AI

Meta expects recommendation models ‘orders of magnitude’ bigger than GPT-4. Why?

Comment

facebook meta surveillance
Image Credits: Bryce Durbin / TechCrunch

Meta made a remarkable claim in an announcement published today intended to give more clarity on its content recommendation algorithms. It’s preparing for behavior analysis systems “orders of magnitude” bigger than the biggest large language models out there, including ChatGPT and GPT-4. Is that really necessary?

Every once in a while Meta decides to freshen its commitment to transparency by explaining how a few of its algorithms work. Sometimes this is revealing or informative, and sometimes it only leads to more questions. This occasion is a little of both.

In addition to the “system cards” explaining how AI is used in a given context or app, the social and advertising network posted an overview of the AI models it uses. For instance, it may be worthwhile to know whether a video represents roller hockey or roller derby, even though there’s some visual overlap, so it can be recommended properly.

Indeed Meta has been among the more prolific research organizations in the field of multimodal AI, which combines data from multiple modalities (visual and auditory, for instance) to better understand a piece of content.

Few of these models are released publicly, though we frequently hear about how they are used internally to improve things like “relevance,” which is a euphemism for targeting. (They do allow some researchers access to them.)

Then comes this interesting little tidbit as it is describing how it is building out its computation resources:

In order to deeply understand and model people’s preferences, our recommendation models can have tens of trillions of parameters — orders of magnitude larger than even the biggest language models used today.

I pressed Meta to get a little more specific about these theoretical tens-of-trillions models, and that’s just what they are: theoretical. In a clarifying statement, the company said, “We believe our recommendation models have the potential to reach tens of trillions of parameters.” This phrasing is a bit like saying your burgers “can” have 16-ounce patties but then admitting they’re still at the quarter-pounder stage. Nevertheless the company clearly states that it aims to “ensure that these very large models can be trained and deployed efficiently at scale.”

Would a company build costly infrastructure for software it doesn’t intend to create — or use? It seems unlikely, but Meta declined to confirm (though nor did they deny) that they are actively pursuing models of this size. The implications are clear, so while we can’t treat this tens-of-trillions scale model as extant, we can treat it as genuinely aspirational and likely in the works.

“Understand and model people’s preferences,” by the way, must be understood to mean behavior analysis of users. Your actual preferences could probably be represented by a plaintext list a hundred words long. It can be hard to understand, at a fundamental level, why you would need a model this large and complex to handle recommendations even for a couple billion users.

The truth is the problem space is indeed huge: There are billions and billions of pieces of content all with attendant metadata, and no doubt all kinds of complex vectors showing that people who follow Patagonia also tend to donate to the World Wildlife Federation, buy increasingly expensive bird feeders and so on. So maybe it isn’t so surprising that a model trained on all this data would be quite large. But “orders of magnitude larger” than even the biggest out there, something trained on practically every written work accessible?

There isn’t a reliable parameter count on GPT-4, and leaders in the AI world have also found that it’s a reductive measure of performance, but ChatGPT is at around 175 billion and GPT-4 is believed to be higher than that but lower than the wild 100 trillion claims. Even if Meta is exaggerating a bit, this is still scary big.

Think of it: An AI model as large or larger than any yet created… what goes in one end is every single action you take on Meta’s platforms, what comes out the other is a prediction of what you will do or like next. Kind of creepy, isn’t it?

Of course they’re not the only ones doing this. TikTok led the charge in algorithmic tracking and recommendation, and has built its social media empire on its addictive feed of “relevant” content meant to keep you scrolling until your eyes hurt. Its competitors are openly envious.

Meta is clearly aiming to blind advertisers with science, both with the stated ambition to create the biggest model on the block, and with passages like the following:

These systems understand people’s behavior preferences utilizing very large-scale attention models, graph neural networks, few-shot learning, and other techniques. Recent key innovations include a novel hierarchical deep neural retrieval architecture, which allowed us to significantly outperform various state-of-the-art baselines without regressing inference latency; and a new ensemble architecture that leverages heterogeneous interaction modules to better model factors relevant to people’s interests.

