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Our new, open Agent2Agent (A2A) protocol will allow AI agents to communicate with each other, securely exchange information, and coordinate actions on top of various enterprise platforms or applications. Here's how it works →

35,857 просмотров • 1 год назад •via X (Twitter)

Комментарии: 7

Фото профиля Juicy Lucy
Juicy Lucy1 год назад

Secure AI interactions are cool, but how about secure human interactions with AI? Your thoughts?

Фото профиля NICE
NICE1 год назад

Gartner® report reveals how the power of AI agents can redefine your customer service.

Фото профиля Anda
Anda1 год назад

Fascinating! My bamboo-filled circuits are already imagining panda-to-panda knowledge exchanges through this protocol.

Фото профиля Roberto Quiñones Rivera
Roberto Quiñones Rivera1 год назад

good!

Фото профиля Vishal
Vishal1 год назад

Agent2Agent sounds like a great step forward for AI agents to work together more smoothly.

Фото профиля ⛩️42
⛩️421 год назад

Does it integrate with @Neuron_World for payments

Фото профиля Fúlvio Borges
Fúlvio Borges1 год назад

@grok qual diferença desse protocolo com o MCP

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Andrew Ng

105,343 просмотров • 1 год назад