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here is my problem. I have a 50 cities (a,b,....), each city contains up to 4000 addresses (a1, a2, ... or b1, b2, ...) and each of these addresses contains a list with 10.000-40.000 timeseries-data's.

Whats the most efficient way to store/query these data's That's my idea:

{'a': city1,
    'a1': {
        'name': 'name1',
        '...':  ....,
         ....
        'list': [{ here are 10.000-40.000 timeseries datasets}]
    }
    'a2': {
        'name': 'name2',
        '...':  ....,
        ....
        'list': [{ here are 10.000-40.000 timeseries datasets}]
    }
    ....
    ....
}
{'b': city2,
    'b1': {
        'name': 'name2',
        '...':  ....,
         ....
        'list': [{ here are 10.000-40.000 timeseries datasets}]
     }
     ...
     ...
} 
....
....

Or is it better to store the cities and addresses together in one place and all timeseries datasets in another place (with some key to identify the address and city). Or do you have any other great ideas? Most queries will concern (sry -> bad english?) the TimeSeries - Datasets (500 to 1500 of them) for all addresses and all cities.

A little bit math: 50 Cities * 4000 addresses * (10.000 to 40.000 Datasets) = 2.000.000.000 to 8.000.000.000 Entries -> So we'll probably shard the database (in my example the sharding key would be the city).

We're using python with pymongo to access the database.

share|improve this question
    
So what will the queries be? Do you want to query timeseries of a particular address, city, or multiple cities? –  adamw Apr 24 '13 at 7:47
    
Also, how frequently is the data modified? Will you be adding new timeseries data? If there's going to be a lot of data, it's better to keep documents immutable, so that Mongo doesn't have to do a lot of disk operations to move the docs around. –  adamw Apr 24 '13 at 7:48
    
@ adamw - all data older than 5 days will never be modified again. –  Thea Queen Apr 24 '13 at 7:56
    
@adamw - queries -> See original posting: 500-1500 Timeseries (between two dates) for all addresses in all cities –  Thea Queen Apr 24 '13 at 7:57
    
@TheaQueen - What are your options to normalize the data? Are the time series duplicated between addresses or are they different for every address? Also, once the dataset is full (8B) do you stop filling it or do you need to delete old addresses/time series? –  incognick Apr 28 '13 at 5:45
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