Are AI Observability Tools Actually Helping?
Observability tools have been feeling very different lately. Almost every platform now claims to offer some “AI-powered” feature, such as anomaly detection, root cause analysis, automated insights,...

Source: DEV Community
Observability tools have been feeling very different lately. Almost every platform now claims to offer some “AI-powered” feature, such as anomaly detection, root cause analysis, automated insights, and even suggested fixes. But I’m not sure how much of it is actually useful in workflows. From what I’ve seen, most teams still deal with: Too many alerts Jumping between logs, metrics, and traces Spending so much time figuring out root causes And even with AI features, a lot of tools still feel like: “Here’s more data… just slightly reorganized” At the same time, there are some interesting improvements: automatic correlation between signals faster incident investigation less manual digging in some cases So it’s not all hype, but it also doesn’t feel like a complete shift yet. Curious about real usage Are you actually using AI features in your observability stack? Has it reduced alert fatigue at all? Or are you mostly ignoring those features? I recently looked into this while comparing a bu