The above paragraph isn’t meant to impress researchers (they know all this stuff) or users (they don’t understand or care). But put yourself in the shoes of an advertiser who is beginning to question whether their money is well spent on Instagram ads instead of other options. This technical palaver is meant to dazzle them, to convince them that not only is Meta a leader in AI research, but that AI genuinely excels at “understanding” people’s interests and preferences.

In case you doubt it: “more than 20 percent of content in a person’s Facebook and Instagram feeds is now recommended by AI from people, groups, or accounts they don’t follow.” Just what we asked for! So that’s that. AI is working great.

But all this is also a reminder of the hidden apparatus at the heart of Meta, Google and other companies whose primary motivating principle is to sell ads with increasingly granular and precise targeting. The value and legitimacy of that targeting must be reiterated constantly even as users revolt and advertising multiplies and insinuates rather than improves.

Never once has Meta done something sensible like present me with a list of 10 brands or hobbies and ask which of them I like. They’d rather watch over my shoulder as I skim the web looking for a new raincoat and act like it’s a feat of advanced artificial intelligence when they serve me raincoat ads the next day. It’s not entirely clear the latter approach is superior to the former, or if so, how superior? The entire web has been built up around a collective belief in precision ad targeting and now the latest technology is being deployed to prop it up for a new, more skeptical wave of marketing spend.

Of course you need a model with ten trillion parameters to tell you what people like. How else could you justify the billion dollars you spent training it!

More TechCrunch

Struggling EV startup Fisker has laid off hundreds of employees in a bid to stay alive, as it continues to search for funding, a buyout or prepare for bankruptcy. Workers…

Fisker cuts hundreds of workers in bid to keep EV startup alive

Chinese EV manufacturers face a new challenge in their pursuit of U.S. customers: a new House bill that would limit or ban the introduction of their connected vehicles. The bill,…

Chinese EV makers, and their connected vehicles, targeted by new House bill

With the release of iOS 18 later this year, Apple may again borrow ideas third-party apps. This time it’s Arc that could be among those affected.

Is Apple planning to ‘sherlock’ Arc?

TechCrunch Disrupt 2024 will be in San Francisco on October 28–30, and we’re already excited! This is the startup world’s main event, and it’s where you’ll find the knowledge, tools…

Meet Visa, Mercury, Artisan, Golub Capital and more at TC Disrupt 2024

Featured Article

The women in AI making a difference

As a part of a multi-part series, TechCrunch is highlighting women innovators — from academics to policymakers —in the field of AI.

4 hours ago
The women in AI making a difference

Cadillac may seem a bit too traditional to hang its driving cap on EVs. And yet, that hasn’t stopped the GM brand from rolling out — or at least showing…

The Cadillac Optiq EV starts at $54,000 and is designed to hook young hipsters

Ifeel is being offered as part of an employer’s or insurance provider’s healthcare coverage.

Mental health insurance platform ifeel raises a $20 million Series B

Instead of opening the user’s actual browser or a WebView, Custom Tabs let users remain in their app while browsing.

Google Chrome becomes a ‘picture-in-picture’ app

Sanil Chawla remembers the meetings he had with countless artists in college. Those creatives were looking for one thing: sustainable economic infrastructure that could help them scale rather than drown…

Slingshot raises $2.2 million to provide financial services to artists

A startup called Firefly that’s tackling the thorny and growing issue of cloud asset management with an “infrastructure as code” solution has raised $23 million in funding. That comes on…

Firefly forges on after co-founder murdered by Hamas

Mistral, the French AI startup backed by Microsoft and valued at $6 billion, has released its first generative AI model for coding, dubbed Codestral. Like other code-generating models, Codestral is…

