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Areas to look upon for Oracle Database Security


We need to understand the potential security impacts of different configuration options that are available / provided by the Product vendors. In today's world when we are talking about putting our databases on Clouds, it's important to give as much security as you can.

Negotiate with cloud vendors on security aspect first. 

Each Database Architect must collaborate with Network Architect on point of Network Security.

Scenarios are different based on requirement basis.

This is just a general guide.

There are four major things we need to address as part of DB Security.


Authentication

Access controls
 

Secure configuration
 

Auditing

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