Unless your original CSV is encoded in a really foolish manner, it seems unlikely that the size is not going to get below 100M, no matter how much you compress it. That's still really large for an app. The solution is to move your data to a web service. You may want to download and cache significant parts, but if you're talking about millions of records, then fetching from a server seems best. Besides, I have to believe that from time to time the transit system changes, and it would be frustrating to have to upgrade a many-10s-of-MB app every time there was a single stop adjustment.
I've said that, but actually there are some things you may consider:
- Move booleans into a bit fields. You can put 64 booleans into an NSUInteger. (And don't use a full 64-bit integer if you just need 8 bits. Store the smallest thing you can.)
- Compress how you store times. There are only 1440 minutes in a day. You can store that in 2 bytes. Transit times are generally not to the second; they don't need a CGFloat.
- Days of the week and dates can similarly be compressed.
- Obviously you should normalize any strings. Look at the CSV for duplicated string values on many lines.
- I generally would recommend raw sqlite rather than core data for this kind of problem. Core Data is more about object persistence than raw data storage. The fact that you're seeing a 20% bloat over CSV (which is not itself highly efficient) is not a good direction for this problem.
- If you want to get even tighter, and don't need very good searching capabilities, you can create packed data blobs. I used to do this on phone switches where memory was extremely tight. You create a bit field struct and allocate 5 bits for one variable, and 7 bits for another, etc. With that, and some time shuffling things so they line up correctly on word boundaries, you can get pretty tight.
Since you care most about your initial download size, and may be willing to expand your data later for faster access, you can consider very domain-specific compression. For example, in the above discussion, I mentioned how to get down to 2 bytes for a time. You could probably get down to 1 bytes in many cases by storing times as delta minutes since the last time (since most of your times are going to be always increasing by fairly small steps if they're bus and train schedules). Abandoning the database, you could create a very tightly encoded data file that you could extract into a database on first launch.
You also can use domain-specific knowledge to encode your strings into smaller tokens. If I were encoding the NY subway system, I would notice that some strings show up a lot, like "Avenue", "Road", "Street", "East", etc. I'd probably encode those as unprintable ASCII like ^A, ^R, ^S, ^E, etc. I'd probably encode "138 Street" as two bytes (0x8A13). This of course is based on my knowledge that è (0x8a) never shows up in the NY subway stops. It's not a general solution (in Paris it might be a problem), but it can be used to highly compress data that you have special knowledge of. In a city like Washington DC, I believe their highest numbered street is 38th St, and then there's a 4-value direction. So you can encode that in two bytes, first a "numbered street" token, and then a bit field with 2 bits for the quadrant and 6 bits for the street number. This kind of thinking can potentially significantly shrink your data size.