Having done a bunch of these, I have moved to a more complex pattern that performs a lot better. Others may do it differently, but this works for me.
First, instead of a merge join, I use a lookup transformation. Lookup transforms that are set to full caching (the default) will fully load the data before the data flow executes. This should identify the inserts and updated quickly. The inserts can be run directly from this data flow, but for the updates...
The only real way to do the updates as part of the data flow is to use an OLEDB command transform. These are notoriously slow. Instead, I write all the data updates into a temporary cache table in the data flow, then add an Execute SQL item to my control flow that updates records in the target table from the caching table.
Don't forget to the Execute SQL item to truncate the cache table.
Finally, I identify the deletes with a data flow , using a select from the target table and a lookup transform against the source table. Again, write to a cache table and then delete all with a batch Execute SQL command.
So now my control flow has an Execute SQL to truncate the cache tables, a Data Flow for inserts and caching the updates, an Execute SQL to perform the updates, a Data Flow to cache the deletes, and and Execute SQL to perform the deletes. If the package does work with more than one Source table, I generally put all the control flow items for each target table into a Sequence Container. Not necessary, but helps me see the logical structure.