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ORA-28002: the password will expire within 7 days



Change the password or follow below steps to update password life limit to UNLIMITED.

Step 1: Identify the Users Profile

SQL> SELECT profile FROM dba_users WHERE username = 'USER';


Step 2: View the Profile settings

SQL> select resource_name, resource_type, limit from dba_profiles where profile='USER_PROFILE'


Step 3: Set PASSWORD_LIFE_TIME

SQL> ALTER PROFILE DEFAULT LIMIT PASSWORD_LIFE_TIME UNLIMITED;


Step 4: Re-Enter the Password

SQL> alter user USER1 identified by "password";



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