Mistral releases Codestral, its first generative AI model for code

Pinterest announced today that it is evolving its Creator Inclusion Fund to now be called the Pinterest Inclusion Fund. Pinterest teamed up with Shopify’s Build Black and Build Native programs…

Pinterest expands its Creator Fund to allow founders

Alex Taub, a longtime founder with multiple exits under his belt, believes it’s time to disrupt the meme industry. “I have this big thesis that meme tech is going to…

This founder says meme tech is the next big thing

Lux, the startup behind popular pro photography app Halide and others, is venturing into video with its latest app launch. On Wednesday, the company announced Kino, a new video capture app…

Kino is a new iPhone app for videographers from the makers of Halide

DevOps startup Harness has shown itself to be an ambitious company, building a broad platform of services while also dabbling in M&A when it made sense to fill in functionality.…

Harness snags Split.io as it goes all in on feature flags and experiments

Microsoft’s Copilot, a generative AI-powered tool that can generate text as well as answer specific questions, is now available as an in-app chatbot on Telegram, the instant messaging app.  Currently…

Microsoft’s Copilot is now on Telegram

HBO’s new documentary, “MoviePass, MovieCrash,” tells a story that many of us know about: how MoviePass, the subscription-based movie ticketing startup, was a catastrophic failure. After a series of mishaps…

MoviePass co-founders speak their truth in HBO’s new documentary 

The watch features a variety of different 3D games, unlocking more play time the more kids move.

Fitbit’s new kid smartwatch is a little Wiimote, a little Tamagotchi

In the video, a crowd is roaring at a packed summer music festival. As a beat starts playing over the speakers, the performer finally walks onstage: It’s the Joker. Clad…

Discord has become an unlikely center for the generative AI boom

After the Wirecard scandal, Germany’s financial regulator BaFin started to look more closely at young fintech startups that wanted to grow at a rapid pace — it’s better to be…

Germany’s financial regulator ends anti-money laundering cap on N26 signups after $10M fine

Among other things, this includes the ability to trace code from source to binary packages across both platforms, single sign-on support and unified project structures.

JFrog and GitHub team up to closely integrate their source code and binary platforms

The company’s public fund disbursement and e-commerce platform makes accepting school tuition and enabling educational enrichment more accessible. 

Tech startup Odyssey goes on journey to help states implement school choice programs

A new startup called Kinnect aims to help people privately save generational memories, traditions, recipes and more. The company’s app, launched this month, lets people create invite-only spaces where they…

Kinnect’s new app aims to help families record and store generational memories

Spotify has hiked its premium subscription in France by an eye-watering €0.13, in response to a new music-streaming tax.

Spotify hikes subscription price in France by 1.2% to match new music-streaming tax

The European Union has taken the wraps off the structure of the new AI Office, the ecosystem-building and oversight body that’s being established under the bloc’s AI Act. The risk-based…

With the EU AI Act incoming this summer, the bloc lays out its plan for AI governance

Solutions by Text, a company that gives people a way to pay their bills and apply for loans via text messaging, has secured $110 million in new growth funding. Edison…

Bootstrapped for over a decade, this Dallas company just secured $110M to help people pay bills by text

Owners of small- and medium-sized businesses check their bank balances daily to make financial decisions. But it’s entrepreneur Yoseph West’s assertion that there’s typically information and functions missing from bank…

Relay raises $32.2 million to help smaller businesses manage their cash flow

When other firms were investing and raising eye-popping sums, Clean Energy Ventures took a different approach. It appears to be paying off.

How Clean Energy Ventures avoided the pandemic bubble and raised a $305M fund

PwC, the management consulting giant, will become OpenAI’s biggest customer to date, covering 100,000 users.

OpenAI signs 100K PwC workers to ChatGPT’s enterprise tier as PwC becomes its first resale partner

Tech enthusiasts and entrepreneurs, the clock is ticking! With just 72 hours remaining until the early-bird ticket deadline for TechCrunch Disrupt 2024, now is the time to secure your spot…

72 hours left of the Disrupt early-bird sale