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Got problem Package :cvuqdisk - 1.0.9-1 Failed

Install the operating system package cvuqdisk. Without cvuqdisk, Cluster Verification Utility cannot discover shared disks, and you receive the error message "Package cvuqdisk not installed" when you run Cluster Verification Utility. Use the cvuqdisk rpm for your hardware (for example, x86_64, or i386).
To install the cvuqdisk RPM, complete the following procedure:
1. Locate the cvuqdisk RPM package, which is in the directory rpm on the installation media. If you have already installed Oracle Grid Infrastructure, then it is located in the directory grid_home/rpm.
2. Copy the cvuqdisk package to each node on the cluster. You should ensure that each node is running the same version of Linux.
3. Log in as root.
4. Use the following command to find if you have an existing version of the cvuqdisk package:
5. # rpm -qi cvuqdisk
If you have an existing version, then enter the following command to deinstall the existing version:
# rpm -e cvuqdisk
6. Set the environment variable CVUQDISK_GRP to point to the group that will own cvuqdisk, typically oinstall. For example:
7. # CVUQDISK_GRP=oinstall; export CVUQDISK_GRP
8. In the directory where you have saved the cvuqdisk rpm, use the following command to install the cvuqdisk package:
9. rpm -iv package
For example:
# rpm -iv cvuqdisk-1.0.9-1.rpm

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