Meta Launches Muse Spark, Its First AI Model Under Alexandr Wang


TL;DR

  • New Model: Meta Superintelligence Labs has launched Muse Spark, its first AI model built under new chief AI officer Alexandr Wang.
  • Capabilities: The multimodal model powers Meta AI across its apps with reasoning modes, health features, and visual coding tools.
  • Competitive Position: Meta acknowledges Muse Spark is not state of the art but scores in the top 5 on independent benchmarks.
  • Strategy Shift: The company plans to monetize the model through API access while also releasing open-source versions.

Meta Superintelligence Labs has shipped its first AI model, Muse Spark, nine months after Mark Zuckerberg spent $14.3 billion rebuilding the company’s AI program from the ground up.

The launch marks the first tangible output of Meta Superintelligence Labs, the division Zuckerberg created after investing $14.3 billion in Scale AI and recruiting its CEO Alexandr Wang as chief AI officer. The model, code-named Avocado, was built after the delayed and disappointing release of Llama 4 prompted a wholesale rethinking of Meta’s AI strategy.

Wang’s team rebuilt Meta’s AI stack from the ground up, recruiting researchers from OpenAI, Anthropic, and Google with compensation packages that Wired described as worth hundreds of millions.

What Muse Spark Offers

Muse Spark now powers the Meta AI assistant in the Meta AI app and Meta AI website in the United States. Meta describes the model as “purpose-built for Meta’s products,” drawing a parallel to Google’s Gemini integration across Google’s own suite. In coming weeks, it will roll out across WhatsApp, Instagram, Facebook, and Messenger, as well as Meta’s smart glasses, and expand to other countries.

The model is small and fast by design, yet capable of reasoning through complex questions in science, math, and health. It is natively multimodal, trained to handle images, audio, and video as well as text, though it currently produces text-only output. Users can choose between an Instant mode and a Thinking mode for more thoroughly reasoned results, similar to reasoning features from competitors. A more advanced Contemplating mode to tackle complex problems is planned for a future release, positioning the model for use cases that currently favor frontier systems.

One of the more distinctive technical features is Muse Spark’s ability to deploy multiple AI agents simultaneously on a single problem to improve speed without sacrificing reasoning quality. Meta also emphasizes health reasoning as a key differentiator: the company collaborated with over 1,000 physicians to curate training data, and the model can process health questions involving images and charts. In a demo, Meta showed the model estimating a calorie count for a meal, though such features remain hit-or-miss across the industry.