I'm working on a small web service for fetching magic card data. I'm currently testing things out on Heroku but I'm not tied there - I may just put the whole thing on some EC2 instances and call it a day.
The card data is a single table with 20 columns (colors, casting cost, flavor text, etc) and infrequently changes - a single batch update every three months or so. For all sets through the most recent update, it's 23mb as a sqlite db, and the most recent update was 228kb. It's currently ~14k rows and grows around 250 rows every 3 months.
I'm using heroku's postgres but I don't see a reason not to put it in memory given the above, and I imagine it could be appreciably faster.
High startup time isn't out of the question but I'd prefer < 10 minutes. I thought sqlite + sqlalchemy was the ideal candidate here, but that doesn't seem to work with heroku. Is that in fact the best option, and I should migrate to ec2 now? If so, what's the best way to load a sqlite database into memory?
What are the in-memory options for querying read-only data sets in python?