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Limitation on SQL Server 2008 Standard Edition w.r.t Enterprise Edition

1. For SQL Server 2008 Standard Edition is limited with 4 CPU where as it is unlimited with Enterprise Edition.

2. For Multi-Instance Support Standard Edition is limited to 16 instances where as it is 50 for Enterprise Edition.

3. For Clustering Standard Edition is limited to 2-node failover clustering where as it is 16 for Enterprise Edition.

4. For Auditing and Data Encryption it it limited to Standard Edition comparing to Enterprise Edition.

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