Agentic AI, Cornell University, https://arxiv.org/abs/2506.02153). The theory is simple: employ flexible, efficient AI agents (technology that can autonomously interact with the environment and perform tasks without human supervision) to access SLMs, smaller, more targeted, and less resource-intensive sets of data.

    The underlying theory is the same for SLMs and LLMs—aggregating data and statistically modeling it to generate text or other data. SLMs are just a smaller and more efficient (but inherently more limited) way of doing this. This approach can incorporate additional technology to achieve greater accuracy such as retrieval augmented generation (RAG). RAG can access more targeted, verifiable, and critically, real-time information rather than simply relying on static (pretrained) data alone. 

    A whole greater than the sum of its parts

    A more significant possible alternative to the LLM and GPT architecture that more closely simulates how we think is based on attempting to replicate evolutionary biology. One company pioneering such work is Softmax (named for a statistical function used in machine learning) led by a cofounder of Twitch, Emmett Shear, who briefly served as CEO of OpenAI. This approach is modeled on cellular biology and the idea that individual parts (cells) working (or in alignment) with each other can form a whole with greater coordinated functionality than the individual parts. A human being is made up of individual but synchronized cells that, on their own, don’t function like us, but somehow cohere to allow us to think and function as human beings. In terms of building a computer model, AI agents are the equivalent of cells in this approach that in theory at least, can work together to form a greater functioning, learning entity.

    If the current domination of LLMs and GPT architecture continues and other innovative approaches fall (or are pushed) by the wayside, it wouldn’t be the first time in the history of computing that commercial forces overrule potentially better alternatives (see Why bad ideas linger in software, Alan Kay, 2012, address to the Congress on the Future of Engineering Software).

    As Albert Einstein famously noted, if he had an hour to save the world, he would spend 55 minutes defining the problem and five minutes solving it. The massive entities pushing the current dominant approach to AI development have yet to define the problem they are trying to solve. LLMs and GPT have proven able to perform tasks that people find useful and they will likely continue to do so. The question is, what if anything, does that have to do with intelligence, human or otherwise?



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

    Related Posts

    Uber just expanded into hotels, AI, and ‘room service’ and it’s moving fast

    April 29, 2026

    Social media’s big tobacco moment is just a first step

    April 29, 2026

    Ghirardelli Chocolate products recalled over Salmonella fears. Avoid this list of 13 beverage mixes

    April 29, 2026
    Top News

    Trump administration suspends 5 offshore wind projects, citing national security risks

    By Staff WriterDecember 23, 2025

    The Trump administration on Monday suspended leases for five large-scale offshore wind projects under construction…

    World War III Unfolding Before Our Eyes

    January 7, 2026

    YouTube’s new timer wants to save you from yourself

    October 23, 2025

    AI wrote the code. You got hacked. Now what?

    October 29, 2025
    Top Trending

    Market Talk – April 29, 2026

    By Staff WriterApril 29, 2026

    ASIA: The major Asian stock markets had a mixed day today: •…

    Uber just expanded into hotels, AI, and ‘room service’ and it’s moving fast

    By Staff WriterApril 29, 2026

    Uber Technologies is doing everything it can to save its customers’ time,…

    Social media’s big tobacco moment is just a first step

    By Staff WriterApril 29, 2026

    Many commentators have called March’s California jury verdict, finding Meta and Google…

    Categories
    • Business
    • Economy
    • Headline News
    • Top News
    • US Politics
    • World Politics
    About us

    The Populist Bulletin serves as a beacon for the populist movement, which champions the interests of ordinary citizens over the agendas of the powerful and entrenched elitists. Rooted in the belief that the voices of everyday workers, families, and communities are often drowned out by powerful people and institutions, it delivers straightforward, unfiltered, compelling, relatable stories that resonate with the values of the American public.

    The Populist Bulletin was founded with a fervent commitment to inform, inspire, empower and spark meaningful conversations about the economy, business, politics, inequality, government accountability and overreach, globalization, and the preservation of American cultural heritage.

    The site offers a dynamic mix of investigative journalism, opinion editorials, and viral content that amplify populist sentiments and deliver stories that echo the concerns of everyday Americans while boldly challenging mainstream narratives that serve the privileged few.

    Top Picks

    Market Talk – April 29, 2026

    April 29, 2026

    Uber just expanded into hotels, AI, and ‘room service’ and it’s moving fast

    April 29, 2026

    Social media’s big tobacco moment is just a first step

    April 29, 2026
    Categories
    • Business
    • Economy
    • Headline News
    • Top News
    • US Politics
    • World Politics
    Copyright © 2025 Populist Bulletin. All Rights Reserved.

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