Skip to content

Commit d11e934

Browse files
peoplemergechavdar
authored andcommitted
Doc style improvements (#105)
Add comma - corrects grammar and improves reading flow.
1 parent cca4d5b commit d11e934

File tree

1 file changed

+1
-1
lines changed

1 file changed

+1
-1
lines changed

README.md

+1-1
Original file line numberDiff line numberDiff line change
@@ -3,7 +3,7 @@
33

44
[![Join the chat at https://gitter.im/linkedin/databus](https://badges.gitter.im/Join%20Chat.svg)](https://gitter.im/linkedin/databus?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge&utm_content=badge)
55

6-
In Internet architectures, data systems are typically categorized into source-of-truth systems that serve as primary stores for the user-generated writes, and derived data stores or indexes which serve reads and other complex queries. The data in these secondary stores is often derived from the primary data through custom transformations, sometimes involving complex processing driven by business logic. Similarly data in caching tiers is derived from reads against the primary data store, but needs to get invalidated or refreshed when the primary data gets mutated. A fundamental requirement emerging from these kinds of data architectures is the need to reliably capture, flow and process primary data changes.
6+
In Internet architectures, data systems are typically categorized into source-of-truth systems that serve as primary stores for the user-generated writes, and derived data stores or indexes which serve reads and other complex queries. The data in these secondary stores is often derived from the primary data through custom transformations, sometimes involving complex processing driven by business logic. Similarly, data in caching tiers is derived from reads against the primary data store, but needs to get invalidated or refreshed when the primary data gets mutated. A fundamental requirement emerging from these kinds of data architectures is the need to reliably capture, flow and process primary data changes.
77

88
We have built Databus, a source-agnostic distributed change data capture system, which is an integral part of LinkedIn's data processing pipeline. The Databus transport layer provides latencies in the low milliseconds and handles throughput of thousands of events per second per server while supporting infinite look back capabilities and rich subscription functionality.
99

0 commit comments

Comments
 (0)