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Port Conflicts And Changing Port Number
This article is only applicable to LandingEdge v1.
Some users may encounter a port conflict error when installing LandingEdge v1. If you encounter this error, follow the instructions below.
Navigate to the directory path in the error message, which is:
C:\Users<user-name>.clrt\app_data
.
Find a file named
ports.json
in the directory and open it with a text editor application.
Identify an empty port on your computer.
In the
ports.json
file, change
ui_port
to the empty port you just identified.
Save your changes and return to installation procedure.
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