- SIMA 2: A Gemini-Powered AI Agent for 3D Virtual Worlds
Last year, we introduced SIMA (Scalable Instructable Multiworld Agent), a generalist AI that could follow basic instructions across a wide range of virtual environments SIMA was a crucial first step in teaching AI to translate language into meaningful action in rich, 3D worlds
- SIMA Home
Join SIMA to enhance your snow and ice management business with resources, training, and networking opportunities that ensure professionalism and success in the industry
- Sima - Wikipedia
Look up sima in Wiktionary, the free dictionary
- Google’s SIMA 2 agent uses Gemini to reason and act in virtual worlds
“SIMA 2 is a step change and improvement in capabilities over SIMA 1,” Joe Marino, senior research scientist at DeepMind, said in a press briefing “It’s a more general agent It can complete
- SIMA 2: A Generalist Embodied Agent for Virtual Worlds
We introduce SIMA 2, a generalist embodied agent that understands and acts in a wide variety of 3D virtual worlds Built upon a Gemini foundation model, SIMA 2 represents a significant step toward active, goal-directed interaction within an embodied environment Unlike prior work (e g , SIMA 1) limited to simple language commands, SIMA 2 acts as an interactive partner, capable of reasoning
- Home – SiMa. ai: Scaling Physical AI
SiMa ai scaling physical ai across across robotics, automotive, industrial automation, aerospace defense, smart vision, and healthcare
- What is SIMA by Google DeepMind? - Geekflare
Google SIMA (Scalable Instructable Multiworld Agent) is a generative AI agent developed by Google DeepMind Google SIMA is trained on virtual 3D environments to accomplish basic gaming tasks by following user-given natural language instructions
- A generalist AI agent for 3D virtual environments
SIMA is an AI agent that can perceive and understand a variety of environments, then take actions to achieve an instructed goal It comprises a model designed for precise image-language mapping and a video model that predicts what will happen next on-screen
|