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We have many years of weather data that we need to build a reporting app on. Weather data has many fields of different types e.g. city, state, country, zipcode, latitude, longitude, temperature (hi/lo), temperature (avg), preciptation, wind speed, date etc. etc.

Our reports require that we choose combinations of these fields then sort, search and filter on them e.g.

WeatherData.all().filter('avg_temp =',20).filter('city','palo alto').filter('hi_temp',30).order('date').fetch(100)

or

WeatherData.all().filter('lo_temp =',20).filter('city','palo alto').filter('hi_temp',30).order('date').fetch(100)

May be easy to see that these queries require different indexes. May also be obvious that the 200 index limit can be crossed very very easily with any such data model where a combination of fields will be used to filter, sort and search entities. Finally, the number of entities in such a data model can obviously run into millions considering that there are many cities and we could do hourly data instead of daily.

Can anyone recommend a way to model this data which allows for all the queries to still be run, at the same time staying well under the 200 index limit? The write-cost in this model is not as big a deal but we need super fast reads.

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Do you need to be able to do inequality filters on those numeric properties or just equality filters? –  Bryce Cutt Aug 18 '11 at 21:14
    
For now, just equality filters. Inequality filters may come in later but not for now. –  Yasser Aug 18 '11 at 21:30

2 Answers 2

Your best option is to rely on the built-in support for merge join queries, which can satisfy these queries without an index per combination. All you need to do is define one index per field you want to filter on and sort order (if that's always date, then you're down to one index per field). See this part of the docs for details.

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It is good to hear that the built in indexes can handle this. @Nick did this work before SDK 1.5.2? –  Bryce Cutt Aug 19 '11 at 4:41
    
Nick, thanks for your answer. But even for this simplistic problem you can see that any real reporting app would want to be able to sort on different fields e.g. what cities had the hottest temperature on date x/y/z or when was the hottest day in palo alto. Without sorting ability how would you answer those queries from this simple dataset? –  Yasser Aug 19 '11 at 6:20
    
If i start defining one index per sort order per field, i am still going to hit the 200 limit pretty soon. –  Yasser Aug 19 '11 at 6:39
    
And not to mention, normally one needs sorting in both directions so thats 2 indexes per sort order per field, the 200 limit is even closer. –  Yasser Aug 19 '11 at 6:45
    
@Bryce This worked without sorting previously, but 1.5.2 introduced the ability to use composite indexes to do sorted merge joins. –  Nick Johnson Aug 21 '11 at 1:51

I know it seems counter-intuitive but you can use a full-text search system that supports categories (properties/whatever) to do something like this as long as you are primarily using equality filters. There are ways to get inequality filters to work but they are often limited. The faceting features can be useful too.

EDIT:

Yup, this is totally a hackish solution. The documents I am using it for are already in my search index and I am almost always also filtering on search terms.

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I want to avoid a hacky solution. I want something that can scale. In the RDBMS world this is a simple problem to solve and i am trying to see how NoSQL ppl handle this issue. –  Yasser Aug 18 '11 at 22:38
2  
@Yasser Actually, making these sorts of OLAP queries scale in the RDBMS world isn't simple. Executing them is easy, but executing them scalably isn't. –  Nick Johnson Aug 19 '11 at 4:01
    
@Nick i agree with you but until your dataset gets very large, in an RDBMS you at least have the ability to build any indices you want, simply at the cost of space, even if you keep your data denormalized. Are you saying that google app engine is good only for apps that wouldnt scale well with traditional RDBMS? –  Yasser Aug 19 '11 at 6:23
    
@Yasser "...until your dataset gets very large..." <- That's called scaling. If you don't expect your data to get "very large", then the effort of learning how to work with big data in a NoSQL environment may well mean it's beyond the scope of your current project. –  Steve Aug 19 '11 at 19:52
    
@Steve. I see what you guys are saying but i think my issue is very specific. If i have ten years of weather data (say a million records and no more), i can easily create an RDBMS app to sort and search on all those fields and filter whatever i like. All i am asking is, can GAE let me do the same thing. The answer i am looking for is either no or if yes, then how. Scaling is obviously the next step but i dont want to learn the next step unless i know the solution to the first step! –  Yasser Aug 19 '11 at 21:17

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