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I have a particular data manipulation requirement that I have worked out how to do in SQL Server and PostgreSQL. However, I'm not too happy with the speed, so I am investigating MongoDB.

The best way to describe the query is as follows. Picture the hierarchical data of the USA: Country, State, County, City. Let's say a particular vendor can service the whole of California. Another can perhaps service only Los Angeles. There are potentially hundreds of thousands of vendors and they all can service from some point(s) in this hierarchy down. I am not confusing this with Geo - I am using this to illustrate the need.

Using recursive queries, it is quite simple to get a list of all vendors who could service a particular user. If he were in say Pasadena, Los Angeles, California, we would walk up the hierarchy to get the applicable IDs, then query back down to find the vendors.

I know this can be optimized. Again, this is just a simple query example.

I know MongoDB is a document store. That suits other needs I have very well. The question is how well suited is it to the query type I describe? (I know it doesn't have joins - those are simulated).

I get that this is a "how long is a piece of string" question. I just want to know if anyone has any experience with MongoDB doing this sort of thing. It could take me quite some time to go from 0 to tested, and I'm looking to save time if MongoDB is not suited to this.

EXAMPLE

A local movie store "A" can supply Blu-Rays in Springfield. A chain store "B" with state-wide distribution can supply Blu-Rays to all of IL. And a download-on-demand store "C" can supply to all of the US.

If we wanted to get all applicable movie suppliers for Springfield, IL, the answer would be [A, B, C].

In other words, there are numerous vendors attached at differing levels on the hierarchy.

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Traditionally, a compound key could easily do this. However, that isn't the query style I'm looking for. –  IanC Apr 10 '11 at 7:55

2 Answers 2

up vote 4 down vote accepted

I realize this question was asked nearly a year ago, but since then MongoDB has an officially supported solution for this problem, and I just used their solution. Refer to their documentation here: http://www.mongodb.org/display/DOCS/Trees+in+MongoDB

The portion relating closest to your question is under the "partial path" section of the page.

While it may feel a bit heavy to embed ancestor data; this approach is the most suitable way to solve your problem in MongoDB. The only pitfall to this, that I've experienced so far, is that if you're storing all of this in a single document you can hit the, as of this time, 16MB document size limit when working with enough data (although, I can only see this happening if you're using this structure to track user referrals [which could reach millions] rather than US cities [which is upwards of 26,000 according to the latest US Census]).


References:

http://www.mongodb.org/display/DOCS/Schema+Design

http://www.census.gov/geo/www/gazetteer/places2k.html

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Thanks @Caleb! This really helps me. Funny, I just came back to this project 2 days ago and you answered then. –  IanC Mar 11 '12 at 15:09
    
It also occured to me that geo is a good way to solve this. –  IanC Mar 11 '12 at 15:34
    
Aha, originally you had written that you wanted to avoid Geo... I figured you were using it for categories and products, as is the most common case for this sort of structure. :) –  Caleb Gray Mar 15 '12 at 7:38

Note that this question was also asked on the google group. See http://groups.google.com/group/mongodb-user/browse_thread/thread/5cd5edd549813148 for that disucssion.

One option is to use an array key. You can store the hierarchy as an array of values (for example ['US','CA','Los Angeles']). Then you can query against records based on individual elements in that array key For example: First, store some documents with the array value representing the hierarchy

> db.hierarchical.save({ location: ['US','CA','LA'], name: 'foo'} ) 
> db.hierarchical.save({ location: ['US','CA','SF'], name: 'bar'} ) 
> db.hierarchical.save({ location: ['US','MA','BOS'], name: 'baz'} ) 

Make sure we have an index on the location field so we can perform fast queries against its values

> db.hierarchical.ensureIndex({'location':1}) 

Find all records in California

> db.hierarchical.find({location: 'CA'}) 
{ "_id" : ObjectId("4d9f69cbf88aea89d1492c55"), "location" : [ "US", "CA", "LA" ], "name" : "foo" } 
{ "_id" : ObjectId("4d9f69dcf88aea89d1492c56"), "location" : [ "US", "CA", "SF" ], "name" : "bar" } 

Find all records in Massachusetts

> db.hierarchical.find({location: 'MA'}) 
{ "_id" : ObjectId("4d9f6a21f88aea89d1492c5a"), "location" : [ "US", "MA", "BOS" ], "name" : "baz" } 

Find all records in the US

> db.hierarchical.find({location: 'US'}) 
{ "_id" : ObjectId("4d9f69cbf88aea89d1492c55"), "location" : [ "US", "CA", "LA" ], "name" : "foo" } 
{ "_id" : ObjectId("4d9f69dcf88aea89d1492c56"), "location" : [ "US", "CA", "SF" ], "name" : "bar" } 
{ "_id" : ObjectId("4d9f6a21f88aea89d1492c5a"), "location" : [ "US", "MA", "BOS" ], "name" : "baz" } 

Note that in this model, your values in the array would need to be unique. So for example, if you had 'springfield' in different states, then you would need to do some extra work to differentiate.

> db.hierarchical.save({location:['US','MA','Springfield'], name: 'one' }) 
> db.hierarchical.save({location:['US','IL','Springfield'], name: 'two' }) 
> db.hierarchical.find({location: 'Springfield'}) 
{ "_id" : ObjectId("4d9f6b7cf88aea89d1492c5b"), "location" : [ "US", "MA", "Springfield"], "name" : "one" } 
{ "_id" : ObjectId("4d9f6b86f88aea89d1492c5c"), "location" : [ "US", "IL", "Springfield"], "name" : "two" } 

You can overcome this by using the $all operator and specifying more levels of the hierarchy. For example:

> db.hierarchical.find({location: { $all : ['US','MA','Springfield']} }) 
{ "_id" : ObjectId("4d9f6b7cf88aea89d1492c5b"), "location" : [ "US", "MA", "Springfield"], "name" : "one" } 
> db.hierarchical.find({location: { $all : ['US','IL','Springfield']} }) 
{ "_id" : ObjectId("4d9f6b86f88aea89d1492c5c"), "location" : [ "US", "IL", "Springfield"], "name" : "two" } 
share|improve this answer
    
thanks; I understand what you have shown. However, how would I get the results for "give me all the vendors who map to Springfield | MA | US"? (| being binary OR, given us a set union). –  IanC Apr 9 '11 at 4:55
    
Isn't that just db.hierarchicla.find({location:'US'})? MA and Springfield are subsets so no OR or union is required. –  jared Apr 9 '11 at 21:35
    
No. Look at the example I've added to the question. –  IanC Apr 10 '11 at 7:24

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