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Powered by elevateai.com In the News AI glossary: 60+ terms to know Embodied agents, also referred to as embodied AI, are AI agents with a physical body that perform specific tasks in the physical environment. techtarget.com Sponsor AI-driven customer insights, accessible for all. Start for free with full API access.
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