In short, it is not appropriate to hog resources on a shared server.
Basically, if you yield enough time to other processes, it's not a bad thing. Spiking the CPU like you're discussing however is a bad thing and not nice to other users of the system. You should have a yield mechanism in your main loop (
usleep(100) for example) and run the command with a high
nice number like 19.
Also, it sounds like you're doing individual insert/update/etc calls in your batch processing script. With mysql it's a far better practice to do a batch inserts whenever possible (extremely fast compared to the individual ones). Depending on how you do this however, it can be a trade off of RAM for CPU time (for example, if you store all of the insert values in a string until their ready to be inserted with a single insert statement, then that may add up to a lot of RAM). If RAM is a problem, you can always build a temporary SQL file and then import the whole thing at the end of the process.
A batch insert looks something like (for a table with two varchar columns):
INSERT INTO `mytable` VALUES ('Field 1-Row 1', 'Field 2-Row 1'), ('Field 1-Row 2', 'Field 2-Row 2');
This would insert two rows at once at a fraction of the time.
But then again, based on what you describe as the script's purpose, you probably aren't doing a lot of inserts to begin with. But maybe you could still build all (or many) of your DB updates/inserts/deletes into a final script called at the end?
Also, if you're sure that you can keep your foreign keys in proper order doing the import, turning foreign key checks off can significantly improve the speed as well.
All other suggestions possible would be based on specific optimization of your code and DB schema (optimizing loops, lookups, indexes, etc).
What I'm strongly implying here is that you can do something like this in shared hosting without hogging resources, but your DB structure, SQL statements, and algorithms (loops, etc) must be highly optimized. If you do this, an added benefit is that your process will finish extremely quickly as well. There's a common mis-conception that php + mysql = slow/cpu hog but 99% of the time it's a programming or DB design issue. They should easily be able to handle that many records.