Configuration language

START_RM

The START_RM statements on system level apply to all hosts if there is no START_RM state- ment with the same manufacturer name in the HOST statement.

The START_RM statements on host level apply accordingly to all applications.

The optional START_RM statement has the following parameters:

manufacturer name of the database

Openstring OS

If the keyword APPLICATION is written instead of the Openstring parameter, the TA_application name is used as the Openstring.

START_VALUE

The START_VALUE statement defines the first generation number that is used in the gen- eration of identifiers in statements for the kdcdef program. This results in unique repro- ductions of the OsId and LayerId pair in these identifiers. By specifying different start values, different subsystems that can be combined can be generated. The subsystem con- nections, however, must still be completed.

The START_VALUE statement is optional. If this statement is not specified, generation of the identifiers starts with the value 1.

If a repository exists, it is used to ascertain the generation numbers, i.e. the START_VALUE statement is ignored.

SYNC_PRIORITY

The SYNC_PRIORITY statement defines the priority classes for the processing of dialog re- quests (see also the description of the PRIORITIES keyword). The statement has the fol- lowing format:

SYNC_PRIORITY(RELATIVE ABSOLUTE EQUAL [,free_sync] )

{

PRIO(1 [,PGWT] )

PRIO(2 [,PGWT] )

PRIO(3 [,PGWT] )

PRIO(4 [,PGWT] )

PRIO(5 [,PGWT] )

PRIO(6 [,PGWT] )

PRIO(7 [,PGWT] )

}

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GINA V4.0 System Administrator Guide – September 2000

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Siemens V 4.0 manual Startrm, Startvalue, Syncpriority

V 4.0 specifications

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