Close Menu
    Facebook LinkedIn YouTube Instagram X (Twitter)
    Blue Tech Wave Media
    Facebook LinkedIn YouTube Instagram X (Twitter)
    • Home
    • Leadership Alliance
    • Exclusives
    • Internet Governance
      • Regulation
      • Governance Bodies
      • Emerging Tech
    • IT Infrastructure
      • Networking
      • Cloud
      • Data Centres
    • Company Stories
      • Profiles
      • Startups
      • Tech Titans
      • Partner Content
    • Others
      • Fintech
        • Blockchain
        • Payments
        • Regulation
      • Tech Trends
        • AI
        • AR/VR
        • IoT
      • Video / Podcast
    Blue Tech Wave Media
    Home » Google Uses AI Chatbot Tech to Make Smarter Robots
    ai-chatbot
    AI

    Google Uses AI Chatbot Tech to Make Smarter Robots

    By Ivy WuAugust 1, 2023Updated:October 4, 2023No Comments3 Mins Read
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Google’s AI chatbot expertise takes robotics to new heights. Explore their cross-training approach, shaping a future of smarter, user-friendly robots and human-robot interactions.

    Google is pushing the boundaries of artificial intelligence (AI) by employing its expertise in training AI chatbots to now enhance robots. The company’s revolutionary approach involves a combination of machine learning techniques and neural network architectures. These methods have already proven highly successful in developing sophisticated AI chatbots capable of engaging in human-like conversations.

    Training in Various Scenarios and Languages

    With the release of their AI learning model, Robotic Transformer (RT-2), Google is now taking this expertise and applying it to their robotic systems. RT-2 is an advanced version of their vision-language-action (VLA) model. It equips robots with the ability to recognise visual and language patterns, enabling them to better interpret instructions and infer the most suitable actions for various requests.

    To train RT-2, researchers exposed the robotic arm to diverse scenarios, such as identifying improvised tools (e.g., using a rock as a hammer) and selecting appropriate beverages for specific situations (e.g., offering Red Bull to an exhausted person).

    The model also demonstrated the capability to comprehend directions in languages other than English.

    Previously, robot training was a time-consuming process involving individual programming of instructions. However, with the power of VLA models like RT-2, robots can now access a vast range of information to make informed decisions autonomously.

    Refinement Needed

    This isn’t Google’s first venture into smart robotics. Last year, they integrated their language model LLM PaLM with physical robotics to create the PaLM-SayCan system. While the company’s new robot shows great promise. However, it is not without its imperfections. For example, in a live demo, the bot misidentified soda flavours and fruit colours.

    Google’s approach to training AI chatbots and robots shares several similarities, such as using machine learning algorithms and vast datasets. Both require exposure to diverse conversations and scenarios to improve their capabilities. However, training robots introduces unique challenges. These include the acquisition of physical skills like object manipulation and navigation, in addition to language understanding.

    Exciting Implications Up Ahead

    The implications of Google’s cross-training approach for the future of robotics are immense. With the application of their AI chatbot training techniques, robots can become more intuitive and user-friendly. It creates the potential to integrate seamlessly into various industries, from healthcare and manufacturing to logistics and space exploration.

    By refining robotic systems with natural language processing capabilities, human-robot interactions could enter a new era of interactivity and collaboration.

    As Google continues to bridge the gap between AI chatbots and robots, we can anticipate even smarter robots soon, capable of performing complex tasks with minimal human intervention. While challenges lie ahead, the prospects of an AI-driven world with efficient and adaptable robotic assistants are undeniably exciting.

    AI
    Ivy Wu

    Ivy Wu was a media reporter at btw media. She graduated from Korea University with a major in media and communication, and has rich experience in reporting and news writing.

    Related Posts

    Unique Network President Charu Sethi on decentralised Web3 growth

    July 7, 2025

    Interview with Sarath Babu Rayaprolu from Voxtera on dynamic and secure VoIP

    July 7, 2025

    Authors sue Microsoft over AI training using their books

    July 3, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    CATEGORIES
    Archives
    • July 2025
    • June 2025
    • May 2025
    • April 2025
    • March 2025
    • February 2025
    • January 2025
    • December 2024
    • November 2024
    • October 2024
    • September 2024
    • August 2024
    • July 2024
    • June 2024
    • May 2024
    • April 2024
    • March 2024
    • February 2024
    • January 2024
    • December 2023
    • November 2023
    • October 2023
    • September 2023
    • August 2023
    • July 2023

    Blue Tech Wave (BTW.Media) is a future-facing tech media brand delivering sharp insights, trendspotting, and bold storytelling across digital, social, and video. We translate complexity into clarity—so you’re always ahead of the curve.

    BTW
    • About BTW
    • Contact Us
    • Join Our Team
    TERMS
    • Privacy Policy
    • Cookie Policy
    • Terms of Use
    Facebook X (Twitter) Instagram YouTube LinkedIn

    Type above and press Enter to search. Press Esc to cancel.