Skip to content

Commit d8dde76

Browse files
kosabogiszabosteve
andauthored
Update serverless/pages/ml-nlp-auto-scale.mdx
Co-authored-by: István Zoltán Szabó <[email protected]>
1 parent c0564eb commit d8dde76

File tree

1 file changed

+1
-1
lines changed

1 file changed

+1
-1
lines changed

serverless/pages/ml-nlp-auto-scale.mdx

Lines changed: 1 addition & 1 deletion
Original file line numberDiff line numberDiff line change
@@ -20,7 +20,7 @@ Trained model autoscaling is available for Search, Observability, and Security p
2020

2121
Security and Observability projects are only charged for data collection (ingest) and storage (retention). They are not charged for processing power (vCPU usage), which is used for more complex operations, like running advanced search models. For example, in Search projects, models such as ELSER require significant processing power to provide more accurate search results.
2222

23-
Because vCPU processing is costly, Search projects are given access to more processing resources, while Security and Observability projects have lower limits on their processing power. This difference is reflected in the UI configuration: Search projects have higher resource limits compared to Security and Observability projects to accommodate their more complex operations.
23+
Search projects are given access to more processing resources, while Security and Observability projects have lower limits. This difference is reflected in the UI configuration: Search projects have higher resource limits compared to Security and Observability projects to accommodate their more complex operations.
2424

2525
On serverless, adaptive allocations are automatically enabled for all project types.
2626
However, the "Adaptive resources" control is not displayed in Kibana for Observability and Security projects.

0 commit comments

Comments
 (0)