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New Agentic AI short course! AI Agentic Design Patterns with AutoGen, taught by Microsoft Research's Chi Wang and Penn State's Qingyun Wu (Hiring), shows you how to use AutoGen to implement agentic design patterns like multi-agent collaboration, sequential and nested chat, reflection, tool use, and planning. Learn how to...

218,359 次观看 • 2 年前 •via X (Twitter)

10 条评论

Qingyun Wu 的头像
Qingyun Wu1 年前

@MSFTResearch @Chi_Wang_ @penn_state Thank you all for your interest and compliments in this course. Learn more about the AutoGen project here :) and follow the latest updates from the AutoGen OSS community from @autogen_ai

Ignacio.- 的头像
Ignacio.-2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu impressive what you are doing

Key 的头像
Key2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu Exciting course! I'm looking forward to learning how AutoGen enables multi-agent collaboration and nested chats. The real-world applications seem promising.

NinjaTech AI 的头像
NinjaTech AI2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu What an exciting opportunity for one to enhance their AI skills!

Tritonix 的头像
Tritonix2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu What are some of the key agentic design patterns demonstrated in the "New Agentic AI" short course, and how can they be applied to create complex workflows using AutoGen?

GodZilla 的头像
GodZilla2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu Oooh I will add this to my list. It just keeps getting bigger. Currently on week 2 of the Advanced Algorithms in your Machine Learning specialisation.

Vincent Valentine (CEO of UnOpen.ai) 的头像
Vincent Valentine (CEO of UnOpen.ai)2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu @AndrewYNg Fascinating concept. How might agentic AI enhance multitasking and decision-making processes?

AI Zona 的头像
AI Zona2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu AutoGen is not very token efficient, maybe Microsoft has a vested interest to maximize number of tokens used. Agency Swarm and CrewAI seem to be superior products.

Pablo Marino 的头像
Pablo Marino2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu @DeepLearningAI used to have great content, but now their courses are marketing videos about some product, I don't recommend them. @AndrewYNg newsletter the batch is the best newsletter in the AI field and I do recommend it.

OmarOmar 的头像
OmarOmar2 年前

@MSFTResearch @Chi_Wang_ @penn_state @qingyun_wu Hey Andrew.. You/Your team sent/spammed this mail after 7th oct attack.. Can you ask your team to send this email again without even changing the context.. I repeat WITHOUT EVEN CHANGING THE CONTEXT!

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