Date: Thu, 28 Mar 2024 10:58:04 +0100 (CET)
Message-ID: <1618762015.129.1711619884149@nm-docs>
Subject: Exported From Confluence
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Importing data
Importing data
You can import items from the Teamcenter repository to a project=
in a modeling tool. Imported items are automatically converted to SysML el=
ements based on predefined mapping rules.
To import data from the Teamcenter repository to a modeling tool
- Start your modeling tool and open the SysML project to which you want t=
o import data.
- Connect to the Teamcenter server.
In the Active Workspace panel, select t=
he Teamcenter folder or item you want to import.
- Drag the import icon at the bottom of the Active Workspace panel (highl=
ighted below) to the desired Package in the model browser of a modeling too=
l.
- In the Import Settings dialog, use the Import =
Depth drop-down box to select the the level of items to be importe=
d (optional). By default, the import depth is not limited.
- In the same dialog, select which item properties should be converted to=
the value properties of a block (optional):=20
- Click the Configure button. The Extract Value =
Properties dialog opens.
- From the list on the left side of the dialog, select the property you w=
ant to convert to the value property of a block.
- Click to add the selected=
property to the selected properties area on the right side of the dialog.<=
/li>
- If needed, repeat the last step to add more properties.
- Click OK.
- In the Import Settings dialog, click OK to start the import.
If there are any unmapped element types=
in the import scope, map them in the Co=
py Data with Sync dialog to continue the import. You=
can also customize the existing data mapping scheme<=
/a>.
- When you receive the confirmation message that the import is completed,=
click Close.
When the import is finished, use the features of a modeling tool to anal=
yze and visualize the imported data. You can also refine your model and syn=
chronize new data with the project stored in the Teamcenter repository.
Related pages
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