Important: This documentation is about an older version. It's relevant only to the release noted, many of the features and functions have been updated or replaced. Please view the current version.
Estimate cardinality from traces
Cardinality can pose a problem when you have lots of services. There isn’t a direct formula or solution to this issue. The following guide should help estimate the cardinality that the feature will generate.
For more information on cardinality, refer to the Cardinality documentation.
How to estimate the cardinality
The amount of edges depends on the number of nodes in the system and the direction of the requests between them. Let’s call this amount hops. Every hop will be a unique combination of client + server labels.
For example:
- A system with 3 nodes
(A, B, C)
of which A only calls B and B only calls C will have 2 hops(A → B, B → C)
- A system with 3 nodes
(A, B, C)
that call each other (i.e., all bidirectional link) will have 6 hops(A → B, B → A, B → C, C → B, A → C, C → A)
We can’t calculate the amount of hops automatically based upon the nodes,
but it should be a value between #services - 1
and #services!
.
If we know the amount of hops in a system, we can calculate the cardinality of the generated service graphs:
traces_service_graph_request_total: #hops
traces_service_graph_request_failed_total: #hops
traces_service_graph_request_server_seconds: 3 buckets * #hops
traces_service_graph_request_client_seconds: 3 buckets * #hops
traces_service_graph_unpaired_spans_total: #services (absolute worst case)
traces_service_graph_dropped_spans_total: #services (absolute worst case)
Finally, we get the following cardinality estimation:
Sum: 8 * #hops + 2 * #services
Note
To estimate the number of metrics, refer to the Dry run metrics generator documentation.