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How to migrate Oracle Database from Solaris to Linux platform

From 11gR2 onward Oracle added Cross platform Data Guard creation feature.

In that case, we can set up Cross Platform Data Guard with Solaris as Source and Linux as Target.

Later we can bring up Target DB and decommission Source DB.

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