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BEA TUXEDO domains

7.7.5 Special points

CM_APPLICATIONS

The CM_APPLICATIONS statement defines a list of conversational mode applications at do- main level.

MAX

The MAX statement with the name BDMCONFIG (64) must be defined for the MASTER host. The BDMCONFIG environment variable is used by BEA TUXEDO to locate the file BDMCONFIG (binary).

REPOSITORY

If a REPOSITORY statement was specified at system level, then a separate repository file with the name

< String from the repository statement > . < domain name > .rep

will be created for each domain. The CM applications will be stored in the repository with the name

< String from the repository statement > .rep

If these repositories are present when a new generation operation is carried out, they are read in prior to analysis of the input and recreated as part of a successful generation.

START_VALUE

The START_VALUE statement is a mandatory statement for each domain. A different value must be specified for each domain to facilitate the import and/or export of applications, i. e. the difference must exceed 99. The START_VALUE statement at system level defines a gen- eration number which is used when generating all conversational mode applications.

Call and options

The following options are supported in connection with the generation of domains:

-i repository-file

Imports the repository file. The repository file describes a domain from which server applications are imported. This domain is not part of the input file.

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Siemens V 4.0 manual Special points, Call and options

V 4.0 specifications

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