I see three important things to look at:
- Unexpected interactions.
- Badly tuned parameters and graceless degradation
- Unexpected resource consumption
First, you must have clear objectives. @Ryan has already alluded to this. What does acceptable performance look like - your objective is not "as fast as possible" or you will never stop tuning - you must be very clear: with specified workload patterns for specified user populations response times are ...
As you scale up the workload you are likely to hit the problems I alluded to earlier.
Unexpected Interactions: for example some user action results in a lengthy DB activity and during that certain locks are held, other users now experience unacceptable performance. Or, several users all attempt to buy the same product at the same time, an unacceptable number of optimistic lock failures occur. Or the system deadlocks.
Such problems often don't show up until the testing scales. To detect such problems you need to design your test data carefully and your test scripts to cover both normal and "unusual" peaks.
Tuning Parameters: Your infrastructure is likely to have connection pools and thread pools. The default sizes of those pools may well need to be adjusted. There's two considerations here, for your target workload what works? You increase the connection pool size, so now the database server has more open connections, so now you need to increase some database parameter or available memory ... And, what happens in unusual situations when resources run out. Suppose the system times-out waiting for a connection - does the user get a friendly error message and the system administrator gets notified or does something very unpleasant happen?
Unexpected resource consumption: what happens to resource consumption when the workload scales? Are logs now much bigger, so disk space is insufficient? Do you need to increase heap sizes? What's the long term trend over time? Memory growth? Maybe a memory leak? There are often unpleasant surprises.