I have a MongoDB collection containing attributes such as:
longitude, latitude, start_date, end_date, price
I have over 500 million documents.
My question is how to search by lat/long, date range and price as efficiently as possible?
As I see it my options are:
- Create an Geo-spatial index on lat/long and use MongoDB's proximity search... and then filter this based on date range and price.
- I have yet to test this but, am worrying that the amount of data would be too much to search this quickly, when we have around 1 search a second.
- have you had experience with how MongoDB would react under these circumstances?
- Split the data into multiple collections by location. i.e. by cities like london_collection, paris_collection, new_york_collection.
- I would then have to query by lat/long first, find the nearest city collection and then do a MongoDB spatial search on that subset data in that collection with date and price filters.
- I would have uneven distribution of documents as some cities would have more documents than others.
- Create collections by dates instead of location. Same as above but each document is allocated a collection based on it's date range.
- problem with searches that have a date range that straddles multiple collections.
- Create unique ids based on city_start_date_end_date for each document.
- Again I would have to use my lat/long query to find the nearest city append the date range to access the key. This seems to be pretty fast but I don't really like the city look up aspect... it seems a bit ugly.
I am in the process of experimenting with option 1.) but would really like to hear your ideas before I go too far down one particular path?
How do search engines split up and manage their data... this must be a similar kind of problem?
Also I do not have to use MongoDB, I'm open to other options?