Skyflo.ai is the world’s first AI agent for cloud native. Fully open-source, licensed under Apache 2.0, Skyflo.ai is your companion for all things Kubernetes. Join us in our mission and help us democratize cloud native for the world.
agent by Firecrawl — Gather structured data wherever it lives on the web
Gather structured data wherever it lives on the web
Promoted
Maker
📌
Hey Product Hunt! 🚀
I’m Karan, creator of Skyflo.ai. Today we’re launching the world’s first AI agent for cloud-native.
The Problem Ever woken up at 3 AM to a flood of pod logs and Kubernetes events? Managing cloud-native infrastructure at scale is like playing whack-a-mole in the dark, every alert threatens downtime, every error spawns endless debugging, and runbooks can’t keep pace with your evolving stack.
Enter Skyflo.ai Fully open-source (Apache 2.0), Skyflo.ai is your AI-powered DevOps sidekick:
✅ Debug: Ask in plain English (“Why are my pods pending?”) and Skyflo runs the right commands to gather critical data. ✅ Fix: Skyflo proposes configuration changes, requests your approval, then applies them safely. ✅ Learn: Get expert insights to navigate complex Kubernetes environments with confidence.
Why You’ll Love It 🚀 Instant Expertise: Turn complex Kubernetes tasks into simple conversations. 🔮 Predictive Problem-Solving: Identify and remedy issues before they escalate. ⚡️ Lightning-Fast Resolution: Reduce hours of debugging to minutes. 🛡️ Safe & Secure: Every action comes with clear explanations and requires your confirmation.
@rick_r2 Thank you!! We strongly believe in keeping the product open-source and invite contributions!
Report
Hey Karan Jagtiani, congrats on launching Skyflo.ai! 🎉 Tackling the complexity of managing cloud-native infrastructure, especially Kubernetes event floods at 3 AM (ouch!), is a massive challenge. An AI-powered DevOps sidekick is a brilliant solution.
Love that it's open-source (Apache 2.0) – democratizing cloud-native management is a great mission. The Debug/Fix/Learn workflow seems incredibly intuitive, translating plain English into concrete actions while keeping the user in control. As we build AI tools (@UNI AI), we appreciate the focus on safety and clear explanations.
Question: How does Skyflo's predictive problem-solving work? Does it analyze historical event patterns or use other signals to anticipate issues before they escalate?
Looks like a powerful tool for making DevOps less painful. Wishing you a very successful launch! ☁️🤖🛠️
Have a question about Skyflo.ai? Ask it here and get a real answer.
Do you use Skyflo.ai?
Maker Comment
Maker
📌
Hey Product Hunt! 🚀
I’m Karan, creator of Skyflo.ai. Today we’re launching the world’s first AI agent for cloud-native.
The Problem Ever woken up at 3 AM to a flood of pod logs and Kubernetes events? Managing cloud-native infrastructure at scale is like playing whack-a-mole in the dark, every alert threatens downtime, every error spawns endless debugging, and runbooks can’t keep pace with your evolving stack.
Enter Skyflo.ai Fully open-source (Apache 2.0), Skyflo.ai is your AI-powered DevOps sidekick:
✅ Debug: Ask in plain English (“Why are my pods pending?”) and Skyflo runs the right commands to gather critical data. ✅ Fix: Skyflo proposes configuration changes, requests your approval, then applies them safely. ✅ Learn: Get expert insights to navigate complex Kubernetes environments with confidence.
Why You’ll Love It 🚀 Instant Expertise: Turn complex Kubernetes tasks into simple conversations. 🔮 Predictive Problem-Solving: Identify and remedy issues before they escalate. ⚡️ Lightning-Fast Resolution: Reduce hours of debugging to minutes. 🛡️ Safe & Secure: Every action comes with clear explanations and requires your confirmation.
Hey Product Hunt! 🚀
I’m Karan, creator of Skyflo.ai. Today we’re launching the world’s first AI agent for cloud-native.
The Problem
Ever woken up at 3 AM to a flood of pod logs and Kubernetes events? Managing cloud-native infrastructure at scale is like playing whack-a-mole in the dark, every alert threatens downtime, every error spawns endless debugging, and runbooks can’t keep pace with your evolving stack.
Enter Skyflo.ai
Fully open-source (Apache 2.0), Skyflo.ai is your AI-powered DevOps sidekick:
✅ Debug: Ask in plain English (“Why are my pods pending?”) and Skyflo runs the right commands to gather critical data.
✅ Fix: Skyflo proposes configuration changes, requests your approval, then applies them safely.
✅ Learn: Get expert insights to navigate complex Kubernetes environments with confidence.
Why You’ll Love It
🚀 Instant Expertise: Turn complex Kubernetes tasks into simple conversations.
🔮 Predictive Problem-Solving: Identify and remedy issues before they escalate.
⚡️ Lightning-Fast Resolution: Reduce hours of debugging to minutes.
🛡️ Safe & Secure: Every action comes with clear explanations and requires your confirmation.
What’s Next
Visit https://skyflo.ai, star our GitHub (https://github.com/skyflo-ai/skyflo), and share your feature requests. Your feedback will shape Skyflo’s roadmap.
Let’s make DevOps less painful, together! 🎉
@karanjagtiani This looks promising, I'm curious to give this a shot. Do you have any quick-start guides available?
@karanjagtiani @derekrevilo Please take a look at our GitHub, specifically the installation guide!
Excellent and innovative
@rick_r2 Thank you!! We strongly believe in keeping the product open-source and invite contributions!
Hey Karan Jagtiani, congrats on launching Skyflo.ai! 🎉 Tackling the complexity of managing cloud-native infrastructure, especially Kubernetes event floods at 3 AM (ouch!), is a massive challenge. An AI-powered DevOps sidekick is a brilliant solution.
Love that it's open-source (Apache 2.0) – democratizing cloud-native management is a great mission. The Debug/Fix/Learn workflow seems incredibly intuitive, translating plain English into concrete actions while keeping the user in control. As we build AI tools (@UNI AI), we appreciate the focus on safety and clear explanations.
Question: How does Skyflo's predictive problem-solving work? Does it analyze historical event patterns or use other signals to anticipate issues before they escalate?
Looks like a powerful tool for making DevOps less painful. Wishing you a very successful launch! ☁️🤖🛠️