Comment by otterley
6 hours ago
And how are you solving the problem? The article does not say.
> I'm answering the question your observability vendor won't
There was no question answered here at all. It's basically a teaser designed to attract attention and stir debate. Respectfully, it's marketing, not problem solving. At least, not yet.
theres more information here https://docs.usetero.com/introduction/how-tero-works the link in the article is broken.
They determine what events/fields are not used and then add filters to your observability provider so you dont pay to ingest them.
What’s the differentiation vs., say, Cribl? Telemetry pipeline providers abound.
The question is answered in the post: ~40% on average, sometimes higher. That's a real number from real customer data.
But I'm an engineer at heart. I wanted this post to shed light on a real problem I've seen over a decade in this space that is causing a lot of pain; not write a product walkthrough. But the solution is very much real. There's deep, hard engineering going on: building semantic understanding of telemetry, classifying waste into verifiable categories, processing it at the edge. It's not simple, and I hope that comes through in the docs.
The docs get concrete if you want to peruse: https://docs.usetero.com/introduction/how-tero-works
I would contend that it is impossible to know a priori what is wasted telemetry and what isn’t, especially over long time horizons. And especially if you treat your logs as the foundational source of truth for answering critical business questions as well as operational ones.
And besides, the value isn’t knowing that the waste rate is 40% (and your methodology isn’t sufficiently disclosed for anyone to evaluate its accuracy). The value in knowing what is or will be wasted. It’s reminiscent of that old marketing complaint: “I know that half my advertising budget is wasted; I just don’t know which half.”
Storage is actually dirt cheap. The real problem, in my view, is not that customers are wasting storage, but that storage is being used inefficiently, that the storage formats aren’t always mechanically sympathetic and cloud-spend-efficient to the ways they data is read and analyzed, and that there’s still this culturally grounded disparate (and artificial) treatment of application and infrastructure logs vs business records.