
Connecting technical metrics to enterprise objectives
It’s now not sufficient to fret about whether or not one thing is “up and working.” We have to perceive whether or not it’s working with ample efficiency to fulfill enterprise necessities. Conventional observability instruments that monitor latency and throughput are desk stakes. They don’t inform you in case your information is present, or whether or not streaming information is arriving in time to feed an AI mannequin that’s making real-time selections. True visibility requires monitoring the movement of information via the system, making certain that occasions are processed so as, that buyers sustain with producers, and that information high quality is persistently maintained all through the pipeline.
Streaming platforms ought to play a central position in observability architectures. If you’re processing hundreds of thousands of occasions per second, you want deep instrumentation on the stream processing layer itself. The lag between when information is produced and when it’s consumed ought to be handled as a essential enterprise metric, not simply an operational one. In case your customers fall behind, your AI fashions will make selections primarily based on previous information.
The schema administration downside
One other widespread mistake is treating schema administration as an afterthought. Groups hard-code information schemas in producers and customers, which works superb initially however breaks down as quickly as you add a brand new discipline. If producers emit occasions with a brand new schema and customers aren’t prepared, every thing grinds to a halt.
