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Introducing Kiro, an all-new agentic IDE that has a chance to transform how developers build software. Let me highlight three key innovations that make Kiro special: 1 - Kiro introduces spec-driven development, helping developers express their intent clearly through natural language specifications and architecture diagrams for complex features. This...

666,354 Aufrufe • vor 1 Jahr •via X (Twitter)

11 Kommentare

Profilbild von TestingCatalog News 🗞
TestingCatalog News 🗞vor 1 Jahr

Great to see Amazon being back in the game 💪

Profilbild von Mobile Scanner
Mobile Scannervor 1 Jahr

Scan any documents, convert images into text, PDF files, etc. 👍

Profilbild von Sujit Singh
Sujit Singhvor 1 Jahr

Great to see AWS's foray into the Vibe coding arena.

Profilbild von Tyrel
Tyrelvor 1 Jahr

curious if Kiro can also set up entire AWS architectures? Would love to see that

Profilbild von Mag7 Watch
Mag7 Watchvor 1 Jahr

This looks like a big step forward for AI-powered development! Spec-driven workflows + agent hooks + adaptive UI sound like a great combo to move from quick prototypes to production-ready code faster.

Profilbild von chris / strutheo
chris / strutheovor 1 Jahr

@ARealKiro you'll always be the real kiro to me

Profilbild von Shariq Riaz
Shariq Riazvor 1 Jahr

interesting approach with spec-driven development 👀

Profilbild von Growth Picker
Growth Pickervor 1 Jahr

Great release!

Profilbild von Jeff Hammon
Jeff Hammonvor 1 Jahr

You realize you run THE ENTIRE company now right? Not just AWS?

Profilbild von Dorche
Dorchevor 1 Jahr

Kino

Profilbild von Sudheer Bandaru
Sudheer Bandaruvor 1 Jahr

Trying it now...

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