Configuration language

FOREIGN_SESSION

The FOREIGN_SESSION statement describes connections between a GINA application and a foreign openUTM application. It comprises the following components:

session type (LETTER); the generator currently supports LU6.1

mapping (optional MAP_SYSTEM parameter)

MAP=

controls ASCII/EBCDIC conversion when exchanging unformatted messages with other applications.

SYSTEM

openUTM converts the data in the message area from ASCII to EBCDIC prior to dis- patch or from EBCDIC to ASCII following receipt. The message may only contain print- able characters.

See the KDCDEF control statement SESCHA in [26].

a SESSIONPOINT statement for the GINA application

a SESSIONPOINT statement for the foreign openUTM application

HOST

The HOST statement describes the configuration of a host. The HOST statement comprises the following components:

host name

optional: the CMX version of the host (default CMX040)

optional: the UTM version of the host (default UTM040)

optional: the flag RESERVE

Internet address of the host (INTERNETADDRESS)

shared memory and semaphore key (KEYVECTOR) (not OS_BS2000)

available port numbers (PORTADDRESS) (not OS_BS2000)

host-specific customizing statements

(ADMIN, CYCLICTIME, EVENTCONTROL, MAX, RMXA, START and START_RM)

description of existing applications

Example

HOST ( "Host2" )

 

{

 

INTERNETADDRESS ( 127.0.0.2 )

 

KEYVECTOR ( 5005, 5040 )

 

PORTADDRESSES ( 2000, 2100 )

 

...

 

}

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GINA V4.0 System Administrator Guide – September 2000

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Siemens V 4.0 manual Foreignsession, Map=, System, Host

V 4.0 specifications

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