Meta Platforms’ recently set up AI lab has delivered its first major AI models models internally, signifying an early milestone in the corporation’s aggressive push to restore momentum in the fast-moving AI race.
Addressing a press briefing on the sidelines of the World Economic Forum in Davos, Meta CTO Andrew Bosworth confirmed that the Meta Superintelligence Labs team, mounted last year, had manufactured promising early results. The models were introduced internally previously this month, around 6-months into the lab’s work.
“They’re mainly 6-months into the work, not quite even,” Bosworth stated. He added that the models were “very good,” even though he declined to specify which systems had been finished.
Early Progress Amid Leadership Shake-Up
Meta’s AI efforts have been precisely inspected following CEO Mark Zuckerberg’s decision to overhaul the company’s AI leadership and integrates superior research below the latest Superintelligence Labs banner.
The restructuring was paired with an competitive talent acquisition strategy, with reports of Meta presenting some of the industry’s maximum compensation packages to attract top AI researchers. Media reports in December proposed that Meta was generating a text-focused AI model codenamed Avocado, focused for a first-quarter release, alongside an image- and video-orientated model known internally as Mango. Bosworth did no confirm whether those specific models have been among the ones supplied internally.
The timing is vital for Meta. The corporation confronted criticism over the performance of its Llama 4 model, specifically as rivals inclusive of Alphabet’s Google achieved momentum with increasingly capable multimodal and agentic systems.
From Training to Usable Products
Bosworth highlighted that model training is only one a part of the evolution process. “There’s a extraordinary amount of work to do post-training,” he stated, marking that internal validation, tooling, and incorporation are important before models may be deployed to clients or product teams.
This target shows a broader shift across the industry, where aggressive benefit increasingly relies upon on turning raw model capability into dependable, scalable products. For Meta, that challenge spans both software and hardware, consisting of AI-powered customer devices.
Consumer AI Takes Shape in 2026 and Beyond
Bosworth defined 2025 as a “highly chaotic year” for Meta, marked by fast infrastructure build-out and large-scale investments in compute and power. He assisted that the payoff from those investments is starting to emerge.
As per Bosworth, 2026 and 2027 will be crucial years for consumer AI adoption. Latest advances, he stated, have already formed models capable to dealing with everyday queries—“the kinds of things that you ask every day with your family, your kids”—even as more complicated reasoning stays an active area of research.












