Which three statements are true about the process of au…

Examine the parameters for your database instance:

Which three statements are true about the process of automatic optimization by using cardinality feedback?

Examine the parameters for your database instance:

Which three statements are true about the process of automatic optimization by using cardinality feedback?

A.
The optimizer automatically changes a plan during subsequent execution of a SQL statement if there is a
huge difference in optimizer estimates and execution statistics.

B.
The optimizer can re optimize a query only once using cardinality feedback.

C.
The optimizer enables monitoring for cardinality feedback after the first execution of a query.

D.
The optimizer does not monitor cardinality feedback if dynamic sampling and multicolumn statistics areenabled.

E.
After the optimizer identifies a query as a re-optimization candidate, statistics collected by the collectors are
submitted to the optimizer.

Explanation:
C: During the first execution of a SQL statement, an execution plan is generated as usual.
D: if multi-column statistics are not present for the relevant combination of columns, the optimizer can fall back
on cardinality feedback.
(not B)* Cardinality feedback. This feature, enabled by default in 11.2, is intended to improve plans for repeated
executions.
optimizer_dynamic_sampling
optimizer_features_enable
* dynamic sampling or multi-column statistics allow the optimizer to more accurately estimate selectivity of
conjunctive predicates.
Note:
* OPTIMIZER_DYNAMIC_SAMPLING controls the level of dynamic sampling performed by the optimizer.
Range of values. 0 to 10
* Cardinality feedback was introduced in Oracle Database 11gR2. The purpose of this feature is to
automatically improve plans for queries that are executed repeatedly, for which the optimizer does not estimate
cardinalities in the plan properly. The optimizer may misestimate cardinalities for a variety of reasons, such as
missing or inaccurate statistics, or complex predicates. Whatever the reason for the misestimate, cardinality
feedback may be able to help.



Leave a Reply 3

Your email address will not be published. Required fields are marked *


bmfloyd

bmfloyd

ACD.

D. In some cases, there are other techniques available to improve estimation; for instance, dynamic sampling or multi-column statistics allow the optimizer to more accurately estimate selectivity of conjunctive predicates. In cases where these techniques apply, statistics feedback is not enabled.
https://blogs.oracle.com/optimizer/cardinality-feedback