Last night my wife looked up from her phone, disgusted. “All I’m getting is Jeffrey Epstein and Peter Attia!” she said. “Why do they think I’m interested in this?!”
As the family’s resident interpreter of digital entrails, I felt responsible to hazard an answer, but given the prurient nature of the Epstein story, I sensed my thoughts might not be well received. So I backed into it a bit: “Have you clicked on any Epstein-related links recently?” I asked. She had, she rejoined, wary of the implicit judgement hovering over my question. “But that doesn’t mean I want my entire feed to be about it!”
For whatever reason – and there are many, many possible reasons – the algorithms responsible for producing my wife’s fe…
Last night my wife looked up from her phone, disgusted. “All I’m getting is Jeffrey Epstein and Peter Attia!” she said. “Why do they think I’m interested in this?!”
As the family’s resident interpreter of digital entrails, I felt responsible to hazard an answer, but given the prurient nature of the Epstein story, I sensed my thoughts might not be well received. So I backed into it a bit: “Have you clicked on any Epstein-related links recently?” I asked. She had, she rejoined, wary of the implicit judgement hovering over my question. “But that doesn’t mean I want my entire feed to be about it!”
For whatever reason – and there are many, many possible reasons – the algorithms responsible for producing my wife’s feed had determined that the most likely content to perform *at that moment* were posts about Jeffrey Epstein. Did that please her? No. But was it explainable? I think so, and the conversation that ensued helped sharpen a hypothesis I’ve been considering for weeks: We’ve been living with at-scale versions of “generative AI” for a lot longer than we thought – and if we want to understand how it might shape us going forward, it would pay to study the impacts its early forms have already had on our world.
First, let’s define some terms. I asked Gemini for a short explanation of “generative AI.” Here’s what came back: “a type of artificial intelligence that creates new, original content—including text, images, code, music, and videos—by learning patterns from massive datasets.” Sounds about right.
I then prompted Gemini with this question: “how do feeds work on Instagram and TikTok – what drive the decisions the algorithms make?” Now, I’ve studied the answer to this question pretty closely over the past decade or so, and Gemini’s answer rang true to me: “Instagram and TikTok feeds use sophisticated machine learning algorithms to curate personalized content, aiming to maximize user engagement by analyzing thousands of signals, including watch time, likes, shares, and comments.”
If today’s generative AI delivers content by “learning patterns from massive datasets” and today’s social media feeds deliver content by “analyzing thousand of signals” to “curate personalized content,” well, it strikes me that social media feeds constitute something quite similar to generative AI, just delivered in a different product envelope. Instead of direct prompts, platforms like Insta, YouTube, and TikTok use our actions, our personal data, and thousands of other inputs to determine what we might see next on our feeds. In essence, the AI behind social media are generating our feeds on the fly, billions upon billions of times a day. It’s an insanely complicated (and rather out of control) process. And it’s no wonder that the companies behind those platforms – Meta, Google, ByteDance, et al – have come to dominate generative AI. It’s also no surprise that the newest entrant in the race – OpenAI – is trying to push its way into feed-driven social media.
In short, I’m arguing that social media is the precursor to what we now call generative AI. And what drives social media? Advertising.
It’s no secret that advertising is coming to generative AI. OpenAI has already announced its plans, Google already incorporates advertising in its “AI Overviews.” Without the advertising industry’s massive revenue, AI providers will never be able to justify the hundreds of billions of dollars in investments they’ve already made in consumer-facing AI applications.
With a commitment to advertising comes a commitment to its imperatives – and we’ve seen exactly how those imperatives have played out through social media in the past decade or so. Will advertising’s impact on future versions of generative AI be similar? That’s a question we should all be asking ourselves, and my gut tells me we may not like the answer.
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