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Google's new Open Knowledge Format opens up so many possibilities (and opportunities)! It is a standardized format for storing your knowledge in a way that agents can easily use. Instead of giving agents ALL of your knowledge to stuff into its context window, you give agents a map so...

31,648 Aufrufe • vor 24 Tagen •via X (Twitter)

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