
(Shutterstock AI Image)
At first glance, the recent creation of Meta Superintelligence Labs, or MSL, might seem like yet another tech giant staking a claim in the AGI race. But the moves that have followed suggest it represents something deeper: a shift in how the company wants to be seen in the rapidly evolving world of artificial intelligence.
It also reflects a change in focus. Rather than building AI tools to support short-term product features, Meta is now organizing its efforts around long-horizon goals, scientific leadership, and foundational AI development.
That shift in focus has come with an equally deliberate change in structure. Rather than keeping its research scattered across different divisions, Meta has brought its core AI efforts under one roof, combining the FAIR (Fundamental Artificial Intelligence Research) research group, the LLaMA model team, and key infrastructure units into a single lab.
It appears that the goal is not just internal coordination, but to give the lab the mandate and resources to pursue the next generation of AI systems with fewer constraints. Interestingly, the formation and restructuring of MSL also suggest that Meta does not view superintelligence as a distant vision. Instead, it sees it as a near-term opportunity and wants to be organized to move quickly.

(CKA/Shutterstock)
“As the pace of AI progress accelerates, developing superintelligence is coming into sight,” Zuckerberg wrote in an internal memo, which Bloomberg first reported on. “I believe this will be the beginning of a new era for humanity, and I am fully committed to doing what it takes for Meta to lead the way.”
Meta has made 11 new AI-focused hires, and more hires could be announced in the coming weeks. The company has brought in Alexandr Wang to lead the charge. The former Scale AI CEO, who joined the company not long after it poured more than $14 billion into his data-labeling startup. Now, he’s not just advising from the outside. He’s inside the building, serving as Meta’s first Chief AI Officer and shaping the future of MSL from the ground up.
Joining him is Nat Friedman, the former GitHub CEO and a major name in the AI investment world. Together, they’re set to co-lead MSL’s research and product direction. One is rooted in infrastructure and systems, while the other has a track record for scaling platforms used by millions. It’s clear that Meta isn’t just building models; it’s building the team that knows how to turn them into long-term influence.
Meta’s new AI effort includes a number of hires with strong scientific backgrounds. Jack Rae, formerly at DeepMind, worked on early language models like Gopher and Chinchilla. Huiwen Chang contributed to image generation systems at Google Research, including MaskGIT and Muse. Pei Sun brought experience from Waymo and DeepMind, working on perception models and reasoning tools.
Joëlle Pineau, who continues to lead Meta’s FAIR group, has played a key role in shaping the company’s commitment to open science. These kinds of backgrounds suggest that Meta sees science as a core part of how it will compete in the next phase of AI development. However, balancing the ideals of open science with the realities of commercial AGI development will be a test for MSL’s leadership and for Meta itself.

(Source: ArtemisDiana/Shutterstock)
The launch of MSL comes at a time when the AGI race is accelerating. Meta is positioning itself more directly alongside competitors. The recent progress by OpenAI, Anthropic, and others has raised the bar. Rather than wait for another wave of breakthroughs to pass it by, Meta is moving to consolidate talent, compute, and research direction while the field is still in flux.
Zuckerberg made the case that Meta is uniquely positioned to lead in this space, not just because of its ambitions, but because of its resources. “Meta is uniquely positioned to deliver superintelligence to the world,” he wrote in the memo. “We have a strong business that supports building out significantly more compute than smaller labs… and our company structure allows us to move with vastly greater conviction and boldness.”
AI has become Zuckerberg’s top priority this year, fueling heavy investment in compute infrastructure, a wave of high-profile hires, and strategic bets. Along with the Scale AI investment, Meta has reportedly held talks to acquire startups like Runway and voice tech firm PlayAI. The company is also set to spend as much as $65 billion this year on data center infrastructure, with plans reportedly including a large-scale facility equipped with over 1.3 million Nvidia GPUs to support its AI efforts.