This could change the way you use Google's most popular apps.
Still, the results from what we've seen in this demonstration look far more practical and promising than the AI tools Google has announced so far. They've been integrated into Google Workspace, so users will soon be able to use generative AI in several writing features. For now, only trusted testers will have access to these new tools but after that, they'll be rolled out to all Google users.
From there of course the human user would edit and refine the document, but having a draft instantly created saves plenty of time and effort. You can also use the tool to add certain tones to your document depending on the situation, like whimsical or formal. As it stands, there's been a lot of misuse of this tech to the point of even plagiarism, and it remains to be seen if Google is using a personal database or pulling from the internet to create this content.This is another AI feature that could potentially save a lot of time and effort. This tool captures notes from conference calls and other meetings with audio, then takes"notes" of that meeting, summarizing the most important points in an easy-to-parse format.
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