Agentic AI for Drone & Robotic Swarming
Practical AI podcast explores how agentic AI enables drone and robotic swarms to collaborate without centralised control, covering edge inference, emergent behaviour, and multi-agent autonomy in remote environments.
In this episode of Practical AI, Chris and Daniel explore the fascinating world of agentic AI for drone and robotic swarms, which is Chris's passion and professional focus. They unpack how autonomous vehicles (UxV), drones (UaV), and other autonomous multi-agent systems can collaborate without centralized control while exhibiting complex emergent behavior with agency and self-governance to accomplish a mission or shared goals. Chris and Dan delve into the role of AI real-time inference and edge computing to enable complex agentic multi-model autonomy, especially in challenging environments like disaster zones and remote industrial operations.
Featuring: Chris Benson – Website, LinkedIn, Bluesky, GitHub, X Daniel Whitenack – Website, GitHub, X Links: ROS - Robotic Operating System Gazebo Hugging Face Agents Course Swarm Robotics | Wikipedia Chris's definition of Swarming: Swarming occurs when numerous independent fully-autonomous multi-agentic platforms exhibit highly-coordinated locomotive and emergent behaviors with agency and self-governance in any domain (air, ground, sea, undersea, space), functioning as a single independent logical distributed decentralized decisioning…
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