Observability at Scale: What 'Good' Looks Like When You Have Too Much Data
At a startup with a dozen services, the observability problem is getting enough signal. You don’t have enough logging, your traces are incomplete, and your metrics dashboards have gaps. You know when something is wrong because a user tells you. At scale, the problem inverts. You have petabytes of logs, hundreds of millions of traces per day, and metrics cardinality so high that naive approaches cause your time-series database to OOM. The engineering challenge is filtering signal from noise, not generating signal. Both problems are real. They require different solutions. ...