Data integration pipelines supply valuable data from producers to consumers, but even the best pipelines can break. Now what?
Where your ELT provider normalizes your data can dramatically increase or decrease your compute costs.
Most organizations spend at least 37% (sometimes over 50%) more than they need to on their cloud data workloads. A lot of costs are incurred down at the individual job level, and this is usually where there’s the biggest chunk of overspending. Two of the biggest culprits are oversized resources and inefficient code. But for an organization running 10,000s or 100,000s of jobs, finding and fixing bad code or right-sizing resources is shoveling sand against the tide.