When news broke Tuesday morning that Meta bought Moltbook, the social network for AI agents, it may have left some people scratching their heads. What on earth would Meta — an ad-supported company — want with a social network where the users are bots? Bots, after all, are not the target audience of brand marketers and advertisers.
Meta isn’t saying much. Its only official comment was a brief statement that the Moltbook team was joining Meta Superintelligence Labs, which would open up “new ways for AI agents to work with people and businesses.”
Reading between the lines, this was an acqui-hire. A network built for bots isn’t exactly a natural home for brand advertising — even if Moltbook was never entirely non-human. What Meta really wanted was the talent behind it — people who are having fun brainstorming and experimenting with AI agent ecosystems. And that, counterintuitively, could be a boon for its advertising business.
As Meta CEO Mark Zuckerberg said last year, he believes in a future where “every business will soon have a business AI, just like they have an email address, social media account, and website.” On an agentic web, one where AI systems act independently on users’ behalf, AI agents could interact with each other, doing things like buying ads, making bookings, and responding to customers.
AI is also being used to generate ad creative and tailor its output based on who’s viewing it. AI systems could also manage product pricing or generate personalized offers.
On the consumer side, agents could be used to find the best prices and deals, manage bookings, and shop for products. In some limited cases, agents can already check out and pay on consumers’ behalf. (Agentic commerce is still in its early days, and these systems don’t always work as well as advertised. But the market has been moving fast, and improvements seem likely soon enough.)
As Facebook once built the “friend graph” — a network defined by social connections between people, where every individual is a node — an agentic web could benefit from an “agent graph,” a system that maps out how various agents are connected and what actions they can take on each other’s behalf.
For an agentic web where businesses’ agents and consumers’ agents can work together, though, the agents first need to be able to find each other, connect, and coordinate their activities. As Facebook once built the “friend graph” — a network defined by social connections between people, where every individual is a node — an agentic web could benefit from an “agent graph,” a system that maps out how various agents are connected and what actions they can take on each other’s behalf. This could span areas like travel, online shopping, media and research, productivity tools, and more.
This, too, could be where advertising slots in. Today, humans view and click on ads when they see something of interest, but on an agentic web where agents are shopping on users’ behalf, ads might look quite different. Instead of influencing a human to buy a product, a business’s agent may need to negotiate directly with a consumer’s agent to make the sale.
Maybe the consumer wants to buy that shirt or that lipstick, but only in a certain color and at a certain price. Maybe the systems become so complex that these considerations go beyond product and price — perhaps the consumer prefers to support small businesses, or shops only with eco-friendly companies. Maybe the consumer only buys items when they’re on sale or purchases generic versions if the ingredients are the same. And so on.
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