Google’s New Gemini AI Model Means Your Future Robot Butler Will Still Work Even without Wi‑Fi
- Google DeepMind released the Gemini Robotics On-Device AI model on Tuesday, June 24, to run locally on robots without internet.
- This release builds on the March Gemini Robotics model and addresses challenges of operating in latency-sensitive or no-connectivity environments.
- The model controls robot movements via natural language, performs dexterous tasks like folding clothes, and adapts with as few as 50 demonstrations.
- Google expressed unexpected enthusiasm about the effectiveness of its on-device model, highlighting that its performance nearly matches that of cloud-based systems and surpasses competing alternatives.
- This advancement suggests wider use in secure or remote settings and marks progress toward reliable offline capable robots beyond cloud tethering.
40 Articles
40 Articles
Google unveils Gemini Robotics on-device AI for robots: No internet needed!
Google’s DeepMind division has introduced a groundbreaking addition to its AI family — Gemini Robotics On-Device, a large language model that runs locally on robotic systems. Unveiled on June 24, the AI model is built for latency-sensitive environments and offline use, making it ideal for robots working in low or no-connectivity conditions. Built for Dexterity and speed without the Cloud Unlike conventional AI models that depend heavily on cloud…
Google’s new Gemini Robotics On-Device AI model runs directly on robots: Watch it in action
Gemini Robotics On-Device AI model, Google Gemini Robotics features: Google claims that the new Gemini Robotics On-Device model can follow general purpose instructions and even handle previously unseen objects and scenes.
Google's new Gemini AI can power robots and make them work without internet
Google DeepMind has launched Gemini Robotics On-Device, an AI model that lets robots perform complex tasks without internet access – boosting speed, privacy, and performance in offline or restricted environments.
Coverage Details
Bias Distribution
- 43% of the sources lean Left
To view factuality data please Upgrade to Premium