There's an optimization to Duncan Howe's answer that I know works in MySQL and may work with other servers. It probably also works for t-clausen.dk's answer in MySQL.
If you are deleting rows from table t1 that don’t have corresponding rows in t2 and both tables are very large then the server can end up getting swamped with disk seeks. I found that performance can be improved a lot if you can force the server to load t2's index into memory before running the query and then, in the query, force the server to ignore t1's index. That makes the server do a sequential scan of t1, which will be an efficient use of disk. The server steps through each row of t1 looking up t2's index, which is in memory, to determine if the row should be deleted. The disk seeks are thus eliminated and disk IO rate is very high, which keeps the CPU busy.
from tbl_user tu ignore key (primary)
left join tbl_user_group_xref tugx
use key (userid) on tu.userid=tugx.userid
where tugx.userid is null
(I'm assuming that
tbl_user.userid is its table's PK and the index on
tbl_user_group_xref.userid is named
userid. If not, change the respective key names.)
Forcing a server to load an index into memory is technology-specific. In MySQL for MyISAM tables you can use
load index into cache. Recreating an index from scratch (which is very fast in MySQL) might leave it in cache (and would have the nice side effect of balancing the B-tree).
I've seen examples with well over 100x improvement using this optimization. So long as you can cache t2's index, you can process very large tables efficiently.