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We’re excited to release an interactive guide highlighting the definitive set of principles for building AI agents 🔥 Based on the popular 12-Factor agents repo by dex. We packaged the principles into an interactive website and Colab notebook with working code examples, so that you can incorporate these principles...

33,740 просмотров • 1 год назад •via X (Twitter)

Комментарии: 5

Фото профиля jeffdo
jeffdo1 год назад

@dexhorthy 12 factors, but for agents? Okay I HAVE to read this.

Фото профиля Greg Caplan 🚀
Greg Caplan 🚀2 лет назад

Stop wasting time following up with leads. Let our AI agents do it for you.

Фото профиля Agent Blueprint
Agent Blueprint1 год назад

@dexhorthy Most teams overlook agent onboarding friction—modular, layered planning is critical. LlamaIndex’s real-world AI deployment stresses memory scaffolding, tool chaining, testable structure. These are where most fail.

Фото профиля Juicy Lucy
Juicy Lucy1 год назад

@dexhorthy Wow, interactive guide for AI agents sounds cool, how does it simplify building them for you?

Фото профиля Rick Blalock
Rick Blalock1 год назад

@dexhorthy nice!

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