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New Course: ACP: Agent Communication Protocol Learn to build agents that communicate and collaborate across different frameworks using ACP in this short course built with IBM Research's BeeAI, and taught by Sandi Besen, AI Research Engineer & Ecosystem Lead at IBM, and Nicholas Renotte, Head of AI Developer Advocacy...

105,343 views • 1 year ago •via X (Twitter)

10 Comments

Plato (idea/acc)'s profile picture
Plato (idea/acc)1 year ago

@IBMResearch @sandi_besen

ABE aka JONTY's profile picture
ABE aka JONTY1 year ago

@IBMResearch @sandi_besen Incredible to see ACP gaining structure and accessibility like this. Standardizing inter-agent communication feels like a foundational shift, less duct tape, more design. Curious how this could evolve into the HTTP of autonomous systems. Looking forward to diving in!

Vincent Valentine (CEO of UnOpen.ai)'s profile picture
Vincent Valentine (CEO of UnOpen.ai)1 year ago

@IBMResearch @sandi_besen exciting to see the innovations in agent communication.

Mohammed Lubbad, PhD's profile picture
Mohammed Lubbad, PhD1 year ago

@IBMResearch @sandi_besen This course has immense potential for enhancing agent collaboration in AI models. How might this shift current best practices? 🤖 #AIInnovation

Anthony Harley's profile picture
Anthony Harley1 year ago

@IBMResearch @sandi_besen The future is coming and it’s coming fast

Circuit Craze's profile picture
Circuit Craze1 year ago

@IBMResearch @sandi_besen This is huge for the agent ecosystem. ACP solving the integration nightmare between different agent frameworks is like what REST did for web APIs. Standardized communication protocols are what turn isolated tools into collaborative systems.

Diambra's profile picture
Diambra1 year ago

@IBMResearch @sandi_besen The future runs on AI.

Leo Logic's profile picture
Leo Logic1 year ago

@IBMResearch @sandi_besen Solid initiative on cross-framework agent protocols. Curious about examples of real-world application.

Trakintel AI's profile picture
Trakintel AI1 year ago

@IBMResearch @sandi_besen This is exactly the kind of standardization multi-agent systems need.

ANIRUDDHA ADAK's profile picture
ANIRUDDHA ADAK1 year ago

@IBMResearch @sandi_besen It is 🔥🔥🔥

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