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Muse Spark 1.1
Meta
Unleash seamless multitasking and advanced reasoning capabilities today!
Muse Spark 1.1 is an advanced multimodal reasoning model from Meta Superintelligence Labs built for agentic work, coding, computer use, tool calling, and multimodal understanding. It is a major upgrade from Muse Spark and is designed to push the performance-efficiency frontier for AI systems that need to plan, reason, act, and coordinate across complex workflows. The model can operate across external apps, native tools, MCP servers, custom skills, browsers, scripts, images, videos, PDFs, audio, and developer environments. Muse Spark 1.1 is especially strong in agentic orchestration, where it can gather context, make plans, delegate work to parallel subagents, and manage execution across multiple steps. As a subagent, it can follow a defined role, use available tools appropriately, and escalate back to a main agent when needed. Its 1 million token context window helps it remember past actions, retrieve information from earlier in a project, and compact long sessions while keeping important details available for later work. For computer-use tasks, Muse Spark 1.1 can navigate unfamiliar interfaces, adapt to changing requirements, and choose whether to click through an interface or write scripts when automation is faster. In software engineering, the model can diagnose complex bugs, implement new features, perform large code migrations, build web applications, inspect screenshots, trace issues to code, and validate fixes. Its multimodal capabilities allow it to inspect visual and audio information, generate detailed image and video captions, create visual-to-code artifacts, and combine perception with action in practical workflows. Developers can access Muse Spark 1.1 through Meta’s new Model API public preview, and everyday users can try it in Thinking mode in the Meta AI app.
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Muse Spark
Meta
Unlock advanced reasoning with multimodal interactions and insights.
Muse Spark is an advanced multimodal AI model developed by Meta Superintelligence Labs, representing a major step toward personal superintelligence. It is built from the ground up to integrate text, images, and tool-based interactions, enabling more dynamic and intelligent responses. The model features visual chain-of-thought reasoning, allowing it to process and explain visual information in a structured way. It also supports multi-agent orchestration, where multiple AI agents collaborate to solve complex problems efficiently. Muse Spark introduces Contemplating mode, which enhances reasoning by enabling parallel agent workflows for higher accuracy and performance. The model demonstrates strong capabilities in areas such as STEM reasoning, health analysis, and real-world problem-solving. It can generate interactive experiences, such as visual annotations, educational tools, and personalized insights. Muse Spark is trained using a combination of advanced pretraining, reinforcement learning, and optimized test-time reasoning strategies. Its architecture focuses on scaling efficiency, achieving strong performance with reduced computational requirements. Safety is a key priority, with built-in safeguards, alignment mechanisms, and robust evaluation processes. The model is available through Meta AI platforms, with API access in limited preview. Overall, Muse Spark represents a significant evolution in AI, moving closer to highly personalized, intelligent assistants that understand and interact with the real world.
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Muse Video
Meta
Create stunning videos with seamless audio and realism!
Muse Video is Meta’s previewed AI video generation model from Meta Superintelligence Labs, created to bring high-quality video generation into Meta AI and creator workflows. It was introduced alongside Muse Image as one of Meta’s first media generation models from the new lab, with both models sharing the same pretraining foundation. Muse Video is designed to create short videos with strong prompt adherence, visual fidelity, temporal consistency, and native audio support. The model can generate scenes that include realistic motion, camera movement, environmental sound, voice, music, foley, and cinematic structure. Example use cases include animal clips, product ads, first-person nature footage, vertical UGC-style commercials, branded video concepts, and short continuous scenes with a clear beginning, action, and payoff. Muse Video is built for prompts that require both visual and audio direction, such as synchronized speech, diegetic sound, music beds, product sound effects, and natural scene ambience. Meta says the model performs competitively on human-preference video generation benchmarks and is continuing to improve in areas where video models often struggle. Those areas include better audio-video synchronization, more physically accurate fast motion, and stronger consistency across complex moving subjects. The model is expected to come soon to creators and Meta AI, where it will expand Meta’s generative tools beyond still images into dynamic video content. Meta also plans to extend its Content Seal watermarking system to video, helping people identify AI-generated media. By combining video generation, native audio, realistic scene construction, and future integration across Meta products, Muse Video is positioned as a major creative tool for social content, advertising, storytelling, and brand media.