


Google goes all-in on artificial intelligence, countering GPT-4 with PaLM 2
In the afternoon of May 12th, Beijing time, Google made a series of announcements at its annual I/O developer conference, treating artificial intelligence as a key element to promote This technology is used more deeply in its Android operating system and Bard chatbot.
The company positions the use of generative AI as a means to enable users to personalize certain elements of Android smartphones, including text messages, lock screens and wallpapers.
Dave Burke, vice president of engineering at Google, said that generative AI will suggest reply messages, providing choices in writing styles and techniques to make letters more concise. Google plans to make these features available in beta in the coming months.
Additionally, a range of screen customization options are in the works, including new color schemes, clocks, and app shortcuts, which will be available when Google releases Android 14 "later this year."
Starting in June, Google plans to offer more wallpaper options, including a cinematic feature that "uses on-device machine learning" to convert users' pictures into 3D images when people move 手机 will be activated.
Generative Human AI offers the option to create images from scratch, and the device's overall color scheme automatically adjusts to suit.
Details about the Bard update come a little more than two weeks after Google revealed it was adding software writing capabilities to the assistant.
Sissie Hsiao, vice president and general manager for Google Assistant and Bard, detailed the addition of Japanese and Korean compatibility as the first step toward reaching 40 languages.
She emphasized the need for an ethical approach, noting that further development of "nascent" large-scale language models will adhere to Google's AI Principles, which cover responsible technology development.
Google also plans to bring more visual information to Bard, both in response to queries and in user-generated content, by integrating Google Lens technology into the Assistant.
Hsiao detailed the addition of more export options to simplify using Bard when creating emails and other documents. It plans to expand the range of Google apps and services to include Drive cloud storage and mapping services. It is worth highlighting its product plan PaLM 2, as a counterattack to GPT-4, which is the second version of the basic model released by Google in 2022 and can be extended to mobile devices. Richard Windsor, founder of the research blog Radio Free Mobile, noted that Google’s hardware division seems to have moved past the “sense of panic and confusion.” “Unsurprisingly, the entire show was about generative AI, and Google They are not laggards as the market thinks.” In addition to “improving productivity,” Windsor noted that PaLM2 “is also being rolled into consumer services and now anyone can try it.” Google also launched its first foldable screen smartphone, the Pixel Fold, as well as the latest model in its A series, the Pixel 7a.The above is the detailed content of Google goes all-in on artificial intelligence, countering GPT-4 with PaLM 2. For more information, please follow other related articles on the PHP Chinese website!

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