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The infrastructure for working with video data at scale barely exists. Grass Video Search is our first step in changing that. You can now find anything in a video based on the contents of its frames, not just transcripts or tags. Over the last several months, the Grass Foundation...

469,986 views • 1 year ago •via X (Twitter)

11 Comments

Grass's profile picture
Grass1 year ago

If you're training AI models, building datasets, or working with video at scale, email [email protected] to get early access.

Solar Heavy's profile picture
Solar Heavy1 year ago

what do you think of this music video?

Fran's profile picture
Fran1 year ago

This is so cool 🤩

ReFi Hub's profile picture
ReFi Hub1 year ago

Huge leap for researchers, journalists, and anyone trying to make sense of the world through video.

XRP_Cro 🔥 AI / Gaming / DePIN's profile picture
XRP_Cro 🔥 AI / Gaming / DePIN1 year ago

Join Grass and get ready for Season #2 #Airdrop 🪂 👉 ⚠️The more referrals you have, the more $Grass you receive in the next #Airdrop👇 ✅Backed by TOP investors like Polychain and Tribe. ✅Easy to use: only requires your email address and Wi-Fi connection. #DePIN #PassiveIncome

Crypto Kakarot 🏝️'s profile picture
Crypto Kakarot 🏝️1 year ago

Mega bullish 🔥

ochobits's profile picture
ochobits1 year ago

Es un gran trabajo, no puedo esperar para ver el resultado final

Crypto Diplomat's profile picture
Crypto Diplomat1 year ago

Keep building

Seminto's profile picture
Seminto1 year ago

This is absolutely crazy, wow 🌱

XRP_Cro 🔥 AI / Gaming / DePIN's profile picture
XRP_Cro 🔥 AI / Gaming / DePIN1 year ago

Join Grass for Airdrop Season 2 🪂 👉 More referrals = more $GRASS! ✅ Backed by top VCs ✅ Just email & Wi-Fi needed

CryptoGirl 🌐's profile picture
CryptoGirl 🌐1 year ago

Great 🎉👏

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